The content discusses the introduction of Uni-RLHF, a system tailored for reinforcement learning with diverse human feedback. It covers the challenges in RLHF, the need for standardized annotation platforms and benchmarks, and the development of Uni-RLHF to bridge these gaps. The system includes a universal multi-feedback annotation platform, large-scale crowdsourced feedback datasets, and modular offline RLHF baselines. Experiments demonstrate competitive performance compared to manual rewards.
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arxiv.org
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