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[Bugfix] Set SamplingParams.max_tokens for OpenAI requests if not provided by user #6954
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My bad, thanks for fixing this! Just a small comment.
[Cherry-Pick] [Bugfix] Set SamplingParams.max_tokens for OpenAI requests if not provided by user (vllm-project#6954)
…vided by user (vllm-project#6954) Signed-off-by: Alvant <[email protected]>
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 behindrequest.to_sampling_params()
._validate_prompt_and_tokenize()
which calls_validate_input()
will rewrite the request and setmax_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
.BEFORE SUBMITTING, PLEASE READ THE CHECKLIST BELOW AND FILL IN THE DESCRIPTION ABOVE
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