Periodic Reporting for period 1 - HyNNet NISQ (Hybrid quantum-classical neural networks for the characterization of noisy intermediate scale quantum computers)
Okres sprawozdawczy: 2023-09-01 do 2024-11-30
Currently available quantum devices can perform computations that are challenging for classical computers. However, applications of quantum computers in science and economy require a further development of quantum hardware and algorithms. One of the major challenges is the measurement and characterization of quantum states produced as an output of quantum algorithms. Standard diagnostic techniques have become limited due to the quickly increasing system size and complexity of quantum devices. Here I integrate adaptive quantum algorithms with classical artificial neutral networks to design hybrid quantum-classical neural networks. Employing machine learning techniques, I train the hybrid neural networks to identify underlying characteristics of quantum states.
I (Dr. Petr Zapletal) carry out the proposed research with the input and advice from Prof. Christoph Bruder (University of Basel) and Prof. Michael J. Hartmann (FAU Erlangen-Nuremberg).