• LPPP 6001

    Foundational Skills Workshop
     Rating

     Difficulty

     GPA

    3.81

    Last Taught

    Fall 2025

    Leadership and Public Policy foundational skills course.

  • DS 6002

    Ethics of Big Data I
     Rating

     Difficulty

     GPA

    3.71

    Last Taught

    Spring 2026

    This course examines the ethical issues arising around big data and provides frameworks, context, concepts, and theories to help students think through and deal with the issues as they encounter them in their professional lives.

  • PSPS 6005

    Practical Applications of Risk Management in Public Safety Operations
     Rating

     Difficulty

     GPA

    3.71

    Last Taught

    Spring 2026

    Learn a theoretical & applied process to identify risks in every public safety agency job description. From this basis, students will gain skills & knowledge to design & update control measures to proactively prevent tragedies from occurring. Final project to develop an instrument to recognize, prioritize, mobilize & address identified public safety risks in community/agency. Prereq: MPS student or Instructor permission

  • PSPS 6010

    Constitutional Framework of Public Safety
     Rating

     Difficulty

     GPA

    3.96

    Last Taught

    Spring 2026

    Explores the Constitution as the ethical compass that guides the work of public safety professionals and cement a fundamental understanding of the U.S. Constitution and the subsequent 27 amendments. Students will develop a detailed understanding of both the powers and limitations that arise from the Bill of Rights, and closely examine the evolution of the rule of law that frames and guides their work.

  • DS 6013

    Data Science Capstone Project Work II
     Rating

     Difficulty

     GPA

    3.98

    Last Taught

    Spring 2025

    This course is designed for capstone project teams to meet in groups, with advisors, and with clients to advance work on their projects.

  • PSPS 6015

    Practical Application and Understanding of Data for Public Safety Managers
     Rating

     Difficulty

     GPA

    3.95

    Last Taught

    Spring 2026

    Through a step-by-step process students learn to conduct statistical analyses to examine, evaluate, and share relevant public safety related data. Students also learn how to make practical interpretations of the data and methods for decision-making.

  • DS 6015

    Data Science Capstone
     Rating

     Difficulty

     GPA

    Last Taught

    Spring 2026

    Designed for capstone project teams to meet in groups with advisors and clients to advance work on their projects. Capstone course is for MSDS students.

  • DS 6021

    Machine Learning I: Introduction to Predictive Modeling
     Rating

     Difficulty

     GPA

    Last Taught

    Spring 2026

    Comprehensive introduction to predictive modeling, a cornerstone of data science and machine learning. Learn the fundamental concepts, techniques, and tools used to build models while emphasizing both theoretical understanding and practical applications. The topics include we will cover are an in-depth analysis of linear models and different variants, their extension to generalized linear models, and an introduction to nonparametric regression.

  • PSPS 6030

    Developing and Implementing Systems of Emergency Preparedness
     Rating

     Difficulty

     GPA

    3.95

    Last Taught

    Spring 2026

    Examines joint operations and incident command for complex events. Emphasis will be placed on command structure, continuity of operations, public safety response to community/public health emergencies, occupational health and safety, local systems and resources, inter-agency cooperation, and communications and technology support. Students will engage public safety response issues and apply their knowledge through scenario exercises.

  • DS 6030

    Machine Learning II: Data Mining & Statistical Learning
     Rating

     Difficulty

     GPA

    3.91

    Last Taught

    Spring 2026

    This course covers fundamentals of data mining and machine learning within a common statistical framework. Topics include regression, classification, clustering, resampling, regularization, tree-based methods, ensembles, boosting, and Support Vector Machines. Coursework is conducted in the R programming language.