@MaximeRivest: this is the end game, there is no doubt about it. just like most enterprise have data analytics and data science teams
Summary
Observations of a shift where large enterprises are increasingly seeking to secure compute and post-train their own models in-house, often on open-source GLM-5.2, highlighting the growing acceptance of open-source AI.
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Cached at: 06/26/26, 04:06 AM
this is the end game, there is no doubt about it. just like most enterprise have data analytics and data science teams
will brown (@willccbb): something has definitely shifted in the past few weeks. seeing a huge uptick in large enterprises wanting to secure compute and post-train their own models in house, frequently on top of GLM-5.2. everyone is starting to understand how open source wins.
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