APPFL 的进展:全面、可扩展的联合学习框架

Zilinghan Li, Shilan He, Ze Yang, Minseok Ryu, Kibaek Kim, Ravi Madduri
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摘要

联合学习(FL)是一种分布式机器学习范式,能够在保护数据隐私的同时进行协作式模型训练。如今,大多数数据都是专有、保密和分布式的,在这种情况下,FL 已成为有效利用这些数据的一种有前途的方法,尤其是在医学和电网等敏感领域。然而,异构性和安全性是 FL 面临的主要挑战;大多数现有的 FL 框架要么未能充分应对这些挑战,要么缺乏灵活性,无法纳入新的解决方案。为此,我们介绍了开发 APPFL 的最新进展,APPFL 是用于联合学习的可扩展框架和基准测试套件,它为异构性和安全性问题提供了全面的解决方案,并为集成新算法或适应新应用提供了友好的用户界面。我们通过广泛的实验来展示 APPFL 的能力,评估了 FL 的各个方面,包括通信效率、隐私保护、计算性能和资源利用率。我们通过垂直、分层和分散式 FL 的案例研究,进一步强调了 APPFL 的可扩展性。APPFL 在 https://github.com/APPFL/APPFL 上开源。
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Advances in APPFL: A Comprehensive and Extensible Federated Learning Framework
Federated learning (FL) is a distributed machine learning paradigm enabling collaborative model training while preserving data privacy. In today's landscape, where most data is proprietary, confidential, and distributed, FL has become a promising approach to leverage such data effectively, particularly in sensitive domains such as medicine and the electric grid. Heterogeneity and security are the key challenges in FL, however; most existing FL frameworks either fail to address these challenges adequately or lack the flexibility to incorporate new solutions. To this end, we present the recent advances in developing APPFL, an extensible framework and benchmarking suite for federated learning, which offers comprehensive solutions for heterogeneity and security concerns, as well as user-friendly interfaces for integrating new algorithms or adapting to new applications. We demonstrate the capabilities of APPFL through extensive experiments evaluating various aspects of FL, including communication efficiency, privacy preservation, computational performance, and resource utilization. We further highlight the extensibility of APPFL through case studies in vertical, hierarchical, and decentralized FL. APPFL is open-sourced at https://github.com/APPFL/APPFL.
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