Numerical simulations are ubiquitous in science and engineering. Machine learning for science investigates how artificial neural architectures can learn from these simulations to speed up scientific discovery and engineering processes. Most of these architectures are trained in a supervised manner. They require tremendous amounts of data from simulations that are slow to generate and memory greedy. In this article, we present our ongoing work to design a training framework that alleviates those bottlenecks. It generates data in parallel with the training process. Such simultaneity induces a bias in the data available during the training. We present a strategy to mitigate this bias with a memory buffer. We test our framework on the multi-par...
The upcoming exascale era will provide a new generation of physics simulations. These simulations wi...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
International audienceNumerical simulations are ubiquitous in science and engineering. Machine learn...
We present a novel parallelisation scheme that simplifies the adaptation of learning algorithms to g...
Neural networks are powerful solutions to many scientific applications; however, they usually requir...
Computational simulations used in many fields have parameters that define models that are used to ev...
Applying the representational power of machine learning to the prediction of complex fluid dynamics ...
Long training times and non-ideal performance have been a big impediment in further continuing the u...
Neural networks are a very useful tool for analyzing and modeling complex real world systems. Applyi...
Real-time physics engines have seen recent performance improvements through techniques like hardware...
Reinforcement learning (RL) workloads take a notoriously long time to train due to the large number ...
Generic simulation code for spiking neuronal networks spends the major part of the time in the phase...
Simulation and optimization are fundamental building blocks for many computational methods in scienc...
Historically, numerical analysis has formed the backbone of supercomputing for decades by applying m...
The upcoming exascale era will provide a new generation of physics simulations. These simulations wi...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
International audienceNumerical simulations are ubiquitous in science and engineering. Machine learn...
We present a novel parallelisation scheme that simplifies the adaptation of learning algorithms to g...
Neural networks are powerful solutions to many scientific applications; however, they usually requir...
Computational simulations used in many fields have parameters that define models that are used to ev...
Applying the representational power of machine learning to the prediction of complex fluid dynamics ...
Long training times and non-ideal performance have been a big impediment in further continuing the u...
Neural networks are a very useful tool for analyzing and modeling complex real world systems. Applyi...
Real-time physics engines have seen recent performance improvements through techniques like hardware...
Reinforcement learning (RL) workloads take a notoriously long time to train due to the large number ...
Generic simulation code for spiking neuronal networks spends the major part of the time in the phase...
Simulation and optimization are fundamental building blocks for many computational methods in scienc...
Historically, numerical analysis has formed the backbone of supercomputing for decades by applying m...
The upcoming exascale era will provide a new generation of physics simulations. These simulations wi...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...