{ "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "# Notebook 14: Ising Phases using Convolutional Neural Networks in PyTorch " ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Learning Goal\n", "The primary goal of this notebooks is to learn how to implement a Convolutional Neural Network (CNN) using the powerful PyTorch package. It also introduces core concepts for CNNs such as convolutional and pooling layers and padding.\n", "\n", "## Overview\n", "In this notebook, we will write a simple convolutional neural network (CNN) in Pytorch for classifying phases for the Ising Model. We will consider perhaps the simplest CNN: a single convolutional layer with depth $N \\in \\{1,5,10,20,50\\}$. This will introduce the power of the Pytorch framework to make dynamic graphs. \n", "\n", "We will use this notebook to characterize samples drawn from the 2D Ising model at various temperatures. This is the same dataset that has been used in all earlier examples. Recall that the critical temperature for the Ising model is $T_c=2.26$." ] }, { "cell_type": "code", "execution_count": 1, "metadata": {}, "outputs": [ { "data": { "text/plain": [ "" ] }, "execution_count": 1, "metadata": {}, "output_type": "execute_result" } ], "source": [ "from __future__ import print_function, division\n", "import os,sys\n", "import numpy as np\n", "import torch # pytorch package, allows using GPUs\n", "# fix seed\n", "seed=17\n", "np.random.seed(seed)\n", "torch.manual_seed(seed)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Structure of the Procedure\n", "\n", "Constructing a Deep Neural Network to solve ML problems is a multiple-stage process. Quite generally, one can identify the key steps as follows:\n", "\n", "* ***step 1:*** Load and process the data\n", "* ***step 2:*** Define the model and its architecture\n", "* ***step 3:*** Choose the optimizer and the cost function\n", "* ***step 4:*** Train the model \n", "* ***step 5:*** Evaluate the model performance on the *unseen* test data\n", "* ***step 6:*** Modify the hyperparameters to optimize performance for the specific data set\n", "\n", "Below, we sometimes combine some of these steps together for convenience." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "### Step 1: Load and Process the Ising Dataset\n", "\n", "We start by defining the dataset class for Pytorch.\n", "\n", "We have three types of samples in the Ising dataset: samples drawn from deep in the disordered phase, samples drawn from the ordered phase, and samples drawn from near the critical phase which we do not use for training. The goal is to classify whether a sample comes from $T>T_c$ or $T18\n", " self.fc1 = nn.Linear(20*20*N, 2) \t\n", " self.N=N\n", " self.L=L\n", " print(\"The number of neurons in CNN layer is %i\"%(N))\n", "\n", " def forward(self, x):\n", " #Unsqueeze command indicates one channel and turns x.shape from (:,40,40) to (:,1, 40,40)\n", " x=F.relu(self.conv1(torch.unsqueeze(x,1).float()))\n", " #print(x.shape) often useful to look at shapes for debugging\n", " x = F.max_pool2d(x,2)\t \n", " #print(x.shape)\n", " x=self.bn1(x) # largely unnecessary and here just for pedagogical purposes\n", " return F.log_softmax(self.fc1(x.view(-1,20*20*self.N)), dim=1)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "#### Define the `train` and `test` functions\n", "\n", "These are very standard functions for going over data to train and evaluate the model. \n", "\n", "Since we will be testing the CNN performance on both the test and the critical data, the `test` function accepts two arguments: `data_loader` and `verbose` to allow control over the input data and the printing messages." ] }, { "cell_type": "code", "execution_count": 4, "metadata": {}, "outputs": [], "source": [ "def train(epoch):\n", " # these are very standard functions for going over data to train\n", "\n", " CNN.train() # effects Dropout and BatchNorm layers\n", " for batch_idx, (data, target) in enumerate(train_loader):\n", " if args.cuda:\n", " data, target = data.cuda(), target.cuda()\n", " optimizer.zero_grad()\n", " output = CNN(data)\n", " loss = F.nll_loss(output, target)\n", " loss.backward()\n", " optimizer.step()\n", " if batch_idx % args.log_interval == 0:\n", " print('Train Epoch: {} [{}/{} ({:.0f}%)]\\tLoss: {:.6f}'.format(\n", " epoch, batch_idx * len(data), len(train_loader.dataset),\n", " 100. * batch_idx / len(train_loader), loss.item()))\n", "\n", "def test(data_loader,verbose='Test'):\n", " # these are very standard functions for evaluating data\n", "\n", " CNN.eval() # effects Dropout and BatchNorm layers\n", " test_loss = 0\n", " correct = 0\n", " for data, target in data_loader:\n", " if args.cuda:\n", " data, target = data.cuda(), target.cuda()\n", " output = CNN(data)\n", " test_loss += F.nll_loss(output, target, size_average=False).item() # sum up batch loss\n", " pred = output.data.max(1, keepdim=True)[1] # get the index of the max log-probability\n", " correct += pred.eq(target.data.view_as(pred)).cpu().sum().item()\n", "\n", " test_loss /= len(data_loader.dataset)\n", " print('\\n'+verbose+' set: Average loss: {:.4f}, Accuracy: {}/{} ({:.0f}%)\\n'.format(\n", " test_loss, correct, len(data_loader.dataset),\n", " 100. * correct / len(data_loader.dataset)))\n", " accuracy=100. * correct / len(data_loader.dataset)\n", " return(accuracy)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "#### Define Model Parameters\n", "\n", "Next we define the training settings. This proceeds in the same way as in Notebook 13 on the SUSY dataset, except we now also show how to turn on the `cuda` library option of PyTorch which enables parallel coputations (whenever resources for this are available). " ] }, { "cell_type": "code", "execution_count": 5, "metadata": {}, "outputs": [], "source": [ "import argparse # handles arguments\n", "import sys; sys.argv=['']; del sys # required to use parser in jupyter notebooks\n", "\n", "# training settings\n", "parser = argparse.ArgumentParser(description='PyTorch Convmodel Ising Example')\n", "parser.add_argument('--batch-size', type=int, default=64, metavar='N',\n", " help='input batch size for training (default: 64)')\n", "parser.add_argument('--test-batch-size', type=int, default=1000, metavar='N',\n", " help='input batch size for testing (default: 1000)')\n", "parser.add_argument('--epochs', type=int, default=10, metavar='N',\n", " help='number of epochs to train (default: 10)')\n", "parser.add_argument('--lr', type=float, default=0.01, metavar='LR',\n", " help='learning rate (default: 0.01)')\n", "parser.add_argument('--momentum', type=float, default=0.5, metavar='M',\n", " help='SGD momentum (default: 0.5)')\n", "parser.add_argument('--no-cuda', action='store_true', default=False,\n", " help='disables CUDA training')\n", "parser.add_argument('--seed', type=int, default=1, metavar='S',\n", " help='random seed (default: 1)')\n", "parser.add_argument('--log-interval', type=int, default=10, metavar='N',\n", " help='how many batches to wait before logging training status')\n", "args = parser.parse_args()\n", "args.epochs=5\n", "args.cuda = not args.no_cuda and torch.cuda.is_available()\n", "\n", "torch.manual_seed(args.seed)\n", "if args.cuda:\n", " torch.cuda.manual_seed(args.seed)\n", "\n", "cuda_kwargs = {'num_workers': 1, 'pin_memory': True} if args.cuda else {}" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "### Steps 3+4+5: Choose the Optimizer and the Cost Function. Train and Evaluate the Model." ] }, { "cell_type": "code", "execution_count": 6, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Training on 80 percent of examples\n", "Testing on 20 percent of examples\n", "Predicting on 30000 critical examples\n", "The number of neurons in CNN layer is 1\n", "Train Epoch: 1 [0/104000 (0%)]\tLoss: 0.662742\n", "Train Epoch: 1 [640/104000 (1%)]\tLoss: 0.109889\n", "Train Epoch: 1 [1280/104000 (1%)]\tLoss: 0.045462\n", "Train Epoch: 1 [1920/104000 (2%)]\tLoss: 0.050722\n", "Train Epoch: 1 [2560/104000 (2%)]\tLoss: 0.020955\n", "Train Epoch: 1 [3200/104000 (3%)]\tLoss: 0.016692\n", "Train Epoch: 1 [3840/104000 (4%)]\tLoss: 0.019543\n", "Train Epoch: 1 [4480/104000 (4%)]\tLoss: 0.012761\n", "Train Epoch: 1 [5120/104000 (5%)]\tLoss: 0.017204\n", "Train Epoch: 1 [5760/104000 (6%)]\tLoss: 0.011533\n", "Train Epoch: 1 [6400/104000 (6%)]\tLoss: 0.007559\n", "Train Epoch: 1 [7040/104000 (7%)]\tLoss: 0.003841\n", "Train Epoch: 1 [7680/104000 (7%)]\tLoss: 0.004554\n", "Train Epoch: 1 [8320/104000 (8%)]\tLoss: 0.008697\n", "Train Epoch: 1 [8960/104000 (9%)]\tLoss: 0.005727\n", "Train Epoch: 1 [9600/104000 (9%)]\tLoss: 0.016714\n", "Train Epoch: 1 [10240/104000 (10%)]\tLoss: 0.002938\n", "Train Epoch: 1 [10880/104000 (10%)]\tLoss: 0.009886\n", "Train Epoch: 1 [11520/104000 (11%)]\tLoss: 0.006929\n", "Train Epoch: 1 [12160/104000 (12%)]\tLoss: 0.002550\n", "Train Epoch: 1 [12800/104000 (12%)]\tLoss: 0.008572\n", "Train Epoch: 1 [13440/104000 (13%)]\tLoss: 0.002893\n", "Train Epoch: 1 [14080/104000 (14%)]\tLoss: 0.001733\n", "Train Epoch: 1 [14720/104000 (14%)]\tLoss: 0.009416\n", "Train Epoch: 1 [15360/104000 (15%)]\tLoss: 0.002594\n", "Train Epoch: 1 [16000/104000 (15%)]\tLoss: 0.006668\n", "Train Epoch: 1 [16640/104000 (16%)]\tLoss: 0.001514\n", "Train Epoch: 1 [17280/104000 (17%)]\tLoss: 0.005911\n", "Train Epoch: 1 [17920/104000 (17%)]\tLoss: 0.004004\n", "Train Epoch: 1 [18560/104000 (18%)]\tLoss: 0.004119\n", "Train Epoch: 1 [19200/104000 (18%)]\tLoss: 0.015166\n", "Train Epoch: 1 [19840/104000 (19%)]\tLoss: 0.003167\n", "Train Epoch: 1 [20480/104000 (20%)]\tLoss: 0.002569\n", "Train Epoch: 1 [21120/104000 (20%)]\tLoss: 0.003589\n", "Train Epoch: 1 [21760/104000 (21%)]\tLoss: 0.002717\n", "Train Epoch: 1 [22400/104000 (22%)]\tLoss: 0.004898\n", "Train Epoch: 1 [23040/104000 (22%)]\tLoss: 0.002880\n", "Train Epoch: 1 [23680/104000 (23%)]\tLoss: 0.004688\n", "Train Epoch: 1 [24320/104000 (23%)]\tLoss: 0.000671\n", "Train Epoch: 1 [24960/104000 (24%)]\tLoss: 0.004286\n", "Train Epoch: 1 [25600/104000 (25%)]\tLoss: 0.001073\n", "Train Epoch: 1 [26240/104000 (25%)]\tLoss: 0.002328\n", "Train Epoch: 1 [26880/104000 (26%)]\tLoss: 0.002988\n", "Train Epoch: 1 [27520/104000 (26%)]\tLoss: 0.001294\n", "Train Epoch: 1 [28160/104000 (27%)]\tLoss: 0.052510\n", "Train Epoch: 1 [28800/104000 (28%)]\tLoss: 0.000678\n", "Train Epoch: 1 [29440/104000 (28%)]\tLoss: 0.000652\n", "Train Epoch: 1 [30080/104000 (29%)]\tLoss: 0.003534\n", "Train Epoch: 1 [30720/104000 (30%)]\tLoss: 0.012102\n", "Train Epoch: 1 [31360/104000 (30%)]\tLoss: 0.000991\n", "Train Epoch: 1 [32000/104000 (31%)]\tLoss: 0.002256\n", "Train Epoch: 1 [32640/104000 (31%)]\tLoss: 0.004379\n", "Train Epoch: 1 [33280/104000 (32%)]\tLoss: 0.001981\n", "Train Epoch: 1 [33920/104000 (33%)]\tLoss: 0.001887\n", "Train Epoch: 1 [34560/104000 (33%)]\tLoss: 0.004612\n", "Train Epoch: 1 [35200/104000 (34%)]\tLoss: 0.005662\n", "Train Epoch: 1 [35840/104000 (34%)]\tLoss: 0.011141\n", "Train Epoch: 1 [36480/104000 (35%)]\tLoss: 0.001433\n", "Train Epoch: 1 [37120/104000 (36%)]\tLoss: 0.002003\n", "Train Epoch: 1 [37760/104000 (36%)]\tLoss: 0.000672\n", "Train Epoch: 1 [38400/104000 (37%)]\tLoss: 0.001759\n", "Train Epoch: 1 [39040/104000 (38%)]\tLoss: 0.002058\n", "Train Epoch: 1 [39680/104000 (38%)]\tLoss: 0.001550\n", "Train Epoch: 1 [40320/104000 (39%)]\tLoss: 0.001455\n", "Train Epoch: 1 [40960/104000 (39%)]\tLoss: 0.000544\n", "Train Epoch: 1 [41600/104000 (40%)]\tLoss: 0.004700\n", "Train Epoch: 1 [42240/104000 (41%)]\tLoss: 0.000772\n", "Train Epoch: 1 [42880/104000 (41%)]\tLoss: 0.001735\n", "Train Epoch: 1 [43520/104000 (42%)]\tLoss: 0.001120\n", "Train Epoch: 1 [44160/104000 (42%)]\tLoss: 0.001542\n", "Train Epoch: 1 [44800/104000 (43%)]\tLoss: 0.009389\n", "Train Epoch: 1 [45440/104000 (44%)]\tLoss: 0.000525\n", "Train Epoch: 1 [46080/104000 (44%)]\tLoss: 0.000306\n", "Train Epoch: 1 [46720/104000 (45%)]\tLoss: 0.007553\n", "Train Epoch: 1 [47360/104000 (46%)]\tLoss: 0.000785\n", "Train Epoch: 1 [48000/104000 (46%)]\tLoss: 0.003900\n", "Train Epoch: 1 [48640/104000 (47%)]\tLoss: 0.001991\n", "Train Epoch: 1 [49280/104000 (47%)]\tLoss: 0.002793\n", "Train Epoch: 1 [49920/104000 (48%)]\tLoss: 0.020791\n", "Train Epoch: 1 [50560/104000 (49%)]\tLoss: 0.000786\n", "Train Epoch: 1 [51200/104000 (49%)]\tLoss: 0.000717\n", "Train Epoch: 1 [51840/104000 (50%)]\tLoss: 0.000714\n", "Train Epoch: 1 [52480/104000 (50%)]\tLoss: 0.001216\n", "Train Epoch: 1 [53120/104000 (51%)]\tLoss: 0.000183\n", "Train Epoch: 1 [53760/104000 (52%)]\tLoss: 0.000735\n", "Train Epoch: 1 [54400/104000 (52%)]\tLoss: 0.002544\n", "Train Epoch: 1 [55040/104000 (53%)]\tLoss: 0.000421\n", "Train Epoch: 1 [55680/104000 (54%)]\tLoss: 0.000800\n", "Train Epoch: 1 [56320/104000 (54%)]\tLoss: 0.008846\n", "Train Epoch: 1 [56960/104000 (55%)]\tLoss: 0.000468\n", "Train Epoch: 1 [57600/104000 (55%)]\tLoss: 0.001781\n", "Train Epoch: 1 [58240/104000 (56%)]\tLoss: 0.000885\n", "Train Epoch: 1 [58880/104000 (57%)]\tLoss: 0.001745\n", "Train Epoch: 1 [59520/104000 (57%)]\tLoss: 0.000826\n", "Train Epoch: 1 [60160/104000 (58%)]\tLoss: 0.000531\n", "Train Epoch: 1 [60800/104000 (58%)]\tLoss: 0.003100\n", "Train Epoch: 1 [61440/104000 (59%)]\tLoss: 0.000649\n", "Train Epoch: 1 [62080/104000 (60%)]\tLoss: 0.000953\n", "Train Epoch: 1 [62720/104000 (60%)]\tLoss: 0.000340\n", "Train Epoch: 1 [63360/104000 (61%)]\tLoss: 0.003273\n", "Train Epoch: 1 [64000/104000 (62%)]\tLoss: 0.001740\n", "Train Epoch: 1 [64640/104000 (62%)]\tLoss: 0.000066\n", "Train Epoch: 1 [65280/104000 (63%)]\tLoss: 0.001644\n", "Train Epoch: 1 [65920/104000 (63%)]\tLoss: 0.001525\n", "Train Epoch: 1 [66560/104000 (64%)]\tLoss: 0.000233\n", "Train Epoch: 1 [67200/104000 (65%)]\tLoss: 0.001457\n", "Train Epoch: 1 [67840/104000 (65%)]\tLoss: 0.000194\n", "Train Epoch: 1 [68480/104000 (66%)]\tLoss: 0.001445\n", "Train Epoch: 1 [69120/104000 (66%)]\tLoss: 0.002877\n", "Train Epoch: 1 [69760/104000 (67%)]\tLoss: 0.000257\n", "Train Epoch: 1 [70400/104000 (68%)]\tLoss: 0.000617\n", "Train Epoch: 1 [71040/104000 (68%)]\tLoss: 0.000587\n", "Train Epoch: 1 [71680/104000 (69%)]\tLoss: 0.000208\n", "Train Epoch: 1 [72320/104000 (70%)]\tLoss: 0.001745\n", "Train Epoch: 1 [72960/104000 (70%)]\tLoss: 0.000251\n", "Train Epoch: 1 [73600/104000 (71%)]\tLoss: 0.000186\n", "Train Epoch: 1 [74240/104000 (71%)]\tLoss: 0.000555\n", "Train Epoch: 1 [74880/104000 (72%)]\tLoss: 0.000174\n", "Train Epoch: 1 [75520/104000 (73%)]\tLoss: 0.000444\n", "Train Epoch: 1 [76160/104000 (73%)]\tLoss: 0.000899\n", "Train Epoch: 1 [76800/104000 (74%)]\tLoss: 0.000435\n", "Train Epoch: 1 [77440/104000 (74%)]\tLoss: 0.000337\n", "Train Epoch: 1 [78080/104000 (75%)]\tLoss: 0.001668\n", "Train Epoch: 1 [78720/104000 (76%)]\tLoss: 0.000330\n", "Train Epoch: 1 [79360/104000 (76%)]\tLoss: 0.000514\n", "Train Epoch: 1 [80000/104000 (77%)]\tLoss: 0.006597\n", "Train Epoch: 1 [80640/104000 (78%)]\tLoss: 0.001635\n", "Train Epoch: 1 [81280/104000 (78%)]\tLoss: 0.000408\n", "Train Epoch: 1 [81920/104000 (79%)]\tLoss: 0.000226\n", "Train Epoch: 1 [82560/104000 (79%)]\tLoss: 0.001308\n", "Train Epoch: 1 [83200/104000 (80%)]\tLoss: 0.000930\n", "Train Epoch: 1 [83840/104000 (81%)]\tLoss: 0.002042\n", "Train Epoch: 1 [84480/104000 (81%)]\tLoss: 0.000472\n", "Train Epoch: 1 [85120/104000 (82%)]\tLoss: 0.000097\n", "Train Epoch: 1 [85760/104000 (82%)]\tLoss: 0.000263\n", "Train Epoch: 1 [86400/104000 (83%)]\tLoss: 0.000370\n", "Train Epoch: 1 [87040/104000 (84%)]\tLoss: 0.000702\n", "Train Epoch: 1 [87680/104000 (84%)]\tLoss: 0.000267\n", "Train Epoch: 1 [88320/104000 (85%)]\tLoss: 0.000295\n", "Train Epoch: 1 [88960/104000 (86%)]\tLoss: 0.000098\n", "Train Epoch: 1 [89600/104000 (86%)]\tLoss: 0.000813\n", "Train Epoch: 1 [90240/104000 (87%)]\tLoss: 0.001157\n", "Train Epoch: 1 [90880/104000 (87%)]\tLoss: 0.000578\n", "Train Epoch: 1 [91520/104000 (88%)]\tLoss: 0.005544\n", "Train Epoch: 1 [92160/104000 (89%)]\tLoss: 0.000640\n", "Train Epoch: 1 [92800/104000 (89%)]\tLoss: 0.000296\n", "Train Epoch: 1 [93440/104000 (90%)]\tLoss: 0.000367\n", "Train Epoch: 1 [94080/104000 (90%)]\tLoss: 0.000388\n", "Train Epoch: 1 [94720/104000 (91%)]\tLoss: 0.002296\n", "Train Epoch: 1 [95360/104000 (92%)]\tLoss: 0.002912\n", "Train Epoch: 1 [96000/104000 (92%)]\tLoss: 0.000297\n", "Train Epoch: 1 [96640/104000 (93%)]\tLoss: 0.000208\n", "Train Epoch: 1 [97280/104000 (94%)]\tLoss: 0.001088\n", "Train Epoch: 1 [97920/104000 (94%)]\tLoss: 0.000779\n", "Train Epoch: 1 [98560/104000 (95%)]\tLoss: 0.000636\n", "Train Epoch: 1 [99200/104000 (95%)]\tLoss: 0.000509\n", "Train Epoch: 1 [99840/104000 (96%)]\tLoss: 0.001388\n", "Train Epoch: 1 [100480/104000 (97%)]\tLoss: 0.002664\n", "Train Epoch: 1 [101120/104000 (97%)]\tLoss: 0.000189\n", "Train Epoch: 1 [101760/104000 (98%)]\tLoss: 0.000681\n", "Train Epoch: 1 [102400/104000 (98%)]\tLoss: 0.000616\n", "Train Epoch: 1 [103040/104000 (99%)]\tLoss: 0.000326\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 1 [103680/104000 (100%)]\tLoss: 0.000554\n" ] }, { "name": "stderr", "output_type": "stream", "text": [ "/Users/mgbukov/miniconda3/envs/mlreview/lib/python3.6/site-packages/torch/nn/functional.py:52: UserWarning: size_average and reduce args will be deprecated, please use reduction='sum' instead.\n", " warnings.warn(warning.format(ret))\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "\n", "Test set: Average loss: 0.0005, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.8165, Accuracy: 23875/30000 (80%)\n", "\n", "Train Epoch: 2 [0/104000 (0%)]\tLoss: 0.000207\n", "Train Epoch: 2 [640/104000 (1%)]\tLoss: 0.003293\n", "Train Epoch: 2 [1280/104000 (1%)]\tLoss: 0.002911\n", "Train Epoch: 2 [1920/104000 (2%)]\tLoss: 0.000456\n", "Train Epoch: 2 [2560/104000 (2%)]\tLoss: 0.000537\n", "Train Epoch: 2 [3200/104000 (3%)]\tLoss: 0.000169\n", "Train Epoch: 2 [3840/104000 (4%)]\tLoss: 0.004852\n", "Train Epoch: 2 [4480/104000 (4%)]\tLoss: 0.000377\n", "Train Epoch: 2 [5120/104000 (5%)]\tLoss: 0.000677\n", "Train Epoch: 2 [5760/104000 (6%)]\tLoss: 0.000874\n", "Train Epoch: 2 [6400/104000 (6%)]\tLoss: 0.000330\n", "Train Epoch: 2 [7040/104000 (7%)]\tLoss: 0.000055\n", "Train Epoch: 2 [7680/104000 (7%)]\tLoss: 0.000904\n", "Train Epoch: 2 [8320/104000 (8%)]\tLoss: 0.000891\n", "Train Epoch: 2 [8960/104000 (9%)]\tLoss: 0.001143\n", "Train Epoch: 2 [9600/104000 (9%)]\tLoss: 0.000845\n", "Train Epoch: 2 [10240/104000 (10%)]\tLoss: 0.000624\n", "Train Epoch: 2 [10880/104000 (10%)]\tLoss: 0.000672\n", "Train Epoch: 2 [11520/104000 (11%)]\tLoss: 0.000998\n", "Train Epoch: 2 [12160/104000 (12%)]\tLoss: 0.000145\n", "Train Epoch: 2 [12800/104000 (12%)]\tLoss: 0.000117\n", "Train Epoch: 2 [13440/104000 (13%)]\tLoss: 0.000100\n", "Train Epoch: 2 [14080/104000 (14%)]\tLoss: 0.000311\n", "Train Epoch: 2 [14720/104000 (14%)]\tLoss: 0.001324\n", "Train Epoch: 2 [15360/104000 (15%)]\tLoss: 0.000712\n", "Train Epoch: 2 [16000/104000 (15%)]\tLoss: 0.000173\n", "Train Epoch: 2 [16640/104000 (16%)]\tLoss: 0.000301\n", "Train Epoch: 2 [17280/104000 (17%)]\tLoss: 0.000548\n", "Train Epoch: 2 [17920/104000 (17%)]\tLoss: 0.000567\n", "Train Epoch: 2 [18560/104000 (18%)]\tLoss: 0.000097\n", "Train Epoch: 2 [19200/104000 (18%)]\tLoss: 0.001975\n", "Train Epoch: 2 [19840/104000 (19%)]\tLoss: 0.000741\n", "Train Epoch: 2 [20480/104000 (20%)]\tLoss: 0.000132\n", "Train Epoch: 2 [21120/104000 (20%)]\tLoss: 0.000875\n", "Train Epoch: 2 [21760/104000 (21%)]\tLoss: 0.003284\n", "Train Epoch: 2 [22400/104000 (22%)]\tLoss: 0.000269\n", "Train Epoch: 2 [23040/104000 (22%)]\tLoss: 0.000087\n", "Train Epoch: 2 [23680/104000 (23%)]\tLoss: 0.000139\n", "Train Epoch: 2 [24320/104000 (23%)]\tLoss: 0.001205\n", "Train Epoch: 2 [24960/104000 (24%)]\tLoss: 0.000231\n", "Train Epoch: 2 [25600/104000 (25%)]\tLoss: 0.000141\n", "Train Epoch: 2 [26240/104000 (25%)]\tLoss: 0.000569\n", "Train Epoch: 2 [26880/104000 (26%)]\tLoss: 0.000188\n", "Train Epoch: 2 [27520/104000 (26%)]\tLoss: 0.000104\n", "Train Epoch: 2 [28160/104000 (27%)]\tLoss: 0.000142\n", "Train Epoch: 2 [28800/104000 (28%)]\tLoss: 0.000027\n", "Train Epoch: 2 [29440/104000 (28%)]\tLoss: 0.000069\n", "Train Epoch: 2 [30080/104000 (29%)]\tLoss: 0.001534\n", "Train Epoch: 2 [30720/104000 (30%)]\tLoss: 0.000342\n", "Train Epoch: 2 [31360/104000 (30%)]\tLoss: 0.000902\n", "Train Epoch: 2 [32000/104000 (31%)]\tLoss: 0.000623\n", "Train Epoch: 2 [32640/104000 (31%)]\tLoss: 0.000091\n", "Train Epoch: 2 [33280/104000 (32%)]\tLoss: 0.000142\n", "Train Epoch: 2 [33920/104000 (33%)]\tLoss: 0.003602\n", "Train Epoch: 2 [34560/104000 (33%)]\tLoss: 0.000527\n", "Train Epoch: 2 [35200/104000 (34%)]\tLoss: 0.000956\n", "Train Epoch: 2 [35840/104000 (34%)]\tLoss: 0.000588\n", "Train Epoch: 2 [36480/104000 (35%)]\tLoss: 0.001144\n", "Train Epoch: 2 [37120/104000 (36%)]\tLoss: 0.000418\n", "Train Epoch: 2 [37760/104000 (36%)]\tLoss: 0.002153\n", "Train Epoch: 2 [38400/104000 (37%)]\tLoss: 0.000243\n", "Train Epoch: 2 [39040/104000 (38%)]\tLoss: 0.001616\n", "Train Epoch: 2 [39680/104000 (38%)]\tLoss: 0.000081\n", "Train Epoch: 2 [40320/104000 (39%)]\tLoss: 0.000097\n", "Train Epoch: 2 [40960/104000 (39%)]\tLoss: 0.000208\n", "Train Epoch: 2 [41600/104000 (40%)]\tLoss: 0.000639\n", "Train Epoch: 2 [42240/104000 (41%)]\tLoss: 0.001528\n", "Train Epoch: 2 [42880/104000 (41%)]\tLoss: 0.000136\n", "Train Epoch: 2 [43520/104000 (42%)]\tLoss: 0.000272\n", "Train Epoch: 2 [44160/104000 (42%)]\tLoss: 0.000405\n", "Train Epoch: 2 [44800/104000 (43%)]\tLoss: 0.000983\n", "Train Epoch: 2 [45440/104000 (44%)]\tLoss: 0.000348\n", "Train Epoch: 2 [46080/104000 (44%)]\tLoss: 0.000270\n", "Train Epoch: 2 [46720/104000 (45%)]\tLoss: 0.001273\n", "Train Epoch: 2 [47360/104000 (46%)]\tLoss: 0.000122\n", "Train Epoch: 2 [48000/104000 (46%)]\tLoss: 0.000065\n", "Train Epoch: 2 [48640/104000 (47%)]\tLoss: 0.000083\n", "Train Epoch: 2 [49280/104000 (47%)]\tLoss: 0.000129\n", "Train Epoch: 2 [49920/104000 (48%)]\tLoss: 0.000709\n", "Train Epoch: 2 [50560/104000 (49%)]\tLoss: 0.000526\n", "Train Epoch: 2 [51200/104000 (49%)]\tLoss: 0.000125\n", "Train Epoch: 2 [51840/104000 (50%)]\tLoss: 0.000151\n", "Train Epoch: 2 [52480/104000 (50%)]\tLoss: 0.000048\n", "Train Epoch: 2 [53120/104000 (51%)]\tLoss: 0.000072\n", "Train Epoch: 2 [53760/104000 (52%)]\tLoss: 0.000176\n", "Train Epoch: 2 [54400/104000 (52%)]\tLoss: 0.001160\n", "Train Epoch: 2 [55040/104000 (53%)]\tLoss: 0.003954\n", "Train Epoch: 2 [55680/104000 (54%)]\tLoss: 0.004039\n", "Train Epoch: 2 [56320/104000 (54%)]\tLoss: 0.000845\n", "Train Epoch: 2 [56960/104000 (55%)]\tLoss: 0.000327\n", "Train Epoch: 2 [57600/104000 (55%)]\tLoss: 0.000085\n", "Train Epoch: 2 [58240/104000 (56%)]\tLoss: 0.000056\n", "Train Epoch: 2 [58880/104000 (57%)]\tLoss: 0.000969\n", "Train Epoch: 2 [59520/104000 (57%)]\tLoss: 0.000158\n", "Train Epoch: 2 [60160/104000 (58%)]\tLoss: 0.000294\n", "Train Epoch: 2 [60800/104000 (58%)]\tLoss: 0.000255\n", "Train Epoch: 2 [61440/104000 (59%)]\tLoss: 0.000088\n", "Train Epoch: 2 [62080/104000 (60%)]\tLoss: 0.003106\n", "Train Epoch: 2 [62720/104000 (60%)]\tLoss: 0.004540\n", "Train Epoch: 2 [63360/104000 (61%)]\tLoss: 0.000265\n", "Train Epoch: 2 [64000/104000 (62%)]\tLoss: 0.000957\n", "Train Epoch: 2 [64640/104000 (62%)]\tLoss: 0.000135\n", "Train Epoch: 2 [65280/104000 (63%)]\tLoss: 0.000137\n", "Train Epoch: 2 [65920/104000 (63%)]\tLoss: 0.000109\n", "Train Epoch: 2 [66560/104000 (64%)]\tLoss: 0.000603\n", "Train Epoch: 2 [67200/104000 (65%)]\tLoss: 0.000102\n", "Train Epoch: 2 [67840/104000 (65%)]\tLoss: 0.000302\n", "Train Epoch: 2 [68480/104000 (66%)]\tLoss: 0.000063\n", "Train Epoch: 2 [69120/104000 (66%)]\tLoss: 0.000650\n", "Train Epoch: 2 [69760/104000 (67%)]\tLoss: 0.000157\n", "Train Epoch: 2 [70400/104000 (68%)]\tLoss: 0.000306\n", "Train Epoch: 2 [71040/104000 (68%)]\tLoss: 0.033093\n", "Train Epoch: 2 [71680/104000 (69%)]\tLoss: 0.000443\n", "Train Epoch: 2 [72320/104000 (70%)]\tLoss: 0.000308\n", "Train Epoch: 2 [72960/104000 (70%)]\tLoss: 0.000392\n", "Train Epoch: 2 [73600/104000 (71%)]\tLoss: 0.000295\n", "Train Epoch: 2 [74240/104000 (71%)]\tLoss: 0.001193\n", "Train Epoch: 2 [74880/104000 (72%)]\tLoss: 0.003020\n", "Train Epoch: 2 [75520/104000 (73%)]\tLoss: 0.000096\n", "Train Epoch: 2 [76160/104000 (73%)]\tLoss: 0.000202\n", "Train Epoch: 2 [76800/104000 (74%)]\tLoss: 0.000464\n", "Train Epoch: 2 [77440/104000 (74%)]\tLoss: 0.000096\n", "Train Epoch: 2 [78080/104000 (75%)]\tLoss: 0.000068\n", "Train Epoch: 2 [78720/104000 (76%)]\tLoss: 0.002312\n", "Train Epoch: 2 [79360/104000 (76%)]\tLoss: 0.000055\n", "Train Epoch: 2 [80000/104000 (77%)]\tLoss: 0.000171\n", "Train Epoch: 2 [80640/104000 (78%)]\tLoss: 0.002382\n", "Train Epoch: 2 [81280/104000 (78%)]\tLoss: 0.000563\n", "Train Epoch: 2 [81920/104000 (79%)]\tLoss: 0.000178\n", "Train Epoch: 2 [82560/104000 (79%)]\tLoss: 0.000115\n", "Train Epoch: 2 [83200/104000 (80%)]\tLoss: 0.000178\n", "Train Epoch: 2 [83840/104000 (81%)]\tLoss: 0.000097\n", "Train Epoch: 2 [84480/104000 (81%)]\tLoss: 0.000127\n", "Train Epoch: 2 [85120/104000 (82%)]\tLoss: 0.001672\n", "Train Epoch: 2 [85760/104000 (82%)]\tLoss: 0.000080\n", "Train Epoch: 2 [86400/104000 (83%)]\tLoss: 0.000045\n", "Train Epoch: 2 [87040/104000 (84%)]\tLoss: 0.000213\n", "Train Epoch: 2 [87680/104000 (84%)]\tLoss: 0.000210\n", "Train Epoch: 2 [88320/104000 (85%)]\tLoss: 0.000272\n", "Train Epoch: 2 [88960/104000 (86%)]\tLoss: 0.001581\n", "Train Epoch: 2 [89600/104000 (86%)]\tLoss: 0.000713\n", "Train Epoch: 2 [90240/104000 (87%)]\tLoss: 0.000070\n", "Train Epoch: 2 [90880/104000 (87%)]\tLoss: 0.002180\n", "Train Epoch: 2 [91520/104000 (88%)]\tLoss: 0.000037\n", "Train Epoch: 2 [92160/104000 (89%)]\tLoss: 0.000250\n", "Train Epoch: 2 [92800/104000 (89%)]\tLoss: 0.000103\n", "Train Epoch: 2 [93440/104000 (90%)]\tLoss: 0.000222\n", "Train Epoch: 2 [94080/104000 (90%)]\tLoss: 0.000026\n", "Train Epoch: 2 [94720/104000 (91%)]\tLoss: 0.000986\n", "Train Epoch: 2 [95360/104000 (92%)]\tLoss: 0.000350\n", "Train Epoch: 2 [96000/104000 (92%)]\tLoss: 0.000084\n", "Train Epoch: 2 [96640/104000 (93%)]\tLoss: 0.000553\n", "Train Epoch: 2 [97280/104000 (94%)]\tLoss: 0.000681\n", "Train Epoch: 2 [97920/104000 (94%)]\tLoss: 0.000453\n", "Train Epoch: 2 [98560/104000 (95%)]\tLoss: 0.000199\n", "Train Epoch: 2 [99200/104000 (95%)]\tLoss: 0.000310\n", "Train Epoch: 2 [99840/104000 (96%)]\tLoss: 0.000116\n", "Train Epoch: 2 [100480/104000 (97%)]\tLoss: 0.000248\n", "Train Epoch: 2 [101120/104000 (97%)]\tLoss: 0.000102\n", "Train Epoch: 2 [101760/104000 (98%)]\tLoss: 0.000298\n", "Train Epoch: 2 [102400/104000 (98%)]\tLoss: 0.000583\n", "Train Epoch: 2 [103040/104000 (99%)]\tLoss: 0.000026\n", "Train Epoch: 2 [103680/104000 (100%)]\tLoss: 0.000239\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "\n", "Test set: Average loss: 0.0003, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.9904, Accuracy: 23634/30000 (79%)\n", "\n", "Train Epoch: 3 [0/104000 (0%)]\tLoss: 0.000187\n", "Train Epoch: 3 [640/104000 (1%)]\tLoss: 0.000054\n", "Train Epoch: 3 [1280/104000 (1%)]\tLoss: 0.000154\n", "Train Epoch: 3 [1920/104000 (2%)]\tLoss: 0.000851\n", "Train Epoch: 3 [2560/104000 (2%)]\tLoss: 0.000049\n", "Train Epoch: 3 [3200/104000 (3%)]\tLoss: 0.000274\n", "Train Epoch: 3 [3840/104000 (4%)]\tLoss: 0.000528\n", "Train Epoch: 3 [4480/104000 (4%)]\tLoss: 0.000440\n", "Train Epoch: 3 [5120/104000 (5%)]\tLoss: 0.001590\n", "Train Epoch: 3 [5760/104000 (6%)]\tLoss: 0.003739\n", "Train Epoch: 3 [6400/104000 (6%)]\tLoss: 0.000099\n", "Train Epoch: 3 [7040/104000 (7%)]\tLoss: 0.000564\n", "Train Epoch: 3 [7680/104000 (7%)]\tLoss: 0.000268\n", "Train Epoch: 3 [8320/104000 (8%)]\tLoss: 0.000250\n", "Train Epoch: 3 [8960/104000 (9%)]\tLoss: 0.000432\n", "Train Epoch: 3 [9600/104000 (9%)]\tLoss: 0.000188\n", "Train Epoch: 3 [10240/104000 (10%)]\tLoss: 0.000163\n", "Train Epoch: 3 [10880/104000 (10%)]\tLoss: 0.000407\n", "Train Epoch: 3 [11520/104000 (11%)]\tLoss: 0.001478\n", "Train Epoch: 3 [12160/104000 (12%)]\tLoss: 0.000351\n", "Train Epoch: 3 [12800/104000 (12%)]\tLoss: 0.000769\n", "Train Epoch: 3 [13440/104000 (13%)]\tLoss: 0.000069\n", "Train Epoch: 3 [14080/104000 (14%)]\tLoss: 0.000273\n", "Train Epoch: 3 [14720/104000 (14%)]\tLoss: 0.000319\n", "Train Epoch: 3 [15360/104000 (15%)]\tLoss: 0.000328\n", "Train Epoch: 3 [16000/104000 (15%)]\tLoss: 0.000319\n", "Train Epoch: 3 [16640/104000 (16%)]\tLoss: 0.003195\n", "Train Epoch: 3 [17280/104000 (17%)]\tLoss: 0.020422\n", "Train Epoch: 3 [17920/104000 (17%)]\tLoss: 0.001275\n", "Train Epoch: 3 [18560/104000 (18%)]\tLoss: 0.000046\n", "Train Epoch: 3 [19200/104000 (18%)]\tLoss: 0.000498\n", "Train Epoch: 3 [19840/104000 (19%)]\tLoss: 0.000359\n", "Train Epoch: 3 [20480/104000 (20%)]\tLoss: 0.000036\n", "Train Epoch: 3 [21120/104000 (20%)]\tLoss: 0.000650\n", "Train Epoch: 3 [21760/104000 (21%)]\tLoss: 0.000145\n", "Train Epoch: 3 [22400/104000 (22%)]\tLoss: 0.000065\n", "Train Epoch: 3 [23040/104000 (22%)]\tLoss: 0.000142\n", "Train Epoch: 3 [23680/104000 (23%)]\tLoss: 0.000053\n", "Train Epoch: 3 [24320/104000 (23%)]\tLoss: 0.000696\n", "Train Epoch: 3 [24960/104000 (24%)]\tLoss: 0.000080\n", "Train Epoch: 3 [25600/104000 (25%)]\tLoss: 0.000205\n", "Train Epoch: 3 [26240/104000 (25%)]\tLoss: 0.000185\n", "Train Epoch: 3 [26880/104000 (26%)]\tLoss: 0.000382\n", "Train Epoch: 3 [27520/104000 (26%)]\tLoss: 0.000008\n", "Train Epoch: 3 [28160/104000 (27%)]\tLoss: 0.000297\n", "Train Epoch: 3 [28800/104000 (28%)]\tLoss: 0.000176\n", "Train Epoch: 3 [29440/104000 (28%)]\tLoss: 0.000226\n", "Train Epoch: 3 [30080/104000 (29%)]\tLoss: 0.000032\n", "Train Epoch: 3 [30720/104000 (30%)]\tLoss: 0.000534\n", "Train Epoch: 3 [31360/104000 (30%)]\tLoss: 0.000174\n", "Train Epoch: 3 [32000/104000 (31%)]\tLoss: 0.000824\n", "Train Epoch: 3 [32640/104000 (31%)]\tLoss: 0.000051\n", "Train Epoch: 3 [33280/104000 (32%)]\tLoss: 0.000113\n", "Train Epoch: 3 [33920/104000 (33%)]\tLoss: 0.001166\n", "Train Epoch: 3 [34560/104000 (33%)]\tLoss: 0.000498\n", "Train Epoch: 3 [35200/104000 (34%)]\tLoss: 0.000053\n", "Train Epoch: 3 [35840/104000 (34%)]\tLoss: 0.000401\n", "Train Epoch: 3 [36480/104000 (35%)]\tLoss: 0.000713\n", "Train Epoch: 3 [37120/104000 (36%)]\tLoss: 0.000182\n", "Train Epoch: 3 [37760/104000 (36%)]\tLoss: 0.000007\n", "Train Epoch: 3 [38400/104000 (37%)]\tLoss: 0.000010\n", "Train Epoch: 3 [39040/104000 (38%)]\tLoss: 0.000439\n", "Train Epoch: 3 [39680/104000 (38%)]\tLoss: 0.000041\n", "Train Epoch: 3 [40320/104000 (39%)]\tLoss: 0.000068\n", "Train Epoch: 3 [40960/104000 (39%)]\tLoss: 0.000030\n", "Train Epoch: 3 [41600/104000 (40%)]\tLoss: 0.000021\n", "Train Epoch: 3 [42240/104000 (41%)]\tLoss: 0.000017\n", "Train Epoch: 3 [42880/104000 (41%)]\tLoss: 0.000019\n", "Train Epoch: 3 [43520/104000 (42%)]\tLoss: 0.000061\n", "Train Epoch: 3 [44160/104000 (42%)]\tLoss: 0.000012\n", "Train Epoch: 3 [44800/104000 (43%)]\tLoss: 0.000309\n", "Train Epoch: 3 [45440/104000 (44%)]\tLoss: 0.000012\n", "Train Epoch: 3 [46080/104000 (44%)]\tLoss: 0.000395\n", "Train Epoch: 3 [46720/104000 (45%)]\tLoss: 0.000037\n", "Train Epoch: 3 [47360/104000 (46%)]\tLoss: 0.000115\n", "Train Epoch: 3 [48000/104000 (46%)]\tLoss: 0.000219\n", "Train Epoch: 3 [48640/104000 (47%)]\tLoss: 0.000003\n", "Train Epoch: 3 [49280/104000 (47%)]\tLoss: 0.000043\n", "Train Epoch: 3 [49920/104000 (48%)]\tLoss: 0.000033\n", "Train Epoch: 3 [50560/104000 (49%)]\tLoss: 0.000105\n", "Train Epoch: 3 [51200/104000 (49%)]\tLoss: 0.000077\n", "Train Epoch: 3 [51840/104000 (50%)]\tLoss: 0.000032\n", "Train Epoch: 3 [52480/104000 (50%)]\tLoss: 0.000009\n", "Train Epoch: 3 [53120/104000 (51%)]\tLoss: 0.000001\n", "Train Epoch: 3 [53760/104000 (52%)]\tLoss: 0.000005\n", "Train Epoch: 3 [54400/104000 (52%)]\tLoss: 0.000008\n", "Train Epoch: 3 [55040/104000 (53%)]\tLoss: 0.000023\n", "Train Epoch: 3 [55680/104000 (54%)]\tLoss: 0.000157\n", "Train Epoch: 3 [56320/104000 (54%)]\tLoss: 0.000024\n", "Train Epoch: 3 [56960/104000 (55%)]\tLoss: 0.000004\n", "Train Epoch: 3 [57600/104000 (55%)]\tLoss: 0.000002\n", "Train Epoch: 3 [58240/104000 (56%)]\tLoss: 0.000016\n", "Train Epoch: 3 [58880/104000 (57%)]\tLoss: 0.000006\n", "Train Epoch: 3 [59520/104000 (57%)]\tLoss: 0.000004\n", "Train Epoch: 3 [60160/104000 (58%)]\tLoss: 0.000003\n", "Train Epoch: 3 [60800/104000 (58%)]\tLoss: 0.000039\n", "Train Epoch: 3 [61440/104000 (59%)]\tLoss: 0.009346\n", "Train Epoch: 3 [62080/104000 (60%)]\tLoss: 0.000003\n", "Train Epoch: 3 [62720/104000 (60%)]\tLoss: 0.000013\n", "Train Epoch: 3 [63360/104000 (61%)]\tLoss: 0.000208\n", "Train Epoch: 3 [64000/104000 (62%)]\tLoss: 0.000003\n", "Train Epoch: 3 [64640/104000 (62%)]\tLoss: 0.000024\n", "Train Epoch: 3 [65280/104000 (63%)]\tLoss: 0.000003\n", "Train Epoch: 3 [65920/104000 (63%)]\tLoss: 0.000018\n", "Train Epoch: 3 [66560/104000 (64%)]\tLoss: 0.000025\n", "Train Epoch: 3 [67200/104000 (65%)]\tLoss: 0.000717\n", "Train Epoch: 3 [67840/104000 (65%)]\tLoss: 0.000052\n", "Train Epoch: 3 [68480/104000 (66%)]\tLoss: 0.000007\n", "Train Epoch: 3 [69120/104000 (66%)]\tLoss: 0.000030\n", "Train Epoch: 3 [69760/104000 (67%)]\tLoss: 0.000991\n", "Train Epoch: 3 [70400/104000 (68%)]\tLoss: 0.000052\n", "Train Epoch: 3 [71040/104000 (68%)]\tLoss: 0.000017\n", "Train Epoch: 3 [71680/104000 (69%)]\tLoss: 0.000007\n", "Train Epoch: 3 [72320/104000 (70%)]\tLoss: 0.000091\n", "Train Epoch: 3 [72960/104000 (70%)]\tLoss: 0.000005\n", "Train Epoch: 3 [73600/104000 (71%)]\tLoss: 0.000018\n", "Train Epoch: 3 [74240/104000 (71%)]\tLoss: 0.000002\n", "Train Epoch: 3 [74880/104000 (72%)]\tLoss: 0.000006\n", "Train Epoch: 3 [75520/104000 (73%)]\tLoss: 0.000011\n", "Train Epoch: 3 [76160/104000 (73%)]\tLoss: 0.000001\n", "Train Epoch: 3 [76800/104000 (74%)]\tLoss: 0.000004\n", "Train Epoch: 3 [77440/104000 (74%)]\tLoss: 0.000010\n", "Train Epoch: 3 [78080/104000 (75%)]\tLoss: 0.000007\n", "Train Epoch: 3 [78720/104000 (76%)]\tLoss: 0.000012\n", "Train Epoch: 3 [79360/104000 (76%)]\tLoss: 0.000001\n", "Train Epoch: 3 [80000/104000 (77%)]\tLoss: 0.000004\n", "Train Epoch: 3 [80640/104000 (78%)]\tLoss: 0.000002\n", "Train Epoch: 3 [81280/104000 (78%)]\tLoss: 0.000075\n", "Train Epoch: 3 [81920/104000 (79%)]\tLoss: 0.000005\n", "Train Epoch: 3 [82560/104000 (79%)]\tLoss: 0.000022\n", "Train Epoch: 3 [83200/104000 (80%)]\tLoss: 0.000009\n", "Train Epoch: 3 [83840/104000 (81%)]\tLoss: 0.000004\n", "Train Epoch: 3 [84480/104000 (81%)]\tLoss: 0.000002\n", "Train Epoch: 3 [85120/104000 (82%)]\tLoss: 0.000005\n", "Train Epoch: 3 [85760/104000 (82%)]\tLoss: 0.000133\n", "Train Epoch: 3 [86400/104000 (83%)]\tLoss: 0.000140\n", "Train Epoch: 3 [87040/104000 (84%)]\tLoss: 0.000006\n", "Train Epoch: 3 [87680/104000 (84%)]\tLoss: 0.000036\n", "Train Epoch: 3 [88320/104000 (85%)]\tLoss: 0.000010\n", "Train Epoch: 3 [88960/104000 (86%)]\tLoss: 0.000005\n", "Train Epoch: 3 [89600/104000 (86%)]\tLoss: 0.000006\n", "Train Epoch: 3 [90240/104000 (87%)]\tLoss: 0.000026\n", "Train Epoch: 3 [90880/104000 (87%)]\tLoss: 0.000003\n", "Train Epoch: 3 [91520/104000 (88%)]\tLoss: 0.000098\n", "Train Epoch: 3 [92160/104000 (89%)]\tLoss: 0.000007\n", "Train Epoch: 3 [92800/104000 (89%)]\tLoss: 0.000002\n", "Train Epoch: 3 [93440/104000 (90%)]\tLoss: 0.000005\n", "Train Epoch: 3 [94080/104000 (90%)]\tLoss: 0.000001\n", "Train Epoch: 3 [94720/104000 (91%)]\tLoss: 0.000005\n", "Train Epoch: 3 [95360/104000 (92%)]\tLoss: 0.000036\n", "Train Epoch: 3 [96000/104000 (92%)]\tLoss: 0.000001\n", "Train Epoch: 3 [96640/104000 (93%)]\tLoss: 0.000001\n", "Train Epoch: 3 [97280/104000 (94%)]\tLoss: 0.000008\n", "Train Epoch: 3 [97920/104000 (94%)]\tLoss: 0.000013\n", "Train Epoch: 3 [98560/104000 (95%)]\tLoss: 0.000003\n", "Train Epoch: 3 [99200/104000 (95%)]\tLoss: 0.000030\n", "Train Epoch: 3 [99840/104000 (96%)]\tLoss: 0.000005\n", "Train Epoch: 3 [100480/104000 (97%)]\tLoss: 0.000014\n", "Train Epoch: 3 [101120/104000 (97%)]\tLoss: 0.000025\n", "Train Epoch: 3 [101760/104000 (98%)]\tLoss: 0.000002\n", "Train Epoch: 3 [102400/104000 (98%)]\tLoss: 0.000003\n", "Train Epoch: 3 [103040/104000 (99%)]\tLoss: 0.000034\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 3 [103680/104000 (100%)]\tLoss: 0.000004\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.3871, Accuracy: 25795/30000 (86%)\n", "\n", "Train Epoch: 4 [0/104000 (0%)]\tLoss: 0.000001\n", "Train Epoch: 4 [640/104000 (1%)]\tLoss: 0.000017\n", "Train Epoch: 4 [1280/104000 (1%)]\tLoss: 0.000013\n", "Train Epoch: 4 [1920/104000 (2%)]\tLoss: 0.000007\n", "Train Epoch: 4 [2560/104000 (2%)]\tLoss: 0.000003\n", "Train Epoch: 4 [3200/104000 (3%)]\tLoss: 0.000014\n", "Train Epoch: 4 [3840/104000 (4%)]\tLoss: 0.000000\n", "Train Epoch: 4 [4480/104000 (4%)]\tLoss: 0.000014\n", "Train Epoch: 4 [5120/104000 (5%)]\tLoss: 0.000003\n", "Train Epoch: 4 [5760/104000 (6%)]\tLoss: 0.000009\n", "Train Epoch: 4 [6400/104000 (6%)]\tLoss: 0.000011\n", "Train Epoch: 4 [7040/104000 (7%)]\tLoss: 0.000000\n", "Train Epoch: 4 [7680/104000 (7%)]\tLoss: 0.000046\n", "Train Epoch: 4 [8320/104000 (8%)]\tLoss: 0.000006\n", "Train Epoch: 4 [8960/104000 (9%)]\tLoss: 0.000004\n", "Train Epoch: 4 [9600/104000 (9%)]\tLoss: 0.000064\n", "Train Epoch: 4 [10240/104000 (10%)]\tLoss: 0.000001\n", "Train Epoch: 4 [10880/104000 (10%)]\tLoss: 0.000859\n", "Train Epoch: 4 [11520/104000 (11%)]\tLoss: 0.000001\n", "Train Epoch: 4 [12160/104000 (12%)]\tLoss: 0.000021\n", "Train Epoch: 4 [12800/104000 (12%)]\tLoss: 0.000045\n", "Train Epoch: 4 [13440/104000 (13%)]\tLoss: 0.000004\n", "Train Epoch: 4 [14080/104000 (14%)]\tLoss: 0.000212\n", "Train Epoch: 4 [14720/104000 (14%)]\tLoss: 0.000001\n", "Train Epoch: 4 [15360/104000 (15%)]\tLoss: 0.000002\n", "Train Epoch: 4 [16000/104000 (15%)]\tLoss: 0.000001\n", "Train Epoch: 4 [16640/104000 (16%)]\tLoss: 0.000008\n", "Train Epoch: 4 [17280/104000 (17%)]\tLoss: 0.000005\n", "Train Epoch: 4 [17920/104000 (17%)]\tLoss: 0.000027\n", "Train Epoch: 4 [18560/104000 (18%)]\tLoss: 0.000003\n", "Train Epoch: 4 [19200/104000 (18%)]\tLoss: 0.000002\n", "Train Epoch: 4 [19840/104000 (19%)]\tLoss: 0.000001\n", "Train Epoch: 4 [20480/104000 (20%)]\tLoss: 0.000003\n", "Train Epoch: 4 [21120/104000 (20%)]\tLoss: 0.000002\n", "Train Epoch: 4 [21760/104000 (21%)]\tLoss: 0.000001\n", "Train Epoch: 4 [22400/104000 (22%)]\tLoss: 0.000008\n", "Train Epoch: 4 [23040/104000 (22%)]\tLoss: 0.000005\n", "Train Epoch: 4 [23680/104000 (23%)]\tLoss: 0.000005\n", "Train Epoch: 4 [24320/104000 (23%)]\tLoss: 0.000003\n", "Train Epoch: 4 [24960/104000 (24%)]\tLoss: 0.000004\n", "Train Epoch: 4 [25600/104000 (25%)]\tLoss: 0.000001\n", "Train Epoch: 4 [26240/104000 (25%)]\tLoss: 0.000001\n", "Train Epoch: 4 [26880/104000 (26%)]\tLoss: 0.000003\n", "Train Epoch: 4 [27520/104000 (26%)]\tLoss: 0.000001\n", "Train Epoch: 4 [28160/104000 (27%)]\tLoss: 0.000083\n", "Train Epoch: 4 [28800/104000 (28%)]\tLoss: 0.000001\n", "Train Epoch: 4 [29440/104000 (28%)]\tLoss: 0.000563\n", "Train Epoch: 4 [30080/104000 (29%)]\tLoss: 0.000001\n", "Train Epoch: 4 [30720/104000 (30%)]\tLoss: 0.000002\n", "Train Epoch: 4 [31360/104000 (30%)]\tLoss: 0.000005\n", "Train Epoch: 4 [32000/104000 (31%)]\tLoss: 0.000008\n", "Train Epoch: 4 [32640/104000 (31%)]\tLoss: 0.000002\n", "Train Epoch: 4 [33280/104000 (32%)]\tLoss: 0.000008\n", "Train Epoch: 4 [33920/104000 (33%)]\tLoss: 0.000001\n", "Train Epoch: 4 [34560/104000 (33%)]\tLoss: 0.000133\n", "Train Epoch: 4 [35200/104000 (34%)]\tLoss: 0.000001\n", "Train Epoch: 4 [35840/104000 (34%)]\tLoss: 0.000011\n", "Train Epoch: 4 [36480/104000 (35%)]\tLoss: 0.000002\n", "Train Epoch: 4 [37120/104000 (36%)]\tLoss: 0.000004\n", "Train Epoch: 4 [37760/104000 (36%)]\tLoss: 0.000001\n", "Train Epoch: 4 [38400/104000 (37%)]\tLoss: 0.000270\n", "Train Epoch: 4 [39040/104000 (38%)]\tLoss: 0.000004\n", "Train Epoch: 4 [39680/104000 (38%)]\tLoss: 0.000012\n", "Train Epoch: 4 [40320/104000 (39%)]\tLoss: 0.000037\n", "Train Epoch: 4 [40960/104000 (39%)]\tLoss: 0.000005\n", "Train Epoch: 4 [41600/104000 (40%)]\tLoss: 0.000005\n", "Train Epoch: 4 [42240/104000 (41%)]\tLoss: 0.000011\n", "Train Epoch: 4 [42880/104000 (41%)]\tLoss: 0.000001\n", "Train Epoch: 4 [43520/104000 (42%)]\tLoss: 0.000015\n", "Train Epoch: 4 [44160/104000 (42%)]\tLoss: 0.000001\n", "Train Epoch: 4 [44800/104000 (43%)]\tLoss: 0.000009\n", "Train Epoch: 4 [45440/104000 (44%)]\tLoss: 0.000007\n", "Train Epoch: 4 [46080/104000 (44%)]\tLoss: 0.000002\n", "Train Epoch: 4 [46720/104000 (45%)]\tLoss: 0.000009\n", "Train Epoch: 4 [47360/104000 (46%)]\tLoss: 0.000006\n", "Train Epoch: 4 [48000/104000 (46%)]\tLoss: 0.000002\n", "Train Epoch: 4 [48640/104000 (47%)]\tLoss: 0.000010\n", "Train Epoch: 4 [49280/104000 (47%)]\tLoss: 0.000001\n", "Train Epoch: 4 [49920/104000 (48%)]\tLoss: 0.000002\n", "Train Epoch: 4 [50560/104000 (49%)]\tLoss: 0.000003\n", "Train Epoch: 4 [51200/104000 (49%)]\tLoss: 0.000001\n", "Train Epoch: 4 [51840/104000 (50%)]\tLoss: 0.000008\n", "Train Epoch: 4 [52480/104000 (50%)]\tLoss: 0.000012\n", "Train Epoch: 4 [53120/104000 (51%)]\tLoss: 0.000158\n", "Train Epoch: 4 [53760/104000 (52%)]\tLoss: 0.000009\n", "Train Epoch: 4 [54400/104000 (52%)]\tLoss: 0.000003\n", "Train Epoch: 4 [55040/104000 (53%)]\tLoss: 0.000001\n", "Train Epoch: 4 [55680/104000 (54%)]\tLoss: 0.000001\n", "Train Epoch: 4 [56320/104000 (54%)]\tLoss: 0.000002\n", "Train Epoch: 4 [56960/104000 (55%)]\tLoss: 0.000002\n", "Train Epoch: 4 [57600/104000 (55%)]\tLoss: 0.000003\n", "Train Epoch: 4 [58240/104000 (56%)]\tLoss: 0.000008\n", "Train Epoch: 4 [58880/104000 (57%)]\tLoss: 0.000008\n", "Train Epoch: 4 [59520/104000 (57%)]\tLoss: 0.000013\n", "Train Epoch: 4 [60160/104000 (58%)]\tLoss: 0.000002\n", "Train Epoch: 4 [60800/104000 (58%)]\tLoss: 0.000002\n", "Train Epoch: 4 [61440/104000 (59%)]\tLoss: 0.000019\n", "Train Epoch: 4 [62080/104000 (60%)]\tLoss: 0.000004\n", "Train Epoch: 4 [62720/104000 (60%)]\tLoss: 0.000002\n", "Train Epoch: 4 [63360/104000 (61%)]\tLoss: 0.000003\n", "Train Epoch: 4 [64000/104000 (62%)]\tLoss: 0.000003\n", "Train Epoch: 4 [64640/104000 (62%)]\tLoss: 0.000004\n", "Train Epoch: 4 [65280/104000 (63%)]\tLoss: 0.000002\n", "Train Epoch: 4 [65920/104000 (63%)]\tLoss: 0.000004\n", "Train Epoch: 4 [66560/104000 (64%)]\tLoss: 0.000001\n", "Train Epoch: 4 [67200/104000 (65%)]\tLoss: 0.000007\n", "Train Epoch: 4 [67840/104000 (65%)]\tLoss: 0.000030\n", "Train Epoch: 4 [68480/104000 (66%)]\tLoss: 0.000031\n", "Train Epoch: 4 [69120/104000 (66%)]\tLoss: 0.000087\n", "Train Epoch: 4 [69760/104000 (67%)]\tLoss: 0.000059\n", "Train Epoch: 4 [70400/104000 (68%)]\tLoss: 0.000084\n", "Train Epoch: 4 [71040/104000 (68%)]\tLoss: 0.000006\n", "Train Epoch: 4 [71680/104000 (69%)]\tLoss: 0.000003\n", "Train Epoch: 4 [72320/104000 (70%)]\tLoss: 0.000064\n", "Train Epoch: 4 [72960/104000 (70%)]\tLoss: 0.000001\n", "Train Epoch: 4 [73600/104000 (71%)]\tLoss: 0.000004\n", "Train Epoch: 4 [74240/104000 (71%)]\tLoss: 0.000004\n", "Train Epoch: 4 [74880/104000 (72%)]\tLoss: 0.000000\n", "Train Epoch: 4 [75520/104000 (73%)]\tLoss: 0.000001\n", "Train Epoch: 4 [76160/104000 (73%)]\tLoss: 0.000034\n", "Train Epoch: 4 [76800/104000 (74%)]\tLoss: 0.000062\n", "Train Epoch: 4 [77440/104000 (74%)]\tLoss: 0.000008\n", "Train Epoch: 4 [78080/104000 (75%)]\tLoss: 0.000015\n", "Train Epoch: 4 [78720/104000 (76%)]\tLoss: 0.000000\n", "Train Epoch: 4 [79360/104000 (76%)]\tLoss: 0.000002\n", "Train Epoch: 4 [80000/104000 (77%)]\tLoss: 0.000001\n", "Train Epoch: 4 [80640/104000 (78%)]\tLoss: 0.000000\n", "Train Epoch: 4 [81280/104000 (78%)]\tLoss: 0.000008\n", "Train Epoch: 4 [81920/104000 (79%)]\tLoss: 0.000007\n", "Train Epoch: 4 [82560/104000 (79%)]\tLoss: 0.000003\n", "Train Epoch: 4 [83200/104000 (80%)]\tLoss: 0.000015\n", "Train Epoch: 4 [83840/104000 (81%)]\tLoss: 0.000003\n", "Train Epoch: 4 [84480/104000 (81%)]\tLoss: 0.000007\n", "Train Epoch: 4 [85120/104000 (82%)]\tLoss: 0.000001\n", "Train Epoch: 4 [85760/104000 (82%)]\tLoss: 0.000002\n", "Train Epoch: 4 [86400/104000 (83%)]\tLoss: 0.000004\n", "Train Epoch: 4 [87040/104000 (84%)]\tLoss: 0.000227\n", "Train Epoch: 4 [87680/104000 (84%)]\tLoss: 0.000003\n", "Train Epoch: 4 [88320/104000 (85%)]\tLoss: 0.000003\n", "Train Epoch: 4 [88960/104000 (86%)]\tLoss: 0.000005\n", "Train Epoch: 4 [89600/104000 (86%)]\tLoss: 0.000004\n", "Train Epoch: 4 [90240/104000 (87%)]\tLoss: 0.000001\n", "Train Epoch: 4 [90880/104000 (87%)]\tLoss: 0.000002\n", "Train Epoch: 4 [91520/104000 (88%)]\tLoss: 0.000001\n", "Train Epoch: 4 [92160/104000 (89%)]\tLoss: 0.000001\n", "Train Epoch: 4 [92800/104000 (89%)]\tLoss: 0.000053\n", "Train Epoch: 4 [93440/104000 (90%)]\tLoss: 0.000002\n", "Train Epoch: 4 [94080/104000 (90%)]\tLoss: 0.000013\n", "Train Epoch: 4 [94720/104000 (91%)]\tLoss: 0.000020\n", "Train Epoch: 4 [95360/104000 (92%)]\tLoss: 0.000001\n", "Train Epoch: 4 [96000/104000 (92%)]\tLoss: 0.000009\n", "Train Epoch: 4 [96640/104000 (93%)]\tLoss: 0.000001\n", "Train Epoch: 4 [97280/104000 (94%)]\tLoss: 0.000074\n", "Train Epoch: 4 [97920/104000 (94%)]\tLoss: 0.000001\n", "Train Epoch: 4 [98560/104000 (95%)]\tLoss: 0.000016\n", "Train Epoch: 4 [99200/104000 (95%)]\tLoss: 0.000002\n", "Train Epoch: 4 [99840/104000 (96%)]\tLoss: 0.000001\n", "Train Epoch: 4 [100480/104000 (97%)]\tLoss: 0.000003\n", "Train Epoch: 4 [101120/104000 (97%)]\tLoss: 0.000004\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 4 [101760/104000 (98%)]\tLoss: 0.000006\n", "Train Epoch: 4 [102400/104000 (98%)]\tLoss: 0.000001\n", "Train Epoch: 4 [103040/104000 (99%)]\tLoss: 0.000000\n", "Train Epoch: 4 [103680/104000 (100%)]\tLoss: 0.000006\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.3498, Accuracy: 25909/30000 (86%)\n", "\n", "Train Epoch: 5 [0/104000 (0%)]\tLoss: 0.000037\n", "Train Epoch: 5 [640/104000 (1%)]\tLoss: 0.000001\n", "Train Epoch: 5 [1280/104000 (1%)]\tLoss: 0.000001\n", "Train Epoch: 5 [1920/104000 (2%)]\tLoss: 0.000003\n", "Train Epoch: 5 [2560/104000 (2%)]\tLoss: 0.000002\n", "Train Epoch: 5 [3200/104000 (3%)]\tLoss: 0.000003\n", "Train Epoch: 5 [3840/104000 (4%)]\tLoss: 0.000001\n", "Train Epoch: 5 [4480/104000 (4%)]\tLoss: 0.000009\n", "Train Epoch: 5 [5120/104000 (5%)]\tLoss: 0.000000\n", "Train Epoch: 5 [5760/104000 (6%)]\tLoss: 0.000002\n", "Train Epoch: 5 [6400/104000 (6%)]\tLoss: 0.000002\n", "Train Epoch: 5 [7040/104000 (7%)]\tLoss: 0.000004\n", "Train Epoch: 5 [7680/104000 (7%)]\tLoss: 0.000001\n", "Train Epoch: 5 [8320/104000 (8%)]\tLoss: 0.000001\n", "Train Epoch: 5 [8960/104000 (9%)]\tLoss: 0.000002\n", "Train Epoch: 5 [9600/104000 (9%)]\tLoss: 0.000003\n", "Train Epoch: 5 [10240/104000 (10%)]\tLoss: 0.000002\n", "Train Epoch: 5 [10880/104000 (10%)]\tLoss: 0.000000\n", "Train Epoch: 5 [11520/104000 (11%)]\tLoss: 0.000002\n", "Train Epoch: 5 [12160/104000 (12%)]\tLoss: 0.000158\n", "Train Epoch: 5 [12800/104000 (12%)]\tLoss: 0.000001\n", "Train Epoch: 5 [13440/104000 (13%)]\tLoss: 0.000003\n", "Train Epoch: 5 [14080/104000 (14%)]\tLoss: 0.000004\n", "Train Epoch: 5 [14720/104000 (14%)]\tLoss: 0.000007\n", "Train Epoch: 5 [15360/104000 (15%)]\tLoss: 0.000001\n", "Train Epoch: 5 [16000/104000 (15%)]\tLoss: 0.000001\n", "Train Epoch: 5 [16640/104000 (16%)]\tLoss: 0.000001\n", "Train Epoch: 5 [17280/104000 (17%)]\tLoss: 0.000002\n", "Train Epoch: 5 [17920/104000 (17%)]\tLoss: 0.000001\n", "Train Epoch: 5 [18560/104000 (18%)]\tLoss: 0.000005\n", "Train Epoch: 5 [19200/104000 (18%)]\tLoss: 0.000001\n", "Train Epoch: 5 [19840/104000 (19%)]\tLoss: 0.000003\n", "Train Epoch: 5 [20480/104000 (20%)]\tLoss: 0.000004\n", "Train Epoch: 5 [21120/104000 (20%)]\tLoss: 0.000001\n", "Train Epoch: 5 [21760/104000 (21%)]\tLoss: 0.000001\n", "Train Epoch: 5 [22400/104000 (22%)]\tLoss: 0.000002\n", "Train Epoch: 5 [23040/104000 (22%)]\tLoss: 0.000003\n", "Train Epoch: 5 [23680/104000 (23%)]\tLoss: 0.000002\n", "Train Epoch: 5 [24320/104000 (23%)]\tLoss: 0.000052\n", "Train Epoch: 5 [24960/104000 (24%)]\tLoss: 0.000039\n", "Train Epoch: 5 [25600/104000 (25%)]\tLoss: 0.000011\n", "Train Epoch: 5 [26240/104000 (25%)]\tLoss: 0.000009\n", "Train Epoch: 5 [26880/104000 (26%)]\tLoss: 0.000010\n", "Train Epoch: 5 [27520/104000 (26%)]\tLoss: 0.000046\n", "Train Epoch: 5 [28160/104000 (27%)]\tLoss: 0.000002\n", "Train Epoch: 5 [28800/104000 (28%)]\tLoss: 0.000004\n", "Train Epoch: 5 [29440/104000 (28%)]\tLoss: 0.000001\n", "Train Epoch: 5 [30080/104000 (29%)]\tLoss: 0.000001\n", "Train Epoch: 5 [30720/104000 (30%)]\tLoss: 0.000042\n", "Train Epoch: 5 [31360/104000 (30%)]\tLoss: 0.000001\n", "Train Epoch: 5 [32000/104000 (31%)]\tLoss: 0.000003\n", "Train Epoch: 5 [32640/104000 (31%)]\tLoss: 0.000012\n", "Train Epoch: 5 [33280/104000 (32%)]\tLoss: 0.000004\n", "Train Epoch: 5 [33920/104000 (33%)]\tLoss: 0.000002\n", "Train Epoch: 5 [34560/104000 (33%)]\tLoss: 0.000000\n", "Train Epoch: 5 [35200/104000 (34%)]\tLoss: 0.000011\n", "Train Epoch: 5 [35840/104000 (34%)]\tLoss: 0.000001\n", "Train Epoch: 5 [36480/104000 (35%)]\tLoss: 0.000000\n", "Train Epoch: 5 [37120/104000 (36%)]\tLoss: 0.000679\n", "Train Epoch: 5 [37760/104000 (36%)]\tLoss: 0.000003\n", "Train Epoch: 5 [38400/104000 (37%)]\tLoss: 0.000006\n", "Train Epoch: 5 [39040/104000 (38%)]\tLoss: 0.000004\n", "Train Epoch: 5 [39680/104000 (38%)]\tLoss: 0.000001\n", "Train Epoch: 5 [40320/104000 (39%)]\tLoss: 0.000001\n", "Train Epoch: 5 [40960/104000 (39%)]\tLoss: 0.000001\n", "Train Epoch: 5 [41600/104000 (40%)]\tLoss: 0.000000\n", "Train Epoch: 5 [42240/104000 (41%)]\tLoss: 0.000044\n", "Train Epoch: 5 [42880/104000 (41%)]\tLoss: 0.000001\n", "Train Epoch: 5 [43520/104000 (42%)]\tLoss: 0.000002\n", "Train Epoch: 5 [44160/104000 (42%)]\tLoss: 0.000007\n", "Train Epoch: 5 [44800/104000 (43%)]\tLoss: 0.000002\n", "Train Epoch: 5 [45440/104000 (44%)]\tLoss: 0.000005\n", "Train Epoch: 5 [46080/104000 (44%)]\tLoss: 0.000006\n", "Train Epoch: 5 [46720/104000 (45%)]\tLoss: 0.000011\n", "Train Epoch: 5 [47360/104000 (46%)]\tLoss: 0.000000\n", "Train Epoch: 5 [48000/104000 (46%)]\tLoss: 0.000001\n", "Train Epoch: 5 [48640/104000 (47%)]\tLoss: 0.000001\n", "Train Epoch: 5 [49280/104000 (47%)]\tLoss: 0.000013\n", "Train Epoch: 5 [49920/104000 (48%)]\tLoss: 0.000007\n", "Train Epoch: 5 [50560/104000 (49%)]\tLoss: 0.000001\n", "Train Epoch: 5 [51200/104000 (49%)]\tLoss: 0.000008\n", "Train Epoch: 5 [51840/104000 (50%)]\tLoss: 0.000000\n", "Train Epoch: 5 [52480/104000 (50%)]\tLoss: 0.000003\n", "Train Epoch: 5 [53120/104000 (51%)]\tLoss: 0.000002\n", "Train Epoch: 5 [53760/104000 (52%)]\tLoss: 0.000004\n", "Train Epoch: 5 [54400/104000 (52%)]\tLoss: 0.000007\n", "Train Epoch: 5 [55040/104000 (53%)]\tLoss: 0.000002\n", "Train Epoch: 5 [55680/104000 (54%)]\tLoss: 0.000001\n", "Train Epoch: 5 [56320/104000 (54%)]\tLoss: 0.000000\n", "Train Epoch: 5 [56960/104000 (55%)]\tLoss: 0.000001\n", "Train Epoch: 5 [57600/104000 (55%)]\tLoss: 0.000002\n", "Train Epoch: 5 [58240/104000 (56%)]\tLoss: 0.000004\n", "Train Epoch: 5 [58880/104000 (57%)]\tLoss: 0.000007\n", "Train Epoch: 5 [59520/104000 (57%)]\tLoss: 0.000001\n", "Train Epoch: 5 [60160/104000 (58%)]\tLoss: 0.000002\n", "Train Epoch: 5 [60800/104000 (58%)]\tLoss: 0.000002\n", "Train Epoch: 5 [61440/104000 (59%)]\tLoss: 0.000192\n", "Train Epoch: 5 [62080/104000 (60%)]\tLoss: 0.000000\n", "Train Epoch: 5 [62720/104000 (60%)]\tLoss: 0.000002\n", "Train Epoch: 5 [63360/104000 (61%)]\tLoss: 0.000002\n", "Train Epoch: 5 [64000/104000 (62%)]\tLoss: 0.000004\n", "Train Epoch: 5 [64640/104000 (62%)]\tLoss: 0.000029\n", "Train Epoch: 5 [65280/104000 (63%)]\tLoss: 0.000001\n", "Train Epoch: 5 [65920/104000 (63%)]\tLoss: 0.000000\n", "Train Epoch: 5 [66560/104000 (64%)]\tLoss: 0.000004\n", "Train Epoch: 5 [67200/104000 (65%)]\tLoss: 0.000002\n", "Train Epoch: 5 [67840/104000 (65%)]\tLoss: 0.000031\n", "Train Epoch: 5 [68480/104000 (66%)]\tLoss: 0.000002\n", "Train Epoch: 5 [69120/104000 (66%)]\tLoss: 0.000003\n", "Train Epoch: 5 [69760/104000 (67%)]\tLoss: 0.000001\n", "Train Epoch: 5 [70400/104000 (68%)]\tLoss: 0.000001\n", "Train Epoch: 5 [71040/104000 (68%)]\tLoss: 0.000006\n", "Train Epoch: 5 [71680/104000 (69%)]\tLoss: 0.000002\n", "Train Epoch: 5 [72320/104000 (70%)]\tLoss: 0.000006\n", "Train Epoch: 5 [72960/104000 (70%)]\tLoss: 0.000001\n", "Train Epoch: 5 [73600/104000 (71%)]\tLoss: 0.000001\n", "Train Epoch: 5 [74240/104000 (71%)]\tLoss: 0.000004\n", "Train Epoch: 5 [74880/104000 (72%)]\tLoss: 0.000001\n", "Train Epoch: 5 [75520/104000 (73%)]\tLoss: 0.000001\n", "Train Epoch: 5 [76160/104000 (73%)]\tLoss: 0.000003\n", "Train Epoch: 5 [76800/104000 (74%)]\tLoss: 0.000061\n", "Train Epoch: 5 [77440/104000 (74%)]\tLoss: 0.000007\n", "Train Epoch: 5 [78080/104000 (75%)]\tLoss: 0.000001\n", "Train Epoch: 5 [78720/104000 (76%)]\tLoss: 0.000005\n", "Train Epoch: 5 [79360/104000 (76%)]\tLoss: 0.000003\n", "Train Epoch: 5 [80000/104000 (77%)]\tLoss: 0.000009\n", "Train Epoch: 5 [80640/104000 (78%)]\tLoss: 0.000017\n", "Train Epoch: 5 [81280/104000 (78%)]\tLoss: 0.000051\n", "Train Epoch: 5 [81920/104000 (79%)]\tLoss: 0.000001\n", "Train Epoch: 5 [82560/104000 (79%)]\tLoss: 0.000002\n", "Train Epoch: 5 [83200/104000 (80%)]\tLoss: 0.000005\n", "Train Epoch: 5 [83840/104000 (81%)]\tLoss: 0.000006\n", "Train Epoch: 5 [84480/104000 (81%)]\tLoss: 0.000007\n", "Train Epoch: 5 [85120/104000 (82%)]\tLoss: 0.000006\n", "Train Epoch: 5 [85760/104000 (82%)]\tLoss: 0.000060\n", "Train Epoch: 5 [86400/104000 (83%)]\tLoss: 0.000002\n", "Train Epoch: 5 [87040/104000 (84%)]\tLoss: 0.000003\n", "Train Epoch: 5 [87680/104000 (84%)]\tLoss: 0.000021\n", "Train Epoch: 5 [88320/104000 (85%)]\tLoss: 0.000002\n", "Train Epoch: 5 [88960/104000 (86%)]\tLoss: 0.000003\n", "Train Epoch: 5 [89600/104000 (86%)]\tLoss: 0.000031\n", "Train Epoch: 5 [90240/104000 (87%)]\tLoss: 0.000000\n", "Train Epoch: 5 [90880/104000 (87%)]\tLoss: 0.000003\n", "Train Epoch: 5 [91520/104000 (88%)]\tLoss: 0.000001\n", "Train Epoch: 5 [92160/104000 (89%)]\tLoss: 0.000001\n", "Train Epoch: 5 [92800/104000 (89%)]\tLoss: 0.000001\n", "Train Epoch: 5 [93440/104000 (90%)]\tLoss: 0.000002\n", "Train Epoch: 5 [94080/104000 (90%)]\tLoss: 0.000001\n", "Train Epoch: 5 [94720/104000 (91%)]\tLoss: 0.000001\n", "Train Epoch: 5 [95360/104000 (92%)]\tLoss: 0.000001\n", "Train Epoch: 5 [96000/104000 (92%)]\tLoss: 0.000006\n", "Train Epoch: 5 [96640/104000 (93%)]\tLoss: 0.000064\n", "Train Epoch: 5 [97280/104000 (94%)]\tLoss: 0.000003\n", "Train Epoch: 5 [97920/104000 (94%)]\tLoss: 0.000001\n", "Train Epoch: 5 [98560/104000 (95%)]\tLoss: 0.000021\n", "Train Epoch: 5 [99200/104000 (95%)]\tLoss: 0.000017\n", "Train Epoch: 5 [99840/104000 (96%)]\tLoss: 0.000006\n", "Train Epoch: 5 [100480/104000 (97%)]\tLoss: 0.000000\n", "Train Epoch: 5 [101120/104000 (97%)]\tLoss: 0.000002\n", "Train Epoch: 5 [101760/104000 (98%)]\tLoss: 0.000014\n", "Train Epoch: 5 [102400/104000 (98%)]\tLoss: 0.000002\n", "Train Epoch: 5 [103040/104000 (99%)]\tLoss: 0.000006\n", "Train Epoch: 5 [103680/104000 (100%)]\tLoss: 0.000003\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.2745, Accuracy: 26568/30000 (89%)\n", "\n", "[100.0]\n", "[88.56]\n", "The number of neurons in CNN layer is 5\n", "Train Epoch: 1 [0/104000 (0%)]\tLoss: 0.735635\n", "Train Epoch: 1 [640/104000 (1%)]\tLoss: 0.006729\n", "Train Epoch: 1 [1280/104000 (1%)]\tLoss: 0.008744\n", "Train Epoch: 1 [1920/104000 (2%)]\tLoss: 0.003856\n", "Train Epoch: 1 [2560/104000 (2%)]\tLoss: 0.002027\n", "Train Epoch: 1 [3200/104000 (3%)]\tLoss: 0.001791\n", "Train Epoch: 1 [3840/104000 (4%)]\tLoss: 0.001974\n", "Train Epoch: 1 [4480/104000 (4%)]\tLoss: 0.002818\n", "Train Epoch: 1 [5120/104000 (5%)]\tLoss: 0.001130\n", "Train Epoch: 1 [5760/104000 (6%)]\tLoss: 0.001281\n", "Train Epoch: 1 [6400/104000 (6%)]\tLoss: 0.001820\n", "Train Epoch: 1 [7040/104000 (7%)]\tLoss: 0.000577\n", "Train Epoch: 1 [7680/104000 (7%)]\tLoss: 0.002283\n", "Train Epoch: 1 [8320/104000 (8%)]\tLoss: 0.001235\n", "Train Epoch: 1 [8960/104000 (9%)]\tLoss: 0.000694\n", "Train Epoch: 1 [9600/104000 (9%)]\tLoss: 0.001370\n", "Train Epoch: 1 [10240/104000 (10%)]\tLoss: 0.000621\n", "Train Epoch: 1 [10880/104000 (10%)]\tLoss: 0.000582\n", "Train Epoch: 1 [11520/104000 (11%)]\tLoss: 0.002235\n", "Train Epoch: 1 [12160/104000 (12%)]\tLoss: 0.000568\n", "Train Epoch: 1 [12800/104000 (12%)]\tLoss: 0.000624\n", "Train Epoch: 1 [13440/104000 (13%)]\tLoss: 0.000438\n", "Train Epoch: 1 [14080/104000 (14%)]\tLoss: 0.000685\n", "Train Epoch: 1 [14720/104000 (14%)]\tLoss: 0.000693\n", "Train Epoch: 1 [15360/104000 (15%)]\tLoss: 0.000425\n", "Train Epoch: 1 [16000/104000 (15%)]\tLoss: 0.000955\n", "Train Epoch: 1 [16640/104000 (16%)]\tLoss: 0.000375\n", "Train Epoch: 1 [17280/104000 (17%)]\tLoss: 0.001304\n", "Train Epoch: 1 [17920/104000 (17%)]\tLoss: 0.000319\n", "Train Epoch: 1 [18560/104000 (18%)]\tLoss: 0.000427\n", "Train Epoch: 1 [19200/104000 (18%)]\tLoss: 0.000714\n", "Train Epoch: 1 [19840/104000 (19%)]\tLoss: 0.000396\n", "Train Epoch: 1 [20480/104000 (20%)]\tLoss: 0.000221\n", "Train Epoch: 1 [21120/104000 (20%)]\tLoss: 0.001221\n", "Train Epoch: 1 [21760/104000 (21%)]\tLoss: 0.000625\n", "Train Epoch: 1 [22400/104000 (22%)]\tLoss: 0.000173\n", "Train Epoch: 1 [23040/104000 (22%)]\tLoss: 0.000290\n", "Train Epoch: 1 [23680/104000 (23%)]\tLoss: 0.000173\n", "Train Epoch: 1 [24320/104000 (23%)]\tLoss: 0.000257\n", "Train Epoch: 1 [24960/104000 (24%)]\tLoss: 0.000416\n", "Train Epoch: 1 [25600/104000 (25%)]\tLoss: 0.000329\n", "Train Epoch: 1 [26240/104000 (25%)]\tLoss: 0.001052\n", "Train Epoch: 1 [26880/104000 (26%)]\tLoss: 0.000258\n", "Train Epoch: 1 [27520/104000 (26%)]\tLoss: 0.000182\n", "Train Epoch: 1 [28160/104000 (27%)]\tLoss: 0.000222\n", "Train Epoch: 1 [28800/104000 (28%)]\tLoss: 0.001760\n", "Train Epoch: 1 [29440/104000 (28%)]\tLoss: 0.000554\n", "Train Epoch: 1 [30080/104000 (29%)]\tLoss: 0.000418\n", "Train Epoch: 1 [30720/104000 (30%)]\tLoss: 0.000221\n", "Train Epoch: 1 [31360/104000 (30%)]\tLoss: 0.000220\n", "Train Epoch: 1 [32000/104000 (31%)]\tLoss: 0.000295\n", "Train Epoch: 1 [32640/104000 (31%)]\tLoss: 0.000210\n", "Train Epoch: 1 [33280/104000 (32%)]\tLoss: 0.000116\n", "Train Epoch: 1 [33920/104000 (33%)]\tLoss: 0.002035\n", "Train Epoch: 1 [34560/104000 (33%)]\tLoss: 0.000297\n", "Train Epoch: 1 [35200/104000 (34%)]\tLoss: 0.000158\n", "Train Epoch: 1 [35840/104000 (34%)]\tLoss: 0.000380\n", "Train Epoch: 1 [36480/104000 (35%)]\tLoss: 0.000463\n", "Train Epoch: 1 [37120/104000 (36%)]\tLoss: 0.000155\n", "Train Epoch: 1 [37760/104000 (36%)]\tLoss: 0.000535\n", "Train Epoch: 1 [38400/104000 (37%)]\tLoss: 0.000258\n", "Train Epoch: 1 [39040/104000 (38%)]\tLoss: 0.000307\n", "Train Epoch: 1 [39680/104000 (38%)]\tLoss: 0.000672\n", "Train Epoch: 1 [40320/104000 (39%)]\tLoss: 0.000382\n", "Train Epoch: 1 [40960/104000 (39%)]\tLoss: 0.000181\n", "Train Epoch: 1 [41600/104000 (40%)]\tLoss: 0.000159\n", "Train Epoch: 1 [42240/104000 (41%)]\tLoss: 0.000101\n", "Train Epoch: 1 [42880/104000 (41%)]\tLoss: 0.000263\n", "Train Epoch: 1 [43520/104000 (42%)]\tLoss: 0.000222\n", "Train Epoch: 1 [44160/104000 (42%)]\tLoss: 0.000363\n", "Train Epoch: 1 [44800/104000 (43%)]\tLoss: 0.000188\n", "Train Epoch: 1 [45440/104000 (44%)]\tLoss: 0.000522\n", "Train Epoch: 1 [46080/104000 (44%)]\tLoss: 0.000156\n", "Train Epoch: 1 [46720/104000 (45%)]\tLoss: 0.000356\n", "Train Epoch: 1 [47360/104000 (46%)]\tLoss: 0.000110\n", "Train Epoch: 1 [48000/104000 (46%)]\tLoss: 0.000104\n", "Train Epoch: 1 [48640/104000 (47%)]\tLoss: 0.001513\n", "Train Epoch: 1 [49280/104000 (47%)]\tLoss: 0.000110\n", "Train Epoch: 1 [49920/104000 (48%)]\tLoss: 0.000910\n", "Train Epoch: 1 [50560/104000 (49%)]\tLoss: 0.000097\n", "Train Epoch: 1 [51200/104000 (49%)]\tLoss: 0.000221\n", "Train Epoch: 1 [51840/104000 (50%)]\tLoss: 0.000094\n", "Train Epoch: 1 [52480/104000 (50%)]\tLoss: 0.000126\n", "Train Epoch: 1 [53120/104000 (51%)]\tLoss: 0.000117\n", "Train Epoch: 1 [53760/104000 (52%)]\tLoss: 0.000074\n", "Train Epoch: 1 [54400/104000 (52%)]\tLoss: 0.000081\n", "Train Epoch: 1 [55040/104000 (53%)]\tLoss: 0.000126\n", "Train Epoch: 1 [55680/104000 (54%)]\tLoss: 0.000236\n", "Train Epoch: 1 [56320/104000 (54%)]\tLoss: 0.000757\n", "Train Epoch: 1 [56960/104000 (55%)]\tLoss: 0.000106\n", "Train Epoch: 1 [57600/104000 (55%)]\tLoss: 0.000110\n", "Train Epoch: 1 [58240/104000 (56%)]\tLoss: 0.000213\n", "Train Epoch: 1 [58880/104000 (57%)]\tLoss: 0.002330\n", "Train Epoch: 1 [59520/104000 (57%)]\tLoss: 0.000128\n", "Train Epoch: 1 [60160/104000 (58%)]\tLoss: 0.000242\n", "Train Epoch: 1 [60800/104000 (58%)]\tLoss: 0.000098\n", "Train Epoch: 1 [61440/104000 (59%)]\tLoss: 0.000131\n", "Train Epoch: 1 [62080/104000 (60%)]\tLoss: 0.000151\n", "Train Epoch: 1 [62720/104000 (60%)]\tLoss: 0.000059\n", "Train Epoch: 1 [63360/104000 (61%)]\tLoss: 0.000225\n", "Train Epoch: 1 [64000/104000 (62%)]\tLoss: 0.000086\n", "Train Epoch: 1 [64640/104000 (62%)]\tLoss: 0.000091\n", "Train Epoch: 1 [65280/104000 (63%)]\tLoss: 0.000537\n", "Train Epoch: 1 [65920/104000 (63%)]\tLoss: 0.000686\n", "Train Epoch: 1 [66560/104000 (64%)]\tLoss: 0.000159\n", "Train Epoch: 1 [67200/104000 (65%)]\tLoss: 0.000342\n", "Train Epoch: 1 [67840/104000 (65%)]\tLoss: 0.000073\n", "Train Epoch: 1 [68480/104000 (66%)]\tLoss: 0.000064\n", "Train Epoch: 1 [69120/104000 (66%)]\tLoss: 0.000098\n", "Train Epoch: 1 [69760/104000 (67%)]\tLoss: 0.000095\n", "Train Epoch: 1 [70400/104000 (68%)]\tLoss: 0.000273\n", "Train Epoch: 1 [71040/104000 (68%)]\tLoss: 0.000096\n", "Train Epoch: 1 [71680/104000 (69%)]\tLoss: 0.000077\n", "Train Epoch: 1 [72320/104000 (70%)]\tLoss: 0.000106\n", "Train Epoch: 1 [72960/104000 (70%)]\tLoss: 0.000131\n", "Train Epoch: 1 [73600/104000 (71%)]\tLoss: 0.000170\n", "Train Epoch: 1 [74240/104000 (71%)]\tLoss: 0.000123\n", "Train Epoch: 1 [74880/104000 (72%)]\tLoss: 0.000081\n", "Train Epoch: 1 [75520/104000 (73%)]\tLoss: 0.000088\n", "Train Epoch: 1 [76160/104000 (73%)]\tLoss: 0.000166\n", "Train Epoch: 1 [76800/104000 (74%)]\tLoss: 0.000057\n", "Train Epoch: 1 [77440/104000 (74%)]\tLoss: 0.000100\n", "Train Epoch: 1 [78080/104000 (75%)]\tLoss: 0.000197\n", "Train Epoch: 1 [78720/104000 (76%)]\tLoss: 0.000060\n", "Train Epoch: 1 [79360/104000 (76%)]\tLoss: 0.000106\n", "Train Epoch: 1 [80000/104000 (77%)]\tLoss: 0.000139\n", "Train Epoch: 1 [80640/104000 (78%)]\tLoss: 0.000069\n", "Train Epoch: 1 [81280/104000 (78%)]\tLoss: 0.000104\n", "Train Epoch: 1 [81920/104000 (79%)]\tLoss: 0.000082\n", "Train Epoch: 1 [82560/104000 (79%)]\tLoss: 0.000159\n", "Train Epoch: 1 [83200/104000 (80%)]\tLoss: 0.000061\n", "Train Epoch: 1 [83840/104000 (81%)]\tLoss: 0.000215\n", "Train Epoch: 1 [84480/104000 (81%)]\tLoss: 0.000723\n", "Train Epoch: 1 [85120/104000 (82%)]\tLoss: 0.000050\n", "Train Epoch: 1 [85760/104000 (82%)]\tLoss: 0.000138\n", "Train Epoch: 1 [86400/104000 (83%)]\tLoss: 0.000088\n", "Train Epoch: 1 [87040/104000 (84%)]\tLoss: 0.000291\n", "Train Epoch: 1 [87680/104000 (84%)]\tLoss: 0.000090\n", "Train Epoch: 1 [88320/104000 (85%)]\tLoss: 0.000047\n", "Train Epoch: 1 [88960/104000 (86%)]\tLoss: 0.000045\n", "Train Epoch: 1 [89600/104000 (86%)]\tLoss: 0.000162\n", "Train Epoch: 1 [90240/104000 (87%)]\tLoss: 0.000181\n", "Train Epoch: 1 [90880/104000 (87%)]\tLoss: 0.000334\n", "Train Epoch: 1 [91520/104000 (88%)]\tLoss: 0.000049\n", "Train Epoch: 1 [92160/104000 (89%)]\tLoss: 0.000166\n", "Train Epoch: 1 [92800/104000 (89%)]\tLoss: 0.000054\n", "Train Epoch: 1 [93440/104000 (90%)]\tLoss: 0.000352\n", "Train Epoch: 1 [94080/104000 (90%)]\tLoss: 0.000066\n", "Train Epoch: 1 [94720/104000 (91%)]\tLoss: 0.000109\n", "Train Epoch: 1 [95360/104000 (92%)]\tLoss: 0.000052\n", "Train Epoch: 1 [96000/104000 (92%)]\tLoss: 0.000066\n", "Train Epoch: 1 [96640/104000 (93%)]\tLoss: 0.000053\n", "Train Epoch: 1 [97280/104000 (94%)]\tLoss: 0.000082\n", "Train Epoch: 1 [97920/104000 (94%)]\tLoss: 0.000039\n", "Train Epoch: 1 [98560/104000 (95%)]\tLoss: 0.000065\n", "Train Epoch: 1 [99200/104000 (95%)]\tLoss: 0.000068\n", "Train Epoch: 1 [99840/104000 (96%)]\tLoss: 0.000054\n", "Train Epoch: 1 [100480/104000 (97%)]\tLoss: 0.000082\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 1 [101120/104000 (97%)]\tLoss: 0.000055\n", "Train Epoch: 1 [101760/104000 (98%)]\tLoss: 0.000100\n", "Train Epoch: 1 [102400/104000 (98%)]\tLoss: 0.000185\n", "Train Epoch: 1 [103040/104000 (99%)]\tLoss: 0.000271\n", "Train Epoch: 1 [103680/104000 (100%)]\tLoss: 0.000036\n", "\n", "Test set: Average loss: 0.0001, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.2616, Accuracy: 26099/30000 (87%)\n", "\n", "Train Epoch: 2 [0/104000 (0%)]\tLoss: 0.000091\n", "Train Epoch: 2 [640/104000 (1%)]\tLoss: 0.000039\n", "Train Epoch: 2 [1280/104000 (1%)]\tLoss: 0.000085\n", "Train Epoch: 2 [1920/104000 (2%)]\tLoss: 0.000152\n", "Train Epoch: 2 [2560/104000 (2%)]\tLoss: 0.000086\n", "Train Epoch: 2 [3200/104000 (3%)]\tLoss: 0.000064\n", "Train Epoch: 2 [3840/104000 (4%)]\tLoss: 0.000059\n", "Train Epoch: 2 [4480/104000 (4%)]\tLoss: 0.000649\n", "Train Epoch: 2 [5120/104000 (5%)]\tLoss: 0.000282\n", "Train Epoch: 2 [5760/104000 (6%)]\tLoss: 0.000036\n", "Train Epoch: 2 [6400/104000 (6%)]\tLoss: 0.000047\n", "Train Epoch: 2 [7040/104000 (7%)]\tLoss: 0.000039\n", "Train Epoch: 2 [7680/104000 (7%)]\tLoss: 0.000091\n", "Train Epoch: 2 [8320/104000 (8%)]\tLoss: 0.000032\n", "Train Epoch: 2 [8960/104000 (9%)]\tLoss: 0.000316\n", "Train Epoch: 2 [9600/104000 (9%)]\tLoss: 0.000034\n", "Train Epoch: 2 [10240/104000 (10%)]\tLoss: 0.000067\n", "Train Epoch: 2 [10880/104000 (10%)]\tLoss: 0.000373\n", "Train Epoch: 2 [11520/104000 (11%)]\tLoss: 0.000094\n", "Train Epoch: 2 [12160/104000 (12%)]\tLoss: 0.000035\n", "Train Epoch: 2 [12800/104000 (12%)]\tLoss: 0.000582\n", "Train Epoch: 2 [13440/104000 (13%)]\tLoss: 0.000043\n", "Train Epoch: 2 [14080/104000 (14%)]\tLoss: 0.000256\n", "Train Epoch: 2 [14720/104000 (14%)]\tLoss: 0.000051\n", "Train Epoch: 2 [15360/104000 (15%)]\tLoss: 0.000048\n", "Train Epoch: 2 [16000/104000 (15%)]\tLoss: 0.000040\n", "Train Epoch: 2 [16640/104000 (16%)]\tLoss: 0.000048\n", "Train Epoch: 2 [17280/104000 (17%)]\tLoss: 0.000190\n", "Train Epoch: 2 [17920/104000 (17%)]\tLoss: 0.000038\n", "Train Epoch: 2 [18560/104000 (18%)]\tLoss: 0.000502\n", "Train Epoch: 2 [19200/104000 (18%)]\tLoss: 0.000037\n", "Train Epoch: 2 [19840/104000 (19%)]\tLoss: 0.000034\n", "Train Epoch: 2 [20480/104000 (20%)]\tLoss: 0.000313\n", "Train Epoch: 2 [21120/104000 (20%)]\tLoss: 0.000083\n", "Train Epoch: 2 [21760/104000 (21%)]\tLoss: 0.000061\n", "Train Epoch: 2 [22400/104000 (22%)]\tLoss: 0.000113\n", "Train Epoch: 2 [23040/104000 (22%)]\tLoss: 0.000027\n", "Train Epoch: 2 [23680/104000 (23%)]\tLoss: 0.000078\n", "Train Epoch: 2 [24320/104000 (23%)]\tLoss: 0.000094\n", "Train Epoch: 2 [24960/104000 (24%)]\tLoss: 0.000041\n", "Train Epoch: 2 [25600/104000 (25%)]\tLoss: 0.000130\n", "Train Epoch: 2 [26240/104000 (25%)]\tLoss: 0.000056\n", "Train Epoch: 2 [26880/104000 (26%)]\tLoss: 0.002189\n", "Train Epoch: 2 [27520/104000 (26%)]\tLoss: 0.000205\n", "Train Epoch: 2 [28160/104000 (27%)]\tLoss: 0.000045\n", "Train Epoch: 2 [28800/104000 (28%)]\tLoss: 0.000070\n", "Train Epoch: 2 [29440/104000 (28%)]\tLoss: 0.000073\n", "Train Epoch: 2 [30080/104000 (29%)]\tLoss: 0.000064\n", "Train Epoch: 2 [30720/104000 (30%)]\tLoss: 0.000055\n", "Train Epoch: 2 [31360/104000 (30%)]\tLoss: 0.000139\n", "Train Epoch: 2 [32000/104000 (31%)]\tLoss: 0.000033\n", "Train Epoch: 2 [32640/104000 (31%)]\tLoss: 0.000054\n", "Train Epoch: 2 [33280/104000 (32%)]\tLoss: 0.000057\n", "Train Epoch: 2 [33920/104000 (33%)]\tLoss: 0.000062\n", "Train Epoch: 2 [34560/104000 (33%)]\tLoss: 0.000061\n", "Train Epoch: 2 [35200/104000 (34%)]\tLoss: 0.000050\n", "Train Epoch: 2 [35840/104000 (34%)]\tLoss: 0.000143\n", "Train Epoch: 2 [36480/104000 (35%)]\tLoss: 0.000057\n", "Train Epoch: 2 [37120/104000 (36%)]\tLoss: 0.000041\n", "Train Epoch: 2 [37760/104000 (36%)]\tLoss: 0.000286\n", "Train Epoch: 2 [38400/104000 (37%)]\tLoss: 0.000020\n", "Train Epoch: 2 [39040/104000 (38%)]\tLoss: 0.000036\n", "Train Epoch: 2 [39680/104000 (38%)]\tLoss: 0.000020\n", "Train Epoch: 2 [40320/104000 (39%)]\tLoss: 0.000025\n", "Train Epoch: 2 [40960/104000 (39%)]\tLoss: 0.000055\n", "Train Epoch: 2 [41600/104000 (40%)]\tLoss: 0.000046\n", "Train Epoch: 2 [42240/104000 (41%)]\tLoss: 0.000083\n", "Train Epoch: 2 [42880/104000 (41%)]\tLoss: 0.000153\n", "Train Epoch: 2 [43520/104000 (42%)]\tLoss: 0.000138\n", "Train Epoch: 2 [44160/104000 (42%)]\tLoss: 0.000025\n", "Train Epoch: 2 [44800/104000 (43%)]\tLoss: 0.000027\n", "Train Epoch: 2 [45440/104000 (44%)]\tLoss: 0.000072\n", "Train Epoch: 2 [46080/104000 (44%)]\tLoss: 0.000040\n", "Train Epoch: 2 [46720/104000 (45%)]\tLoss: 0.000063\n", "Train Epoch: 2 [47360/104000 (46%)]\tLoss: 0.000047\n", "Train Epoch: 2 [48000/104000 (46%)]\tLoss: 0.000028\n", "Train Epoch: 2 [48640/104000 (47%)]\tLoss: 0.000244\n", "Train Epoch: 2 [49280/104000 (47%)]\tLoss: 0.000033\n", "Train Epoch: 2 [49920/104000 (48%)]\tLoss: 0.000054\n", "Train Epoch: 2 [50560/104000 (49%)]\tLoss: 0.000039\n", "Train Epoch: 2 [51200/104000 (49%)]\tLoss: 0.000052\n", "Train Epoch: 2 [51840/104000 (50%)]\tLoss: 0.000031\n", "Train Epoch: 2 [52480/104000 (50%)]\tLoss: 0.000042\n", "Train Epoch: 2 [53120/104000 (51%)]\tLoss: 0.000025\n", "Train Epoch: 2 [53760/104000 (52%)]\tLoss: 0.000221\n", "Train Epoch: 2 [54400/104000 (52%)]\tLoss: 0.000047\n", "Train Epoch: 2 [55040/104000 (53%)]\tLoss: 0.000020\n", "Train Epoch: 2 [55680/104000 (54%)]\tLoss: 0.000355\n", "Train Epoch: 2 [56320/104000 (54%)]\tLoss: 0.000055\n", "Train Epoch: 2 [56960/104000 (55%)]\tLoss: 0.000035\n", "Train Epoch: 2 [57600/104000 (55%)]\tLoss: 0.000031\n", "Train Epoch: 2 [58240/104000 (56%)]\tLoss: 0.000079\n", "Train Epoch: 2 [58880/104000 (57%)]\tLoss: 0.000090\n", "Train Epoch: 2 [59520/104000 (57%)]\tLoss: 0.000287\n", "Train Epoch: 2 [60160/104000 (58%)]\tLoss: 0.000035\n", "Train Epoch: 2 [60800/104000 (58%)]\tLoss: 0.000029\n", "Train Epoch: 2 [61440/104000 (59%)]\tLoss: 0.000204\n", "Train Epoch: 2 [62080/104000 (60%)]\tLoss: 0.000019\n", "Train Epoch: 2 [62720/104000 (60%)]\tLoss: 0.000139\n", "Train Epoch: 2 [63360/104000 (61%)]\tLoss: 0.000047\n", "Train Epoch: 2 [64000/104000 (62%)]\tLoss: 0.000029\n", "Train Epoch: 2 [64640/104000 (62%)]\tLoss: 0.000207\n", "Train Epoch: 2 [65280/104000 (63%)]\tLoss: 0.000116\n", "Train Epoch: 2 [65920/104000 (63%)]\tLoss: 0.000029\n", "Train Epoch: 2 [66560/104000 (64%)]\tLoss: 0.000065\n", "Train Epoch: 2 [67200/104000 (65%)]\tLoss: 0.000086\n", "Train Epoch: 2 [67840/104000 (65%)]\tLoss: 0.000135\n", "Train Epoch: 2 [68480/104000 (66%)]\tLoss: 0.000037\n", "Train Epoch: 2 [69120/104000 (66%)]\tLoss: 0.000017\n", "Train Epoch: 2 [69760/104000 (67%)]\tLoss: 0.000020\n", "Train Epoch: 2 [70400/104000 (68%)]\tLoss: 0.000073\n", "Train Epoch: 2 [71040/104000 (68%)]\tLoss: 0.000063\n", "Train Epoch: 2 [71680/104000 (69%)]\tLoss: 0.000035\n", "Train Epoch: 2 [72320/104000 (70%)]\tLoss: 0.000089\n", "Train Epoch: 2 [72960/104000 (70%)]\tLoss: 0.000064\n", "Train Epoch: 2 [73600/104000 (71%)]\tLoss: 0.000063\n", "Train Epoch: 2 [74240/104000 (71%)]\tLoss: 0.000041\n", "Train Epoch: 2 [74880/104000 (72%)]\tLoss: 0.000083\n", "Train Epoch: 2 [75520/104000 (73%)]\tLoss: 0.000061\n", "Train Epoch: 2 [76160/104000 (73%)]\tLoss: 0.000040\n", "Train Epoch: 2 [76800/104000 (74%)]\tLoss: 0.000108\n", "Train Epoch: 2 [77440/104000 (74%)]\tLoss: 0.000168\n", "Train Epoch: 2 [78080/104000 (75%)]\tLoss: 0.000098\n", "Train Epoch: 2 [78720/104000 (76%)]\tLoss: 0.000092\n", "Train Epoch: 2 [79360/104000 (76%)]\tLoss: 0.000039\n", "Train Epoch: 2 [80000/104000 (77%)]\tLoss: 0.000044\n", "Train Epoch: 2 [80640/104000 (78%)]\tLoss: 0.000038\n", "Train Epoch: 2 [81280/104000 (78%)]\tLoss: 0.000030\n", "Train Epoch: 2 [81920/104000 (79%)]\tLoss: 0.000176\n", "Train Epoch: 2 [82560/104000 (79%)]\tLoss: 0.000016\n", "Train Epoch: 2 [83200/104000 (80%)]\tLoss: 0.000231\n", "Train Epoch: 2 [83840/104000 (81%)]\tLoss: 0.000051\n", "Train Epoch: 2 [84480/104000 (81%)]\tLoss: 0.000034\n", "Train Epoch: 2 [85120/104000 (82%)]\tLoss: 0.000025\n", "Train Epoch: 2 [85760/104000 (82%)]\tLoss: 0.000033\n", "Train Epoch: 2 [86400/104000 (83%)]\tLoss: 0.000022\n", "Train Epoch: 2 [87040/104000 (84%)]\tLoss: 0.000084\n", "Train Epoch: 2 [87680/104000 (84%)]\tLoss: 0.000041\n", "Train Epoch: 2 [88320/104000 (85%)]\tLoss: 0.000130\n", "Train Epoch: 2 [88960/104000 (86%)]\tLoss: 0.000398\n", "Train Epoch: 2 [89600/104000 (86%)]\tLoss: 0.000035\n", "Train Epoch: 2 [90240/104000 (87%)]\tLoss: 0.000026\n", "Train Epoch: 2 [90880/104000 (87%)]\tLoss: 0.000026\n", "Train Epoch: 2 [91520/104000 (88%)]\tLoss: 0.000019\n", "Train Epoch: 2 [92160/104000 (89%)]\tLoss: 0.000027\n", "Train Epoch: 2 [92800/104000 (89%)]\tLoss: 0.000099\n", "Train Epoch: 2 [93440/104000 (90%)]\tLoss: 0.000032\n", "Train Epoch: 2 [94080/104000 (90%)]\tLoss: 0.000036\n", "Train Epoch: 2 [94720/104000 (91%)]\tLoss: 0.000061\n", "Train Epoch: 2 [95360/104000 (92%)]\tLoss: 0.000081\n", "Train Epoch: 2 [96000/104000 (92%)]\tLoss: 0.000016\n", "Train Epoch: 2 [96640/104000 (93%)]\tLoss: 0.000015\n", "Train Epoch: 2 [97280/104000 (94%)]\tLoss: 0.000020\n", "Train Epoch: 2 [97920/104000 (94%)]\tLoss: 0.000035\n", "Train Epoch: 2 [98560/104000 (95%)]\tLoss: 0.000047\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 2 [99200/104000 (95%)]\tLoss: 0.000043\n", "Train Epoch: 2 [99840/104000 (96%)]\tLoss: 0.000189\n", "Train Epoch: 2 [100480/104000 (97%)]\tLoss: 0.000012\n", "Train Epoch: 2 [101120/104000 (97%)]\tLoss: 0.000154\n", "Train Epoch: 2 [101760/104000 (98%)]\tLoss: 0.000015\n", "Train Epoch: 2 [102400/104000 (98%)]\tLoss: 0.000015\n", "Train Epoch: 2 [103040/104000 (99%)]\tLoss: 0.000222\n", "Train Epoch: 2 [103680/104000 (100%)]\tLoss: 0.000062\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.2827, Accuracy: 25898/30000 (86%)\n", "\n", "Train Epoch: 3 [0/104000 (0%)]\tLoss: 0.000062\n", "Train Epoch: 3 [640/104000 (1%)]\tLoss: 0.000032\n", "Train Epoch: 3 [1280/104000 (1%)]\tLoss: 0.000027\n", "Train Epoch: 3 [1920/104000 (2%)]\tLoss: 0.000102\n", "Train Epoch: 3 [2560/104000 (2%)]\tLoss: 0.000049\n", "Train Epoch: 3 [3200/104000 (3%)]\tLoss: 0.000057\n", "Train Epoch: 3 [3840/104000 (4%)]\tLoss: 0.000086\n", "Train Epoch: 3 [4480/104000 (4%)]\tLoss: 0.000031\n", "Train Epoch: 3 [5120/104000 (5%)]\tLoss: 0.000087\n", "Train Epoch: 3 [5760/104000 (6%)]\tLoss: 0.000037\n", "Train Epoch: 3 [6400/104000 (6%)]\tLoss: 0.000068\n", "Train Epoch: 3 [7040/104000 (7%)]\tLoss: 0.000019\n", "Train Epoch: 3 [7680/104000 (7%)]\tLoss: 0.000057\n", "Train Epoch: 3 [8320/104000 (8%)]\tLoss: 0.000036\n", "Train Epoch: 3 [8960/104000 (9%)]\tLoss: 0.000053\n", "Train Epoch: 3 [9600/104000 (9%)]\tLoss: 0.000274\n", "Train Epoch: 3 [10240/104000 (10%)]\tLoss: 0.000014\n", "Train Epoch: 3 [10880/104000 (10%)]\tLoss: 0.000030\n", "Train Epoch: 3 [11520/104000 (11%)]\tLoss: 0.000088\n", "Train Epoch: 3 [12160/104000 (12%)]\tLoss: 0.000022\n", "Train Epoch: 3 [12800/104000 (12%)]\tLoss: 0.000152\n", "Train Epoch: 3 [13440/104000 (13%)]\tLoss: 0.000109\n", "Train Epoch: 3 [14080/104000 (14%)]\tLoss: 0.000042\n", "Train Epoch: 3 [14720/104000 (14%)]\tLoss: 0.000021\n", "Train Epoch: 3 [15360/104000 (15%)]\tLoss: 0.000037\n", "Train Epoch: 3 [16000/104000 (15%)]\tLoss: 0.000025\n", "Train Epoch: 3 [16640/104000 (16%)]\tLoss: 0.000032\n", "Train Epoch: 3 [17280/104000 (17%)]\tLoss: 0.000028\n", "Train Epoch: 3 [17920/104000 (17%)]\tLoss: 0.000023\n", "Train Epoch: 3 [18560/104000 (18%)]\tLoss: 0.000031\n", "Train Epoch: 3 [19200/104000 (18%)]\tLoss: 0.000041\n", "Train Epoch: 3 [19840/104000 (19%)]\tLoss: 0.000016\n", "Train Epoch: 3 [20480/104000 (20%)]\tLoss: 0.000025\n", "Train Epoch: 3 [21120/104000 (20%)]\tLoss: 0.000094\n", "Train Epoch: 3 [21760/104000 (21%)]\tLoss: 0.000069\n", "Train Epoch: 3 [22400/104000 (22%)]\tLoss: 0.000120\n", "Train Epoch: 3 [23040/104000 (22%)]\tLoss: 0.000043\n", "Train Epoch: 3 [23680/104000 (23%)]\tLoss: 0.000028\n", "Train Epoch: 3 [24320/104000 (23%)]\tLoss: 0.000026\n", "Train Epoch: 3 [24960/104000 (24%)]\tLoss: 0.000016\n", "Train Epoch: 3 [25600/104000 (25%)]\tLoss: 0.000033\n", "Train Epoch: 3 [26240/104000 (25%)]\tLoss: 0.000031\n", "Train Epoch: 3 [26880/104000 (26%)]\tLoss: 0.000011\n", "Train Epoch: 3 [27520/104000 (26%)]\tLoss: 0.000067\n", "Train Epoch: 3 [28160/104000 (27%)]\tLoss: 0.000037\n", "Train Epoch: 3 [28800/104000 (28%)]\tLoss: 0.000104\n", "Train Epoch: 3 [29440/104000 (28%)]\tLoss: 0.000057\n", "Train Epoch: 3 [30080/104000 (29%)]\tLoss: 0.000020\n", "Train Epoch: 3 [30720/104000 (30%)]\tLoss: 0.000024\n", "Train Epoch: 3 [31360/104000 (30%)]\tLoss: 0.000063\n", "Train Epoch: 3 [32000/104000 (31%)]\tLoss: 0.000027\n", "Train Epoch: 3 [32640/104000 (31%)]\tLoss: 0.000036\n", "Train Epoch: 3 [33280/104000 (32%)]\tLoss: 0.000017\n", "Train Epoch: 3 [33920/104000 (33%)]\tLoss: 0.000062\n", "Train Epoch: 3 [34560/104000 (33%)]\tLoss: 0.000018\n", "Train Epoch: 3 [35200/104000 (34%)]\tLoss: 0.000043\n", "Train Epoch: 3 [35840/104000 (34%)]\tLoss: 0.000016\n", "Train Epoch: 3 [36480/104000 (35%)]\tLoss: 0.000019\n", "Train Epoch: 3 [37120/104000 (36%)]\tLoss: 0.000100\n", "Train Epoch: 3 [37760/104000 (36%)]\tLoss: 0.000013\n", "Train Epoch: 3 [38400/104000 (37%)]\tLoss: 0.000170\n", "Train Epoch: 3 [39040/104000 (38%)]\tLoss: 0.000072\n", "Train Epoch: 3 [39680/104000 (38%)]\tLoss: 0.000037\n", "Train Epoch: 3 [40320/104000 (39%)]\tLoss: 0.000023\n", "Train Epoch: 3 [40960/104000 (39%)]\tLoss: 0.000012\n", "Train Epoch: 3 [41600/104000 (40%)]\tLoss: 0.000027\n", "Train Epoch: 3 [42240/104000 (41%)]\tLoss: 0.000034\n", "Train Epoch: 3 [42880/104000 (41%)]\tLoss: 0.000018\n", "Train Epoch: 3 [43520/104000 (42%)]\tLoss: 0.000017\n", "Train Epoch: 3 [44160/104000 (42%)]\tLoss: 0.000143\n", "Train Epoch: 3 [44800/104000 (43%)]\tLoss: 0.000163\n", "Train Epoch: 3 [45440/104000 (44%)]\tLoss: 0.000014\n", "Train Epoch: 3 [46080/104000 (44%)]\tLoss: 0.000017\n", "Train Epoch: 3 [46720/104000 (45%)]\tLoss: 0.000014\n", "Train Epoch: 3 [47360/104000 (46%)]\tLoss: 0.000045\n", "Train Epoch: 3 [48000/104000 (46%)]\tLoss: 0.000134\n", "Train Epoch: 3 [48640/104000 (47%)]\tLoss: 0.000019\n", "Train Epoch: 3 [49280/104000 (47%)]\tLoss: 0.000125\n", "Train Epoch: 3 [49920/104000 (48%)]\tLoss: 0.000016\n", "Train Epoch: 3 [50560/104000 (49%)]\tLoss: 0.000064\n", "Train Epoch: 3 [51200/104000 (49%)]\tLoss: 0.000034\n", "Train Epoch: 3 [51840/104000 (50%)]\tLoss: 0.000051\n", "Train Epoch: 3 [52480/104000 (50%)]\tLoss: 0.000149\n", "Train Epoch: 3 [53120/104000 (51%)]\tLoss: 0.000018\n", "Train Epoch: 3 [53760/104000 (52%)]\tLoss: 0.000008\n", "Train Epoch: 3 [54400/104000 (52%)]\tLoss: 0.000020\n", "Train Epoch: 3 [55040/104000 (53%)]\tLoss: 0.000005\n", "Train Epoch: 3 [55680/104000 (54%)]\tLoss: 0.000012\n", "Train Epoch: 3 [56320/104000 (54%)]\tLoss: 0.000017\n", "Train Epoch: 3 [56960/104000 (55%)]\tLoss: 0.000024\n", "Train Epoch: 3 [57600/104000 (55%)]\tLoss: 0.000100\n", "Train Epoch: 3 [58240/104000 (56%)]\tLoss: 0.000027\n", "Train Epoch: 3 [58880/104000 (57%)]\tLoss: 0.000125\n", "Train Epoch: 3 [59520/104000 (57%)]\tLoss: 0.000013\n", "Train Epoch: 3 [60160/104000 (58%)]\tLoss: 0.000011\n", "Train Epoch: 3 [60800/104000 (58%)]\tLoss: 0.000019\n", "Train Epoch: 3 [61440/104000 (59%)]\tLoss: 0.000019\n", "Train Epoch: 3 [62080/104000 (60%)]\tLoss: 0.000015\n", "Train Epoch: 3 [62720/104000 (60%)]\tLoss: 0.000013\n", "Train Epoch: 3 [63360/104000 (61%)]\tLoss: 0.000028\n", "Train Epoch: 3 [64000/104000 (62%)]\tLoss: 0.000008\n", "Train Epoch: 3 [64640/104000 (62%)]\tLoss: 0.000013\n", "Train Epoch: 3 [65280/104000 (63%)]\tLoss: 0.000024\n", "Train Epoch: 3 [65920/104000 (63%)]\tLoss: 0.000040\n", "Train Epoch: 3 [66560/104000 (64%)]\tLoss: 0.000021\n", "Train Epoch: 3 [67200/104000 (65%)]\tLoss: 0.000017\n", "Train Epoch: 3 [67840/104000 (65%)]\tLoss: 0.000027\n", "Train Epoch: 3 [68480/104000 (66%)]\tLoss: 0.000102\n", "Train Epoch: 3 [69120/104000 (66%)]\tLoss: 0.000017\n", "Train Epoch: 3 [69760/104000 (67%)]\tLoss: 0.000042\n", "Train Epoch: 3 [70400/104000 (68%)]\tLoss: 0.000033\n", "Train Epoch: 3 [71040/104000 (68%)]\tLoss: 0.000131\n", "Train Epoch: 3 [71680/104000 (69%)]\tLoss: 0.000275\n", "Train Epoch: 3 [72320/104000 (70%)]\tLoss: 0.000014\n", "Train Epoch: 3 [72960/104000 (70%)]\tLoss: 0.000013\n", "Train Epoch: 3 [73600/104000 (71%)]\tLoss: 0.000013\n", "Train Epoch: 3 [74240/104000 (71%)]\tLoss: 0.000365\n", "Train Epoch: 3 [74880/104000 (72%)]\tLoss: 0.000345\n", "Train Epoch: 3 [75520/104000 (73%)]\tLoss: 0.000024\n", "Train Epoch: 3 [76160/104000 (73%)]\tLoss: 0.000019\n", "Train Epoch: 3 [76800/104000 (74%)]\tLoss: 0.000037\n", "Train Epoch: 3 [77440/104000 (74%)]\tLoss: 0.000045\n", "Train Epoch: 3 [78080/104000 (75%)]\tLoss: 0.000022\n", "Train Epoch: 3 [78720/104000 (76%)]\tLoss: 0.000131\n", "Train Epoch: 3 [79360/104000 (76%)]\tLoss: 0.000036\n", "Train Epoch: 3 [80000/104000 (77%)]\tLoss: 0.000440\n", "Train Epoch: 3 [80640/104000 (78%)]\tLoss: 0.000014\n", "Train Epoch: 3 [81280/104000 (78%)]\tLoss: 0.000013\n", "Train Epoch: 3 [81920/104000 (79%)]\tLoss: 0.000020\n", "Train Epoch: 3 [82560/104000 (79%)]\tLoss: 0.000081\n", "Train Epoch: 3 [83200/104000 (80%)]\tLoss: 0.000016\n", "Train Epoch: 3 [83840/104000 (81%)]\tLoss: 0.000031\n", "Train Epoch: 3 [84480/104000 (81%)]\tLoss: 0.000012\n", "Train Epoch: 3 [85120/104000 (82%)]\tLoss: 0.000022\n", "Train Epoch: 3 [85760/104000 (82%)]\tLoss: 0.000040\n", "Train Epoch: 3 [86400/104000 (83%)]\tLoss: 0.000138\n", "Train Epoch: 3 [87040/104000 (84%)]\tLoss: 0.000037\n", "Train Epoch: 3 [87680/104000 (84%)]\tLoss: 0.000013\n", "Train Epoch: 3 [88320/104000 (85%)]\tLoss: 0.000011\n", "Train Epoch: 3 [88960/104000 (86%)]\tLoss: 0.000017\n", "Train Epoch: 3 [89600/104000 (86%)]\tLoss: 0.000011\n", "Train Epoch: 3 [90240/104000 (87%)]\tLoss: 0.000108\n", "Train Epoch: 3 [90880/104000 (87%)]\tLoss: 0.000011\n", "Train Epoch: 3 [91520/104000 (88%)]\tLoss: 0.000022\n", "Train Epoch: 3 [92160/104000 (89%)]\tLoss: 0.000009\n", "Train Epoch: 3 [92800/104000 (89%)]\tLoss: 0.000128\n", "Train Epoch: 3 [93440/104000 (90%)]\tLoss: 0.000032\n", "Train Epoch: 3 [94080/104000 (90%)]\tLoss: 0.000076\n", "Train Epoch: 3 [94720/104000 (91%)]\tLoss: 0.000048\n", "Train Epoch: 3 [95360/104000 (92%)]\tLoss: 0.000016\n", "Train Epoch: 3 [96000/104000 (92%)]\tLoss: 0.000017\n", "Train Epoch: 3 [96640/104000 (93%)]\tLoss: 0.000045\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 3 [97280/104000 (94%)]\tLoss: 0.000012\n", "Train Epoch: 3 [97920/104000 (94%)]\tLoss: 0.000064\n", "Train Epoch: 3 [98560/104000 (95%)]\tLoss: 0.000007\n", "Train Epoch: 3 [99200/104000 (95%)]\tLoss: 0.000150\n", "Train Epoch: 3 [99840/104000 (96%)]\tLoss: 0.000035\n", "Train Epoch: 3 [100480/104000 (97%)]\tLoss: 0.000023\n", "Train Epoch: 3 [101120/104000 (97%)]\tLoss: 0.000030\n", "Train Epoch: 3 [101760/104000 (98%)]\tLoss: 0.000011\n", "Train Epoch: 3 [102400/104000 (98%)]\tLoss: 0.000008\n", "Train Epoch: 3 [103040/104000 (99%)]\tLoss: 0.000104\n", "Train Epoch: 3 [103680/104000 (100%)]\tLoss: 0.000076\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.2302, Accuracy: 26714/30000 (89%)\n", "\n", "Train Epoch: 4 [0/104000 (0%)]\tLoss: 0.000044\n", "Train Epoch: 4 [640/104000 (1%)]\tLoss: 0.000011\n", "Train Epoch: 4 [1280/104000 (1%)]\tLoss: 0.000048\n", "Train Epoch: 4 [1920/104000 (2%)]\tLoss: 0.000016\n", "Train Epoch: 4 [2560/104000 (2%)]\tLoss: 0.000070\n", "Train Epoch: 4 [3200/104000 (3%)]\tLoss: 0.000233\n", "Train Epoch: 4 [3840/104000 (4%)]\tLoss: 0.000013\n", "Train Epoch: 4 [4480/104000 (4%)]\tLoss: 0.000017\n", "Train Epoch: 4 [5120/104000 (5%)]\tLoss: 0.000011\n", "Train Epoch: 4 [5760/104000 (6%)]\tLoss: 0.000047\n", "Train Epoch: 4 [6400/104000 (6%)]\tLoss: 0.000021\n", "Train Epoch: 4 [7040/104000 (7%)]\tLoss: 0.000015\n", "Train Epoch: 4 [7680/104000 (7%)]\tLoss: 0.000010\n", "Train Epoch: 4 [8320/104000 (8%)]\tLoss: 0.000016\n", "Train Epoch: 4 [8960/104000 (9%)]\tLoss: 0.000012\n", "Train Epoch: 4 [9600/104000 (9%)]\tLoss: 0.000017\n", "Train Epoch: 4 [10240/104000 (10%)]\tLoss: 0.000005\n", "Train Epoch: 4 [10880/104000 (10%)]\tLoss: 0.000027\n", "Train Epoch: 4 [11520/104000 (11%)]\tLoss: 0.000047\n", "Train Epoch: 4 [12160/104000 (12%)]\tLoss: 0.000008\n", "Train Epoch: 4 [12800/104000 (12%)]\tLoss: 0.000239\n", "Train Epoch: 4 [13440/104000 (13%)]\tLoss: 0.000015\n", "Train Epoch: 4 [14080/104000 (14%)]\tLoss: 0.000012\n", "Train Epoch: 4 [14720/104000 (14%)]\tLoss: 0.000044\n", "Train Epoch: 4 [15360/104000 (15%)]\tLoss: 0.000010\n", "Train Epoch: 4 [16000/104000 (15%)]\tLoss: 0.000021\n", "Train Epoch: 4 [16640/104000 (16%)]\tLoss: 0.000028\n", "Train Epoch: 4 [17280/104000 (17%)]\tLoss: 0.000018\n", "Train Epoch: 4 [17920/104000 (17%)]\tLoss: 0.000043\n", "Train Epoch: 4 [18560/104000 (18%)]\tLoss: 0.000007\n", "Train Epoch: 4 [19200/104000 (18%)]\tLoss: 0.000013\n", "Train Epoch: 4 [19840/104000 (19%)]\tLoss: 0.000008\n", "Train Epoch: 4 [20480/104000 (20%)]\tLoss: 0.000022\n", "Train Epoch: 4 [21120/104000 (20%)]\tLoss: 0.000032\n", "Train Epoch: 4 [21760/104000 (21%)]\tLoss: 0.000032\n", "Train Epoch: 4 [22400/104000 (22%)]\tLoss: 0.000028\n", "Train Epoch: 4 [23040/104000 (22%)]\tLoss: 0.000020\n", "Train Epoch: 4 [23680/104000 (23%)]\tLoss: 0.000015\n", "Train Epoch: 4 [24320/104000 (23%)]\tLoss: 0.000085\n", "Train Epoch: 4 [24960/104000 (24%)]\tLoss: 0.000023\n", "Train Epoch: 4 [25600/104000 (25%)]\tLoss: 0.000100\n", "Train Epoch: 4 [26240/104000 (25%)]\tLoss: 0.000014\n", "Train Epoch: 4 [26880/104000 (26%)]\tLoss: 0.000042\n", "Train Epoch: 4 [27520/104000 (26%)]\tLoss: 0.000014\n", "Train Epoch: 4 [28160/104000 (27%)]\tLoss: 0.001163\n", "Train Epoch: 4 [28800/104000 (28%)]\tLoss: 0.000009\n", "Train Epoch: 4 [29440/104000 (28%)]\tLoss: 0.000016\n", "Train Epoch: 4 [30080/104000 (29%)]\tLoss: 0.000017\n", "Train Epoch: 4 [30720/104000 (30%)]\tLoss: 0.000026\n", "Train Epoch: 4 [31360/104000 (30%)]\tLoss: 0.000020\n", "Train Epoch: 4 [32000/104000 (31%)]\tLoss: 0.000164\n", "Train Epoch: 4 [32640/104000 (31%)]\tLoss: 0.000022\n", "Train Epoch: 4 [33280/104000 (32%)]\tLoss: 0.000019\n", "Train Epoch: 4 [33920/104000 (33%)]\tLoss: 0.000013\n", "Train Epoch: 4 [34560/104000 (33%)]\tLoss: 0.000015\n", "Train Epoch: 4 [35200/104000 (34%)]\tLoss: 0.000013\n", "Train Epoch: 4 [35840/104000 (34%)]\tLoss: 0.000013\n", "Train Epoch: 4 [36480/104000 (35%)]\tLoss: 0.000010\n", "Train Epoch: 4 [37120/104000 (36%)]\tLoss: 0.000013\n", "Train Epoch: 4 [37760/104000 (36%)]\tLoss: 0.000013\n", "Train Epoch: 4 [38400/104000 (37%)]\tLoss: 0.000019\n", "Train Epoch: 4 [39040/104000 (38%)]\tLoss: 0.000032\n", "Train Epoch: 4 [39680/104000 (38%)]\tLoss: 0.000092\n", "Train Epoch: 4 [40320/104000 (39%)]\tLoss: 0.000040\n", "Train Epoch: 4 [40960/104000 (39%)]\tLoss: 0.000012\n", "Train Epoch: 4 [41600/104000 (40%)]\tLoss: 0.000007\n", "Train Epoch: 4 [42240/104000 (41%)]\tLoss: 0.000022\n", "Train Epoch: 4 [42880/104000 (41%)]\tLoss: 0.000031\n", "Train Epoch: 4 [43520/104000 (42%)]\tLoss: 0.000011\n", "Train Epoch: 4 [44160/104000 (42%)]\tLoss: 0.000020\n", "Train Epoch: 4 [44800/104000 (43%)]\tLoss: 0.000069\n", "Train Epoch: 4 [45440/104000 (44%)]\tLoss: 0.000010\n", "Train Epoch: 4 [46080/104000 (44%)]\tLoss: 0.000019\n", "Train Epoch: 4 [46720/104000 (45%)]\tLoss: 0.000154\n", "Train Epoch: 4 [47360/104000 (46%)]\tLoss: 0.000017\n", "Train Epoch: 4 [48000/104000 (46%)]\tLoss: 0.000012\n", "Train Epoch: 4 [48640/104000 (47%)]\tLoss: 0.000029\n", "Train Epoch: 4 [49280/104000 (47%)]\tLoss: 0.000184\n", "Train Epoch: 4 [49920/104000 (48%)]\tLoss: 0.000031\n", "Train Epoch: 4 [50560/104000 (49%)]\tLoss: 0.000011\n", "Train Epoch: 4 [51200/104000 (49%)]\tLoss: 0.000022\n", "Train Epoch: 4 [51840/104000 (50%)]\tLoss: 0.000031\n", "Train Epoch: 4 [52480/104000 (50%)]\tLoss: 0.000010\n", "Train Epoch: 4 [53120/104000 (51%)]\tLoss: 0.000016\n", "Train Epoch: 4 [53760/104000 (52%)]\tLoss: 0.000020\n", "Train Epoch: 4 [54400/104000 (52%)]\tLoss: 0.000019\n", "Train Epoch: 4 [55040/104000 (53%)]\tLoss: 0.000046\n", "Train Epoch: 4 [55680/104000 (54%)]\tLoss: 0.000026\n", "Train Epoch: 4 [56320/104000 (54%)]\tLoss: 0.000038\n", "Train Epoch: 4 [56960/104000 (55%)]\tLoss: 0.000046\n", "Train Epoch: 4 [57600/104000 (55%)]\tLoss: 0.000009\n", "Train Epoch: 4 [58240/104000 (56%)]\tLoss: 0.000021\n", "Train Epoch: 4 [58880/104000 (57%)]\tLoss: 0.000009\n", "Train Epoch: 4 [59520/104000 (57%)]\tLoss: 0.000015\n", "Train Epoch: 4 [60160/104000 (58%)]\tLoss: 0.000008\n", "Train Epoch: 4 [60800/104000 (58%)]\tLoss: 0.000025\n", "Train Epoch: 4 [61440/104000 (59%)]\tLoss: 0.000094\n", "Train Epoch: 4 [62080/104000 (60%)]\tLoss: 0.000016\n", "Train Epoch: 4 [62720/104000 (60%)]\tLoss: 0.000012\n", "Train Epoch: 4 [63360/104000 (61%)]\tLoss: 0.000015\n", "Train Epoch: 4 [64000/104000 (62%)]\tLoss: 0.000009\n", "Train Epoch: 4 [64640/104000 (62%)]\tLoss: 0.000030\n", "Train Epoch: 4 [65280/104000 (63%)]\tLoss: 0.000016\n", "Train Epoch: 4 [65920/104000 (63%)]\tLoss: 0.000013\n", "Train Epoch: 4 [66560/104000 (64%)]\tLoss: 0.000016\n", "Train Epoch: 4 [67200/104000 (65%)]\tLoss: 0.000012\n", "Train Epoch: 4 [67840/104000 (65%)]\tLoss: 0.000020\n", "Train Epoch: 4 [68480/104000 (66%)]\tLoss: 0.000016\n", "Train Epoch: 4 [69120/104000 (66%)]\tLoss: 0.000011\n", "Train Epoch: 4 [69760/104000 (67%)]\tLoss: 0.000009\n", "Train Epoch: 4 [70400/104000 (68%)]\tLoss: 0.000031\n", "Train Epoch: 4 [71040/104000 (68%)]\tLoss: 0.000011\n", "Train Epoch: 4 [71680/104000 (69%)]\tLoss: 0.000090\n", "Train Epoch: 4 [72320/104000 (70%)]\tLoss: 0.000005\n", "Train Epoch: 4 [72960/104000 (70%)]\tLoss: 0.000012\n", "Train Epoch: 4 [73600/104000 (71%)]\tLoss: 0.000011\n", "Train Epoch: 4 [74240/104000 (71%)]\tLoss: 0.000013\n", "Train Epoch: 4 [74880/104000 (72%)]\tLoss: 0.000009\n", "Train Epoch: 4 [75520/104000 (73%)]\tLoss: 0.000018\n", "Train Epoch: 4 [76160/104000 (73%)]\tLoss: 0.000129\n", "Train Epoch: 4 [76800/104000 (74%)]\tLoss: 0.000013\n", "Train Epoch: 4 [77440/104000 (74%)]\tLoss: 0.000029\n", "Train Epoch: 4 [78080/104000 (75%)]\tLoss: 0.000009\n", "Train Epoch: 4 [78720/104000 (76%)]\tLoss: 0.000013\n", "Train Epoch: 4 [79360/104000 (76%)]\tLoss: 0.000047\n", "Train Epoch: 4 [80000/104000 (77%)]\tLoss: 0.000168\n", "Train Epoch: 4 [80640/104000 (78%)]\tLoss: 0.000032\n", "Train Epoch: 4 [81280/104000 (78%)]\tLoss: 0.000010\n", "Train Epoch: 4 [81920/104000 (79%)]\tLoss: 0.000206\n", "Train Epoch: 4 [82560/104000 (79%)]\tLoss: 0.000019\n", "Train Epoch: 4 [83200/104000 (80%)]\tLoss: 0.000007\n", "Train Epoch: 4 [83840/104000 (81%)]\tLoss: 0.000030\n", "Train Epoch: 4 [84480/104000 (81%)]\tLoss: 0.000020\n", "Train Epoch: 4 [85120/104000 (82%)]\tLoss: 0.000006\n", "Train Epoch: 4 [85760/104000 (82%)]\tLoss: 0.000145\n", "Train Epoch: 4 [86400/104000 (83%)]\tLoss: 0.000008\n", "Train Epoch: 4 [87040/104000 (84%)]\tLoss: 0.000009\n", "Train Epoch: 4 [87680/104000 (84%)]\tLoss: 0.000023\n", "Train Epoch: 4 [88320/104000 (85%)]\tLoss: 0.000037\n", "Train Epoch: 4 [88960/104000 (86%)]\tLoss: 0.000027\n", "Train Epoch: 4 [89600/104000 (86%)]\tLoss: 0.000007\n", "Train Epoch: 4 [90240/104000 (87%)]\tLoss: 0.000008\n", "Train Epoch: 4 [90880/104000 (87%)]\tLoss: 0.000007\n", "Train Epoch: 4 [91520/104000 (88%)]\tLoss: 0.000005\n", "Train Epoch: 4 [92160/104000 (89%)]\tLoss: 0.000027\n", "Train Epoch: 4 [92800/104000 (89%)]\tLoss: 0.000008\n", "Train Epoch: 4 [93440/104000 (90%)]\tLoss: 0.000006\n", "Train Epoch: 4 [94080/104000 (90%)]\tLoss: 0.000006\n", "Train Epoch: 4 [94720/104000 (91%)]\tLoss: 0.000043\n", "Train Epoch: 4 [95360/104000 (92%)]\tLoss: 0.000011\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 4 [96000/104000 (92%)]\tLoss: 0.000014\n", "Train Epoch: 4 [96640/104000 (93%)]\tLoss: 0.000015\n", "Train Epoch: 4 [97280/104000 (94%)]\tLoss: 0.000606\n", "Train Epoch: 4 [97920/104000 (94%)]\tLoss: 0.000010\n", "Train Epoch: 4 [98560/104000 (95%)]\tLoss: 0.000019\n", "Train Epoch: 4 [99200/104000 (95%)]\tLoss: 0.000034\n", "Train Epoch: 4 [99840/104000 (96%)]\tLoss: 0.000071\n", "Train Epoch: 4 [100480/104000 (97%)]\tLoss: 0.000017\n", "Train Epoch: 4 [101120/104000 (97%)]\tLoss: 0.000009\n", "Train Epoch: 4 [101760/104000 (98%)]\tLoss: 0.000028\n", "Train Epoch: 4 [102400/104000 (98%)]\tLoss: 0.000041\n", "Train Epoch: 4 [103040/104000 (99%)]\tLoss: 0.000083\n", "Train Epoch: 4 [103680/104000 (100%)]\tLoss: 