Edge machine learning: Enabling smart internet of things applications

Machine learning has traditionally been solely performed on servers and high-performance machines. However, advances in chip technology have given us miniature libraries that fit in our pockets and mobile processors have vastly increased in capability narrowing the vast gap between the simple proces...

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Bibliographic Details
Main Authors: Basurra, S. (Author), Gaber, M.M (Author), Yazici, M.T (Author)
Format: Article
Language:English
Published: MDPI AG 2018
Subjects:
IoT
Online Access:View Fulltext in Publisher
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020 |a 25042289 (ISSN) 
245 1 0 |a Edge machine learning: Enabling smart internet of things applications 
260 0 |b MDPI AG  |c 2018 
856 |z View Fulltext in Publisher  |u https://doi.org/10.3390/bdcc2030026 
520 3 |a Machine learning has traditionally been solely performed on servers and high-performance machines. However, advances in chip technology have given us miniature libraries that fit in our pockets and mobile processors have vastly increased in capability narrowing the vast gap between the simple processors embedded in such things and their more complex cousins in personal computers. Thus, with the current advancement in these devices, in terms of processing power, energy storage and memory capacity, the opportunity has arisen to extract great value in having on-device machine learning for Internet of Things (IoT) devices. Implementing machine learning inference on edge devices has huge potential and is still in its early stages. However, it is already more powerful than most realise. In this paper, a step forward has been taken to understand the feasibility of running machine learning algorithms, both training and inference, on a Raspberry Pi, an embedded version of the Android operating system designed for IoT device development. Three different algorithms: Random Forests, Support Vector Machine (SVM) and Multi-Layer Perceptron, respectively, have been tested using ten diverse data sets on the Raspberry Pi to profile their performance in terms of speed (training and inference), accuracy, and power consumption. As a result of the conducted tests, the SVM algorithm proved to be slightly faster in inference and more efficient in power consumption, but the Random Forest algorithm exhibited the highest accuracy. In addition to the performance results, we will discuss their usability scenarios and the idea of implementing more complex and taxing algorithms such as Deep Learning on these small devices in more details. © 2018 by the authors. Licensee MDPI, Basel, Switzerland. 
650 0 4 |a Edge computing 
650 0 4 |a Internet of Things 
650 0 4 |a IoT 
650 0 4 |a Machine learning 
700 1 |a Basurra, S.  |e author 
700 1 |a Gaber, M.M.  |e author 
700 1 |a Yazici, M.T.  |e author 
773 |t Big Data and Cognitive Computing