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TLG Aerospace, a Seattle-based aerospace engineering services company, contributed the data used in this blog.
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We also discuss the effects of scaling on efficiency, simulation turn-around time, and total simulation costs. This scenario demonstrates the scaling of an external aerodynamics CFD case with 97 million cells to over 4,000 cores of Amazon EC2 C5n.18xlarge instances using the Simcenter STAR-CCM+ software. In this blog, we define and demonstrate the scalability metrics for a typical real-world application using Computational Fluid Dynamics (CFD) software from Siemens, Simcenter STAR-CCM+, running on a High Performance Computing (HPC) cluster on Amazon Web Services (AWS). This post was contributed by Dnyanesh Digraskar, Senior Partner SA, High Performance Computing Linda Hedges, Principal SA, High Performance Computing
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