0.000031\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.2675, Accuracy: 26228/30000 (87%)\n", "\n", "Train Epoch: 5 [0/104000 (0%)]\tLoss: 0.000007\n", "Train Epoch: 5 [640/104000 (1%)]\tLoss: 0.000041\n", "Train Epoch: 5 [1280/104000 (1%)]\tLoss: 0.000008\n", "Train Epoch: 5 [1920/104000 (2%)]\tLoss: 0.000036\n", "Train Epoch: 5 [2560/104000 (2%)]\tLoss: 0.000021\n", "Train Epoch: 5 [3200/104000 (3%)]\tLoss: 0.000008\n", "Train Epoch: 5 [3840/104000 (4%)]\tLoss: 0.000028\n", "Train Epoch: 5 [4480/104000 (4%)]\tLoss: 0.000006\n", "Train Epoch: 5 [5120/104000 (5%)]\tLoss: 0.000010\n", "Train Epoch: 5 [5760/104000 (6%)]\tLoss: 0.000012\n", "Train Epoch: 5 [6400/104000 (6%)]\tLoss: 0.000018\n", "Train Epoch: 5 [7040/104000 (7%)]\tLoss: 0.000009\n", "Train Epoch: 5 [7680/104000 (7%)]\tLoss: 0.000039\n", "Train Epoch: 5 [8320/104000 (8%)]\tLoss: 0.000024\n", "Train Epoch: 5 [8960/104000 (9%)]\tLoss: 0.000007\n", "Train Epoch: 5 [9600/104000 (9%)]\tLoss: 0.000015\n", "Train Epoch: 5 [10240/104000 (10%)]\tLoss: 0.000010\n", "Train Epoch: 5 [10880/104000 (10%)]\tLoss: 0.000049\n", "Train Epoch: 5 [11520/104000 (11%)]\tLoss: 0.000212\n", "Train Epoch: 5 [12160/104000 (12%)]\tLoss: 0.000006\n", "Train Epoch: 5 [12800/104000 (12%)]\tLoss: 0.000050\n", "Train Epoch: 5 [13440/104000 (13%)]\tLoss: 0.000028\n", "Train Epoch: 5 [14080/104000 (14%)]\tLoss: 0.000006\n", "Train Epoch: 5 [14720/104000 (14%)]\tLoss: 0.000069\n", "Train Epoch: 5 [15360/104000 (15%)]\tLoss: 0.000053\n", "Train Epoch: 5 [16000/104000 (15%)]\tLoss: 0.000056\n", "Train Epoch: 5 [16640/104000 (16%)]\tLoss: 0.000007\n", "Train Epoch: 5 [17280/104000 (17%)]\tLoss: 0.000014\n", "Train Epoch: 5 [17920/104000 (17%)]\tLoss: 0.000007\n", "Train Epoch: 5 [18560/104000 (18%)]\tLoss: 0.000039\n", "Train Epoch: 5 [19200/104000 (18%)]\tLoss: 0.000129\n", "Train Epoch: 5 [19840/104000 (19%)]\tLoss: 0.000129\n", "Train Epoch: 5 [20480/104000 (20%)]\tLoss: 0.000007\n", "Train Epoch: 5 [21120/104000 (20%)]\tLoss: 0.000004\n", "Train Epoch: 5 [21760/104000 (21%)]\tLoss: 0.000152\n", "Train Epoch: 5 [22400/104000 (22%)]\tLoss: 0.000016\n", "Train Epoch: 5 [23040/104000 (22%)]\tLoss: 0.000135\n", "Train Epoch: 5 [23680/104000 (23%)]\tLoss: 0.000028\n", "Train Epoch: 5 [24320/104000 (23%)]\tLoss: 0.000009\n", "Train Epoch: 5 [24960/104000 (24%)]\tLoss: 0.000038\n", "Train Epoch: 5 [25600/104000 (25%)]\tLoss: 0.000011\n", "Train Epoch: 5 [26240/104000 (25%)]\tLoss: 0.000037\n", "Train Epoch: 5 [26880/104000 (26%)]\tLoss: 0.000010\n", "Train Epoch: 5 [27520/104000 (26%)]\tLoss: 0.000148\n", "Train Epoch: 5 [28160/104000 (27%)]\tLoss: 0.000010\n", "Train Epoch: 5 [28800/104000 (28%)]\tLoss: 0.000007\n", "Train Epoch: 5 [29440/104000 (28%)]\tLoss: 0.000074\n", "Train Epoch: 5 [30080/104000 (29%)]\tLoss: 0.000012\n", "Train Epoch: 5 [30720/104000 (30%)]\tLoss: 0.000011\n", "Train Epoch: 5 [31360/104000 (30%)]\tLoss: 0.000004\n", "Train Epoch: 5 [32000/104000 (31%)]\tLoss: 0.000009\n", "Train Epoch: 5 [32640/104000 (31%)]\tLoss: 0.000005\n", "Train Epoch: 5 [33280/104000 (32%)]\tLoss: 0.000016\n", "Train Epoch: 5 [33920/104000 (33%)]\tLoss: 0.000018\n", "Train Epoch: 5 [34560/104000 (33%)]\tLoss: 0.000005\n", "Train Epoch: 5 [35200/104000 (34%)]\tLoss: 0.000099\n", "Train Epoch: 5 [35840/104000 (34%)]\tLoss: 0.000007\n", "Train Epoch: 5 [36480/104000 (35%)]\tLoss: 0.000010\n", "Train Epoch: 5 [37120/104000 (36%)]\tLoss: 0.000011\n", "Train Epoch: 5 [37760/104000 (36%)]\tLoss: 0.000010\n", "Train Epoch: 5 [38400/104000 (37%)]\tLoss: 0.000005\n", "Train Epoch: 5 [39040/104000 (38%)]\tLoss: 0.000011\n", "Train Epoch: 5 [39680/104000 (38%)]\tLoss: 0.000092\n", "Train Epoch: 5 [40320/104000 (39%)]\tLoss: 0.000021\n", "Train Epoch: 5 [40960/104000 (39%)]\tLoss: 0.000015\n", "Train Epoch: 5 [41600/104000 (40%)]\tLoss: 0.000048\n", "Train Epoch: 5 [42240/104000 (41%)]\tLoss: 0.000017\n", "Train Epoch: 5 [42880/104000 (41%)]\tLoss: 0.000011\n", "Train Epoch: 5 [43520/104000 (42%)]\tLoss: 0.000023\n", "Train Epoch: 5 [44160/104000 (42%)]\tLoss: 0.000005\n", "Train Epoch: 5 [44800/104000 (43%)]\tLoss: 0.000006\n", "Train Epoch: 5 [45440/104000 (44%)]\tLoss: 0.000006\n", "Train Epoch: 5 [46080/104000 (44%)]\tLoss: 0.000045\n", "Train Epoch: 5 [46720/104000 (45%)]\tLoss: 0.000008\n", "Train Epoch: 5 [47360/104000 (46%)]\tLoss: 0.000102\n", "Train Epoch: 5 [48000/104000 (46%)]\tLoss: 0.000014\n", "Train Epoch: 5 [48640/104000 (47%)]\tLoss: 0.000264\n", "Train Epoch: 5 [49280/104000 (47%)]\tLoss: 0.000121\n", "Train Epoch: 5 [49920/104000 (48%)]\tLoss: 0.000008\n", "Train Epoch: 5 [50560/104000 (49%)]\tLoss: 0.000014\n", "Train Epoch: 5 [51200/104000 (49%)]\tLoss: 0.000006\n", "Train Epoch: 5 [51840/104000 (50%)]\tLoss: 0.000008\n", "Train Epoch: 5 [52480/104000 (50%)]\tLoss: 0.000027\n", "Train Epoch: 5 [53120/104000 (51%)]\tLoss: 0.000009\n", "Train Epoch: 5 [53760/104000 (52%)]\tLoss: 0.000010\n", "Train Epoch: 5 [54400/104000 (52%)]\tLoss: 0.000007\n", "Train Epoch: 5 [55040/104000 (53%)]\tLoss: 0.000025\n", "Train Epoch: 5 [55680/104000 (54%)]\tLoss: 0.000319\n", "Train Epoch: 5 [56320/104000 (54%)]\tLoss: 0.000014\n", "Train Epoch: 5 [56960/104000 (55%)]\tLoss: 0.000090\n", "Train Epoch: 5 [57600/104000 (55%)]\tLoss: 0.000015\n", "Train Epoch: 5 [58240/104000 (56%)]\tLoss: 0.000012\n", "Train Epoch: 5 [58880/104000 (57%)]\tLoss: 0.000005\n", "Train Epoch: 5 [59520/104000 (57%)]\tLoss: 0.000005\n", "Train Epoch: 5 [60160/104000 (58%)]\tLoss: 0.000009\n", "Train Epoch: 5 [60800/104000 (58%)]\tLoss: 0.000004\n", "Train Epoch: 5 [61440/104000 (59%)]\tLoss: 0.000007\n", "Train Epoch: 5 [62080/104000 (60%)]\tLoss: 0.000011\n", "Train Epoch: 5 [62720/104000 (60%)]\tLoss: 0.000056\n", "Train Epoch: 5 [63360/104000 (61%)]\tLoss: 0.000004\n", "Train Epoch: 5 [64000/104000 (62%)]\tLoss: 0.000020\n", "Train Epoch: 5 [64640/104000 (62%)]\tLoss: 0.000007\n", "Train Epoch: 5 [65280/104000 (63%)]\tLoss: 0.000007\n", "Train Epoch: 5 [65920/104000 (63%)]\tLoss: 0.000006\n", "Train Epoch: 5 [66560/104000 (64%)]\tLoss: 0.000005\n", "Train Epoch: 5 [67200/104000 (65%)]\tLoss: 0.000010\n", "Train Epoch: 5 [67840/104000 (65%)]\tLoss: 0.000008\n", "Train Epoch: 5 [68480/104000 (66%)]\tLoss: 0.000003\n", "Train Epoch: 5 [69120/104000 (66%)]\tLoss: 0.000007\n", "Train Epoch: 5 [69760/104000 (67%)]\tLoss: 0.000008\n", "Train Epoch: 5 [70400/104000 (68%)]\tLoss: 0.000041\n", "Train Epoch: 5 [71040/104000 (68%)]\tLoss: 0.000101\n", "Train Epoch: 5 [71680/104000 (69%)]\tLoss: 0.000037\n", "Train Epoch: 5 [72320/104000 (70%)]\tLoss: 0.000152\n", "Train Epoch: 5 [72960/104000 (70%)]\tLoss: 0.000005\n", "Train Epoch: 5 [73600/104000 (71%)]\tLoss: 0.000027\n", "Train Epoch: 5 [74240/104000 (71%)]\tLoss: 0.000075\n", "Train Epoch: 5 [74880/104000 (72%)]\tLoss: 0.000018\n", "Train Epoch: 5 [75520/104000 (73%)]\tLoss: 0.000016\n", "Train Epoch: 5 [76160/104000 (73%)]\tLoss: 0.000011\n", "Train Epoch: 5 [76800/104000 (74%)]\tLoss: 0.000030\n", "Train Epoch: 5 [77440/104000 (74%)]\tLoss: 0.000010\n", "Train Epoch: 5 [78080/104000 (75%)]\tLoss: 0.000016\n", "Train Epoch: 5 [78720/104000 (76%)]\tLoss: 0.000020\n", "Train Epoch: 5 [79360/104000 (76%)]\tLoss: 0.000009\n", "Train Epoch: 5 [80000/104000 (77%)]\tLoss: 0.000004\n", "Train Epoch: 5 [80640/104000 (78%)]\tLoss: 0.000022\n", "Train Epoch: 5 [81280/104000 (78%)]\tLoss: 0.000017\n", "Train Epoch: 5 [81920/104000 (79%)]\tLoss: 0.000007\n", "Train Epoch: 5 [82560/104000 (79%)]\tLoss: 0.000021\n", "Train Epoch: 5 [83200/104000 (80%)]\tLoss: 0.000077\n", "Train Epoch: 5 [83840/104000 (81%)]\tLoss: 0.000032\n", "Train Epoch: 5 [84480/104000 (81%)]\tLoss: 0.000082\n", "Train Epoch: 5 [85120/104000 (82%)]\tLoss: 0.000011\n", "Train Epoch: 5 [85760/104000 (82%)]\tLoss: 0.000005\n", "Train Epoch: 5 [86400/104000 (83%)]\tLoss: 0.000006\n", "Train Epoch: 5 [87040/104000 (84%)]\tLoss: 0.000044\n", "Train Epoch: 5 [87680/104000 (84%)]\tLoss: 0.000006\n", "Train Epoch: 5 [88320/104000 (85%)]\tLoss: 0.000008\n", "Train Epoch: 5 [88960/104000 (86%)]\tLoss: 0.000003\n", "Train Epoch: 5 [89600/104000 (86%)]\tLoss: 0.000012\n", "Train Epoch: 5 [90240/104000 (87%)]\tLoss: 0.000006\n", "Train Epoch: 5 [90880/104000 (87%)]\tLoss: 0.000006\n", "Train Epoch: 5 [91520/104000 (88%)]\tLoss: 0.000016\n", "Train Epoch: 5 [92160/104000 (89%)]\tLoss: 0.000060\n", "Train Epoch: 5 [92800/104000 (89%)]\tLoss: 0.000008\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 5 [93440/104000 (90%)]\tLoss: 0.000006\n", "Train Epoch: 5 [94080/104000 (90%)]\tLoss: 0.000015\n", "Train Epoch: 5 [94720/104000 (91%)]\tLoss: 0.000014\n", "Train Epoch: 5 [95360/104000 (92%)]\tLoss: 0.000018\n", "Train Epoch: 5 [96000/104000 (92%)]\tLoss: 0.000006\n", "Train Epoch: 5 [96640/104000 (93%)]\tLoss: 0.000009\n", "Train Epoch: 5 [97280/104000 (94%)]\tLoss: 0.000008\n", "Train Epoch: 5 [97920/104000 (94%)]\tLoss: 0.000025\n", "Train Epoch: 5 [98560/104000 (95%)]\tLoss: 0.000006\n", "Train Epoch: 5 [99200/104000 (95%)]\tLoss: 0.000008\n", "Train Epoch: 5 [99840/104000 (96%)]\tLoss: 0.000038\n", "Train Epoch: 5 [100480/104000 (97%)]\tLoss: 0.000004\n", "Train Epoch: 5 [101120/104000 (97%)]\tLoss: 0.000020\n", "Train Epoch: 5 [101760/104000 (98%)]\tLoss: 0.000006\n", "Train Epoch: 5 [102400/104000 (98%)]\tLoss: 0.000007\n", "Train Epoch: 5 [103040/104000 (99%)]\tLoss: 0.000044\n", "Train Epoch: 5 [103680/104000 (100%)]\tLoss: 0.000092\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.1840, Accuracy: 27434/30000 (91%)\n", "\n", "[100.0, 100.0]\n", "[88.56, 91.44666666666667]\n", "The number of neurons in CNN layer is 10\n", "Train Epoch: 1 [0/104000 (0%)]\tLoss: 0.552990\n", "Train Epoch: 1 [640/104000 (1%)]\tLoss: 0.007941\n", "Train Epoch: 1 [1280/104000 (1%)]\tLoss: 0.004193\n", "Train Epoch: 1 [1920/104000 (2%)]\tLoss: 0.003162\n", "Train Epoch: 1 [2560/104000 (2%)]\tLoss: 0.002266\n", "Train Epoch: 1 [3200/104000 (3%)]\tLoss: 0.004642\n", "Train Epoch: 1 [3840/104000 (4%)]\tLoss: 0.001600\n", "Train Epoch: 1 [4480/104000 (4%)]\tLoss: 0.001422\n", "Train Epoch: 1 [5120/104000 (5%)]\tLoss: 0.001106\n", "Train Epoch: 1 [5760/104000 (6%)]\tLoss: 0.001111\n", "Train Epoch: 1 [6400/104000 (6%)]\tLoss: 0.002817\n", "Train Epoch: 1 [7040/104000 (7%)]\tLoss: 0.000887\n", "Train Epoch: 1 [7680/104000 (7%)]\tLoss: 0.000959\n", "Train Epoch: 1 [8320/104000 (8%)]\tLoss: 0.002973\n", "Train Epoch: 1 [8960/104000 (9%)]\tLoss: 0.000815\n", "Train Epoch: 1 [9600/104000 (9%)]\tLoss: 0.000668\n", "Train Epoch: 1 [10240/104000 (10%)]\tLoss: 0.000793\n", "Train Epoch: 1 [10880/104000 (10%)]\tLoss: 0.000626\n", "Train Epoch: 1 [11520/104000 (11%)]\tLoss: 0.000544\n", "Train Epoch: 1 [12160/104000 (12%)]\tLoss: 0.000493\n", "Train Epoch: 1 [12800/104000 (12%)]\tLoss: 0.001317\n", "Train Epoch: 1 [13440/104000 (13%)]\tLoss: 0.000536\n", "Train Epoch: 1 [14080/104000 (14%)]\tLoss: 0.000696\n", "Train Epoch: 1 [14720/104000 (14%)]\tLoss: 0.000400\n", "Train Epoch: 1 [15360/104000 (15%)]\tLoss: 0.000392\n", "Train Epoch: 1 [16000/104000 (15%)]\tLoss: 0.000243\n", "Train Epoch: 1 [16640/104000 (16%)]\tLoss: 0.000226\n", "Train Epoch: 1 [17280/104000 (17%)]\tLoss: 0.000268\n", "Train Epoch: 1 [17920/104000 (17%)]\tLoss: 0.000282\n", "Train Epoch: 1 [18560/104000 (18%)]\tLoss: 0.000365\n", "Train Epoch: 1 [19200/104000 (18%)]\tLoss: 0.000205\n", "Train Epoch: 1 [19840/104000 (19%)]\tLoss: 0.000307\n", "Train Epoch: 1 [20480/104000 (20%)]\tLoss: 0.000428\n", "Train Epoch: 1 [21120/104000 (20%)]\tLoss: 0.000367\n", "Train Epoch: 1 [21760/104000 (21%)]\tLoss: 0.000241\n", "Train Epoch: 1 [22400/104000 (22%)]\tLoss: 0.000208\n", "Train Epoch: 1 [23040/104000 (22%)]\tLoss: 0.000198\n", "Train Epoch: 1 [23680/104000 (23%)]\tLoss: 0.000603\n", "Train Epoch: 1 [24320/104000 (23%)]\tLoss: 0.000469\n", "Train Epoch: 1 [24960/104000 (24%)]\tLoss: 0.000194\n", "Train Epoch: 1 [25600/104000 (25%)]\tLoss: 0.000243\n", "Train Epoch: 1 [26240/104000 (25%)]\tLoss: 0.000303\n", "Train Epoch: 1 [26880/104000 (26%)]\tLoss: 0.000310\n", "Train Epoch: 1 [27520/104000 (26%)]\tLoss: 0.000347\n", "Train Epoch: 1 [28160/104000 (27%)]\tLoss: 0.000274\n", "Train Epoch: 1 [28800/104000 (28%)]\tLoss: 0.000292\n", "Train Epoch: 1 [29440/104000 (28%)]\tLoss: 0.000304\n", "Train Epoch: 1 [30080/104000 (29%)]\tLoss: 0.000176\n", "Train Epoch: 1 [30720/104000 (30%)]\tLoss: 0.000490\n", "Train Epoch: 1 [31360/104000 (30%)]\tLoss: 0.000162\n", "Train Epoch: 1 [32000/104000 (31%)]\tLoss: 0.000216\n", "Train Epoch: 1 [32640/104000 (31%)]\tLoss: 0.000513\n", "Train Epoch: 1 [33280/104000 (32%)]\tLoss: 0.000212\n", "Train Epoch: 1 [33920/104000 (33%)]\tLoss: 0.000553\n", "Train Epoch: 1 [34560/104000 (33%)]\tLoss: 0.000168\n", "Train Epoch: 1 [35200/104000 (34%)]\tLoss: 0.000135\n", "Train Epoch: 1 [35840/104000 (34%)]\tLoss: 0.000179\n", "Train Epoch: 1 [36480/104000 (35%)]\tLoss: 0.000207\n", "Train Epoch: 1 [37120/104000 (36%)]\tLoss: 0.000681\n", "Train Epoch: 1 [37760/104000 (36%)]\tLoss: 0.000148\n", "Train Epoch: 1 [38400/104000 (37%)]\tLoss: 0.000171\n", "Train Epoch: 1 [39040/104000 (38%)]\tLoss: 0.000230\n", "Train Epoch: 1 [39680/104000 (38%)]\tLoss: 0.000408\n", "Train Epoch: 1 [40320/104000 (39%)]\tLoss: 0.000163\n", "Train Epoch: 1 [40960/104000 (39%)]\tLoss: 0.000141\n", "Train Epoch: 1 [41600/104000 (40%)]\tLoss: 0.000120\n", "Train Epoch: 1 [42240/104000 (41%)]\tLoss: 0.000175\n", "Train Epoch: 1 [42880/104000 (41%)]\tLoss: 0.000258\n", "Train Epoch: 1 [43520/104000 (42%)]\tLoss: 0.000279\n", "Train Epoch: 1 [44160/104000 (42%)]\tLoss: 0.000507\n", "Train Epoch: 1 [44800/104000 (43%)]\tLoss: 0.000255\n", "Train Epoch: 1 [45440/104000 (44%)]\tLoss: 0.000092\n", "Train Epoch: 1 [46080/104000 (44%)]\tLoss: 0.000383\n", "Train Epoch: 1 [46720/104000 (45%)]\tLoss: 0.000096\n", "Train Epoch: 1 [47360/104000 (46%)]\tLoss: 0.000065\n", "Train Epoch: 1 [48000/104000 (46%)]\tLoss: 0.000147\n", "Train Epoch: 1 [48640/104000 (47%)]\tLoss: 0.000246\n", "Train Epoch: 1 [49280/104000 (47%)]\tLoss: 0.000117\n", "Train Epoch: 1 [49920/104000 (48%)]\tLoss: 0.000432\n", "Train Epoch: 1 [50560/104000 (49%)]\tLoss: 0.000127\n", "Train Epoch: 1 [51200/104000 (49%)]\tLoss: 0.000390\n", "Train Epoch: 1 [51840/104000 (50%)]\tLoss: 0.000071\n", "Train Epoch: 1 [52480/104000 (50%)]\tLoss: 0.000879\n", "Train Epoch: 1 [53120/104000 (51%)]\tLoss: 0.000102\n", "Train Epoch: 1 [53760/104000 (52%)]\tLoss: 0.000092\n", "Train Epoch: 1 [54400/104000 (52%)]\tLoss: 0.000086\n", "Train Epoch: 1 [55040/104000 (53%)]\tLoss: 0.000228\n", "Train Epoch: 1 [55680/104000 (54%)]\tLoss: 0.000131\n", "Train Epoch: 1 [56320/104000 (54%)]\tLoss: 0.000146\n", "Train Epoch: 1 [56960/104000 (55%)]\tLoss: 0.000064\n", "Train Epoch: 1 [57600/104000 (55%)]\tLoss: 0.000046\n", "Train Epoch: 1 [58240/104000 (56%)]\tLoss: 0.000090\n", "Train Epoch: 1 [58880/104000 (57%)]\tLoss: 0.000709\n", "Train Epoch: 1 [59520/104000 (57%)]\tLoss: 0.000289\n", "Train Epoch: 1 [60160/104000 (58%)]\tLoss: 0.000095\n", "Train Epoch: 1 [60800/104000 (58%)]\tLoss: 0.000108\n", "Train Epoch: 1 [61440/104000 (59%)]\tLoss: 0.000055\n", "Train Epoch: 1 [62080/104000 (60%)]\tLoss: 0.000140\n", "Train Epoch: 1 [62720/104000 (60%)]\tLoss: 0.000154\n", "Train Epoch: 1 [63360/104000 (61%)]\tLoss: 0.000128\n", "Train Epoch: 1 [64000/104000 (62%)]\tLoss: 0.000132\n", "Train Epoch: 1 [64640/104000 (62%)]\tLoss: 0.000061\n", "Train Epoch: 1 [65280/104000 (63%)]\tLoss: 0.000073\n", "Train Epoch: 1 [65920/104000 (63%)]\tLoss: 0.000036\n", "Train Epoch: 1 [66560/104000 (64%)]\tLoss: 0.000077\n", "Train Epoch: 1 [67200/104000 (65%)]\tLoss: 0.000076\n", "Train Epoch: 1 [67840/104000 (65%)]\tLoss: 0.000640\n", "Train Epoch: 1 [68480/104000 (66%)]\tLoss: 0.000084\n", "Train Epoch: 1 [69120/104000 (66%)]\tLoss: 0.000177\n", "Train Epoch: 1 [69760/104000 (67%)]\tLoss: 0.000173\n", "Train Epoch: 1 [70400/104000 (68%)]\tLoss: 0.000070\n", "Train Epoch: 1 [71040/104000 (68%)]\tLoss: 0.000653\n", "Train Epoch: 1 [71680/104000 (69%)]\tLoss: 0.000108\n", "Train Epoch: 1 [72320/104000 (70%)]\tLoss: 0.000086\n", "Train Epoch: 1 [72960/104000 (70%)]\tLoss: 0.000351\n", "Train Epoch: 1 [73600/104000 (71%)]\tLoss: 0.001071\n", "Train Epoch: 1 [74240/104000 (71%)]\tLoss: 0.000356\n", "Train Epoch: 1 [74880/104000 (72%)]\tLoss: 0.000096\n", "Train Epoch: 1 [75520/104000 (73%)]\tLoss: 0.000082\n", "Train Epoch: 1 [76160/104000 (73%)]\tLoss: 0.000059\n", "Train Epoch: 1 [76800/104000 (74%)]\tLoss: 0.000364\n", "Train Epoch: 1 [77440/104000 (74%)]\tLoss: 0.000427\n", "Train Epoch: 1 [78080/104000 (75%)]\tLoss: 0.000066\n", "Train Epoch: 1 [78720/104000 (76%)]\tLoss: 0.000175\n", "Train Epoch: 1 [79360/104000 (76%)]\tLoss: 0.002394\n", "Train Epoch: 1 [80000/104000 (77%)]\tLoss: 0.000264\n", "Train Epoch: 1 [80640/104000 (78%)]\tLoss: 0.000103\n", "Train Epoch: 1 [81280/104000 (78%)]\tLoss: 0.000052\n", "Train Epoch: 1 [81920/104000 (79%)]\tLoss: 0.000079\n", "Train Epoch: 1 [82560/104000 (79%)]\tLoss: 0.000042\n", "Train Epoch: 1 [83200/104000 (80%)]\tLoss: 0.000111\n", "Train Epoch: 1 [83840/104000 (81%)]\tLoss: 0.000067\n", "Train Epoch: 1 [84480/104000 (81%)]\tLoss: 0.000086\n", "Train Epoch: 1 [85120/104000 (82%)]\tLoss: 0.000658\n", "Train Epoch: 1 [85760/104000 (82%)]\tLoss: 0.000236\n", "Train Epoch: 1 [86400/104000 (83%)]\tLoss: 0.000054\n", "Train Epoch: 1 [87040/104000 (84%)]\tLoss: 0.000112\n", "Train Epoch: 1 [87680/104000 (84%)]\tLoss: 0.000034\n", "Train Epoch: 1 [88320/104000 (85%)]\tLoss: 0.000068\n", "Train Epoch: 1 [88960/104000 (86%)]\tLoss: 0.000254\n", "Train Epoch: 1 [89600/104000 (86%)]\tLoss: 0.000058\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 1 [90240/104000 (87%)]\tLoss: 0.000086\n", "Train Epoch: 1 [90880/104000 (87%)]\tLoss: 0.000078\n", "Train Epoch: 1 [91520/104000 (88%)]\tLoss: 0.000045\n", "Train Epoch: 1 [92160/104000 (89%)]\tLoss: 0.000104\n", "Train Epoch: 1 [92800/104000 (89%)]\tLoss: 0.000059\n", "Train Epoch: 1 [93440/104000 (90%)]\tLoss: 0.000071\n", "Train Epoch: 1 [94080/104000 (90%)]\tLoss: 0.000035\n", "Train Epoch: 1 [94720/104000 (91%)]\tLoss: 0.000094\n", "Train Epoch: 1 [95360/104000 (92%)]\tLoss: 0.000089\n", "Train Epoch: 1 [96000/104000 (92%)]\tLoss: 0.000071\n", "Train Epoch: 1 [96640/104000 (93%)]\tLoss: 0.000202\n", "Train Epoch: 1 [97280/104000 (94%)]\tLoss: 0.000061\n", "Train Epoch: 1 [97920/104000 (94%)]\tLoss: 0.000074\n", "Train Epoch: 1 [98560/104000 (95%)]\tLoss: 0.000062\n", "Train Epoch: 1 [99200/104000 (95%)]\tLoss: 0.000194\n", "Train Epoch: 1 [99840/104000 (96%)]\tLoss: 0.000070\n", "Train Epoch: 1 [100480/104000 (97%)]\tLoss: 0.000037\n", "Train Epoch: 1 [101120/104000 (97%)]\tLoss: 0.000226\n", "Train Epoch: 1 [101760/104000 (98%)]\tLoss: 0.000044\n", "Train Epoch: 1 [102400/104000 (98%)]\tLoss: 0.000114\n", "Train Epoch: 1 [103040/104000 (99%)]\tLoss: 0.000205\n", "Train Epoch: 1 [103680/104000 (100%)]\tLoss: 0.000196\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.2509, Accuracy: 26222/30000 (87%)\n", "\n", "Train Epoch: 2 [0/104000 (0%)]\tLoss: 0.000063\n", "Train Epoch: 2 [640/104000 (1%)]\tLoss: 0.000021\n", "Train Epoch: 2 [1280/104000 (1%)]\tLoss: 0.000061\n", "Train Epoch: 2 [1920/104000 (2%)]\tLoss: 0.000033\n", "Train Epoch: 2 [2560/104000 (2%)]\tLoss: 0.000050\n", "Train Epoch: 2 [3200/104000 (3%)]\tLoss: 0.000162\n", "Train Epoch: 2 [3840/104000 (4%)]\tLoss: 0.000088\n", "Train Epoch: 2 [4480/104000 (4%)]\tLoss: 0.000035\n", "Train Epoch: 2 [5120/104000 (5%)]\tLoss: 0.000032\n", "Train Epoch: 2 [5760/104000 (6%)]\tLoss: 0.000040\n", "Train Epoch: 2 [6400/104000 (6%)]\tLoss: 0.000162\n", "Train Epoch: 2 [7040/104000 (7%)]\tLoss: 0.000177\n", "Train Epoch: 2 [7680/104000 (7%)]\tLoss: 0.000214\n", "Train Epoch: 2 [8320/104000 (8%)]\tLoss: 0.000180\n", "Train Epoch: 2 [8960/104000 (9%)]\tLoss: 0.000165\n", "Train Epoch: 2 [9600/104000 (9%)]\tLoss: 0.000072\n", "Train Epoch: 2 [10240/104000 (10%)]\tLoss: 0.000162\n", "Train Epoch: 2 [10880/104000 (10%)]\tLoss: 0.000123\n", "Train Epoch: 2 [11520/104000 (11%)]\tLoss: 0.001040\n", "Train Epoch: 2 [12160/104000 (12%)]\tLoss: 0.000254\n", "Train Epoch: 2 [12800/104000 (12%)]\tLoss: 0.000028\n", "Train Epoch: 2 [13440/104000 (13%)]\tLoss: 0.000101\n", "Train Epoch: 2 [14080/104000 (14%)]\tLoss: 0.000040\n", "Train Epoch: 2 [14720/104000 (14%)]\tLoss: 0.000044\n", "Train Epoch: 2 [15360/104000 (15%)]\tLoss: 0.000090\n", "Train Epoch: 2 [16000/104000 (15%)]\tLoss: 0.000027\n", "Train Epoch: 2 [16640/104000 (16%)]\tLoss: 0.000049\n", "Train Epoch: 2 [17280/104000 (17%)]\tLoss: 0.000255\n", "Train Epoch: 2 [17920/104000 (17%)]\tLoss: 0.000031\n", "Train Epoch: 2 [18560/104000 (18%)]\tLoss: 0.000058\n", "Train Epoch: 2 [19200/104000 (18%)]\tLoss: 0.000033\n", "Train Epoch: 2 [19840/104000 (19%)]\tLoss: 0.000069\n", "Train Epoch: 2 [20480/104000 (20%)]\tLoss: 0.000062\n", "Train Epoch: 2 [21120/104000 (20%)]\tLoss: 0.000122\n", "Train Epoch: 2 [21760/104000 (21%)]\tLoss: 0.000029\n", "Train Epoch: 2 [22400/104000 (22%)]\tLoss: 0.000041\n", "Train Epoch: 2 [23040/104000 (22%)]\tLoss: 0.000041\n", "Train Epoch: 2 [23680/104000 (23%)]\tLoss: 0.000193\n", "Train Epoch: 2 [24320/104000 (23%)]\tLoss: 0.000052\n", "Train Epoch: 2 [24960/104000 (24%)]\tLoss: 0.000081\n", "Train Epoch: 2 [25600/104000 (25%)]\tLoss: 0.000166\n", "Train Epoch: 2 [26240/104000 (25%)]\tLoss: 0.000352\n", "Train Epoch: 2 [26880/104000 (26%)]\tLoss: 0.000046\n", "Train Epoch: 2 [27520/104000 (26%)]\tLoss: 0.000048\n", "Train Epoch: 2 [28160/104000 (27%)]\tLoss: 0.000032\n", "Train Epoch: 2 [28800/104000 (28%)]\tLoss: 0.000053\n", "Train Epoch: 2 [29440/104000 (28%)]\tLoss: 0.000113\n", "Train Epoch: 2 [30080/104000 (29%)]\tLoss: 0.000038\n", "Train Epoch: 2 [30720/104000 (30%)]\tLoss: 0.000189\n", "Train Epoch: 2 [31360/104000 (30%)]\tLoss: 0.000024\n", "Train Epoch: 2 [32000/104000 (31%)]\tLoss: 0.000050\n", "Train Epoch: 2 [32640/104000 (31%)]\tLoss: 0.000031\n", "Train Epoch: 2 [33280/104000 (32%)]\tLoss: 0.000033\n", "Train Epoch: 2 [33920/104000 (33%)]\tLoss: 0.000019\n", "Train Epoch: 2 [34560/104000 (33%)]\tLoss: 0.000031\n", "Train Epoch: 2 [35200/104000 (34%)]\tLoss: 0.000018\n", "Train Epoch: 2 [35840/104000 (34%)]\tLoss: 0.000035\n", "Train Epoch: 2 [36480/104000 (35%)]\tLoss: 0.000073\n", "Train Epoch: 2 [37120/104000 (36%)]\tLoss: 0.000027\n", "Train Epoch: 2 [37760/104000 (36%)]\tLoss: 0.000078\n", "Train Epoch: 2 [38400/104000 (37%)]\tLoss: 0.000035\n", "Train Epoch: 2 [39040/104000 (38%)]\tLoss: 0.000155\n", "Train Epoch: 2 [39680/104000 (38%)]\tLoss: 0.000087\n", "Train Epoch: 2 [40320/104000 (39%)]\tLoss: 0.000079\n", "Train Epoch: 2 [40960/104000 (39%)]\tLoss: 0.000032\n", "Train Epoch: 2 [41600/104000 (40%)]\tLoss: 0.000029\n", "Train Epoch: 2 [42240/104000 (41%)]\tLoss: 0.000381\n", "Train Epoch: 2 [42880/104000 (41%)]\tLoss: 0.000389\n", "Train Epoch: 2 [43520/104000 (42%)]\tLoss: 0.000030\n", "Train Epoch: 2 [44160/104000 (42%)]\tLoss: 0.000078\n", "Train Epoch: 2 [44800/104000 (43%)]\tLoss: 0.000212\n", "Train Epoch: 2 [45440/104000 (44%)]\tLoss: 0.000054\n", "Train Epoch: 2 [46080/104000 (44%)]\tLoss: 0.000039\n", "Train Epoch: 2 [46720/104000 (45%)]\tLoss: 0.000423\n", "Train Epoch: 2 [47360/104000 (46%)]\tLoss: 0.000092\n", "Train Epoch: 2 [48000/104000 (46%)]\tLoss: 0.000078\n", "Train Epoch: 2 [48640/104000 (47%)]\tLoss: 0.000043\n", "Train Epoch: 2 [49280/104000 (47%)]\tLoss: 0.000024\n", "Train Epoch: 2 [49920/104000 (48%)]\tLoss: 0.000043\n", "Train Epoch: 2 [50560/104000 (49%)]\tLoss: 0.000034\n", "Train Epoch: 2 [51200/104000 (49%)]\tLoss: 0.000050\n", "Train Epoch: 2 [51840/104000 (50%)]\tLoss: 0.000021\n", "Train Epoch: 2 [52480/104000 (50%)]\tLoss: 0.000034\n", "Train Epoch: 2 [53120/104000 (51%)]\tLoss: 0.000017\n", "Train Epoch: 2 [53760/104000 (52%)]\tLoss: 0.000113\n", "Train Epoch: 2 [54400/104000 (52%)]\tLoss: 0.000026\n", "Train Epoch: 2 [55040/104000 (53%)]\tLoss: 0.000175\n", "Train Epoch: 2 [55680/104000 (54%)]\tLoss: 0.000030\n", "Train Epoch: 2 [56320/104000 (54%)]\tLoss: 0.000022\n", "Train Epoch: 2 [56960/104000 (55%)]\tLoss: 0.000033\n", "Train Epoch: 2 [57600/104000 (55%)]\tLoss: 0.000039\n", "Train Epoch: 2 [58240/104000 (56%)]\tLoss: 0.000300\n", "Train Epoch: 2 [58880/104000 (57%)]\tLoss: 0.000085\n", "Train Epoch: 2 [59520/104000 (57%)]\tLoss: 0.000020\n", "Train Epoch: 2 [60160/104000 (58%)]\tLoss: 0.000019\n", "Train Epoch: 2 [60800/104000 (58%)]\tLoss: 0.000030\n", "Train Epoch: 2 [61440/104000 (59%)]\tLoss: 0.000020\n", "Train Epoch: 2 [62080/104000 (60%)]\tLoss: 0.000033\n", "Train Epoch: 2 [62720/104000 (60%)]\tLoss: 0.000115\n", "Train Epoch: 2 [63360/104000 (61%)]\tLoss: 0.000040\n", "Train Epoch: 2 [64000/104000 (62%)]\tLoss: 0.000037\n", "Train Epoch: 2 [64640/104000 (62%)]\tLoss: 0.000128\n", "Train Epoch: 2 [65280/104000 (63%)]\tLoss: 0.000017\n", "Train Epoch: 2 [65920/104000 (63%)]\tLoss: 0.000029\n", "Train Epoch: 2 [66560/104000 (64%)]\tLoss: 0.000038\n", "Train Epoch: 2 [67200/104000 (65%)]\tLoss: 0.000085\n", "Train Epoch: 2 [67840/104000 (65%)]\tLoss: 0.000018\n", "Train Epoch: 2 [68480/104000 (66%)]\tLoss: 0.000035\n", "Train Epoch: 2 [69120/104000 (66%)]\tLoss: 0.000018\n", "Train Epoch: 2 [69760/104000 (67%)]\tLoss: 0.000039\n", "Train Epoch: 2 [70400/104000 (68%)]\tLoss: 0.000032\n", "Train Epoch: 2 [71040/104000 (68%)]\tLoss: 0.000022\n", "Train Epoch: 2 [71680/104000 (69%)]\tLoss: 0.000065\n", "Train Epoch: 2 [72320/104000 (70%)]\tLoss: 0.000018\n", "Train Epoch: 2 [72960/104000 (70%)]\tLoss: 0.000109\n", "Train Epoch: 2 [73600/104000 (71%)]\tLoss: 0.000032\n", "Train Epoch: 2 [74240/104000 (71%)]\tLoss: 0.000052\n", "Train Epoch: 2 [74880/104000 (72%)]\tLoss: 0.000016\n", "Train Epoch: 2 [75520/104000 (73%)]\tLoss: 0.000040\n", "Train Epoch: 2 [76160/104000 (73%)]\tLoss: 0.000012\n", "Train Epoch: 2 [76800/104000 (74%)]\tLoss: 0.000019\n", "Train Epoch: 2 [77440/104000 (74%)]\tLoss: 0.000031\n", "Train Epoch: 2 [78080/104000 (75%)]\tLoss: 0.000105\n", "Train Epoch: 2 [78720/104000 (76%)]\tLoss: 0.000023\n", "Train Epoch: 2 [79360/104000 (76%)]\tLoss: 0.000011\n", "Train Epoch: 2 [80000/104000 (77%)]\tLoss: 0.000022\n", "Train Epoch: 2 [80640/104000 (78%)]\tLoss: 0.000539\n", "Train Epoch: 2 [81280/104000 (78%)]\tLoss: 0.000010\n", "Train Epoch: 2 [81920/104000 (79%)]\tLoss: 0.000049\n", "Train Epoch: 2 [82560/104000 (79%)]\tLoss: 0.000022\n", "Train Epoch: 2 [83200/104000 (80%)]\tLoss: 0.000019\n", "Train Epoch: 2 [83840/104000 (81%)]\tLoss: 0.000025\n", "Train Epoch: 2 [84480/104000 (81%)]\tLoss: 0.000018\n", "Train Epoch: 2 [85120/104000 (82%)]\tLoss: 0.000029\n", "Train Epoch: 2 [85760/104000 (82%)]\tLoss: 0.000024\n", "Train Epoch: 2 [86400/104000 (83%)]\tLoss: 0.000064\n", "Train Epoch: 2 [87040/104000 (84%)]\tLoss: 0.000017\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 2 [87680/104000 (84%)]\tLoss: 0.000039\n", "Train Epoch: 2 [88320/104000 (85%)]\tLoss: 0.000042\n", "Train Epoch: 2 [88960/104000 (86%)]\tLoss: 0.000021\n", "Train Epoch: 2 [89600/104000 (86%)]\tLoss: 0.000062\n", "Train Epoch: 2 [90240/104000 (87%)]\tLoss: 0.000053\n", "Train Epoch: 2 [90880/104000 (87%)]\tLoss: 0.000026\n", "Train Epoch: 2 [91520/104000 (88%)]\tLoss: 0.000050\n", "Train Epoch: 2 [92160/104000 (89%)]\tLoss: 0.000041\n", "Train Epoch: 2 [92800/104000 (89%)]\tLoss: 0.000024\n", "Train Epoch: 2 [93440/104000 (90%)]\tLoss: 0.000024\n", "Train Epoch: 2 [94080/104000 (90%)]\tLoss: 0.000011\n", "Train Epoch: 2 [94720/104000 (91%)]\tLoss: 0.000027\n", "Train Epoch: 2 [95360/104000 (92%)]\tLoss: 0.000136\n", "Train Epoch: 2 [96000/104000 (92%)]\tLoss: 0.000015\n", "Train Epoch: 2 [96640/104000 (93%)]\tLoss: 0.000066\n", "Train Epoch: 2 [97280/104000 (94%)]\tLoss: 0.000221\n", "Train Epoch: 2 [97920/104000 (94%)]\tLoss: 0.000067\n", "Train Epoch: 2 [98560/104000 (95%)]\tLoss: 0.000014\n", "Train Epoch: 2 [99200/104000 (95%)]\tLoss: 0.000091\n", "Train Epoch: 2 [99840/104000 (96%)]\tLoss: 0.000065\n", "Train Epoch: 2 [100480/104000 (97%)]\tLoss: 0.000011\n", "Train Epoch: 2 [101120/104000 (97%)]\tLoss: 0.000034\n", "Train Epoch: 2 [101760/104000 (98%)]\tLoss: 0.000043\n", "Train Epoch: 2 [102400/104000 (98%)]\tLoss: 0.000216\n", "Train Epoch: 2 [103040/104000 (99%)]\tLoss: 0.000035\n", "Train Epoch: 2 [103680/104000 (100%)]\tLoss: 0.000032\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.2632, Accuracy: 26118/30000 (87%)\n", "\n", "Train Epoch: 3 [0/104000 (0%)]\tLoss: 0.000013\n", "Train Epoch: 3 [640/104000 (1%)]\tLoss: 0.000040\n", "Train Epoch: 3 [1280/104000 (1%)]\tLoss: 0.000020\n", "Train Epoch: 3 [1920/104000 (2%)]\tLoss: 0.000028\n", "Train Epoch: 3 [2560/104000 (2%)]\tLoss: 0.000020\n", "Train Epoch: 3 [3200/104000 (3%)]\tLoss: 0.000021\n", "Train Epoch: 3 [3840/104000 (4%)]\tLoss: 0.000022\n", "Train Epoch: 3 [4480/104000 (4%)]\tLoss: 0.000078\n", "Train Epoch: 3 [5120/104000 (5%)]\tLoss: 0.000067\n", "Train Epoch: 3 [5760/104000 (6%)]\tLoss: 0.000024\n", "Train Epoch: 3 [6400/104000 (6%)]\tLoss: 0.000128\n", "Train Epoch: 3 [7040/104000 (7%)]\tLoss: 0.000016\n", "Train Epoch: 3 [7680/104000 (7%)]\tLoss: 0.000036\n", "Train Epoch: 3 [8320/104000 (8%)]\tLoss: 0.000023\n", "Train Epoch: 3 [8960/104000 (9%)]\tLoss: 0.000034\n", "Train Epoch: 3 [9600/104000 (9%)]\tLoss: 0.000033\n", "Train Epoch: 3 [10240/104000 (10%)]\tLoss: 0.000048\n", "Train Epoch: 3 [10880/104000 (10%)]\tLoss: 0.000074\n", "Train Epoch: 3 [11520/104000 (11%)]\tLoss: 0.000023\n", "Train Epoch: 3 [12160/104000 (12%)]\tLoss: 0.000009\n", "Train Epoch: 3 [12800/104000 (12%)]\tLoss: 0.000012\n", "Train Epoch: 3 [13440/104000 (13%)]\tLoss: 0.000043\n", "Train Epoch: 3 [14080/104000 (14%)]\tLoss: 0.000050\n", "Train Epoch: 3 [14720/104000 (14%)]\tLoss: 0.000025\n", "Train Epoch: 3 [15360/104000 (15%)]\tLoss: 0.000066\n", "Train Epoch: 3 [16000/104000 (15%)]\tLoss: 0.000021\n", "Train Epoch: 3 [16640/104000 (16%)]\tLoss: 0.000028\n", "Train Epoch: 3 [17280/104000 (17%)]\tLoss: 0.000069\n", "Train Epoch: 3 [17920/104000 (17%)]\tLoss: 0.000577\n", "Train Epoch: 3 [18560/104000 (18%)]\tLoss: 0.000056\n", "Train Epoch: 3 [19200/104000 (18%)]\tLoss: 0.000051\n", "Train Epoch: 3 [19840/104000 (19%)]\tLoss: 0.000024\n", "Train Epoch: 3 [20480/104000 (20%)]\tLoss: 0.000044\n", "Train Epoch: 3 [21120/104000 (20%)]\tLoss: 0.000008\n", "Train Epoch: 3 [21760/104000 (21%)]\tLoss: 0.000084\n", "Train Epoch: 3 [22400/104000 (22%)]\tLoss: 0.000015\n", "Train Epoch: 3 [23040/104000 (22%)]\tLoss: 0.000048\n", "Train Epoch: 3 [23680/104000 (23%)]\tLoss: 0.000087\n", "Train Epoch: 3 [24320/104000 (23%)]\tLoss: 0.000081\n", "Train Epoch: 3 [24960/104000 (24%)]\tLoss: 0.000085\n", "Train Epoch: 3 [25600/104000 (25%)]\tLoss: 0.000049\n", "Train Epoch: 3 [26240/104000 (25%)]\tLoss: 0.000016\n", "Train Epoch: 3 [26880/104000 (26%)]\tLoss: 0.000944\n", "Train Epoch: 3 [27520/104000 (26%)]\tLoss: 0.000015\n", "Train Epoch: 3 [28160/104000 (27%)]\tLoss: 