Transactional Auto Scaler: Elastic Scaling of Replicated In-Memory Transactional Data Grids

IF 2.2 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE ACM Transactions on Autonomous and Adaptive Systems Pub Date : 2014-07-01 DOI:10.1145/2620001
Diego Didona, P. Romano, Sebastiano Peluso, F. Quaglia
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引用次数: 24

Abstract

In this article, we introduce TAS (Transactional Auto Scaler), a system for automating the elastic scaling of replicated in-memory transactional data grids, such as NoSQL data stores or Distributed Transactional Memories. Applications of TAS range from online self-optimization of in-production applications to the automatic generation of QoS/cost-driven elastic scaling policies, as well as to support for what-if analysis on the scalability of transactional applications. In this article, we present the key innovation at the core of TAS, namely, a novel performance forecasting methodology that relies on the joint usage of analytical modeling and machine learning. By exploiting these two classically competing approaches in a synergic fashion, TAS achieves the best of the two worlds, namely, high extrapolation power and good accuracy, even when faced with complex workloads deployed over public cloud infrastructures. We demonstrate the accuracy and feasibility of TAS’s performance forecasting methodology via an extensive experimental study based on a fully fledged prototype implementation integrated with a popular open-source in-memory transactional data grid (Red Hat’s Infinispan) and industry-standard benchmarks generating a breadth of heterogeneous workloads.
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事务性自动缩放器:内存中复制事务性数据网格的弹性缩放
在本文中,我们将介绍TAS (Transactional Auto Scaler),这是一个用于自动伸缩复制内存中的事务数据网格(如NoSQL数据存储或分布式事务内存)的系统。TAS的应用范围从生产应用程序的在线自优化到QoS/成本驱动的弹性扩展策略的自动生成,以及支持对事务性应用程序的可伸缩性进行假设分析。在本文中,我们提出了TAS核心的关键创新,即一种新的性能预测方法,该方法依赖于分析建模和机器学习的联合使用。通过以协同方式利用这两种经典的竞争方法,TAS实现了两个世界的最佳效果,即高外推能力和良好的准确性,即使面对部署在公共云基础设施上的复杂工作负载也是如此。我们通过一项广泛的实验研究,证明了TAS性能预测方法的准确性和可行性,该实验研究基于一个完全成熟的原型实现,该原型实现集成了一个流行的开源内存事务数据网格(Red Hat的Infinispan)和行业标准基准,生成了广泛的异构工作负载。
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来源期刊
ACM Transactions on Autonomous and Adaptive Systems
ACM Transactions on Autonomous and Adaptive Systems 工程技术-计算机:理论方法
CiteScore
4.80
自引率
7.40%
发文量
9
审稿时长
>12 weeks
期刊介绍: TAAS addresses research on autonomous and adaptive systems being undertaken by an increasingly interdisciplinary research community -- and provides a common platform under which this work can be published and disseminated. TAAS encourages contributions aimed at supporting the understanding, development, and control of such systems and of their behaviors. TAAS addresses research on autonomous and adaptive systems being undertaken by an increasingly interdisciplinary research community - and provides a common platform under which this work can be published and disseminated. TAAS encourages contributions aimed at supporting the understanding, development, and control of such systems and of their behaviors. Contributions are expected to be based on sound and innovative theoretical models, algorithms, engineering and programming techniques, infrastructures and systems, or technological and application experiences.
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