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Main Authors: Lin, Chunru, Zhang, Hongxin, Yu, Fenghao, Chen, Zhehuan, Griffiths, Thomas L., Choi, Yejin, Held, David, Gan, Chuang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.30326
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author Lin, Chunru
Zhang, Hongxin
Yu, Fenghao
Chen, Zhehuan
Griffiths, Thomas L.
Choi, Yejin
Held, David
Gan, Chuang
author_facet Lin, Chunru
Zhang, Hongxin
Yu, Fenghao
Chen, Zhehuan
Griffiths, Thomas L.
Choi, Yejin
Held, David
Gan, Chuang
contents The ability to reason, adapt, and creatively solve problems under unexpected challenges is essential for robots operating in real-world environments. However, current robotic benchmarks primarily emphasize skill-level execution and provide limited insight into such cognitive reasoning capabilities. We introduce RoboWits, a bi-manual robotic benchmark designed to systematically evaluate cognitive reasoning, creative tool use, and robustness to unexpected conditions. To enable scalable construction of high-quality reasoning-centric unexpected scenarios, we propose an automated task generation pipeline formulated as a multi-agent cooperative framework, comprising agents for seed task generation and verification, metric generation, scene generation, and task mutation. Using the pipeline, we curated 30 diverse seed tasks and 208 tasks with mutations and graded difficulty across geometry, material, and assembly-based reasoning. We benchmark popular robot policies, pre-trained VLAs, and oracle-state planners. Our results reveal a significant performance gap: while pre-trained VLAs exhibit preliminary success on seed tasks after single-task fine-tuning, they struggle to perform on mutated tasks, implying their brittleness in manipulation tasks requiring reasoning, strategy adaptation, and robustness to deceptive or constrained environments. Project page is available at https://umass-embodied-agi.github.io/RoboWits.
format Preprint
id arxiv_https___arxiv_org_abs_2605_30326
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle RoboWits: Unexpected Challenges for Robotic Creative Problem Solving
Lin, Chunru
Zhang, Hongxin
Yu, Fenghao
Chen, Zhehuan
Griffiths, Thomas L.
Choi, Yejin
Held, David
Gan, Chuang
Robotics
Artificial Intelligence
The ability to reason, adapt, and creatively solve problems under unexpected challenges is essential for robots operating in real-world environments. However, current robotic benchmarks primarily emphasize skill-level execution and provide limited insight into such cognitive reasoning capabilities. We introduce RoboWits, a bi-manual robotic benchmark designed to systematically evaluate cognitive reasoning, creative tool use, and robustness to unexpected conditions. To enable scalable construction of high-quality reasoning-centric unexpected scenarios, we propose an automated task generation pipeline formulated as a multi-agent cooperative framework, comprising agents for seed task generation and verification, metric generation, scene generation, and task mutation. Using the pipeline, we curated 30 diverse seed tasks and 208 tasks with mutations and graded difficulty across geometry, material, and assembly-based reasoning. We benchmark popular robot policies, pre-trained VLAs, and oracle-state planners. Our results reveal a significant performance gap: while pre-trained VLAs exhibit preliminary success on seed tasks after single-task fine-tuning, they struggle to perform on mutated tasks, implying their brittleness in manipulation tasks requiring reasoning, strategy adaptation, and robustness to deceptive or constrained environments. Project page is available at https://umass-embodied-agi.github.io/RoboWits.
title RoboWits: Unexpected Challenges for Robotic Creative Problem Solving
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2605.30326