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Performance prediction and adaptation for database management system workload using Case-Based Reasoning approach

机译:基于案例推理的数据库管理系统工作负载性能预测和适应

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Workload management in a Database Management System (DBMS) has become difficult and challenging because of workload complexity and heterogeneity. During and after execution of the workload, it is hard to control and handle the workload. Before executing the workload, predicting its performance can help us in workload management. By knowing the type of workload in advance, we can predict its performance in an adaptive way that will enable us to monitor and control the workload, which ultimately leads to performance tuning of the DBMS. This study proposes a predictive and adaptive framework named as the Autonomic Workload Performance Prediction (AWPP) framework. The proposed AWPP framework predicts and adapts the DBMS workload performance on the basis of information available in advance before executing the workload. The Case-Based Reasoning (CBR) approach is used to solve the workload management problem. The proposed CBR approach is compared with other machine learning techniques. To validate the AWPP framework, a number of benchmark workloads of the Decision Support System (DSS) and the Online Transaction Processing (OLTP) are executed on the MySQL DBMS. For preparation of training and testing data, we executed more than 1000 TPC-H and TPC-C like workloads on a standard data set. The results show that our proposed AWPP framework through CBR modeling performs better in predicting and adapting the DBMS workload. DBMSs algorithms can be optimized for this prediction and workload can be controlled and managed in a better way. In the end, the results are validated by performing post-hoc tests. (C) 2018 Elsevier Ltd. All rights reserved.
机译:由于工作负载的复杂性和异构性,数据库管理系统(DBMS)中的工作负载管理变得困难和挑战。在工作负载执行期间和之后,很难控制和处理工作负载。在执行工作负载之前,预测其性能可以帮助我们进行工作负载管理。通过事先了解工作负载的类型,我们可以以自适应方式预测其性能,这将使我们能够监视和控制工作负载,最终导致DBMS的性能调整。这项研究提出了一种称为自适应工作负荷性能预测(AWPP)框架的预测性和自适应框架。拟议的AWPP框架根据执行工作负载之前的可用信息来预测和调整DBMS工作负载性能。基于案例的推理(CBR)方法用于解决工作负载管理问题。所提出的CBR方法与其他机器学习技术进行了比较。为了验证AWPP框架,在MySQL DBMS上执行了决策支持系统(DSS)和在线事务处理(OLTP)的许多基准工作负载。为了准备培训和测试数据,我们在标准数据集上执行了1000多个TPC-H和TPC-C之类的工作负载。结果表明,我们通过CBR建模提出的AWPP框架在预测和适应DBMS工作量方面表现更好。可以为此预测优化DBMS算法,并以更好的方式控制和管理工作负载。最后,通过事后测试验证结果。 (C)2018 Elsevier Ltd.保留所有权利。

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