Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

DataRater: Meta-Learned Dataset Curation

About

The quality of foundation models depends heavily on their training data. Consequently, great efforts have been put into dataset curation. Yet most approaches rely on manual tuning of coarse-grained mixtures of large buckets of data, or filtering by hand-crafted heuristics. An approach that is ultimately more scalable (let alone more satisfying) is to \emph{learn} which data is actually valuable for training. This type of meta-learning could allow more sophisticated, fine-grained, and effective curation. Our proposed \emph{DataRater} is an instance of this idea. It estimates the value of training on any particular data point. This is done by meta-learning using `meta-gradients', with the objective of improving training efficiency on held out data. In extensive experiments across a range of model scales and datasets, we find that using our DataRater to filter data is highly effective, resulting in significantly improved compute efficiency.

Dan A. Calian, Gregory Farquhar, Iurii Kemaev, Luisa M. Zintgraf, Matteo Hessel, Jeremy Shar, Junhyuk Oh, Andr\'as Gy\"orgy, Tom Schaul, Jeffrey Dean, Hado van Hasselt, David Silver• 2025

Related benchmarks

TaskDatasetResultRank
OCROCR DocVQA, ChartMuseum, OCRBenchV2 (held-out)
Accuracy48.47
4
Multimodal UnderstandingEvaluation Suite Combined (held-out)
Accuracy45.89
4
STEM & KnowledgeSTEM & Knowledge (MathVision, MMMU, MMMU-Pro) (held-out)
Accuracy20.88
4
Visual UnderstandingVisual Understanding (VQAv2, NLVR2, MME) (held-out)
Accuracy68.33
4
Showing 4 of 4 rows

Other info

Follow for update