Mesa is an agent-based modeling framework in Python
-
Updated
Mar 9, 2023 - Python
Mesa is an agent-based modeling framework in Python
scikit-mobility: mobility analysis in Python
Core plug-in projects of the GAMA platform
Julia and Python complex system applications in ecology, epidemiology, sociology, economics & finance; network science models including Bianconi-Barabási, Barabási-Albert, Watts-Strogatz, Waxman Model & Erdős-Rényi; graph theory algorithms involving Gillespie, Bron Kerbosch, Ramsey, Bellman Ford, A*, Kruskal, Borůvka, Prim, Dijkstra, DSatur, Ran…
AgentPy is an open-source framework for the development and analysis of agent-based models in Python.
The Information Dynamics Toolkit xl (IDTxl) is a comprehensive software package for efficient inference of networks and their node dynamics from multivariate time series data using information theory.
A library for working with Cellular Automata, for Python.
GIS Extension for Mesa Agent-Based Modeling
A Julia package for the creation, manipulation and analysis of the structure, dynamics and functions of multilayer graphs.
An agent-based computational economy with macroeconomic equilibria from microeconomic behaviors
An awesome list of complex systems science resources
FLAME GPU 2 is a GPU accelerated agent based modelling framework for CUDA C++ and Python
Automata on arbitrary networks, with Python
Python package for early warning signals (EWS) of bifurcations in time series data.
reference implementation of the copan:CORE World-Earth modelling framework
Symbolic Generators for Complex Networks
Estimators for probabilities, entropies, and other complexity measures derived from observations in the context of nonlinear dynamics and complex systems
Agent-based modeling in JavaScript in the browser or on the server.
GPU Framework for Radio Astronomical Image Synthesis
Add a description, image, and links to the complex-systems topic page so that developers can more easily learn about it.
To associate your repository with the complex-systems topic, visit your repo's landing page and select "manage topics."