rapidsai / cucim

cuCIM - RAPIDS GPU-accelerated image processing library
https://docs.rapids.ai/api/cucim/stable/
Apache License 2.0
356 stars 61 forks source link
computer-vision cuda digital-pathology gpu image-analysis image-data image-processing medical-imaging microscopy multidimensional-image-processing nvidia segmentation

 cuCIM

RAPIDS cuCIM is an open-source, accelerated computer vision and image processing software library for multidimensional images used in biomedical, geospatial, material and life science, and remote sensing use cases.

cuCIM offers:

cuCIM supports the following formats:

NOTE: For the latest stable README.md ensure you are on the main branch.

Developer Page

Blogs

Webinars

Documentation

Release notes are available on our wiki page.

Install cuCIM

Conda

Conda (stable)

conda create -n cucim -c rapidsai -c conda-forge cucim cuda-version=`<CUDA version>`

<CUDA version> should be 11.2+ (e.g., 11.2, 12.0, etc.)

Conda (nightlies)

conda create -n cucim -c rapidsai-nightly -c conda-forge cucim cuda-version=`<CUDA version>`

<CUDA version> should be 11.2+ (e.g., 11.2, 12.0, etc.)

PyPI

Install for CUDA 12:

pip install cucim-cu12

Alternatively install for CUDA 11:

pip install cucim-cu11

Notebooks

Please check out our Welcome notebook (NBViewer)

Downloading sample images

To download images used in the notebooks, please execute the following commands from the repository root folder to copy sample input images into notebooks/input folder:

(You will need Docker installed in your system)

./run download_testdata

or

mkdir -p notebooks/input
tmp_id=$(docker create gigony/svs-testdata:little-big)
docker cp $tmp_id:/input notebooks
docker rm -v ${tmp_id}

Build/Install from Source

See build instructions.

Contributing Guide

Contributions to cuCIM are more than welcome! Please review the CONTRIBUTING.md file for information on how to contribute code and issues to the project.

Acknowledgments

Without awesome third-party open source software, this project wouldn't exist.

Please find LICENSE-3rdparty.md to see which third-party open source software is used in this project.

License

Apache-2.0 License (see LICENSE file).

Copyright (c) 2020-2022, NVIDIA CORPORATION.