0.000020\n", "Train Epoch: 3 [28800/104000 (28%)]\tLoss: 0.000038\n", "Train Epoch: 3 [29440/104000 (28%)]\tLoss: 0.000048\n", "Train Epoch: 3 [30080/104000 (29%)]\tLoss: 0.000017\n", "Train Epoch: 3 [30720/104000 (30%)]\tLoss: 0.000014\n", "Train Epoch: 3 [31360/104000 (30%)]\tLoss: 0.000011\n", "Train Epoch: 3 [32000/104000 (31%)]\tLoss: 0.000208\n", "Train Epoch: 3 [32640/104000 (31%)]\tLoss: 0.000019\n", "Train Epoch: 3 [33280/104000 (32%)]\tLoss: 0.000092\n", "Train Epoch: 3 [33920/104000 (33%)]\tLoss: 0.000065\n", "Train Epoch: 3 [34560/104000 (33%)]\tLoss: 0.000018\n", "Train Epoch: 3 [35200/104000 (34%)]\tLoss: 0.000012\n", "Train Epoch: 3 [35840/104000 (34%)]\tLoss: 0.000012\n", "Train Epoch: 3 [36480/104000 (35%)]\tLoss: 0.000495\n", "Train Epoch: 3 [37120/104000 (36%)]\tLoss: 0.000007\n", "Train Epoch: 3 [37760/104000 (36%)]\tLoss: 0.000019\n", "Train Epoch: 3 [38400/104000 (37%)]\tLoss: 0.000009\n", "Train Epoch: 3 [39040/104000 (38%)]\tLoss: 0.000019\n", "Train Epoch: 3 [39680/104000 (38%)]\tLoss: 0.000014\n", "Train Epoch: 3 [40320/104000 (39%)]\tLoss: 0.000032\n", "Train Epoch: 3 [40960/104000 (39%)]\tLoss: 0.000062\n", "Train Epoch: 3 [41600/104000 (40%)]\tLoss: 0.000005\n", "Train Epoch: 3 [42240/104000 (41%)]\tLoss: 0.000022\n", "Train Epoch: 3 [42880/104000 (41%)]\tLoss: 0.000134\n", "Train Epoch: 3 [43520/104000 (42%)]\tLoss: 0.000119\n", "Train Epoch: 3 [44160/104000 (42%)]\tLoss: 0.000040\n", "Train Epoch: 3 [44800/104000 (43%)]\tLoss: 0.000053\n", "Train Epoch: 3 [45440/104000 (44%)]\tLoss: 0.000101\n", "Train Epoch: 3 [46080/104000 (44%)]\tLoss: 0.000548\n", "Train Epoch: 3 [46720/104000 (45%)]\tLoss: 0.000008\n", "Train Epoch: 3 [47360/104000 (46%)]\tLoss: 0.000022\n", "Train Epoch: 3 [48000/104000 (46%)]\tLoss: 0.000016\n", "Train Epoch: 3 [48640/104000 (47%)]\tLoss: 0.000016\n", "Train Epoch: 3 [49280/104000 (47%)]\tLoss: 0.000215\n", "Train Epoch: 3 [49920/104000 (48%)]\tLoss: 0.000015\n", "Train Epoch: 3 [50560/104000 (49%)]\tLoss: 0.000349\n", "Train Epoch: 3 [51200/104000 (49%)]\tLoss: 0.000023\n", "Train Epoch: 3 [51840/104000 (50%)]\tLoss: 0.000019\n", "Train Epoch: 3 [52480/104000 (50%)]\tLoss: 0.000029\n", "Train Epoch: 3 [53120/104000 (51%)]\tLoss: 0.000146\n", "Train Epoch: 3 [53760/104000 (52%)]\tLoss: 0.000016\n", "Train Epoch: 3 [54400/104000 (52%)]\tLoss: 0.000019\n", "Train Epoch: 3 [55040/104000 (53%)]\tLoss: 0.000020\n", "Train Epoch: 3 [55680/104000 (54%)]\tLoss: 0.000048\n", "Train Epoch: 3 [56320/104000 (54%)]\tLoss: 0.000187\n", "Train Epoch: 3 [56960/104000 (55%)]\tLoss: 0.000015\n", "Train Epoch: 3 [57600/104000 (55%)]\tLoss: 0.000008\n", "Train Epoch: 3 [58240/104000 (56%)]\tLoss: 0.000007\n", "Train Epoch: 3 [58880/104000 (57%)]\tLoss: 0.000012\n", "Train Epoch: 3 [59520/104000 (57%)]\tLoss: 0.000012\n", "Train Epoch: 3 [60160/104000 (58%)]\tLoss: 0.000100\n", "Train Epoch: 3 [60800/104000 (58%)]\tLoss: 0.000092\n", "Train Epoch: 3 [61440/104000 (59%)]\tLoss: 0.000009\n", "Train Epoch: 3 [62080/104000 (60%)]\tLoss: 0.000222\n", "Train Epoch: 3 [62720/104000 (60%)]\tLoss: 0.000231\n", "Train Epoch: 3 [63360/104000 (61%)]\tLoss: 0.000017\n", "Train Epoch: 3 [64000/104000 (62%)]\tLoss: 0.000010\n", "Train Epoch: 3 [64640/104000 (62%)]\tLoss: 0.000045\n", "Train Epoch: 3 [65280/104000 (63%)]\tLoss: 0.000136\n", "Train Epoch: 3 [65920/104000 (63%)]\tLoss: 0.000020\n", "Train Epoch: 3 [66560/104000 (64%)]\tLoss: 0.000018\n", "Train Epoch: 3 [67200/104000 (65%)]\tLoss: 0.000019\n", "Train Epoch: 3 [67840/104000 (65%)]\tLoss: 0.000028\n", "Train Epoch: 3 [68480/104000 (66%)]\tLoss: 0.000013\n", "Train Epoch: 3 [69120/104000 (66%)]\tLoss: 0.000025\n", "Train Epoch: 3 [69760/104000 (67%)]\tLoss: 0.000026\n", "Train Epoch: 3 [70400/104000 (68%)]\tLoss: 0.000013\n", "Train Epoch: 3 [71040/104000 (68%)]\tLoss: 0.000233\n", "Train Epoch: 3 [71680/104000 (69%)]\tLoss: 0.000016\n", "Train Epoch: 3 [72320/104000 (70%)]\tLoss: 0.000092\n", "Train Epoch: 3 [72960/104000 (70%)]\tLoss: 0.000115\n", "Train Epoch: 3 [73600/104000 (71%)]\tLoss: 0.000017\n", "Train Epoch: 3 [74240/104000 (71%)]\tLoss: 0.000011\n", "Train Epoch: 3 [74880/104000 (72%)]\tLoss: 0.000066\n", "Train Epoch: 3 [75520/104000 (73%)]\tLoss: 0.000013\n", "Train Epoch: 3 [76160/104000 (73%)]\tLoss: 0.000048\n", "Train Epoch: 3 [76800/104000 (74%)]\tLoss: 0.000009\n", "Train Epoch: 3 [77440/104000 (74%)]\tLoss: 0.000016\n", "Train Epoch: 3 [78080/104000 (75%)]\tLoss: 0.000031\n", "Train Epoch: 3 [78720/104000 (76%)]\tLoss: 0.000025\n", "Train Epoch: 3 [79360/104000 (76%)]\tLoss: 0.000018\n", "Train Epoch: 3 [80000/104000 (77%)]\tLoss: 0.000115\n", "Train Epoch: 3 [80640/104000 (78%)]\tLoss: 0.000021\n", "Train Epoch: 3 [81280/104000 (78%)]\tLoss: 0.000046\n", "Train Epoch: 3 [81920/104000 (79%)]\tLoss: 0.000012\n", "Train Epoch: 3 [82560/104000 (79%)]\tLoss: 0.000011\n", "Train Epoch: 3 [83200/104000 (80%)]\tLoss: 0.000027\n", "Train Epoch: 3 [83840/104000 (81%)]\tLoss: 0.000042\n", "Train Epoch: 3 [84480/104000 (81%)]\tLoss: 0.000056\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 3 [85120/104000 (82%)]\tLoss: 0.000012\n", "Train Epoch: 3 [85760/104000 (82%)]\tLoss: 0.000045\n", "Train Epoch: 3 [86400/104000 (83%)]\tLoss: 0.000017\n", "Train Epoch: 3 [87040/104000 (84%)]\tLoss: 0.000027\n", "Train Epoch: 3 [87680/104000 (84%)]\tLoss: 0.000012\n", "Train Epoch: 3 [88320/104000 (85%)]\tLoss: 0.000058\n", "Train Epoch: 3 [88960/104000 (86%)]\tLoss: 0.000018\n", "Train Epoch: 3 [89600/104000 (86%)]\tLoss: 0.000019\n", "Train Epoch: 3 [90240/104000 (87%)]\tLoss: 0.000014\n", "Train Epoch: 3 [90880/104000 (87%)]\tLoss: 0.000009\n", "Train Epoch: 3 [91520/104000 (88%)]\tLoss: 0.000008\n", "Train Epoch: 3 [92160/104000 (89%)]\tLoss: 0.000008\n", "Train Epoch: 3 [92800/104000 (89%)]\tLoss: 0.000094\n", "Train Epoch: 3 [93440/104000 (90%)]\tLoss: 0.000103\n", "Train Epoch: 3 [94080/104000 (90%)]\tLoss: 0.000040\n", "Train Epoch: 3 [94720/104000 (91%)]\tLoss: 0.000068\n", "Train Epoch: 3 [95360/104000 (92%)]\tLoss: 0.000033\n", "Train Epoch: 3 [96000/104000 (92%)]\tLoss: 0.000008\n", "Train Epoch: 3 [96640/104000 (93%)]\tLoss: 0.000018\n", "Train Epoch: 3 [97280/104000 (94%)]\tLoss: 0.000122\n", "Train Epoch: 3 [97920/104000 (94%)]\tLoss: 0.000055\n", "Train Epoch: 3 [98560/104000 (95%)]\tLoss: 0.000018\n", "Train Epoch: 3 [99200/104000 (95%)]\tLoss: 0.000033\n", "Train Epoch: 3 [99840/104000 (96%)]\tLoss: 0.000014\n", "Train Epoch: 3 [100480/104000 (97%)]\tLoss: 0.000009\n", "Train Epoch: 3 [101120/104000 (97%)]\tLoss: 0.000012\n", "Train Epoch: 3 [101760/104000 (98%)]\tLoss: 0.000015\n", "Train Epoch: 3 [102400/104000 (98%)]\tLoss: 0.000009\n", "Train Epoch: 3 [103040/104000 (99%)]\tLoss: 0.000008\n", "Train Epoch: 3 [103680/104000 (100%)]\tLoss: 0.000037\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.1820, Accuracy: 27467/30000 (92%)\n", "\n", "Train Epoch: 4 [0/104000 (0%)]\tLoss: 0.000022\n", "Train Epoch: 4 [640/104000 (1%)]\tLoss: 0.000015\n", "Train Epoch: 4 [1280/104000 (1%)]\tLoss: 0.000029\n", "Train Epoch: 4 [1920/104000 (2%)]\tLoss: 0.000010\n", "Train Epoch: 4 [2560/104000 (2%)]\tLoss: 0.000053\n", "Train Epoch: 4 [3200/104000 (3%)]\tLoss: 0.000009\n", "Train Epoch: 4 [3840/104000 (4%)]\tLoss: 0.000012\n", "Train Epoch: 4 [4480/104000 (4%)]\tLoss: 0.000034\n", "Train Epoch: 4 [5120/104000 (5%)]\tLoss: 0.000009\n", "Train Epoch: 4 [5760/104000 (6%)]\tLoss: 0.000009\n", "Train Epoch: 4 [6400/104000 (6%)]\tLoss: 0.000095\n", "Train Epoch: 4 [7040/104000 (7%)]\tLoss: 0.000007\n", "Train Epoch: 4 [7680/104000 (7%)]\tLoss: 0.000044\n", "Train Epoch: 4 [8320/104000 (8%)]\tLoss: 0.000015\n", "Train Epoch: 4 [8960/104000 (9%)]\tLoss: 0.000021\n", "Train Epoch: 4 [9600/104000 (9%)]\tLoss: 0.000014\n", "Train Epoch: 4 [10240/104000 (10%)]\tLoss: 0.000030\n", "Train Epoch: 4 [10880/104000 (10%)]\tLoss: 0.000013\n", "Train Epoch: 4 [11520/104000 (11%)]\tLoss: 0.000021\n", "Train Epoch: 4 [12160/104000 (12%)]\tLoss: 0.000007\n", "Train Epoch: 4 [12800/104000 (12%)]\tLoss: 0.000043\n", "Train Epoch: 4 [13440/104000 (13%)]\tLoss: 0.000027\n", "Train Epoch: 4 [14080/104000 (14%)]\tLoss: 0.000010\n", "Train Epoch: 4 [14720/104000 (14%)]\tLoss: 0.000092\n", "Train Epoch: 4 [15360/104000 (15%)]\tLoss: 0.000012\n", "Train Epoch: 4 [16000/104000 (15%)]\tLoss: 0.000026\n", "Train Epoch: 4 [16640/104000 (16%)]\tLoss: 0.001358\n", "Train Epoch: 4 [17280/104000 (17%)]\tLoss: 0.000007\n", "Train Epoch: 4 [17920/104000 (17%)]\tLoss: 0.000006\n", "Train Epoch: 4 [18560/104000 (18%)]\tLoss: 0.000019\n", "Train Epoch: 4 [19200/104000 (18%)]\tLoss: 0.000008\n", "Train Epoch: 4 [19840/104000 (19%)]\tLoss: 0.000014\n", "Train Epoch: 4 [20480/104000 (20%)]\tLoss: 0.000023\n", "Train Epoch: 4 [21120/104000 (20%)]\tLoss: 0.000009\n", "Train Epoch: 4 [21760/104000 (21%)]\tLoss: 0.000013\n", "Train Epoch: 4 [22400/104000 (22%)]\tLoss: 0.000009\n", "Train Epoch: 4 [23040/104000 (22%)]\tLoss: 0.000014\n", "Train Epoch: 4 [23680/104000 (23%)]\tLoss: 0.000013\n", "Train Epoch: 4 [24320/104000 (23%)]\tLoss: 0.000003\n", "Train Epoch: 4 [24960/104000 (24%)]\tLoss: 0.000009\n", "Train Epoch: 4 [25600/104000 (25%)]\tLoss: 0.000012\n", "Train Epoch: 4 [26240/104000 (25%)]\tLoss: 0.000015\n", "Train Epoch: 4 [26880/104000 (26%)]\tLoss: 0.000040\n", "Train Epoch: 4 [27520/104000 (26%)]\tLoss: 0.000005\n", "Train Epoch: 4 [28160/104000 (27%)]\tLoss: 0.000010\n", "Train Epoch: 4 [28800/104000 (28%)]\tLoss: 0.000088\n", "Train Epoch: 4 [29440/104000 (28%)]\tLoss: 0.000006\n", "Train Epoch: 4 [30080/104000 (29%)]\tLoss: 0.000020\n", "Train Epoch: 4 [30720/104000 (30%)]\tLoss: 0.000025\n", "Train Epoch: 4 [31360/104000 (30%)]\tLoss: 0.000025\n", "Train Epoch: 4 [32000/104000 (31%)]\tLoss: 0.000009\n", "Train Epoch: 4 [32640/104000 (31%)]\tLoss: 0.000311\n", "Train Epoch: 4 [33280/104000 (32%)]\tLoss: 0.000019\n", "Train Epoch: 4 [33920/104000 (33%)]\tLoss: 0.000017\n", "Train Epoch: 4 [34560/104000 (33%)]\tLoss: 0.000316\n", "Train Epoch: 4 [35200/104000 (34%)]\tLoss: 0.000131\n", "Train Epoch: 4 [35840/104000 (34%)]\tLoss: 0.000007\n", "Train Epoch: 4 [36480/104000 (35%)]\tLoss: 0.000014\n", "Train Epoch: 4 [37120/104000 (36%)]\tLoss: 0.000032\n", "Train Epoch: 4 [37760/104000 (36%)]\tLoss: 0.000016\n", "Train Epoch: 4 [38400/104000 (37%)]\tLoss: 0.000193\n", "Train Epoch: 4 [39040/104000 (38%)]\tLoss: 0.000029\n", "Train Epoch: 4 [39680/104000 (38%)]\tLoss: 0.000016\n", "Train Epoch: 4 [40320/104000 (39%)]\tLoss: 0.000020\n", "Train Epoch: 4 [40960/104000 (39%)]\tLoss: 0.000008\n", "Train Epoch: 4 [41600/104000 (40%)]\tLoss: 0.000033\n", "Train Epoch: 4 [42240/104000 (41%)]\tLoss: 0.001253\n", "Train Epoch: 4 [42880/104000 (41%)]\tLoss: 0.000018\n", "Train Epoch: 4 [43520/104000 (42%)]\tLoss: 0.000051\n", "Train Epoch: 4 [44160/104000 (42%)]\tLoss: 0.000005\n", "Train Epoch: 4 [44800/104000 (43%)]\tLoss: 0.000011\n", "Train Epoch: 4 [45440/104000 (44%)]\tLoss: 0.000654\n", "Train Epoch: 4 [46080/104000 (44%)]\tLoss: 0.000014\n", "Train Epoch: 4 [46720/104000 (45%)]\tLoss: 0.000011\n", "Train Epoch: 4 [47360/104000 (46%)]\tLoss: 0.000005\n", "Train Epoch: 4 [48000/104000 (46%)]\tLoss: 0.000018\n", "Train Epoch: 4 [48640/104000 (47%)]\tLoss: 0.000007\n", "Train Epoch: 4 [49280/104000 (47%)]\tLoss: 0.000016\n", "Train Epoch: 4 [49920/104000 (48%)]\tLoss: 0.000006\n", "Train Epoch: 4 [50560/104000 (49%)]\tLoss: 0.000016\n", "Train Epoch: 4 [51200/104000 (49%)]\tLoss: 0.000064\n", "Train Epoch: 4 [51840/104000 (50%)]\tLoss: 0.000010\n", "Train Epoch: 4 [52480/104000 (50%)]\tLoss: 0.000099\n", "Train Epoch: 4 [53120/104000 (51%)]\tLoss: 0.000012\n", "Train Epoch: 4 [53760/104000 (52%)]\tLoss: 0.000008\n", "Train Epoch: 4 [54400/104000 (52%)]\tLoss: 0.000005\n", "Train Epoch: 4 [55040/104000 (53%)]\tLoss: 0.000014\n", "Train Epoch: 4 [55680/104000 (54%)]\tLoss: 0.000014\n", "Train Epoch: 4 [56320/104000 (54%)]\tLoss: 0.000025\n", "Train Epoch: 4 [56960/104000 (55%)]\tLoss: 0.000009\n", "Train Epoch: 4 [57600/104000 (55%)]\tLoss: 0.000051\n", "Train Epoch: 4 [58240/104000 (56%)]\tLoss: 0.000021\n", "Train Epoch: 4 [58880/104000 (57%)]\tLoss: 0.000023\n", "Train Epoch: 4 [59520/104000 (57%)]\tLoss: 0.000148\n", "Train Epoch: 4 [60160/104000 (58%)]\tLoss: 0.000017\n", "Train Epoch: 4 [60800/104000 (58%)]\tLoss: 0.000008\n", "Train Epoch: 4 [61440/104000 (59%)]\tLoss: 0.000024\n", "Train Epoch: 4 [62080/104000 (60%)]\tLoss: 0.000053\n", "Train Epoch: 4 [62720/104000 (60%)]\tLoss: 0.000018\n", "Train Epoch: 4 [63360/104000 (61%)]\tLoss: 0.000008\n", "Train Epoch: 4 [64000/104000 (62%)]\tLoss: 0.000004\n", "Train Epoch: 4 [64640/104000 (62%)]\tLoss: 0.000016\n", "Train Epoch: 4 [65280/104000 (63%)]\tLoss: 0.000179\n", "Train Epoch: 4 [65920/104000 (63%)]\tLoss: 0.000004\n", "Train Epoch: 4 [66560/104000 (64%)]\tLoss: 0.000008\n", "Train Epoch: 4 [67200/104000 (65%)]\tLoss: 0.000181\n", "Train Epoch: 4 [67840/104000 (65%)]\tLoss: 0.000023\n", "Train Epoch: 4 [68480/104000 (66%)]\tLoss: 0.000011\n", "Train Epoch: 4 [69120/104000 (66%)]\tLoss: 0.000017\n", "Train Epoch: 4 [69760/104000 (67%)]\tLoss: 0.000010\n", "Train Epoch: 4 [70400/104000 (68%)]\tLoss: 0.000009\n", "Train Epoch: 4 [71040/104000 (68%)]\tLoss: 0.000028\n", "Train Epoch: 4 [71680/104000 (69%)]\tLoss: 0.000007\n", "Train Epoch: 4 [72320/104000 (70%)]\tLoss: 0.000010\n", "Train Epoch: 4 [72960/104000 (70%)]\tLoss: 0.000251\n", "Train Epoch: 4 [73600/104000 (71%)]\tLoss: 0.000011\n", "Train Epoch: 4 [74240/104000 (71%)]\tLoss: 0.000032\n", "Train Epoch: 4 [74880/104000 (72%)]\tLoss: 0.000009\n", "Train Epoch: 4 [75520/104000 (73%)]\tLoss: 0.000013\n", "Train Epoch: 4 [76160/104000 (73%)]\tLoss: 0.000013\n", "Train Epoch: 4 [76800/104000 (74%)]\tLoss: 0.000015\n", "Train Epoch: 4 [77440/104000 (74%)]\tLoss: 0.000022\n", "Train Epoch: 4 [78080/104000 (75%)]\tLoss: 0.000012\n", "Train Epoch: 4 [78720/104000 (76%)]\tLoss: 0.000006\n", "Train Epoch: 4 [79360/104000 (76%)]\tLoss: 0.000086\n", "Train Epoch: 4 [80000/104000 (77%)]\tLoss: 0.000016\n", "Train Epoch: 4 [80640/104000 (78%)]\tLoss: 0.000022\n", "Train Epoch: 4 [81280/104000 (78%)]\tLoss: 0.000047\n", "Train Epoch: 4 [81920/104000 (79%)]\tLoss: 0.000026\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 4 [82560/104000 (79%)]\tLoss: 0.000019\n", "Train Epoch: 4 [83200/104000 (80%)]\tLoss: 0.000036\n", "Train Epoch: 4 [83840/104000 (81%)]\tLoss: 0.000004\n", "Train Epoch: 4 [84480/104000 (81%)]\tLoss: 0.000112\n", "Train Epoch: 4 [85120/104000 (82%)]\tLoss: 0.000016\n", "Train Epoch: 4 [85760/104000 (82%)]\tLoss: 0.000007\n", "Train Epoch: 4 [86400/104000 (83%)]\tLoss: 0.000023\n", "Train Epoch: 4 [87040/104000 (84%)]\tLoss: 0.000045\n", "Train Epoch: 4 [87680/104000 (84%)]\tLoss: 0.000008\n", "Train Epoch: 4 [88320/104000 (85%)]\tLoss: 0.000012\n", "Train Epoch: 4 [88960/104000 (86%)]\tLoss: 0.000013\n", "Train Epoch: 4 [89600/104000 (86%)]\tLoss: 0.000023\n", "Train Epoch: 4 [90240/104000 (87%)]\tLoss: 0.000009\n", "Train Epoch: 4 [90880/104000 (87%)]\tLoss: 0.000028\n", "Train Epoch: 4 [91520/104000 (88%)]\tLoss: 0.000011\n", "Train Epoch: 4 [92160/104000 (89%)]\tLoss: 0.000034\n", "Train Epoch: 4 [92800/104000 (89%)]\tLoss: 0.000008\n", "Train Epoch: 4 [93440/104000 (90%)]\tLoss: 0.000011\n", "Train Epoch: 4 [94080/104000 (90%)]\tLoss: 0.000192\n", "Train Epoch: 4 [94720/104000 (91%)]\tLoss: 0.000012\n", "Train Epoch: 4 [95360/104000 (92%)]\tLoss: 0.000024\n", "Train Epoch: 4 [96000/104000 (92%)]\tLoss: 0.000111\n", "Train Epoch: 4 [96640/104000 (93%)]\tLoss: 0.000016\n", "Train Epoch: 4 [97280/104000 (94%)]\tLoss: 0.000021\n", "Train Epoch: 4 [97920/104000 (94%)]\tLoss: 0.000007\n", "Train Epoch: 4 [98560/104000 (95%)]\tLoss: 0.000025\n", "Train Epoch: 4 [99200/104000 (95%)]\tLoss: 0.000022\n", "Train Epoch: 4 [99840/104000 (96%)]\tLoss: 0.000005\n", "Train Epoch: 4 [100480/104000 (97%)]\tLoss: 0.000006\n", "Train Epoch: 4 [101120/104000 (97%)]\tLoss: 0.000007\n", "Train Epoch: 4 [101760/104000 (98%)]\tLoss: 0.000011\n", "Train Epoch: 4 [102400/104000 (98%)]\tLoss: 0.000016\n", "Train Epoch: 4 [103040/104000 (99%)]\tLoss: 0.000003\n", "Train Epoch: 4 [103680/104000 (100%)]\tLoss: 0.000007\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.1927, Accuracy: 27318/30000 (91%)\n", "\n", "Train Epoch: 5 [0/104000 (0%)]\tLoss: 0.000032\n", "Train Epoch: 5 [640/104000 (1%)]\tLoss: 0.000012\n", "Train Epoch: 5 [1280/104000 (1%)]\tLoss: 0.000008\n", "Train Epoch: 5 [1920/104000 (2%)]\tLoss: 0.000012\n", "Train Epoch: 5 [2560/104000 (2%)]\tLoss: 0.000034\n", "Train Epoch: 5 [3200/104000 (3%)]\tLoss: 0.000011\n", "Train Epoch: 5 [3840/104000 (4%)]\tLoss: 0.000511\n", "Train Epoch: 5 [4480/104000 (4%)]\tLoss: 0.000013\n", "Train Epoch: 5 [5120/104000 (5%)]\tLoss: 0.000025\n", "Train Epoch: 5 [5760/104000 (6%)]\tLoss: 0.000085\n", "Train Epoch: 5 [6400/104000 (6%)]\tLoss: 0.000022\n", "Train Epoch: 5 [7040/104000 (7%)]\tLoss: 0.000012\n", "Train Epoch: 5 [7680/104000 (7%)]\tLoss: 0.000009\n", "Train Epoch: 5 [8320/104000 (8%)]\tLoss: 0.000037\n", "Train Epoch: 5 [8960/104000 (9%)]\tLoss: 0.000015\n", "Train Epoch: 5 [9600/104000 (9%)]\tLoss: 0.000009\n", "Train Epoch: 5 [10240/104000 (10%)]\tLoss: 0.000005\n", "Train Epoch: 5 [10880/104000 (10%)]\tLoss: 0.000008\n", "Train Epoch: 5 [11520/104000 (11%)]\tLoss: 0.000008\n", "Train Epoch: 5 [12160/104000 (12%)]\tLoss: 0.000013\n", "Train Epoch: 5 [12800/104000 (12%)]\tLoss: 0.000008\n", "Train Epoch: 5 [13440/104000 (13%)]\tLoss: 0.000267\n", "Train Epoch: 5 [14080/104000 (14%)]\tLoss: 0.000008\n", "Train Epoch: 5 [14720/104000 (14%)]\tLoss: 0.000086\n", "Train Epoch: 5 [15360/104000 (15%)]\tLoss: 0.000017\n", "Train Epoch: 5 [16000/104000 (15%)]\tLoss: 0.000002\n", "Train Epoch: 5 [16640/104000 (16%)]\tLoss: 0.000006\n", "Train Epoch: 5 [17280/104000 (17%)]\tLoss: 0.000010\n", "Train Epoch: 5 [17920/104000 (17%)]\tLoss: 0.000093\n", "Train Epoch: 5 [18560/104000 (18%)]\tLoss: 0.000016\n", "Train Epoch: 5 [19200/104000 (18%)]\tLoss: 0.000021\n", "Train Epoch: 5 [19840/104000 (19%)]\tLoss: 0.000009\n", "Train Epoch: 5 [20480/104000 (20%)]\tLoss: 0.000015\n", "Train Epoch: 5 [21120/104000 (20%)]\tLoss: 0.000011\n", "Train Epoch: 5 [21760/104000 (21%)]\tLoss: 0.000011\n", "Train Epoch: 5 [22400/104000 (22%)]\tLoss: 0.000007\n", "Train Epoch: 5 [23040/104000 (22%)]\tLoss: 0.000007\n", "Train Epoch: 5 [23680/104000 (23%)]\tLoss: 0.000043\n", "Train Epoch: 5 [24320/104000 (23%)]\tLoss: 0.000021\n", "Train Epoch: 5 [24960/104000 (24%)]\tLoss: 0.000037\n", "Train Epoch: 5 [25600/104000 (25%)]\tLoss: 0.000008\n", "Train Epoch: 5 [26240/104000 (25%)]\tLoss: 0.000005\n", "Train Epoch: 5 [26880/104000 (26%)]\tLoss: 0.000007\n", "Train Epoch: 5 [27520/104000 (26%)]\tLoss: 0.000005\n", "Train Epoch: 5 [28160/104000 (27%)]\tLoss: 0.000008\n", "Train Epoch: 5 [28800/104000 (28%)]\tLoss: 0.000009\n", "Train Epoch: 5 [29440/104000 (28%)]\tLoss: 0.000230\n", "Train Epoch: 5 [30080/104000 (29%)]\tLoss: 0.000009\n", "Train Epoch: 5 [30720/104000 (30%)]\tLoss: 0.000009\n", "Train Epoch: 5 [31360/104000 (30%)]\tLoss: 0.000020\n", "Train Epoch: 5 [32000/104000 (31%)]\tLoss: 0.000012\n", "Train Epoch: 5 [32640/104000 (31%)]\tLoss: 0.000021\n", "Train Epoch: 5 [33280/104000 (32%)]\tLoss: 0.000021\n", "Train Epoch: 5 [33920/104000 (33%)]\tLoss: 0.000004\n", "Train Epoch: 5 [34560/104000 (33%)]\tLoss: 0.000009\n", "Train Epoch: 5 [35200/104000 (34%)]\tLoss: 0.000006\n", "Train Epoch: 5 [35840/104000 (34%)]\tLoss: 0.000004\n", "Train Epoch: 5 [36480/104000 (35%)]\tLoss: 0.000016\n", "Train Epoch: 5 [37120/104000 (36%)]\tLoss: 0.000024\n", "Train Epoch: 5 [37760/104000 (36%)]\tLoss: 0.000008\n", "Train Epoch: 5 [38400/104000 (37%)]\tLoss: 0.000023\n", "Train Epoch: 5 [39040/104000 (38%)]\tLoss: 0.000018\n", "Train Epoch: 5 [39680/104000 (38%)]\tLoss: 0.000010\n", "Train Epoch: 5 [40320/104000 (39%)]\tLoss: 0.000038\n", "Train Epoch: 5 [40960/104000 (39%)]\tLoss: 0.000005\n", "Train Epoch: 5 [41600/104000 (40%)]\tLoss: 0.000008\n", "Train Epoch: 5 [42240/104000 (41%)]\tLoss: 0.000023\n", "Train Epoch: 5 [42880/104000 (41%)]\tLoss: 0.000008\n", "Train Epoch: 5 [43520/104000 (42%)]\tLoss: 0.000018\n", "Train Epoch: 5 [44160/104000 (42%)]\tLoss: 0.000009\n", "Train Epoch: 5 [44800/104000 (43%)]\tLoss: 0.000018\n", "Train Epoch: 5 [45440/104000 (44%)]\tLoss: 0.000013\n", "Train Epoch: 5 [46080/104000 (44%)]\tLoss: 0.000010\n", "Train Epoch: 5 [46720/104000 (45%)]\tLoss: 0.000215\n", "Train Epoch: 5 [47360/104000 (46%)]\tLoss: 0.000012\n", "Train Epoch: 5 [48000/104000 (46%)]\tLoss: 0.000015\n", "Train Epoch: 5 [48640/104000 (47%)]\tLoss: 0.000012\n", "Train Epoch: 5 [49280/104000 (47%)]\tLoss: 0.000007\n", "Train Epoch: 5 [49920/104000 (48%)]\tLoss: 0.000006\n", "Train Epoch: 5 [50560/104000 (49%)]\tLoss: 0.000025\n", "Train Epoch: 5 [51200/104000 (49%)]\tLoss: 0.000068\n", "Train Epoch: 5 [51840/104000 (50%)]\tLoss: 0.000014\n", "Train Epoch: 5 [52480/104000 (50%)]\tLoss: 0.000015\n", "Train Epoch: 5 [53120/104000 (51%)]\tLoss: 0.000009\n", "Train Epoch: 5 [53760/104000 (52%)]\tLoss: 0.000012\n", "Train Epoch: 5 [54400/104000 (52%)]\tLoss: 0.000026\n", "Train Epoch: 5 [55040/104000 (53%)]\tLoss: 0.000012\n", "Train Epoch: 5 [55680/104000 (54%)]\tLoss: 0.000070\n", "Train Epoch: 5 [56320/104000 (54%)]\tLoss: 0.000070\n", "Train Epoch: 5 [56960/104000 (55%)]\tLoss: 0.000069\n", "Train Epoch: 5 [57600/104000 (55%)]\tLoss: 0.000009\n", "Train Epoch: 5 [58240/104000 (56%)]\tLoss: 0.000005\n", "Train Epoch: 5 [58880/104000 (57%)]\tLoss: 0.000012\n", "Train Epoch: 5 [59520/104000 (57%)]\tLoss: 0.000022\n", "Train Epoch: 5 [60160/104000 (58%)]\tLoss: 0.000007\n", "Train Epoch: 5 [60800/104000 (58%)]\tLoss: 0.000007\n", "Train Epoch: 5 [61440/104000 (59%)]\tLoss: 0.000076\n", "Train Epoch: 5 [62080/104000 (60%)]\tLoss: 0.000020\n", "Train Epoch: 5 [62720/104000 (60%)]\tLoss: 0.000012\n", "Train Epoch: 5 [63360/104000 (61%)]\tLoss: 0.000086\n", "Train Epoch: 5 [64000/104000 (62%)]\tLoss: 0.000006\n", "Train Epoch: 5 [64640/104000 (62%)]\tLoss: 0.000009\n", "Train Epoch: 5 [65280/104000 (63%)]\tLoss: 0.000005\n", "Train Epoch: 5 [65920/104000 (63%)]\tLoss: 0.000019\n", "Train Epoch: 5 [66560/104000 (64%)]\tLoss: 0.000099\n", "Train Epoch: 5 [67200/104000 (65%)]\tLoss: 0.000127\n", "Train Epoch: 5 [67840/104000 (65%)]\tLoss: 0.000017\n", "Train Epoch: 5 [68480/104000 (66%)]\tLoss: 0.000021\n", "Train Epoch: 5 [69120/104000 (66%)]\tLoss: 0.000006\n", "Train Epoch: 5 [69760/104000 (67%)]\tLoss: 0.000007\n", "Train Epoch: 5 [70400/104000 (68%)]\tLoss: 0.000006\n", "Train Epoch: 5 [71040/104000 (68%)]\tLoss: 0.000022\n", "Train Epoch: 5 [71680/104000 (69%)]\tLoss: 0.000122\n", "Train Epoch: 5 [72320/104000 (70%)]\tLoss: 0.000021\n", "Train Epoch: 5 [72960/104000 (70%)]\tLoss: 0.000012\n", "Train Epoch: 5 [73600/104000 (71%)]\tLoss: 0.000145\n", "Train Epoch: 5 [74240/104000 (71%)]\tLoss: 0.000236\n", "Train Epoch: 5 [74880/104000 (72%)]\tLoss: 0.000004\n", "Train Epoch: 5 [75520/104000 (73%)]\tLoss: 0.000013\n", "Train Epoch: 5 [76160/104000 (73%)]\tLoss: 0.000009\n", "Train Epoch: 5 [76800/104000 (74%)]\tLoss: 0.000038\n", "Train Epoch: 5 [77440/104000 (74%)]\tLoss: 0.000065\n", "Train Epoch: 5 [78080/104000 (75%)]\tLoss: 0.000014\n", "Train Epoch: 5 [78720/104000 (76%)]\tLoss: 0.000017\n", "Train Epoch: 5 [79360/104000 (76%)]\tLoss: 0.000002\n", "Train Epoch: 5 [80000/104000 (77%)]\tLoss: 0.000004\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 5 [80640/104000 (78%)]\tLoss: 0.000010\n", "Train Epoch: 5 [81280/104000 (78%)]\tLoss: 0.000005\n", "Train Epoch: 5 [81920/104000 (79%)]\tLoss: 0.000016\n", "Train Epoch: 5 [82560/104000 (79%)]\tLoss: 0.000016\n", "Train Epoch: 5 [83200/104000 (80%)]\tLoss: 0.000031\n", "Train Epoch: 5 [83840/104000 (81%)]\tLoss: 0.000007\n", "Train Epoch: 5 [84480/104000 (81%)]\tLoss: 0.000036\n", "Train Epoch: 5 [85120/104000 (82%)]\tLoss: 0.000009\n", "Train Epoch: 5 [85760/104000 (82%)]\tLoss: 0.000003\n", "Train Epoch: 5 [86400/104000 (83%)]\tLoss: 0.000023\n", "Train Epoch: 5 [87040/104000 (84%)]\tLoss: 0.000134\n", "Train Epoch: 5 [87680/104000 (84%)]\tLoss: 0.000017\n", "Train Epoch: 5 [88320/104000 (85%)]\tLoss: 0.000004\n", "Train Epoch: 5 [88960/104000 (86%)]\tLoss: 0.000014\n", "Train Epoch: 5 [89600/104000 (86%)]\tLoss: 0.000060\n", "Train Epoch: 5 [90240/104000 (87%)]\tLoss: 0.000010\n", "Train Epoch: 5 [90880/104000 (87%)]\tLoss: 0.000008\n", "Train Epoch: 5 [91520/104000 (88%)]\tLoss: 0.000006\n", "Train Epoch: 5 [92160/104000 (89%)]\tLoss: 0.000013\n", "Train Epoch: 5 [92800/104000 (89%)]\tLoss: 0.000006\n", "Train Epoch: 5 [93440/104000 (90%)]\tLoss: 0.000010\n", "Train Epoch: 5 [94080/104000 (90%)]\tLoss: 0.000060\n", "Train Epoch: 5 [94720/104000 (91%)]\tLoss: 0.000156\n", "Train Epoch: 5 [95360/104000 (92%)]\tLoss: 0.000115\n", "Train Epoch: 5 [96000/104000 (92%)]\tLoss: 0.000048\n", "Train Epoch: 5 [96640/104000 (93%)]\tLoss: 0.000006\n", "Train Epoch: 5 [97280/104000 (94%)]\tLoss: 0.000009\n", "Train Epoch: 5 [97920/104000 (94%)]\tLoss: 0.000012\n", "Train Epoch: 5 [98560/104000 (95%)]\tLoss: 0.000006\n", "Train Epoch: 5 [99200/104000 (95%)]\tLoss: 0.000010\n", "Train Epoch: 5 [99840/104000 (96%)]\tLoss: 0.000007\n", "Train Epoch: 5 [100480/104000 (97%)]\tLoss: 0.000010\n", "Train Epoch: 5 [101120/104000 (97%)]\tLoss: 0.000033\n", "Train Epoch: 5 [101760/104000 (98%)]\tLoss: 0.000037\n", "Train Epoch: 5 [102400/104000 (98%)]\tLoss: 0.000013\n", "Train Epoch: 5 [103040/104000 (99%)]\tLoss: 0.000003\n", "Train Epoch: 5 [103680/104000 (100%)]\tLoss: 0.000123\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.2115, Accuracy: 27050/30000 (90%)\n", "\n", "[100.0, 100.0, 100.0]\n", "[88.56, 91.44666666666667, 90.16666666666667]\n", "The number of neurons in CNN layer is 20\n", "Train Epoch: 1 [0/104000 (0%)]\tLoss: 0.838881\n", "Train Epoch: 1 [640/104000 (1%)]\tLoss: 0.000247\n", "Train Epoch: 1 [1280/104000 (1%)]\tLoss: 0.000319\n", "Train Epoch: 1 [1920/104000 (2%)]\tLoss: 0.000412\n", "Train Epoch: 1 [2560/104000 (2%)]\tLoss: 0.000413\n", "Train Epoch: 1 [3200/104000 (3%)]\tLoss: 0.000391\n", "Train Epoch: 1 [3840/104000 (4%)]\tLoss: 0.000342\n", "Train Epoch: 1 [4480/104000 (4%)]\tLoss: 0.000258\n", "Train Epoch: 1 [5120/104000 (5%)]\tLoss: 0.000206\n", "Train Epoch: 1 [5760/104000 (6%)]\tLoss: 0.000161\n", "Train Epoch: 1 [6400/104000 (6%)]\tLoss: 0.000135\n", "Train Epoch: 1 [7040/104000 (7%)]\tLoss: 0.000136\n", "Train Epoch: 1 [7680/104000 (7%)]\tLoss: 0.000528\n", "Train Epoch: 1 [8320/104000 (8%)]\tLoss: 0.000241\n", "Train Epoch: 1 [8960/104000 (9%)]\tLoss: 0.000707\n", "Train Epoch: 1 [9600/104000 (9%)]\tLoss: 0.000771\n", "Train Epoch: 1 [10240/104000 (10%)]\tLoss: 0.000273\n", "Train Epoch: 1 [10880/104000 (10%)]\tLoss: 0.000157\n", "Train Epoch: 1 [11520/104000 (11%)]\tLoss: 0.000274\n", "Train Epoch: 1 [12160/104000 (12%)]\tLoss: 0.000260\n", "Train Epoch: 1 [12800/104000 (12%)]\tLoss: 0.000103\n", "Train Epoch: 1 [13440/104000 (13%)]\tLoss: 0.000208\n", "Train Epoch: 1 [14080/104000 (14%)]\tLoss: 0.000094\n", "Train Epoch: 1 [14720/104000 (14%)]\tLoss: 0.000089\n", "Train Epoch: 1 [15360/104000 (15%)]\tLoss: 0.001090\n", "Train Epoch: 1 [16000/104000 (15%)]\tLoss: 0.000184\n", "Train Epoch: 1 [16640/104000 (16%)]\tLoss: 0.000120\n", "Train Epoch: 1 [17280/104000 (17%)]\tLoss: 0.000158\n", "Train Epoch: 1 [17920/104000 (17%)]\tLoss: 0.000283\n", "Train Epoch: 1 [18560/104000 (18%)]\tLoss: 0.001772\n", "Train Epoch: 1 [19200/104000 (18%)]\tLoss: 0.000266\n", "Train Epoch: 1 [19840/104000 (19%)]\tLoss: 0.000424\n", "Train Epoch: 1 [20480/104000 (20%)]\tLoss: 0.000118\n", "Train Epoch: 1 [21120/104000 (20%)]\tLoss: 0.000107\n", "Train Epoch: 1 [21760/104000 (21%)]\tLoss: 0.000129\n", "Train Epoch: 1 [22400/104000 (22%)]\tLoss: 0.000481\n", "Train Epoch: 1 [23040/104000 (22%)]\tLoss: 0.000154\n", "Train Epoch: 1 [23680/104000 (23%)]\tLoss: 0.001279\n", "Train Epoch: 1 [24320/104000 (23%)]\tLoss: 0.001023\n", "Train Epoch: 1 [24960/104000 (24%)]\tLoss: 0.000088\n", "Train Epoch: 1 [25600/104000 (25%)]\tLoss: 0.000109\n", "Train Epoch: 1 [26240/104000 (25%)]\tLoss: 0.000168\n", "Train Epoch: 1 [26880/104000 (26%)]\tLoss: 0.000079\n", "Train Epoch: 1 [27520/104000 (26%)]\tLoss: 0.000115\n", "Train Epoch: 1 [28160/104000 (27%)]\tLoss: 0.000096\n", "Train Epoch: 1 [28800/104000 (28%)]\tLoss: 0.000067\n", "Train Epoch: 1 [29440/104000 (28%)]\tLoss: 0.000063\n", "Train Epoch: 1 [30080/104000 (29%)]\tLoss: 0.000077\n", "Train Epoch: 1 [30720/104000 (30%)]\tLoss: 0.000138\n", "Train Epoch: 1 [31360/104000 (30%)]\tLoss: 0.000242\n", "Train Epoch: 1 [32000/104000 (31%)]\tLoss: 0.000136\n", "Train Epoch: 1 [32640/104000 (31%)]\tLoss: 0.000498\n", "Train Epoch: 1 [33280/104000 (32%)]\tLoss: 0.000327\n", "Train Epoch: 1 [33920/104000 (33%)]\tLoss: 0.000224\n", "Train Epoch: 1 [34560/104000 (33%)]\tLoss: 0.000677\n", "Train Epoch: 1 [35200/104000 (34%)]\tLoss: 0.000079\n", "Train Epoch: 1 [35840/104000 (34%)]\tLoss: 0.000067\n", "Train Epoch: 1 [36480/104000 (35%)]\tLoss: 0.000086\n", "Train Epoch: 1 [37120/104000 (36%)]\tLoss: 0.000132\n", "Train Epoch: 1 [37760/104000 (36%)]\tLoss: 0.000195\n", "Train Epoch: 1 [38400/104000 (37%)]\tLoss: 0.000085\n", "Train Epoch: 1 [39040/104000 (38%)]\tLoss: 0.000071\n", "Train Epoch: 1 [39680/104000 (38%)]\tLoss: 0.000099\n", "Train Epoch: 1 [40320/104000 (39%)]\tLoss: 0.000136\n", "Train Epoch: 1 [40960/104000 (39%)]\tLoss: 0.000041\n", "Train Epoch: 1 [41600/104000 (40%)]\tLoss: 0.000178\n", "Train Epoch: 1 [42240/104000 (41%)]\tLoss: 0.000059\n", "Train Epoch: 1 [42880/104000 (41%)]\tLoss: 0.000080\n", "Train Epoch: 1 [43520/104000 (42%)]\tLoss: 0.000081\n", "Train Epoch: 1 [44160/104000 (42%)]\tLoss: 0.000036\n", "Train Epoch: 1 [44800/104000 (43%)]\tLoss: 0.000212\n", "Train Epoch: 1 [45440/104000 (44%)]\tLoss: 0.000143\n", "Train Epoch: 1 [46080/104000 (44%)]\tLoss: 0.000042\n", "Train Epoch: 1 [46720/104000 (45%)]\tLoss: 0.000037\n", "Train Epoch: 1 [47360/104000 (46%)]\tLoss: 0.000304\n", "Train Epoch: 1 [48000/104000 (46%)]\tLoss: 0.000308\n", "Train Epoch: 1 [48640/104000 (47%)]\tLoss: 0.000110\n", "Train Epoch: 1 [49280/104000 (47%)]\tLoss: 0.000160\n", "Train Epoch: 1 [49920/104000 (48%)]\tLoss: 0.000273\n", "Train Epoch: 1 [50560/104000 (49%)]\tLoss: 0.001155\n", "Train Epoch: 1 [51200/104000 (49%)]\tLoss: 0.000160\n", "Train Epoch: 1 [51840/104000 (50%)]\tLoss: 0.000068\n", "Train Epoch: 1 [52480/104000 (50%)]\tLoss: 0.000114\n", "Train Epoch: 1 [53120/104000 (51%)]\tLoss: 0.000130\n", "Train Epoch: 1 [53760/104000 (52%)]\tLoss: 0.000039\n", "Train Epoch: 1 [54400/104000 (52%)]\tLoss: 0.000042\n", "Train Epoch: 1 [55040/104000 (53%)]\tLoss: 0.000034\n", "Train Epoch: 1 [55680/104000 (54%)]\tLoss: 0.000041\n", "Train Epoch: 1 [56320/104000 (54%)]\tLoss: 0.000199\n", "Train Epoch: 1 [56960/104000 (55%)]\tLoss: 0.000083\n", "Train Epoch: 1 [57600/104000 (55%)]\tLoss: 0.000072\n", "Train Epoch: 1 [58240/104000 (56%)]\tLoss: 0.000156\n", "Train Epoch: 1 [58880/104000 (57%)]\tLoss: 0.000081\n", "Train Epoch: 1 [59520/104000 (57%)]\tLoss: 0.000045\n", "Train Epoch: 1 [60160/104000 (58%)]\tLoss: 0.000072\n", "Train Epoch: 1 [60800/104000 (58%)]\tLoss: 0.000081\n", "Train Epoch: 1 [61440/104000 (59%)]\tLoss: 0.000658\n", "Train Epoch: 1 [62080/104000 (60%)]\tLoss: 0.000097\n", "Train Epoch: 1 [62720/104000 (60%)]\tLoss: 0.000073\n", "Train Epoch: 1 [63360/104000 (61%)]\tLoss: 0.000036\n", "Train Epoch: 1 [64000/104000 (62%)]\tLoss: 0.000048\n", "Train Epoch: 1 [64640/104000 (62%)]\tLoss: 0.000230\n", "Train Epoch: 1 [65280/104000 (63%)]\tLoss: 0.000046\n", "Train Epoch: 1 [65920/104000 (63%)]\tLoss: 0.000088\n", "Train Epoch: 1 [66560/104000 (64%)]\tLoss: 0.000138\n", "Train Epoch: 1 [67200/104000 (65%)]\tLoss: 0.000102\n", "Train Epoch: 1 [67840/104000 (65%)]\tLoss: 0.000067\n", "Train Epoch: 1 [68480/104000 (66%)]\tLoss: 0.000061\n", "Train Epoch: 1 [69120/104000 (66%)]\tLoss: 0.000054\n", "Train Epoch: 1 [69760/104000 (67%)]\tLoss: 0.000094\n", "Train Epoch: 1 [70400/104000 (68%)]\tLoss: 0.000031\n", "Train Epoch: 1 [71040/104000 (68%)]\tLoss: 0.000020\n", "Train Epoch: 1 [71680/104000 (69%)]\tLoss: 0.000097\n", "Train Epoch: 1 [72320/104000 (70%)]\tLoss: 0.000029\n", "Train Epoch: 1 [72960/104000 (70%)]\tLoss: 0.000068\n", "Train Epoch: 1 [73600/104000 (71%)]\tLoss: 0.000026\n", "Train Epoch: 1 [74240/104000 (71%)]\tLoss: 0.000280\n", "Train Epoch: 1 [74880/104000 (72%)]\tLoss: 0.000192\n", "Train Epoch: 1 [75520/104000 (73%)]\tLoss: 0.000072\n", "Train Epoch: 1 [76160/104000 (73%)]\tLoss: 0.000275\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 1 [76800/104000 (74%)]\tLoss: 0.000050\n", "Train Epoch: 1 [77440/104000 (74%)]\tLoss: 0.000067\n", "Train Epoch: 1 [78080/104000 (75%)]\tLoss: 0.000064\n", "Train Epoch: 1 [78720/104000 (76%)]\tLoss: 0.000075\n", "Train Epoch: 1 [79360/104000 (76%)]\tLoss: 0.000049\n", "Train Epoch: 1 [80000/104000 (77%)]\tLoss: 0.000106\n", "Train Epoch: 1 [80640/104000 (78%)]\tLoss: 0.000031\n", "Train Epoch: 1 [81280/104000 (78%)]\tLoss: 0.000327\n", "Train Epoch: 1 [81920/104000 (79%)]\tLoss: 0.000087\n", "Train Epoch: 1 [82560/104000 (79%)]\tLoss: 0.000025\n", "Train Epoch: 1 [83200/104000 (80%)]\tLoss: 0.000041\n", "Train Epoch: 1 [83840/104000 (81%)]\tLoss: 0.000026\n", "Train Epoch: 1 [84480/104000 (81%)]\tLoss: 0.000110\n", "Train Epoch: 1 [85120/104000 (82%)]\tLoss: 0.000016\n", "Train Epoch: 1 [85760/104000 (82%)]\tLoss: 0.000031\n", "Train Epoch: 1 [86400/104000 (83%)]\tLoss: 0.000027\n", "Train Epoch: 1 [87040/104000 (84%)]\tLoss: 0.000044\n", "Train Epoch: 1 [87680/104000 (84%)]\tLoss: 0.000048\n", "Train Epoch: 1 [88320/104000 (85%)]\tLoss: 0.000054\n", "Train Epoch: 1 [88960/104000 (86%)]\tLoss: 0.000034\n", "Train Epoch: 1 [89600/104000 (86%)]\tLoss: 0.000043\n", "Train Epoch: 1 [90240/104000 (87%)]\tLoss: 0.000054\n", "Train Epoch: 1 [90880/104000 (87%)]\tLoss: 0.000130\n", "Train Epoch: 1 [91520/104000 (88%)]\tLoss: 0.000110\n", "Train Epoch: 1 [92160/104000 (89%)]\tLoss: 0.000069\n", "Train Epoch: 1 [92800/104000 (89%)]\tLoss: 0.000036\n", "Train Epoch: 1 [93440/104000 (90%)]\tLoss: 0.000028\n", "Train Epoch: 1 [94080/104000 (90%)]\tLoss: 0.000022\n", "Train Epoch: 1 [94720/104000 (91%)]\tLoss: 0.000058\n", "Train Epoch: 1 [95360/104000 (92%)]\tLoss: 0.000016\n", "Train Epoch: 1 [96000/104000 (92%)]\tLoss: 0.000045\n", "Train Epoch: 1 [96640/104000 (93%)]\tLoss: 0.000174\n", "Train Epoch: 1 [97280/104000 (94%)]\tLoss: 0.000091\n", "Train Epoch: 1 [97920/104000 (94%)]\tLoss: 0.000419\n", "Train Epoch: 1 [98560/104000 (95%)]\tLoss: 0.000254\n", "Train Epoch: 1 [99200/104000 (95%)]\tLoss: 0.000016\n", "Train Epoch: 1 [99840/104000 (96%)]\tLoss: 0.000049\n", "Train Epoch: 1 [100480/104000 (97%)]\tLoss: 0.000031\n", "Train Epoch: 1 [101120/104000 (97%)]\tLoss: 0.006004\n", "Train Epoch: 1 [101760/104000 (98%)]\tLoss: 0.000035\n", "Train Epoch: 1 [102400/104000 (98%)]\tLoss: 0.000055\n", "Train Epoch: 1 [103040/104000 (99%)]\tLoss: 0.000103\n", "Train Epoch: 1 [103680/104000 (100%)]\tLoss: 0.000018\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.2020, Accuracy: 27074/30000 (90%)\n", "\n", "Train Epoch: 2 [0/104000 (0%)]\tLoss: 0.000029\n", "Train Epoch: 2 [640/104000 (1%)]\tLoss: 0.000105\n", "Train Epoch: 2 [1280/104000 (1%)]\tLoss: 0.000028\n", "Train Epoch: 2 [1920/104000 (2%)]\tLoss: 0.000515\n", "Train Epoch: 2 [2560/104000 (2%)]\tLoss: 0.000029\n", "Train Epoch: 2 [3200/104000 (3%)]\tLoss: 0.000050\n", "Train Epoch: 2 [3840/104000 (4%)]\tLoss: 0.000240\n", "Train Epoch: 2 [4480/104000 (4%)]\tLoss: 0.000127\n", "Train Epoch: 2 [5120/104000 (5%)]\tLoss: 0.000032\n", "Train Epoch: 2 [5760/104000 (6%)]\tLoss: 0.000113\n", "Train Epoch: 2 [6400/104000 (6%)]\tLoss: 0.000029\n", "Train Epoch: 2 [7040/104000 (7%)]\tLoss: 0.000015\n", "Train Epoch: 2 [7680/104000 (7%)]\tLoss: 0.000020\n", "Train Epoch: 2 [8320/104000 (8%)]\tLoss: 0.000091\n", "Train Epoch: 2 [8960/104000 (9%)]\tLoss: 0.000032\n", "Train Epoch: 2 [9600/104000 (9%)]\tLoss: 0.000016\n", "Train Epoch: 2 [10240/104000 (10%)]\tLoss: 0.000034\n", "Train Epoch: 2 [10880/104000 (10%)]\tLoss: 0.000012\n", "Train Epoch: 2 [11520/104000 (11%)]\tLoss: 0.000044\n", "Train Epoch: 2 [12160/104000 (12%)]\tLoss: 0.000037\n", "Train Epoch: 2 [12800/104000 (12%)]\tLoss: 0.000054\n", "Train Epoch: 2 [13440/104000 (13%)]\tLoss: 0.000017\n", "Train Epoch: 2 [14080/104000 (14%)]\tLoss: 0.000048\n", "Train Epoch: 2 [14720/104000 (14%)]\tLoss: 0.000028\n", "Train Epoch: 2 [15360/104000 (15%)]\tLoss: 0.000021\n", "Train Epoch: 2 [16000/104000 (15%)]\tLoss: 0.000016\n", "Train Epoch: 2 [16640/104000 (16%)]\tLoss: 0.000027\n", "Train Epoch: 2 [17280/104000 (17%)]\tLoss: 0.000095\n", "Train Epoch: 2 [17920/104000 (17%)]\tLoss: 0.000018\n", "Train Epoch: 2 [18560/104000 (18%)]\tLoss: 0.000121\n", "Train Epoch: 2 [19200/104000 (18%)]\tLoss: 0.000019\n", "Train Epoch: 2 [19840/104000 (19%)]\tLoss: 0.000008\n", "Train Epoch: 2 [20480/104000 (20%)]\tLoss: 0.000017\n", "Train Epoch: 2 [21120/104000 (20%)]\tLoss: 0.000089\n", "Train Epoch: 2 [21760/104000 (21%)]\tLoss: 0.000056\n", "Train Epoch: 2 [22400/104000 (22%)]\tLoss: 0.000010\n", "Train Epoch: 2 [23040/104000 (22%)]\tLoss: 0.000024\n", "Train Epoch: 2 [23680/104000 (23%)]\tLoss: 0.000093\n", "Train Epoch: 2 [24320/104000 (23%)]\tLoss: 0.000022\n", "Train Epoch: 2 [24960/104000 (24%)]\tLoss: 0.000027\n", "Train Epoch: 2 [25600/104000 (25%)]\tLoss: 0.000089\n", "Train Epoch: 2 [26240/104000 (25%)]\tLoss: 0.000019\n", "Train Epoch: 2 [26880/104000 (26%)]\tLoss: 0.000258\n", "Train Epoch: 2 [27520/104000 (26%)]\tLoss: 0.000018\n", "Train Epoch: 2 [28160/104000 (27%)]\tLoss: 0.000007\n", "Train Epoch: 2 [28800/104000 (28%)]\tLoss: 0.000018\n", "Train Epoch: 2 [29440/104000 (28%)]\tLoss: 0.000057\n", "Train Epoch: 2 [30080/104000 (29%)]\tLoss: 0.000011\n", "Train Epoch: 2 [30720/104000 (30%)]\tLoss: 0.000012\n", "Train Epoch: 2 [31360/104000 (30%)]\tLoss: 0.000017\n", "Train Epoch: 2 [32000/104000 (31%)]\tLoss: 0.000051\n", "Train Epoch: 2 [32640/104000 (31%)]\tLoss: 0.000011\n", "Train Epoch: 2 [33280/104000 (32%)]\tLoss: 0.000019\n", "Train Epoch: 2 [33920/104000 (33%)]\tLoss: 0.000753\n", "Train Epoch: 2 [34560/104000 (33%)]\tLoss: 0.000037\n", "Train Epoch: 2 [35200/104000 (34%)]\tLoss: 0.000026\n", "Train Epoch: 2 [35840/104000 (34%)]\tLoss: 0.000099\n", "Train Epoch: 2 [36480/104000 (35%)]\tLoss: 0.000037\n", "Train Epoch: 2 [37120/104000 (36%)]\tLoss: 0.000019\n", "Train Epoch: 2 [37760/104000 (36%)]\tLoss: 0.000008\n", "Train Epoch: 2 [38400/104000 (37%)]\tLoss: 0.000019\n", "Train Epoch: 2 [39040/104000 (38%)]\tLoss: 0.000011\n", "Train Epoch: 2 [39680/104000 (38%)]\tLoss: 0.000110\n", "Train Epoch: 2 [40320/104000 (39%)]\tLoss: 0.000026\n", "Train Epoch: 2 [40960/104000 (39%)]\tLoss: 0.000008\n", "Train Epoch: 2 [41600/104000 (40%)]\tLoss: 0.000137\n", "Train Epoch: 2 [42240/104000 (41%)]\tLoss: 0.000023\n", "Train Epoch: 2 [42880/104000 (41%)]\tLoss: 0.000011\n", "Train Epoch: 2 [43520/104000 (42%)]\tLoss: 0.000045\n", "Train Epoch: 2 [44160/104000 (42%)]\tLoss: 0.000020\n", "Train Epoch: 2 [44800/104000 (43%)]\tLoss: 0.000013\n", "Train Epoch: 2 [45440/104000 (44%)]\tLoss: 0.000048\n", "Train Epoch: 2 [46080/104000 (44%)]\tLoss: 0.000009\n", "Train Epoch: 2 [46720/104000 (45%)]\tLoss: 0.000013\n", "Train Epoch: 2 [47360/104000 (46%)]\tLoss: 0.000101\n", "Train Epoch: 2 [48000/104000 (46%)]\tLoss: 0.000010\n", "Train Epoch: 2 [48640/104000 (47%)]\tLoss: 0.000063\n", "Train Epoch: 2 [49280/104000 (47%)]\tLoss: 0.000170\n", "Train Epoch: 2 [49920/104000 (48%)]\tLoss: 0.000005\n", "Train Epoch: 2 [50560/104000 (49%)]\tLoss: 0.000034\n", "Train Epoch: 2 [51200/104000 (49%)]\tLoss: 0.000011\n", "Train Epoch: 2 [51840/104000 (50%)]\tLoss: 0.000045\n", "Train Epoch: 2 [52480/104000 (50%)]\tLoss: 0.000013\n", "Train Epoch: 2 [53120/104000 (51%)]\tLoss: 0.000018\n", "Train Epoch: 2 [53760/104000 (52%)]\tLoss: 0.000685\n", "Train Epoch: 2 [54400/104000 (52%)]\tLoss: 0.000035\n", "Train Epoch: 2 [55040/104000 (53%)]\tLoss: 0.000171\n", "Train Epoch: 2 [55680/104000 (54%)]\tLoss: 0.000015\n", "Train Epoch: 2 [56320/104000 (54%)]\tLoss: 0.000009\n", "Train Epoch: 2 [56960/104000 (55%)]\tLoss: 0.000020\n", "Train Epoch: 2 [57600/104000 (55%)]\tLoss: 0.000031\n", "Train Epoch: 2 [58240/104000 (56%)]\tLoss: 0.000010\n", "Train Epoch: 2 [58880/104000 (57%)]\tLoss: 0.000042\n", "Train Epoch: 2 [59520/104000 (57%)]\tLoss: 0.000016\n", "Train Epoch: 2 [60160/104000 (58%)]\tLoss: 0.000031\n", "Train Epoch: 2 [60800/104000 (58%)]\tLoss: 0.000074\n", "Train Epoch: 2 [61440/104000 (59%)]\tLoss: 0.000042\n", "Train Epoch: 2 [62080/104000 (60%)]\tLoss: 0.000018\n", "Train Epoch: 2 [62720/104000 (60%)]\tLoss: 0.000044\n", "Train Epoch: 2 [63360/104000 (61%)]\tLoss: 0.000040\n", "Train Epoch: 2 [64000/104000 (62%)]\tLoss: 0.000017\n", "Train Epoch: 2 [64640/104000 (62%)]\tLoss: 0.000026\n", "Train Epoch: 2 [65280/104000 (63%)]\tLoss: 0.000050\n", "Train Epoch: 2 [65920/104000 (63%)]\tLoss: 0.000022\n", "Train Epoch: 2 [66560/104000 (64%)]\tLoss: 0.000013\n", "Train Epoch: 2 [67200/104000 (65%)]\tLoss: 0.000011\n", "Train Epoch: 2 [67840/104000 (65%)]\tLoss: 0.000015\n", "Train Epoch: 2 [68480/104000 (66%)]\tLoss: 0.000009\n", "Train Epoch: 2 [69120/104000 (66%)]\tLoss: 0.000185\n", "Train Epoch: 2 [69760/104000 (67%)]\tLoss: 0.000013\n", "Train Epoch: 2 [70400/104000 (68%)]\tLoss: 0.000013\n", "Train Epoch: 2 [71040/104000 (68%)]\tLoss: 0.000051\n", "Train Epoch: 2 [71680/104000 (69%)]\tLoss: 0.000679\n", "Train Epoch: 2 [72320/104000 (70%)]\tLoss: 0.000024\n", "Train Epoch: 2 [72960/104000 (70%)]\tLoss: 0.000019\n", "Train Epoch: 2 [73600/104000 (71%)]\tLoss: 0.000051\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 2 [74240/104000 (71%)]\tLoss: 0.000061\n", "Train Epoch: 2 [74880/104000 (72%)]\tLoss: 0.000019\n", "Train Epoch: 2 [75520/104000 (73%)]\tLoss: 0.000027\n", "Train Epoch: 2 [76160/104000 (73%)]\tLoss: 0.000077\n", "Train Epoch: 2 [76800/104000 (74%)]\tLoss: 0.000009\n", "Train Epoch: 2 [77440/104000 (74%)]\tLoss: 0.000010\n", "Train Epoch: 2 [78080/104000 (75%)]\tLoss: 0.000012\n", "Train Epoch: 2 [78720/104000 (76%)]\tLoss: 0.000013\n", "Train Epoch: 2 [79360/104000 (76%)]\tLoss: 0.000029\n", "Train Epoch: 2 [80000/104000 (77%)]\tLoss: 0.000015\n", "Train Epoch: 2 [80640/104000 (78%)]\tLoss: 0.000034\n", "Train Epoch: 2 [81280/104000 (78%)]\tLoss: 0.000028\n", "Train Epoch: 2 [81920/104000 (79%)]\tLoss: 0.000027\n", "Train Epoch: 2 [82560/104000 (79%)]\tLoss: 0.000008\n", "Train Epoch: 2 [83200/104000 (80%)]\tLoss: 0.000008\n", "Train Epoch: 2 [83840/104000 (81%)]\tLoss: 0.000009\n", "Train Epoch: 2 [84480/104000 (81%)]\tLoss: 0.000221\n", "Train Epoch: 2 [85120/104000 (82%)]\tLoss: 0.000295\n", "Train Epoch: 2 [85760/104000 (82%)]\tLoss: 0.000021\n", "Train Epoch: 2 [86400/104000 (83%)]\tLoss: 0.000078\n", "Train Epoch: 2 [87040/104000 (84%)]\tLoss: 0.000030\n", "Train Epoch: 2 [87680/104000 (84%)]\tLoss: 0.000041\n", "Train Epoch: 2 [88320/104000 (85%)]\tLoss: 0.000014\n", "Train Epoch: 2 [88960/104000 (86%)]\tLoss: 0.000192\n", "Train Epoch: 2 [89600/104000 (86%)]\tLoss: 0.000028\n", "Train Epoch: 2 [90240/104000 (87%)]\tLoss: 0.000109\n", "Train Epoch: 2 [90880/104000 (87%)]\tLoss: 0.000029\n", "Train Epoch: 2 [91520/104000 (88%)]\tLoss: 0.000008\n", "Train Epoch: 2 [92160/104000 (89%)]\tLoss: 0.000020\n", "Train Epoch: 2 [92800/104000 (89%)]\tLoss: 0.000016\n", "Train Epoch: 2 [93440/104000 (90%)]\tLoss: 0.000058\n", "Train Epoch: 2 [94080/104000 (90%)]\tLoss: 0.000028\n", "Train Epoch: 2 [94720/104000 (91%)]\tLoss: 0.000011\n", "Train Epoch: 2 [95360/104000 (92%)]\tLoss: 0.000010\n", "Train Epoch: 2 [96000/104000 (92%)]\tLoss: 0.000033\n", "Train Epoch: 2 [96640/104000 (93%)]\tLoss: 0.000015\n", "Train Epoch: 2 [97280/104000 (94%)]\tLoss: 0.000029\n", "Train Epoch: 2 [97920/104000 (94%)]\tLoss: 0.000041\n", "Train Epoch: 2 [98560/104000 (95%)]\tLoss: 0.000035\n", "Train Epoch: 2 [99200/104000 (95%)]\tLoss: 0.000008\n", "Train Epoch: 2 [99840/104000 (96%)]\tLoss: 0.000015\n", "Train Epoch: 2 [100480/104000 (97%)]\tLoss: 0.000085\n", "Train Epoch: 2 [101120/104000 (97%)]\tLoss: 0.000006\n", "Train Epoch: 2 [101760/104000 (98%)]\tLoss: 0.000015\n", "Train Epoch: 2 [102400/104000 (98%)]\tLoss: 0.000065\n", "Train Epoch: 2 [103040/104000 (99%)]\tLoss: 0.000008\n", "Train Epoch: 2 [103680/104000 (100%)]\tLoss: 0.000034\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.2114, Accuracy: 26974/30000 (90%)\n", "\n", "Train Epoch: 3 [0/104000 (0%)]\tLoss: 0.000035\n", "Train Epoch: 3 [640/104000 (1%)]\tLoss: 0.000016\n", "Train Epoch: 3 [1280/104000 (1%)]\tLoss: 0.000010\n", "Train Epoch: 3 [1920/104000 (2%)]\tLoss: 0.000018\n", "Train Epoch: 3 [2560/104000 (2%)]\tLoss: 0.000031\n", "Train Epoch: 3 [3200/104000 (3%)]\tLoss: 0.000017\n", "Train Epoch: 3 [3840/104000 (4%)]\tLoss: 0.000069\n", "Train Epoch: 3 [4480/104000 (4%)]\tLoss: 0.000030\n", "Train Epoch: 3 [5120/104000 (5%)]\tLoss: 0.000021\n", "Train Epoch: 3 [5760/104000 (6%)]\tLoss: 0.000013\n", "Train Epoch: 3 [6400/104000 (6%)]\tLoss: 0.000048\n", "Train Epoch: 3 [7040/104000 (7%)]\tLoss: 0.000009\n", "Train Epoch: 3 [7680/104000 (7%)]\tLoss: 0.000009\n", "Train Epoch: 3 [8320/104000 (8%)]\tLoss: 0.000017\n", "Train Epoch: 3 [8960/104000 (9%)]\tLoss: 0.000008\n", "Train Epoch: 3 [9600/104000 (9%)]\tLoss: 0.000014\n", "Train Epoch: 3 [10240/104000 (10%)]\tLoss: 0.000019\n", "Train Epoch: 3 [10880/104000 (10%)]\tLoss: 0.000035\n", "Train Epoch: 3 [11520/104000 (11%)]\tLoss: 0.000179\n", "Train Epoch: 3 [12160/104000 (12%)]\tLoss: 0.000009\n", "Train Epoch: 3 [12800/104000 (12%)]\tLoss: 0.000013\n", "Train Epoch: 3 [13440/104000 (13%)]\tLoss: 0.000016\n", "Train Epoch: 3 [14080/104000 (14%)]\tLoss: 0.000052\n", "Train Epoch: 3 [14720/104000 (14%)]\tLoss: 0.000011\n", "Train Epoch: 3 [15360/104000 (15%)]\tLoss: 0.000129\n", "Train Epoch: 3 [16000/104000 (15%)]\tLoss: 0.000133\n", "Train Epoch: 3 [16640/104000 (16%)]\tLoss: 0.000011\n", "Train Epoch: 3 [17280/104000 (17%)]\tLoss: 0.000008\n", "Train Epoch: 3 [17920/104000 (17%)]\tLoss: 0.000282\n", "Train Epoch: 3 [18560/104000 (18%)]\tLoss: 0.000007\n", "Train Epoch: 3 [19200/104000 (18%)]\tLoss: 0.000007\n", "Train Epoch: 3 [19840/104000 (19%)]\tLoss: 0.000020\n", "Train Epoch: 3 [20480/104000 (20%)]\tLoss: 0.000005\n", "Train Epoch: 3 [21120/104000 (20%)]\tLoss: 0.000010\n", "Train Epoch: 3 [21760/104000 (21%)]\tLoss: 0.000008\n", "Train Epoch: 3 [22400/104000 (22%)]\tLoss: 0.000017\n", "Train Epoch: 3 [23040/104000 (22%)]\tLoss: 0.000009\n", "Train Epoch: 3 [23680/104000 (23%)]\tLoss: 0.000065\n", "Train Epoch: 3 [24320/104000 (23%)]\tLoss: 0.000013\n", "Train Epoch: 3 [24960/104000 (24%)]\tLoss: 0.000007\n", "Train Epoch: 3 [25600/104000 (25%)]\tLoss: 0.000021\n", "Train Epoch: 3 [26240/104000 (25%)]\tLoss: 0.000007\n", "Train Epoch: 3 [26880/104000 (26%)]\tLoss: 0.000016\n", "Train Epoch: 3 [27520/104000 (26%)]\tLoss: 0.000013\n", "Train Epoch: 3 [28160/104000 (27%)]\tLoss: 0.000008\n", "Train Epoch: 3 [28800/104000 (28%)]\tLoss: 0.000011\n", "Train Epoch: 3 [29440/104000 (28%)]\tLoss: 0.000034\n", "Train Epoch: 3 [30080/104000 (29%)]\tLoss: 0.000070\n", "Train Epoch: 3 [30720/104000 (30%)]\tLoss: 0.000006\n", "Train Epoch: 3 [31360/104000 (30%)]\tLoss: 0.000009\n", "Train Epoch: 3 [32000/104000 (31%)]\tLoss: 0.000007\n", "Train Epoch: 3 [32640/104000 (31%)]\tLoss: 0.000016\n", "Train Epoch: 3 [33280/104000 (32%)]\tLoss: 0.000020\n", "Train Epoch: 3 [33920/104000 (33%)]\tLoss: 0.000021\n", "Train Epoch: 3 [34560/104000 (33%)]\tLoss: 0.000019\n", "Train Epoch: 3 [35200/104000 (34%)]\tLoss: 0.000008\n", "Train Epoch: 3 [35840/104000 (34%)]\tLoss: 0.000005\n", "Train Epoch: 3 [36480/104000 (35%)]\tLoss: 0.000010\n", "Train Epoch: 3 [37120/104000 (36%)]\tLoss: 0.000046\n", "Train Epoch: 3 [37760/104000 (36%)]\tLoss: 0.000043\n", "Train Epoch: 3 [38400/104000 (37%)]\tLoss: 0.000015\n", "Train Epoch: 3 [39040/104000 (38%)]\tLoss: 0.000008\n", "Train Epoch: 3 [39680/104000 (38%)]\tLoss: 0.000008\n", "Train Epoch: 3 [40320/104000 (39%)]\tLoss: 0.000031\n", "Train Epoch: 3 [40960/104000 (39%)]\tLoss: 0.000158\n", "Train Epoch: 3 [41600/104000 (40%)]\tLoss: 0.000085\n", "Train Epoch: 3 [42240/104000 (41%)]\tLoss: 0.000009\n", "Train Epoch: 3 [42880/104000 (41%)]\tLoss: 0.000013\n", "Train Epoch: 3 [43520/104000 (42%)]\tLoss: 0.000014\n", "Train Epoch: 3 [44160/104000 (42%)]\tLoss: 0.000016\n", "Train Epoch: 3 [44800/104000 (43%)]\tLoss: 0.000107\n", "Train Epoch: 3 [45440/104000 (44%)]\tLoss: 0.000022\n", "Train Epoch: 3 [46080/104000 (44%)]\tLoss: 0.000008\n", "Train Epoch: 3 [46720/104000 (45%)]\tLoss: 0.000007\n", "Train Epoch: 3 [47360/104000 (46%)]\tLoss: 0.000066\n", "Train Epoch: 3 [48000/104000 (46%)]\tLoss: 0.000015\n", "Train Epoch: 3 [48640/104000 (47%)]\tLoss: 0.000012\n", "Train Epoch: 3 [49280/104000 (47%)]\tLoss: 0.000007\n", "Train Epoch: 3 [49920/104000 (48%)]\tLoss: 0.000021\n", "Train Epoch: 3 [50560/104000 (49%)]\tLoss: 0.000006\n", "Train Epoch: 3 [51200/104000 (49%)]\tLoss: 0.000009\n", "Train Epoch: 3 [51840/104000 (50%)]\tLoss: 0.000077\n", "Train Epoch: 3 [52480/104000 (50%)]\tLoss: 0.000013\n", "Train Epoch: 3 [53120/104000 (51%)]\tLoss: 0.000008\n", "Train Epoch: 3 [53760/104000 (52%)]\tLoss: 0.000008\n", "Train Epoch: 3 [54400/104000 (52%)]\tLoss: 0.000018\n", "Train Epoch: 3 [55040/104000 (53%)]\tLoss: 0.000012\n", "Train Epoch: 3 [55680/104000 (54%)]\tLoss: 0.000075\n", "Train Epoch: 3 [56320/104000 (54%)]\tLoss: 0.000010\n", "Train Epoch: 3 [56960/104000 (55%)]\tLoss: 0.000018\n", "Train Epoch: 3 [57600/104000 (55%)]\tLoss: 0.000010\n", "Train Epoch: 3 [58240/104000 (56%)]\tLoss: 0.000127\n", "Train Epoch: 3 [58880/104000 (57%)]\tLoss: 0.000006\n", "Train Epoch: 3 [59520/104000 (57%)]\tLoss: 0.000004\n", "Train Epoch: 3 [60160/104000 (58%)]\tLoss: 0.000019\n", "Train Epoch: 3 [60800/104000 (58%)]\tLoss: 0.000042\n", "Train Epoch: 3 [61440/104000 (59%)]\tLoss: 0.000031\n", "Train Epoch: 3 [62080/104000 (60%)]\tLoss: 0.000004\n", "Train Epoch: 3 [62720/104000 (60%)]\tLoss: 0.000119\n", "Train Epoch: 3 [63360/104000 (61%)]\tLoss: 0.000048\n", "Train Epoch: 3 [64000/104000 (62%)]\tLoss: 0.000023\n", "Train Epoch: 3 [64640/104000 (62%)]\tLoss: 0.000011\n", "Train Epoch: 3 [65280/104000 (63%)]\tLoss: 0.000023\n", "Train Epoch: 3 [65920/104000 (63%)]\tLoss: 0.000021\n", "Train Epoch: 3 [66560/104000 (64%)]\tLoss: 0.000063\n", "Train Epoch: 3 [67200/104000 (65%)]\tLoss: 0.000072\n", "Train Epoch: 3 [67840/104000 (65%)]\tLoss: 0.000012\n", "Train Epoch: 3 [68480/104000 (66%)]\tLoss: 0.000014\n", "Train Epoch: 3 [69120/104000 (66%)]\tLoss: 0.000016\n", "Train Epoch: 3 [69760/104000 (67%)]\tLoss: 0.000072\n", "Train Epoch: 3 [70400/104000 (68%)]\tLoss: 0.000012\n", "Train Epoch: 3 [71040/104000 (68%)]\tLoss: 0.000011\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 3 [71680/104000 (69%)]\tLoss: 0.000021\n", "Train Epoch: 3 [72320/104000 (70%)]\tLoss: 0.000011\n", "Train Epoch: 3 [72960/104000 (70%)]\tLoss: 0.000006\n", "Train Epoch: 3 [73600/104000 (71%)]\tLoss: 0.000006\n", "Train Epoch: 3 [74240/104000 (71%)]\tLoss: 0.000035\n", "Train Epoch: 3 [74880/104000 (72%)]\tLoss: 0.000010\n", "Train Epoch: 3 [75520/104000 (73%)]\tLoss: 0.000009\n", "Train Epoch: 3 [76160/104000 (73%)]\tLoss: 0.000009\n", "Train Epoch: 3 [76800/104000 (74%)]\tLoss: 0.000086\n", "Train Epoch: 3 [77440/104000 (74%)]\tLoss: 0.000047\n", "Train Epoch: 3 [78080/104000 (75%)]\tLoss: 0.000012\n", "Train Epoch: 3 [78720/104000 (76%)]\tLoss: 0.000030\n", "Train Epoch: 3 [79360/104000 (76%)]\tLoss: 0.000054\n", "Train Epoch: 3 [80000/104000 (77%)]\tLoss: 0.000047\n", "Train Epoch: 3 [80640/104000 (78%)]\tLoss: 0.000015\n", "Train Epoch: 3 [81280/104000 (78%)]\tLoss: 0.000043\n", "Train Epoch: 3 [81920/104000 (79%)]\tLoss: 0.000006\n", "Train Epoch: 3 [82560/104000 (79%)]\tLoss: 0.000030\n", "Train Epoch: 3 [83200/104000 (80%)]\tLoss: 0.000012\n", "Train Epoch: 3 [83840/104000 (81%)]\tLoss: 0.000007\n", "Train Epoch: 3 [84480/104000 (81%)]\tLoss: 0.000006\n", "Train Epoch: 3 [85120/104000 (82%)]\tLoss: 0.000010\n", "Train Epoch: 3 [85760/104000 (82%)]\tLoss: 0.000011\n", "Train Epoch: 3 [86400/104000 (83%)]\tLoss: 0.000014\n", "Train Epoch: 3 [87040/104000 (84%)]\tLoss: 0.000008\n", "Train Epoch: 3 [87680/104000 (84%)]\tLoss: 0.000024\n", "Train Epoch: 3 [88320/104000 (85%)]\tLoss: 0.000018\n", "Train Epoch: 3 [88960/104000 (86%)]\tLoss: 0.000089\n", "Train Epoch: 3 [89600/104000 (86%)]\tLoss: 0.000048\n", "Train Epoch: 3 [90240/104000 (87%)]\tLoss: 0.000016\n", "Train Epoch: 3 [90880/104000 (87%)]\tLoss: 0.000011\n", "Train Epoch: 3 [91520/104000 (88%)]\tLoss: 0.000006\n", "Train Epoch: 3 [92160/104000 (89%)]\tLoss: 0.000028\n", "Train Epoch: 3 [92800/104000 (89%)]\tLoss: 0.000079\n", "Train Epoch: 3 [93440/104000 (90%)]\tLoss: 0.000007\n", "Train Epoch: 3 [94080/104000 (90%)]\tLoss: 0.000007\n", "Train Epoch: 3 [94720/104000 (91%)]\tLoss: 0.000003\n", "Train Epoch: 3 [95360/104000 (92%)]\tLoss: 0.000012\n", "Train Epoch: 3 [96000/104000 (92%)]\tLoss: 0.000007\n", "Train Epoch: 3 [96640/104000 (93%)]\tLoss: 0.000005\n", "Train Epoch: 3 [97280/104000 (94%)]\tLoss: 0.000006\n", "Train Epoch: 3 [97920/104000 (94%)]\tLoss: 0.000008\n", "Train Epoch: 3 [98560/104000 (95%)]\tLoss: 0.000005\n", "Train Epoch: 3 [99200/104000 (95%)]\tLoss: 0.000012\n", "Train Epoch: 3 [99840/104000 (96%)]\tLoss: 0.000010\n", "Train Epoch: 3 [100480/104000 (97%)]\tLoss: 0.000010\n", "Train Epoch: 3 [101120/104000 (97%)]\tLoss: 0.000023\n", "Train Epoch: 3 [101760/104000 (98%)]\tLoss: 0.000023\n", "Train Epoch: 3 [102400/104000 (98%)]\tLoss: 0.000019\n", "Train Epoch: 3 [103040/104000 (99%)]\tLoss: 0.000008\n", "Train Epoch: 3 [103680/104000 (100%)]\tLoss: 0.000052\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.2591, Accuracy: 26312/30000 (88%)\n", "\n", "Train Epoch: 4 [0/104000 (0%)]\tLoss: 0.000011\n", "Train Epoch: 4 [640/104000 (1%)]\tLoss: 0.000014\n", "Train Epoch: 4 [1280/104000 (1%)]\tLoss: 0.000014\n", "Train Epoch: 4 [1920/104000 (2%)]\tLoss: 0.000007\n", "Train Epoch: 4 [2560/104000 (2%)]\tLoss: 0.000013\n", "Train Epoch: 4 [3200/104000 (3%)]\tLoss: 0.000009\n", "Train Epoch: 4 [3840/104000 (4%)]\tLoss: 0.000006\n", "Train Epoch: 4 [4480/104000 (4%)]\tLoss: 0.000232\n", "Train Epoch: 4 [5120/104000 (5%)]\tLoss: 0.000019\n", "Train Epoch: 4 [5760/104000 (6%)]\tLoss: 0.000023\n", "Train Epoch: 4 [6400/104000 (6%)]\tLoss: 0.000005\n", "Train Epoch: 4 [7040/104000 (7%)]\tLoss: 0.000014\n", "Train Epoch: 4 [7680/104000 (7%)]\tLoss: 0.000010\n", "Train Epoch: 4 [8320/104000 (8%)]\tLoss: 0.000088\n", "Train Epoch: 4 [8960/104000 (9%)]\tLoss: 0.000037\n", "Train Epoch: 4 [9600/104000 (9%)]\tLoss: 0.000008\n", "Train Epoch: 4 [10240/104000 (10%)]\tLoss: 0.000023\n", "Train Epoch: 4 [10880/104000 (10%)]\tLoss: 0.000021\n", "Train Epoch: 4 [11520/104000 (11%)]\tLoss: 0.000008\n", "Train Epoch: 4 [12160/104000 (12%)]\tLoss: 0.000062\n", "Train Epoch: 4 [12800/104000 (12%)]\tLoss: 0.000174\n", "Train Epoch: 4 [13440/104000 (13%)]\tLoss: 0.000005\n", "Train Epoch: 4 [14080/104000 (14%)]\tLoss: 0.000019\n", "Train Epoch: 4 [14720/104000 (14%)]\tLoss: 0.000234\n", "Train Epoch: 4 [15360/104000 (15%)]\tLoss: 0.000008\n", "Train Epoch: 4 [16000/104000 (15%)]\tLoss: 0.000007\n", "Train Epoch: 4 [16640/104000 (16%)]\tLoss: 0.000005\n", "Train Epoch: 4 [17280/104000 (17%)]\tLoss: 0.000007\n", "Train Epoch: 4 [17920/104000 (17%)]\tLoss: 0.000048\n", "Train Epoch: 4 [18560/104000 (18%)]\tLoss: 0.000016\n", "Train Epoch: 4 [19200/104000 (18%)]\tLoss: 0.000005\n", "Train Epoch: 4 [19840/104000 (19%)]\tLoss: 0.000004\n", "Train Epoch: 4 [20480/104000 (20%)]\tLoss: 0.000050\n", "Train Epoch: 4 [21120/104000 (20%)]\tLoss: 0.000004\n", "Train Epoch: 4 [21760/104000 (21%)]\tLoss: 0.000017\n", "Train Epoch: 4 [22400/104000 (22%)]\tLoss: 0.000107\n", "Train Epoch: 4 [23040/104000 (22%)]\tLoss: 0.000007\n", "Train Epoch: 4 [23680/104000 (23%)]\tLoss: 0.000007\n", "Train Epoch: 4 [24320/104000 (23%)]\tLoss: 0.000073\n", "Train Epoch: 4 [24960/104000 (24%)]\tLoss: 0.000004\n", "Train Epoch: 4 [25600/104000 (25%)]\tLoss: 0.000052\n", "Train Epoch: 4 [26240/104000 (25%)]\tLoss: 0.000008\n", "Train Epoch: 4 [26880/104000 (26%)]\tLoss: 0.000021\n", "Train Epoch: 4 [27520/104000 (26%)]\tLoss: 0.000006\n", "Train Epoch: 4 [28160/104000 (27%)]\tLoss: 0.000038\n", "Train Epoch: 4 [28800/104000 (28%)]\tLoss: 0.000030\n", "Train Epoch: 4 [29440/104000 (28%)]\tLoss: 0.000009\n", "Train Epoch: 4 [30080/104000 (29%)]\tLoss: 0.000024\n", "Train Epoch: 4 [30720/104000 (30%)]\tLoss: 0.000007\n", "Train Epoch: 4 [31360/104000 (30%)]\tLoss: 0.000018\n", "Train Epoch: 4 [32000/104000 (31%)]\tLoss: 0.000010\n", "Train Epoch: 4 [32640/104000 (31%)]\tLoss: 0.000007\n", "Train Epoch: 4 [33280/104000 (32%)]\tLoss: 0.000004\n", "Train Epoch: 4 [33920/104000 (33%)]\tLoss: 0.000004\n", "Train Epoch: 4 [34560/104000 (33%)]\tLoss: 0.000003\n", "Train Epoch: 4 [35200/104000 (34%)]\tLoss: 0.000005\n", "Train Epoch: 4 [35840/104000 (34%)]\tLoss: 0.000014\n", "Train Epoch: 4 [36480/104000 (35%)]\tLoss: 0.000164\n", "Train Epoch: 4 [37120/104000 (36%)]\tLoss: 0.000014\n", "Train Epoch: 4 [37760/104000 (36%)]\tLoss: 0.000007\n", "Train Epoch: 4 [38400/104000 (37%)]\tLoss: 0.000030\n", "Train Epoch: 4 [39040/104000 (38%)]\tLoss: 0.000005\n", "Train Epoch: 4 [39680/104000 (38%)]\tLoss: 0.000012\n", "Train Epoch: 4 [40320/104000 (39%)]\tLoss: 0.000009\n", "Train Epoch: 4 [40960/104000 (39%)]\tLoss: 0.000049\n", "Train Epoch: 4 [41600/104000 (40%)]\tLoss: 0.000006\n", "Train Epoch: 4 [42240/104000 (41%)]\tLoss: 0.000011\n", "Train Epoch: 4 [42880/104000 (41%)]\tLoss: 0.000004\n", "Train Epoch: 4 [43520/104000 (42%)]\tLoss: 0.000008\n", "Train Epoch: 4 [44160/104000 (42%)]\tLoss: 0.000014\n", "Train Epoch: 4 [44800/104000 (43%)]\tLoss: 0.000010\n", "Train Epoch: 4 [45440/104000 (44%)]\tLoss: 0.000005\n", "Train Epoch: 4 [46080/104000 (44%)]\tLoss: 0.000009\n", "Train Epoch: 4 [46720/104000 (45%)]\tLoss: 0.000004\n", "Train Epoch: 4 [47360/104000 (46%)]\tLoss: 0.000004\n", "Train Epoch: 4 [48000/104000 (46%)]\tLoss: 0.000007\n", "Train Epoch: 4 [48640/104000 (47%)]\tLoss: 0.000008\n", "Train Epoch: 4 [49280/104000 (47%)]\tLoss: 0.000095\n", "Train Epoch: 4 [49920/104000 (48%)]\tLoss: 0.000013\n", "Train Epoch: 4 [50560/104000 (49%)]\tLoss: 0.000014\n", "Train Epoch: 4 [51200/104000 (49%)]\tLoss: 0.000009\n", "Train Epoch: 4 [51840/104000 (50%)]\tLoss: 0.000049\n", "Train Epoch: 4 [52480/104000 (50%)]\tLoss: 0.000016\n", "Train Epoch: 4 [53120/104000 (51%)]\tLoss: 0.000009\n", "Train Epoch: 4 [53760/104000 (52%)]\tLoss: 0.000007\n", "Train Epoch: 4 [54400/104000 (52%)]\tLoss: 0.000007\n", "Train Epoch: 4 [55040/104000 (53%)]\tLoss: 0.000116\n", "Train Epoch: 4 [55680/104000 (54%)]\tLoss: 0.000004\n", "Train Epoch: 4 [56320/104000 (54%)]\tLoss: 0.000007\n", "Train Epoch: 4 [56960/104000 (55%)]\tLoss: 0.000013\n", "Train Epoch: 4 [57600/104000 (55%)]\tLoss: 0.000011\n", "Train Epoch: 4 [58240/104000 (56%)]\tLoss: 0.000013\n", "Train Epoch: 4 [58880/104000 (57%)]\tLoss: 0.000005\n", "Train Epoch: 4 [59520/104000 (57%)]\tLoss: 0.000028\n", "Train Epoch: 4 [60160/104000 (58%)]\tLoss: 0.000005\n", "Train Epoch: 4 [60800/104000 (58%)]\tLoss: 0.000034\n", "Train Epoch: 4 [61440/104000 (59%)]\tLoss: 0.000006\n", "Train Epoch: 4 [62080/104000 (60%)]\tLoss: 0.000023\n", "Train Epoch: 4 [62720/104000 (60%)]\tLoss: 0.000006\n", "Train Epoch: 4 [63360/104000 (61%)]\tLoss: 0.000006\n", "Train Epoch: 4 [64000/104000 (62%)]\tLoss: 0.000006\n", "Train Epoch: 4 [64640/104000 (62%)]\tLoss: 0.000011\n", "Train Epoch: 4 [65280/104000 (63%)]\tLoss: 0.000011\n", "Train Epoch: 4 [65920/104000 (63%)]\tLoss: 0.000006\n", "Train Epoch: 4 [66560/104000 (64%)]\tLoss: 0.000030\n", "Train Epoch: 4 [67200/104000 (65%)]\tLoss: 0.000004\n", "Train Epoch: 4 [67840/104000 (65%)]\tLoss: 0.000005\n", "Train Epoch: 4 [68480/104000 (66%)]\tLoss: 0.000010\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 4 [69120/104000 (66%)]\tLoss: 0.000015\n", "Train Epoch: 4 [69760/104000 (67%)]\tLoss: 0.000004\n", "Train Epoch: 4 [70400/104000 (68%)]\tLoss: 0.000012\n", "Train Epoch: 4 [71040/104000 (68%)]\tLoss: 0.000024\n", "Train Epoch: 4 [71680/104000 (69%)]\tLoss: 0.000081\n", "Train Epoch: 4 [72320/104000 (70%)]\tLoss: 0.000004\n", "Train Epoch: 4 [72960/104000 (70%)]\tLoss: 0.000009\n", "Train Epoch: 4 [73600/104000 (71%)]\tLoss: 0.000017\n", "Train Epoch: 4 [74240/104000 (71%)]\tLoss: 0.000035\n", "Train Epoch: 4 [74880/104000 (72%)]\tLoss: 0.000089\n", "Train Epoch: 4 [75520/104000 (73%)]\tLoss: 0.000005\n", "Train Epoch: 4 [76160/104000 (73%)]\tLoss: 0.000008\n", "Train Epoch: 4 [76800/104000 (74%)]\tLoss: 0.000008\n", "Train Epoch: 4 [77440/104000 (74%)]\tLoss: 0.000010\n", "Train Epoch: 4 [78080/104000 (75%)]\tLoss: 0.000013\n", "Train Epoch: 4 [78720/104000 (76%)]\tLoss: 0.000014\n", "Train Epoch: 4 [79360/104000 (76%)]\tLoss: 0.000064\n", "Train Epoch: 4 [80000/104000 (77%)]\tLoss: 0.000233\n", "Train Epoch: 4 [80640/104000 (78%)]\tLoss: 0.000006\n", "Train Epoch: 4 [81280/104000 (78%)]\tLoss: 0.000103\n", "Train Epoch: 4 [81920/104000 (79%)]\tLoss: 0.000003\n", "Train Epoch: 4 [82560/104000 (79%)]\tLoss: 0.000009\n", "Train Epoch: 4 [83200/104000 (80%)]\tLoss: 0.000061\n", "Train Epoch: 4 [83840/104000 (81%)]\tLoss: 0.000067\n", "Train Epoch: 4 [84480/104000 (81%)]\tLoss: 0.000004\n", "Train Epoch: 4 [85120/104000 (82%)]\tLoss: 0.000003\n", "Train Epoch: 4 [85760/104000 (82%)]\tLoss: 0.000018\n", "Train Epoch: 4 [86400/104000 (83%)]\tLoss: 0.000004\n", "Train Epoch: 4 [87040/104000 (84%)]\tLoss: 0.000019\n", "Train Epoch: 4 [87680/104000 (84%)]\tLoss: 