• Stars
    star
    149
  • Rank 248,619 (Top 5 %)
  • Language
    Python
  • License
    MIT License
  • Created over 7 years ago
  • Updated 5 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Source code accompanying 'Mathematics of Epidemics on Networks' by Kiss, Miller, and Simon http://www.springer.com/us/book/9783319508047 . Documentation for the software package is at https://epidemicsonnetworks.readthedocs.io/en/latest/

Springer Source Code

This repository accompanies Mathematics of Epidemics on Networks by Kiss, Miller, and Simon (Springer, 2017).

Cover image

It contains the EoN (Epidemics on Networks) python software accompanying the book.

Corrections

For corrections or to report an error to the content in the published book, see the file errata.md and follow instructions there.

To report a bug in the code please use the new issue option on the issues page.

Software Documentation

Documentation (including installation instructions) is available at http://epidemicsonnetworks.readthedocs.io/en/latest/

Software Releases

We released v1.0 on 9 Aug 2018

To see changes since v1.0, please look at our list of changes

We released v1.1 on 13 Dec 2019. This is the version described in our paper.

Contributions

We welcome new contributors. Please help test the code or suggest improvements.

More Repositories

1

dynamical-systems-with-applications-using-python

Source code for 'Dynamical Systems with Applications Using Python' by Stephen Lynch
Python
147
star
2

linear-programming-using-MATLAB

This book offers a theoretical and computational presentation of a variety of linear programming algorithms and methods with an emphasis on the revised simplex method and its components. A theoretical background and mathematical formulation is included for each algorithm as well as comprehensive numerical examples and corresponding MATLAB® code. The MATLAB® implementations presented in this book are sophisticated and allow users to find solutions to large-scale benchmark linear programs. Each algorithm is followed by a computational study on benchmark problems that analyze the computational behavior of the presented algorithms. As a solid companion to existing algorithmic-specific literature, this book will be useful to researchers, scientists, mathematical programmers, and students with a basic knowledge of linear algebra and calculus. The clear presentation enables the reader to understand and utilize all components of simplex-type methods, such as presolve techniques, scaling techniques, pivoting rules, basis update methods, and sensitivity analysis.
MATLAB
43
star
3

Multiple-Criteria-Decision-Aid

Source code for Multiple Criteria Decision Aid by Jason Papathanasiou, Nikolaos Ploskas
Python
32
star
4

Dynamical-Systems-with-Applications-using-MATLAB

Source code for 'Dynamical Systems with Applications using MATLAB®, 2ed' by Stephen Lynch http://www.springer.com/book/9783319068190
MATLAB
27
star
5

Numerical-Methods-for-Stochastic-Partial-Differential-Equations-with-White-Noise

Matlab codes accompanying Numerical Methods for Stochastic Partial Differential Equations with White Noise
MATLAB
20
star
6

adventures-in-graph-theory

Sage source code for the computation of graphs and proofs from "Adventures in Graph Theory" by David Joyner and Caroline Grant Melles
Python
13
star
7

Numerical_Linear_Algebra_Theory_and_Applications

MATLAB codes accompanying "Numerical Linear Algebra Theory" by Larisa Beilina, Evgenii Karchevskii, and Mikhail Karchevskii
MATLAB
13
star
8

signals-and-systems

MATLAB code from K. Deergha's book on signal processing
MATLAB
6
star
9

Quantum-Computing-An-Applied-Approach

1
star