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Framework para downscaling de outputs do WRF

Project description

WRFdownscalingML

Framework for downscaling WRF output statistics using machine learning algorithm.

Getting Started

Dependencies

You need Python 3.7 or later to use WRFdownscalingML:. You can find it at python.org. You also need pandas, numpy, matplotlib and netCDF4 packages, which is available from PyPI. If you have pip, just run:

pip install pandas
pip install numpy
pip install matplotlib
pip install netCDF4

Installation

Clone this repo to your local machine using:

git clone https://github.com/rjsampa/WRFdownscalingML

Or with pip install:

pip install WRFdownscalingML

Features

  • File structure for PyPI packages
  • Setup with package informations
  • License

Project details


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WRFdownscalingML-0.0.2.tar.gz (11.7 kB view details)

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