Estimating Power/Energy Consumption in Database Servers
نویسندگان
چکیده
The explosive growth in the size of data centers, coupled with the wide-spread use of virtualization technology has brought power and energy consumption as major concerns for data center administrators. Provisioning decisions must take into consideration not only target application performance but also the power demands and total energy consumption incurred by the hardware and software. Failure to do so will result in damaged equipment, power outages, and inefficient operation. Since database servers comprise one of the most popular and important server applications deployed in such facilities, it becomes necessary to have accurate cost models that can predict the power and energy demands that each database workloads will impose in the system. In this paper we present an empirical methodology to estimate the power and energy cost of database operations. Our methodology uses multiple-linear regression and factorial experimental design to derive accurate cost models that depend only on readily available statistics such as selectivity factors, tuple size, numbers columns and relational cardinality. Moreover, our method does not need measurement of individual hardware components, but rather total power and energy consumption measured at a server. We have implemented our methodology, and ran experiments with several server configurations. Our experiments indicate that we can predict power and energy more accurately than alternative methods. c © 2011 Published by Elsevier Ltd.
منابع مشابه
Database-Managed CPU Performance Scaling for Improved Energy Efficiency
Dynamic voltage and frequency scaling (DVFS) is a technique for adjusting the speed and power consumption of processors, allowing performance to be traded for reduced power consumption. Since CPUs are typically the largest consumers of power in modern servers, DVFS can have a significant impact on overall server power consumption. Modern operating systems include DVFS governors, which interact ...
متن کاملVM Consolidation by using Selection and Placement of VMs in Cloud Datacenters
The Cloud Computing model leverages virtualization of computing resources allowing customers to provision resources on-demand on a pay-as-you-go basis. During recent years, the power consumption of datacenters in cloud environment attracted researchers. Optimization of energy consumption can be performed by different methods including virtual machine (VM) consolidation. This technique can reduc...
متن کاملA Simple Model for Estimating Power Consumption of a Multicore Server System
Balancing the performance and the energy consumption of the servers is one of the important issues in large-scale computing infrastructure such as data centers. Measuring or accurately estimating power consumption of a server is one of the most fundamental and enabling technologies for enhancing energy efficiency of a server because how the server consumes the supplied power is essential for co...
متن کاملTrue Energy-efficient Data Processing is Only Gained by Energy-proportional DBMSs
As energy consumption and related costs are becoming a critical component for operating a data center, system developers as well as database researcher have to deal with this fact and should come up with approaches that increase the energy efficiency of a data center. Several proposal are already present in the literature which introduce approaches to increase the energy efficiency in a given s...
متن کاملRun-time Energy Consumption Estimation Based on Workload in Server Systems
This paper proposes to develop a system-wide energy consumption model for servers by making use of hardware performance counters and experimental measurements. We develop a real-time energy prediction model that relates server energy consumption to its overall thermal envelope. While previous studies have attempted system-wide modeling of server power consumption through subsystem models, our a...
متن کامل