Adaptive Early Exit of Computation for Energy-Efficient and Low-Latency Machine Learning over IoT Networks

Samikwa, Eric; Di Maio, Antonio; Braun, Torsten (10 February 2022). Adaptive Early Exit of Computation for Energy-Efficient and Low-Latency Machine Learning over IoT Networks. In: 19th Annual Consumer Communications & Networking Conference (CCNC 2022) (pp. 200-206). IEEE Xplore: IEEE 10.1109/CCNC49033.2022.9700550

[img] Text
Adaptive_Early_Exit_of_Computation_for_Energy-Efficient_and_Low-Latency_Machine_Learning_over_IoT_Networks.pdf - Published Version
Restricted to registered users only
Available under License Publisher holds Copyright.

Download (1MB)

Large Machine Learning (ML) models require considerable computing resources and raise challenges for integrating them with the decentralized operation of heterogeneous and resource-constrained Internet of Things (IoT) devices. Running ML tasks on the cloud can introduce network delay, throughput, and privacy concerns, whereas running ML tasks on IoT devices is penalized by their constrained resources. For this reason, recent research proposed cooperative execution of ML tasks over IoT networks but disregarded resource variability and the IoT devices’ energy constraints simultaneously. In this paper, we propose Early Exit of Computation (EEoC), an adaptive, energy-efficient, low-latency inference scheme over IoT networks. EEoC adaptively distributes the inference computation load between the IoT device and the edge server, based on estimated communication and computation resources, to jointly minimize prediction latency and energy consumption. We evaluate our solution’s latency and energy profile on a real testbed running two widely used neural networks. Results show that EEoC can reduce latency and energy consumption up to 24.6% and 46.5%, respectively, compared to other state-of-the-art solutions without sacrificing accuracy.

Item Type:

Conference or Workshop Item (Paper)

Division/Institute:

08 Faculty of Science > Institute of Computer Science (INF)
08 Faculty of Science > Institute of Computer Science (INF) > Communication and Distributed Systems (CDS)

UniBE Contributor:

Samikwa, Eric, Di Maio, Antonio, Braun, Torsten

Subjects:

000 Computer science, knowledge & systems
500 Science > 510 Mathematics
500 Science
600 Technology

ISSN:

2331-9860

ISBN:

978-1-6654-3161-3

Publisher:

IEEE

Language:

English

Submitter:

Dimitrios Xenakis

Date Deposited:

18 Feb 2022 16:26

Last Modified:

27 Aug 2023 02:55

Publisher DOI:

10.1109/CCNC49033.2022.9700550

Uncontrolled Keywords:

Machine Learning; Internet of Things; Edge Computing; Early Exit of Computation; DNN partitioning

BORIS DOI:

10.48350/164446

URI:

https://boris.unibe.ch/id/eprint/164446

Actions (login required)

Edit item Edit item
Provide Feedback