Quantum in the Cloud: Application Potentials and Research Opportunities
- URL: http://arxiv.org/abs/2003.06256v1
- Date: Fri, 13 Mar 2020 13:09:27 GMT
- Title: Quantum in the Cloud: Application Potentials and Research Opportunities
- Authors: Frank Leymann, Johanna Barzen, Michael Falkenthal, Daniel Vietz,
Benjamin Weder, Karoline Wild
- Abstract summary: Quantum computers are becoming real, and they have the inherent potential to significantly impact many application domains.
We sketch the basics about programming quantum computers, showing that quantum programs are typically hybrid consisting of a mixture of classical parts and quantum parts.
- Score: 0.39146761527401425
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum computers are becoming real, and they have the inherent potential to
significantly impact many application domains. We sketch the basics about
programming quantum computers, showing that quantum programs are typically
hybrid consisting of a mixture of classical parts and quantum parts. With the
advent of quantum computers in the cloud, the cloud is a fine environment for
performing quantum programs. The tool chain available for creating and running
such programs is sketched. As an exemplary problem we discuss efforts to
implement quantum programs that are hardware independent. A use case from
machine learning is outlined. Finally, a collaborative platform for solving
problems with quantum computers that is currently under construction is
presented.
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