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EMOD-Generic-Scripts

See documentation at https://docs.idmod.org/projects/emod-generic-scripts/en/latest/ for additional information about how to use these scripts.


Contents:

Directory Description
env_Alma9
env_Amazon2023
env_Debian12
env_Fedora41
env_Rocky9
env_Ubuntu24
Definition files for singularity containers with various operating systems. Produces the the EMOD executable, schema, and reporters; creates an environment for running EMOD on COMPS with the python packages available to the embedded python interpreter. All files remain on COMPS and are provided to the various workflows as Asset Collection IDs.
local_python Contains additional python scripts with helper functions common to all of the workflows.
model_covariance01 Demonstration simulations for heterogeneity in individual behavior.
model_covid01 Baseline simulations for SARS-CoV-2 in EMOD. Collab with MvG.
model_demographics01 Example demographics for UK measles simulations.
model_demographics02 Example demographics using UN WPP data as inputs.
model_measles_cod01 Documentation.
model_measles_gha01 Examination of RDT use and responsive campaigns for measles using Ghana as an example context.
model_measles_nga01 Documentation.
model_measles_nga02 Documentation.
model_measles01 Estimates of measles burden under various policies for age of MCV1.
model_network01 Demonstration simulations for transmission of infectivity on a network.
model_polio_nga01 Example outbreak simulations for cVDPV2 in Nigeria.
model_rubella01 Projections of rubella infections and estimates of CRS burden following RCV introduction.
model_transtree01 Demonstration of the infector labeling feature and generation of explicit transmission networks.
refdat_mcv1 IHME MCV1 coverage estimates used to construct input files for EMOD simulations.
refdat_namesets Namesets used for region identification.
refdat_poppyr UN WPP age structured population estimates used to construct input files for EMOD simulations.
refdat_sias Documentation.

To get started:

  1. Setup a virtual environment (e.g., conda)

  2. Install requirements:

    pip install -r requirements.txt --index-url=https://packages.idmod.org/api/pypi/pypi-production/simple
    
  3. Run an experiment (requires COMPS credentials):

    cd EMOD-Generic-Scripts/model_covariance01/experiment_covariance01
     python make01_param_dict.py
     python make02_lauch_sims.py
     python make03_pool_brick.py
    
  4. Make figures:

    cd EMOD-Generic-Scripts/model_covariance01/figure_attackfrac01
    python make_fig_attackrate.py
    

To build the documentation locally, do the following:

  1. Create and activate a venv.

  2. Navigate to the root directory of the repo and enter the following

    pip install -r docs/requirements.txt
    

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