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[BugFix] Fix Embedding Models with TP>1 #5075

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May 28, 2024
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Fixes Embedding Model with TP>1

FIX #4923


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@robertgshaw2-neuralmagic robertgshaw2-neuralmagic marked this pull request as ready for review May 27, 2024 23:25
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@zhuohan123 Can I get a force merge on this? Some unrelated tests were killed

@simon-mo simon-mo disabled auto-merge May 28, 2024 15:32
@simon-mo simon-mo merged commit 9ba4155 into main May 28, 2024
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blinkbear pushed a commit to blinkbear/vllm that referenced this pull request May 29, 2024
dtrifiro pushed a commit to opendatahub-io/vllm that referenced this pull request May 31, 2024
robertgshaw2-neuralmagic added a commit to neuralmagic/nm-vllm that referenced this pull request Jun 8, 2024
joerunde pushed a commit to joerunde/vllm that referenced this pull request Jun 17, 2024
robertgshaw2-neuralmagic added a commit to neuralmagic/nm-vllm that referenced this pull request Jul 14, 2024
Temirulan pushed a commit to Temirulan/vllm-whisper that referenced this pull request Sep 6, 2024
@simon-mo simon-mo deleted the fix-embedding-with-tp branch October 28, 2024 16:50
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[Bug]: Embedding model not working with tensor parallel
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