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How Electrical Engineering and Computer Engineering Departments are Preparing Undergraduate Students for the New Big Data, Machine Learning, and AI Paradigm: A Three- Model Overview

机译:电气工程和计算机工程部门如何为新的大数据,机器学习和AI范例准备本科生:三模型概述

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Big data, machine learning, and artificial intelligence (Big Data ML-AI) applications are revolutionizing the methods and practices of electrical and computer engineering (ECE), from autonomous vehicles and futuristic semi-conductor design to smart phones and speakers. But is the undergraduate ECE curriculum keeping pace with the new Big Data ML-AI paradigm? This exploratory study is designed to investigate whether or not, and how ECE departments are adapting the first two years of their curriculum, so as to sustainably integrate Big Data ML-AI courses and content. The research questions are: Which Big Data ML-AI tools are being used in industry, and are these tools reflected in the ECE curriculum? To answer these questions, the datasets consist of 2018 surveys of Big Data ML-AI tools that are being utilized in industry, and a review of the undergraduate ECE syllabi of five selected universities from the group of American Association of Universities. The results show that Python, Tensorflow, and Keras are the most utilized Big Data ML-AI tools, while only one of the five selected institutions has fully adapted the first two years of the undergraduate ECE curriculum, so as to flexible integrate Big Data ML-AI courses and concepts. Additionally, objections to the integration of Big Data ML-AI into the ECE curriculum, such as technology transience and the detrimental nature of biased algorithms, are addressed.
机译:大数据,机器学习,人工智能(大数据ML-AI)应用革命性的方法和电气和计算机工程系(ECE)的做法,从自主车和未来的半导体设计智能手机和扬声器。但与新的大数据ML-AI模式的本科课程ECE保持步伐?这一探索性的研究,旨在探讨ECE部门与否,以及如何调整前两年的课程,从而为可持续的整合大数据ML-AI的课程和内容。该研究的问题是:哪个大数据ML-AI工具在行业中使用,并反映在欧洲经委会课程这些工具?为了回答这些问题,该数据集包括大数据ML-AI工具2018页的调查正在使用的工业,并从该组大学协会的五个选定的大学本科ECE大纲的审查。结果表明,Python和Tensorflow和Keras是使用最多的大数据ML-AI工具,而唯一入选的五个机构之一,已经完全适应了前两年的本科ECE课程,以灵活的整合大数据ML -AI课程和概念。此外,反对大数据ML-AI的融入ECE课程,如技术稍纵即逝的偏置算法的有害性质,得到解决。

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