See this document in CiteSeerX!

Modeling the relative fitness of storage devices  (Make Corrections)  
Michael Mesnier Intel Corp., Carnegie Mellon Matthew Wachs, Gregory Ganger...



  Home/Search   Context   Related

 
View or download:
cmu.edu/PDLFTP/Se...CMUPDL05106.pdf
Cached:  PDF   PS.gz  PS  Image  Update  Help

From:  cmu.edu/Publications/index (more)
(Enter author homepages)

Rate this article: (best)
  Comment on this article  
(Enter summary)

Abstract: Relative fitness modeling is a new approach for predicting the performance and resource utilization of a workload when running on a particular storage device. In contrast with conventional device models, which expect deviceindependent workload characteristics as input, a relative fitness model makes predictions based on characteristics measured on a specific other device. As such, relative fitness models explicitly account for the workload changes that almost always result from moving a... (Update)

Active bibliography (related documents):   More   All
2.1:   Modeling the Relative Fitness of Storage Devices - Michael Mesnier Intel   (Correct)
0.9:   Performance Modeling of Storage Devices Using Machine Learning - Wang (2006)   (Correct)
0.3:   Self-* Storage: Brick-based storage with automated.. - Ganger, Strunk, Klosterman (2003)   (Correct)

Similar documents based on text:
0.0:   Unknown -   (Correct)

BibTeX entry:   (Update)

@misc{ intel-modeling,
  author = "Michael Mesnier Intel",
  title = "Modeling the Relative Fitness of Storage Devices",
  url = "citeseer.ist.psu.edu/752333.html" }
Citations (may not include all citations):
52   Hippodrome: running circles around storage administration - Anderson, Hobbs et al. - 2002
33   Minerva: an automated resource provisioning tool for large-s.. - Alvarez, Wilkes et al. - 2001  DBLP
32   Using attribute-managed storage to achieve QoS - Borowsky, Golding et al. - 1997
30   Generating representative synthetic workloads: an unsolved p.. - Ganger - 1995
23   Evolutionary Biology (context) - Futuyma - 1998
20   An analytic behavior model for disk drives with readahead ca.. - Shriver, Merchant et al. - 1998  ACM   DBLP
20   Self-similarity in file systems - Gribble, Manku et al. - 1998  ACM   DBLP
17   Ergastulum: an approach to solving the workload and device c.. (context) - Anderson, Kallahalla et al. - 2001
14   Simple table-based modeling of storage devices (context) - Anderson - 2001
13   analytical throughput model for modern disk arrays (context) - Uysal, Alvarez et al. - 2001
12   Using system-level models to evaluate I/O subsystem designs - Ganger, Patt - 1998  ACM   DBLP
8   Storage Device Performance Prediction with CART Models - Wang, Au et al. - 2004  ACM
6   Capturing the Spatio-Temporal Behavior of Real Traffic Data - Wang, Ailamaki et al. - 2002  ACM   DBLP
4   Chapman and HallCRC (context) - Jerome, Olshen et al. - 1998
4   Issues and challenges in the performance analysis of real di.. - Varki, Merchant et al. - 2004  ACM
3   Using the distiller to direct the development of selfconfigu.. (context) - Kurmas, Keeton - 2004
2   and Simulation of Computer and Telecommunications Systems (context) - Kurmas, Keeton et al. - 2003
http://www.sourceforge.net/projects/intel-iscsi
http://www.ietf.org/rfc/rfc3720.txt
http://www.netapp.com

Documents on the same site (http://www.pdl.cs.cmu.edu/Publications/index.html):   More
Backward Error Recovery in Redundant Disk Arrays - II, Gibson (1994)   (Correct)
Filesystems for Network-Attached Secure Disks - Gibson, al. (1997)   (Correct)
Informed Multi-Process Prefetching and Caching - Tomkins, Patterson, Gibson (1997)   (Correct)

Online articles have much greater impact   More about CiteSeer.IST   Add search form to your site   Submit documents   Feedback  

CiteSeer.IST - Copyright Penn State and NEC