HiDP: Hierarchical DNN Partitioning for Distributed Inference on Heterogeneous Edge Platforms




Taufique, Zain; Vyas, Aman; Miele, Antonio; Liljeberg, Pasi; Kanduri, Anil

N/A

Design, Automation and Test in Europe Conference and Exhibition

PublisherCornell University

2025

Proceedings : Design, Automation, and Test in Europe Conference and Exhibition

2025 Design, Automation & Test in Europe Conference (DATE)

979-8-3315-3464-6

978-3-9826741-0-0

1530-1591

1558-1101

DOIhttps://doi.org/10.23919/DATE64628.2025.10992692

https://ieeexplore.ieee.org/document/10992692

https://arxiv.org/abs/2411.16086



Edge inference techniques partition and distribute Deep Neural Network (DNN) inference tasks among multiple edge nodes for low latency inference, without considering the core-level heterogeneity of edge nodes. Further, default DNN inference frameworks also do not fully utilize the resources of heterogeneous edge nodes, resulting in higher inference latency. In this work, we propose a hierarchical DNN partitioning strategy (HiDP) for distributed inference on heterogeneous edge nodes. Our strategy hierarchically partitions DNN workloads at both global and local levels by considering the core-level heterogeneity of edge nodes. We evaluated our proposed HiDP strategy against relevant distributed inference techniques over widely used DNN models on commercial edge devices. On average our strategy achieved 38% lower latency, 46% lower energy, and 56% higher throughput in comparison with other relevant approaches.



Last updated on 2025-22-05 at 08:08