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      "text": "Prior to the acquisition, Mosaic showed impressive engineering feats like training Stable Diffusion from scratch for <$50k (8x reduction from the original) and building sota LLMs with long context length.\nThe deal marked a major moment in the short history of generative AI frenzy.\nSnowflake had a similar strategy: together with Azure, it provide customers with access to OpenAI's models.",
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