English

Reusing Pre-Training Data at Test Time is a Compute Multiplier

Computation and Language 2025-11-07 v1

Abstract

Large language models learn from their vast pre-training corpora, gaining the ability to solve an ever increasing variety of tasks; yet although researchers work to improve these datasets, there is little effort to understand how efficient the pre-training apparatus is at extracting ideas and knowledge from the data. In this work, we use retrieval augmented generation along with test-time compute as a way to quantify how much dataset value was left behind by the process of pre-training, and how this changes across scale. We demonstrate that pre-training then retrieving from standard and largely open-sourced datasets results in significant accuracy gains in MMLU, Math-500, and SimpleQA, which persist through decontamination. For MMLU we observe that retrieval acts as a ~5x compute multiplier versus pre-training alone. We show that these results can be further improved by leveraging additional compute at test time to parse the retrieved context, demonstrating a 10 percentage point improvement on MMLU for the public LLaMA 3.1 8B model. Overall, our results suggest that today's pre-training methods do not make full use of the information in existing pre-training datasets, leaving significant room for progress.

Keywords

Cite

@article{arxiv.2511.04234,
  title  = {Reusing Pre-Training Data at Test Time is a Compute Multiplier},
  author = {Alex Fang and Thomas Voice and Ruoming Pang and Ludwig Schmidt and Tom Gunter},
  journal= {arXiv preprint arXiv:2511.04234},
  year   = {2025}
}
R2 v1 2026-07-01T07:24:20.954Z