On the road to exascale computing, the gap between hardware peak performance and application performance is increasing as system scale, chip density and inherent complexity of modern supercomputers are expanding. Even if we put aside the difficulty to express algorithmic parallelism and to efficiently execute applications at large scale, other open questions remain. The ever-growing scale of modern supercomputers induces a fast decline of the Mean Time To Failure. A generic, low-overhead, resilient extension becomes a desired aptitude for any programming paradigm. This dissertation addresses these two critical issues, designing an efficient unified linear algebra development environment using a task-based runtime, and extending a task-based...
Field Programmable Gate Arrays (FPGAs) enable powerful performance acceleration for scientific compu...
Parallel or distributed processing is key to getting highest performance workstations. However, desi...
Recent years have witnessed a tremendous surge of interest in accelerating sparse linear algebra app...
This dissertation details contributions made by the author to the field of computer science while wo...
textIn the past, we could rely on technology scaling and new micro-architectural techniques to impro...
Multicore architectures with high core counts have come to dominate the world of high performance co...
This paper presents a dynamic task scheduling approach to executing dense linear algebra algorithms ...
La complexification des architectures matérielles pousse vers l’utilisation de paradigmes de program...
As the number of processors in today’s parallel systems continues to grow, the mean-time-to-failure ...
Dense matrix factorizations, such as LU, Cholesky and QR, are widely used by scientific applications...
This paper addresses the efficient exploitation of task-level parallelism, present in many dense lin...
High Performance Computing (HPC) has always been a key foundation for scientific simulation and disc...
As the scale of High-performance Computing (HPC) systems continues to grow, researchers are devoted ...
none3noAs large-scale linear equation systems are pervasive in many scientific fields, great efforts...
The objective of high performance computing (HPC) is to ensure that the computational power of hardw...
Field Programmable Gate Arrays (FPGAs) enable powerful performance acceleration for scientific compu...
Parallel or distributed processing is key to getting highest performance workstations. However, desi...
Recent years have witnessed a tremendous surge of interest in accelerating sparse linear algebra app...
This dissertation details contributions made by the author to the field of computer science while wo...
textIn the past, we could rely on technology scaling and new micro-architectural techniques to impro...
Multicore architectures with high core counts have come to dominate the world of high performance co...
This paper presents a dynamic task scheduling approach to executing dense linear algebra algorithms ...
La complexification des architectures matérielles pousse vers l’utilisation de paradigmes de program...
As the number of processors in today’s parallel systems continues to grow, the mean-time-to-failure ...
Dense matrix factorizations, such as LU, Cholesky and QR, are widely used by scientific applications...
This paper addresses the efficient exploitation of task-level parallelism, present in many dense lin...
High Performance Computing (HPC) has always been a key foundation for scientific simulation and disc...
As the scale of High-performance Computing (HPC) systems continues to grow, researchers are devoted ...
none3noAs large-scale linear equation systems are pervasive in many scientific fields, great efforts...
The objective of high performance computing (HPC) is to ensure that the computational power of hardw...
Field Programmable Gate Arrays (FPGAs) enable powerful performance acceleration for scientific compu...
Parallel or distributed processing is key to getting highest performance workstations. However, desi...
Recent years have witnessed a tremendous surge of interest in accelerating sparse linear algebra app...