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Self-Adaptation Based on Big Data Analytics: A Model Problem and Tool

机译:基于大数据分析的自适应:模型问题和工具

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In this paper, we focus on self-adaptation in large-scale software-intensive distributed systems. The main problem in making such systems self-adaptive is that their adaptation needs to consider the current situation in the whole system. However, developing a complete and accurate model of such systems at design time is very challenging. To address this, we present a novel approach where the system model consists only of the essential input and output parameters. Furthermore, Big Data analytics is used to guide self-adaptation based on a continuous stream of operational data. We provide a concrete model problem and a reference implementation of it that can be used as a case study for evaluating different self-adaptation techniques pertinent to complex large-scale distributed systems. We also provide an extensible tool for endorsing an arbitrary system with self-adaptation based on analysis of operational data coming from the system. To illustrate the tool, we apply it on the model problem.
机译:在本文中,我们专注于大型软件密集型分布式系统中的自适应。使这样的系统自适应的主要问题是它们的适应性需要考虑整个系统的当前状况。但是,在设计时开发此类系统的完整而准确的模型非常具有挑战性。为了解决这个问题,我们提出了一种新颖的方法,其中系统模型仅由基本输入和输出参数组成。此外,大数据分析可用于根据连续的运营数据流来指导自适应。我们提供了一个具体的模型问题及其参考实现,可以作为案例研究来评估与复杂的大型分布式系统相关的各种自适应技术。我们还提供了可扩展的工具,用于基于对来自系统的操作数据的分析,对具有自适应功能的任意系统进行认可。为了说明该工具,我们将其应用于模型问题。

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