APMA 3150

From Data to Knowledge

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Course Description

Pre-Requisite(s): Engineering Undergraduate and APMA 3100 or APMA 3110

This course uses a Case-Study approach to teach statistical techniques with R: confidence intervals, hypotheses tests, regression, and anova. Also, it covers major statistical learning techniques for both supervised and unsupervised learning. Supervised learning topics cover regression and classification, and unsupervised learning topics cover clustering & principal component analysis. Prior basic statistic skills are needed.


  • Meiqin Li

     Rating

    3.83

     Difficulty

    3.00

     GPA

    3.74

     Sections

    2

    Last Taught

    Fall 2026

  • Heze Chen

     Rating

     Difficulty

     GPA

    3.81

     Sections

    1

    Last Taught

    Fall 2026