LAPSE:2019.1628v1
Published Article
LAPSE:2019.1628v1
Data Science in the Chemical Engineering Curriculum
Thomas A. Duever
December 16, 2019
With the increasing availability of large amounts of data, methods that fall under the term data science are becoming important assets for chemical engineers to use. Methods, broadly speaking, are needed to carry out three tasks, namely data management, statistical and machine learning and data visualization. While claims have been made that data science is essentially statistics, consideration of the three tasks previously mentioned make it clear that it is really broader than just statistics alone and furthermore, statistical methods from a data-poor era are likely insufficient. While there have been many successful applications of data science methodologies, there are still many challenges that must be addressed. For example, just because a dataset is large, does not necessarily mean it is meaningful or information rich. From an organizational point of view, a lack of domain knowledge and a lack of a trained workforce among other issues are cited as barriers for the successful implementation of data science within an organization. Many of the methodologies employed in data science are familiar to chemical engineers; however, it is generally the case that not all the methods required to carry out data science projects are covered in an undergraduate chemical engineering program. One option to address this is to adjust the curriculum by modifying existing courses and introducing electives. Other examples include the introduction of a data science minor or a postgraduate certificate or a Master’s program in data science.
Keywords
Big Data, chemical engineering curriculum, data science, statistics
Subject
Suggested Citation
Duever TA. Data Science in the Chemical Engineering Curriculum. (2019). LAPSE:2019.1628v1
Author Affiliations
Duever TA: Department of Chemical Engineering, Ryerson University, Toronto, ON M5B 2K3, Canada
Journal Name
Processes
Volume
7
Issue
11
Article Number
E830
Year
2019
Publication Date
2019-11-08
Published Version
ISSN
2227-9717
Version Comments
Original Submission
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PII: pr7110830, Publication Type: Comment
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LAPSE:2019.1628v1
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doi:10.3390/pr7110830
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Dec 16, 2019
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CC BY 4.0
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[v1] (Original Submission)
Dec 16, 2019
 
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Dec 16, 2019
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Calvin Tsay
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