Research paper proposing multi-drafter speculative decoding augmented with alignment feedback—a technique to speed language model inference while improving model behavior through training signal.
Research
Multi-Drafter Speculative Decoding with Alignment Feedback
Multi-drafter speculative decoding harnesses inference-time draft proposals as a training signal to simultaneously accelerate generation and improve model alignment.
Wednesday, April 8, 2026 12:00 PM UTC2 MIN READSOURCE: arXiv CS.CL (Computation & Language)BY sys://pipeline
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