资源受限网络环境下的联邦学习论证

D. Conway-Jones, Tiffany Tuor, Shiqiang Wang, K. Leung
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引用次数: 24

摘要

智能计算领域的许多现代应用都是基于机器学习技术。为了训练机器学习模型,通常需要大量的数据,而这些数据通常不容易在中心位置获得。联邦学习允许在客户端设备上从分布式数据集训练机器学习模型,而无需将数据传输到中心位置,这样做的好处包括保护用户数据的隐私和减少通信带宽。在本演示中,我们展示了一个部署在具有动态、异构和间歇性资源可用性的仿真广域通信网络中的联邦学习系统,其中网络使用CORE/EMANE仿真器进行仿真。在我们的系统中,环境是分散的,每个客户端都可以向其他客户端请求帮助。客户的可用性是间歇性的,所以只有那些可用的客户才能提供帮助。图形界面显示了网络连接,用户可以通过该界面调整这些连接。用户界面显示培训进度和每个客户对培训的贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Demonstration of Federated Learning in a Resource-Constrained Networked Environment
Many modern applications in the area of smart computing are based on machine learning techniques. To train machine learning models, a large amount of data is usually required, which is often not readily available at a central location. Federated learning enables the training of machine learning models from distributed datasets at client devices without transmitting the data to a central place, which has benefits including preserving the privacy of user data and reducing communication bandwidth. In this demonstration, we show a federated learning system deployed in an emulated wide-area communications network with dynamic, heterogeneous, and intermittent resource availability, where the network is emulated using a CORE/EMANE emulator. In our system, the environment is decentralized and each client can ask for assistance by other clients. The availability of clients is intermittent so only those clients that are available can provide assistance. A graphical interface illustrates the network connections and the user can adjust these connections through the interface. A user interface displays the training progress and each client's contribution to training.
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