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[Model] Support GGUF models newly added in transformers
4.46.0
#9685
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The changes to examples and test config look good to me. Model changes are fine as long as tests pass. @mgoin can you check the changes to linear layer?
Co-authored-by: Cyrus Leung <[email protected]>
I have added prefixes for all changed models in this PR. Perhaps we can pass in |
I'll hold off on reviewing until we have a stable |
This pull request has merge conflicts that must be resolved before it can be |
Transformers should be stable now - the tests that previously failed in #10106 using v4.46.2 now pass on v4.46.3. |
Nice! Will update this PR later! |
Signed-off-by: Isotr0py <[email protected]>
Signed-off-by: Isotr0py <[email protected]>
FILL IN THE PR DESCRIPTION HERE
This PR extends GGUF support for these models which has supported GGUF config extraction in transformers 4.46.0:
Bloom(Failed due to fused QKV weights permute is required)Falcon(Transformers hardcoded config extraction with filename, causing failed to load some falcon-11b model, so delay falcon GGUF support until they optimize this)BEFORE SUBMITTING, PLEASE READ THE CHECKLIST BELOW AND FILL IN THE DESCRIPTION ABOVE
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