CLFeb 5

OPUS: Towards Efficient and Principled Data Selection in Large Language Model Pre-training in Every Iteration

arXiv:2602.05400v26 citationsh-index: 22
Originality Highly original
AI Analysis

This addresses the Data Wall issue for LLM developers by improving pre-training efficiency with a principled method, though it builds on existing dynamic selection ideas.

The paper tackles the problem of data selection for large language model pre-training by proposing OPUS, a dynamic framework that selects data based on optimizer-induced updates, achieving significant efficiency gains such as outperforming full training with 200B tokens using only 30B tokens and reducing token needs by 83% in specialized domains.

As high-quality public text approaches exhaustion, a phenomenon known as the Data Wall, pre-training is shifting from more tokens to better tokens. However, existing methods either rely on heuristic static filters that ignore training dynamics, or use dynamic yet optimizer-agnostic criteria based on raw gradients. We propose OPUS (Optimizer-induced Projected Utility Selection), a dynamic data selection framework that defines utility in the optimizer-induced update space. OPUS scores candidates by projecting their effective updates, shaped by modern optimizers, onto a target direction derived from a stable, in-distribution proxy. To ensure scalability, we employ Ghost technique with CountSketch for computational efficiency, and Boltzmann sampling for data diversity, incurring only 4.7\% additional compute overhead. OPUS achieves remarkable results across diverse corpora, quality tiers, optimizers, and model scales. In pre-training of GPT-2 Large/XL on FineWeb and FineWeb-Edu with 30B tokens, OPUS outperforms industrial-level baselines and even full 200B-token training. Moreover, when combined with industrial-level static filters, OPUS further improves pre-training efficiency, even with lower-quality data. Furthermore, in continued pre-training of Qwen3-8B-Base on SciencePedia, OPUS achieves superior performance using only 0.5B tokens compared to full training with 3B tokens, demonstrating significant data efficiency gains in specialized domains.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes