AIDec 16, 2025

OpenDataArena: A Fair and Open Arena for Benchmarking Post-Training Dataset Value

arXiv:2512.14051v110 citationsh-index: 11Has Code
Originality Incremental advance
AI Analysis

This addresses the need for fair and reproducible data evaluation in AI research, shifting from trial-and-error curation to data-centric science, though it is incremental as it builds on existing benchmarking concepts.

The paper tackles the problem of opaque and unstandardized evaluation of post-training datasets for LLMs by introducing OpenDataArena, a platform that benchmarks data value across 120 datasets and 22 benchmarks, revealing trade-offs between data complexity and performance and identifying redundancy in benchmarks.

The rapid evolution of Large Language Models (LLMs) is predicated on the quality and diversity of post-training datasets. However, a critical dichotomy persists: while models are rigorously benchmarked, the data fueling them remains a black box--characterized by opaque composition, uncertain provenance, and a lack of systematic evaluation. This opacity hinders reproducibility and obscures the causal link between data characteristics and model behaviors. To bridge this gap, we introduce OpenDataArena (ODA), a holistic and open platform designed to benchmark the intrinsic value of post-training data. ODA establishes a comprehensive ecosystem comprising four key pillars: (i) a unified training-evaluation pipeline that ensures fair, open comparisons across diverse models (e.g., Llama, Qwen) and domains; (ii) a multi-dimensional scoring framework that profiles data quality along tens of distinct axes; (iii) an interactive data lineage explorer to visualize dataset genealogy and dissect component sources; and (iv) a fully open-source toolkit for training, evaluation, and scoring to foster data research. Extensive experiments on ODA--covering over 120 training datasets across multiple domains on 22 benchmarks, validated by more than 600 training runs and 40 million processed data points--reveal non-trivial insights. Our analysis uncovers the inherent trade-offs between data complexity and task performance, identifies redundancy in popular benchmarks through lineage tracing, and maps the genealogical relationships across datasets. We release all results, tools, and configurations to democratize access to high-quality data evaluation. Rather than merely expanding a leaderboard, ODA envisions a shift from trial-and-error data curation to a principled science of Data-Centric AI, paving the way for rigorous studies on data mixing laws and the strategic composition of foundation models.

Foundations

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