@TheAhmadOsman: Thanks to GLM 5.2, I know for a fact that enterprises are moving off the cloud, acquiring compute, and working on havin…
Summary
A tweet discussing how GLM 5.2 reveals enterprise trends toward local compute and post-trained models, with opposing views on the future of open-source AI.
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Cached at: 06/26/26, 02:05 AM
Thanks to GLM 5.2, I know for a fact that enterprises are moving off the cloud, acquiring compute, and working on having post-trained models for their own use cases.
It’s checkmate for Opensource AI, they just don’t know it yet.
Ahmad (@TheAhmadOsman): I have never been more confident that Local and Opensource AI are going to win. LFG.
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