Removing Noise, not Finding Gold: Quality Filtering for Large-Scale Pretraining
AuthorsThiziri Nait Saada‡§, Louis Bethune, Michal Klein, David Grangier, Marco Cuturi, Pierre Ablin
Removing Noise, not Finding Gold: Quality Filtering for Large-Scale Pretraining
AuthorsThiziri Nait Saada‡§, Louis Bethune, Michal Klein, David Grangier, Marco Cuturi, Pierre Ablin
Large-scale models are pretrained on massive web-crawled datasets containing documents of mixed quality, making data filtering essential. A popular method is Classifier-based Quality Filtering (CQF), which trains a binary classifier to distinguish between pretraining data and a small, high-quality set. It assigns each pretraining document a quality score defined as the classifier’s score and retains only the top-scoring ones. We provide an in-depth analysis of CQF. We show that while CQF improves downstream task performance, it does not necessarily enhance language modeling on the high-quality dataset. We explain this paradox by the fact that CQF implicitly filters the high-quality dataset as well. We further compare the behavior of models trained with CQF to those trained on synthetic data of increasing quality, obtained via random token permutations, and find starkly different trends. Our results challenge the view that CQF captures a meaningful notion of data quality.
On the Impossibility of Separating Intelligence from Judgment: The Computational Intractability of Filtering for AI Alignment
March 3, 2026research area Methods and Algorithmsconference ICLR
With the increased deployment of large language models (LLMs), one concern is their potential misuse for generating harmful content. Our work studies the alignment challenge, with a focus on filters to prevent the generation of unsafe information. Two natural points of intervention are the filtering of the input prompt before it reaches the model, and filtering the output after generation. Our main results demonstrate computational challenges in…
With Apple Intelligence, we’re integrating powerful generative AI right into the apps and experiences people use every day, all while protecting their privacy. At the 2025 Worldwide Developers Conference we introduced a new generation of language foundation models specifically developed to enhance the Apple Intelligence features in our latest software releases. We also introduced the new Foundation Models framework, which gives app developers…