The Landscape of Modern Machine Learning: A Review of Machine, Distributed and Federated Learning

5 Dec 2023  ·  Omer Subasi, Oceane Bel, Joseph Manzano, Kevin Barker ·

With the advance of the powerful heterogeneous, parallel and distributed computing systems and ever increasing immense amount of data, machine learning has become an indispensable part of cutting-edge technology, scientific research and consumer products. In this study, we present a review of modern machine and deep learning. We provide a high-level overview for the latest advanced machine learning algorithms, applications, and frameworks. Our discussion encompasses parallel distributed learning, deep learning as well as federated learning. As a result, our work serves as an introductory text to the vast field of modern machine learning.

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