AI RESEARCH
Learning to Orchestrate Agents under Uncertainty
arXiv CS.LG
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ArXi:2605.27073v1 Announce Type: new Adaptive orchestration of heterogeneous agents requires making sequential delegation decisions under uncertain and evolving agent behaviour, e.g., coordinating specialised AI models with varying reliability, cost, and response quality. While prior work on agent orchestration focuses on performance or cost, uncertainty in agent reliability and output distributions is typically not modelled explicitly at the orchestration level.