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VisitWhat will be the most cited benefit of Grass Network's UpvoteWeb-24-600M dataset by end of 2024?
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Grass Network on Solana Open-Sources 600 Million Reddit Posts for AI Training
Jul 4, 2024, 03:51 AM
Grass Network, the data layer of AI on Solana, has open-sourced a dataset containing 600 million top Reddit posts and comments from 2024. This dataset, named UpvoteWeb-24-600M, includes media links and reply lineage, and has been anonymized to preserve user privacy. The data, gathered by 2 million nodes globally in just one week, aims to make AI training more accessible for developers, leveling the playing field with centralized model training sets. This marks a significant milestone for the Grass ecosystem and the broader AI community.
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