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Open-AgentRL
#838 of 964 in the AI Agent Index
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About
RLAnything: Forge Environment, Policy, and Reward Model in Completely Dynamic RL System
An overview of our research on RLAnything.
In this work, we propose RLAnything, a reinforcement learning framework that dynamically optimizes each component through closed-loop optimization, amplifying learning signals and strengthening the overall system:
An overview of our research on agentic RL.
In this work, we systematically investigate three dimensions of agentic RL: data, algorithms, and reasoning modes. Our findings reveal:
We also contribute high-quality SFT and RL datasets, demonstrating that simple recipes enable even 4B models to outperform 32B models on challenging benchmarks including…
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