AI Odyssey

The Agent Question Nobody Asked: When Should AI Interrupt You?

18 min · 14. touko 2026
jakson The Agent Question Nobody Asked: When Should AI Interrupt You? kansikuva

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Most people assume an AI agent should ask for clarification as early as possible. This paper shows that the truth is more subtle. For long-horizon agents — AI systems that execute many steps over time — the value of a clarification depends on what is missing : goal, input, constraint, or context. Some answers lose value almost immediately. Others remain useful much later. For enterprises, this is not a UX detail. It is a governance problem : when should an agent stop, ask, and avoid compounding a bad assumption? Inspired by the work of Anmol Gulati, Hariom Gupta, Elias Lumer, Sahil Sen, and Vamse Kumar Subbiah, this episode was created using Google's NotebookLM. Read the original paper here : https://arxiv.org/abs/2605.07937v1 [https://arxiv.org/abs/2605.07937v1]

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