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Cut the Bill, Keep the Turns
Cost-efficient multi-turn search with reinforcement learning
Read the full write-up
Notion blog post with details
This project explores reducing API costs while maintaining quality in multi-turn search agents. It uses rLLM to train agents that achieve comparable performance with fewer and shorter LLM calls.
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