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Aquatic Biogeochemical Interpolation Library

Project description

Abil.py ·

DOI DOI GitHub license Build Status dev

Overview

Abil.py provides functions to interpolate distributions of biogeochemical observations using Machine Learning algorithms in Python. The library is optimized to interpolate many predictions in parallel and is thus particularly suited for distribution models of species, genes and transcripts. The library relies on scikit-learn.

Installation

Prerequisites

Ensure you have the following installed on your system:

Using Anaconda

We recommend uing Anaconda environments to avoid package conflicts.

Run the following command to install the package with Anaconda:

conda create -n myenv python=3.11 pip
conda activate myenv
pip install abil

Install via pip

Run the following command to install the package directly:

pip install abil

Install via cloning (for development)

If you want to modify the package, clone the repository and install it in editable mode:

git clone https://github.com/nanophyto/Abil.git
cd Abil
pip install -e .

Run unit test

To run a unit test, make sure you are under the project root:

python -m unittest tests/test.py

Documentation

See the documentation for instructions on how to setup and run the models.

Project details


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