%0 Conference Paper
%B 1998 ACM/IEEE conference on Supercomputing (SC '98)
%D 1998
%T Automatically Tuned Linear Algebra Software
%A Clint Whaley
%A Jack Dongarra
%K BLAS
%K code generation
%K high performance
%K linear algebra
%K optimization
%K Tuning
%X This paper describes an approach for the automatic generation and optimization of numerical software for processors with deep memory hierarchies and pipelined functional units. The production of such software for machines ranging from desktop workstations to embedded processors can be a tedious and time consuming process. The work described here can help in automating much of this process. We will concentrate our efforts on the widely used linear algebra kernels called the Basic Linear Algebra Subroutines (BLAS). In particular, the work presented here is for general matrix multiply, DGEMM. However much of the technology and approach developed here can be applied to the other Level 3 BLAS and the general strategy can have an impact on basic linear algebra operations in general and may be extended to other important kernel operations.
%B 1998 ACM/IEEE conference on Supercomputing (SC '98)
%I IEEE Computer Society
%C Orlando, FL
%8 1998-11
%@ 0-89791-984-X
%G eng