AI Benchmark Democratization and Carpentry
Abstract
Benchmarks are a cornerstone of modern machine learning, enabling reproducibility, comparison, and scientific progress. However, AI benchmarks are increasingly complex, requiring dynamic, AI-focused workflows. Rapid evolution in model architectures, scale, datasets, and deployment contexts makes evaluation a moving target. Large language models often memorize static benchmarks, causing a gap between benchmark results and real-world performance. Beyond traditional static benchmarks, continuous adaptive benchmarking frameworks are needed to align scientific assessment with deployment risks. This calls for skills and education in AI Benchmark Carpentry. From our experience with MLCommons, educational initiatives, and programs like the DOE's Trillion Parameter Consortium, key barriers include high resource demands, limited access to specialized hardware, lack of benchmark design expertise, and uncertainty in relating results to application domains. Current benchmarks often emphasize peak performance on top-tier hardware, offering limited guidance for diverse, real-world scenarios. Benchmarking must become dynamic, incorporating evolving models, updated data, and heterogeneous platforms while maintaining transparency, reproducibility, and interpretability. Democratization requires both technical innovation and systematic education across levels, building sustained expertise in benchmark design and use. Benchmarks should support application-relevant comparisons, enabling informed, context-sensitive decisions. Dynamic, inclusive benchmarking will ensure evaluation keeps pace with AI evolution and supports responsible, reproducible, and accessible AI deployment. Community efforts can provide a foundation for AI Benchmark Carpentry.
Cite
@article{arxiv.2512.11588,
title = {AI Benchmark Democratization and Carpentry},
author = {Gregor von Laszewski and Wesley Brewer and Jeyan Thiyagalingam and Juri Papay and Armstrong Foundjem and Piotr Luszczek and Murali Emani and Shirley V. Moore and Vijay Janapa Reddi and Matthew D. Sinclair and Sebastian Lobentanzer and Sujata Goswami and Benjamin Hawks and Marco Colombo and Nhan Tran and Christine R. Kirkpatrick and Abdulkareem Alsudais and Gregg Barrett and Tianhao Li and Kirsten Morehouse and Shivaram Venkataraman and Rutwik Jain and Kartik Mathur and Victor Lu and Tejinder Singh and Khojasteh Z. Mirza and Kongtao Chen and Sasidhar Kunapuli and Gavin Farrell and Renato Umeton and Geoffrey C. Fox},
journal= {arXiv preprint arXiv:2512.11588},
year = {2025}
}
Comments
43 pages, 2 figures, 7 tables