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[Bugfix] Set SamplingParams.max_tokens for OpenAI requests if not provided by user #6954

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merged 4 commits into from
Aug 1, 2024

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@zifeitong zifeitong commented Jul 30, 2024

FIX #6707

vllm/engine/output_processor/multi_step.py requires SamplingParams.max_tokens to be set.

AFAICS, all the requests without max_tokens (the default) will fail if spec_decoding is turned on now.

The bug is introduced in #4028 in which _validate_prompt_and_tokenize() is moved behind request.to_sampling_params(). _validate_prompt_and_tokenize() which calls _validate_input() will rewrite the request and set max_tokens.

In this PR, the max_tokens is set explicitly outside _tokenize_prompt_input.

I will create another PR to allow multi step output processor accept requests without max_tokens.

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@zifeitong zifeitong marked this pull request as ready for review July 30, 2024 21:37
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/ready

@github-actions github-actions bot added the ready ONLY add when PR is ready to merge/full CI is needed label Jul 30, 2024
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My bad, thanks for fixing this! Just a small comment.

vllm/entrypoints/openai/serving_chat.py Outdated Show resolved Hide resolved
@DarkLight1337 DarkLight1337 enabled auto-merge (squash) July 31, 2024 02:37
@simon-mo simon-mo merged commit 3c10591 into vllm-project:main Aug 1, 2024
71 of 73 checks passed
Xaenalt pushed a commit to Xaenalt/vllm that referenced this pull request Aug 1, 2024
Xaenalt pushed a commit to Xaenalt/vllm that referenced this pull request Aug 1, 2024
Xaenalt added a commit to opendatahub-io/vllm that referenced this pull request Aug 2, 2024
[Cherry-Pick] [Bugfix] Set SamplingParams.max_tokens for OpenAI requests if not provided by user (vllm-project#6954)
kylesayrs pushed a commit to neuralmagic/vllm that referenced this pull request Aug 17, 2024
Alvant pushed a commit to compressa-ai/vllm that referenced this pull request Oct 26, 2024
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[Bug]: Engine crashes when max_tokens undefined
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