Skip to content

laurahanu/Deep-Learning-Resources

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

4 Commits
 
 
 
 
 
 

Repository files navigation

ML-Resources

ML icon

Deep Learning Resources

Motivation

The aim of this project is to provide a curated list of high-quality Deep Learning Resources that I have found valuable and insightful. These are organised into separate sections that can be seen in the Table of Contents below.

Table of Contents
  1. Deep Learning Theory
  2. Computer vision
  3. Unsupervised learning
  4. Data Augmentation
  5. Lectures & Tutorials
  6. Explainable AI
  7. Python & DL Cheatsheets
  8. Cool DL examples & repos
  9. AI newsletters & blogs

First, a quick catch-up into the State of the Art in Deep learning 2019:

Loss gif

Loss landscape

This section will provide useful links for an introduction into core Deep learning concepts from begginer to advanced level.

This section includes useful Github repositories to get going in training Computer vision algorithms.

This section consists in a list of data augmentation packages that can be used for model training for a more robust and generalizable model.

This section includes livestreams of TOP AI conferences or DL tutorials.

This section has a selection of python packages that try to make DL model outcomes more explainable.

This section includes some cool models, tricks and miscellaneous DL Github repos.

This section includes some newsletters and personal blogs I have found interesting and worth reading.