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Autori principali: Nguyen, Dinh C., Uddin, Md Raihan, Shaon, Shaba, Rahman, Ratun, Dobre, Octavia, Niyato, Dusit
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2508.15998
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author Nguyen, Dinh C.
Uddin, Md Raihan
Shaon, Shaba
Rahman, Ratun
Dobre, Octavia
Niyato, Dusit
author_facet Nguyen, Dinh C.
Uddin, Md Raihan
Shaon, Shaba
Rahman, Ratun
Dobre, Octavia
Niyato, Dusit
contents Quantum federated learning (QFL) is a combination of distributed quantum computing and federated machine learning, integrating the strengths of both to enable privacy-preserving decentralized learning with quantum-enhanced capabilities. It appears as a promising approach for addressing challenges in efficient and secure model training across distributed quantum systems. This paper presents a comprehensive survey on QFL, exploring its key concepts, fundamentals, applications, and emerging challenges in this rapidly developing field. Specifically, we begin with an introduction to the recent advancements of QFL, followed by discussion on its market opportunity and background knowledge. We then discuss the motivation behind the integration of quantum computing and federated learning, highlighting its working principle. Moreover, we review the fundamentals of QFL and its taxonomy. Particularly, we explore federation architecture, networking topology, communication schemes, optimization techniques, and security mechanisms within QFL frameworks. Furthermore, we investigate applications of QFL across several domains which include vehicular networks, healthcare networks, satellite networks, metaverse, and network security. Additionally, we analyze frameworks and platforms related to QFL, delving into its prototype implementations, and provide a detailed case study. Key insights and lessons learned from this review of QFL are also highlighted. We complete the survey by identifying current challenges and outlining potential avenues for future research in this rapidly advancing field.
format Preprint
id arxiv_https___arxiv_org_abs_2508_15998
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Quantum Federated Learning: A Comprehensive Survey
Nguyen, Dinh C.
Uddin, Md Raihan
Shaon, Shaba
Rahman, Ratun
Dobre, Octavia
Niyato, Dusit
Machine Learning
Quantum federated learning (QFL) is a combination of distributed quantum computing and federated machine learning, integrating the strengths of both to enable privacy-preserving decentralized learning with quantum-enhanced capabilities. It appears as a promising approach for addressing challenges in efficient and secure model training across distributed quantum systems. This paper presents a comprehensive survey on QFL, exploring its key concepts, fundamentals, applications, and emerging challenges in this rapidly developing field. Specifically, we begin with an introduction to the recent advancements of QFL, followed by discussion on its market opportunity and background knowledge. We then discuss the motivation behind the integration of quantum computing and federated learning, highlighting its working principle. Moreover, we review the fundamentals of QFL and its taxonomy. Particularly, we explore federation architecture, networking topology, communication schemes, optimization techniques, and security mechanisms within QFL frameworks. Furthermore, we investigate applications of QFL across several domains which include vehicular networks, healthcare networks, satellite networks, metaverse, and network security. Additionally, we analyze frameworks and platforms related to QFL, delving into its prototype implementations, and provide a detailed case study. Key insights and lessons learned from this review of QFL are also highlighted. We complete the survey by identifying current challenges and outlining potential avenues for future research in this rapidly advancing field.
title Quantum Federated Learning: A Comprehensive Survey
topic Machine Learning
url https://arxiv.org/abs/2508.15998