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Analyzing Machine Learning on Mainstream Microcontrollers

机译:分析主流微控制器上的机器学习

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Machine learning in embedded systems has become a reality, with the first tools for neural network firmware development already being made available for ARM microcontroller developers. This paper explores the use of one of such tools, namely the STM X-Cube-AI, on mainstream ARM Cortex-M microcontrollers, analyzing their performance, and comparing support and performance of other two common supervised ML algorithms, namely Support Vector Machines (SVM) and k-Nearest Neighbours (k-NN). Results on three datasets show that X-Cube-AI provides quite constant good performance even with the limitations of the embedded platform. The workflow is well integrated with mainstream desktop tools, such as Tensorflow and Keras.
机译:嵌入式系统中的机器学习已经成为现实,用于神经网络固件开发的首批工具已提供给ARM微控制器开发人员。本文探讨了其中一种工具STM X-Cube-AI在主流ARM Cortex-M微控制器上的用法,分析了它们的性能,并比较了其他两种常见的受监督ML算法(即支持向量机( SVM)和k最近邻居(k-NN)。在三个数据集上的结果表明,即使在嵌入式平台的限制下,X-Cube-AI仍可提供相当稳定的良好性能。该工作流程已与Tensorflow和Keras等主流桌面工具很好地集成在一起。

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