Kamodo: Simplifying Model Data Access and Utilization
March 01, 2023 Β· Declared Dead Β· π Advances in Space Research
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Authors
Rebecca Ringuette, Lutz Rastaetter, Darren De Zeeuw, Asher Pembroke, Oliver Gerland
arXiv ID
2303.00854
Category
physics.space-ph
Cross-listed
cs.SE,
physics.data-an
Citations
4
Venue
Advances in Space Research
Last Checked
3 months ago
Abstract
To address the lack of user-friendly software needed to simplify the utilization of model data across Heliophysics, the Community Coordinated Modeling Center (CCMC) at NASA Goddard Space Flight Center has developed a model-agnostic method via Kamodo for users to easily access and utilize model data in their workflows. By abstracting away the broad range of file formats and the intricacies of interpolation on specialized grids, this approach significantly lowers the barrier to model data access and utilization for the community while adding exciting new capabilities to their tool boxes. This paper describes the direct interfaces to the model data, called model readers, and a basic introduction on how to use them. Additionally, we detail the planned approach for including custom interpolation codes, and include current progress on specialized visualization developments. The CCMC is maintaining Kamodo as an official NASA open-sourced software to enable and encourage community collaboration.
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