yjavaherian / deepmind-x-ucl-rl
lecture slides for Deepmind x UCL 2021 reinforcement learning course available in YouTbue
☆46Updated last year
Alternatives and similar repositories for deepmind-x-ucl-rl
Users that are interested in deepmind-x-ucl-rl are comparing it to the libraries listed below
Sorting:
- Material for the "Probabilistic Machine Learning" Course at the University of Tübingen, Summer Term 2023☆155Updated last year
- Python & Matlab code for the figures from the book "Learning Theory from First Principles" by Francis Bach☆103Updated last year
- Assignments for Berkeley CS 285: Deep Reinforcement Learning (Fall 2022)☆124Updated last year
- ☆49Updated last year
- 🦍 Stanford CS236 : Deep Generative Models☆134Updated 6 years ago
- Ying Nian Wu's UCLA Statistical Machine Learning Tutorial on generative modeling.☆59Updated 2 years ago
- ☆224Updated 2 years ago
- List of startups doing AI & ML☆270Updated 5 months ago
- Repository for my Big Data Optimization course☆34Updated 4 years ago
- NUS CS5242 Neural Networks and Deep Learning, Xavier Bresson, 2025☆376Updated 3 weeks ago
- A Tutorial for Diffusion Models☆51Updated last year
- A collection of awesome mathematics and computer science courses☆121Updated 4 months ago
- ☆145Updated this week
- a fork of https://jonbarron.info/ for use in jekyll builds with markdown page updates☆310Updated last year
- ☆213Updated 5 months ago
- Stanford CS234 : Reinforcement Learning☆145Updated 5 years ago
- ☆30Updated 3 months ago
- Tutorial on amortized optimization for learning to optimize over continuous domains☆241Updated 2 months ago
- Stanford CS234: Reinforcement Learning assignments and practices☆49Updated 9 months ago
- My solutions to DLFC - Deep Learning: Foundations and Concepts☆75Updated last month
- Code for the book "Mathematical Introduction to Deep Learning: Methods, Implementations, and Theory"☆141Updated last year
- ☆47Updated 2 months ago
- A curated list of fellowships for graduate students in Computer Science and related fields.☆59Updated 4 months ago
- Berkeley CS182/282A Designing, Visualizing and Understanding Deep Neural Networks☆85Updated 2 years ago
- 🌀 Stanford CS 228 - Probabilistic Graphical Models☆86Updated 6 years ago
- Lecture slides for the MARL book (www.marl-book.com)☆93Updated last month
- Repository for my convex optimization course.☆53Updated 4 years ago
- 🌲 Stanford CS 228 - Probabilistic Graphical Models☆130Updated 8 months ago
- Solutions to Sutton and Barto book exercises☆76Updated last year
- Labs for MIT 6.S184/6.S975, IAP 2025☆72Updated last week