Visualization and visual analysis of ensemble data: A survey
Over the last decade, ensemble visualization has witnessed a significant development due
to the wide availability of ensemble data, and the increasing visualization needs from a …
to the wide availability of ensemble data, and the increasing visualization needs from a …
Compiling generalized histograms for gpu
T Henriksen, S Hellfritzsch… - … Conference for High …, 2020 - ieeexplore.ieee.org
We present and evaluate an implementation technique for histogram-like computations on
GPUs that ensures both work-efficient asymptotic cost, support for arbitrary associative and …
GPUs that ensures both work-efficient asymptotic cost, support for arbitrary associative and …
Probabilistic data-driven sampling via multi-criteria importance analysis
Although supercomputers are becoming increasingly powerful, their components have thus
far not scaled proportionately. Compute power is growing enormously and is enabling finely …
far not scaled proportionately. Compute power is growing enormously and is enabling finely …
Void-and-cluster sampling of large scattered data and trajectories
T Rapp, C Peters… - IEEE transactions on …, 2019 - ieeexplore.ieee.org
We propose a data reduction technique for scattered data based on statistical sampling. Our
void-and-cluster sampling technique finds a representative subset that is optimally …
void-and-cluster sampling technique finds a representative subset that is optimally …
An In-Situ Visual Analytics Framework for Deep Neural Networks
The past decade has witnessed the superior power of deep neural networks (DNNs) in
applications across various domains. However, training a high-quality DNN remains a non …
applications across various domains. However, training a high-quality DNN remains a non …
Information guided data sampling and recovery using bitmap indexing
Creating a data representation is a common approach for efficient and effective data
management and exploration. The compressed bitmap indexing is one of the emerging data …
management and exploration. The compressed bitmap indexing is one of the emerging data …
Codda: A flexible copula-based distribution driven analysis framework for large-scale multivariate data
CoDDA (C opula-based D istribution D riven A nalysis) is a flexible framework for large-
scale multivariate datasets. A common strategy to deal with large-scale scientific simulation …
scale multivariate datasets. A common strategy to deal with large-scale scientific simulation …
Multivariate pointwise information-driven data sampling and visualization
With increasing computing capabilities of modern supercomputers, the size of the data
generated from the scientific simulations is growing rapidly. As a result, application scientists …
generated from the scientific simulations is growing rapidly. As a result, application scientists …
Image and distribution based volume rendering for large data sets
Analyzing scientific datasets created from simulations on modern supercomputers is a
daunting challenge due to the fast pace at which these datasets continue to grow. Low cost …
daunting challenge due to the fast pace at which these datasets continue to grow. Low cost …
Visual analysis of multi-parameter distributions across ensembles of 3d fields
A Kumpf, J Stumpfegger, PF Härtl… - IEEE Transactions on …, 2021 - ieeexplore.ieee.org
For an ensemble of 3D multi-parameter fields, we present a visual analytics workflow to
analyse whether and which parts of a selected multi-parameter distribution is present in all …
analyse whether and which parts of a selected multi-parameter distribution is present in all …