Serverless Computing Platforms Performance and Scalability Implementation Analysis

N. Kumar, Samy S Selvakumara
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Abstract

Serverless computing and Platform as a Service (PaaS) are similar in that they are both tiny runtime containers that enable infrastructure-free execution of individual lines of code. In 2014, Amazon launched Lambda functions, an event-driven computing platform with a 25 concurrent maximum. Like Platform as a Service (PaaS), but without the overhead of managing the underlying infrastructure, with serverless computing, programs may be executed in a small runtime environment. In 2014, Amazon introduced event-driven computing with the Lambda functions. Functions are often designed for microservices and light workloads, although they are connected to concurrent distributed data processing. We claim that existing serverless computing platforms may allow dynamic applications to operate simultaneously if a partitioned operation can be finished on a small function instance. Results for compute performance in terms of throughput, network bandwidth, file I/O, and concurrent invocations are shown. Even though our solution is yet a prototype, we believe the suggested strategy has a lot of potential. We also talk about potential next steps for running scientific procedures on serverless infrastructures. This paper provides a cost and runtime throughput of several cloud service providers and computes with our prototype model. We do a cost analysis, time conception and performance analysis in the end and discuss the implications for scientific applications' resource management in general.
无服务器计算平台性能与可扩展性实现分析
无服务器计算和平台即服务(PaaS)的相似之处在于,它们都是小型运行时容器,支持独立代码行无需基础设施的执行。2014年,亚马逊推出了Lambda函数,这是一个事件驱动的计算平台,最大并发数为25。与平台即服务(PaaS)类似,但没有管理底层基础设施的开销,使用无服务器计算,程序可以在小型运行时环境中执行。2014年,亚马逊推出了带有Lambda函数的事件驱动计算。函数通常是为微服务和轻量级工作负载设计的,尽管它们连接到并发分布式数据处理。我们声称,如果一个分区操作可以在一个小的功能实例上完成,现有的无服务器计算平台可能允许动态应用程序同时运行。显示了吞吐量、网络带宽、文件I/O和并发调用方面的计算性能结果。尽管我们的解决方案还只是一个原型,但我们相信建议的策略有很大的潜力。我们还讨论了在无服务器基础设施上运行科学程序的潜在后续步骤。本文用我们的原型模型提供了几个云服务提供商和计算的成本和运行时吞吐量。最后进行了成本分析、时间概念和性能分析,并讨论了对科学应用资源管理的启示。
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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