2 research outputs found
Neural networks for on-the-fly single-shot state classification
Neural networks have proven to be efficient for a number of practical
applications ranging from image recognition to identifying phase transitions in
quantum physics models. In this paper we investigate the application of neural
networks to state classification in a single-shot quantum measurement. We use
dispersive readout of a superconducting transmon circuit to demonstrate an
increase in assignment fidelity for both two and three state classification.
More importantly, our method is ready for on-the-fly data processing without
overhead or need for large data transfer to a hard drive. In addition we
demonstrate the capacity of neural networks to be trained against experimental
imperfections, such as phase drift of a local oscillator in a heterodyne
detection scheme