Papers
arxiv:2602.11865

Intelligent AI Delegation

Published on Feb 12
· Submitted by
taesiri
on Feb 16
Authors:
,
,

Abstract

AI agents require adaptive frameworks for task decomposition and delegation that can dynamically respond to environmental changes and handle unexpected failures through structured authority transfer and trust mechanisms.

AI-generated summary

AI agents are able to tackle increasingly complex tasks. To achieve more ambitious goals, AI agents need to be able to meaningfully decompose problems into manageable sub-components, and safely delegate their completion across to other AI agents and humans alike. Yet, existing task decomposition and delegation methods rely on simple heuristics, and are not able to dynamically adapt to environmental changes and robustly handle unexpected failures. Here we propose an adaptive framework for intelligent AI delegation - a sequence of decisions involving task allocation, that also incorporates transfer of authority, responsibility, accountability, clear specifications regarding roles and boundaries, clarity of intent, and mechanisms for establishing trust between the two (or more) parties. The proposed framework is applicable to both human and AI delegators and delegatees in complex delegation networks, aiming to inform the development of protocols in the emerging agentic web.

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