Skip to content

This repository contains code for all the assignments completed as a part of the course CS7015 Deep Learning at IIT Madras during the Jan-May semester of 2019 and some other useful material.

Notifications You must be signed in to change notification settings

Sonaliam/CS7015_2019

 
 

Repository files navigation

CS7015 || Deep learning || IIT Madras

This repository contains the assignments completed as part of a brilliant introductory course taught by Prof. Mitesh Khapra on Deep learning during the January - May 2019 semester.

Contents

Assignment1: A theoretical assignment which serves as a refresher for Calculus.
Assignment2: A theoretical assignment which serves as a refresher for Linear Algebra.
Assignment3: A programming assignment to implement a feedforward neural network, backpropagation and gradient descent (and its variants) in NumPy without any deep learning frameworks.
Assignment4: A programming assignment to train CNNs for image classification.
Assignment5: A programming assignment to train a sequence to sequence model for transliteration.
Assignment6: A programming assignment to train RBMs and to study abstraction and generation using the same. environment.yml: A .yml file to setup the environment I used to run all the Python code. Most networks were trained in this environment on my GTX 1060 GPU. The tensorflow-gpu and Nvidia driver versions were chosen accordingly. Details of how to use this file are given below.

Setting up the conda environment

All code is written in Python (and functional in version 3.6.8) and uses the libraries listed in environment.yml. This assumes that you have miniconda installed. If you do not, get it here.

Create a conda environment in which all the code can be run using the following command in the terminal:

conda env create -f environment.yml

This will create an environment named deep_learning (name can be changed by changing the value of "name" in the environment.yml file). Activate the environment using

conda activate deep_learning

and run the desired script as described.

About

This repository contains code for all the assignments completed as a part of the course CS7015 Deep Learning at IIT Madras during the Jan-May semester of 2019 and some other useful material.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 87.8%
  • Python 9.5%
  • TeX 2.6%
  • Shell 0.1%