GLA Summit 2024/Effective use of GPU Computing with G²CPU: Difference between revisions
Appearance
YouTube Link Updated |
mNo edit summary |
||
| Line 11: | Line 11: | ||
==Presentation Links== | ==Presentation Links== | ||
* [https://youtu.be/SN_kB38c5Xc Presentation on YouTube] | * [https://youtu.be/SN_kB38c5Xc Presentation on YouTube] | ||
{{ambox|text=Add links to presentation slides and source code.}} | {{ambox|text=Add links to presentation slides and source code.}} | ||
{{ambox|text=If you need to Upload a file for the LabVIEW Wiki to host it, upload it [[Special:Upload|Here]].}} | {{ambox|text=If you need to Upload a file for the LabVIEW Wiki to host it, upload it [[Special:Upload|Here]].}} | ||
Revision as of 16:24, 9 April 2024
Effective use of GPU Computing with G²CPU by Natan Biesmans
LabVIEW has a rich ecosystem of toolkits and frameworks designed for reuse across multiple programs and hardware setups.
Together we will investigate the usage of GPU computing with a wide range of environments like DQMH, Unit tests, build servers and more. We will also have a look at effective use of different hardware solutions with personal and industrial computers as well as PXI's.
All based on the free community edition of G²CPU.
Presentation Links
| |
Add links to presentation slides and source code. |
| |
If you need to Upload a file for the LabVIEW Wiki to host it, upload it Here. |
| |
After uploading to the LabVIEW Wiki, add the line"[[media:<Your Filename>|<Description>]]". The Description is what will show as the link text. |
See Also
| |
Add links other internal LabVIEW Wiki pages about this topic |
External Links
| |
Add links to your company and/or other external resources about this topic |