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Python package for multi-signal Bayesian renewal modeling with JAX and NumPyro.

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PyRenew: A Package for Bayesian Renewal Modeling with JAX and NumPyro.

⚠️ This is a work in progress ⚠️

pyrenew is a flexible tool for simulation and statistical inference of epidemiological models, emphasizing renewal models. Built on top of the numpyro Python library, pyrenew provides core components for model building, including pre-defined models for processing various types of observational processes. To start, visit the tutorials section on the project's website here.

The following diagram illustrates the composition of the HospitalAdmissionsModel class. Notably, all components are modular and can be replaced with custom implementations.

flowchart LR

  %% Elements
  rt_proc["Random Walk Rt\nProcess (latent)"];
  latent_inf["Latent Infections"]
  latent_ihr["Infection to Hosp.\nrate (latent)"]
  neg_binom["Observation process\n(hospitalizations)"]
  latent_hosp["Latent Hospitalizations"];
  i0["Initial infections\n(latent)"];
  gen_int["Generation\ninterval (fixed)"];
  hosp_int["Hospitalization\ninterval (fixed)"];

  %% Models
  basic_model(("Infections\nModel"));
  admin_model(("Hospital Admissions\nModel"));

  %% Latent infections
  rt_proc --> latent_inf;
  i0 --> latent_inf;
  gen_int --> latent_inf;
  latent_inf --> basic_model

  %% Hospitalizations
  hosp_int --> latent_hosp

  neg_binom --> admin_model;
  latent_ihr --> latent_hosp;
  basic_model --> admin_model;
  latent_hosp --> admin_model;
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Installation

Install via pip with

pip install git+https://github.com/CDCgov/PyRenew@main

Models Implemented With PyRenew

Resources

General Disclaimer

This repository was created for use by CDC programs to collaborate on public health related projects in support of the CDC mission. GitHub is not hosted by the CDC, but is a third party website used by CDC and its partners to share information and collaborate on software. CDC use of GitHub does not imply an endorsement of any one particular service, product, or enterprise.

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This repository constitutes a work of the United States Government and is not subject to domestic copyright protection under 17 USC § 105. This repository is in the public domain within the United States, and copyright and related rights in the work worldwide are waived through the CC0 1.0 Universal public domain dedication. All contributions to this repository will be released under the CC0 dedication. By submitting a pull request you are agreeing to comply with this waiver of copyright interest.

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This source code in this repository is free: you can redistribute it and/or modify it under the terms of the Apache Software License version 2, or (at your option) any later version.

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The source code forked from other open source projects will inherit its license.

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