Difference between revisions of "Scientific Computing and BIM?"

From Design Computation
Jump to: navigation, search
(Created page with "Scientific Computing" covers a vast range of data and compute architectures, from processing huge data volumes of very large instrument data to multi-disciplinary ad-hoc resea...")
 
(Keywords)
 
(8 intermediate revisions by the same user not shown)
Line 1: Line 1:
 +
[[File:DCIO2022-Logo.png|right|200px|link=DC_I/O_2022]]
 +
[[Category:DCIO]]
 +
[[Category:DCIO2023]]
 +
[[Category:DCIO Proceedings]]
 +
[[Category:Conferences]]
 +
[[Category:Book]]
 +
[[DC I/O 2023]] Keynote by [[Jens Jensen]]. https://doi.org/10.47330/DCIO.2023.HZRT8841 | Watch [[File:VideoRecord-Icon.png |Left|22px|link=https://youtu.be/SMKT_44z_bU]] | [[File:Paper-Icon.png |Left|30px|link=https://www.dropbox.com/]] | [[File:Poster-Icon.png |Left|30px|link=https://www.dropbox.com/]] | [[File:Slides-Icon.png |Left|30px|link=https://www.dropbox.com/]]
 +
 +
 +
[[File:DCIO2022 S2 0 P-Russell.png|center|800px]]
 +
 +
 +
=Abstract=
 
Scientific Computing" covers a vast range of data and compute architectures, from processing huge data volumes of very large instrument data to multi-disciplinary ad-hoc research using diverse messy datasets, from supercomputing simulations to edge computing, from wholly simulated environments to sensor networks and digital twins. This talk will provide an overview of scientific computing and ask the question what SC can learn from BIM, and what BIM can learn from SC.
 
Scientific Computing" covers a vast range of data and compute architectures, from processing huge data volumes of very large instrument data to multi-disciplinary ad-hoc research using diverse messy datasets, from supercomputing simulations to edge computing, from wholly simulated environments to sensor networks and digital twins. This talk will provide an overview of scientific computing and ask the question what SC can learn from BIM, and what BIM can learn from SC.
 +
 +
=Keywords=
 +
[[1]],[[2]],[[3]],[[4]],[[5]].
 +
 +
=Bibliography=
 +
*

Latest revision as of 23:54, 10 December 2023

DCIO2022-Logo.png
DC I/O 2023 Keynote by Jens Jensen. https://doi.org/10.47330/DCIO.2023.HZRT8841 | Watch Left | Left | Left | Left


DCIO2022 S2 0 P-Russell.png


Abstract

Scientific Computing" covers a vast range of data and compute architectures, from processing huge data volumes of very large instrument data to multi-disciplinary ad-hoc research using diverse messy datasets, from supercomputing simulations to edge computing, from wholly simulated environments to sensor networks and digital twins. This talk will provide an overview of scientific computing and ask the question what SC can learn from BIM, and what BIM can learn from SC.

Keywords

1,2,3,4,5.

Bibliography