-
Workload-Aware Live Storage Migration for Clouds
- Back
Metadata
Document Title
Workload-Aware Live Storage Migration for Clouds
Author
Zheng J, Ng TSE, Sripanidkulchai K
Name from Authors Collection
Affiliations
Rice University; National Science & Technology Development Agency - Thailand; National Electronics & Computer Technology Center (NECTEC)
Type
Article; Proceedings Paper
Source Title
ACM SIGPLAN NOTICES
ISSN
0362-1340
Year
2011
Volume
46
Issue
1
Open Access
Green Published
Publisher
ASSOC COMPUTING MACHINERY
DOI
10.1145/2007477.1952700
Format
Abstract
The emerging open cloud computing model will provide users with great freedom to dynamically migrate virtualized computing services to, from, and between clouds over the wide-area. While this freedom leads to many potential benefits, the running services must be minimally disrupted by the migration. Unfortunately, current solutions for wide-area migration incur too much disruption as they will significantly slow down storage I/O operations during migration. The resulting increase in service latency could be very costly to a business. This paper presents a novel storage migration scheduling algorithm that can greatly improve storage I/O performance during wide-area migration. Our algorithm is unique in that it considers individual virtual machine's storage I/O workload such as temporal locality, spatial locality and popularity characteristics to compute an efficient data transfer schedule. Using a fully implemented system on KVM and a trace-driven framework, we show that our algorithm provides large performance benefits across a wide range of popular virtual machine workloads.
Keyword
Algorithms | Cloud Computing | Design | Experimentation | Live Storage Migration | Performance | Scheduling | Virtual Machine | Workload-aware
Funding Sponsor
NSF [CNS-0448546, NeTS FIND CNS-0721990, NeTS CNS-1018807]; IBM Faculty; Alfred P. Sloan Research; Microsoft Corp.; IBM
License
Copyright
Rights
Publisher
Publication Source
WOS