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Avijit Ghosh, Anka Reuel, Jenny Chim, Wm. Matthew Kennedy, Srishti Yadav, Jennifer Mickel, Yanan Long, Andrew Tran, Anastassia Kornilova, Damian Stachura, Kevin Klyman, Felix Friedrich, Jeba Sania, Max Lamparth, Jan Batzner, Anoop Mishra, Eliya Habba, Yixiong Hao, Nathan Heath, Shalaleh Rismani, Usman Gohar, Andrea Loehr, David Manheim, Ruchira Dhar, Sree Harsha Nelaturu, Aarush Sinha, Leshem Choshen, Drishti Sharma, Ishan Khire, Amit Saha, Subramanyam Sahoo, Michael Hardy, Michael Alexander Riegler, Kabir Manghnani, Michelle Lin, Yanan Jiang, Yilin Huang, Asaf Yehudai, Jessica Ji, Aris Hofmann, Mubashara Akhtar, Nuno Moniz, Yacine Jernite, Stella Biderman, Zeerak Talat, Sanmi Koyejo, Mykel Kochenderfer, Irene Solaiman
AI evaluation results are produced at scale but reported inconsistently across leaderboards, model cards, benchmark papers, and company blogs. The cost is interpretive: readers cannot reliably compare results across sources, identify what a report omits, or trace an aggregate claim to its underlying evidence. Recent efforts address isolated components but leave three gaps: they cover only narrow slices of the evaluation lifecycle and do not compose into a single interpretable record; they specify static representations that do not differentiate the questions different stakeholders bring to the same evidence; and they remain proposals on paper, lacking the extraction infrastructure required for adoption at scale. We present \EvalCards{}, an operational reporting layer that composes benchmark metadata, evaluation run data, and model metadata into a unified record. We (1) derive a reporting schema from a structured review of 52 papers and 10 stakeholder interviews, (2) implement four interpretive signals (reproducibility, documentation completeness, provenance and risk, and score comparability), rendered through reader modes calibrated to research and non-research audiences, and (3) deploy a monitoring tool that applies \EvalCards{} across 5,816 models, 635 benchmarks, and 101,843 results, surfacing systematic gaps in current reporting practice.
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@article{ghosh2026evaluation,
title = {Evaluation Cards: An Interpretive Layer for AI Evaluation Reporting},
author = {Avijit Ghosh and Anka Reuel and Jenny Chim and Wm. Matthew Kennedy and Srishti Yadav and Jennifer Mickel and Yanan Long and Andrew Tran and Anastassia Kornilova and Damian Stachura and Kevin Klyman and Felix Friedrich and Jeba Sania and Max Lamparth and Jan Batzner and Anoop Mishra and Eliya Habba and Yixiong Hao and Nathan Heath and Shalaleh Rismani and Usman Gohar and Andrea Loehr and David Manheim and Ruchira Dhar and Sree Harsha Nelaturu and Aarush Sinha and Leshem Choshen and Drishti Sharma and Ishan Khire and Amit Saha and Subramanyam Sahoo and Michael Hardy and Michael Alexander Riegler and Kabir Manghnani and Michelle Lin and Yanan Jiang and Yilin Huang and Asaf Yehudai and Jessica Ji and Aris Hofmann and Mubashara Akhtar and Nuno Moniz and Yacine Jernite and Stella Biderman and Zeerak Talat and Sanmi Koyejo and Mykel Kochenderfer and Irene Solaiman},
year = {2026},
abstract = {AI evaluation results are produced at scale but reported inconsistently across leaderboards, model cards, benchmark papers, and company blogs. The cost is interpretive: readers cannot reliably compare results across sources, identify what a report omits, or trace an aggregate claim to its underlying evidence. Recent efforts address isolated components but leave three gaps: they cover only narrow slices of the evaluation lifecycle and do not compose into a single interpretable record; they specif},
url = {https://arxiv.org/abs/2606.09809},
keywords = {cs.AI},
eprint = {2606.09809},
archiveprefix = {arXiv},
}
{}