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Dagstuhl Seminar 19151

Visual Computing in Materials Sciences

( Apr 07 – Apr 12, 2019 )

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Please use the following short url to reference this page: https://www.dagstuhl.de/19151

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Schedule

Motivation

Visual computing has become highly attractive for boosting research endeavors in the materials science domain. Using visual computing, a multitude of different phenomena may now be studied, at various scales, dimensions, or using different modalities. This was simply impossible before. Visual computing techniques generate novel insights to understand, discover, design, and use complex material systems of interest. Its huge potential for retrieving and visualizing (new) information on materials, their characteristics and interrelations as well as on simulating the material's behavior in its target application environment is of core relevance to material scientists. This Dagstuhl seminar on Visual Computing in Materials Sciences thus focuses on the intersection of both domains to guide research endeavors in this field. It targets to provide answers regarding the following four challenges, which are of imminent need:

  • The Integrated Visual Analysis Challenge identifies standard visualization tools as insufficient for exploring materials science data in detail. What is required are integrated visual analysis tools, which are tailored to a specific application area and guide users in their investigations. Using linked views and other interaction concepts, these tools are required to combine all data domains using meaningful and easy to understand visualization techniques. Especially for the analysis of spatial and temporal data in dynamic processes (e.g., materials tested under load or in different environmental conditions) or multimodal, multiscale data, these tools and techniques are highly anticipated. Only integrated analysis concepts allow to make the most out of all the data available.
  • The Quantitative Data Visualization Challenge centers around the design and implementation of tailored visual analysis systems for extracting and analyzing derived data (e.g., computed from extracted features over spatial, temporal or even higher dimensional domains). Therefore, feature extraction and quantification techniques, segmentation techniques, or clustering techniques, are required as prerequisites for the targeted visual analysis. As the quantification may easily end up in 25 or more properties to be computed per feature, clustering techniques allow to distinguish features of interest into feature classes. These feature classes may then be statistically evaluated to visualize the properties of the individual features as well as the properties of the different classes. Information visualization techniques will be of special interest for solving this challenge.
  • The Visual Debugger Challenge is an idea which uses visual analysis to remove errors in the parametrization of a simulation or a data acquisition process. Similarly, to a debugger in computer programming, identifying errors in the code and providing hints to improve, a visual debugger in the domain of visual computing for materials science should show the following characteristics: It should indicate errors and identify wrongly used algorithms in the data analysis. Such a tool should also identify incorrect parameters, which either show no or very limited benefit or even provide erroneous results. Furthermore, it should give directions on how to improve a targeted analysis and suggest suitable algorithms or pipelines for specific tasks.
  • The Interactive Steering Challenge uses visual analysis tools to control a running simulation or an ongoing data acquisition process. Respective tools monitor costly processes and give directions to improve results regarding the respective targets. For example, in the material analysis domain, this could be a system which provides settings for improved data acquisition based on the current image quality achieved: If the image quality does no more fulfill the target requirements, the system influences all degrees of freedom in the data acquisition to enhance image quality. The same holds for the materials simulation domain. Visual analysis can help to steer target material properties in a specific application environment by predicting tendencies of costly simulation runs, e.g., using cheaper surrogate models.
Copyright Christoph Heinzl, Robert Michael Kirby, Stepan V. Lomov, Guillermo Requena, and Rüdiger Westermann

Summary

In this Dagstuhl workshop, we brought together computer and computational scientists interested in building tools for use in visual computing with material scientists with expressed interest in using such tools. As would be anticipated when one brings together two distinct fields, the initial challenge we encountered was that of language. Although both groups came together having experiences with visual computing tools - some as developers and some as users - although they often used the same terms, they semantically meant different things. We found that the Dagstuhl philosophy of "immersion" was most helpful to this issue as having several days together helped break down these barriers. Over the course of the week, we interspersed talks by computational scientists and material scientists. The talks by computational scientists often presented their current understanding of what kinds of tools are needed, demonstrations of current tools they have developed in collaboration with domain-specific experts, and success stories of applications they have currently impacted. The talks by the material scientists often presented a description of the tools they currently use, the positive points and deficiencies of current tools, the types of features that they would like to see in future tools, and examples of current challenge problems and how they might be impacted by the next generation of tools.

