Federated learning (FL) has been developed as a promising framework to leverage the resources of edge devices, enhance customers' privacy, comply with regulations, and reduce development costs. Although many methods and applications have been developed for FL, several critical challenges for practical FL systems remain unaddressed. This paper provides an outlook on FL development, categorized into five emerging directions of FL, namely algorithm foundation, personalization, hardware and security constraints, lifelong learning, and nonstandard data. Our unique perspectives are backed by practical observations from large-scale federated systems for edge devices.
翻译:联邦学习(FL)是利用边缘装置资源、加强客户隐私、遵守规章和降低发展成本的一个很有希望的框架,虽然已经为FL开发了许多方法和应用程序,但实用FL系统的一些关键挑战仍未得到解决,本文件提供了FL发展的前景,分为FL的五个新方向,即算法基础、个性化、硬件和安全限制、终身学习和非标准数据,我们的独特观点得到大型边设备联邦化系统的实际观察的支持。