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How to fine-tune an LLM for open-ended problems? [P]

/u/TechNerd10191 2026年05月30日 22:42 3 次阅读 来源:Reddit r/MachineLearning

I want to develop an LLM that can solve open-ended math problems (such as proof-only problems). This means that RLVR where we use the final answer alone as reward signal is not enough. Since SFT is useless here and GRPO/PPO methods will not have an appropriate reward function, what kind of fine-tuning can I do? For data, I will use the MathNet dataset. submitted by /u/TechNerd10191 [link] [留言]

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