English

AHASD: Asynchronous Heterogeneous Architecture for LLM Adaptive Drafting Speculative Decoding on Mobile Devices

Hardware Architecture 2026-05-01 v3 Artificial Intelligence

Abstract

Speculative decoding enhances the inference efficiency of large language models (LLMs) by generating drafts using a small draft language model (DLM) and verifying them in batches with a large target language model (TLM). However, adaptive drafting inference on a mobile single-NPU-PIM system faces idle overhead in traditional operator-level synchronous execution and wasted computation in asynchronous execution due to fluctuations in draft length. This paper introduces AHASD, a task-level asynchronous mobile NPU-PIM heterogeneous architecture for speculative decoding. Notably, AHASD achieves parallel drafting on the PIM and verification on a single NPU through task-level DLM-TLM decoupling and specifically, it incorporates Entropy-History-Aware Drafting Control and Time-Aware Pre-Verification Control to dynamically manage adaptive drafting algorithm execution and pre-verification timing, suppressing invalid drafting based on low-confidence drafts. Additionally, AHASD integrates Attention Algorithm Units and Gated Task Scheduling Units within LPDDR5-PIM to enable attention link localization and sub-microsecond task switching on the PIM side. Experimental results for different LLMs and adaptive drafting algorithms show that AHASD achieves up to 4.2×\times in throughput and 5.6×\times in energy efficiency improvements over a GPU-only baseline, and 1.5×\times in throughput and 1.24×\times in energy efficiency gains over the state-of-the-art GPU+PIM baseline, with hardware overhead below 3% of the DRAM area.

Keywords

Cite

@article{arxiv.2604.25326,
  title  = {AHASD: Asynchronous Heterogeneous Architecture for LLM Adaptive Drafting Speculative Decoding on Mobile Devices},
  author = {Ma Zirui and Fan Zhihua and Li Wenxing and Wu Haibin and Zhang Fulin and Ye Xiaochun and Li Wenming},
  journal= {arXiv preprint arXiv:2604.25326},
  year   = {2026}
}

Comments

7 pages, 9 figures, accepted by DAC 2026, repo: https://github.com/MAdrid1011/AHASD

R2 v1 2026-07-01T12:38:41.473Z