File classification in self-* storage systems

TitleFile classification in self-* storage systems
Publication TypeConference Paper
Year of Publication2004
AuthorsMesnier, Michael, Thereska Eno, Ellard Daniel, Ganger Gregory R., and Seltzer Margo
Conference Name 2004 International Conference on Autonomic Computing (ICAC-04)
Date PublishedMay 2004
Keywordsfilesystems
Abstract

To tune and manage themselves, file and storage systems must understand key properties (e.g., access pattern, lifetime, size) of their various files. This paper describes how systems can automatically learn to classify the properties of files (e.g., read-only access pattern, short-lived, small in size) and predict the properties of new files, as they are created, by exploiting the strong associations between a file's properties and the names and attributes assigned to it. These associations exist, strongly but differently, in each of four real NFS environments studied. Decision tree classifiers can automatically identify and model such associations, providing prediction accuracies that often exceed 90%. Such predictions can be used to select storage policies (e.g., disk allocation schemes and replication factors) for individual files. Further, changes in associations can expose information about applications, helping autonomic system components distinguish growth from fundamental change.

URLhttp://www.eecs.harvard.edu/syrah/papers/icac-04/