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Optical Manipulation of Qubits by Deep Reinforcement Learning

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Abstract

Quantum compiling and qubit manipulations can be efficiently solved by using deep reinforcement learning algorithms. The advantages range from lower computational time to real-time programming We review examples such as STIRAP and single qubits operation

© 2020 The Author(s)

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