Machine Learning and Data Infrastructure in Health Care

QST BA 878

This course is designed to provide students with a deeper understanding of the key concepts, methods, and tools in data science, machine learning, and data infrastructure applied to the world of health care. The course will cover both theoretical foundations and practical applications of these topics, with a focus on the integration of data science techniques with data infrastructure. The course will include hands-on examples from real world data sets the will enhance skills and experiences in health care. In addition to reviewing key steps in the data science process (i.e. data preparation, exploratory data analysis, feature engineering, model selection, model evaluation, and model deployment) and machine learning techniques, we'll explore how to use, apply, and deploy them in various healthcare settings. Students will learn about data architectures, distributed data processing systems, data pipelines, data transformation, and data visualization tools, and how different healthcare players are solving data challenges at scale. By the end of the course, students will have developed a deeper understanding of data science, machine learning, and data infrastructure, and will be able to apply these concepts to solve complex problems in a variety of healthcare domains across a multitude of data types.

FALL 2024 Schedule

Section Instructor Location Schedule Notes
E1 McCague HAR 228 T 6:30 pm-9:15 pm Reserved for MSBA students To request to register for this course, please submit the Questrom Waitlist Request Form.

Note that this information may change at any time. Please visit the Student Link for the most up-to-date course information.