DocumentCode
1279665
Title
Scalable parallel implementations of list ranking on fine-grained machines
Author
Patel, Jamshed N. ; Khokhar, Ashfaq A. ; Jamieson, Leah H.
Author_Institution
Adv. Technol. Div., Oracle Corp., Redwood Shores, CA, USA
Volume
8
Issue
10
fYear
1997
fDate
10/1/1997 12:00:00 AM
Firstpage
1006
Lastpage
1018
Abstract
We present analytical and experimental results for fine-grained list ranking algorithms. We compare the scalability of two representative algorithms on random lists, then address the question of how the locality properties of image edge lists can be used to improve the performance of this highly data-dependent operation. Starting with Wyllie´s algorithm and Anderson and Miller´s randomized algorithm as bases, we use the spatial locality of edge links to derive scalable algorithms designed to exploit the characteristics of image edges. Tested on actual and synthetic edge data, this approach achieves significant speedup on the MasPar MP-1 and MP-2, compared to the standard list ranking algorithms. The modified algorithms exhibit good scalability and are robust across a wide variety of image types. We also show that load balancing on fine grained machines performs well only for large problem to machine size ratios
Keywords
computer vision; list processing; parallel algorithms; MP-2; MasPar MP-1; fine-grained machines; highly data-dependent operation; image edge lists; list ranking; locality properties; random lists; randomized algorithm; scalable parallel implementations; spatial locality; Algorithm design and analysis; Computer vision; Image processing; Load management; Parallel algorithms; Parallel machines; Pixel; Robustness; Scalability; Testing;
fLanguage
English
Journal_Title
Parallel and Distributed Systems, IEEE Transactions on
Publisher
ieee
ISSN
1045-9219
Type
jour
DOI
10.1109/71.629484
Filename
629484
Link To Document