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[Bugfix] Handle best_of>1 case by disabling multi-step speculation. #8637

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This PR addresses #7968 by disabling multi-step speculation when best_of>1 is enabled; this is the same approach as was taken in #6138 which disabled speculation for best_of>1. This prevents requests with best_of>1 from failing with an unhandled exception, as is the current case.

FIX #7968 (link existing issues this PR will resolve)

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👋 Hi! Thank you for contributing to the vLLM project.
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@comaniac
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I understand the approach but get a bit confused about the code changes. Specifically how the "disabling multi-step when n>1" handled in this PR? Seems like this PR only raises an exception?

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[Bug]: Multistep with n>1 Fails
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