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Tutorials & Learning
Resources

Hands-on guides to help you master medical AI with MONAI.

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Framework
Level

Tutorials

Hands-On Learning

Curated notebooks, documentation, and video resources for learning MONAI.

Core Beginner

Getting Started with MONAI

Introduction to MONAI Core concepts and basic operations.

Notebook
Core Beginner

Spleen 3D Segmentation

End-to-end 3D medical image segmentation tutorial.

Notebook
Core Beginner

Transforms and Datasets

Learn MONAI's data loading and transform pipeline.

Notebook
Core Intermediate

Auto3DSeg Tutorial

Automated 3D segmentation pipeline with algorithm selection.

Notebook
Core Intermediate

SwinUNETR Segmentation

Swin Transformer-based multi-organ segmentation on BTCV.

Notebook
Core Intermediate

Custom Transforms

Creating your own MONAI transforms.

Notebook
Core Advanced

MAISI - Medical Image Synthesis

Generate synthetic 3D CT images with latent diffusion.

Notebook
Core Advanced

VISTA-3D Interactive Segmentation

Interactive 3D segmentation with point prompts.

Notebook
Core Advanced

Federated Learning

Privacy-preserving distributed training with MONAI.

Notebook
Label Beginner

Getting Started with MONAI Label

Setup and first annotation session.

Docs
Label Beginner

3D Slicer Integration

Connect MONAI Label with 3D Slicer.

Docs
Label Intermediate

Active Learning Strategies

Implement active learning for efficient annotation.

Notebook
Label Intermediate

Custom MONAI Label App

Build your own annotation application.

Docs
Deploy Beginner

Creating Your First MAP

Package a model as a MONAI Application Package.

Docs
Deploy Beginner

DICOM Data Processing

Process DICOM data in deployment pipelines.

Docs
All Frameworks Beginner

MONAI Bootcamp 2023

Comprehensive workshop series covering Core, Label, and Deploy.

Video
All Frameworks Intermediate

MONAI at MICCAI

Conference workshops and presentations.

Video

Start Building with MONAI

Ready to build your first medical AI application? Get started with installation and explore pre-trained models.