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pySTEPS
pysteps

Python framework for short-term ensemble prediction systems.

5K 559 188
thomasjkeel
rainfallqc

Quality control methods for rainfall data, based on polars

3K 0 0
ShervanGharari
easymore

geo-spatial processing of the input data for environmental and hydrological modeling

2K 26 24
ltelab
disdrodb

An open-source python software for standardized processing, sharing, and analysis of disdrometer data.

1K 27 13
MarkusPic
idf-analysis

heavy rainfall intensity as a function of duration and return period acc. to DWA-A 531 (2012)

1K 51 16
MarkusPic
ehyd-tools

Various tools for exporting and analyzing hydro(geo)logic time-series from the ehyd.gv.at platform of the Austian government.

1K 9 4
ghiggi
gpm-api

A python package to download and analyze the Global Precipitation Measurement Mission (GPM) data archive

1K 74 11
timcera
mettoolbox

mettoolbox is set of command line and Python tools for the analysis and reporting of meteorological data.

746 6 1
jleinonen
pytmatrix

Python code for T-matrix scattering calculations

423 123 50
mshumko
sampex

Easily download and load the SAMPEX data.

396 1 0
SINApSE-INPE
ainpp-pb-latam

The Artificial Intelligence for Nowcasting Pilot Project - Precipitation Benchmark for Latin America (AINPP-PB-LATAM).

347 1 0
montimaj
pycropwat

A Python Package for Computing Effective Precipitation Using Google Earth Engine Climate Data.

295 5 1
jkreklow
radproc

Radproc - RADOLAN composite processing, analysis and data exchange with ArcGIS

266 11 7
adamzhen
climateservaccess

Custom library to access data through ClimateSERV API

215 2 0
Dan-Boat
pyesd

Python Package for Empirical Statistical Downscaling. pyESD is under active development and all colaborators are welcomed. The purpose of the package is to downscale any climate variables e.g. precipitation and temperature using predictors from reanalysis datasets (eg. ERA5) to point scale. pyESD adopts many ML and AL as the transfer function.

160 60 11
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