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Projections of COVID-19, in standardized format

Home Page: https://covid19forecasthub.org

License: Other

R 3.10% Shell 0.21% JavaScript 3.06% Python 1.75% HTML 9.24% Vue 0.64% CSS 0.74% TypeScript 0.41% Dockerfile 0.01% Jupyter Notebook 80.70% SCSS 0.12% Makefile 0.02%

covid19-forecast-hub's Introduction

Hub logo

Zoltar build status DOI

This is the data repository for the COVID-19 Forecast Hub, which is the data source for the official CDC COVID-19 Forecasting page.

If you are a modeling team interested in submitting to the Hub, please visit our technical README with detailed submission instructions.

If you are interested in using the forecast data in a research project, you may clone this repo or use our covidHubUtils R package to access the data through an API. Participating teams provide their forecasts in a quantile-based format. Please also follow the data license and citation guidelines below.

If you are a developer interested in the infrastructure here, we encourage you to check out the Hub documentation wiki.

Citing the Forecast Hub

  • To cite the US COVID-19 Forecast Hub dataset and project as a whole, please cite the dataset descriptor preprint:

Cramer EY, Huang Y, Wang Y, et al. The United States COVID-19 Forecast Hub dataset. medRxiv. 2021. URL: https://www.medrxiv.org/content/10.1101/2021.11.04.21265886v1.

bibtex:

@article {Cramer2021-hub-dataset,
	author = {Cramer, Estee Y and Huang, Yuxin and Wang, Yijin and Ray, Evan L and Cornell, Matthew and Bracher, Johannes and Brennen, Andrea and Castro Rivadeneira, Alvaro J and Gerding, Aaron and House, Katie and Jayawardena, Dasuni and Kanji, Abdul H and Khandelwal, Ayush and Le, Khoa and Niemi, Jarad and Stark, Ariane and Shah, Apurv and Wattanachit, Nutcha and Zorn, Martha W and Reich, Nicholas G and US COVID-19 Forecast Hub Consortium},
	title = {The United States COVID-19 Forecast Hub dataset},
	year = {2021},
	doi = {10.1101/2021.11.04.21265886},
	URL = {https://www.medrxiv.org/content/10.1101/2021.11.04.21265886v1},
	journal = {medRxiv}
}
  • To cite research results from the hub, please choose the relevant research publication from the Hub to cite.

  • To cite the dataset and GitHub repository directly, we ask that you cite the Data Descriptor paper (see first bullet point above) but you may also cite or refer to the permanent DOI for the GitHub repo (the DOI is updated by Zenodo when we create a new "release" of this GitHub repository).

Data license and reuse

We are grateful to the teams who have generated these and made their data publicly available under different terms and licenses. You will find the licenses (when provided) within the model-specific folders in the data-processed directory. Please consult these licenses before using these data to ensure that you follow the terms under which these data were released.

All source code that is specific to this project, along with our d3-foresight visualization tool is available under an open-source MIT license. We note that this license does NOT cover model code from the various teams (maybe available from them under other licenses) or model forecast data (available under specified licenses as described above).

covid19-forecast-hub's People

Contributors

aaronger avatar aniruddhadiga avatar deankarlen avatar elray1 avatar epideep avatar eycramer avatar frostxtj avatar gcgibson avatar github-actions[bot] avatar hannanabdul55 avatar hbiegel avatar jarad avatar jinghuichen avatar katiehouse3 avatar lacastro avatar lematt1991 avatar leyouz avatar michaellli avatar mzorn-58 avatar nickreich avatar rjpagano avatar robertwalraven avatar serena-wang avatar shanghongxie avatar starkari avatar stevemcconnell avatar sthorstman avatar xinyuexiong avatar youyanggu avatar zyt9lsb avatar

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