Probing quantum processor performance with pyGSTi
- URL: http://arxiv.org/abs/2002.12476v1
- Date: Thu, 27 Feb 2020 23:24:14 GMT
- Title: Probing quantum processor performance with pyGSTi
- Authors: Erik Nielsen, Kenneth Rudinger, Timothy Proctor, Antonio Russo, Kevin
Young, Robin Blume-Kohout
- Abstract summary: PyGSTi is a Python software package for assessing and characterizing the performance of quantum computing processors.
It can be used as a standalone application, or as a library, to perform a wide variety of quantum characterization, verification, and validation protocols on as-built quantum processors.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: PyGSTi is a Python software package for assessing and characterizing the
performance of quantum computing processors. It can be used as a standalone
application, or as a library, to perform a wide variety of quantum
characterization, verification, and validation (QCVV) protocols on as-built
quantum processors. We outline pyGSTi's structure, and what it can do, using
multiple examples. We cover its main characterization protocols with end-to-end
implementations. These include gate set tomography, randomized benchmarking on
one or many qubits, and several specialized techniques. We also discuss and
demonstrate how power users can customize pyGSTi and leverage its components to
create specialized QCVV protocols and solve user-specific problems.
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