Module 3 of 7

Data-Centric Biomedical AI

High-quality data is the foundation of every reliable AI system. This module covers ethical data sourcing, human annotation, FAIR data principles, and governance for secure multi-institutional sharing. You’ll also learn to preprocess biomedical datasets, manage outliers, perform imputation, and build AI/ML-ready data pipelines.

Free

Format · Online

Start date · Aug 31, 2026

Duration · 2 weeks

Time · 5 hrs / week

Microskills · 7

CME credits · 11

What you will gain

Course Outcomes

Integration of AI techniques

Integrate AI and ML into healthcare research and clinical practice.

Real-world data application

Use real medical data and case studies to address healthcare challenges.

Practical AI skills

Work with code-free AI/ML tools — no programming knowledge needed.

Critical thinking

Analyze complex healthcare problems through AI-driven insights and methodologies.

What you will learn

Microskills in this Module

Each module covers 5 AI microskills plus one Scientific Rigor and Reproducibility (SRR) and one Responsible Conduct of Research (RCR) microskill.

Meet your instructors

Expert Faculty from the University of Florida

Dr. Azra Bihorac profile photo

Azra Bihorac MD, MS

Senior Associate Dean for Research Affairs · Director, IC3

Jie Xu, PhD profile picture

Jie Xu, PhD

Associate Professor

Dr. Tyler Loftus Profile Photo

Tyler Loftus MD, PhD

Associate Professor of Surgery · Associate Director, IC3

Dr. Elizabeth Palmer Profile Photo

Elizabeth Palmer PhD

Asst. Director of Training & Education

Continue learning

Other Modules

Module 1

Fundamentals of Biomedical AI Research

7 microskills

Module 2

Biomedical AI Alignment

7 microskills

Module 4

Fundamentals of Biomedical ML

7 microskills

Module 5

Biomedical Image Analysis

7 microskills

Module 6

Generative AI in Biomedicine

7 microskills

Module 7 · Capstone

Impact Project

Capstone

Ready to enroll?

Free enrollment. No coding required. Two cohorts per year — Spring and Fall.