Increasing processing capabilities and input/output constraints of supercomputers have increased the use of co-processing approaches, i.e., visualizing and analyzing data sets of simulations on the fly. We present a method that evaluates the importance of different regions of simulation data and a data-driven approach that uses the proposed method to accelerate in-transit co-processing of large-scale simulations. We use the importance metrics to simultaneously employ multiple compression methods on different data regions to accelerate the in-transit co-processing. Our approach strives to adaptively compress data on the fly and uses load balancing to counteract memory imbalances. We demonstrate the method’s efficiency through a fluid mechani...
During the design phase of modern digital and mixed signal devices, simulations are run to determine...
International audienceThe increasing gap between computational power and I/O performance in new supe...
The objective of data compression is to avoid redundancy in order to reduce the size of the data to ...
pre-printWith the onset of extreme-scale computing, I/O constraints make it increasingly difficult f...
Abstract—With the onset of extreme-scale computing, I/O constraints make it increasingly difficult f...
This paper targets an important class of applications that requires combining HPC simulations with d...
High-performance computing resources are currently widely used in science and engineering areas. Typ...
International audienceWhile many parallel visualization tools now provide in situ visualization capa...
Research within the physical sciences is becoming increasingly dependent on the ability to create co...
Numerical simulations present challenges as they reach exascale because they generate petabyte-scale...
Co-simulation methods can be used advantageously in the field of multi-disciplinary simulations. Ano...
Today’s large-scale simulations deal with complex geometries and numerical data on an extreme scale...
The co-simulation methods considered here are based on the idea of splitting an overall model into d...
The size of the output originating from large scale, numerical simulations poses major bottlenecks i...
While the exascale computing era is approaching, the growing gap between computing resources and IO ...
During the design phase of modern digital and mixed signal devices, simulations are run to determine...
International audienceThe increasing gap between computational power and I/O performance in new supe...
The objective of data compression is to avoid redundancy in order to reduce the size of the data to ...
pre-printWith the onset of extreme-scale computing, I/O constraints make it increasingly difficult f...
Abstract—With the onset of extreme-scale computing, I/O constraints make it increasingly difficult f...
This paper targets an important class of applications that requires combining HPC simulations with d...
High-performance computing resources are currently widely used in science and engineering areas. Typ...
International audienceWhile many parallel visualization tools now provide in situ visualization capa...
Research within the physical sciences is becoming increasingly dependent on the ability to create co...
Numerical simulations present challenges as they reach exascale because they generate petabyte-scale...
Co-simulation methods can be used advantageously in the field of multi-disciplinary simulations. Ano...
Today’s large-scale simulations deal with complex geometries and numerical data on an extreme scale...
The co-simulation methods considered here are based on the idea of splitting an overall model into d...
The size of the output originating from large scale, numerical simulations poses major bottlenecks i...
While the exascale computing era is approaching, the growing gap between computing resources and IO ...
During the design phase of modern digital and mixed signal devices, simulations are run to determine...
International audienceThe increasing gap between computational power and I/O performance in new supe...
The objective of data compression is to avoid redundancy in order to reduce the size of the data to ...