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Hauptverfasser: Lin, Yusong, Liang, Xinyuan, Wang, Haiyang, Gu, Qipeng, Cheng, Siqi, Chen, Jiangui, Wu, Shuzhe, Pan, Feiyang, Fan, Lue, Zhao, Sanyuan, Tu, Dandan
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2605.26086
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author Lin, Yusong
Liang, Xinyuan
Wang, Haiyang
Gu, Qipeng
Cheng, Siqi
Chen, Jiangui
Wu, Shuzhe
Pan, Feiyang
Fan, Lue
Zhao, Sanyuan
Tu, Dandan
author_facet Lin, Yusong
Liang, Xinyuan
Wang, Haiyang
Gu, Qipeng
Cheng, Siqi
Chen, Jiangui
Wu, Shuzhe
Pan, Feiyang
Fan, Lue
Zhao, Sanyuan
Tu, Dandan
contents Large language model agents are increasingly envisioned as always-on personal assistants with access to anything relevant in the user's digital world. Yet current systems operate over only narrow slices of that world, limiting context-sensitive reasoning and effective assistance. Existing benchmarks similarly provide only partial user state and therefore fail to capture performance in such a broad, always-on setting. To address this gap, we introduce Claw-Anything, a benchmark that expands agent context along three dimensions: long-horizon activity histories, interdependent backend services, and integrated GUI and CLI interaction across multiple devices. To instantiate this setting, we simulate months of user activity through multi-round event injection, producing complex world states and realistic noise, including irrelevant events and conflicting signals. Agents must reason over rich contextual environments while remaining robust to such noise. This expanded scope also enables the evaluation of proactive assistance, requiring agents to anticipate user needs and deliver timely recommendations. Experiments show that GPT-5.5 achieves only 34.5% pass@1, substantially below prior benchmarks, underscoring a gap between current agent capabilities and the demands of always-on personal assistance. Alongside the benchmark, we release an automated data-generation pipeline that yields 2,000 training environments and improves the base model by 23.7%, demonstrating its utility of scalable data infrastructure.
format Preprint
id arxiv_https___arxiv_org_abs_2605_26086
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Claw-Anything: Benchmarking Always-On Personal Assistants with Broader Access to User's Digital World
Lin, Yusong
Liang, Xinyuan
Wang, Haiyang
Gu, Qipeng
Cheng, Siqi
Chen, Jiangui
Wu, Shuzhe
Pan, Feiyang
Fan, Lue
Zhao, Sanyuan
Tu, Dandan
Artificial Intelligence
Large language model agents are increasingly envisioned as always-on personal assistants with access to anything relevant in the user's digital world. Yet current systems operate over only narrow slices of that world, limiting context-sensitive reasoning and effective assistance. Existing benchmarks similarly provide only partial user state and therefore fail to capture performance in such a broad, always-on setting. To address this gap, we introduce Claw-Anything, a benchmark that expands agent context along three dimensions: long-horizon activity histories, interdependent backend services, and integrated GUI and CLI interaction across multiple devices. To instantiate this setting, we simulate months of user activity through multi-round event injection, producing complex world states and realistic noise, including irrelevant events and conflicting signals. Agents must reason over rich contextual environments while remaining robust to such noise. This expanded scope also enables the evaluation of proactive assistance, requiring agents to anticipate user needs and deliver timely recommendations. Experiments show that GPT-5.5 achieves only 34.5% pass@1, substantially below prior benchmarks, underscoring a gap between current agent capabilities and the demands of always-on personal assistance. Alongside the benchmark, we release an automated data-generation pipeline that yields 2,000 training environments and improves the base model by 23.7%, demonstrating its utility of scalable data infrastructure.
title Claw-Anything: Benchmarking Always-On Personal Assistants with Broader Access to User's Digital World
topic Artificial Intelligence
url https://arxiv.org/abs/2605.26086