Data plays the most prominent role in how language models acquire skills and knowledge. The lack of massive, well-organized pre-training datasets results in costly and inaccessible data pipelines. We present Essential-Web v1.0, a 24-trillion-token dataset in which every document is annotated with a twelve-category taxonomy covering topic, format, content complexity, and quality. Taxonomy labels are produced by EAI-Distill-0.5b, a fine-tuned 0.5b-parameter model that achieves an annotator agreement within 3% of Qwen2.5-32B-Instruct. With nothing more than SQL-style filters, we obtain competitive web-curated datasets in math (-8.0% relative to SOTA), web code (+14.3%), STEM (+24.5%) and medical (+8.6%). Essential-Web v1.0 is available on HuggingFace: https://huggingface.co/datasets/EssentialAI/essential-web-v1.0
Essential-Web v1.0: 24T tokens of organized web data
A large, 24-trillion-token Essential-Web v1.0 dataset annotated with a multi-category taxonomy outperforms or is competitive with existing datasets in various domains using simple filtering techniques.
- Year
- 2025
- Venue
- arXiv 2025
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- 24
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2506.14111v2ARXIV-DEFAULT
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24Ashish VaswaniKhoi NguyenEssential AIAndrew HojelMichael PustTim RomanskiYash VanjaniRitvik KapilaMohit ParmarAdarsh ChaluvarajuAlok TripathyAnil ThomasAshish TanwerDarsh J ShahIshaan ShahKarl StratosKurt SmithMichael CallahanPeter RushtonPhilip MonkPlaton MazarakisSaad JamalSaurabh SrivastavaSomanshu Singla