OpenAI LP
Summary
OpenAI announced the creation of OpenAI LP, a hybrid capped-profit structure combining for-profit and nonprofit elements to raise capital for AI supercomputing infrastructure while maintaining its AGI safety mission. Investors and employees receive capped returns, with excess value flowing to the original OpenAI Nonprofit entity.
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Cached at: 04/20/26, 02:46 PM
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