Abstract
A patient-specific airflow simulation was developed to help address the pressing need for an expansion of the ventilator capacity in response to the COVID-19 pandemic. The computational model provides guidance regarding how to split a ventilator between two or more patients with differing respiratory physiologies. To address the need for fast deployment and identification of optimal patient-specific tuning, there was a need to simulate hundreds of millions of different clinically relevant parameter combinations in a short time. This task, driven by the dire circumstances, presented unique computational and research challenges. We present here the guiding principles and lessons learned as to how a large-scale and robust cloud instance was designed and deployed within 24 hours and 800 000 compute hours were utilized in a 72-hour period. We discuss the design choices to enable a quick turnaround of the model, execute the simulation, and create an intuitive and interactive interface.
Cite
CITATION STYLE
Kaplan, M., Kneifel, C., Orlikowski, V., Dorff, J., Newton, M., Howard, A., … Randles, A. (2020). Cloud Computing for COVID-19: Lessons Learned from Massively Parallel Models of Ventilator Splitting. Computing in Science and Engineering, 22(6), 37–47. https://doi.org/10.1109/MCSE.2020.3024062
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