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Efficient Inference for Large Language Model-based Generative Recommendation

7 October 2024
Xinyu Lin
Chaoqun Yang
Wenjie Wang
Yongqi Li
Cunxiao Du
Fuli Feng
See-Kiong Ng
Tat-Seng Chua
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Abstract

Large Language Model (LLM)-based generative recommendation has achieved notable success, yet its practical deployment is costly particularly due to excessive inference latency caused by autoregressive decoding. For lossless LLM decoding acceleration, Speculative Decoding (SD) has emerged as a promising solution. However, applying SD to generative recommendation presents unique challenges due to the requirement of generating top-K items (i.e., K distinct token sequences) as a recommendation list by beam search. This leads to more stringent verification in SD, where all the top-K sequences from the target LLM must be successfully drafted by the draft model at each decoding step. To alleviate this, we consider 1) boosting top-K sequence alignment between the draft model and the target LLM, and 2) relaxing the verification strategy to reduce trivial LLM calls. To this end, we propose an alignment framework named AtSpeed, which presents the AtSpeed-S optimization objective for top-K alignment under the strict top-K verification. Moreover, we introduce a relaxed sampling verification strategy that allows high-probability non-top-K drafted sequences to be accepted, significantly reducing LLM calls. Correspondingly, we propose AtSpeed-R for top-K alignment under this relaxed sampling verification. Empirical results on two real-world datasets demonstrate that AtSpeed significantly accelerates LLM-based generative recommendation, e.g., near 2x speedup under strict top-K verification and up to 2.5x speedup under relaxed sampling verification. The codes and datasets are released atthis https URL.

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@article{lin2025_2410.05165,
  title={ Efficient Inference for Large Language Model-based Generative Recommendation },
  author={ Xinyu Lin and Chaoqun Yang and Wenjie Wang and Yongqi Li and Cunxiao Du and Fuli Feng and See-Kiong Ng and Tat-Seng Chua },
  journal={arXiv preprint arXiv:2410.05165},
  year={ 2025 }
}
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