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  "documentTitle": "2024 Air Street Capital The State of AI Report 2024",
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      "text": "The strongest models from Chinese labs are competitive with the second-most powerful tier of frontier model produced by US labs, while being challenging the SOTA on certain subtasks.\nThese labs have prioritized computational efficiency to compensate for constraints around GPU access, learning to stretch their resources much further than their US peers.\nChinese labs have different strengths. For example, DeepSeek has pioneered techniques like Multi-head Latent Attention to reduce memory requirements during inference and an enhanced MoE architecture.\nMeanwhile, 01.AI has focused less on architectural innovation and more on building a strong Chinese language dataset to compensate for its relative paucity in popular repositories like Common Crawl.",
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