Federated machine learning has great promise to overcome the input privacy challenge in machine learning. The appearance of several projects capable of simulating federated learning has led to a corresponding rapid progress on algorithmic aspects of the problem. However, there is still a lack of federated machine learning frameworks that focus on fundamental aspects such as scalability, robustness, security, and performance in a geographically distributed setting. To bridge this gap we have designed and developed the FEDn framework. A main feature of FEDn is to support both cross-device and cross-silo training settings. This makes FEDn a powerful tool for researching a wide range of machine learning applications in a realistic setting.
翻译:联邦机器学习对于克服机器学习中的投入隐私挑战有很大的希望。几个能够模拟联合学习的项目的出现,导致在问题的算法方面出现了相应的快速进展。然而,在地理分布环境中,仍然缺乏以可扩展性、稳健性、安全和性能等基本方面为重点的联邦机器学习框架。为了缩小这一差距,我们设计和开发了FEDn框架。FEDn的一个主要特点是支持跨构件和跨筒式培训设置。这使得FEDn成为在现实环境中研究一系列广泛的机器学习应用的有力工具。