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High Performance Reconfigurable Computing for Linear Algebra: Design and Performance Analysis

Date Issued
May 1, 2008
Author(s)
Sun, Junqing
Advisor(s)
Gregory D. Peterson
Additional Advisor(s)
Olaf O. Storaasli
Donald W. Bouldin
Jack Dongarra
Xiaorui Wang
Link to full text
http://etd.utk.edu/2008/SunJunqing.pdf
Permanent URI
https://trace.tennessee.edu/handle/20.500.14382/24612
Abstract

Field Programmable Gate Arrays (FPGAs) enable powerful performance acceleration for scientific computations because of their intrinsic parallelism, pipeline ability, and flexible architecture. This dissertation explores the computational power of FPGAs for an important scientific application: linear algebra. First of all, optimized linear algebra subroutines are presented based on enhancements to both algorithms and hardware architectures. Compared to microprocessors, these routines achieve significant speedup. Second, computing with mixed-precision data on FPGAs is proposed for higher performance. Experimental analysis shows that mixed-precision algorithms on FPGAs can achieve the high performance of using lower-precision data while keeping higher-precision accuracy for finding solutions of linear equations. Third, an execution time model is built for reconfigurable computers (RC), which plays an important role in performance analysis and optimal resource utilization of FPGAs. The accuracy and efficiency of parallel computing performance models often depend on mean maximum computations. Despite significant prior work, there have been no sufficient mathematical tools for this important calculation. This work presents an Effective Mean Maximum Approximation method, which is more general, accurate, and efficient than previous methods. Together, these research results help address how to make linear algebra applications perform better on high performance reconfigurable computing architectures.

Disciplines
Electrical and Computer Engineering
Degree
Doctor of Philosophy
Major
Electrical Engineering
Embargo Date
December 1, 2011
File(s)
Thumbnail Image
Name

SunJunqing.pdf

Size

798.91 KB

Format

Adobe PDF

Checksum (MD5)

799b25909893efe58c0cf187c7aa71d6

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