LGOct 2, 2023

Modularity in Deep Learning: A Survey

arXiv:2310.01154v17 citationsh-index: 3
Originality Synthesis-oriented
AI Analysis

It synthesizes existing work on modularity for researchers in deep learning, but is incremental as a survey.

This survey reviews the concept of modularity in deep learning across data, task, and model axes, describing its instantiations and advantages in various sub-fields.

Modularity is a general principle present in many fields. It offers attractive advantages, including, among others, ease of conceptualization, interpretability, scalability, module combinability, and module reusability. The deep learning community has long sought to take inspiration from the modularity principle, either implicitly or explicitly. This interest has been increasing over recent years. We review the notion of modularity in deep learning around three axes: data, task, and model, which characterize the life cycle of deep learning. Data modularity refers to the observation or creation of data groups for various purposes. Task modularity refers to the decomposition of tasks into sub-tasks. Model modularity means that the architecture of a neural network system can be decomposed into identifiable modules. We describe different instantiations of the modularity principle, and we contextualize their advantages in different deep learning sub-fields. Finally, we conclude the paper with a discussion of the definition of modularity and directions for future research.

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