- 30 Apr, 2024 1 commit
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Robert Shaw authored
Co-authored-by:
Philipp Moritz <pcmoritz@gmail.com> Co-authored-by:
Woosuk Kwon <woosuk.kwon@berkeley.edu> Co-authored-by:
mgoin <michael@neuralmagic.com> Co-authored-by:
Tyler Michael Smith <tyler@neuralmagic.com> Co-authored-by:
Cody Yu <hao.yu.cody@gmail.com>
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- 27 Apr, 2024 1 commit
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Philipp Moritz authored
Co-authored-by:Woosuk Kwon <woosuk.kwon@berkeley.edu>
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- 26 Apr, 2024 1 commit
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Cody Yu authored
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- 24 Apr, 2024 1 commit
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Robert Shaw authored
Fixes fp8 iterface which broke in AQLM merge.
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- 20 Apr, 2024 2 commits
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Noam Gat authored
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Cody Yu authored
Provide an initial support to FP8 computation. This PR is inspired by HuggingFace TGI: huggingface/text-generation-inference#1726 This feature can be enabled with --quantization fp8 or -q fp8 when launching an engine. Algorithm: We still load a model checkpoint in FP16/BF16. After the weights are loaded, Fp8LinearMethod calculates the per-tensor scaling factor of weights and quantizes the weights accordingly. The scaling factor will then be stored for future use. Meanwhile, the per-tensor scaling factor for activations is calculated in every forward pass. Initial Results: Currently tested Mistral-7B on 1xH100. With prompt length ~5 and decoding length 128: BF16: 1.47s FP8: 1.66s I'll try to use larger models and try to find more performance bottleneck. Meanwhile, you're welcome to try this code.
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