Federated Learning (FL) has become a practical and popular paradigm in machine learning. However, currently, there is no systematic solution that covers diverse use cases. Practitioners often face the challenge of how to select a matching FL framework for their use case. In this work, we present UniFed, the first unified benchmark for standardized evaluation of the existing open-source FL frameworks. With 15 evaluation scenarios, we present both qualitative and quantitative evaluation results of nine existing popular open-sourced FL frameworks, from the perspectives of functionality, usability, and system performance. We also provide suggestions on framework selection based on the benchmark conclusions and point out future improvement directions.
翻译:联邦学习联合会(FL)已成为机器学习的一个实用和流行的范例,然而,目前没有涵盖多种使用案例的系统解决方案。从业者往往面临如何选择匹配的FL框架供他们使用的挑战。在这项工作中,我们介绍了对现有的开放源码FL框架进行标准化评价的第一个统一基准UniFed。在15个评价设想中,我们从功能、可用性和系统性的角度,提出了9个现有的开放源码FL框架的定性和定量评价结果。我们还根据基准结论提出了框架选择建议,并指明了未来的改进方向。