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Main Authors: Zhang, Haoxuan, Li, Ruochi, Zhang, Yang, Liang, Zhenni, Ding, Junhua, Xiao, Ting, Chen, Haihua
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.23539
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author Zhang, Haoxuan
Li, Ruochi
Zhang, Yang
Liang, Zhenni
Ding, Junhua
Xiao, Ting
Chen, Haihua
author_facet Zhang, Haoxuan
Li, Ruochi
Zhang, Yang
Liang, Zhenni
Ding, Junhua
Xiao, Ting
Chen, Haihua
contents The rapid proliferation of Generative AI necessitates rigorous documentation standards for transparency and governance. However, manual creation of Model and Data Cards is not scalable, while automated approaches lack large-scale, high-fidelity benchmarks for systematic evaluation. We introduce MetaGAI, a comprehensive benchmark comprising 2,541 verified document triplets constructed through semantic triangulation of academic papers, GitHub repositories, and Hugging Face artifacts. Unlike prior single-source datasets, MetaGAI employs a multi-agent framework with specialized Retriever, Generator, and Editor agents, validated through four-dimensional human-in-the-loop assessment, including human evaluation of editor-refined ground truth. We establish a robust evaluation protocol combining automated metrics with validated LLM-as-a-Judge frameworks. Extensive analysis reveals that sparse Mixture-of-Experts architectures achieve superior cost-quality efficiency, while a fundamental trade-off exists between faithfulness and completeness. MetaGAI provides a foundational testbed for benchmarking, training, and analyzing automated Model and Data Card generation methods at scale. Our data and code are available at: https://github.com/haoxuan-unt2024/MetaGAI-Benchmark.
format Preprint
id arxiv_https___arxiv_org_abs_2604_23539
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle MetaGAI: A Large-Scale and High-Quality Benchmark for Generative AI Model and Data Card Generation
Zhang, Haoxuan
Li, Ruochi
Zhang, Yang
Liang, Zhenni
Ding, Junhua
Xiao, Ting
Chen, Haihua
Artificial Intelligence
The rapid proliferation of Generative AI necessitates rigorous documentation standards for transparency and governance. However, manual creation of Model and Data Cards is not scalable, while automated approaches lack large-scale, high-fidelity benchmarks for systematic evaluation. We introduce MetaGAI, a comprehensive benchmark comprising 2,541 verified document triplets constructed through semantic triangulation of academic papers, GitHub repositories, and Hugging Face artifacts. Unlike prior single-source datasets, MetaGAI employs a multi-agent framework with specialized Retriever, Generator, and Editor agents, validated through four-dimensional human-in-the-loop assessment, including human evaluation of editor-refined ground truth. We establish a robust evaluation protocol combining automated metrics with validated LLM-as-a-Judge frameworks. Extensive analysis reveals that sparse Mixture-of-Experts architectures achieve superior cost-quality efficiency, while a fundamental trade-off exists between faithfulness and completeness. MetaGAI provides a foundational testbed for benchmarking, training, and analyzing automated Model and Data Card generation methods at scale. Our data and code are available at: https://github.com/haoxuan-unt2024/MetaGAI-Benchmark.
title MetaGAI: A Large-Scale and High-Quality Benchmark for Generative AI Model and Data Card Generation
topic Artificial Intelligence
url https://arxiv.org/abs/2604.23539