0.000004\n", "Train Epoch: 4 [88320/104000 (85%)]\tLoss: 0.000081\n", "Train Epoch: 4 [88960/104000 (86%)]\tLoss: 0.000031\n", "Train Epoch: 4 [89600/104000 (86%)]\tLoss: 0.000005\n", "Train Epoch: 4 [90240/104000 (87%)]\tLoss: 0.000009\n", "Train Epoch: 4 [90880/104000 (87%)]\tLoss: 0.000009\n", "Train Epoch: 4 [91520/104000 (88%)]\tLoss: 0.000006\n", "Train Epoch: 4 [92160/104000 (89%)]\tLoss: 0.000010\n", "Train Epoch: 4 [92800/104000 (89%)]\tLoss: 0.000007\n", "Train Epoch: 4 [93440/104000 (90%)]\tLoss: 0.000014\n", "Train Epoch: 4 [94080/104000 (90%)]\tLoss: 0.000004\n", "Train Epoch: 4 [94720/104000 (91%)]\tLoss: 0.000014\n", "Train Epoch: 4 [95360/104000 (92%)]\tLoss: 0.000002\n", "Train Epoch: 4 [96000/104000 (92%)]\tLoss: 0.000009\n", "Train Epoch: 4 [96640/104000 (93%)]\tLoss: 0.000005\n", "Train Epoch: 4 [97280/104000 (94%)]\tLoss: 0.000002\n", "Train Epoch: 4 [97920/104000 (94%)]\tLoss: 0.000010\n", "Train Epoch: 4 [98560/104000 (95%)]\tLoss: 0.000021\n", "Train Epoch: 4 [99200/104000 (95%)]\tLoss: 0.000141\n", "Train Epoch: 4 [99840/104000 (96%)]\tLoss: 0.000010\n", "Train Epoch: 4 [100480/104000 (97%)]\tLoss: 0.000076\n", "Train Epoch: 4 [101120/104000 (97%)]\tLoss: 0.000013\n", "Train Epoch: 4 [101760/104000 (98%)]\tLoss: 0.000016\n", "Train Epoch: 4 [102400/104000 (98%)]\tLoss: 0.000010\n", "Train Epoch: 4 [103040/104000 (99%)]\tLoss: 0.000018\n", "Train Epoch: 4 [103680/104000 (100%)]\tLoss: 0.000008\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.3767, Accuracy: 24775/30000 (83%)\n", "\n", "Train Epoch: 5 [0/104000 (0%)]\tLoss: 0.000031\n", "Train Epoch: 5 [640/104000 (1%)]\tLoss: 0.000005\n", "Train Epoch: 5 [1280/104000 (1%)]\tLoss: 0.000005\n", "Train Epoch: 5 [1920/104000 (2%)]\tLoss: 0.000002\n", "Train Epoch: 5 [2560/104000 (2%)]\tLoss: 0.000023\n", "Train Epoch: 5 [3200/104000 (3%)]\tLoss: 0.000010\n", "Train Epoch: 5 [3840/104000 (4%)]\tLoss: 0.000008\n", "Train Epoch: 5 [4480/104000 (4%)]\tLoss: 0.000003\n", "Train Epoch: 5 [5120/104000 (5%)]\tLoss: 0.000037\n", "Train Epoch: 5 [5760/104000 (6%)]\tLoss: 0.000203\n", "Train Epoch: 5 [6400/104000 (6%)]\tLoss: 0.000017\n", "Train Epoch: 5 [7040/104000 (7%)]\tLoss: 0.000013\n", "Train Epoch: 5 [7680/104000 (7%)]\tLoss: 0.000004\n", "Train Epoch: 5 [8320/104000 (8%)]\tLoss: 0.000015\n", "Train Epoch: 5 [8960/104000 (9%)]\tLoss: 0.000015\n", "Train Epoch: 5 [9600/104000 (9%)]\tLoss: 0.000012\n", "Train Epoch: 5 [10240/104000 (10%)]\tLoss: 0.000010\n", "Train Epoch: 5 [10880/104000 (10%)]\tLoss: 0.000012\n", "Train Epoch: 5 [11520/104000 (11%)]\tLoss: 0.000009\n", "Train Epoch: 5 [12160/104000 (12%)]\tLoss: 0.000044\n", "Train Epoch: 5 [12800/104000 (12%)]\tLoss: 0.000008\n", "Train Epoch: 5 [13440/104000 (13%)]\tLoss: 0.000007\n", "Train Epoch: 5 [14080/104000 (14%)]\tLoss: 0.000004\n", "Train Epoch: 5 [14720/104000 (14%)]\tLoss: 0.000002\n", "Train Epoch: 5 [15360/104000 (15%)]\tLoss: 0.000009\n", "Train Epoch: 5 [16000/104000 (15%)]\tLoss: 0.000021\n", "Train Epoch: 5 [16640/104000 (16%)]\tLoss: 0.000008\n", "Train Epoch: 5 [17280/104000 (17%)]\tLoss: 0.000050\n", "Train Epoch: 5 [17920/104000 (17%)]\tLoss: 0.000018\n", "Train Epoch: 5 [18560/104000 (18%)]\tLoss: 0.000006\n", "Train Epoch: 5 [19200/104000 (18%)]\tLoss: 0.000005\n", "Train Epoch: 5 [19840/104000 (19%)]\tLoss: 0.000004\n", "Train Epoch: 5 [20480/104000 (20%)]\tLoss: 0.000008\n", "Train Epoch: 5 [21120/104000 (20%)]\tLoss: 0.000010\n", "Train Epoch: 5 [21760/104000 (21%)]\tLoss: 0.000006\n", "Train Epoch: 5 [22400/104000 (22%)]\tLoss: 0.000014\n", "Train Epoch: 5 [23040/104000 (22%)]\tLoss: 0.000005\n", "Train Epoch: 5 [23680/104000 (23%)]\tLoss: 0.000004\n", "Train Epoch: 5 [24320/104000 (23%)]\tLoss: 0.000003\n", "Train Epoch: 5 [24960/104000 (24%)]\tLoss: 0.000056\n", "Train Epoch: 5 [25600/104000 (25%)]\tLoss: 0.000129\n", "Train Epoch: 5 [26240/104000 (25%)]\tLoss: 0.000009\n", "Train Epoch: 5 [26880/104000 (26%)]\tLoss: 0.000006\n", "Train Epoch: 5 [27520/104000 (26%)]\tLoss: 0.000022\n", "Train Epoch: 5 [28160/104000 (27%)]\tLoss: 0.000006\n", "Train Epoch: 5 [28800/104000 (28%)]\tLoss: 0.000012\n", "Train Epoch: 5 [29440/104000 (28%)]\tLoss: 0.000008\n", "Train Epoch: 5 [30080/104000 (29%)]\tLoss: 0.000037\n", "Train Epoch: 5 [30720/104000 (30%)]\tLoss: 0.000003\n", "Train Epoch: 5 [31360/104000 (30%)]\tLoss: 0.000004\n", "Train Epoch: 5 [32000/104000 (31%)]\tLoss: 0.000018\n", "Train Epoch: 5 [32640/104000 (31%)]\tLoss: 0.000014\n", "Train Epoch: 5 [33280/104000 (32%)]\tLoss: 0.000010\n", "Train Epoch: 5 [33920/104000 (33%)]\tLoss: 0.000005\n", "Train Epoch: 5 [34560/104000 (33%)]\tLoss: 0.000004\n", "Train Epoch: 5 [35200/104000 (34%)]\tLoss: 0.000007\n", "Train Epoch: 5 [35840/104000 (34%)]\tLoss: 0.000004\n", "Train Epoch: 5 [36480/104000 (35%)]\tLoss: 0.000015\n", "Train Epoch: 5 [37120/104000 (36%)]\tLoss: 0.000008\n", "Train Epoch: 5 [37760/104000 (36%)]\tLoss: 0.000004\n", "Train Epoch: 5 [38400/104000 (37%)]\tLoss: 0.000010\n", "Train Epoch: 5 [39040/104000 (38%)]\tLoss: 0.000002\n", "Train Epoch: 5 [39680/104000 (38%)]\tLoss: 0.000051\n", "Train Epoch: 5 [40320/104000 (39%)]\tLoss: 0.000012\n", "Train Epoch: 5 [40960/104000 (39%)]\tLoss: 0.000006\n", "Train Epoch: 5 [41600/104000 (40%)]\tLoss: 0.000031\n", "Train Epoch: 5 [42240/104000 (41%)]\tLoss: 0.000008\n", "Train Epoch: 5 [42880/104000 (41%)]\tLoss: 0.000015\n", "Train Epoch: 5 [43520/104000 (42%)]\tLoss: 0.000006\n", "Train Epoch: 5 [44160/104000 (42%)]\tLoss: 0.000035\n", "Train Epoch: 5 [44800/104000 (43%)]\tLoss: 0.000011\n", "Train Epoch: 5 [45440/104000 (44%)]\tLoss: 0.000012\n", "Train Epoch: 5 [46080/104000 (44%)]\tLoss: 0.000006\n", "Train Epoch: 5 [46720/104000 (45%)]\tLoss: 0.000009\n", "Train Epoch: 5 [47360/104000 (46%)]\tLoss: 0.000037\n", "Train Epoch: 5 [48000/104000 (46%)]\tLoss: 0.000002\n", "Train Epoch: 5 [48640/104000 (47%)]\tLoss: 0.000005\n", "Train Epoch: 5 [49280/104000 (47%)]\tLoss: 0.000002\n", "Train Epoch: 5 [49920/104000 (48%)]\tLoss: 0.000012\n", "Train Epoch: 5 [50560/104000 (49%)]\tLoss: 0.000006\n", "Train Epoch: 5 [51200/104000 (49%)]\tLoss: 0.000061\n", "Train Epoch: 5 [51840/104000 (50%)]\tLoss: 0.000006\n", "Train Epoch: 5 [52480/104000 (50%)]\tLoss: 0.000004\n", "Train Epoch: 5 [53120/104000 (51%)]\tLoss: 0.000059\n", "Train Epoch: 5 [53760/104000 (52%)]\tLoss: 0.000010\n", "Train Epoch: 5 [54400/104000 (52%)]\tLoss: 0.000003\n", "Train Epoch: 5 [55040/104000 (53%)]\tLoss: 0.000016\n", "Train Epoch: 5 [55680/104000 (54%)]\tLoss: 0.000005\n", "Train Epoch: 5 [56320/104000 (54%)]\tLoss: 0.000006\n", "Train Epoch: 5 [56960/104000 (55%)]\tLoss: 0.000227\n", "Train Epoch: 5 [57600/104000 (55%)]\tLoss: 0.000008\n", "Train Epoch: 5 [58240/104000 (56%)]\tLoss: 0.000008\n", "Train Epoch: 5 [58880/104000 (57%)]\tLoss: 0.000014\n", "Train Epoch: 5 [59520/104000 (57%)]\tLoss: 0.000002\n", "Train Epoch: 5 [60160/104000 (58%)]\tLoss: 0.000005\n", "Train Epoch: 5 [60800/104000 (58%)]\tLoss: 0.000031\n", "Train Epoch: 5 [61440/104000 (59%)]\tLoss: 0.000004\n", "Train Epoch: 5 [62080/104000 (60%)]\tLoss: 0.000013\n", "Train Epoch: 5 [62720/104000 (60%)]\tLoss: 0.000020\n", "Train Epoch: 5 [63360/104000 (61%)]\tLoss: 0.000035\n", "Train Epoch: 5 [64000/104000 (62%)]\tLoss: 0.000007\n", "Train Epoch: 5 [64640/104000 (62%)]\tLoss: 0.000008\n", "Train Epoch: 5 [65280/104000 (63%)]\tLoss: 0.000005\n", "Train Epoch: 5 [65920/104000 (63%)]\tLoss: 0.000034\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 5 [66560/104000 (64%)]\tLoss: 0.000004\n", "Train Epoch: 5 [67200/104000 (65%)]\tLoss: 0.000054\n", "Train Epoch: 5 [67840/104000 (65%)]\tLoss: 0.000040\n", "Train Epoch: 5 [68480/104000 (66%)]\tLoss: 0.000004\n", "Train Epoch: 5 [69120/104000 (66%)]\tLoss: 0.000003\n", "Train Epoch: 5 [69760/104000 (67%)]\tLoss: 0.000023\n", "Train Epoch: 5 [70400/104000 (68%)]\tLoss: 0.000005\n", "Train Epoch: 5 [71040/104000 (68%)]\tLoss: 0.000037\n", "Train Epoch: 5 [71680/104000 (69%)]\tLoss: 0.000005\n", "Train Epoch: 5 [72320/104000 (70%)]\tLoss: 0.000007\n", "Train Epoch: 5 [72960/104000 (70%)]\tLoss: 0.000005\n", "Train Epoch: 5 [73600/104000 (71%)]\tLoss: 0.000004\n", "Train Epoch: 5 [74240/104000 (71%)]\tLoss: 0.000008\n", "Train Epoch: 5 [74880/104000 (72%)]\tLoss: 0.000015\n", "Train Epoch: 5 [75520/104000 (73%)]\tLoss: 0.000004\n", "Train Epoch: 5 [76160/104000 (73%)]\tLoss: 0.000005\n", "Train Epoch: 5 [76800/104000 (74%)]\tLoss: 0.000004\n", "Train Epoch: 5 [77440/104000 (74%)]\tLoss: 0.000003\n", "Train Epoch: 5 [78080/104000 (75%)]\tLoss: 0.000013\n", "Train Epoch: 5 [78720/104000 (76%)]\tLoss: 0.000002\n", "Train Epoch: 5 [79360/104000 (76%)]\tLoss: 0.000189\n", "Train Epoch: 5 [80000/104000 (77%)]\tLoss: 0.000044\n", "Train Epoch: 5 [80640/104000 (78%)]\tLoss: 0.000009\n", "Train Epoch: 5 [81280/104000 (78%)]\tLoss: 0.000002\n", "Train Epoch: 5 [81920/104000 (79%)]\tLoss: 0.000008\n", "Train Epoch: 5 [82560/104000 (79%)]\tLoss: 0.000002\n", "Train Epoch: 5 [83200/104000 (80%)]\tLoss: 0.000004\n", "Train Epoch: 5 [83840/104000 (81%)]\tLoss: 0.000019\n", "Train Epoch: 5 [84480/104000 (81%)]\tLoss: 0.000004\n", "Train Epoch: 5 [85120/104000 (82%)]\tLoss: 0.000004\n", "Train Epoch: 5 [85760/104000 (82%)]\tLoss: 0.000009\n", "Train Epoch: 5 [86400/104000 (83%)]\tLoss: 0.000012\n", "Train Epoch: 5 [87040/104000 (84%)]\tLoss: 0.000016\n", "Train Epoch: 5 [87680/104000 (84%)]\tLoss: 0.000008\n", "Train Epoch: 5 [88320/104000 (85%)]\tLoss: 0.000025\n", "Train Epoch: 5 [88960/104000 (86%)]\tLoss: 0.000006\n", "Train Epoch: 5 [89600/104000 (86%)]\tLoss: 0.000398\n", "Train Epoch: 5 [90240/104000 (87%)]\tLoss: 0.000003\n", "Train Epoch: 5 [90880/104000 (87%)]\tLoss: 0.000003\n", "Train Epoch: 5 [91520/104000 (88%)]\tLoss: 0.000008\n", "Train Epoch: 5 [92160/104000 (89%)]\tLoss: 0.000012\n", "Train Epoch: 5 [92800/104000 (89%)]\tLoss: 0.000009\n", "Train Epoch: 5 [93440/104000 (90%)]\tLoss: 0.000018\n", "Train Epoch: 5 [94080/104000 (90%)]\tLoss: 0.000004\n", "Train Epoch: 5 [94720/104000 (91%)]\tLoss: 0.000007\n", "Train Epoch: 5 [95360/104000 (92%)]\tLoss: 0.000002\n", "Train Epoch: 5 [96000/104000 (92%)]\tLoss: 0.000007\n", "Train Epoch: 5 [96640/104000 (93%)]\tLoss: 0.000005\n", "Train Epoch: 5 [97280/104000 (94%)]\tLoss: 0.000012\n", "Train Epoch: 5 [97920/104000 (94%)]\tLoss: 0.000004\n", "Train Epoch: 5 [98560/104000 (95%)]\tLoss: 0.000007\n", "Train Epoch: 5 [99200/104000 (95%)]\tLoss: 0.000391\n", "Train Epoch: 5 [99840/104000 (96%)]\tLoss: 0.000004\n", "Train Epoch: 5 [100480/104000 (97%)]\tLoss: 0.000006\n", "Train Epoch: 5 [101120/104000 (97%)]\tLoss: 0.000467\n", "Train Epoch: 5 [101760/104000 (98%)]\tLoss: 0.000007\n", "Train Epoch: 5 [102400/104000 (98%)]\tLoss: 0.000004\n", "Train Epoch: 5 [103040/104000 (99%)]\tLoss: 0.000067\n", "Train Epoch: 5 [103680/104000 (100%)]\tLoss: 0.000057\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.3028, Accuracy: 25782/30000 (86%)\n", "\n", "[100.0, 100.0, 100.0, 100.0]\n", "[88.56, 91.44666666666667, 90.16666666666667, 85.94]\n", "The number of neurons in CNN layer is 50\n", "Train Epoch: 1 [0/104000 (0%)]\tLoss: 1.178634\n", "Train Epoch: 1 [640/104000 (1%)]\tLoss: 0.000044\n", "Train Epoch: 1 [1280/104000 (1%)]\tLoss: 0.000000\n", "Train Epoch: 1 [1920/104000 (2%)]\tLoss: 0.000000\n", "Train Epoch: 1 [2560/104000 (2%)]\tLoss: 0.000002\n", "Train Epoch: 1 [3200/104000 (3%)]\tLoss: 0.000001\n", "Train Epoch: 1 [3840/104000 (4%)]\tLoss: 0.000000\n", "Train Epoch: 1 [4480/104000 (4%)]\tLoss: 0.000000\n", "Train Epoch: 1 [5120/104000 (5%)]\tLoss: 0.000000\n", "Train Epoch: 1 [5760/104000 (6%)]\tLoss: 0.000000\n", "Train Epoch: 1 [6400/104000 (6%)]\tLoss: 0.000000\n", "Train Epoch: 1 [7040/104000 (7%)]\tLoss: 0.000010\n", "Train Epoch: 1 [7680/104000 (7%)]\tLoss: 0.000000\n", "Train Epoch: 1 [8320/104000 (8%)]\tLoss: 0.000000\n", "Train Epoch: 1 [8960/104000 (9%)]\tLoss: 0.000000\n", "Train Epoch: 1 [9600/104000 (9%)]\tLoss: 0.000001\n", "Train Epoch: 1 [10240/104000 (10%)]\tLoss: 0.000000\n", "Train Epoch: 1 [10880/104000 (10%)]\tLoss: 0.000000\n", "Train Epoch: 1 [11520/104000 (11%)]\tLoss: 0.000000\n", "Train Epoch: 1 [12160/104000 (12%)]\tLoss: 0.000000\n", "Train Epoch: 1 [12800/104000 (12%)]\tLoss: 0.000000\n", "Train Epoch: 1 [13440/104000 (13%)]\tLoss: 0.000002\n", "Train Epoch: 1 [14080/104000 (14%)]\tLoss: 0.000000\n", "Train Epoch: 1 [14720/104000 (14%)]\tLoss: 0.000000\n", "Train Epoch: 1 [15360/104000 (15%)]\tLoss: 0.000000\n", "Train Epoch: 1 [16000/104000 (15%)]\tLoss: 0.000000\n", "Train Epoch: 1 [16640/104000 (16%)]\tLoss: 0.000000\n", "Train Epoch: 1 [17280/104000 (17%)]\tLoss: 0.000000\n", "Train Epoch: 1 [17920/104000 (17%)]\tLoss: 0.000000\n", "Train Epoch: 1 [18560/104000 (18%)]\tLoss: 0.000000\n", "Train Epoch: 1 [19200/104000 (18%)]\tLoss: 0.000000\n", "Train Epoch: 1 [19840/104000 (19%)]\tLoss: 0.000000\n", "Train Epoch: 1 [20480/104000 (20%)]\tLoss: 0.000000\n", "Train Epoch: 1 [21120/104000 (20%)]\tLoss: 0.000000\n", "Train Epoch: 1 [21760/104000 (21%)]\tLoss: 0.000000\n", "Train Epoch: 1 [22400/104000 (22%)]\tLoss: 0.000000\n", "Train Epoch: 1 [23040/104000 (22%)]\tLoss: 0.000000\n", "Train Epoch: 1 [23680/104000 (23%)]\tLoss: 0.000000\n", "Train Epoch: 1 [24320/104000 (23%)]\tLoss: 0.000000\n", "Train Epoch: 1 [24960/104000 (24%)]\tLoss: 0.000003\n", "Train Epoch: 1 [25600/104000 (25%)]\tLoss: 0.000000\n", "Train Epoch: 1 [26240/104000 (25%)]\tLoss: 0.000000\n", "Train Epoch: 1 [26880/104000 (26%)]\tLoss: 0.000000\n", "Train Epoch: 1 [27520/104000 (26%)]\tLoss: 0.000000\n", "Train Epoch: 1 [28160/104000 (27%)]\tLoss: 0.000004\n", "Train Epoch: 1 [28800/104000 (28%)]\tLoss: 0.000010\n", "Train Epoch: 1 [29440/104000 (28%)]\tLoss: 0.000000\n", "Train Epoch: 1 [30080/104000 (29%)]\tLoss: 0.000000\n", "Train Epoch: 1 [30720/104000 (30%)]\tLoss: 0.000000\n", "Train Epoch: 1 [31360/104000 (30%)]\tLoss: 0.000000\n", "Train Epoch: 1 [32000/104000 (31%)]\tLoss: 0.000000\n", "Train Epoch: 1 [32640/104000 (31%)]\tLoss: 0.000000\n", "Train Epoch: 1 [33280/104000 (32%)]\tLoss: 0.000000\n", "Train Epoch: 1 [33920/104000 (33%)]\tLoss: 0.000000\n", "Train Epoch: 1 [34560/104000 (33%)]\tLoss: 0.000000\n", "Train Epoch: 1 [35200/104000 (34%)]\tLoss: 0.000000\n", "Train Epoch: 1 [35840/104000 (34%)]\tLoss: 0.000000\n", "Train Epoch: 1 [36480/104000 (35%)]\tLoss: 0.000000\n", "Train Epoch: 1 [37120/104000 (36%)]\tLoss: 0.000000\n", "Train Epoch: 1 [37760/104000 (36%)]\tLoss: 0.000000\n", "Train Epoch: 1 [38400/104000 (37%)]\tLoss: 0.000000\n", "Train Epoch: 1 [39040/104000 (38%)]\tLoss: 0.000000\n", "Train Epoch: 1 [39680/104000 (38%)]\tLoss: 0.000000\n", "Train Epoch: 1 [40320/104000 (39%)]\tLoss: 0.000003\n", "Train Epoch: 1 [40960/104000 (39%)]\tLoss: 0.000000\n", "Train Epoch: 1 [41600/104000 (40%)]\tLoss: 0.000000\n", "Train Epoch: 1 [42240/104000 (41%)]\tLoss: 0.000000\n", "Train Epoch: 1 [42880/104000 (41%)]\tLoss: 0.000000\n", "Train Epoch: 1 [43520/104000 (42%)]\tLoss: 0.000000\n", "Train Epoch: 1 [44160/104000 (42%)]\tLoss: 0.000000\n", "Train Epoch: 1 [44800/104000 (43%)]\tLoss: 0.000000\n", "Train Epoch: 1 [45440/104000 (44%)]\tLoss: 0.000001\n", "Train Epoch: 1 [46080/104000 (44%)]\tLoss: 0.000000\n", "Train Epoch: 1 [46720/104000 (45%)]\tLoss: 0.000000\n", "Train Epoch: 1 [47360/104000 (46%)]\tLoss: 0.000000\n", "Train Epoch: 1 [48000/104000 (46%)]\tLoss: 0.000000\n", "Train Epoch: 1 [48640/104000 (47%)]\tLoss: 0.000003\n", "Train Epoch: 1 [49280/104000 (47%)]\tLoss: 0.000000\n", "Train Epoch: 1 [49920/104000 (48%)]\tLoss: 0.000000\n", "Train Epoch: 1 [50560/104000 (49%)]\tLoss: 0.000000\n", "Train Epoch: 1 [51200/104000 (49%)]\tLoss: 0.000000\n", "Train Epoch: 1 [51840/104000 (50%)]\tLoss: 0.000000\n", "Train Epoch: 1 [52480/104000 (50%)]\tLoss: 0.000000\n", "Train Epoch: 1 [53120/104000 (51%)]\tLoss: 0.000000\n", "Train Epoch: 1 [53760/104000 (52%)]\tLoss: 0.000000\n", "Train Epoch: 1 [54400/104000 (52%)]\tLoss: 0.000000\n", "Train Epoch: 1 [55040/104000 (53%)]\tLoss: 0.000001\n", "Train Epoch: 1 [55680/104000 (54%)]\tLoss: 0.000000\n", "Train Epoch: 1 [56320/104000 (54%)]\tLoss: 0.000000\n", "Train Epoch: 1 [56960/104000 (55%)]\tLoss: 0.000000\n", "Train Epoch: 1 [57600/104000 (55%)]\tLoss: 0.000000\n", "Train Epoch: 1 [58240/104000 (56%)]\tLoss: 0.000000\n", "Train Epoch: 1 [58880/104000 (57%)]\tLoss: 0.000000\n", "Train Epoch: 1 [59520/104000 (57%)]\tLoss: 0.000000\n", "Train Epoch: 1 [60160/104000 (58%)]\tLoss: 0.000000\n", "Train Epoch: 1 [60800/104000 (58%)]\tLoss: 0.000000\n", "Train Epoch: 1 [61440/104000 (59%)]\tLoss: 0.000000\n", "Train Epoch: 1 [62080/104000 (60%)]\tLoss: 0.000000\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 1 [62720/104000 (60%)]\tLoss: 0.000000\n", "Train Epoch: 1 [63360/104000 (61%)]\tLoss: 0.000000\n", "Train Epoch: 1 [64000/104000 (62%)]\tLoss: 0.000000\n", "Train Epoch: 1 [64640/104000 (62%)]\tLoss: 0.000000\n", "Train Epoch: 1 [65280/104000 (63%)]\tLoss: 0.000000\n", "Train Epoch: 1 [65920/104000 (63%)]\tLoss: 0.000000\n", "Train Epoch: 1 [66560/104000 (64%)]\tLoss: 0.000000\n", "Train Epoch: 1 [67200/104000 (65%)]\tLoss: 0.000000\n", "Train Epoch: 1 [67840/104000 (65%)]\tLoss: 0.000000\n", "Train Epoch: 1 [68480/104000 (66%)]\tLoss: 0.000000\n", "Train Epoch: 1 [69120/104000 (66%)]\tLoss: 0.000000\n", "Train Epoch: 1 [69760/104000 (67%)]\tLoss: 0.000000\n", "Train Epoch: 1 [70400/104000 (68%)]\tLoss: 0.000000\n", "Train Epoch: 1 [71040/104000 (68%)]\tLoss: 0.000000\n", "Train Epoch: 1 [71680/104000 (69%)]\tLoss: 0.000000\n", "Train Epoch: 1 [72320/104000 (70%)]\tLoss: 0.000000\n", "Train Epoch: 1 [72960/104000 (70%)]\tLoss: 0.000000\n", "Train Epoch: 1 [73600/104000 (71%)]\tLoss: 0.000003\n", "Train Epoch: 1 [74240/104000 (71%)]\tLoss: 0.000000\n", "Train Epoch: 1 [74880/104000 (72%)]\tLoss: 0.000000\n", "Train Epoch: 1 [75520/104000 (73%)]\tLoss: 0.000000\n", "Train Epoch: 1 [76160/104000 (73%)]\tLoss: 0.000002\n", "Train Epoch: 1 [76800/104000 (74%)]\tLoss: 0.000000\n", "Train Epoch: 1 [77440/104000 (74%)]\tLoss: 0.000000\n", "Train Epoch: 1 [78080/104000 (75%)]\tLoss: 0.000000\n", "Train Epoch: 1 [78720/104000 (76%)]\tLoss: 0.000000\n", "Train Epoch: 1 [79360/104000 (76%)]\tLoss: 0.000000\n", "Train Epoch: 1 [80000/104000 (77%)]\tLoss: 0.000000\n", "Train Epoch: 1 [80640/104000 (78%)]\tLoss: 0.000000\n", "Train Epoch: 1 [81280/104000 (78%)]\tLoss: 0.000001\n", "Train Epoch: 1 [81920/104000 (79%)]\tLoss: 0.000000\n", "Train Epoch: 1 [82560/104000 (79%)]\tLoss: 0.000000\n", "Train Epoch: 1 [83200/104000 (80%)]\tLoss: 0.000000\n", "Train Epoch: 1 [83840/104000 (81%)]\tLoss: 0.000000\n", "Train Epoch: 1 [84480/104000 (81%)]\tLoss: 0.000000\n", "Train Epoch: 1 [85120/104000 (82%)]\tLoss: 0.000000\n", "Train Epoch: 1 [85760/104000 (82%)]\tLoss: 0.000000\n", "Train Epoch: 1 [86400/104000 (83%)]\tLoss: 0.000000\n", "Train Epoch: 1 [87040/104000 (84%)]\tLoss: 0.000000\n", "Train Epoch: 1 [87680/104000 (84%)]\tLoss: 0.000000\n", "Train Epoch: 1 [88320/104000 (85%)]\tLoss: 0.000000\n", "Train Epoch: 1 [88960/104000 (86%)]\tLoss: 0.000000\n", "Train Epoch: 1 [89600/104000 (86%)]\tLoss: 0.000000\n", "Train Epoch: 1 [90240/104000 (87%)]\tLoss: 0.000000\n", "Train Epoch: 1 [90880/104000 (87%)]\tLoss: 0.000000\n", "Train Epoch: 1 [91520/104000 (88%)]\tLoss: 0.000001\n", "Train Epoch: 1 [92160/104000 (89%)]\tLoss: 0.000000\n", "Train Epoch: 1 [92800/104000 (89%)]\tLoss: 0.000000\n", "Train Epoch: 1 [93440/104000 (90%)]\tLoss: 0.000000\n", "Train Epoch: 1 [94080/104000 (90%)]\tLoss: 0.000000\n", "Train Epoch: 1 [94720/104000 (91%)]\tLoss: 0.000000\n", "Train Epoch: 1 [95360/104000 (92%)]\tLoss: 0.000000\n", "Train Epoch: 1 [96000/104000 (92%)]\tLoss: 0.000000\n", "Train Epoch: 1 [96640/104000 (93%)]\tLoss: 0.000000\n", "Train Epoch: 1 [97280/104000 (94%)]\tLoss: 0.000000\n", "Train Epoch: 1 [97920/104000 (94%)]\tLoss: 0.000000\n", "Train Epoch: 1 [98560/104000 (95%)]\tLoss: 0.000000\n", "Train Epoch: 1 [99200/104000 (95%)]\tLoss: 0.000000\n", "Train Epoch: 1 [99840/104000 (96%)]\tLoss: 0.000000\n", "Train Epoch: 1 [100480/104000 (97%)]\tLoss: 0.000000\n", "Train Epoch: 1 [101120/104000 (97%)]\tLoss: 0.000000\n", "Train Epoch: 1 [101760/104000 (98%)]\tLoss: 0.000000\n", "Train Epoch: 1 [102400/104000 (98%)]\tLoss: 0.000000\n", "Train Epoch: 1 [103040/104000 (99%)]\tLoss: 0.000000\n", "Train Epoch: 1 [103680/104000 (100%)]\tLoss: 0.000000\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 1.3950, Accuracy: 24668/30000 (82%)\n", "\n", "Train Epoch: 2 [0/104000 (0%)]\tLoss: 0.000000\n", "Train Epoch: 2 [640/104000 (1%)]\tLoss: 0.000000\n", "Train Epoch: 2 [1280/104000 (1%)]\tLoss: 0.000000\n", "Train Epoch: 2 [1920/104000 (2%)]\tLoss: 0.000000\n", "Train Epoch: 2 [2560/104000 (2%)]\tLoss: 0.000000\n", "Train Epoch: 2 [3200/104000 (3%)]\tLoss: 0.000000\n", "Train Epoch: 2 [3840/104000 (4%)]\tLoss: 0.000000\n", "Train Epoch: 2 [4480/104000 (4%)]\tLoss: 0.000000\n", "Train Epoch: 2 [5120/104000 (5%)]\tLoss: 0.000000\n", "Train Epoch: 2 [5760/104000 (6%)]\tLoss: 0.000000\n", "Train Epoch: 2 [6400/104000 (6%)]\tLoss: 0.000000\n", "Train Epoch: 2 [7040/104000 (7%)]\tLoss: 0.000000\n", "Train Epoch: 2 [7680/104000 (7%)]\tLoss: 0.000000\n", "Train Epoch: 2 [8320/104000 (8%)]\tLoss: 0.000000\n", "Train Epoch: 2 [8960/104000 (9%)]\tLoss: 0.000000\n", "Train Epoch: 2 [9600/104000 (9%)]\tLoss: 0.000000\n", "Train Epoch: 2 [10240/104000 (10%)]\tLoss: 0.000000\n", "Train Epoch: 2 [10880/104000 (10%)]\tLoss: 0.000000\n", "Train Epoch: 2 [11520/104000 (11%)]\tLoss: 0.000000\n", "Train Epoch: 2 [12160/104000 (12%)]\tLoss: 0.000000\n", "Train Epoch: 2 [12800/104000 (12%)]\tLoss: 0.000000\n", "Train Epoch: 2 [13440/104000 (13%)]\tLoss: 0.000000\n", "Train Epoch: 2 [14080/104000 (14%)]\tLoss: 0.000000\n", "Train Epoch: 2 [14720/104000 (14%)]\tLoss: 0.000000\n", "Train Epoch: 2 [15360/104000 (15%)]\tLoss: 0.000000\n", "Train Epoch: 2 [16000/104000 (15%)]\tLoss: 0.000000\n", "Train Epoch: 2 [16640/104000 (16%)]\tLoss: 0.000000\n", "Train Epoch: 2 [17280/104000 (17%)]\tLoss: 0.000000\n", "Train Epoch: 2 [17920/104000 (17%)]\tLoss: 0.000000\n", "Train Epoch: 2 [18560/104000 (18%)]\tLoss: 0.000000\n", "Train Epoch: 2 [19200/104000 (18%)]\tLoss: 0.000000\n", "Train Epoch: 2 [19840/104000 (19%)]\tLoss: 0.000000\n", "Train Epoch: 2 [20480/104000 (20%)]\tLoss: 0.000000\n", "Train Epoch: 2 [21120/104000 (20%)]\tLoss: 0.000000\n", "Train Epoch: 2 [21760/104000 (21%)]\tLoss: 0.000000\n", "Train Epoch: 2 [22400/104000 (22%)]\tLoss: 0.000000\n", "Train Epoch: 2 [23040/104000 (22%)]\tLoss: 0.000000\n", "Train Epoch: 2 [23680/104000 (23%)]\tLoss: 0.000000\n", "Train Epoch: 2 [24320/104000 (23%)]\tLoss: 0.000000\n", "Train Epoch: 2 [24960/104000 (24%)]\tLoss: 0.000000\n", "Train Epoch: 2 [25600/104000 (25%)]\tLoss: 0.000000\n", "Train Epoch: 2 [26240/104000 (25%)]\tLoss: 0.000000\n", "Train Epoch: 2 [26880/104000 (26%)]\tLoss: 0.000000\n", "Train Epoch: 2 [27520/104000 (26%)]\tLoss: 0.000000\n", "Train Epoch: 2 [28160/104000 (27%)]\tLoss: 0.000000\n", "Train Epoch: 2 [28800/104000 (28%)]\tLoss: 0.000000\n", "Train Epoch: 2 [29440/104000 (28%)]\tLoss: 0.000000\n", "Train Epoch: 2 [30080/104000 (29%)]\tLoss: 0.000000\n", "Train Epoch: 2 [30720/104000 (30%)]\tLoss: 0.000000\n", "Train Epoch: 2 [31360/104000 (30%)]\tLoss: 0.000000\n", "Train Epoch: 2 [32000/104000 (31%)]\tLoss: 0.000000\n", "Train Epoch: 2 [32640/104000 (31%)]\tLoss: 0.000000\n", "Train Epoch: 2 [33280/104000 (32%)]\tLoss: 0.000000\n", "Train Epoch: 2 [33920/104000 (33%)]\tLoss: 0.000000\n", "Train Epoch: 2 [34560/104000 (33%)]\tLoss: 0.000000\n", "Train Epoch: 2 [35200/104000 (34%)]\tLoss: 0.000000\n", "Train Epoch: 2 [35840/104000 (34%)]\tLoss: 0.000000\n", "Train Epoch: 2 [36480/104000 (35%)]\tLoss: 0.000000\n", "Train Epoch: 2 [37120/104000 (36%)]\tLoss: 0.000000\n", "Train Epoch: 2 [37760/104000 (36%)]\tLoss: 0.000000\n", "Train Epoch: 2 [38400/104000 (37%)]\tLoss: 0.000001\n", "Train Epoch: 2 [39040/104000 (38%)]\tLoss: 0.000000\n", "Train Epoch: 2 [39680/104000 (38%)]\tLoss: 0.000000\n", "Train Epoch: 2 [40320/104000 (39%)]\tLoss: 0.000000\n", "Train Epoch: 2 [40960/104000 (39%)]\tLoss: 0.000000\n", "Train Epoch: 2 [41600/104000 (40%)]\tLoss: 0.000000\n", "Train Epoch: 2 [42240/104000 (41%)]\tLoss: 0.000000\n", "Train Epoch: 2 [42880/104000 (41%)]\tLoss: 0.000000\n", "Train Epoch: 2 [43520/104000 (42%)]\tLoss: 0.000000\n", "Train Epoch: 2 [44160/104000 (42%)]\tLoss: 0.000000\n", "Train Epoch: 2 [44800/104000 (43%)]\tLoss: 0.000000\n", "Train Epoch: 2 [45440/104000 (44%)]\tLoss: 0.000000\n", "Train Epoch: 2 [46080/104000 (44%)]\tLoss: 0.000000\n", "Train Epoch: 2 [46720/104000 (45%)]\tLoss: 0.000000\n", "Train Epoch: 2 [47360/104000 (46%)]\tLoss: 0.000000\n", "Train Epoch: 2 [48000/104000 (46%)]\tLoss: 0.000000\n", "Train Epoch: 2 [48640/104000 (47%)]\tLoss: 0.000000\n", "Train Epoch: 2 [49280/104000 (47%)]\tLoss: 0.000000\n", "Train Epoch: 2 [49920/104000 (48%)]\tLoss: 0.000000\n", "Train Epoch: 2 [50560/104000 (49%)]\tLoss: 0.000000\n", "Train Epoch: 2 [51200/104000 (49%)]\tLoss: 0.000000\n", "Train Epoch: 2 [51840/104000 (50%)]\tLoss: 0.000000\n", "Train Epoch: 2 [52480/104000 (50%)]\tLoss: 0.000000\n", "Train Epoch: 2 [53120/104000 (51%)]\tLoss: 0.000000\n", "Train Epoch: 2 [53760/104000 (52%)]\tLoss: 0.000000\n", "Train Epoch: 2 [54400/104000 (52%)]\tLoss: 0.000000\n", "Train Epoch: 2 [55040/104000 (53%)]\tLoss: 0.000000\n", "Train Epoch: 2 [55680/104000 (54%)]\tLoss: 0.000000\n", "Train Epoch: 2 [56320/104000 (54%)]\tLoss: 0.000000\n", "Train Epoch: 2 [56960/104000 (55%)]\tLoss: 0.000000\n", "Train Epoch: 2 [57600/104000 (55%)]\tLoss: 0.000000\n", "Train Epoch: 2 [58240/104000 (56%)]\tLoss: 0.000000\n", "Train Epoch: 2 [58880/104000 (57%)]\tLoss: 0.000000\n", "Train Epoch: 2 [59520/104000 (57%)]\tLoss: 0.000000\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 2 [60160/104000 (58%)]\tLoss: 0.000000\n", "Train Epoch: 2 [60800/104000 (58%)]\tLoss: 0.000000\n", "Train Epoch: 2 [61440/104000 (59%)]\tLoss: 0.000000\n", "Train Epoch: 2 [62080/104000 (60%)]\tLoss: 0.000000\n", "Train Epoch: 2 [62720/104000 (60%)]\tLoss: 0.000000\n", "Train Epoch: 2 [63360/104000 (61%)]\tLoss: 0.000000\n", "Train Epoch: 2 [64000/104000 (62%)]\tLoss: 0.000000\n", "Train Epoch: 2 [64640/104000 (62%)]\tLoss: 0.000000\n", "Train Epoch: 2 [65280/104000 (63%)]\tLoss: 0.000000\n", "Train Epoch: 2 [65920/104000 (63%)]\tLoss: 0.000000\n", "Train Epoch: 2 [66560/104000 (64%)]\tLoss: 0.000000\n", "Train Epoch: 2 [67200/104000 (65%)]\tLoss: 0.000000\n", "Train Epoch: 2 [67840/104000 (65%)]\tLoss: 0.000000\n", "Train Epoch: 2 [68480/104000 (66%)]\tLoss: 0.000000\n", "Train Epoch: 2 [69120/104000 (66%)]\tLoss: 0.000000\n", "Train Epoch: 2 [69760/104000 (67%)]\tLoss: 0.000000\n", "Train Epoch: 2 [70400/104000 (68%)]\tLoss: 0.000000\n", "Train Epoch: 2 [71040/104000 (68%)]\tLoss: 0.000000\n", "Train Epoch: 2 [71680/104000 (69%)]\tLoss: 0.000000\n", "Train Epoch: 2 [72320/104000 (70%)]\tLoss: 0.000000\n", "Train Epoch: 2 [72960/104000 (70%)]\tLoss: 0.000000\n", "Train Epoch: 2 [73600/104000 (71%)]\tLoss: 0.000000\n", "Train Epoch: 2 [74240/104000 (71%)]\tLoss: 0.000000\n", "Train Epoch: 2 [74880/104000 (72%)]\tLoss: 0.000000\n", "Train Epoch: 2 [75520/104000 (73%)]\tLoss: 0.000000\n", "Train Epoch: 2 [76160/104000 (73%)]\tLoss: 0.000000\n", "Train Epoch: 2 [76800/104000 (74%)]\tLoss: 0.000000\n", "Train Epoch: 2 [77440/104000 (74%)]\tLoss: 0.000000\n", "Train Epoch: 2 [78080/104000 (75%)]\tLoss: 0.000000\n", "Train Epoch: 2 [78720/104000 (76%)]\tLoss: 0.000000\n", "Train Epoch: 2 [79360/104000 (76%)]\tLoss: 0.000000\n", "Train Epoch: 2 [80000/104000 (77%)]\tLoss: 0.000000\n", "Train Epoch: 2 [80640/104000 (78%)]\tLoss: 0.000000\n", "Train Epoch: 2 [81280/104000 (78%)]\tLoss: 0.000000\n", "Train Epoch: 2 [81920/104000 (79%)]\tLoss: 0.000000\n", "Train Epoch: 2 [82560/104000 (79%)]\tLoss: 0.000000\n", "Train Epoch: 2 [83200/104000 (80%)]\tLoss: 0.000000\n", "Train Epoch: 2 [83840/104000 (81%)]\tLoss: 0.000000\n", "Train Epoch: 2 [84480/104000 (81%)]\tLoss: 0.000000\n", "Train Epoch: 2 [85120/104000 (82%)]\tLoss: 0.000000\n", "Train Epoch: 2 [85760/104000 (82%)]\tLoss: 0.000000\n", "Train Epoch: 2 [86400/104000 (83%)]\tLoss: 0.000000\n", "Train Epoch: 2 [87040/104000 (84%)]\tLoss: 0.000000\n", "Train Epoch: 2 [87680/104000 (84%)]\tLoss: 0.000000\n", "Train Epoch: 2 [88320/104000 (85%)]\tLoss: 0.000000\n", "Train Epoch: 2 [88960/104000 (86%)]\tLoss: 0.000000\n", "Train Epoch: 2 [89600/104000 (86%)]\tLoss: 0.000000\n", "Train Epoch: 2 [90240/104000 (87%)]\tLoss: 0.000001\n", "Train Epoch: 2 [90880/104000 (87%)]\tLoss: 0.000000\n", "Train Epoch: 2 [91520/104000 (88%)]\tLoss: 0.000000\n", "Train Epoch: 2 [92160/104000 (89%)]\tLoss: 0.000000\n", "Train Epoch: 2 [92800/104000 (89%)]\tLoss: 0.000000\n", "Train Epoch: 2 [93440/104000 (90%)]\tLoss: 0.000000\n", "Train Epoch: 2 [94080/104000 (90%)]\tLoss: 0.000000\n", "Train Epoch: 2 [94720/104000 (91%)]\tLoss: 0.000000\n", "Train Epoch: 2 [95360/104000 (92%)]\tLoss: 0.000000\n", "Train Epoch: 2 [96000/104000 (92%)]\tLoss: 0.000000\n", "Train Epoch: 2 [96640/104000 (93%)]\tLoss: 0.000000\n", "Train Epoch: 2 [97280/104000 (94%)]\tLoss: 0.000000\n", "Train Epoch: 2 [97920/104000 (94%)]\tLoss: 0.000000\n", "Train Epoch: 2 [98560/104000 (95%)]\tLoss: 0.000000\n", "Train Epoch: 2 [99200/104000 (95%)]\tLoss: 0.000000\n", "Train Epoch: 2 [99840/104000 (96%)]\tLoss: 0.000000\n", "Train Epoch: 2 [100480/104000 (97%)]\tLoss: 0.000000\n", "Train Epoch: 2 [101120/104000 (97%)]\tLoss: 0.000000\n", "Train Epoch: 2 [101760/104000 (98%)]\tLoss: 0.000000\n", "Train Epoch: 2 [102400/104000 (98%)]\tLoss: 0.000000\n", "Train Epoch: 2 [103040/104000 (99%)]\tLoss: 0.000000\n", "Train Epoch: 2 [103680/104000 (100%)]\tLoss: 0.000000\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.7656, Accuracy: 25707/30000 (86%)\n", "\n", "Train Epoch: 3 [0/104000 (0%)]\tLoss: 0.000000\n", "Train Epoch: 3 [640/104000 (1%)]\tLoss: 0.000000\n", "Train Epoch: 3 [1280/104000 (1%)]\tLoss: 0.000000\n", "Train Epoch: 3 [1920/104000 (2%)]\tLoss: 0.000000\n", "Train Epoch: 3 [2560/104000 (2%)]\tLoss: 0.000000\n", "Train Epoch: 3 [3200/104000 (3%)]\tLoss: 0.000000\n", "Train Epoch: 3 [3840/104000 (4%)]\tLoss: 0.000010\n", "Train Epoch: 3 [4480/104000 (4%)]\tLoss: 0.000000\n", "Train Epoch: 3 [5120/104000 (5%)]\tLoss: 0.000000\n", "Train Epoch: 3 [5760/104000 (6%)]\tLoss: 0.000000\n", "Train Epoch: 3 [6400/104000 (6%)]\tLoss: 0.000000\n", "Train Epoch: 3 [7040/104000 (7%)]\tLoss: 0.000000\n", "Train Epoch: 3 [7680/104000 (7%)]\tLoss: 0.000000\n", "Train Epoch: 3 [8320/104000 (8%)]\tLoss: 0.000000\n", "Train Epoch: 3 [8960/104000 (9%)]\tLoss: 0.000000\n", "Train Epoch: 3 [9600/104000 (9%)]\tLoss: 0.000000\n", "Train Epoch: 3 [10240/104000 (10%)]\tLoss: 0.000000\n", "Train Epoch: 3 [10880/104000 (10%)]\tLoss: 0.000000\n", "Train Epoch: 3 [11520/104000 (11%)]\tLoss: 