NEPTUNE : a Comprehensive Framework for Managing Serverless Functions at the Edge

Author:

Baresi Luciano1,Hu Davide Yi Xian1,Quattrocchi Giovanni1,Terracciano Luca1

Affiliation:

1. Politecnico di Milano, Dipartimento di Elettronica, Informazione e Bioingegneria, Italy

Abstract

Applications that are constrained by low-latency requirements can hardly be executed on cloud infrastructures, given the high network delay required to reach remote servers. Multi-access Edge Computing (MEC) is the reference architecture for executing applications on nodes that are located close to users (i.e., at the edge of the network). This way, the network overhead is reduced but new challenges emerge. The resources available on edge nodes are limited, workloads fluctuate since users can rapidly change location, and complex tasks are becoming widespread (e.g., machine learning inference). To address these issues, this article presents NEPTUNE , a serverless-based framework that automates the management of large-scale MEC infrastructures. In particular, NEPTUNE provides i) the placement of serverless functions on MEC nodes according to users’ location, ii) the resolution of resource contention scenarios by avoiding that single nodes be saturated, and iii) the dynamic allocation of CPUs and GPUs to meet foreseen execution times. To assess NEPTUNE , we built a prototype based on K3S, an edge-dedicated version of Kubernetes, and executed a comprehensive set of experiments. Results show that NEPTUNE obtains a significant reduction in terms of response time, network overhead, and resource consumption compared to five state-of-the-art solutions.

Publisher

Association for Computing Machinery (ACM)

Subject

Software,Computer Science (miscellaneous),Control and Systems Engineering

Reference65 articles.

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3. Luciano Baresi , Davide Yi Xian Hu , Giovanni Quattrocchi , and Luca Terracciano . 2021 . KOSMOS: Vertical and Horizontal Resource Autoscaling for Kubernetes . In Proceedings of the International Conference on Service-Oriented Computing, Vol.  13121 . Springer, 821–829. Luciano Baresi, Davide Yi Xian Hu, Giovanni Quattrocchi, and Luca Terracciano. 2021. KOSMOS: Vertical and Horizontal Resource Autoscaling for Kubernetes. In Proceedings of the International Conference on Service-Oriented Computing, Vol.  13121. Springer, 821–829.

4. Luciano Baresi , Davide Yi Xian Hu , Giovanni Quattrocchi , and Luca Terracciano . 2022 . NEPTUNE: Network- and GPU-aware Management of Serverless Functions at the Edge . In Proceedings of the International Symposium on Software Engineering for Adaptive and Self-Managing Systems. ACM, 144–155 . Luciano Baresi, Davide Yi Xian Hu, Giovanni Quattrocchi, and Luca Terracciano. 2022. NEPTUNE: Network- and GPU-aware Management of Serverless Functions at the Edge. In Proceedings of the International Symposium on Software Engineering for Adaptive and Self-Managing Systems. ACM, 144–155.

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