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Machine invention of quantum computing circuits by means of genetic programming

Published online by Cambridge University Press:  12 June 2008

Lee Spector
Affiliation:
School of Cognitive Science, Hampshire College, Amherst, Massachusetts, USA
Jon Klein
Affiliation:
School of Cognitive Science, Hampshire College, Amherst, Massachusetts, USA

Abstract

We demonstrate the use of genetic programming in the automatic invention of quantum computing circuits that solve problems of potential theoretical and practical significance. We outline a developmental genetic programming scheme for such applications; in this scheme the evolved programs, when executed, build quantum circuits and the resulting quantum circuits are then tested for “fitness” using a quantum computer simulator. Using the PushGP genetic programming system and the QGAME quantum computer simulator we demonstrate the invention of a new, better than classical quantum circuit for the two-oracle AND/OR problem.

Type
Research Article
Copyright
Copyright © Cambridge University Press 2008

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