Quantum Brain
← Back to papers

Perceval: A Software Platform for Discrete Variable Photonic Quantum Computing

Nicolas Heurtel, A. Fyrillas, Grégoire de Gliniasty, Raphael Le Bihan, S'ebastien Malherbe, Marceau Pailhas, E. Bertasi, Boris Bourdoncle, P. Emeriau, R. Mezher, Luka Music, N. Belabas, Benoît Valiron, P. Senellart, Shane Mansfield, J. Senellart·April 1, 2022·DOI: 10.22331/q-2023-02-21-931
PhysicsComputer Science

AI Breakdown

Get a structured breakdown of this paper — what it's about, the core idea, and key takeaways for the field.

Abstract

We introduce Perceval, an open-source software platform for simulating and interfacing with discrete-variable photonic quantum computers, and describe its main features and components. Its Python front-end allows photonic circuits to be composed from basic photonic building blocks like photon sources, beam splitters, phase-shifters and detectors. A variety of computational back-ends are available and optimised for different use-cases. These use state-of-the-art simulation techniques covering both weak simulation, or sampling, and strong simulation. We give examples of Perceval in action by reproducing a variety of photonic experiments and simulating photonic implementations of a range of quantum algorithms, from Grover's and Shor's to examples of quantum machine learning. Perceval is intended to be a useful toolkit for experimentalists wishing to easily model, design, simulate, or optimise a discrete-variable photonic experiment, for theoreticians wishing to design algorithms and applications for discrete-variable photonic quantum computing platforms, and for application designers wishing to evaluate algorithms on available state-of-the-art photonic quantum computers.

Related Research

Quantum Intelligence

Ask about quantum research, companies, or market developments.