AICYMay 4

AcademiClaw: When Students Set Challenges for AI Agents

arXiv:2605.0266198.7Has Code
Predicted impact top 3% in AI · last 90 daysOriginality Incremental advance
AI Analysis

Provides a challenging benchmark for evaluating AI agents on real-world academic workflows, addressing the gap in assistant-level benchmarks for the OpenClaw ecosystem.

AcademiClaw introduces a bilingual benchmark of 80 complex, long-horizon academic tasks sourced from university students, finding that even the best frontier model achieves only a 55% pass rate, revealing sharp capability boundaries and behavioral differences among models.

Benchmarks within the OpenClaw ecosystem have thus far evaluated exclusively assistant-level tasks, leaving the academic-level capabilities of OpenClaw largely unexamined. We introduce AcademiClaw, a bilingual benchmark of 80 complex, long-horizon tasks sourced directly from university students' real academic workflows -- homework, research projects, competitions, and personal projects -- that they found current AI agents unable to solve effectively. Curated from 230 student-submitted candidates through rigorous expert review, the final task set spans 25+ professional domains, ranging from olympiad-level mathematics and linguistics problems to GPU-intensive reinforcement learning and full-stack system debugging, with 16 tasks requiring CUDA GPU execution. Each task executes in an isolated Docker sandbox and is scored on task completion by multi-dimensional rubrics combining six complementary techniques, with an independent five-category safety audit providing additional behavioral analysis. Experiments on six frontier models show that even the best achieves only a 55\% pass rate. Further analysis uncovers sharp capability boundaries across task domains, divergent behavioral strategies among models, and a disconnect between token consumption and output quality, providing fine-grained diagnostic signals beyond what aggregate metrics reveal. We hope that AcademiClaw and its open-sourced data and code can serve as a useful resource for the OpenClaw community, driving progress toward agents that are more capable and versatile across the full breadth of real-world academic demands. All data and code are available at https://github.com/GAIR-NLP/AcademiClaw.

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