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Scalable Epidemiological Workflows to Support COVID-19 Planning and Response
Dustin Machi; Parantapa Bhattacharya; Stefan Hoops; Jiangzhuo Chen; Henning Mortveit; Srinivasan Venkatramanan; Bryan Lewis; Mandy Wilson; Arindam Fadikar; Tom Maiden; Christopher L. Barrett; Madhav V. Marathe.
Afiliación
  • Dustin Machi; Biocomplexity Institute and Initiative, University of Virginia
  • Parantapa Bhattacharya; Biocomplexity Institute and Initiative, University of Virginia
  • Stefan Hoops; Biocomplexity Institute and Initiative, University of Virginia
  • Jiangzhuo Chen; Biocomplexity Institute and Initiative, University of Virginia
  • Henning Mortveit; Biocomplexity Institute and Initiative, University of Virginia; Department of Engineering Systems and Environment, University of Virginia
  • Srinivasan Venkatramanan; Biocomplexity Institute and Initiative, University of Virginia
  • Bryan Lewis; Biocomplexity Institute and Initiative, University of Virginia
  • Mandy Wilson; Biocomplexity Institute and Initiative, University of Virginia
  • Arindam Fadikar; Argonne National Laboratory
  • Tom Maiden; Pittsburgh Supercomputing Center
  • Christopher L. Barrett; Biocomplexity Institute and Initiative, University of Virginia; Department of Computer Science, University of Virginia
  • Madhav V. Marathe; Biocomplexity Institute and Initiative, University of Virginia; Department of Computer Science, University of Virginia
Preprint en Inglés | medRxiv | ID: ppmedrxiv-21252325
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ABSTRACT
The COVID-19 global outbreak represents the most significant epidemic event since the 1918 influenza pandemic. Simulations have played a crucial role in supporting COVID-19 planning and response efforts. Developing scalable workflows to provide policymakers quick responses to important questions pertaining to logistics, resource allocation, epidemic forecasts and intervention analysis remains a challenging computational problem. In this work, we present scalable high performance computing-enabled workflows for COVID-19 pandemic planning and response. The scalability of our methodology allows us to run fine-grained simulations daily, and to generate county-level forecasts and other counter-factual analysis for each of the 50 states (and DC), 3140 counties across the USA. Our workflows use a hybrid cloud/cluster system utilizing a combination of local and remote cluster computing facilities, and using over 20,000 CPU cores running for 6-9 hours every day to meet this objective. Our state (Virginia), state hospital network, our university, the DOD and the CDC use our models to guide their COVID-19 planning and response efforts. We began executing these pipelines March 25, 2020, and have delivered and briefed weekly updates to these stakeholders for over 30 weeks without interruption.
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Texto completo: Disponible Colección: Preprints Base de datos: medRxiv Tipo de estudio: Estudio observacional Idioma: Inglés Año: 2021 Tipo del documento: Preprint
Texto completo: Disponible Colección: Preprints Base de datos: medRxiv Tipo de estudio: Estudio observacional Idioma: Inglés Año: 2021 Tipo del documento: Preprint
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