Learning GenAI via SOTA Papers
Title: Learning to Hand Off: Provably Convergent Workflow Learning under Interface Constraints Source: http://arxiv.org/abs/2605.19140v1Summary: This research provides the first finite-sample guarantee for neural Q-learning in decentralized multi-agent settings, a foundational breakthrough for reliable agentic workflow learning. By formalizing handoffs as interface-constrained SMDPs, it enables provably convergent learning in complex LLM pipelines where agents have restricted observability.
245 jaksot
Kommentit
0Ole ensimmäinen kommentoija
Rekisteröidy nyt ja liity Learning GenAI via SOTA Papers-yhteisöön!