pymrio
Environmental analysis library
An open-source tool for analyzing and visualizing global environmental impact data from input-output tables
Multi-Regional Input-Output Analysis in Python.
165 stars
11 watching
74 forks
Language: Python
last commit: 3 months ago
Linked from 1 awesome list
calculationsinput-output-analysismriopython
Related projects:
Repository | Description | Stars |
---|---|---|
| A Python class to combine lifecycle assessment and environmentally extended input-output databases into a hybrid database | 38 |
| A comprehensive Python library for geospatial data science and analysis, providing tools for spatial statistics, graph construction, and exploratory data analysis. | 1,346 |
| A Python package for analyzing and visualizing energy and climate scenarios | 241 |
| A Python library for text analysis with recurrent neural networks. | 531 |
| Tools for technical analysis of time series data from photovoltaic energy systems | 158 |
| Tools for evaluating climate and air quality models using Earth observation data | 26 |
| A Python library providing direct access to European greenhouse gas research data from the ICOS Carbon Portal | 12 |
| A Python toolkit for classifying and analyzing environmental impacts of surface mining activities on American Lands | 28 |
| A Python toolbox for comparing and validating geospatial time series datasets with an initial focus on soil moisture observations. | 78 |
| A Python package for analyzing and visualizing meteorological fields. | 16 |
| A Python package for analysing and visualising Earth science data | 634 |
| A Python package for estimating evapotranspiration and potential evapotranspiration from meteorological data | 154 |
| Develops an interpretable evaluation procedure for off-policy evaluation (OPE) methods to quantify their sensitivity to hyper-parameter choices and/or evaluation policy choices. | 31 |
| A Python client library for interacting with the openEO API to access remote sensing data from various sources. | 156 |
| A Python library for analyzing landscape metrics and evolution | 83 |