LGSep 5, 2025

Foundational Models and Federated Learning: Survey, Taxonomy, Challenges and Practical Insights

arXiv:2509.05142v11 citationsh-index: 3PeerJ Computer Science
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview and practical guidelines for researchers and practitioners in fields like healthcare, though it is incremental as a survey rather than introducing new methods.

This paper surveys the intersection of federated learning and foundational models, presenting a taxonomy and technical comparison of over 42 methods to address the need for collaborative training without sharing private data, with a focus on healthcare applications.

Federated learning has the potential to unlock siloed data and distributed resources by enabling collaborative model training without sharing private data. As more complex foundational models gain widespread use, the need to expand training resources and integrate privately owned data grows as well. In this article, we explore the intersection of federated learning and foundational models, aiming to identify, categorize, and characterize technical methods that integrate the two paradigms. As a unified survey is currently unavailable, we present a literature survey structured around a novel taxonomy that follows the development life-cycle stages, along with a technical comparison of available methods. Additionally, we provide practical insights and guidelines for implementing and evolving these methods, with a specific focus on the healthcare domain as a case study, where the potential impact of federated learning and foundational models is considered significant. Our survey covers multiple intersecting topics, including but not limited to federated learning, self-supervised learning, fine-tuning, distillation, and transfer learning. Initially, we retrieved and reviewed a set of over 4,200 articles. This collection was narrowed to more than 250 thoroughly reviewed articles through inclusion criteria, featuring 42 unique methods. The methods were used to construct the taxonomy and enabled their comparison based on complexity, efficiency, and scalability. We present these results as a self-contained overview that not only summarizes the state of the field but also provides insights into the practical aspects of adopting, evolving, and integrating foundational models with federated learning.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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