Noise Models Impacts and Mitigation Strategies in Photonic Quantum Machine Learning
A.M.A.S.D. Alagiyawanna, Asoka Karunananda

TL;DR
This paper systematically analyzes noise sources in photonic quantum machine learning, reviewing mitigation strategies and recent advances to enhance real-world applicability.
Contribution
It provides a comprehensive categorization of noise sources in PQML and surveys effective mitigation techniques to improve performance.
Findings
Identified key noise sources affecting PQML accuracy.
Reviewed strategies for noise characterization and mitigation.
Highlighted recent advances enabling PQML in realistic noisy environments.
Abstract
Photonic Quantum Machine Learning (PQML) is an emerging method to implement scalable, energy-efficient quantum information processing by combining photonic quantum computing technologies with machine learning techniques. The features of photonic technologies offer several benefits: room-temperature operation; fast (low delay) processing of signals; and the possibility of representing computations in high-dimensional (Hilbert) spaces. This makes photonic technologies a good candidate for the near-term development of quantum devices. However, noise is still a major limiting factor for the performance, reliability, and scalability of PQML implementations. This review provides a detailed and systematic analysis of the sources of noise that will affect PQML implementations. We will present an overview of the principal photonic quantum computer designs and summarize the many different types…
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