ARTIST couples agentic reasoning with outcome-based reinforcement learning to let LLMs autonomously invoke tools in multi-turn chains, reporting up to 22% gains on math and function-calling benchmarks.
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Agentic Reasoning and Tool Integration for LLMs via Reinforcement Learning
ARTIST couples agentic reasoning with outcome-based reinforcement learning to let LLMs autonomously invoke tools in multi-turn chains, reporting up to 22% gains on math and function-calling benchmarks.