English

Xenos: Dataflow-Centric Optimization to Accelerate Model Inference on Edge Devices

Distributed, Parallel, and Cluster Computing 2023-02-02 v1

Abstract

Edge computing has been emerging as a popular scenario for model inference. However, the inference performance on edge devices (e.g., Multi-Core DSP, FGPA, etc.) suffers from inefficiency due to the lack of highly optimized inference frameworks. Previous model inference frameworks are mainly developed in an operator-centric way, which provides insufficient acceleration to edge-based inference. Besides, the operator-centric framework incurs significant costs for continuous development and maintenance. In this paper, we propose Xenos, which can automatically conduct dataflow-centric optimization of the computation graph and accelerate inference in two dimensions. Vertically, Xenos develops operator linking technique to improve data locality by restructuring the inter-operator dataflow. Horizontally, Xenos develops DSP-aware operator split technique to enable higher parallelism across multiple DSP units. Our evaluation proves the effectiveness of vertical and horizontal dataflow optimization, which reduce the inference time by 21.2\%--84.9\% and 17.9\%--96.2\% , respectively. Besides, Xenos also outperforms the widely-used TVM by 3.22×\times--17.92×\times. Moreover, we extend Xenos to a distributed solution, which we call d-Xenos. d-Xenos employs multiple edge devices to jointly conduct the inference task and achieves a speedup of 3.68x--3.78x compared with the single device.

Keywords

Cite

@article{arxiv.2302.00282,
  title  = {Xenos: Dataflow-Centric Optimization to Accelerate Model Inference on Edge Devices},
  author = {Zhang Runhua and Jiang Hongxu and Tian Fangzheng and Geng Jinkun and Li Xiaobin and Ma Yuhang and Zhu Chenhui and Dong Dong and Li Xin and Wang Haojie},
  journal= {arXiv preprint arXiv:2302.00282},
  year   = {2023}
}

Comments

The preliminary version is accepted by the 28th International Conference on Database Systems for Advanced Applications (DASFAA-2023)

R2 v1 2026-06-28T08:28:49.964Z