ecmwfr
API client
An R package providing a programmatic interface to the European Centre for Medium-Range Weather Forecasts API services.
Interface to the public ECMWF API Web Services
105 stars
6 watching
30 forks
Language: R
last commit: about 2 months ago
Linked from 1 awesome list
cdsclimate-datacopernicusecmwf-apiecmwf-servicesr-packagerstats
Related projects:
Repository | Description | Stars |
---|---|---|
ecmwf/cdsapi | Provides an interface to access climate data from the Copernicus Climate Data Store | 244 |
bluegreen-labs/daymetr | Provides an interface to download climate data from the Daymet web services | 30 |
ecmwf/atlas | A parallel data structure library for numerical weather prediction and climate modeling. | 118 |
ecmwf-lab/ai-models | An experimental framework for running AI-based weather forecasting models | 402 |
ecmwf/climetlab | Provides an interface to weather and climate data for scientific analysis in Python | 374 |
ecmwf-ifs/field_api | A Fortran-based API for managing data transfer between CPUs and GPUs in scientific computing applications. | 3 |
earthobservations/wetterdienst | Provides access to open weather data from various sources | 364 |
r-icarus/forecast_io | Provides an interface to the Forecast.IO API for weather forecasting | 8 |
ecmwfcode4earth/challenges_2021 | An initiative to develop innovative software for weather and climate applications | 48 |
ecmwf/magics | A toolset to visualize meteorological data from various formats. | 58 |
bluegreen-labs/snotelr | Facilitates exploration and download of SNOTEL data through an R-based GUI | 15 |
ecmwf/ecmwf-opendata | A Python package to simplify the download of ECMWF open meteorological data from various servers. | 181 |
ropenspain/climaemet | An R package providing an interface to download climatic data from the Spanish Meteorological Agency's API for analysis and visualization. | 42 |
bluegreen-labs/phenor | A framework for modeling plant phenology in response to climate change | 45 |
ecmwfcode4earth/challenges_2020 | A collaborative effort to develop innovative weather- and climate-related software using machine learning and cloud computing. | 49 |