Saved in:
Bibliographic Details
Main Authors: Cheng, Liang, Cai, Mingsheng, Jiang, Jiuming, Mai, Luo
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.28532
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913168257712128
author Cheng, Liang
Cai, Mingsheng
Jiang, Jiuming
Mai, Luo
author_facet Cheng, Liang
Cai, Mingsheng
Jiang, Jiuming
Mai, Luo
contents Tool-using agents often incur substantial computational cost due to long reasoning chains and iterative tool usage. In practical scenarios, many tasks become infeasible under constrained tool environments, where the capabilities required for successful task completion are unavailable. Detecting infeasible tasks and stopping execution early can significantly reduce unnecessary execution cost. In this work, we propose FeasiGen, an automatic pipeline for constructing infeasible agent tasks by identifying the critical tools required for successful task completion. Our approach extracts tool-calling traces from successful executions across multiple agent systems, identifies critical tools consistently shared across diverse execution strategies, and masks these tools to automatically transform solvable tasks into infeasible ones. Human verification confirms that the infeasibility annotations for our constructed tasks achieve over 94% accuracy. We further introduce feasibility-aware evaluation metrics for measuring whether agents can recognize infeasible tasks and stop execution appropriately. Extensive evaluations across nine models reveal substantially weak infeasibility detection ability, with false continue rate reaching up to 73.9%. We further observe that multi-agent architectures significantly reduce erroneous execution under infeasible conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2605_28532
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Do Agents Know What They Can't Do? Evaluating Feasibility Awareness in Tool-Using Agents
Cheng, Liang
Cai, Mingsheng
Jiang, Jiuming
Mai, Luo
Artificial Intelligence
Tool-using agents often incur substantial computational cost due to long reasoning chains and iterative tool usage. In practical scenarios, many tasks become infeasible under constrained tool environments, where the capabilities required for successful task completion are unavailable. Detecting infeasible tasks and stopping execution early can significantly reduce unnecessary execution cost. In this work, we propose FeasiGen, an automatic pipeline for constructing infeasible agent tasks by identifying the critical tools required for successful task completion. Our approach extracts tool-calling traces from successful executions across multiple agent systems, identifies critical tools consistently shared across diverse execution strategies, and masks these tools to automatically transform solvable tasks into infeasible ones. Human verification confirms that the infeasibility annotations for our constructed tasks achieve over 94% accuracy. We further introduce feasibility-aware evaluation metrics for measuring whether agents can recognize infeasible tasks and stop execution appropriately. Extensive evaluations across nine models reveal substantially weak infeasibility detection ability, with false continue rate reaching up to 73.9%. We further observe that multi-agent architectures significantly reduce erroneous execution under infeasible conditions.
title Do Agents Know What They Can't Do? Evaluating Feasibility Awareness in Tool-Using Agents
topic Artificial Intelligence
url https://arxiv.org/abs/2605.28532