LGMay 13, 2025

Modular Federated Learning: A Meta-Framework Perspective

arXiv:2505.08646v1h-index: 1
Originality Synthesis-oriented
AI Analysis

It provides a structured foundation for researchers and practitioners in privacy-preserving distributed machine learning, but it is incremental as a survey and framework proposal.

This survey tackles the complexity of Federated Learning by proposing a meta-framework that structures it into modular components, introducing a novel taxonomy that distinguishes Aggregation from Alignment as fundamental operators.

Federated Learning (FL) enables distributed machine learning training while preserving privacy, representing a paradigm shift for data-sensitive and decentralized environments. Despite its rapid advancements, FL remains a complex and multifaceted field, requiring a structured understanding of its methodologies, challenges, and applications. In this survey, we introduce a meta-framework perspective, conceptualising FL as a composition of modular components that systematically address core aspects such as communication, optimisation, security, and privacy. We provide a historical contextualisation of FL, tracing its evolution from distributed optimisation to modern distributed learning paradigms. Additionally, we propose a novel taxonomy distinguishing Aggregation from Alignment, introducing the concept of alignment as a fundamental operator alongside aggregation. To bridge theory with practice, we explore available FL frameworks in Python, facilitating real-world implementation. Finally, we systematise key challenges across FL sub-fields, providing insights into open research questions throughout the meta-framework modules. By structuring FL within a meta-framework of modular components and emphasising the dual role of Aggregation and Alignment, this survey provides a holistic and adaptable foundation for understanding and advancing FL research and deployment.

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