DocumentCode :
656222
Title :
Power-Aware Multi-data Center Management Using Machine Learning
Author :
Berral, J.L. ; Gavalda, Ricard ; Torres, Juana
Author_Institution :
Barcelona Supercomput. Center, Univ. Politec. de Catalunya, Barcelona, Spain
fYear :
2013
fDate :
1-4 Oct. 2013
Firstpage :
858
Lastpage :
867
Abstract :
The cloud relies upon multi-data center (multi-DC) infrastructures distributed along the world, where people and enterprises pay for resources to offer their web-services to worldwide clients. Intelligent management is required to automate and manage these infrastructures, as the amount of resources and data to manage exceeds the capacities of human operators. Also, it must take into account the cost of running the resources (energy) and the quality of service towards web-services and clients. (De-)consolidation and priming proximity to clients become two main strategies to allocate resources and properly place these web-services in the multi-DC network. Here we present a mathematical model to describe the scheduling problem given web-services and hosts across a multi-DC system, enhancing the decision makers with models for the system behavior obtained using machine learning. After running the system on real DC infrastructures we see that the model drives web-services to the best locations given quality of service, energy consumption, and client proximity, also (de-)consolidating according to the resources required for each web-service given its load.
Keywords :
Web services; cloud computing; computer centres; energy consumption; learning (artificial intelligence); power aware computing; quality of service; resource allocation; scheduling; Web-services; client proximity; cloud computing; consolidation; energy consumption; intelligent management; machine learning; mathematical model; multiDC infrastructure; power-aware multidata center management; priming proximity; quality of service; resource allocation; scheduling problem; Energy consumption; Mathematical model; Measurement; Monitoring; Predictive models; Quality of service; Time factors; Machine Learning; Multi-DataCenter; Power-Aware; Virtualization; Web-Services;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Parallel Processing (ICPP), 2013 42nd International Conference on
Conference_Location :
Lyon
ISSN :
0190-3918
Type :
conf
DOI :
10.1109/ICPP.2013.102
Filename :
6687426
Link To Document :
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