<p>Scientific Computation provides a critical role in the scientific process because it allows us ask complex queries and test predictions that would otherwise be unfeasible to perform experimentally. Because of its power, Scientific Computing has helped drive advances in many fields ranging from Engineering and Physics to Biology and Sociology to Economics and Drug Development and even to Machine Learning and Artificial Intelligence. Common among these domains is the desire for timely computational results, thus a considerable amount of human expert effort is spent towards obtaining performance for these scientific codes. However, this is no easy task because each of these domains present their own unique set of challenges to software deve...
Abstract. On many high-speed computers the dense matrix technique is preferable to sparse matrix tec...
This dissertation incorporates two research projects: performance modeling and prediction for dense ...
Linear algebra operations appear in nearly every application in advanced analytics, machine learning...
In this article we present a systematic approach to the derivation of families of high-performance a...
Abstract. In this article we look at the generation of libraries for dense linear algebra operations...
Matrix computations lie at the heart of most scientific computational tasks. The solution of linear ...
This dissertation advances the state of the art for scalable high-performance graph analytics and da...
textOver the last two decades, much progress has been made in the area of the high-performance sequ...
Abstract: Few realize that, for large matrices, many dense matrix computations achieve nearly the sa...
AbstractThe increasing availability of advanced-architecture computers has a significant effect on a...
Large-scale numerically intensive scientific applications can require tremendous amounts of computer...
AbstractWe review the influence of the advent of high-performance computing on the solution of linea...
Abstract. To implement dense linear algebra algorithms for distributed-memory computers, an expert a...
Computing solutions to real life scientific or engineering problem is most often the cheapest, faste...
This dissertation focuses on the design and the implementation of domain-specific compilers for line...
Abstract. On many high-speed computers the dense matrix technique is preferable to sparse matrix tec...
This dissertation incorporates two research projects: performance modeling and prediction for dense ...
Linear algebra operations appear in nearly every application in advanced analytics, machine learning...
In this article we present a systematic approach to the derivation of families of high-performance a...
Abstract. In this article we look at the generation of libraries for dense linear algebra operations...
Matrix computations lie at the heart of most scientific computational tasks. The solution of linear ...
This dissertation advances the state of the art for scalable high-performance graph analytics and da...
textOver the last two decades, much progress has been made in the area of the high-performance sequ...
Abstract: Few realize that, for large matrices, many dense matrix computations achieve nearly the sa...
AbstractThe increasing availability of advanced-architecture computers has a significant effect on a...
Large-scale numerically intensive scientific applications can require tremendous amounts of computer...
AbstractWe review the influence of the advent of high-performance computing on the solution of linea...
Abstract. To implement dense linear algebra algorithms for distributed-memory computers, an expert a...
Computing solutions to real life scientific or engineering problem is most often the cheapest, faste...
This dissertation focuses on the design and the implementation of domain-specific compilers for line...
Abstract. On many high-speed computers the dense matrix technique is preferable to sparse matrix tec...
This dissertation incorporates two research projects: performance modeling and prediction for dense ...
Linear algebra operations appear in nearly every application in advanced analytics, machine learning...