Salta al contenuto principale
Ricerc@Sapienza
Toggle navigation
Home
Login
Home
Persone
alessia.suprano@uniroma1.it
Alessia Suprano
Assegnista di ricerca
Struttura:
DIPARTIMENTO DI FISICA
E-mail:
alessia.suprano@uniroma1.it
Pagina istituzionale corsi di laurea
Curriculum Sapienza
Pubblicazioni
Titolo
Pubblicato in
Anno
Experimental property reconstruction in a photonic quantum extreme learning machine
PHYSICAL REVIEW LETTERS
2024
Experimental nonclassicality in a causal network without assuming freedom of choice
NATURE COMMUNICATIONS
2023
Regression of high-dimensional angular momentum states of light
PHYSICAL REVIEW RESEARCH
2023
Orbital angular momentum based intra- and interparticle entangled states generated via a quantum dot source
ADVANCED PHOTONICS
2023
Device-independent witness for the nonobjectivity of quantum dynamics
PHYSICAL REVIEW A
2023
Experimental test of quantum causal influences
SCIENCE ADVANCES
2022
Ab initio experimental violation of Bell inequalities
PHYSICAL REVIEW RESEARCH
2022
Entanglement transfer, accumulation and retrieval via quantum-walk-based qubit-qudit dynamics
NEW JOURNAL OF PHYSICS
2021
Enhanced detection techniques of orbital angular momentum states in the classical and quantum regimes
NEW JOURNAL OF PHYSICS
2021
Experimental robust self-testing of the state generated by a quantum network
PRX QUANTUM
2021
Dynamical learning of a photonics quantum-state engineering process
ADVANCED PHOTONICS
2021
Causal Networks and Freedom of Choice in Bell's Theorem
PRX QUANTUM
2021
Machine learning-based classification of vector vortex beams
PHYSICAL REVIEW LETTERS
2020
Experimental violation of n-locality in a star quantum network
NATURE COMMUNICATIONS
2020
Transmission of vector vortex beams in dispersive media
ADVANCED PHOTONICS
2020
Propagation of structured light through tissue-mimicking phantoms
OPTICS EXPRESS
2020
Experimental engineering of arbitrary qudit states with discrete-time quantum walks
PHYSICAL REVIEW LETTERS
2019
Progetti di Ricerca
Experimental reconstruction of quantum states via reinforcement learning
© Università degli Studi di Roma "La Sapienza" - Piazzale Aldo Moro 5, 00185 Roma