Energy Analysis of Hardware and Software Range Partitioning

IF 2 4区 计算机科学 Q2 COMPUTER SCIENCE, THEORY & METHODS ACM Transactions on Computer Systems Pub Date : 2014-09-23 DOI:10.1145/2638550
Lisa Wu, Orestis Polychroniou, R. J. Barker, Martha A. Kim, K. A. Ross
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引用次数: 11

Abstract

Data partitioning is a critical operation for manipulating large datasets because it subdivides tasks into pieces that are more amenable to efficient processing. It is often the limiting factor in database performance and represents a significant fraction of the overall runtime of large data queries. This article measures the performance and energy of state-of-the-art software partitioners, and describes and evaluates a hardware range partitioner that further improves efficiency. The software implementation is broken into two phases, allowing separate analysis of the partition function computation and data shuffling costs. Although range partitioning is commonly thought to be more expensive than simpler strategies such as hash partitioning, our measurements indicate that careful data movement and optimization of the partition function can allow it to approach the throughput and energy consumption of hash or radix partitioning. For further acceleration, we describe a hardware range partitioner, or HARP, a streaming framework that offers a seamless execution environment for this and other streaming accelerators, and a detailed analysis of a 32nm physical design that matches the throughput of four to eight software threads while consuming just 6.9% of the area and 4.3% of the power of a Xeon core in the same technology generation.
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硬件和软件范围划分的能量分析
数据分区是操作大型数据集的关键操作,因为它将任务细分为更易于高效处理的部分。它通常是数据库性能的限制因素,并且在大型数据查询的整体运行时中占很大一部分。本文测量了最先进的软件分区器的性能和能量,并描述和评估了进一步提高效率的硬件范围分区器。软件实现分为两个阶段,允许对配分函数计算和数据洗牌成本进行单独分析。虽然范围分区通常被认为比散列分区等简单策略更昂贵,但我们的测量表明,仔细的数据移动和优化分配函数可以使其接近散列或基数分区的吞吐量和能耗。为了进一步加速,我们描述了一个硬件范围分区器,或HARP,一个为这个和其他流加速器提供无缝执行环境的流框架,并详细分析了32nm物理设计,该设计与4到8个软件线程的吞吐量相匹配,而在同一技术世代中,仅消耗6.9%的面积和4.3%的功率至强核心。
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来源期刊
ACM Transactions on Computer Systems
ACM Transactions on Computer Systems 工程技术-计算机:理论方法
CiteScore
4.00
自引率
0.00%
发文量
7
审稿时长
1 months
期刊介绍: ACM Transactions on Computer Systems (TOCS) presents research and development results on the design, implementation, analysis, evaluation, and use of computer systems and systems software. The term "computer systems" is interpreted broadly and includes operating systems, systems architecture and hardware, distributed systems, optimizing compilers, and the interaction between systems and computer networks. Articles appearing in TOCS will tend either to present new techniques and concepts, or to report on experiences and experiments with actual systems. Insights useful to system designers, builders, and users will be emphasized. TOCS publishes research and technical papers, both short and long. It includes technical correspondence to permit commentary on technical topics and on previously published papers.
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