A reinforcement learning approach for quantum state engineering

被引:0
作者
Jelena Mackeprang
Durga B. Rao Dasari
Jörg Wrachtrup
机构
[1] Universität Stuttgart,3 Physikalisches Institut
[2] Max Planck Institute for Solid State Research,undefined
来源
Quantum Machine Intelligence | 2020年 / 2卷
关键词
Quantum state engineering; Quantum control; Deep reinforcement learning;
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摘要
Machine learning (ML) has become an attractive tool for solving various problems in different fields of physics, including the quantum domain. Here, we show how classical reinforcement learning (RL) could be used as a tool for quantum state engineering (QSE). We employ a measurement based control for QSE where the action sequences are determined by the choice of the measurement basis and the reward through the fidelity of obtaining the target state. Our analysis clearly displays a learning feature in QSE, for example in preparing arbitrary two-qubit entangled states and delivers successful action sequences that generalise previously found human solutions from exact quantum dynamics. We provide a systematic algorithmic approach for using RL for quantum protocols that deal with a non-trivial continuous state space, and discuss the scaling of these approaches for the preparation of larger entangled (cluster) states.
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