OBRE: OFFER-BORROW-REFORM-EVALUATE INITIATIVES FOR GREEN DBMSS

Amine Roukh, Ladjel Bellatreche, Nikos Tziritas
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Abstract

In the last few years, we have been seeing a significant increase in research about the energy efficiency of hardware and software components by both academic and industry. Today, energy efficiency is one of the most challenging issues in the area of information technologies and communication. In data-centric applications, database management systems are one of the major energy consumers, in which, a large amount of data is queried by complex queries running daily. Designing and implementing of an energy-aware DBMS that enables significant energy conservation while processing queries become a necessary need. Traditionally, existing DBMSs focus to high-performance during query optimization phase, while totally ignoring the energy consumption of the queries. In this paper, we propose a methodology, supported by a tool called EcoProD, focusing on query optimizers. To show its effectiveness, we implement it in Post-greSQL DBMS aiming reducing energy consumption without degrading query response time. A mathematical cost model is used to estimate the energy consumption. Its parameters are identified by a machine learning technique. We conduct intensive experiments using our cost models and a measurement tool dedicated to compute energy using dataset of TPC-H benchmark. Based on the obtained results, a probabilistic proof to demonstrate the confidence bounds of our model and results is given.
为绿色DBMSS提供-借贷-改革-评估方案
在过去的几年里,我们看到学术界和工业界在硬件和软件组件的能源效率方面的研究有了显著的增长。今天,能源效率是信息技术和通信领域最具挑战性的问题之一。在以数据为中心的应用程序中,数据库管理系统是主要的能源消耗者之一,其中每天运行的复杂查询查询了大量数据。设计和实现一个能感知能源的DBMS,在处理查询时实现显著的能源节约,成为一种必要的需求。传统上,现有的dbms在查询优化阶段关注的是性能,而完全忽略了查询的能耗。在本文中,我们提出了一种方法,由一个名为EcoProD的工具支持,重点关注查询优化器。为了证明它的有效性,我们在Post-greSQL DBMS中实现了它,目的是在不降低查询响应时间的情况下降低能耗。采用数学成本模型对能耗进行估算。其参数由机器学习技术识别。我们使用我们的成本模型和专用于计算能源的测量工具进行了密集的实验,使用TPC-H基准数据集。在此基础上,给出了模型和结果的置信区间的概率证明。
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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