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mobilkit

A Python Toolkit for Urban Resilience and Disaster Risk Management Analytics using High Frequency Human Mobility Data.

mobilkit provides a set of tools to analyze mobility traces to assess the users response to extreme events. Try mobilkit without installing it in a MyBinder notebook: Binder

Table of contents

  1. Documentation
  2. Collaborate with us
  3. Installation
  4. Tutorials
  5. Examples
  6. Citing
  7. Credits and contacts

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Documentation

Full documentation with examples can be found online here, otherwise see the notebooks in docs/examples for a step-by-step coverage of the library or the ones in examples/ for a more detailed showcase of the package's capabilities.

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Collaborate with us

mobilkit is an active project and any contribution is welcome.

You are encouraged to report any issue or problem encountered while using the software or to seek for support.

If you would like to contribute or add functionalities to mobilkit, feel free to fork the project, open an issue and contact us.

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Installation

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Install with pip

Start by creating an environment and install mobilkit there.

  1. Create an environment mobilkit

     python3 -m venv mobilkit
     # or, on Windows
     python -m venv c:\path\to\mobilkit
    
  2. Activate

     source mobilkit/bin/activate
     # or, on Windows
     c:\path\to\mobilkit\Scripts\activate.bat
    
  3. Update pip

     pip install --upgrade pip
    
  4. Install mobilkit (this will also install Dask and all the needed modules)

     pip install mobilkit
    
  5. OPTIONAL to use mobilkit on the jupyter notebook

    • Activate the virutalenv:

        source mobilkit/bin/activate
      
    • Install jupyter notebook:

        pip install jupyter 
      
    • Run jupyter notebook

        jupyter notebook
        
      
    • (Optional) install the kernel with a specific name to your existing notebook server

        source mobilkit/bin/activate
        pip install ipykernel
        ipython kernel install --user --name=mobilkit_env
      

If you already have scikit-mobility installed, skip the environment creation and run these commands from the skmob anaconda environment.

mobilkit by default will only install core packages needed to run the main functions. There are three optional packages of dipendencies (the mobilkit[complete] installs everything):

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Install with conda

TODO

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Test the installation

> source activate mobilkit
(mobilkit)> python
>>> import mobilkit
>>>

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Examples

Several notebooks are found in the docs/examples folder, we resume here the most important ones.

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Quickstart

We show the basic usage and functionalities in the mobilkit_tutorial.ipynb notebook.

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Citing

If you use mobilkit please cite us:

Enrico Ubaldi, Takahiro Yabe, Nicholas Jones, Maham Faisal Khan, Alessandra Feliciotti, Riccardo Di Clemente, Satish V. Ukkusuri and Emanuele Strano Mobilkit: A Python Toolkit for Urban Resilience and Disaster Risk Management Analytics using High Frequency Human Mobility Data, Journal of Open Source Software, 9, 95, 5201, (2024), Doi: 10.21105/joss.05201

Bibtex:

@article{Ubaldi2024, doi = {10.21105/joss.05201},
url = {https://doi.org/10.21105/joss.05201}, year = {2024}, publisher = {The Open Journal}, volume = {9}, number = {95}, pages = {5201},
author = {Enrico Ubaldi and Takahiro Yabe and Nicholas Jones and Maham Faisal Khan and Alessandra Feliciotti and Riccardo Di Clemente and Satish V. Ukkusuri and Emanuele Strano},
title = {Mobilkit: A Python Toolkit for Urban Resilience and Disaster Risk Management Analytics},
journal = {Journal of Open Source Software}}

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Credits and contacts

This code has been developed by Mindearth, the Global Facility for Disaster Reduction and Recovery (GFDRR) and Purdue University.

Funding was provided by the Spanish Fund for Latin America and the Caribbean (SFLAC) under the Disruptive Technologies for Development (DT4D) program.

The code is released under the MIT license (see the LICENSE file for details).