All Projects → cidacslab → Mathematical And Statistical Modeling Of Covid19 In Brazil

cidacslab / Mathematical And Statistical Modeling Of Covid19 In Brazil

Licence: mit
To make a library of models that aim to understand the spread of COVID19 in adequate scenarios of the Brazilian population

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Mathematical and Statistical Modeling of COVID19 in Brazil

A library for compartimental models to understand the spread of transmission diseases focus on the spread of COVID19 in Brazil. The library also provide detailed informations to reproduce all published results (accepted or preprint) in the folder "Reproducibility of published results".

Getting started

If you like to:

Installation

Currently the library is on production, so the easiest way to use is clone our repository or copy the functions avaliable here

Dependencies

Models were implemented using Python > 3.5 and depend on libraries such as Pandas, SciPy, Numpy, Matplotlib, etc. For the full list of dependencies as well libraries versions check requirements.txt.

Contributors

See the GitHub contributor page

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].