Molecular dynamics (MD) has been widely used in today\u27s scientific research across multiple domains including materials science, biochemistry, biophysics, and structural biology. MD simulations can produce extremely large amounts of data in that each simulation could involve a large number of atoms (up to trillions) for a large number of timesteps (up to hundreds of millions). In this paper, we perform an in-depth analysis of a number of MD simulation datasets and then develop an efficient error-bounded lossy compressor that can significantly improve the compression ratios. The contributions are fourfold. (1) We characterize a number of MD datasets and summarize two commonly-used execution models. (2) We develop an adaptive error-bounded...
High Performance Computing (HPC) applications are always expanding in data size and computational co...
First-principles molecular dynamics (FPMD) and its quantum mechanical-molecular mechanical (QM/MM) e...
We present the GPU version of DeePMD-kit, which, upon training a deep neural network model using ab ...
Today's scientific simulations are producing vast volumes of data that cannot be stored and transfer...
Today\u27s N-body simulations are producing extremely large amounts of data. The Hardware/Hybrid Acc...
Today\u27s scientific simulations require a significant reduction of the data size because of extrem...
Despite the impending flattening of Moore's law, the system size, complexity, and length of molecula...
An effective data compressor is becoming increasingly critical to today\u27s scientific research, an...
Because of the ever-increasing data being produced by today\u27s high performance computing (HPC) sc...
The development of thermodynamics and statistical mechanics is very important in the history of phys...
Exascale performance of scientific application is a prominent goal for the scientific community and ...
Large scale molecular dynamics (MD) simulations are now commonly utilized to study materials at extr...
We report the design and performance of a computational molecular dynamics (MD) code for 400 million...
AbstractA variety of popular molecular dynamics (MD) simulation packages were independently develope...
Large scale molecular dynamics (MD) simulations are now commonly utilized to study materials at extr...
High Performance Computing (HPC) applications are always expanding in data size and computational co...
First-principles molecular dynamics (FPMD) and its quantum mechanical-molecular mechanical (QM/MM) e...
We present the GPU version of DeePMD-kit, which, upon training a deep neural network model using ab ...
Today's scientific simulations are producing vast volumes of data that cannot be stored and transfer...
Today\u27s N-body simulations are producing extremely large amounts of data. The Hardware/Hybrid Acc...
Today\u27s scientific simulations require a significant reduction of the data size because of extrem...
Despite the impending flattening of Moore's law, the system size, complexity, and length of molecula...
An effective data compressor is becoming increasingly critical to today\u27s scientific research, an...
Because of the ever-increasing data being produced by today\u27s high performance computing (HPC) sc...
The development of thermodynamics and statistical mechanics is very important in the history of phys...
Exascale performance of scientific application is a prominent goal for the scientific community and ...
Large scale molecular dynamics (MD) simulations are now commonly utilized to study materials at extr...
We report the design and performance of a computational molecular dynamics (MD) code for 400 million...
AbstractA variety of popular molecular dynamics (MD) simulation packages were independently develope...
Large scale molecular dynamics (MD) simulations are now commonly utilized to study materials at extr...
High Performance Computing (HPC) applications are always expanding in data size and computational co...
First-principles molecular dynamics (FPMD) and its quantum mechanical-molecular mechanical (QM/MM) e...
We present the GPU version of DeePMD-kit, which, upon training a deep neural network model using ab ...