Educational Programs

AI for Medical Professionals – April 2026

AI for Medical Professionals – April 2026 | IIIT Hyderabad
Online Program · April 2026

AI for Medical Professionals – April 2026

A 4-module program designed for medical students, clinicians, and faculty to understand, evaluate, and apply AI/ML in healthcare settings.

📆 Starts April 2026
⏱️ 3 hrs/week · 4 Modules
💻 Flexible online learning
📜 Certificate by IIIT-H, IHub-Data & NAMS

Program Details

Objectives

  • Providing a foundational understanding of AI and its relevance to healthcare.
  • Familiarizing participants with the applications of AI techniques in clinical practice.
  • Fostering awareness of ethical and governance issues related to AI in medicine.

Target Group

  • Postgraduate medical students (MD/MS/MDS/Equivalent).
  • Faculty and medical professionals (MD/MS/MCH/DM/MDS/MBBS/BDS).

Eligibility

  • Basic knowledge of healthcare processes and clinical practice.
  • Curiosity for understanding the impact of modern technology in healthcare.

Expected Outcomes

  • Understanding of AI concepts and their applications in healthcare.
  • Ability to evaluate AI tools in clinical settings.
  • Hands-on experience with AI tools and basic model development.
  • Improved ability to critically assess AI research and technologies.
  • Enhanced ability to work collaboratively on AI projects in healthcare.

Course Content

Comprehensive coverage from AI basics to clinical applications and ethics.

Module 1: Introduction to Artificial Intelligence (AI) in Healthcare

  • Clinical data sets: Data sources and types (structured, unstructured); Standards in data acquisition and management; Opportunities and challenges in data handling
  • The role of smart and intelligent systems in clinical workflow: Traditional vs. intelligent systems in healthcare; concepts of intelligence and smartness
  • Recent Inroads / Trends of AI in Healthcare: Landmark applications in healthcare

Module 2: Basics of Machine and Deep Learning (ML & DL)

  • Introduction to AI: Definition, history, evolution, and applications
  • Learning paradigms: Supervised (classification, regression), Unsupervised (clustering), Reinforcement Learning
  • The ML Pipeline: Feature extraction, selection, dimensionality reduction; Model building, validation, and evaluation metrics
  • Recent Trends: Generative AI, Foundational Models, ChatGPT
  • ML & DL Algorithms: Tree-based methods (decision trees, random forests), Neural Networks (MLP, SVM), Hierarchical Clustering, Deep Neural Networks (CNNs, RNNs, Transformers)

Module 3: Clinical Applications

  • Case Study Framework: Clinical presentation & AI/ML role; Data prep & feature processing; Model building & evaluation; Results & inference
  • Domains (any 4): Screening, Diagnosis, Prognosis, Treatment, Patient Management, Hospital Resource Management
  • Specific Case Studies: Different data types (biosignals, images, tabular, molecular, textual) with relevant algorithms (tree-based, NN, DNN)
  • Signal-based – ECG (cardiovascular diseases), EEG (sleep staging)
  • Applications by Data Type:
    • Image-based – Retinal Scans (Diabetic Retinopathy), Chest X-ray (Pneumonia/Covid)
    • Tabular – EHRs (Covid, Sepsis)
    • Molecular – Genomics (Cancer), Structural Biology (Drug Discovery)
    • Text – Medical Q&A systems, ChatGPT Chatbots for Physical & Mental Health

Module 4: Ethics and Governance of AI

  • Data protection, privacy, anonymity, biases – Regulations and governance frameworks for AI as a medical device

Hands-on AI Projects (Optional)

  • Building a basic machine learning model
  • Simple AI projects relevant to healthcare

Course Delivery & Certification

Lectures

Pre-recorded lectures (~1 hour, delivered as 4 videos of 15 minutes each) released weekly for flexible self-paced learning.

Online Contact Sessions

Weekly 1-hour live sessions covering lecture summaries, tutorials, Q&A, and demonstration of case studies.

Demo of AI Applications

Simple AI applications relevant to healthcare demonstrated during live sessions.

Study-time

Participants are expected to dedicate around 3 hours per week.

Assessment

Short quizzes/assignments after each video module and a post-course assessment to measure learning outcomes.

Certification

Certificate of course completion will be jointly issued by IIIT-H, IHub-Data, & NAMS.

Pre-Registration

Secure your seat for the AI for Medical Professionals – April 2026 program.

Pre-Registration

Those who are interested in pre-booking their seat for the course can register with an advance payment.

  • Pre-booking Amount: ₹3,000/-
  • Seat confirmation prior to full enrollment
  • Balance course fee payable before course commencement
Pre-Register Now

Coordinators

Midhuna Chandran
Midhuna Chandran
Judish Raj
Judish Raj
Nijitha Thomas K
Nijitha Thomas K
© Design by Nijitha Thomas K, 2026