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A beginner friendly quantize and text embeddings tutorial for XPUs#1663
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sleepingcat4 wants to merge 2 commits intointel:mainfrom
Open
A beginner friendly quantize and text embeddings tutorial for XPUs#1663sleepingcat4 wants to merge 2 commits intointel:mainfrom
sleepingcat4 wants to merge 2 commits intointel:mainfrom
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in this notebook, I have showed how text embeddings can be generated using HF models and quantise them at the same moment on Intel XPUs Signed-off-by: tawsif <sleeping4cat@outlook.com>
Signed-off-by: tawsif <sleeping4cat@outlook.com>
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@sleepingcat4 Looks good! Could you please provide some screenshots of jupyter notebook results in this PR? |
Author
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@Zhenzhong1 sure! |
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I have added a beginner friendly tutorial to illustrate how HF text embedding models can be quantised and loaded using Intel XPUs and then use to generate embeddings. (through jupyter notebook)
I have used "BAAI/bge-m3" model from HF and used Intel extension for transformers and transformers library to quantise it on XPU.