无服务器工作流配置的概率建模和进化优化方法

Weiguo Wang, Quanwang Wu, Zhiyong Zhang, Jie Zeng, Xiang Zhang, Mingqiang Zhou
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引用次数: 0

摘要

无服务器计算由于其高可扩展性、易用性和成本效益,已成为当今开发云原生应用程序的主流范式。然而,由于其基础设施透明度较差,当用户将其应用程序迁移到无服务器平台时,出现了两个主要挑战:缺乏有效的性能和计费分析模型,以及它们之间的权衡问题。本文正式定义了一个无服务器工作流,并引入了执行实例的概念。在此基础上,建立了一个概率性能和成本评估模型,以获得它们对无输入服务器工作流的期望值。然后,我们设计了一种定制的进化优化算法EASW来解决预算约束下的性能优化和性能约束下的成本优化问题。在AWS Lambda上进行了大量的实验来测试所提出的模型和优化算法。结果表明,该模型的准确率超过98%,EASW比现有的约束优化方法能得到更好的内存配置解。
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A probabilistic modeling and evolutionary optimization approach for serverless workflow configuration
Abstract Serverless computing has nowadays become a mainstream paradigm to develop cloud‐native applications owing to its high scalability, ease of usage and cost‐effectiveness. Nevertheless, because of its poor infrastructure transparency, two main challenges emerge when users migrate their applications to a serverless platform: the lack of an effective analytical model for performance and billing, and the trade‐off problem between them. In this paper, we formally define a serverless workflow and introduce the concept of execution instances. Based on them, a probabilistic performance and cost evaluation model is built to obtain their expected values for an input serverless workflow. Then, we design a tailored evolutionary optimization algorithm called EASW to tackle budget‐constrained performance optimization and performance‐constrained cost optimization problems. Extensive experiments were carried out to test the proposed model and optimization algorithm on AWS Lambda. Results reveal that our model can achieve an accuracy over 98% and EASW can yield a better memory configuration solution than existing methods for constrained optimization.
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