Adopting serverless computing to edge networks benefits end-users from the pay-as-you-use billing model and flexible scaling of applications. This paradigm extends the boundaries of edge computing and remarkably improves the quality of services. However, due to the heterogeneous nature of computing and bandwidth resources in edge networks, it is challenging to dynamically allocate different resources while adapting to the burstiness and high concurrency in serverless workloads. This article focuses on serverless function provisioning in edge networks to optimize end-to-end latency, where the challenge lies in jointly allocating wireless bandwidth and computing resources among heterogeneous computing nodes. To address this challenge, We devised a context-aware learning framework that adaptively orchestrates a wide spectrum of resources and jointly considers them to avoid resource fragmentation. Extensive simulation results justified that the proposed algorithm reduces over 95% of converge time while the end-to-end delay is comparable to the state of the art.
@article{arxiv.2408.07536,
title = {Context-aware Container Orchestration in Serverless Edge Computing},
author = {Peiyuan Guan and Chen Chen and Ziru Chen and Lin X. Cai and Xing Hao and Amir Taherkordi},
journal= {arXiv preprint arXiv:2408.07536},
year = {2024}
}
Comments
This paper has been accepted by the IEEE GLOBECOM 2024 Conference