When Drafts Evolve: Speculative Decoding Meets Online Learning
arXiv cs.AI / 3/16/2026
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Key Points
- OnlineSpec is proposed as a unified framework that leverages the feedback from speculative decoding to continuously evolve draft models through an online learning lens.
- The paper formalizes a link between online regret minimization and the acceleration of speculative decoding, providing theoretical guarantees.
- It introduces algorithms such as optimistic online learning and online ensemble learning to reuse historical gradients and maintain multiple drafts.
- Empirical results show up to 24% speedup across seven benchmarks and three foundation models, demonstrating practical acceleration potential.
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