Abstract
The use of machine learning techniques in Internet of Things (IoT) applications is increasing by the diversity of the IoT scenario. In addition, machine learning libraries contribute to this growth by promoting stable and easy-to-manipulate implementations, reducing the need to develop complex algorithms and bringing researchers’ attention to other end-application activities. However, library diversity can make it difficult to choose from, since factors such as computational resource use are critical in an IoT scenario where such elements are limited. This work analyzes the performance, energy consumption and resource usage of two of the major machine learning libraries on the market, through standardized applications. It was found that the Pytorch 1.1.0 can be used with lower consumption.
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The authors would like to thank the Federal Institute of Paraíba (IFPB)/Campus João Pessoa for financially supporting the presentation of this research and, especially thank you, to the IFPB Interconnect Notice - No. 01/2020.
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Oliveira, L.P. et al. (2021). Deep Learning Library Performance Analysis on Raspberry (IoT Device). In: Barolli, L., Woungang, I., Enokido, T. (eds) Advanced Information Networking and Applications. AINA 2021. Lecture Notes in Networks and Systems, vol 225. Springer, Cham. https://doi.org/10.1007/978-3-030-75100-5_33
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DOI: https://doi.org/10.1007/978-3-030-75100-5_33
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