Constraint‐aware and multi‐objective optimization for micro‐service composition in mobile edge computing

Author:

Wu Jintao1ORCID,Zhang Jingyi1,Zhang Yiwen2,Wen Yiping3

Affiliation:

1. School of Software Nanjing University of Information Science and Technology Nanjing China

2. School of Computer Science and Technology Anhui University Anhui China

3. Hunan Key Laboratory for Service Computing and Novel Software Technology Hunan University of Science and Technology Hunan China

Abstract

AbstractAs a new paradigm of distributed computing, mobile edge computing (MEC) has gained increasing attention due to its ability to expand the capabilities of centralized cloud computing. In MEC environments, a software application typically consists of multiple micro‐services, which can be composed together in a flexible manner to achieve various user requests. However, the composition of micro‐services in MEC is still a challenging research issue arising from three aspects. Firstly, composite micro‐services constructed by ignoring the processing capabilities of different micro‐services may cause waste of edge resources. Secondly, edge servers' limitations in terms of computational power can easily cause service occupancy between composite micro‐services, severely affecting the user experience. Thirdly, in dynamic and unstable mobile environments, different edge users have different sensitivities to request latency, which increases the complexity of micro‐service composition. In order to improve edge resource utilization and user experience on micro‐service invocations, in this paper, we comprehensively consider the above three factors, and we first model the micro‐services composition problem in MEC as a constrained multi‐objective optimization problem. Then, a micro‐service composition optimization method M3C combining graph search and branch‐and‐bound strategy is proposed to find a composition solution set with low energy consumption and high success rate for multiple edge users. Finally, we perform a series of experiments on two widely used datasets. Experimental results show that our proposed approach significantly outperforms the four competing baseline approaches, and that it is sufficiently efficient for practical deployment.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Software

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