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SIGMETRICS
2004
ACM

Storage device performance prediction with CART models

14 years 5 months ago
Storage device performance prediction with CART models
d Abstract] Mengzhi Wang, Kinman Au, Anastassia Ailamaki, Anthony Brockwell, Christos Faloutsos, and Gregory R. Ganger Carnegie Mellon University This work explores the application of a machine learning tool, CART modeling, to storage devices. We have developed approaches to predict a device’s performance as a function of input workloads, requiring no knowledge of the device internals. Two uses of CART models are considered: one that predicts per-request response times (and then derives aggregate values) and one that predicts aggregate values directly from workload characteristics. After training on the device in question, both provide reasonably-accurate black box models across a range of test traces from real environments. An expanded version of this paper is available as a technical report [1]. Categories and Subject Descriptors C.4 [Performance of systems]: Modeling techniques; D.4.8 [Performance]: Modeling and Prediction General Terms Experimentation,Performance,Management Keyw...
Mengzhi Wang, Kinman Au, Anastassia Ailamaki, Anth
Added 30 Jun 2010
Updated 30 Jun 2010
Type Conference
Year 2004
Where SIGMETRICS
Authors Mengzhi Wang, Kinman Au, Anastassia Ailamaki, Anthony Brockwell, Christos Faloutsos, Gregory R. Ganger
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