Scalable Stochastic Models for Cloud Services

dc.contributor.advisor

Trivedi, Kishor S

dc.contributor.author

Ghosh, Rahul

dc.date.accessioned

2013-01-16T20:26:53Z

dc.date.available

2013-01-16T20:26:53Z

dc.date.issued

2012

dc.department

Electrical and Computer Engineering

dc.description.abstract

Cloud computing appears to be a paradigm shift in service oriented computing. Massively scalable Cloud architectures are spawned by new business and social applications as well as Internet driven economics. Besides being inherently large scale and highly distributed, Cloud systems are almost always virtualized and operate in automated shared environments. The deployed Cloud services are still in their infancy and a variety of research challenges need to be addressed to predict their long-term behavior. Performance and dependability of Cloud services are in general stochastic in nature and they are affected by a large number of factors, e.g., nature of workload and faultload, infrastructure characteristics and management policies. As a result, developing scalable and predictive analytics for Cloud becomes difficult and non-trivial. This dissertation presents the research framework needed to develop high fidelity stochastic models for large scale enterprise systems using Cloud computing as an example. Throughout the dissertation, we show how the developed models are used for: (i) performance and availability analysis, (ii) understanding of power-performance trade-offs, (ii) resiliency quantification, (iv) cost analysis and capacity planning, and (v) risk analysis of Cloud services. In general, the models and approaches presented in this thesis can be useful to a Cloud service provider for planning, forecasting, bottleneck detection, what-if analysis or overall optimization during design, development, testing and operational phases of a Cloud.

dc.identifier.uri

https://hdl.handle.net/10161/6110

dc.subject

Computer engineering

dc.subject

Computer science

dc.subject

Electrical engineering

dc.subject

Analytics

dc.subject

Cloud

dc.subject

Markov chains

dc.subject

Optimization

dc.subject

Performance modeling

dc.subject

Stochastic processes

dc.title

Scalable Stochastic Models for Cloud Services

dc.type

Dissertation

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
Ghosh_duke_0066D_11619.pdf
Size:
5.42 MB
Format:
Adobe Portable Document Format

Collections