Abstract—The well-known power wall resulting in multi-cores requires special techniques for speeding up applications. In this sense, parallelization plays a crucial role. Besides standard serial optimizations, techniques such as input specialization can also bring a substantial contribution to the speedup. By identifying common patterns in the input data, we propose new algorithms for sparse grid interpolation that accelerate the state-of-the-art non-specialized version. Sparse grid interpolation is an inherently hierarchical method of interpolation employed for example in computational steering applications for decompressing high-dimensional simulation data. In this context, improving the speedup is essential for real-time visualization. U...
AbstractThe sparse grid combination technique provides a framework to solve high-dimensional numeric...
International audienceSparse grids make possible the interpolation-based approximation of the output...
In the past years, scientific visualization has become a rapid, emerging discipline aiming at develo...
AbstractIn a complex processor landscape dominated by multi-and many-core processors, simplifying pr...
Sparse Grids (SG), due to Zenger, are the basis for efficient high dimensional approximation and hav...
For the approximation of multidimensional functions, using classical numerical discretization scheme...
Many large scale scientific simulations involve the time evolution of systems modelled as Partial Di...
New algorithms that work entirely on sparse grids can create data sets that cannot be handled on uni...
Summary. In this paper we present a locally and dimension-adaptive sparse grid method for interpolat...
Many petascale and exascale scientific simulations involve the time evolution of systems modelled as...
AbstractWith the ever-increasing complexity, accuracy, dimensionality, and size of simulations, a st...
this paper is to present two major visualization algorithms working directly on the sparse grid repr...
These days sparse grids are of increasing interest in numerical simulations. Based upon hierarchical...
To approximate smooth multivariate functions, sparse grid interpolation is superior to full tensor-p...
We are now in the multicore revolution which is witnessing a rapid evolution of architectural design...
AbstractThe sparse grid combination technique provides a framework to solve high-dimensional numeric...
International audienceSparse grids make possible the interpolation-based approximation of the output...
In the past years, scientific visualization has become a rapid, emerging discipline aiming at develo...
AbstractIn a complex processor landscape dominated by multi-and many-core processors, simplifying pr...
Sparse Grids (SG), due to Zenger, are the basis for efficient high dimensional approximation and hav...
For the approximation of multidimensional functions, using classical numerical discretization scheme...
Many large scale scientific simulations involve the time evolution of systems modelled as Partial Di...
New algorithms that work entirely on sparse grids can create data sets that cannot be handled on uni...
Summary. In this paper we present a locally and dimension-adaptive sparse grid method for interpolat...
Many petascale and exascale scientific simulations involve the time evolution of systems modelled as...
AbstractWith the ever-increasing complexity, accuracy, dimensionality, and size of simulations, a st...
this paper is to present two major visualization algorithms working directly on the sparse grid repr...
These days sparse grids are of increasing interest in numerical simulations. Based upon hierarchical...
To approximate smooth multivariate functions, sparse grid interpolation is superior to full tensor-p...
We are now in the multicore revolution which is witnessing a rapid evolution of architectural design...
AbstractThe sparse grid combination technique provides a framework to solve high-dimensional numeric...
International audienceSparse grids make possible the interpolation-based approximation of the output...
In the past years, scientific visualization has become a rapid, emerging discipline aiming at develo...