Xiaopeng Li The results are published in Phys. Rev. Letter
Xiaopeng Li's team has conducted research on using artificial intelligence to enhance the detection sensitivity of quantum precision measurement. They proposed a brand-new, fully data-driven method to enhance the detection sensitivity to weak signals, without relying on any prior knowledge or assumptions about the physical system or sensing process.
Xiaopeng Li The results are published in Communication Physics
To perform general tasks in quantum neural networks, the introduction of nonlinear functions is necessary. Current quantum neural networks are not very good at handling this complexity, which is also a problem that quantum machine learning urgently needs to address. In response to this issue, Li Xiaopeng proposed introducing randomness into quantum neural networks and proposed a new type of quantum neural network structure (Quantum Neural Networks, QNNs), expanding the expressive power of quantum neural networks.