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Open AccessJournal ArticleDOI

Federated Learning: A Survey on Enabling Technologies, Protocols, and Applications.

TLDR
A more thorough summary of the most relevant protocols, platforms, and real-life use-cases of FL is provided to enable data scientists to build better privacy-preserved solutions for industries in critical need of FL.
Abstract
This paper provides a comprehensive study of Federated Learning (FL) with an emphasis on enabling software and hardware platforms, protocols, real-life applications and use-cases. FL can be applicable to multiple domains but applying it to different industries has its own set of obstacles. FL is known as collaborative learning, where algorithm(s) get trained across multiple devices or servers with decentralized data samples without having to exchange the actual data. This approach is radically different from other more established techniques such as getting the data samples uploaded to servers or having data in some form of distributed infrastructure. FL on the other hand generates more robust models without sharing data, leading to privacy-preserved solutions with higher security and access privileges to data. This paper starts by providing an overview of FL. Then, it gives an overview of technical details that pertain to FL enabling technologies, protocols, and applications. Compared to other survey papers in the field, our objective is to provide a more thorough summary of the most relevant protocols, platforms, and real-life use-cases of FL to enable data scientists to build better privacy-preserving solutions for industries in critical need of FL. We also provide an overview of key challenges presented in the recent literature and provide a summary of related research work. Moreover, we explore both the challenges and advantages of FL and present detailed service use-cases to illustrate how different architectures and protocols that use FL can fit together to deliver desired results.

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Journal ArticleDOI

A survey on security and privacy of federated learning

TL;DR: This paper aims to provide a comprehensive study concerning FL’s security and privacy aspects that can help bridge the gap between the current state of federated AI and a future in which mass adoption is possible.
Journal ArticleDOI

Federated Learning for Internet of Things: A Comprehensive Survey

TL;DR: In this paper, a comprehensive survey of the emerging applications of federated learning in IoT networks is provided, which explores and analyzes the potential of FL for enabling a wide range of IoT services, including IoT data sharing, data offloading and caching, attack detection, localization, mobile crowdsensing and IoT privacy and security.
Posted Content

A Survey on Federated Learning Systems: Vision, Hype and Reality for Data Privacy and Protection

TL;DR: A comprehensive review of federated learning systems can be found in this paper, where the authors provide a thorough categorization of the existing systems according to six different aspects, including data distribution, machine learning model, privacy mechanism, communication architecture, scale of federation and motivation of federation.
Journal ArticleDOI

Federated Learning for Internet of Things: A Comprehensive Survey

TL;DR: In this paper, a comprehensive survey of the emerging applications of federated learning in IoT networks is provided, which explores and analyzes the potential of FL for enabling a wide range of IoT services, including IoT data sharing, data offloading and caching, attack detection, localization, mobile crowdsensing and IoT privacy and security.
Posted Content

Federated Learning for Internet of Things: Recent Advances, Taxonomy, and Open Challenges

TL;DR: The recent advances of federated learning towards enabling Federated learning-powered IoT applications are presented and a set of metrics such as sparsification, robustness, quantization, scalability, security, and privacy, is delineated in order to rigorously evaluate the recent advances.
References
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Posted Content

Quantifying the Performance of Federated Transfer Learning.

TL;DR: In this article, the authors quantitatively measured a real-world FTL implementation FATE on Google Cloud and verified that the following bottlenecks can be further optimized: 1) Inter-process communication is the major bottleneck; 2) Data encryption adds considerable computation overhead; 3) The Internet networking condition affects the performance a lot when the model is large.
Posted ContentDOI

Facing small and biased data dilemma in drug discovery with federated learning

TL;DR: This work demonstrates the application of federated learning in predicting drug related properties, but also highlights its promising role in addressing the small data and biased data dilemma in drug discovery.
Proceedings ArticleDOI

Current trends in medical imaging acquisition and communication

TL;DR: A medical images archiving and communication system (PACS) which shares electronic data with other informational systems within the health enterprise and integrates multimedia technology, hardware platforms, databases, informational system, communication protocols, display technologies and system interfacing and integration is referred to.
Posted Content

Learn to Forget: User-Level Memorization Elimination in Federated Learning.

TL;DR: This paper proposes\sysname, a federated learning framework that allows the user to eliminate the memorization of its private data in the trained model and proves that the additional memorization elimination service of \sysname does not break the common procedure of federatedLearning or lower its security.
Posted Content

The Risk to Population Health Equity Posed by Automated Decision Systems: A Narrative Review.

TL;DR: A narrative review using a hermeneutic approach was undertaken to explore current and future uses of AI in medicine and public health, issues that have emerged, and longer-term implications for population health.
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