AICLCVHCJul 25, 2025

OS-MAP: How Far Can Computer-Using Agents Go in Breadth and Depth?

arXiv:2507.19132v14 citationsh-index: 18Has Code
Originality Incremental advance
AI Analysis

This addresses the need for better benchmarks to guide research and deployment of computer-using agents, though it is incremental as it builds on existing evaluation frameworks.

The authors tackled the problem of evaluating computer-using agents by introducing OS-MAP, a benchmark with 416 realistic tasks across 15 applications, which revealed that state-of-the-art agents struggle with higher-level tasks involving perception, reasoning, and coordination.

Computer-using agents have shown strong potential to boost human productivity and enable new application forms across platforms. While recent advances have led to usable applications, existing benchmarks fail to account for the internal task heterogeneity and the corresponding agent capabilities, as well as their alignment with actual user demands-hindering both targeted capability development and the reliable transition of research progress into practical deployment. To bridge the gap, we present OS-MAP, a benchmark for daily computer-using automation that organizes its 416 realistic tasks across 15 applications along two key dimensions: a five-level taxonomy of automation and a generalization scope derived from a real-world user demand hierarchy. To enable fine-grained analysis of required capabilities and alignment with real-world scenarios, OS-MAP evaluates agents along two dimensions: automation level across a five-level taxonomy, and generalization scope across a demand hierarchy. This design captures varying levels of required agent autonomy and generalization, forming a performance-generalization evaluation matrix for structured and comprehensive assessment. Experiments show that even State-of-the-Art agents with VLM backbones struggle with higher-level tasks involving perception, reasoning, and coordination-highlighting the need for a deeper understanding of current strengths and limitations to drive the future progress in computer-using agents research and deployment. All code, environments, baselines, and data are publicly available at https://github.com/OS-Copilot/OS-Map.

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