Constructing Executing and Overcoming Challenges in Distributed AI Systems: A Study of Federated Learning Framework

José Gabriel Carrasco Ramírez
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Abstract

Federated learning stands out as a promising approach within the realm of distributed artificial intelligence (AI) systems, facilitating collaborative model training across decentralized devices while safeguarding data privacy. This study presents a thorough investigation into federated learning architecture, covering its foundational design principles, implementation methodologies, and the significant challenges encountered in distributed AI systems. We delve into the fundamental mechanisms underpinning federated learning, elucidating its merits in diverse environments and its prospective applications across various domains. Additionally, we scrutinize the technical complexities associated with deploying federated learning systems, including considerations such as communication efficiency, model aggregation techniques, and security protocols. By amalgamating insights gleaned from recent research endeavors and practical deployments, this study furnishes valuable guidance for both researchers and practitioners aiming to harness federated learning for the development of scalable and privacy-preserving AI solutions.
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在分布式人工智能系统中构建执行和克服挑战:联合学习框架研究
在分布式人工智能(AI)系统领域,联盟学习是一种前景广阔的方法,它能促进分散设备之间的协作模型训练,同时保护数据隐私。本研究对联合学习架构进行了深入研究,涵盖其基本设计原则、实施方法以及分布式人工智能系统中遇到的重大挑战。我们深入研究了支撑联合学习的基本机制,阐明了它在不同环境中的优点及其在各个领域的应用前景。此外,我们还仔细研究了与部署联合学习系统相关的技术复杂性,包括通信效率、模型聚合技术和安全协议等考虑因素。本研究综合了从近期研究工作和实际部署中收集到的见解,为旨在利用联合学习开发可扩展且保护隐私的人工智能解决方案的研究人员和从业人员提供了宝贵的指导。
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