Abstract
Building deep learning models proposed by third parties can become a simple task when specialized libraries are used. However, much mystery still surrounds the design of new models or the modification of existing ones. These tasks require in-depth knowledge of the different components or building blocks and their dimensions. This information is limited and broken up in different literature. In this article, we collect and explain the building blocks used to design deep learning models in depth, starting from the artificial neuron to the concepts involved in building deep neural networks. Furthermore, the implementation of each building block is exemplified using the Keras library.
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Ochoa Domínguez, H. de J., Cruz Sánchez, V. G., & Vergara Villegas, O. O. (2024). Demystifying Deep Learning Building Blocks. Mathematics, 12(2). https://doi.org/10.3390/math12020296
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