Sciweavers

ICAC
2006
IEEE

Learning Application Models for Utility Resource Planning

14 years 5 months ago
Learning Application Models for Utility Resource Planning
Abstract— Shared computing utilities allocate compute, network, and storage resources to competing applications on demand. An awareness of the demands and behaviors of the hosted applications can help the system to manage its resources more effectively. This paper proposes an active learning approach that analyzes performance histories to build predictive models of frequently used applications; the histories consist of measures gathered from noninvasive instrumentation on previous runs with varying assignments of compute, network, and storage resources. An initial prototype uses linear regression to predict application interactions with candidate resources, and combines them to forecast completion time for a candidate resource assignment. Experimental results from the prototype show that the mean forecasting errors range from 1% to 11% for a set of batch tasks captured from a production cluster. Examples illustrate how a system can use the learned models to guide task placement and d...
Piyush Shivam, Shivnath Babu, Jeffrey S. Chase
Added 11 Jun 2010
Updated 11 Jun 2010
Type Conference
Year 2006
Where ICAC
Authors Piyush Shivam, Shivnath Babu, Jeffrey S. Chase
Comments (0)