Metadata-Version: 2.1
Name: dexp
Version: 2021.4.13.1065
Summary: Light-sheet Dataset EXploration and Processing
Home-page: https://github.com/royerlab/dexp
Author: Jordao Bragantini, Ahmet Can Solak, Loic A Royer
Author-email: jordao.bragantini@czbiohub.org, ahmetcan.solak@czbiohub.org, loic.royer@czbiohub.org
License: BSD 3-Clause
Description: 
        ![fishcolorproj](https://user-images.githubusercontent.com/1870994/113943035-b61b0c00-97b6-11eb-8cfd-ac78e2976ebb.png)
        # **dexp** | light-sheet Dataset EXploration and Processing 
        
        **dexp** is a [napari](https://napari.org/), [CuPy](https://cupy.dev/), [Zarr](https://zarr.readthedocs.io/en/stable/), and [DASK](https://dask.org/) based library for managing, processing and visualizing light-sheet microscopy datasets. It consists in light-sheet specialised image processing functions (equalisation, denoising, dehazing, registration, fusion, stabilization, deskewing, deconvolution), visualization functions (napari-based viewing, 2D/3D rendering, video compositing and resizing, mp4 generation), as well as dataset management functions (copy, crop, concatenation, tiff conversion). Almost all functions are GPU accelerated via [CuPy](https://cupy.dev/) but also have a [numpy](https://numpy.org/)-based fallback option for testing on small datasets. In addition to a functional API, DEXP offers a command line interface that makes it very easy for non-coders to pipeline large processing jobs all the way from a large multi-terabyte raw dataset to fully processed and rendered video in MP4 format. 
        
        
        ## How to install **dexp**
        
        ### Prerequisites:
        
        **dexp** works on OSX and Windows, but it is recomended to use the latest version of Ubuntu.
        We recommend a machine with a top-of-the-line NVIDIA graphics card (min 12G to be confortable).
        
        First, make sure to have a [working python installation](https://github.com/royerlab/dexp/wiki/Installing-Python) 
        Second, make sure to have a compatible and functional [CUDA installation](https://github.com/royerlab/dexp/wiki/Installing-CUDA)
        
        Once these prerequisites are satified, you can install **dexp**.
        
        ### Installation:
        
        **dexp** can simply be installed with:
        
        To installs **dexp** with GPU support (CUDA 11.2), colored console output, and [napari](https://napari.org/) support do:
        ```
        pip install dexp[color, cuda112, napari]
        ```
        Other available CUDA versions (from [CuPy](https://cupy.dev/)) are: cuda111, cuda110, cuda102, cuda101, cuda100. We recommend using the most recent CUDA version that your system supports, and avoiding versions below 10.0
        
        If instead you do not wish to add CUDA support, you can instead do:
        ```
        pip install dexp
        ```
        
        **For OSX users:** Before installating dexp, you will first need to install cairo:
        ```
        brew install cairo
        ```
        
        ### Quick one-line environment setup and installation:
        
        The following line will delete any existing dexp environment, recreate it, and install **dexp** with support for CUDA 11.2:
        ```
        conda deactivate; conda env remove --name dexp; conda create -y --name dexp python=3.8; conda activate dexp; pip install dexp[color,cuda112, napari]
        ```
        
        ### Leveraging extra CUDA libraries for faster processing:
        
        If you want you **dexp** CUDA-based processing to be even faster, you can install additional libraries such as CUDNN and CUTENSOR 
        with the following command:
        
        ```
        install cudalibs 11.2
        ```
        Change the CUDA version accordingly...
        
        ### Versions
        
        The list of released versions can be found [here](https://pypi.org/project/dexp/#history). The version format is: YYYY.MM.DD.M where YYYY is the year, MM the month, dd the day, and M is the number of elapsed minutes of the day. Git tags are automatically set to link pipy versions to github tagged versions so that the corresponding code can be inspected on github, probably the most important feature. This is a very simple and semantically clear versionning scheme that accomodates for a rapid rate of updates. 
        
        ### How to use **dexp** ?
        
        First you need a dataset aqquired on a light-sheet microscope, see [here](https://github.com/royerlab/dexp/wiki/dexp_datasets) for supported microscopes and formats.
        
        Second, you can use any of the commands [here](https://github.com/royerlab/dexp/wiki/dexp_commands) to process your data.
        The list of commands can be found by :
        
        ```
        dexp --help
        ```
        
        ### Example usage
        
        
        
        
        
        
        
          
         
        
        
        
        
          
          
        
        
        
        
        
        
        
Platform: UNKNOWN
Classifier: License :: OSI Approved :: BSD License
Classifier: Programming Language :: Python
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.8
Classifier: Environment :: GPU :: NVIDIA CUDA :: 11.1
Classifier: Development Status :: 3 - Alpha
Classifier: Intended Audience :: Science/Research
Classifier: Topic :: Scientific/Engineering :: Image Processing
Classifier: Topic :: Scientific/Engineering :: Visualization
Requires-Python: >=3.8.0
Description-Content-Type: text/markdown
Provides-Extra: source
Provides-Extra: cuda112
Provides-Extra: cuda111
Provides-Extra: cuda110
Provides-Extra: cuda102
Provides-Extra: cuda101
Provides-Extra: cuda100
Provides-Extra: color
Provides-Extra: napari
