Title :
Distributed memory implementation of elliptic partial differential equations in a dataparallel functional language
Author :
Kuchen, H. ; Stoltze, H. ; Dimov, I. ; Karaivanova, A.
Author_Institution :
Lehrstuhl fur Inf. II, Tech. Hochschule Aachen, Germany
Abstract :
We show that the numerical solution of partial differential equations can be elegantly and efficiently addressed in a functional language. Two statistical numerical methods are considered. We discuss why current parallel imperative languages are difficult to use and why general (expression parallel) functional languages are not efficient enough. The key point of our approach is to offer “unique” arrays and some operations on them which allow to handle their elements in parallel, including operations which exchange the partitions of an array between the processors. These operations constitute a deadlock-free high-level way of communication
Keywords :
distributed memory systems; elliptic equations; parallel algorithms; partial differential equations; dataparallel functional language; deadlock-free; distributed memory; elliptic partial differential equations; functional languages; parallel imperative languages; Data structures; Educational programs; Genetic expression; Load management; Message passing; Parallel processing; Partial differential equations; Partitioning algorithms; Programming profession; System recovery;
Conference_Titel :
Programming Models for Massively Parallel Computers, 1995
Conference_Location :
Berlin
Print_ISBN :
0-8186-7177-7
DOI :
10.1109/PMMPC.1995.504352