SYSEN 5640

SYSEN 5640

Course information provided by the Courses of Study 2024-2025.

The purpose of this class is to teach students the fundamentals of artificial intelligence (AI) technologies and how they can be applied in various healthcare system engineering problems. We will introduce conventional AI technologies including supervised learning for tasks like clinical risk prediction and computer assisted diagnosis, unsupervised learning methods for subtype identification and pattern discovery; as well as deep learning methods, including the basic perceptron and feedforward neural networks for standard vectorized data, convolutional neural networks for analyzing medical images, recurrent neural networks and transformer for analyzing event sequences and temporal signals, and graph neural networks for analyzing networks and relational data. The class includes both lectures introducing algorithms and theories, and programming exercises to get hands-on experience on implementing these algorithms with Python.

When Offered Spring.

Comments Some coursework in: Programming: Prior exposure to programming is required. We will teach Python throughout the class; Basic Probability and Statistics: You should know the basics of probabilities, mean, standard deviation, etc.; College Calculus, Linear Algebra: You should understand matrix/vector notation and operations.

Outcomes
  • Analyze health system engineering problems and their typical setups.
  • Identify and implement appropriate machine learning algorithms for solving different health system engineering problems.
  • Analyze the results of machine learning solutions and demonstrate their effectiveness.

View Enrollment Information

Syllabi: none
  •   Regular Academic Session. 

  • 3 Credits Graded

  • 17961 SYSEN 5640   LEC 001

    • MW
    • Jan 21 - May 6, 2025
    • Wang, F

  • Instruction Mode: Distance Learning-Synchronous

Syllabi: none
  •   Regular Academic Session. 

  • 3 Credits Graded

  • 17962 SYSEN 5640   LEC 002

    • TBA
    • Jan 21 - May 6, 2025
    • Wang, F

  • Instruction Mode: Distance Learning-Asynchronous