This work employs quantum machine learning for state tomography by maximizing the fidelity between the output of a variational quantum circuit and this state, which grows linearly with the number of qubits and the circuit depth.
Quantum state tomography is a key process in most quantum experiments. In this work, we employ quantum machine learning for state tomography. Given an unknown quantum state, it can be learned by maximizing the fidelity between the output of a variational quantum circuit and this state. The number of parameters of the variational quantum circuit grows linearly with the number of qubits and the circuit depth, so that only polynomial measurements are required, even for highly entangled states. After that, a subsequent classical circuit simulator is used to transform the information of the target quantum state from the variational quantum circuit into a familiar format. We demonstrate our method by performing numerical simulations for the tomography of the ground state of a one-dimensional quantum spin chain, using a variational quantum circuit simulator. Our method is suitable for near-term quantum computing platforms, and could be used for relatively large-scale quantum state tomography for experimentally relevant quantum states.
Anqi Huang
1 papers
Xiang Fu
1 papers
X. Qiang
1 papers
P. Xu
1 papers
Heliang Huang
1 papers
Mingtang Deng
1 papers
Chu Guo
1 papers
Xuejun Yang
1 papers
Junjie Wu
1 papers