动态细粒度调度节能主存查询

Iraklis Psaroudakis, T. Kissinger, Danica Porobic, T. Ilsche, Erietta Liarou, Pınar Tözün, A. Ailamaki, Wolfgang Lehner
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引用次数: 24

摘要

电力和冷却成本是当今数据中心的最高成本,这使得提高能源效率至关重要。对于为各种计算设备供电的芯片来说,能源效率也是一个主要的设计要点。该领域的一个重要目标是能量比例,认为系统的功耗应该与其性能成正比。目前,源于移动设备芯片设计的服务器处理器的一个主要趋势是包含先进的电源管理技术,如动态电压频率缩放、时钟门控和涡轮模式。最近关于数据库管理系统能源效率的许多工作都集中在多机器和整个查询粒度的粗粒度电源管理上。然而,这些技术不能有效地适应当代工作负载频繁波动的行为。在本文中,我们认为数据库应该采用细粒度的方法,通过使用精确的硬件模型动态调度任务。这些模型可以通过在调度策略、并行性和内存访问策略的不同组合下校准操作符来生成。该模型可用于运行时的动态调度和电源管理,以提高整体能源效率。我们通过实验证明,对于基本的内存密集型数据库操作(如扫描),能源效率可以提高4倍。
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Dynamic fine-grained scheduling for energy-efficient main-memory queries
Power and cooling costs are some of the highest costs in data centers today, which make improvement in energy efficiency crucial. Energy efficiency is also a major design point for chips that power whole ranges of computing devices. One important goal in this area is energy proportionality, arguing that the system's power consumption should be proportional to its performance. Currently, a major trend among server processors, which stems from the design of chips for mobile devices, is the inclusion of advanced power management techniques, such as dynamic voltage-frequency scaling, clock gating, and turbo modes. A lot of recent work on energy efficiency of database management systems is focused on coarse-grained power management at the granularity of multiple machines and whole queries. These techniques, however, cannot efficiently adapt to the frequently fluctuating behavior of contemporary workloads. In this paper, we argue that databases should employ a fine-grained approach by dynamically scheduling tasks using precise hardware models. These models can be produced by calibrating operators under different combinations of scheduling policies, parallelism, and memory access strategies. The models can be employed at run-time for dynamic scheduling and power management in order to improve the overall energy efficiency. We experimentally show that energy efficiency can be improved by up to 4x for fundamental memory-intensive database operations, such as scans.
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