Francisco Albarrán-Arriagada

2papers

2 Papers

QUANT-PHSep 10, 2023
Machine Learning for maximizing the memristivity of single and coupled quantum memristors

Carlos Hernani-Morales, Gabriel Alvarado, Francisco Albarrán-Arriagada et al.

We propose machine learning (ML) methods to characterize the memristive properties of single and coupled quantum memristors. We show that maximizing the memristivity leads to large values in the degree of entanglement of two quantum memristors, unveiling the close relationship between quantum correlations and memory. Our results strengthen the possibility of using quantum memristors as key components of neuromorphic quantum computing.

QUANT-PHJul 21, 2021
Quantum Pattern Recognition in Photonic Circuits

Rui Wang, Carlos Hernani-Morales, José D. Martín-Guerrero et al.

This paper proposes a machine learning method to characterize photonic states via a simple optical circuit and data processing of photon number distributions, such as photonic patterns. The input states consist of two coherent states used as references and a two-mode unknown state to be studied. We successfully trained supervised learning algorithms that can predict the degree of entanglement in the two-mode state as well as perform the full tomography of one photonic mode, obtaining satisfactory values in the considered regression metrics.