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dphi-official / Deep_learning_bootcamp

All the learning material for deep learning bootcamp can be found in this repository

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Deep_Learning_Bootcamp

All the notebooks for DPhi Deep Learning Bootcamp can be found in this repository

Contents

Day Description Slides Notebook
1 Introduction to Deep Learning - -
2 Introduction to Neural Networks - -
3 Tensor Operations - Link
4 Neural Networks for Regression - Link
5 Working of Neural Network - -
6 & 7 Binary Classification - Link
8 Activation Functions, Optimizers & Multi-Class Classification - Link
9 Optimizing a Neural Networks - Part 1 - -
10 Optimizing Training of Neural Networks - Link
11 Optimizing a Neural Networks - Part 2 - Link
12 Computer Vision and OpenCV - Link
13 CNN Essentials - Link
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