😎 Awesome AI Tutorials
Welcome to this AWESOME repository of AI Tutorials! I am a Research Scientist at Meta and I have created this repository to share my learnings with the community.
If you are looking for an all-in-one place to learn about the latest trends in AI with high quality explanations/code, you are in the right place!
This repository contains a series of tutorials on various topics in AI, from Computer Vision to Natural Language Processing, Reinforcement Learning, Uncertainty Prediction, MLOps, Cloud Computing and more.
You can find a list of my articles on Medium.
📚 Content
📷 Computer Vision
🖼️ Image Segmentation
Cooking your first Unet
V-Net, U-Net’s big brother in Image Segmentation
The Ultimate guide to nnU-Net for State Of the Art Image Segmentation, [Github]
Entropy-Based Uncertainty in Image Segmentation [Github]
Vision Transformers (ViT)
The Ultimate Guide to Vision Transformers
How to Train a Vision Transformer (ViT) from scratch?
The Ultimate Guide to Masked Autoencoders (MAE)
How to Implement State-of-the-Art Masked AutoEncoders (MAE)?
🎯 Object Detection
📖 Natural Language Processing (NLP)
📚 Reinforcement Learning
k-arms bandit: A Comprehensive Guide on both stationary and non-stationary problems
Thompson Sampling
📊 Bayesian Deep Learning
⚡ Efficient Deep Learning
☁️ Cloud Computing
s
🔧 MLOps
🔮 Uncertainty Estimation
Representation Learning
t-SNE: A Comprehensive Guide
👨💻 About the Author
Hey! My name is François, I am a A.I Research Scientist at Meta. Previously I was also doing research in Computer vision and LLMs at Stanford University and Cambridge University.
Being very curious and constantly learning, I have a very broad range of interests. I also like to break down the most complex topics into the tiniest bits and explain them in a simple way.
This is why I decided to distill all this knowledge into a series of articles/tutorials that I hope you will find useful.
Enjoy! 🤗