On Cost-Driven Computation Offloading in the Edge: A New Model Approach

Mingzhe Du, Yang Wang, Chengzhong Xu
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引用次数: 2

Abstract

Computation offloading is an often-used optimization method that exploits servers with powerful and plentiful resources to maximize computation efficiency with minimum cost. In this method, a client application is usually modeled as a weighted directed acyclic graph (DAG), which is typically split into two distinct parts – one running on client device and the other on server machine. To simplify the model, the inter-part communication costs are always assumed to be symmetric and the intra-part communication costs are commonly ignored. Although these assumptions are reasonable to the offloading in traditional mobile computing, they are not valid anymore when considering the problem in the edgecloud environment, especially with the development of microservice, where a provisioned multi-machine cluster at each side is involved. To address this problem, we propose a new offloading model in this paper, where both the intra-part communication costs as well as the asymmetry of inter-part communication costs are incorporated to carry out the client application, which are not a part of previous approaches. Given this model, we first prove the offloading problem is NP-hard, then design an efficient greedy algorithm to obtain a sub-optimal solution. Our numerical results show that our algorithm for the new model is always efficient to find a better offloading scheme, compared with other existing algorithms that lack the notion of communication costs between tasks co-located at the same side and the asymmetry of communication costs crossing sides.
成本驱动的边缘计算卸载:一种新的模型方法
计算卸载是一种常用的优化方法,它利用功能强大、资源丰富的服务器,以最小的成本获得最大的计算效率。在这种方法中,客户机应用程序通常建模为加权有向无环图(DAG), DAG通常分为两个不同的部分——一个在客户机设备上运行,另一个在服务器机器上运行。为了简化模型,总是假设部件间的通信代价是对称的,而部件内部的通信代价通常被忽略。尽管这些假设对于传统移动计算中的卸载是合理的,但当考虑边缘云环境中的问题时,它们就不再有效了,特别是在微服务的开发中,其中每端都涉及到一个预先配置的多机器集群。为了解决这一问题,本文提出了一种新的卸载模型,在该模型中,部分内部通信成本和部分之间通信成本的不对称都被纳入到客户端应用程序中,这是以前的方法所没有的一部分。在此模型下,我们首先证明了卸载问题是np困难的,然后设计了一个高效的贪心算法来获得次优解。数值结果表明,与现有算法相比,我们的算法总是能有效地找到更好的卸载方案,而现有算法缺乏同侧任务间通信成本的概念和跨侧通信成本的不对称性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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