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Towards architecture-adaptable parallel programming

There is a software gap in parallel processing. The short lifespan and small installation base of parallel architectures have made it economically infeasible to develop platform-specific parallel programming environments that deliver performance and programmability. One obvious solution is to build architecture-independent programming environments. But the architecture independence usually comes at the expense of performance, since the most efficient parallel algorithm for solving a problem often depends on the target platform. Thus, unless a parallel programming system has the ability to adapt the algorithm to the architecture, it will not be effectively machine-independent.
This research develops a new methodology for architecture-adaptable parallel programming. The methodology is built on three key ideas: (1) the use of a database of parameterized algorithmic templates to represent computable functions; (2) frame-based representation of processing environments; and (3) the use of an analytical performance prediction tool for automatic algorithm design.
This methodology pursues a problem-oriented approach to parallel processing as opposed to the traditional algorithm-oriented approach. This enables the
development of software environments with a high level of abstraction. The users state the problem to be solved using a high-level notation; they are freed from the esoteric tasks of parallel algorithm design and implementation.
This methodology has been validated in the format of a prototype of a system capable of automatically generating an efficient parallel program when presented with a well-defined problem and the description of a target platform. The use of object technology has made the system easily extensible. The templates are designed using a parallel adaptation of the well-known divide-and-conquer paradigm.
The prototype system has been used to solve several numerical problems efficiently on a wide spectrum of architectures. The target platforms include multicomputers (Thinking Machines CM-5 and Meiko CS-2), networks of workstations (IBM RS/6000s connected by FDDI), multiprocessors (Sequent Symmetry, SGI Power Challenge, and Sun SPARCServer), and a hierarchical system consisting of a cluster of multiprocessors on Myrinet. / Graduation date: 1997

Identiferoai:union.ndltd.org:ORGSU/oai:ir.library.oregonstate.edu:1957/34375
Date26 July 1996
CreatorsKumaran, Santhosh
ContributorsQuinn, Michael J.
Source SetsOregon State University
Languageen_US
Detected LanguageEnglish
TypeThesis/Dissertation

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