Neural Networks on Noisy Intermediate Scale Quantum Computers

Speaker
Daniele Bajoni - Università di Pavia

Date
Dec 18, 2020 - Time: 15:00

We present a memory-efficient quantum algorithm implementing the action of an artificial neuron according to a classical model of the perceptron with both binary and continuous variables on a quantum computer. Then we show that this model is amenable to be extended to a multilayered artificial neural network, which is able to solve tasks that would be impossible to a single one of its constituent artificial neurons. We discuss how the scalar product operation can be efficiently obtained in quantum circuits, thus laying the basis for a fully quantum artificial intelligence algorithm run on noisy intermediate-scale quantum hardware.
The algorithm, tested on noisy IBM-Q superconducting real quantum processors, succeeds in elementary classification 
and image-recognition tasks through a hybrid quantum-classical training procedure. 

Zoom linkhttps://univr.zoom.us/j/88905610805
Contact Person: Alessandra Di Pierro
Data pubblicazione
Dec 7, 2020

Department
Computer Science
School
Science and Engineering

ATTACHMENTS

QML Seminar