@KevinNaughtonJr: absolutely insane massive congrats to Jason and the rest of the team!
Summary
Kevin Naughton Jr. congratulates Jason Goodison on raising $15M to build General Compute, an ASICs-first inference cloud that claims to be 5-8x faster than GPUs on most models.
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Cached at: 05/30/26, 10:27 PM
absolutely insane massive congrats to Jason and the rest of the team!
Jason Goodison (@GoodisonJason): We raised $15m to build the ASICs-first inference cloud.
We’re betting big on alternatives to GPUs, and the result is that we are already 5-8x faster on most models.
Read more about General Compute on Tech Crunch!
@FPuklowski @fastinference
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