Anti-crosstalk high-fidelity state discrimination for superconducting qubits

  1. Zi-Feng Chen,
  2. Qi Zhou,
  3. Peng Duan,
  4. Wei-Cheng Kong,
  5. Hai-Feng Zhang,
  6. and Guo-Ping Guo
Measurement for qubits plays a key role in quantum computation. Current methods for classifying states of single qubit in a superconducting multi-qubit system produce fidelities lower
than expected due to the existence of crosstalk, especially in case of frequency crowding. Here, We make the digital signal processing (DSP) system used in measurement into a shallow neural network and train it to be an optimal classifier to reduce the impact of crosstalk. The experiment result shows the crosstalk-induced readout error deceased by 100% after a 3-second optimization applied on the 6-qubit superconducting quantum chip.