PAPER DIGEST
Most Influential EMNLP 2024 Paper · 2026-03 edition

EAGLE-2: Faster Inference of Language Models with Dynamic Draft Trees

Yuhui Li; Fangyun Wei; Chao Zhang; Hongyang Zhang

Venue
Conference on Empirical Methods in Natural Language Processing (EMNLP) 2024
Recognition
Most Influential EMNLP 2024 Paper (Rank No. 12)
Edition
2026-03
Impact factor
4
Certificate ID
31d4625978daeb75

Abstract

Inference with modern Large Language Models (LLMs) is expensive and time-consuming, and speculative sampling has proven to be an effective solution. Most speculative sampling methods such as EAGLE use a static draft tree, implicitly assuming that the acceptance rate of draft tokens depends only on their position. Interestingly, we found that the acceptance rate of draft tokens is also context-dependent. In this paper, building upon EAGLE, we propose EAGLE-2, which introduces a new technique of context-aware dynamic draft tree into drafting modeling. This improvement leverages the fact that the draft model of EAGLE is well-calibrated: the confidence scores from the draft model approximate acceptance rates with small errors. We conducted extensive evaluations on three series of LLMs and six tasks, with EAGLE-2 achieving speedup ratios of up to **5x**, which is 1. 3x that of EAGLE. EAGLE-2 also ensures that the distribution of the generated text remains unchanged, making it a **lossless** acceleration algorithm.

Download PDF certificate