On Scalable In-Network Operator Placement for Edge Computing

Julien Gedeon, Michael Stein, L. Wang, M. Mühlhäuser
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引用次数: 11

Abstract

The drawbacks encountered in today's cloud computing infrastructures have led to a paradigm shift towards in-network processing, where resources in the core and at the edge of the network are leveraged to perform computations. This can lead to decreased costs and better quality of service for users, e.g., when latency-critical applications are executed close to data sources and users. Deploying applications or parts thereof on these infrastructures requires to place operators (i.e., functional components of applications) on available resources in the network. Solving large instances of this problem in an optimal way is known to be computationally hard and, thus, practically unfeasible. While heuristic approaches exist, they mostly aim at placing functionalities on homogeneous nodes or make unrealistic assumptions for edge computing environments. To address this issue, this paper studies the placement problem in the context of a 3-tier architecture consisting of cloud, fog and edge devices. We provide a comprehensive model and propose a heuristic approach to the problem, in which we introduce constraints on the placement decision to limit the possible solution space, leading to a decrease in the solving time for the problem. These constraints exploit the characteristics of our 3-tier network architecture. To demonstrate the feasibility of the approach, we present a general framework that supports different types of heuristics. We validate the approach by implementing example heuristics for each type. We show that our approach can scale to large instances, i.e., it can significantly reduce the resolution time to find a placement solution while introducing only a small optimality gap.
基于边缘计算的可扩展网络算子布局研究
在当今的云计算基础设施中遇到的缺点导致了向网络内处理的范式转变,其中利用核心和网络边缘的资源来执行计算。这可以降低成本并为用户提供更好的服务质量,例如,当延迟关键型应用程序在数据源和用户附近执行时。在这些基础设施上部署应用程序或其部分需要将运营商(即应用程序的功能组件)放置在网络中的可用资源上。众所周知,以最优的方式解决这个问题的大型实例在计算上是困难的,因此实际上是不可行的。虽然存在启发式方法,但它们大多旨在将功能放在同构节点上,或者对边缘计算环境做出不切实际的假设。为了解决这个问题,本文研究了由云、雾和边缘设备组成的三层架构背景下的放置问题。我们提供了一个全面的模型,并提出了一种启发式方法来解决这个问题,其中我们引入了对放置决策的约束来限制可能的解决空间,从而减少了问题的解决时间。这些约束利用了我们三层网络架构的特点。为了证明该方法的可行性,我们提出了一个支持不同类型启发式的通用框架。我们通过为每种类型实现示例启发式来验证该方法。我们表明,我们的方法可以扩展到大型实例,即,它可以显着减少找到放置解决方案的解析时间,同时只引入很小的最优性差距。
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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