pytorch-DRL: Pytorch-madrl provides modular PyTorch implementations for a range of Deep Reinforcement Learning (DRL) algorithms, suitable for both single and multi-agent systems. It features a unified agent interface with components for environment interaction, training, and action selection to promote code reusability across different DRL methods.; rllm: rLLM is an open-source framework designed for post-training language agents using reinforcement learning. It allows users to easily build, train, and deploy custom agents and environments for real-world workloads.
Developing and experimenting with various deep reinforcement learning algorithms
Training powerful coding models for tasks like code generation and bug fixing.