uky-transport-data-science / Ce599

CE599-002 Data Science for Transportation

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CE599-002: Data Science in Transportation

University of Kentucky Department of Civil Engineering

Instructor: Greg Erhardt

Course Content and Objectives

This course is designed around the Data Science Venn Diagram, as shown below (from Drew Conway) It takes applications from the transportation realm, and introduces the practical skills needed to pursue data science both in the workplace and as a research student.

Data Science Venn Diagram

Main topics to be covered include:

  • Fundamentals of programming and data wrangling in Python
  • Data visualization
  • Applied statistical modelling and interpretation
  • Identifying and perpetuating intellectually honest analysis

The syllabus is available here.

Acknowledgements

Many of the exercises are based on those developed by Paul Waddell and Geoff Boeing for CP255: Urban Informatics and Visualization at the University of California at Berkeley. Those materials are available from:

https://github.com/waddell/urban-informatics-and-visualization
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