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@HPCpodcast-17: American Competitiveness and Future of Supercomputing, with Dan Reed

@HPCpodcast-17: American Competitiveness and Future of Supercomputing, with Dan Reed

In a recent paper, Daniel Reed, Dennis Gannon, and Jack Dongarra, have started an important discussion about HPC, its future, and its impact on American competitiveness. We welcome Dan Reed as a special guest of the @HPCpodcast to go a level deeper. Dan is Presidential Professor of Computational Science at the University of Utah and a thought leader and luminary of supercomputing. [audio mp3="http://orionx.net/wp-content/uploads/2022/03/017@HPCpodcast_American-Competitiveness-Future-of-HPC-w-Dan-Reed_20220321-new-1.mp3"][/audio] The post @HPCpodcast-17: American Competitiveness and Future of Supercomputing, with Dan Reed appeared first on OrionX.net.

@HPCpodcast with Shahin Khan and Doug Black

March 22, 2022

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Show Notes

@HPCpodcast and HPC News Bytes image

In recently published Reinventing High Performance Computing: Challenges and Opportunities, Daniel Reed, Dennis Gannon, and Jack Dongarra, three of the most celebrated thought leaders and luminaries of supercomputing have started an important discussion about the future of HPC and its impact on American competitiveness. Readers of this site would know that those topics have played a big role in driving our research agenda at OrionX and have helped shape our thinking.  So we are very fortunate to welcome Dan Reed as a special guest of the @HPCpodcast to go a level deeper. Dan is Presidential Professor of Computational Science, and Professor of Computer Science and Electrical & Computer Engineering at the University of Utah.

 

The post @HPCpodcast-17: American Competitiveness and Future of Supercomputing, with Dan Reed appeared first on OrionX.net.

Topics

SupercomputingHPCQuantumComputingAIDeepLearningChipsPhysicsBasedSimulations