Project-MONAI/MONAI
AI Toolkit for Healthcare Imaging
Built on PyTorch, MONAI provides domain-specific implementations for medical imaging workflows including pre-processing transforms, network architectures, loss functions, and evaluation metrics optimized for multi-dimensional volumetric data. The framework emphasizes composable APIs and multi-GPU/multi-node distributed training, with a complementary Model Zoo using standardized Bundle format for sharing community-contributed architectures and pipelines.
7,927 stars and 323,705 monthly downloads. Used by 7 other packages. Actively maintained with 19 commits in the last 30 days. Available on PyPI.
Stars
7,927
Forks
1,444
Language
Python
License
Apache-2.0
Category
Last pushed
Mar 06, 2026
Monthly downloads
323,705
Commits (30d)
19
Dependencies
2
Reverse dependents
7
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