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Medical Open Network
for Artificial Intelligence

The PyTorch-based framework for medical-imaging AI: research transforms, pre-trained models, and reproducible clinical deployment in one ecosystem. Open source, community-led.

9.5M+
pip installs
5K+
publications citing MONAI
40+
models in the Zoo
20+
challenge wins

Maintained by researchers and engineers at NVIDIA, NIH, King's College London, Mayo Clinic, MSKCC, Stanford, DKFZ, and 30+ other institutions.

Why MONAI

Built for medical imaging

Domain-specific transforms, validated 3D architectures, and reproducible workflows. This is not a general ML framework retrofitted for healthcare.

  1. PyTorch native

    Built on PyTorch, so there is no new framework to learn. Standard nn.Module, DataLoader, AMP, and DDP all work as you expect.

  2. Domain-specific tooling

    DICOM and NIfTI I/O, spatial transforms for 3D medical volumes, segmentation metrics (Dice, Hausdorff, Surface Distance), and losses calibrated for class-imbalanced anatomy.

  3. Reproducible Bundles

    MONAI Bundles package weights, training configs, metadata, and inference code together. The same format powers the Model Zoo, so your work is portable from day one.

  4. Community-governed

    Maintained by NVIDIA, NIH, King's College London, Mayo Clinic, MSKCC, Stanford, DKFZ, and 30+ other institutions. Governance, working groups, and roadmap decisions are public.

  5. State-of-the-art architectures

    Reference implementations of MAISI (synthetic CT generation), UNETR and SwinUNETR (3D transformer backbones), VISTA-3D (universal segmentation), and Auto3DSeg (automated pipelines).

  6. Apache 2.0

    Open source under Apache 2.0. Freely usable in commercial products, research, and clinical pipelines, with no hidden licensing gotchas for production use.

Ecosystem

Three projects, one pipeline

Annotate in Label, train in Core, deploy with Deploy. They share one bundle format and the same data conventions, so you can use any piece on its own or all three together.

Annotate

MONAI Label

Server-side annotation with active learning. It suggests the next volume to label and refines predictions from your corrections. Plugs into 3D Slicer, OHIF, and MITK.

  • Active learning for efficient data selection
  • Multiple viewer integrations
  • AI-assisted annotation
  • Multi-user collaboration
Explore Label
Train

MONAI Core

The training and research library. Medical-imaging transforms, 3D architectures, losses, and metrics: the building blocks researchers reach for first.

  • Medical-specific transforms
  • MAISI, UNETR & VISTA-3D architectures
  • Pre-trained model zoo
  • Automated ML pipelines
Explore Core
Deploy

MONAI Deploy

The path from trained model to clinical pipeline. DICOM and FHIR I/O, containerized MAP packaging, and inference runtimes from workstation to Kubernetes.

  • Clinical workflow integration
  • DICOM & FHIR support
  • Containerized deployment
  • Inference optimization
Explore Deploy

Connect

Community & Support

Questions, contributions, and discussions are public. Ask on GitHub or Slack; attend working-group calls; present at the MONAI Bootcamp.

Impact

Success Stories

How hospitals, vendors, and research groups run MONAI in production.

Mayo Clinic Featured

Clinical AI Integration at Mayo Clinic

The Center for Augmented Intelligence at Mayo Clinic Florida runs MONAI-packaged models inside its clinical Radiology pipeline. The case study documents the integration pattern, MAP containerization, and throughput results.

Clinical Integration Radiology AI Workflow
Read Case Study
MONAI models running in the CAII clinical viewer at Mayo Clinic: MRI-unsafe device detection on a chest X-ray, breast-density classification on mammography, white-matter disease segmentation on brain MRI, and coronary-artery stenosis detection on CTA Mayo Clinic Florida · CAII viewer
Mercure

Mercure DICOM Orchestration

MONAI Application Packages run inside the Mercure DICOM Orchestrator, so a trained model can join a radiology routing workflow without custom glue code.

DICOM MAP Orchestration
Read Blog
Siemens Healthineers

Enterprise AI at Scale

Siemens Healthineers adopted MONAI Deploy for their Digital Marketplace, enabling enterprise-scale AI deployment globally.

Enterprise Global Marketplace
Read Blog
Mayo Clinic × Siemens

Global AI Marketplace

Mayo Clinic AI apps built with MONAI accessible to 10,000+ institutions via Siemens Digital Marketplace.

10K+ Institutions Zero-Code
Read Case Study

Contributors

Maintained by the medical-imaging community

These institutions have dedicated engineering, clinical, and research staff to MONAI. Contributions are reviewed and merged in the open.

Answer Digital
CAS
DKFZ
FNLCR
Guy's and St Thomas'
King's College London
Kitware
Mayo Clinic
MGH & BWH
MSKCC
NIH NCI
NVIDIA
Stanford
TUM
UCL
Vanderbilt
Warwick