A collection of open source projects relevant for industrial ecology practitioners, hosted on GitHub and beyond
-
Updated
Nov 5, 2024
A collection of open source projects relevant for industrial ecology practitioners, hosted on GitHub and beyond
A Python class to hybridize lifecycle assessment (LCA) and environmentally extended input-output (EEIO) databases.
Code and documentation for a commons of structured industrial ecology data
Material intensity database for research on infrastructure systems
Module to create symmetric Environmentally Extended Input-Output tables for Canada.
Public repository documenting the development of open science procedures and structures for industrial ecology, loosely connected to the Data Transparency Task Force (DTTF) of the International Society for Industrial Ecology (ISIE)
Module to automate mapping of classifications based on machine learning word association.
A most simple implementation of Kitzes (2013) in Python.
A collection of tools to interact with the Industrial Ecology Data Commons project
Implementation of "Disaggregating input-output models with incomplete information" by Lindner et al. (2012) in Python.
Clustering tools for the Lifecycle Screening of Emerging Technology (LiSET) framework
Python import of the RMRIO-database from the *.mat files
Urban litter, such as cans, packaging, and cigarettes, has significant impacts and yet little is known about its spatio-temporal distribution, with little available data. In contexts of data scarcity, crowdsourcing provides a low-cost approach to collecting a large amount of geo-referenced data. We consider 1.7 million litter observations in the…
Import the EXIOBASE 3rx database in Python from a *.mat file
Python class regionalizing processes from the ecoinvent database using trade date from the UN COMTRADE database and common sense.
Add a description, image, and links to the industrial-ecology topic page so that developers can more easily learn about it.
To associate your repository with the industrial-ecology topic, visit your repo's landing page and select "manage topics."