Identifier

etd-11152010-105813

Degree

Doctor of Philosophy (PhD)

Department

Computer Science

Document Type

Dissertation

Abstract

For large-scale distributed applications, effective use of available network throughput and optimization of data transfer speed is crucial for end-to-end application performance. Today, many regional and national optical networking initiatives such as LONI, ESnet and Teragrid provide high speed network connectivity to their users. However, majority of the users fail to obtain even a fraction of the theoretical speeds promised by these networks due to issues such as sub-optimal protocol tuning, disk bottleneck on the sending and/or receiving ends, and processor limitations. This implies that having high speed networks in place is important but not sufficient for the improvement of end-to-end data transfer throughput. Being able to effectively use these high speed networks is becoming more and more important. Optimization of the underlying protocol parameters at the application layer (i.e. opening multiple parallel TCP streams, tuning the TCP buffer size and I/O block size) is one way of improving the network transfer throughput. On the other hand, end-to-end data transfer throughput bottleneck on high performance networking systems occur mostly at the participating storage systems rather than the network. The performance of a storage system heavily depends on the speed of its disk and CPU subsystems. Thus, it is critical to estimate the storage system's bandwidth at both endpoints in addition to the network bandwidth. Disk bottleneck can be eliminated by the use of multiple disks (data striping), and CPU bottleneck can be eliminated by the use of multiple processors (parallelism). In this dissertation, we develop application-level models to predict the best combination of protocol parameters for optimal network performance, including the number of parallel data streams, protocol buffer size; and integration of disk and CPU speed parameters into the performance model to predict the optimal number of disk and CPU striping for the best end-to-end data throughput. These models will be made available to the community for use in data transfer tools, schedulers, and high-level planners.

Date

2010

Document Availability at the Time of Submission

Release the entire work immediately for access worldwide.

Committee Chair

Kosar, Tevfik

DOI

10.31390/gradschool_dissertations.1716

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