2626 " <td align=\" center\" ><a target=\" _blank\" href=\" http://introtodeeplearning.com\" >\n " ,
2727 " <img src=\" https://i.ibb.co/Jr88sn2/mit.png\" style=\" padding-bottom:5px;\" />\n " ,
2828 " Visit MIT Deep Learning</a></td>\n " ,
29- " <td align=\" center\" ><a target=\" _blank\" href=\" https://colab.research.google.com/github/aamini/introtodeeplearning/blob/master /lab2/Part1_MNIST.ipynb\" >\n " ,
29+ " <td align=\" center\" ><a target=\" _blank\" href=\" https://colab.research.google.com/github/aamini/introtodeeplearning/blob/2023 /lab2/Part1_MNIST.ipynb\" >\n " ,
3030 " <img src=\" https://i.ibb.co/2P3SLwK/colab.png\" style=\" padding-bottom:5px;\" />Run in Google Colab</a></td>\n " ,
31- " <td align=\" center\" ><a target=\" _blank\" href=\" https://github.com/aamini/introtodeeplearning/blob/master /lab2/Part1_MNIST.ipynb\" >\n " ,
31+ " <td align=\" center\" ><a target=\" _blank\" href=\" https://github.com/aamini/introtodeeplearning/blob/2023 /lab2/Part1_MNIST.ipynb\" >\n " ,
3232 " <img src=\" https://i.ibb.co/xfJbPmL/github.png\" height=\" 70px\" style=\" padding-bottom:5px;\" />View Source on GitHub</a></td>\n " ,
3333 " </table>\n " ,
3434 " \n " ,
4141 "id" : " gKA_J7bdP33T"
4242 },
4343 "source" : [
44- " # Copyright 2022 MIT 6.S191 Introduction to Deep Learning. All Rights Reserved.\n " ,
44+ " # Copyright 2023 MIT Introduction to Deep Learning. All Rights Reserved.\n " ,
4545 " # \n " ,
4646 " # Licensed under the MIT License. You may not use this file except in compliance\n " ,
47- " # with the License. Use and/or modification of this code outside of 6.S191 must \n " ,
48- " # reference:\n " ,
47+ " # with the License. Use and/or modification of this code outside of MIT Introduction \n " ,
48+ " # to Deep Learning must reference:\n " ,
4949 " #\n " ,
50- " # © MIT 6.S191: Introduction to Deep Learning\n " ,
50+ " # © MIT Introduction to Deep Learning\n " ,
5151 " # http://introtodeeplearning.com\n " ,
5252 " #"
5353 ],
674674 " logits = # TODO\n " ,
675675 " \n " ,
676676 " #'''TODO: compute the categorical cross entropy loss\n " ,
677- " loss_value = tf.keras.backend.sparse_categorical_crossentropy() # TODO\n " ,
677+ " loss_value = tf.keras.backend.sparse_categorical_crossentropy('''TODO''', '''TODO''' ) # TODO\n " ,
678678 " \n " ,
679679 " loss_history.append(loss_value.numpy().mean()) # append the loss to the loss_history record\n " ,
680680 " plotter.plot(loss_history.get())\n " ,
699699 ]
700700 }
701701 ]
702- }
702+ }
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