0.000000\n", "Train Epoch: 3 [12160/104000 (12%)]\tLoss: 0.000000\n", "Train Epoch: 3 [12800/104000 (12%)]\tLoss: 0.000000\n", "Train Epoch: 3 [13440/104000 (13%)]\tLoss: 0.000000\n", "Train Epoch: 3 [14080/104000 (14%)]\tLoss: 0.000000\n", "Train Epoch: 3 [14720/104000 (14%)]\tLoss: 0.000000\n", "Train Epoch: 3 [15360/104000 (15%)]\tLoss: 0.000000\n", "Train Epoch: 3 [16000/104000 (15%)]\tLoss: 0.000000\n", "Train Epoch: 3 [16640/104000 (16%)]\tLoss: 0.000000\n", "Train Epoch: 3 [17280/104000 (17%)]\tLoss: 0.000000\n", "Train Epoch: 3 [17920/104000 (17%)]\tLoss: 0.000000\n", "Train Epoch: 3 [18560/104000 (18%)]\tLoss: 0.000000\n", "Train Epoch: 3 [19200/104000 (18%)]\tLoss: 0.000000\n", "Train Epoch: 3 [19840/104000 (19%)]\tLoss: 0.000000\n", "Train Epoch: 3 [20480/104000 (20%)]\tLoss: 0.000000\n", "Train Epoch: 3 [21120/104000 (20%)]\tLoss: 0.000000\n", "Train Epoch: 3 [21760/104000 (21%)]\tLoss: 0.000000\n", "Train Epoch: 3 [22400/104000 (22%)]\tLoss: 0.000000\n", "Train Epoch: 3 [23040/104000 (22%)]\tLoss: 0.000000\n", "Train Epoch: 3 [23680/104000 (23%)]\tLoss: 0.000000\n", "Train Epoch: 3 [24320/104000 (23%)]\tLoss: 0.000000\n", "Train Epoch: 3 [24960/104000 (24%)]\tLoss: 0.000000\n", "Train Epoch: 3 [25600/104000 (25%)]\tLoss: 0.000000\n", "Train Epoch: 3 [26240/104000 (25%)]\tLoss: 0.000000\n", "Train Epoch: 3 [26880/104000 (26%)]\tLoss: 0.000000\n", "Train Epoch: 3 [27520/104000 (26%)]\tLoss: 0.000000\n", "Train Epoch: 3 [28160/104000 (27%)]\tLoss: 0.000000\n", "Train Epoch: 3 [28800/104000 (28%)]\tLoss: 0.000000\n", "Train Epoch: 3 [29440/104000 (28%)]\tLoss: 0.000000\n", "Train Epoch: 3 [30080/104000 (29%)]\tLoss: 0.000000\n", "Train Epoch: 3 [30720/104000 (30%)]\tLoss: 0.000000\n", "Train Epoch: 3 [31360/104000 (30%)]\tLoss: 0.000000\n", "Train Epoch: 3 [32000/104000 (31%)]\tLoss: 0.000000\n", "Train Epoch: 3 [32640/104000 (31%)]\tLoss: 0.000000\n", "Train Epoch: 3 [33280/104000 (32%)]\tLoss: 0.000000\n", "Train Epoch: 3 [33920/104000 (33%)]\tLoss: 0.000002\n", "Train Epoch: 3 [34560/104000 (33%)]\tLoss: 0.000000\n", "Train Epoch: 3 [35200/104000 (34%)]\tLoss: 0.000000\n", "Train Epoch: 3 [35840/104000 (34%)]\tLoss: 0.000000\n", "Train Epoch: 3 [36480/104000 (35%)]\tLoss: 0.000000\n", "Train Epoch: 3 [37120/104000 (36%)]\tLoss: 0.000000\n", "Train Epoch: 3 [37760/104000 (36%)]\tLoss: 0.000000\n", "Train Epoch: 3 [38400/104000 (37%)]\tLoss: 0.000002\n", "Train Epoch: 3 [39040/104000 (38%)]\tLoss: 0.000000\n", "Train Epoch: 3 [39680/104000 (38%)]\tLoss: 0.000000\n", "Train Epoch: 3 [40320/104000 (39%)]\tLoss: 0.000000\n", "Train Epoch: 3 [40960/104000 (39%)]\tLoss: 0.000000\n", "Train Epoch: 3 [41600/104000 (40%)]\tLoss: 0.000000\n", "Train Epoch: 3 [42240/104000 (41%)]\tLoss: 0.000000\n", "Train Epoch: 3 [42880/104000 (41%)]\tLoss: 0.000000\n", "Train Epoch: 3 [43520/104000 (42%)]\tLoss: 0.000000\n", "Train Epoch: 3 [44160/104000 (42%)]\tLoss: 0.000000\n", "Train Epoch: 3 [44800/104000 (43%)]\tLoss: 0.000000\n", "Train Epoch: 3 [45440/104000 (44%)]\tLoss: 0.000000\n", "Train Epoch: 3 [46080/104000 (44%)]\tLoss: 0.000000\n", "Train Epoch: 3 [46720/104000 (45%)]\tLoss: 0.000000\n", "Train Epoch: 3 [47360/104000 (46%)]\tLoss: 0.000000\n", "Train Epoch: 3 [48000/104000 (46%)]\tLoss: 0.000000\n", "Train Epoch: 3 [48640/104000 (47%)]\tLoss: 0.000000\n", "Train Epoch: 3 [49280/104000 (47%)]\tLoss: 0.000000\n", "Train Epoch: 3 [49920/104000 (48%)]\tLoss: 0.000000\n", "Train Epoch: 3 [50560/104000 (49%)]\tLoss: 0.000000\n", "Train Epoch: 3 [51200/104000 (49%)]\tLoss: 0.000000\n", "Train Epoch: 3 [51840/104000 (50%)]\tLoss: 0.000000\n", "Train Epoch: 3 [52480/104000 (50%)]\tLoss: 0.000000\n", "Train Epoch: 3 [53120/104000 (51%)]\tLoss: 0.000000\n", "Train Epoch: 3 [53760/104000 (52%)]\tLoss: 0.000000\n", "Train Epoch: 3 [54400/104000 (52%)]\tLoss: 0.000000\n", "Train Epoch: 3 [55040/104000 (53%)]\tLoss: 0.000000\n", "Train Epoch: 3 [55680/104000 (54%)]\tLoss: 0.000000\n", "Train Epoch: 3 [56320/104000 (54%)]\tLoss: 0.000035\n", "Train Epoch: 3 [56960/104000 (55%)]\tLoss: 0.000000\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 3 [57600/104000 (55%)]\tLoss: 0.000000\n", "Train Epoch: 3 [58240/104000 (56%)]\tLoss: 0.000000\n", "Train Epoch: 3 [58880/104000 (57%)]\tLoss: 0.000000\n", "Train Epoch: 3 [59520/104000 (57%)]\tLoss: 0.000000\n", "Train Epoch: 3 [60160/104000 (58%)]\tLoss: 0.000000\n", "Train Epoch: 3 [60800/104000 (58%)]\tLoss: 0.000000\n", "Train Epoch: 3 [61440/104000 (59%)]\tLoss: 0.000000\n", "Train Epoch: 3 [62080/104000 (60%)]\tLoss: 0.000000\n", "Train Epoch: 3 [62720/104000 (60%)]\tLoss: 0.000000\n", "Train Epoch: 3 [63360/104000 (61%)]\tLoss: 0.000552\n", "Train Epoch: 3 [64000/104000 (62%)]\tLoss: 0.000000\n", "Train Epoch: 3 [64640/104000 (62%)]\tLoss: 0.000000\n", "Train Epoch: 3 [65280/104000 (63%)]\tLoss: 0.000000\n", "Train Epoch: 3 [65920/104000 (63%)]\tLoss: 0.000000\n", "Train Epoch: 3 [66560/104000 (64%)]\tLoss: 0.000000\n", "Train Epoch: 3 [67200/104000 (65%)]\tLoss: 0.000000\n", "Train Epoch: 3 [67840/104000 (65%)]\tLoss: 0.000000\n", "Train Epoch: 3 [68480/104000 (66%)]\tLoss: 0.000000\n", "Train Epoch: 3 [69120/104000 (66%)]\tLoss: 0.000000\n", "Train Epoch: 3 [69760/104000 (67%)]\tLoss: 0.000000\n", "Train Epoch: 3 [70400/104000 (68%)]\tLoss: 0.000000\n", "Train Epoch: 3 [71040/104000 (68%)]\tLoss: 0.000000\n", "Train Epoch: 3 [71680/104000 (69%)]\tLoss: 0.000000\n", "Train Epoch: 3 [72320/104000 (70%)]\tLoss: 0.000000\n", "Train Epoch: 3 [72960/104000 (70%)]\tLoss: 0.000000\n", "Train Epoch: 3 [73600/104000 (71%)]\tLoss: 0.000000\n", "Train Epoch: 3 [74240/104000 (71%)]\tLoss: 0.000000\n", "Train Epoch: 3 [74880/104000 (72%)]\tLoss: 0.000000\n", "Train Epoch: 3 [75520/104000 (73%)]\tLoss: 0.000000\n", "Train Epoch: 3 [76160/104000 (73%)]\tLoss: 0.000000\n", "Train Epoch: 3 [76800/104000 (74%)]\tLoss: 0.000000\n", "Train Epoch: 3 [77440/104000 (74%)]\tLoss: 0.000000\n", "Train Epoch: 3 [78080/104000 (75%)]\tLoss: 0.000000\n", "Train Epoch: 3 [78720/104000 (76%)]\tLoss: 0.000000\n", "Train Epoch: 3 [79360/104000 (76%)]\tLoss: 0.000000\n", "Train Epoch: 3 [80000/104000 (77%)]\tLoss: 0.000000\n", "Train Epoch: 3 [80640/104000 (78%)]\tLoss: 0.000000\n", "Train Epoch: 3 [81280/104000 (78%)]\tLoss: 0.000000\n", "Train Epoch: 3 [81920/104000 (79%)]\tLoss: 0.000000\n", "Train Epoch: 3 [82560/104000 (79%)]\tLoss: 0.000000\n", "Train Epoch: 3 [83200/104000 (80%)]\tLoss: 0.000000\n", "Train Epoch: 3 [83840/104000 (81%)]\tLoss: 0.000000\n", "Train Epoch: 3 [84480/104000 (81%)]\tLoss: 0.000000\n", "Train Epoch: 3 [85120/104000 (82%)]\tLoss: 0.000000\n", "Train Epoch: 3 [85760/104000 (82%)]\tLoss: 0.000000\n", "Train Epoch: 3 [86400/104000 (83%)]\tLoss: 0.000000\n", "Train Epoch: 3 [87040/104000 (84%)]\tLoss: 0.000000\n", "Train Epoch: 3 [87680/104000 (84%)]\tLoss: 0.000000\n", "Train Epoch: 3 [88320/104000 (85%)]\tLoss: 0.000000\n", "Train Epoch: 3 [88960/104000 (86%)]\tLoss: 0.000000\n", "Train Epoch: 3 [89600/104000 (86%)]\tLoss: 0.000003\n", "Train Epoch: 3 [90240/104000 (87%)]\tLoss: 0.000000\n", "Train Epoch: 3 [90880/104000 (87%)]\tLoss: 0.000000\n", "Train Epoch: 3 [91520/104000 (88%)]\tLoss: 0.000000\n", "Train Epoch: 3 [92160/104000 (89%)]\tLoss: 0.000000\n", "Train Epoch: 3 [92800/104000 (89%)]\tLoss: 0.000000\n", "Train Epoch: 3 [93440/104000 (90%)]\tLoss: 0.000000\n", "Train Epoch: 3 [94080/104000 (90%)]\tLoss: 0.000000\n", "Train Epoch: 3 [94720/104000 (91%)]\tLoss: 0.000000\n", "Train Epoch: 3 [95360/104000 (92%)]\tLoss: 0.000000\n", "Train Epoch: 3 [96000/104000 (92%)]\tLoss: 0.000000\n", "Train Epoch: 3 [96640/104000 (93%)]\tLoss: 0.000000\n", "Train Epoch: 3 [97280/104000 (94%)]\tLoss: 0.000000\n", "Train Epoch: 3 [97920/104000 (94%)]\tLoss: 0.000000\n", "Train Epoch: 3 [98560/104000 (95%)]\tLoss: 0.000000\n", "Train Epoch: 3 [99200/104000 (95%)]\tLoss: 0.000000\n", "Train Epoch: 3 [99840/104000 (96%)]\tLoss: 0.000000\n", "Train Epoch: 3 [100480/104000 (97%)]\tLoss: 0.000000\n", "Train Epoch: 3 [101120/104000 (97%)]\tLoss: 0.000000\n", "Train Epoch: 3 [101760/104000 (98%)]\tLoss: 0.000000\n", "Train Epoch: 3 [102400/104000 (98%)]\tLoss: 0.000000\n", "Train Epoch: 3 [103040/104000 (99%)]\tLoss: 0.000000\n", "Train Epoch: 3 [103680/104000 (100%)]\tLoss: 0.000000\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.6615, Accuracy: 26003/30000 (87%)\n", "\n", "Train Epoch: 4 [0/104000 (0%)]\tLoss: 0.000000\n", "Train Epoch: 4 [640/104000 (1%)]\tLoss: 0.000000\n", "Train Epoch: 4 [1280/104000 (1%)]\tLoss: 0.000000\n", "Train Epoch: 4 [1920/104000 (2%)]\tLoss: 0.000000\n", "Train Epoch: 4 [2560/104000 (2%)]\tLoss: 0.000000\n", "Train Epoch: 4 [3200/104000 (3%)]\tLoss: 0.000000\n", "Train Epoch: 4 [3840/104000 (4%)]\tLoss: 0.000000\n", "Train Epoch: 4 [4480/104000 (4%)]\tLoss: 0.000000\n", "Train Epoch: 4 [5120/104000 (5%)]\tLoss: 0.000000\n", "Train Epoch: 4 [5760/104000 (6%)]\tLoss: 0.000000\n", "Train Epoch: 4 [6400/104000 (6%)]\tLoss: 0.000000\n", "Train Epoch: 4 [7040/104000 (7%)]\tLoss: 0.000000\n", "Train Epoch: 4 [7680/104000 (7%)]\tLoss: 0.000000\n", "Train Epoch: 4 [8320/104000 (8%)]\tLoss: 0.000000\n", "Train Epoch: 4 [8960/104000 (9%)]\tLoss: 0.000000\n", "Train Epoch: 4 [9600/104000 (9%)]\tLoss: 0.000000\n", "Train Epoch: 4 [10240/104000 (10%)]\tLoss: 0.000000\n", "Train Epoch: 4 [10880/104000 (10%)]\tLoss: 0.000000\n", "Train Epoch: 4 [11520/104000 (11%)]\tLoss: 0.000000\n", "Train Epoch: 4 [12160/104000 (12%)]\tLoss: 0.000000\n", "Train Epoch: 4 [12800/104000 (12%)]\tLoss: 0.000000\n", "Train Epoch: 4 [13440/104000 (13%)]\tLoss: 0.000000\n", "Train Epoch: 4 [14080/104000 (14%)]\tLoss: 0.000000\n", "Train Epoch: 4 [14720/104000 (14%)]\tLoss: 0.000000\n", "Train Epoch: 4 [15360/104000 (15%)]\tLoss: 0.000000\n", "Train Epoch: 4 [16000/104000 (15%)]\tLoss: 0.000000\n", "Train Epoch: 4 [16640/104000 (16%)]\tLoss: 0.000000\n", "Train Epoch: 4 [17280/104000 (17%)]\tLoss: 0.000000\n", "Train Epoch: 4 [17920/104000 (17%)]\tLoss: 0.000000\n", "Train Epoch: 4 [18560/104000 (18%)]\tLoss: 0.000000\n", "Train Epoch: 4 [19200/104000 (18%)]\tLoss: 0.000007\n", "Train Epoch: 4 [19840/104000 (19%)]\tLoss: 0.000000\n", "Train Epoch: 4 [20480/104000 (20%)]\tLoss: 0.000000\n", "Train Epoch: 4 [21120/104000 (20%)]\tLoss: 0.000000\n", "Train Epoch: 4 [21760/104000 (21%)]\tLoss: 0.000000\n", "Train Epoch: 4 [22400/104000 (22%)]\tLoss: 0.000000\n", "Train Epoch: 4 [23040/104000 (22%)]\tLoss: 0.000000\n", "Train Epoch: 4 [23680/104000 (23%)]\tLoss: 0.000000\n", "Train Epoch: 4 [24320/104000 (23%)]\tLoss: 0.000000\n", "Train Epoch: 4 [24960/104000 (24%)]\tLoss: 0.000000\n", "Train Epoch: 4 [25600/104000 (25%)]\tLoss: 0.000000\n", "Train Epoch: 4 [26240/104000 (25%)]\tLoss: 0.000000\n", "Train Epoch: 4 [26880/104000 (26%)]\tLoss: 0.000000\n", "Train Epoch: 4 [27520/104000 (26%)]\tLoss: 0.000000\n", "Train Epoch: 4 [28160/104000 (27%)]\tLoss: 0.000000\n", "Train Epoch: 4 [28800/104000 (28%)]\tLoss: 0.000000\n", "Train Epoch: 4 [29440/104000 (28%)]\tLoss: 0.000000\n", "Train Epoch: 4 [30080/104000 (29%)]\tLoss: 0.000000\n", "Train Epoch: 4 [30720/104000 (30%)]\tLoss: 0.000000\n", "Train Epoch: 4 [31360/104000 (30%)]\tLoss: 0.000000\n", "Train Epoch: 4 [32000/104000 (31%)]\tLoss: 0.000000\n", "Train Epoch: 4 [32640/104000 (31%)]\tLoss: 0.000000\n", "Train Epoch: 4 [33280/104000 (32%)]\tLoss: 0.000000\n", "Train Epoch: 4 [33920/104000 (33%)]\tLoss: 0.000000\n", "Train Epoch: 4 [34560/104000 (33%)]\tLoss: 0.000000\n", "Train Epoch: 4 [35200/104000 (34%)]\tLoss: 0.000000\n", "Train Epoch: 4 [35840/104000 (34%)]\tLoss: 0.000000\n", "Train Epoch: 4 [36480/104000 (35%)]\tLoss: 0.000000\n", "Train Epoch: 4 [37120/104000 (36%)]\tLoss: 0.000000\n", "Train Epoch: 4 [37760/104000 (36%)]\tLoss: 0.000000\n", "Train Epoch: 4 [38400/104000 (37%)]\tLoss: 0.000000\n", "Train Epoch: 4 [39040/104000 (38%)]\tLoss: 0.000000\n", "Train Epoch: 4 [39680/104000 (38%)]\tLoss: 0.000000\n", "Train Epoch: 4 [40320/104000 (39%)]\tLoss: 0.000000\n", "Train Epoch: 4 [40960/104000 (39%)]\tLoss: 0.000000\n", "Train Epoch: 4 [41600/104000 (40%)]\tLoss: 0.000000\n", "Train Epoch: 4 [42240/104000 (41%)]\tLoss: 0.000000\n", "Train Epoch: 4 [42880/104000 (41%)]\tLoss: 0.000000\n", "Train Epoch: 4 [43520/104000 (42%)]\tLoss: 0.000000\n", "Train Epoch: 4 [44160/104000 (42%)]\tLoss: 0.000000\n", "Train Epoch: 4 [44800/104000 (43%)]\tLoss: 0.000000\n", "Train Epoch: 4 [45440/104000 (44%)]\tLoss: 0.000000\n", "Train Epoch: 4 [46080/104000 (44%)]\tLoss: 0.000000\n", "Train Epoch: 4 [46720/104000 (45%)]\tLoss: 0.000000\n", "Train Epoch: 4 [47360/104000 (46%)]\tLoss: 0.000000\n", "Train Epoch: 4 [48000/104000 (46%)]\tLoss: 0.000000\n", "Train Epoch: 4 [48640/104000 (47%)]\tLoss: 0.000000\n", "Train Epoch: 4 [49280/104000 (47%)]\tLoss: 0.000000\n", "Train Epoch: 4 [49920/104000 (48%)]\tLoss: 0.000000\n", "Train Epoch: 4 [50560/104000 (49%)]\tLoss: 0.000000\n", "Train Epoch: 4 [51200/104000 (49%)]\tLoss: 0.000000\n", "Train Epoch: 4 [51840/104000 (50%)]\tLoss: 0.000000\n", "Train Epoch: 4 [52480/104000 (50%)]\tLoss: 0.000000\n", "Train Epoch: 4 [53120/104000 (51%)]\tLoss: 0.000000\n", "Train Epoch: 4 [53760/104000 (52%)]\tLoss: 0.000000\n", "Train Epoch: 4 [54400/104000 (52%)]\tLoss: 0.000001\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 4 [55040/104000 (53%)]\tLoss: 0.000000\n", "Train Epoch: 4 [55680/104000 (54%)]\tLoss: 0.000000\n", "Train Epoch: 4 [56320/104000 (54%)]\tLoss: 0.000000\n", "Train Epoch: 4 [56960/104000 (55%)]\tLoss: 0.000000\n", "Train Epoch: 4 [57600/104000 (55%)]\tLoss: 0.000003\n", "Train Epoch: 4 [58240/104000 (56%)]\tLoss: 0.000000\n", "Train Epoch: 4 [58880/104000 (57%)]\tLoss: 0.000000\n", "Train Epoch: 4 [59520/104000 (57%)]\tLoss: 0.000000\n", "Train Epoch: 4 [60160/104000 (58%)]\tLoss: 0.000000\n", "Train Epoch: 4 [60800/104000 (58%)]\tLoss: 0.000000\n", "Train Epoch: 4 [61440/104000 (59%)]\tLoss: 0.000000\n", "Train Epoch: 4 [62080/104000 (60%)]\tLoss: 0.000000\n", "Train Epoch: 4 [62720/104000 (60%)]\tLoss: 0.000000\n", "Train Epoch: 4 [63360/104000 (61%)]\tLoss: 0.000000\n", "Train Epoch: 4 [64000/104000 (62%)]\tLoss: 0.000000\n", "Train Epoch: 4 [64640/104000 (62%)]\tLoss: 0.000000\n", "Train Epoch: 4 [65280/104000 (63%)]\tLoss: 0.000000\n", "Train Epoch: 4 [65920/104000 (63%)]\tLoss: 0.000000\n", "Train Epoch: 4 [66560/104000 (64%)]\tLoss: 0.000000\n", "Train Epoch: 4 [67200/104000 (65%)]\tLoss: 0.000000\n", "Train Epoch: 4 [67840/104000 (65%)]\tLoss: 0.000000\n", "Train Epoch: 4 [68480/104000 (66%)]\tLoss: 0.000000\n", "Train Epoch: 4 [69120/104000 (66%)]\tLoss: 0.000000\n", "Train Epoch: 4 [69760/104000 (67%)]\tLoss: 0.000000\n", "Train Epoch: 4 [70400/104000 (68%)]\tLoss: 0.000000\n", "Train Epoch: 4 [71040/104000 (68%)]\tLoss: 0.000000\n", "Train Epoch: 4 [71680/104000 (69%)]\tLoss: 0.000000\n", "Train Epoch: 4 [72320/104000 (70%)]\tLoss: 0.000000\n", "Train Epoch: 4 [72960/104000 (70%)]\tLoss: 0.000000\n", "Train Epoch: 4 [73600/104000 (71%)]\tLoss: 0.000000\n", "Train Epoch: 4 [74240/104000 (71%)]\tLoss: 0.000000\n", "Train Epoch: 4 [74880/104000 (72%)]\tLoss: 0.000000\n", "Train Epoch: 4 [75520/104000 (73%)]\tLoss: 0.000000\n", "Train Epoch: 4 [76160/104000 (73%)]\tLoss: 0.000000\n", "Train Epoch: 4 [76800/104000 (74%)]\tLoss: 0.000000\n", "Train Epoch: 4 [77440/104000 (74%)]\tLoss: 0.000000\n", "Train Epoch: 4 [78080/104000 (75%)]\tLoss: 0.000000\n", "Train Epoch: 4 [78720/104000 (76%)]\tLoss: 0.000000\n", "Train Epoch: 4 [79360/104000 (76%)]\tLoss: 0.000000\n", "Train Epoch: 4 [80000/104000 (77%)]\tLoss: 0.000000\n", "Train Epoch: 4 [80640/104000 (78%)]\tLoss: 0.000000\n", "Train Epoch: 4 [81280/104000 (78%)]\tLoss: 0.000000\n", "Train Epoch: 4 [81920/104000 (79%)]\tLoss: 0.000000\n", "Train Epoch: 4 [82560/104000 (79%)]\tLoss: 0.000000\n", "Train Epoch: 4 [83200/104000 (80%)]\tLoss: 0.000000\n", "Train Epoch: 4 [83840/104000 (81%)]\tLoss: 0.000000\n", "Train Epoch: 4 [84480/104000 (81%)]\tLoss: 0.000000\n", "Train Epoch: 4 [85120/104000 (82%)]\tLoss: 0.000000\n", "Train Epoch: 4 [85760/104000 (82%)]\tLoss: 0.000000\n", "Train Epoch: 4 [86400/104000 (83%)]\tLoss: 0.000000\n", "Train Epoch: 4 [87040/104000 (84%)]\tLoss: 0.000000\n", "Train Epoch: 4 [87680/104000 (84%)]\tLoss: 0.000000\n", "Train Epoch: 4 [88320/104000 (85%)]\tLoss: 0.000000\n", "Train Epoch: 4 [88960/104000 (86%)]\tLoss: 0.000000\n", "Train Epoch: 4 [89600/104000 (86%)]\tLoss: 0.000000\n", "Train Epoch: 4 [90240/104000 (87%)]\tLoss: 0.000000\n", "Train Epoch: 4 [90880/104000 (87%)]\tLoss: 0.000000\n", "Train Epoch: 4 [91520/104000 (88%)]\tLoss: 0.000000\n", "Train Epoch: 4 [92160/104000 (89%)]\tLoss: 0.000000\n", "Train Epoch: 4 [92800/104000 (89%)]\tLoss: 0.000000\n", "Train Epoch: 4 [93440/104000 (90%)]\tLoss: 0.000000\n", "Train Epoch: 4 [94080/104000 (90%)]\tLoss: 0.000000\n", "Train Epoch: 4 [94720/104000 (91%)]\tLoss: 0.000000\n", "Train Epoch: 4 [95360/104000 (92%)]\tLoss: 0.000000\n", "Train Epoch: 4 [96000/104000 (92%)]\tLoss: 0.000000\n", "Train Epoch: 4 [96640/104000 (93%)]\tLoss: 0.000000\n", "Train Epoch: 4 [97280/104000 (94%)]\tLoss: 0.000000\n", "Train Epoch: 4 [97920/104000 (94%)]\tLoss: 0.000000\n", "Train Epoch: 4 [98560/104000 (95%)]\tLoss: 0.000000\n", "Train Epoch: 4 [99200/104000 (95%)]\tLoss: 0.000000\n", "Train Epoch: 4 [99840/104000 (96%)]\tLoss: 0.000000\n", "Train Epoch: 4 [100480/104000 (97%)]\tLoss: 0.000000\n", "Train Epoch: 4 [101120/104000 (97%)]\tLoss: 0.000000\n", "Train Epoch: 4 [101760/104000 (98%)]\tLoss: 0.000000\n", "Train Epoch: 4 [102400/104000 (98%)]\tLoss: 0.000000\n", "Train Epoch: 4 [103040/104000 (99%)]\tLoss: 0.000000\n", "Train Epoch: 4 [103680/104000 (100%)]\tLoss: 0.000000\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.4680, Accuracy: 26754/30000 (89%)\n", "\n", "Train Epoch: 5 [0/104000 (0%)]\tLoss: 0.000000\n", "Train Epoch: 5 [640/104000 (1%)]\tLoss: 0.000000\n", "Train Epoch: 5 [1280/104000 (1%)]\tLoss: 0.000000\n", "Train Epoch: 5 [1920/104000 (2%)]\tLoss: 0.000000\n", "Train Epoch: 5 [2560/104000 (2%)]\tLoss: 0.000000\n", "Train Epoch: 5 [3200/104000 (3%)]\tLoss: 0.000000\n", "Train Epoch: 5 [3840/104000 (4%)]\tLoss: 0.000000\n", "Train Epoch: 5 [4480/104000 (4%)]\tLoss: 0.000000\n", "Train Epoch: 5 [5120/104000 (5%)]\tLoss: 0.000000\n", "Train Epoch: 5 [5760/104000 (6%)]\tLoss: 0.000000\n", "Train Epoch: 5 [6400/104000 (6%)]\tLoss: 0.000000\n", "Train Epoch: 5 [7040/104000 (7%)]\tLoss: 0.000000\n", "Train Epoch: 5 [7680/104000 (7%)]\tLoss: 0.000033\n", "Train Epoch: 5 [8320/104000 (8%)]\tLoss: 0.000000\n", "Train Epoch: 5 [8960/104000 (9%)]\tLoss: 0.000000\n", "Train Epoch: 5 [9600/104000 (9%)]\tLoss: 0.000000\n", "Train Epoch: 5 [10240/104000 (10%)]\tLoss: 0.000000\n", "Train Epoch: 5 [10880/104000 (10%)]\tLoss: 0.000000\n", "Train Epoch: 5 [11520/104000 (11%)]\tLoss: 0.000000\n", "Train Epoch: 5 [12160/104000 (12%)]\tLoss: 0.000000\n", "Train Epoch: 5 [12800/104000 (12%)]\tLoss: 0.000000\n", "Train Epoch: 5 [13440/104000 (13%)]\tLoss: 0.000000\n", "Train Epoch: 5 [14080/104000 (14%)]\tLoss: 0.000000\n", "Train Epoch: 5 [14720/104000 (14%)]\tLoss: 0.000000\n", "Train Epoch: 5 [15360/104000 (15%)]\tLoss: 0.000000\n", "Train Epoch: 5 [16000/104000 (15%)]\tLoss: 0.000000\n", "Train Epoch: 5 [16640/104000 (16%)]\tLoss: 0.000000\n", "Train Epoch: 5 [17280/104000 (17%)]\tLoss: 0.000000\n", "Train Epoch: 5 [17920/104000 (17%)]\tLoss: 0.000000\n", "Train Epoch: 5 [18560/104000 (18%)]\tLoss: 0.000000\n", "Train Epoch: 5 [19200/104000 (18%)]\tLoss: 0.000000\n", "Train Epoch: 5 [19840/104000 (19%)]\tLoss: 0.000000\n", "Train Epoch: 5 [20480/104000 (20%)]\tLoss: 0.000000\n", "Train Epoch: 5 [21120/104000 (20%)]\tLoss: 0.000000\n", "Train Epoch: 5 [21760/104000 (21%)]\tLoss: 0.000000\n", "Train Epoch: 5 [22400/104000 (22%)]\tLoss: 0.000000\n", "Train Epoch: 5 [23040/104000 (22%)]\tLoss: 0.000000\n", "Train Epoch: 5 [23680/104000 (23%)]\tLoss: 0.000000\n", "Train Epoch: 5 [24320/104000 (23%)]\tLoss: 0.000000\n", "Train Epoch: 5 [24960/104000 (24%)]\tLoss: 0.000000\n", "Train Epoch: 5 [25600/104000 (25%)]\tLoss: 0.000000\n", "Train Epoch: 5 [26240/104000 (25%)]\tLoss: 0.000000\n", "Train Epoch: 5 [26880/104000 (26%)]\tLoss: 0.000000\n", "Train Epoch: 5 [27520/104000 (26%)]\tLoss: 0.000000\n", "Train Epoch: 5 [28160/104000 (27%)]\tLoss: 0.000000\n", "Train Epoch: 5 [28800/104000 (28%)]\tLoss: 0.000000\n", "Train Epoch: 5 [29440/104000 (28%)]\tLoss: 0.000000\n", "Train Epoch: 5 [30080/104000 (29%)]\tLoss: 0.000000\n", "Train Epoch: 5 [30720/104000 (30%)]\tLoss: 0.000000\n", "Train Epoch: 5 [31360/104000 (30%)]\tLoss: 0.000000\n", "Train Epoch: 5 [32000/104000 (31%)]\tLoss: 0.000000\n", "Train Epoch: 5 [32640/104000 (31%)]\tLoss: 0.000000\n", "Train Epoch: 5 [33280/104000 (32%)]\tLoss: 0.000000\n", "Train Epoch: 5 [33920/104000 (33%)]\tLoss: 0.000001\n", "Train Epoch: 5 [34560/104000 (33%)]\tLoss: 0.000000\n", "Train Epoch: 5 [35200/104000 (34%)]\tLoss: 0.000000\n", "Train Epoch: 5 [35840/104000 (34%)]\tLoss: 0.000000\n", "Train Epoch: 5 [36480/104000 (35%)]\tLoss: 0.000000\n", "Train Epoch: 5 [37120/104000 (36%)]\tLoss: 0.000000\n", "Train Epoch: 5 [37760/104000 (36%)]\tLoss: 0.000000\n", "Train Epoch: 5 [38400/104000 (37%)]\tLoss: 0.000000\n", "Train Epoch: 5 [39040/104000 (38%)]\tLoss: 0.000000\n", "Train Epoch: 5 [39680/104000 (38%)]\tLoss: 0.000000\n", "Train Epoch: 5 [40320/104000 (39%)]\tLoss: 0.000000\n", "Train Epoch: 5 [40960/104000 (39%)]\tLoss: 0.000000\n", "Train Epoch: 5 [41600/104000 (40%)]\tLoss: 0.000000\n", "Train Epoch: 5 [42240/104000 (41%)]\tLoss: 0.000000\n", "Train Epoch: 5 [42880/104000 (41%)]\tLoss: 0.000000\n", "Train Epoch: 5 [43520/104000 (42%)]\tLoss: 0.000000\n", "Train Epoch: 5 [44160/104000 (42%)]\tLoss: 0.000000\n", "Train Epoch: 5 [44800/104000 (43%)]\tLoss: 0.000000\n", "Train Epoch: 5 [45440/104000 (44%)]\tLoss: 0.000000\n", "Train Epoch: 5 [46080/104000 (44%)]\tLoss: 0.000000\n", "Train Epoch: 5 [46720/104000 (45%)]\tLoss: 0.000000\n", "Train Epoch: 5 [47360/104000 (46%)]\tLoss: 0.000000\n", "Train Epoch: 5 [48000/104000 (46%)]\tLoss: 0.000000\n", "Train Epoch: 5 [48640/104000 (47%)]\tLoss: 0.000000\n", "Train Epoch: 5 [49280/104000 (47%)]\tLoss: 0.000000\n", "Train Epoch: 5 [49920/104000 (48%)]\tLoss: 0.000000\n", "Train Epoch: 5 [50560/104000 (49%)]\tLoss: 0.000000\n", "Train Epoch: 5 [51200/104000 (49%)]\tLoss: 0.000000\n", "Train Epoch: 5 [51840/104000 (50%)]\tLoss: 0.000000\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Train Epoch: 5 [52480/104000 (50%)]\tLoss: 0.000000\n", "Train Epoch: 5 [53120/104000 (51%)]\tLoss: 0.000000\n", "Train Epoch: 5 [53760/104000 (52%)]\tLoss: 0.000000\n", "Train Epoch: 5 [54400/104000 (52%)]\tLoss: 0.000000\n", "Train Epoch: 5 [55040/104000 (53%)]\tLoss: 0.000000\n", "Train Epoch: 5 [55680/104000 (54%)]\tLoss: 0.000000\n", "Train Epoch: 5 [56320/104000 (54%)]\tLoss: 0.000000\n", "Train Epoch: 5 [56960/104000 (55%)]\tLoss: 0.000000\n", "Train Epoch: 5 [57600/104000 (55%)]\tLoss: 0.000000\n", "Train Epoch: 5 [58240/104000 (56%)]\tLoss: 0.000000\n", "Train Epoch: 5 [58880/104000 (57%)]\tLoss: 0.000000\n", "Train Epoch: 5 [59520/104000 (57%)]\tLoss: 0.000000\n", "Train Epoch: 5 [60160/104000 (58%)]\tLoss: 0.000000\n", "Train Epoch: 5 [60800/104000 (58%)]\tLoss: 0.000000\n", "Train Epoch: 5 [61440/104000 (59%)]\tLoss: 0.000000\n", "Train Epoch: 5 [62080/104000 (60%)]\tLoss: 0.000000\n", "Train Epoch: 5 [62720/104000 (60%)]\tLoss: 0.000000\n", "Train Epoch: 5 [63360/104000 (61%)]\tLoss: 0.000000\n", "Train Epoch: 5 [64000/104000 (62%)]\tLoss: 0.000000\n", "Train Epoch: 5 [64640/104000 (62%)]\tLoss: 0.000000\n", "Train Epoch: 5 [65280/104000 (63%)]\tLoss: 0.000000\n", "Train Epoch: 5 [65920/104000 (63%)]\tLoss: 0.000000\n", "Train Epoch: 5 [66560/104000 (64%)]\tLoss: 0.000000\n", "Train Epoch: 5 [67200/104000 (65%)]\tLoss: 0.000000\n", "Train Epoch: 5 [67840/104000 (65%)]\tLoss: 0.000000\n", "Train Epoch: 5 [68480/104000 (66%)]\tLoss: 0.000000\n", "Train Epoch: 5 [69120/104000 (66%)]\tLoss: 0.000000\n", "Train Epoch: 5 [69760/104000 (67%)]\tLoss: 0.000000\n", "Train Epoch: 5 [70400/104000 (68%)]\tLoss: 0.000000\n", "Train Epoch: 5 [71040/104000 (68%)]\tLoss: 0.000000\n", "Train Epoch: 5 [71680/104000 (69%)]\tLoss: 0.000000\n", "Train Epoch: 5 [72320/104000 (70%)]\tLoss: 0.000000\n", "Train Epoch: 5 [72960/104000 (70%)]\tLoss: 0.000000\n", "Train Epoch: 5 [73600/104000 (71%)]\tLoss: 0.000000\n", "Train Epoch: 5 [74240/104000 (71%)]\tLoss: 0.000000\n", "Train Epoch: 5 [74880/104000 (72%)]\tLoss: 0.000000\n", "Train Epoch: 5 [75520/104000 (73%)]\tLoss: 0.000000\n", "Train Epoch: 5 [76160/104000 (73%)]\tLoss: 0.000000\n", "Train Epoch: 5 [76800/104000 (74%)]\tLoss: 0.000000\n", "Train Epoch: 5 [77440/104000 (74%)]\tLoss: 0.000000\n", "Train Epoch: 5 [78080/104000 (75%)]\tLoss: 0.000000\n", "Train Epoch: 5 [78720/104000 (76%)]\tLoss: 0.000000\n", "Train Epoch: 5 [79360/104000 (76%)]\tLoss: 0.000000\n", "Train Epoch: 5 [80000/104000 (77%)]\tLoss: 0.000000\n", "Train Epoch: 5 [80640/104000 (78%)]\tLoss: 0.000000\n", "Train Epoch: 5 [81280/104000 (78%)]\tLoss: 0.000000\n", "Train Epoch: 5 [81920/104000 (79%)]\tLoss: 0.000000\n", "Train Epoch: 5 [82560/104000 (79%)]\tLoss: 0.000000\n", "Train Epoch: 5 [83200/104000 (80%)]\tLoss: 0.000000\n", "Train Epoch: 5 [83840/104000 (81%)]\tLoss: 0.000000\n", "Train Epoch: 5 [84480/104000 (81%)]\tLoss: 0.000000\n", "Train Epoch: 5 [85120/104000 (82%)]\tLoss: 0.000000\n", "Train Epoch: 5 [85760/104000 (82%)]\tLoss: 0.000000\n", "Train Epoch: 5 [86400/104000 (83%)]\tLoss: 0.000000\n", "Train Epoch: 5 [87040/104000 (84%)]\tLoss: 0.000000\n", "Train Epoch: 5 [87680/104000 (84%)]\tLoss: 0.000000\n", "Train Epoch: 5 [88320/104000 (85%)]\tLoss: 0.000000\n", "Train Epoch: 5 [88960/104000 (86%)]\tLoss: 0.000000\n", "Train Epoch: 5 [89600/104000 (86%)]\tLoss: 0.000000\n", "Train Epoch: 5 [90240/104000 (87%)]\tLoss: 0.000000\n", "Train Epoch: 5 [90880/104000 (87%)]\tLoss: 0.000000\n", "Train Epoch: 5 [91520/104000 (88%)]\tLoss: 0.000000\n", "Train Epoch: 5 [92160/104000 (89%)]\tLoss: 0.000000\n", "Train Epoch: 5 [92800/104000 (89%)]\tLoss: 0.000000\n", "Train Epoch: 5 [93440/104000 (90%)]\tLoss: 0.000000\n", "Train Epoch: 5 [94080/104000 (90%)]\tLoss: 0.000000\n", "Train Epoch: 5 [94720/104000 (91%)]\tLoss: 0.000000\n", "Train Epoch: 5 [95360/104000 (92%)]\tLoss: 0.000000\n", "Train Epoch: 5 [96000/104000 (92%)]\tLoss: 0.000000\n", "Train Epoch: 5 [96640/104000 (93%)]\tLoss: 0.000000\n", "Train Epoch: 5 [97280/104000 (94%)]\tLoss: 0.000000\n", "Train Epoch: 5 [97920/104000 (94%)]\tLoss: 0.000000\n", "Train Epoch: 5 [98560/104000 (95%)]\tLoss: 0.000000\n", "Train Epoch: 5 [99200/104000 (95%)]\tLoss: 0.000000\n", "Train Epoch: 5 [99840/104000 (96%)]\tLoss: 0.000000\n", "Train Epoch: 5 [100480/104000 (97%)]\tLoss: 0.000000\n", "Train Epoch: 5 [101120/104000 (97%)]\tLoss: 0.000000\n", "Train Epoch: 5 [101760/104000 (98%)]\tLoss: 0.000000\n", "Train Epoch: 5 [102400/104000 (98%)]\tLoss: 0.000000\n", "Train Epoch: 5 [103040/104000 (99%)]\tLoss: 0.000000\n", "Train Epoch: 5 [103680/104000 (100%)]\tLoss: 0.000000\n", "\n", "Test set: Average loss: 0.0000, Accuracy: 26000/26000 (100%)\n", "\n", "\n", "Critical set: Average loss: 0.7019, Accuracy: 25847/30000 (86%)\n", "\n", "[100.0, 100.0, 100.0, 100.0, 100.0]\n", "[88.56, 91.44666666666667, 90.16666666666667, 85.94, 86.15666666666667]\n" ] } ], "source": [ "import torch.nn.functional as F # implements forward and backward definitions of an autograd operation\n", "import torch.optim as optim # different update rules such as SGD, Nesterov-SGD, Adam, RMSProp, etc\n", "\n", "# load data\n", "train_loader, test_loader, critical_loader=load_data(cuda_kwargs)\n", "\n", "test_array=[]\n", "critical_array=[]\n", "\n", "# create array of depth of convolutional layer\n", "N_array=[1,5,10,20,50]\n", "\n", "# loop over depths\n", "for N in N_array:\n", " CNN = model(N=N)\n", " if args.cuda:\n", " CNN.cuda()\n", "\n", " # negative log-likelihood (nll) loss for training: takes class labels NOT one-hot vectors!\n", " criterion = F.nll_loss\n", " # define SGD optimizer\n", " optimizer = optim.SGD(CNN.parameters(), lr=args.lr, momentum=args.momentum)\n", " #optimizer = optim.Adam(DNN.parameters(), lr=0.001, betas=(0.9, 0.999))\n", "\n", " # train the CNN and test its performance at each epoch\n", " for epoch in range(1, args.epochs + 1):\n", " train(epoch)\n", " if epoch==args.epochs:\n", " test_array.append(test(test_loader,verbose='Test'))\n", " critical_array.append(test(critical_loader,verbose='Critical'))\n", " else:\n", " test(test_loader,verbose='Test')\n", " test(critical_loader,verbose='Critical')\n", " print(test_array)\n", " print(critical_array)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Plot Accuracy\n", "\n", "Let us now plot the accuracy of our calculation. Notice that even with a convolutional layer of depth 1 (one set of weights and a single bias!) we can get a 100% accuracy on the test set. We do less well on the critical data (somewhere between 80-90%) with lots of fluctuations from training run to training to run. Again, this shows you the incredible power and (some of the limitations) of all these ML methods. If the dataset we care about (critical region) is not exactly the dataset we train on, our accuracy can be significantly diminished." ] }, { "cell_type": "code", "execution_count": 7, "metadata": {}, "outputs": [ { "data": { "image/png": "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\n", "text/plain": [ "
" ] }, "metadata": { "needs_background": "light" }, "output_type": "display_data" } ], "source": [ "from matplotlib import pyplot as plt\n", "\n", "## Print the result for different N\n", "%matplotlib inline\n", "\n", "plt.plot(N_array, test_array, 'r-*', label=\"test\")\n", "plt.plot(N_array, critical_array, 'b-s', label=\"critical\")\n", "plt.ylim(60,110)\n", "plt.xlabel('Depth of hidden layer', fontsize=24)\n", "plt.xticks(N_array)\n", "plt.ylabel('Accuracy', fontsize=24)\n", "plt.legend(loc='best', fontsize=24)\n", "plt.tick_params(axis='both', which='major', labelsize=24)\n", "plt.tight_layout()\n", "plt.show()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Exercises\n", "\n", "* Do __Step 6__: modify the hyperparameters to optimize performance for the specific data set\n", "* The strides used above do not account for the periodic boundary conditions. Define your own stride function in PyTorch to incorporate periodic boundary conditions" ] }, { "cell_type": "code", "execution_count": null, "metadata": {}, "outputs": [], "source": [] } ], "metadata": { "anaconda-cloud": {}, "kernelspec": { "display_name": "Python mlreview", "language": "python", "name": "mlreview" }, "language_info": { "codemirror_mode": { "name": "ipython", "version": 3 }, "file_extension": ".py", "mimetype": "text/x-python", "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", "version": "3.6.6" } }, "nbformat": 4, "nbformat_minor": 1 }