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Deeploy: Enabling Energy-Efficient Deployment of Small Language Models On Heterogeneous Microcontrollers

Machine Learning 2024-08-09 v1 Hardware Architecture

Abstract

With the rise of Embodied Foundation Models (EFMs), most notably Small Language Models (SLMs), adapting Transformers for edge applications has become a very active field of research. However, achieving end-to-end deployment of SLMs on microcontroller (MCU)-class chips without high-bandwidth off-chip main memory access is still an open challenge. In this paper, we demonstrate high-efficiency end-to-end SLM deployment on a multicore RISC-V (RV32) MCU augmented with ML instruction extensions and a hardware neural processing unit (NPU). To automate the exploration of the constrained, multi-dimensional memory vs. computation tradeoffs involved in aggressive SLM deployment on heterogeneous (multicore+NPU) resources, we introduce Deeploy, a novel Deep Neural Network (DNN) compiler, which generates highly-optimized C code requiring minimal runtime support. We demonstrate that Deeploy generates end-to-end code for executing SLMs, fully exploiting the RV32 cores' instruction extensions and the NPU: We achieve leading-edge energy and throughput of \SI{490}{\micro\joule \per Token}, at \SI{340}{Token \per \second} for an SLM trained on the TinyStories dataset, running for the first time on an MCU-class device without external memory.

Keywords

Cite

@article{arxiv.2408.04413,
  title  = {Deeploy: Enabling Energy-Efficient Deployment of Small Language Models On Heterogeneous Microcontrollers},
  author = {Moritz Scherer and Luka Macan and Victor Jung and Philip Wiese and Luca Bompani and Alessio Burrello and Francesco Conti and Luca Benini},
  journal= {arXiv preprint arXiv:2408.04413},
  year   = {2024}
}

Comments

Accepted for publication at ESWEEK - CASES 2024

R2 v1 2026-06-28T18:07:38.470Z