Miles: An Open-Source PyTorch-Native Framework for Large-Scale LLM RL Post-Training
Miles is RadixArk’s open source framework for large-scale LLM RL post-training. It composes SGLang for rollout, NVIDIA Megatron-LM for training, Ray orchestration, and PyTorch-native extensibility…
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