Fundamental Results:

  1. The systems that are desired by many material scientists will be used both for exploration and for interactive steering. When used for exploration, material scientists want tools that not only present the data with its corresponding reliability (uncertainty) bounds, but which also give predictive capabilities such as where next to sample.
  2. There is a general acknowledgement that both automation and interactivity are needed. Automation of tasks and procedures through AI and Machine Learning can be used to help deal with the volumes of data being produced - helping scientists sift through the field of possibilities to isolate those places for which they should expend human effort. At the same time, there are many current practices that continue to require "the human in the loop" to make decisions. In such cases, tools are needed that have smart defaults but yet allow the user to explore, navigate and possibly refine data.
  3. Although many current tools used for material science applications leverage previous visualization and interaction technologies, there is still much to be done. Many material science applications require specialization of currently existing algorithms and techniques, especially in cases of real-time systems. Furthermore, many techniques originally designed for batch or manual processing need to be re-engineered to allow for the interactive procedures required by current and future material science application scientists.
  4. With regards to visualization scientists, there is a need for both data and tasks. Many researchers requested data on which they can try their methods. In addition to the data itself, descriptors of the data are necessary so that it can be interpreted properly. Once read into their system, the visualization scientists then requested a collection of tasks (driven by the material science domain experts) which would help drive their tool development and evaluation.

Final Comments

Due to the ever-increasing interest in this topic, we foresee that future review articles and/or special issues of journals driven by multilateral research cooperations between seminars' participants will be an outcome of this workshop. To ensure and stimulate further cooperation in this field, a list of specific follow up activities has been elaborated and discussed with the participants. All in all, a fruitful discussion was stimulated across the two domains throughout the complete week of this Dagstuhl workshop which will become more obvious in joint research efforts of all kinds.

Copyright Christoph Heinzl, Robert Michael Kirby, Stepan V. Lomov, Guillermo Requena, and Rüdiger Westermann

Participants
  • Amal Aboulhassan (Material Solved - Alexandria, EG) [dblp]
  • Jan De Beenhouwer (Universiteit Antwerpen - Wilrijk, BE) [dblp]
  • Francesco De Carlo (Argonne National Laboratory - Lemont, US) [dblp]
  • Thomas Ertl (Universität Stuttgart, DE) [dblp]
  • Christian Gollwitzer (BAM - Berlin, DE)
  • Eduard Gröller (TU Wien, AT) [dblp]
  • Doga Gursoy (Argonne National Laboratory - Lemont, US) [dblp]
  • Hans Hagen (TU Kaiserslautern, DE) [dblp]
  • Marcus Hanwell (Kitware - Clifton Park, US) [dblp]
  • Ulf Hassler (Fraunhofer-Institut für Integrierte Schaltungen II, DE) [dblp]
  • Hans-Christian Hege (Konrad-Zuse-Zentrum - Berlin, DE) [dblp]
  • Wolfgang Heidrich (KAUST - Thuwal, SA) [dblp]
  • Christoph Heinzl (FH Oberösterreich - Wels, AT) [dblp]
  • Johann Kastner (FH Oberösterreich - Wels, AT) [dblp]
  • Robert Michael Kirby (University of Utah - Salt Lake City, US) [dblp]
  • Fabien Leonard (BAM - Berlin, DE)
  • Stepan V. Lomov (KU Leuven, BE) [dblp]
  • Lucia Mancini (Elettra - Sincrotrone Trieste S.C.p.A. - Trieste, IT) [dblp]
  • Rajmund Mokso (Lund University, SE) [dblp]
  • Torsten Möller (Universität Wien, AT) [dblp]
  • Klaus Mueller (Stony Brook University, US) [dblp]
  • Vijay Natarajan (Indian Institute of Science - Bangalore, IN) [dblp]
  • Ahmad Osman (HTW - Saarbrücken, DE) [dblp]
  • Sidnei Paciornik (BAM - Berlin, DE) [dblp]
  • Kristi Potter (NREL - Golden, US) [dblp]
  • Bernhard Preim (Universität Magdeburg, DE) [dblp]
  • Guillermo Requena (DLR - Köln, DE)
  • Gerik Scheuermann (Universität Leipzig, DE) [dblp]
  • Katja Schladitz (Fraunhofer ITWM - Kaiserslautern, DE) [dblp]
  • Johanna Schmidt (AIT - Austrian Institute of Technology - Wien, AT) [dblp]
  • Jeff Simmons (AFRL - Wright Patterson, US) [dblp]
  • Federico Sket (IMDEA Materiales - Madrid, ES)
  • Daniela Ushizima (Lawrence Berkeley National Laboratory, US) [dblp]
  • Daniel Weiskopf (Universität Stuttgart, DE) [dblp]
  • Rephael Wenger (Ohio State University - Columbus, US) [dblp]
  • Rüdiger Westermann (TU München, DE) [dblp]
  • Thomas Wischgoll (Wright State University - Dayton, US) [dblp]

Classification
  • computer graphics / computer vision
  • data structures / algorithms / complexity
  • modelling / simulation

Keywords
  • Visual Computing
  • Materials Science
  • Visualization / Visual Analysis
  • Data Structures
  • Interaction