@RisingSayak: The kernels project at Hugging Face has been growing! We want it to be the go-to place for kernel devs and kernel users…
Summary
Hugging Face's kernels project is expanding and seeking contributors for agentic kernel development to provide real optimization value to models.
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Cached at: 05/15/26, 05:06 PM
The kernels project at Hugging Face has been growing!
We want it to be the go-to place for kernel devs and kernel users.
We’re looking to work w/ folks who’re interested in doing agentic kernel dev, providing real optim value to real models.
Reach out if interested :) https://t.co/uVmTfVj8Ln
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