DocumentCode :
669929
Title :
ACE: Abstracting, characterizing and exploiting datacenter power demands
Author :
Di Wang ; Chuangang Ren ; Govindan, S. ; Sivasubramaniam, Anand ; Urgaonkar, Bhuvan ; Kansal, Apoorv ; Vaid, Kushagra
Author_Institution :
Pennsylvania State Univ., University Park, PA, USA
fYear :
2013
fDate :
22-24 Sept. 2013
Firstpage :
44
Lastpage :
55
Abstract :
Peak power management of datacenters has tremendous cost implications. While numerous mechanisms have been proposed to cap power consumption, real datacenter power consumption data is scarce. Prior studies have either used a small set of applications and/or servers, or presented data that is at an aggregate scale from which it is difficult to design and evaluate new and existing optimizations. To address this gap, we collect power measurement data at multiple spatial and fine-grained temporal resolutions from several geo-distributed datacenters of Microsoft corporation over 6 months. We conduct aggregate analysis of this data to study its statistical properties. We find evidence of self-similarity in power demands, statistical multiplexing effects, and correlations with the cooling power that caters to the IT equipment. With workload characterization a key ingredient for systems design and evaluation, we note the importance of better abstractions for capturing power demands, in the form of peaks and valleys. We identify attributes for peaks and valleys, and important correlations across these attributes that can influence the choice and effectiveness of different power capping techniques. We characterize these attributes and their correlations, showing the burstiness of small duration peaks, and the importance of not ignoring the rare but more stringent or long peaks. The correlations between peaks and valleys suggest the need for techniques to aggregate and collectively handle them. With the wide scope of exploitability of such characteristics for power provisioning and optimizations, we illustrate its benefits with two specific case studies. The first shows how peaks can be differentially handled based on our peak and valley characterization using existing approaches, rather than a one-size-fits-all solution. The second illustrates a simple capacity provisioning strategy for energy storage using the peak and valley characteristics.
Keywords :
computer centres; power aware computing; statistical analysis; ACE; IT equipment; Microsoft corporation; cooling power; cost implications; datacenter power consumption data; datacenter power demand abstraction; datacenter power demand characterization; datacenter power demand exploitation; energy storage; fine-grained temporal resolutions; geo-distributed datacenters; one-size-fits-all solution; optimizations; peak characterization; peak power management; power demands; power measurement data; power provisioning; statistical multiplexing effects; statistical properties; valley characterization; Aggregates; Capacity planning; Character recognition; Cooling; Correlation; Power demand; Power measurement; datacenters; power demand characteristics;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Workload Characterization (IISWC), 2013 IEEE International Symposium on
Conference_Location :
Portland, OR
Print_ISBN :
978-1-4799-0553-9
Type :
conf
DOI :
10.1109/IISWC.2013.6704669
Filename :
6704669
Link To Document :
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