agridat
Dataset repository
A collection of agricultural datasets and analysis tools
Agricultural datasets
122 stars
20 watching
37 forks
Language: R
last commit: about 1 month ago
Linked from 2 awesome lists
datarstats
Related projects:
Repository | Description | Stars |
---|---|---|
ghrr/drat | A GitHub-hosted repository containing R packages and their source code. | 13 |
kwstat/pals | Tools and data for evaluating the effectiveness of color maps and palettes in visualizations | 83 |
qraat/qraat | Software for animal tracking and management using machine learning and sensor data | 4 |
cidree/forestdata | A package providing easy access to forestry and land use datasets. | 13 |
agrigpts/agrigpts | Developing large language models for agricultural applications to improve crop yields and support rural development. | 22 |
kwstat/corrgram | Provides a way to visualize correlation relationships in data | 18 |
abichat/tidytuesday | A repository providing R codes and plots for the Tidy Tuesday challenge, each with its own dataset and theme. | 66 |
georust/wkt | A Rust library providing read/write support for well-known text formats used in geospatial applications. | 50 |
r-spatial/gstat | A package for geostatistical modelling, prediction and simulation of spatial and spatio-temporal data. | 196 |
dl4sits/breizhcrops | A platform for crop type identification using satellite time series data | 200 |
jsonstat/jsonstat | A collection of tools and libraries for working with statistical data in JSON format | 23 |
international-soil-radiocarbon-database/israd | A repository providing synthesized soil radiocarbon data and tools for analysis. | 24 |
nasaharvest/cropharvest | A remote sensing dataset with associated benchmarks and tools for training machine learning models. | 175 |
spatstat/spatstat | Analyzing spatial point pattern data and other kinds of spatial data using R packages | 199 |
maja601/eurocrops | A comprehensive dataset collection combining EU countries' crop reporting data, harmonized with a standardized taxonomy for machine-readable analysis. | 177 |