志愿者云中协作工作负载执行的全局方法

A Holistic Approach for Collaborative Workload Execution in Volunteer Clouds

ACM Transactions on Modeling and Computer Simulation · 2018
被引 13
ABS 3

中文导读

提出一种志愿者云中支持协作任务执行的全局方法,通过扩展蚁群优化算法和基于工作负载的网络分区,提升计算密集型工作负载的服务质量,仿真实验表明优于传统调度算法。

Abstract

The demand for provisioning, using, and maintaining distributed computational resources is growing hand in hand with the quest for ubiquitous services. Centralized infrastructures such as cloud computing systems provide suitable solutions for many applications, but their scalability could be limited in some scenarios, such as in the case of latency-dependent applications. The volunteer cloud paradigm aims at overcoming this limitation by encouraging clients to offer their own spare, perhaps unused, computational resources. Volunteer clouds are thus complex, large-scale, dynamic systems that demand for self-adaptive capabilities to offer effective services, as well as modeling and analysis techniques to predict their behavior. In this article, we propose a novel holistic approach for volunteer clouds supporting collaborative task execution services able to improve the quality of service of compute-intensive workloads. We instantiate our approach by extending a recently proposed ant colony optimization algorithm for distributed task execution with a workload-based partitioning of the overlay network of the volunteer cloud. Finally, we evaluate our approach using simulation-based statistical analysis techniques on a workload benchmark provided by Google. Our results show that the proposed approach outperforms some traditional distributed task scheduling algorithms in the presence of compute-intensive workloads.

云计算分布式计算任务调度志愿者云服务质量