OpenDILab Decision AI Engine. The Most Comprehensive Reinforcement Learning Framework B.P.
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Updated
Dec 5, 2024 - Python
OpenDILab Decision AI Engine. The Most Comprehensive Reinforcement Learning Framework B.P.
A modular, primitive-first, python-first PyTorch library for Reinforcement Learning.
Library for Model Based RL
A curated list of awesome model based RL resources (continually updated)
Code to reproduce the experiments in Sample Efficient Reinforcement Learning via Model-Ensemble Exploration and Exploitation (MEEE).
Personal notes about scientific and research works on "Decision-Making for Autonomous Driving"
DI-engine docs (Chinese and English)
Unofficial Pytorch code for "Deep Reinforcement Learning in a Handful of Trials using Probabilistic Dynamics Models"
Unofficial Implementation of the paper "Data-Efficient Reinforcement Learning with Probabilistic Model Predictive Control", applied to gym environments
Model-based Reinforcement Learning Framework
(Experimental, a lot of bugs) Automatic fingering generator for piano scores, determining optimal fingering using Model-Based Reinforcement Learning, written in the Julia language.
Code release for Efficient Planning in a Compact Latent Action Space (ICLR2023) https://arxiv.org/abs/2208.10291.
A curated list of awesome Model-based reinforcement learning resources
Deep active inference agents using Monte-Carlo methods
Latent Imagination Facilitates Zero-Shot Transfer in Autonomous Racing
Official repository for "iVideoGPT: Interactive VideoGPTs are Scalable World Models" (NeurIPS 2024), https://arxiv.org/abs/2405.15223
Code for "World Model as a Graph: Learning Latent Landmarks for Planning" (ICML 2021 Long Presentation)
Recall to Imagine, a model-based RL algorithm with superhuman memory. Oral (1.2%) @ ICLR 2024
Adaptable tools to make reinforcement learning and evolutionary computation algorithms.
Model-based reinforcement learning in TensorFlow
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