reinforcement_learning_course_materials
ml-course
reinforcement_learning_course_materials | ml-course | |
---|---|---|
1 | 8 | |
902 | 2,054 | |
0.4% | 1.9% | |
8.3 | 2.4 | |
11 days ago | 1 day ago | |
Jupyter Notebook | Jupyter Notebook | |
MIT License | MIT License |
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reinforcement_learning_course_materials
ml-course
What are some alternatives?
ML-Prediction-LoL - In this project I implemented two machine learning algorithms to predicts the outcome of a League of Legends game.
pytorch-implementations - A collection of paper implementations using the PyTorch framework
learn-monogame.github.io - Documentation to learn MonoGame from the ground up.
IJCAI2023-CoNR - IJCAI2023 - Collaborative Neural Rendering using Anime Character Sheets
BestPractices - Things that you should (and should not) do in your Materials Informatics research.
Subway-Station-Hazard-Detection - This project is part of the CS course 'Systems Engineering Meets Life Sciences II' at Goethe University Frankfurt. In this Computer Vision project, we developed a first prototype of a security system which uses the surveillance cameras at subway stations to recognize dangerous situations. The training data was artificially generated by a Unity-based simulation.
human-memory - Course materials for Dartmouth course: Human Memory (PSYC 51.09)
TabularSemanticParsing - Translating natural language questions to a structured query language
LlamaIndex-course - Learn to build and deploy AI apps.
Deep-Learning-Computer-Vision - My assignment solutions for Stanford’s CS231n (CNNs for Visual Recognition) and Michigan’s EECS 498-007/598-005 (Deep Learning for Computer Vision), version 2020.
get-started-with-JAX - The purpose of this repo is to make it easy to get started with JAX, Flax, and Haiku. It contains my "Machine Learning with JAX" series of tutorials (YouTube videos and Jupyter Notebooks) as well as the content I found useful while learning about the JAX ecosystem.
Made-With-ML - Learn how to design, develop, deploy and iterate on production-grade ML applications.