Abstract
In this paper, we present an analysis of important aspects that arise during the development of neural network applications. Our aim is to determine if the choice of library can impact the system’s overall performance, either during training or design, and to extract a set of criteria that could be used to highlight the advantages and disadvantages of each library under consideration. To do so, we first extracted the previously mentioned aspects by comparing two of the most popular neural network libraries—PyTorch and TensorFlow—and then we performed an analysis on the obtained results, with the intent of determining if our initial hypothesis was correct. In the end, the results of the analysis are gathered, and an overall picture of what tasks are better suited for what library is presented.
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference37 articles.
1. Machine learning in medicine;N. Engl. J. Med.,2019
2. Applications of Artificial Intelligence in Combating COVID-19: A Systematic Review;Open Access Libr. J.,2020
3. Machine learning and the physical sciences;Rev. Mod. Phys.,2019
4. Evaluation efficiency of hybrid deep learning algorithms with neural network decision tree and boosting methods for predicting groundwater potential;Geocarto Int.,2021
5. Machine learning for predicting thermal transport properties of solids;Mater. Sci. Eng. R Rep.,2021
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