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[Bugfix] Fix encoding_format in examples/openai_embedding_client.py #6755

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merged 1 commit into from
Jul 25, 2024

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@CatherineSue CatherineSue commented Jul 24, 2024

  • Add encoding_format="float" in openai_embedding_client.py otherwise openai client will defaultly encode it to base64, see ref.
  • Remove duplicate command in test_embedding.py

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FIX #6744

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- Add encoding_format="float" in openai_embedding_client.py otherwise
openai client will defaultly encode it to base64.
- Remove duplicate command in test_embedding.py
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Thanks for the fix!

@DarkLight1337 DarkLight1337 enabled auto-merge (squash) July 25, 2024 02:21
@github-actions github-actions bot added the ready ONLY add when PR is ready to merge/full CI is needed label Jul 25, 2024
@simon-mo simon-mo merged commit 316a41a into vllm-project:main Jul 25, 2024
84 of 86 checks passed
Alvant pushed a commit to compressa-ai/vllm that referenced this pull request Oct 26, 2024
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[Bug]: openai_embedding_client returns len 8192 embedding not 4096
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