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jwan584

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Mistral Flash Answers Run on Cerebras

cerebras.ai
5 points·by jwan584·l’année dernière·1 comments

100x defect tolerance: How we solved the yield problem

cerebras.ai
331 points·by jwan584·l’année dernière·179 comments

Cerebras CS-3: the fastest and most scalable AI accelerator

cerebras.net
2 points·by jwan584·il y a 2 ans·0 comments

comments

jwan584
·l’année dernière·discuss
The point about using FP32 for training is wrong. Mixed precision (FP16 multiplies, FP32 accumulates) has been use for years – the original paper came out in 2017.
jwan584
·l’année dernière·discuss
A good talk on how Cerebras does power & cooling (8min) https://www.youtube.com/watch?v=wSptSOcO6Vw&ab_channel=Appli...
jwan584
·il y a 2 ans·discuss
batch size by Q4 will be solid double digits (cerebras employee)
jwan584
·il y a 3 ans·discuss
when you go from 1B to 175B, the model no longer fits in memory. so in practice you have to re-factor the model using tensor/pipeline parallelism. that's why it goes from 600 to 20K LOC.
jwan584
·il y a 3 ans·discuss
Everyone knows Cerebras by their wafer scale chips. The less understood part is the 12TB of external memory. That's the real reason why large models fit by default and you don't have to chop it up in software ala megatron/deepspeed.