Vijay Mahadevan
Vijay Mahadevan
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Remapping
Accelerating Multivariate Functional Approximation Computation with Domain Decomposition Techniques
Modeling large datasets through Multivariate Functional Approximations (MFA) plays a critical role in scientific analysis and …
Jul 4, 2023 6:00 PM
Prague, Czech Republic
Vijay S. Mahadevan
,
David Lenz
,
Iulian Grindeanu
,
Thomas Peterka
Code
Project
CESAR
Consistent, Extensible, Scalable, and Accurate Remappers.
Last updated on Apr 23, 2024
SEAHORCE
Study for Exascale Advances in a High-resolution Ocean using ROMS Coupled to E3SM
Code
E3SM
Energy Exascale Earth System Model
Code
Metrics for Intercomparison of Remapping Algorithms (MIRA) applied to Earth System Models
Coupled Earth System Models require transfer of field data between multiple components with varying spatial resolutions to determine the correct climate behavior. We present the Metrics for Intercomparison of Remapping Algorithms (MIRA) protocol to evaluate the accuracy, conservation properties, monotonicity and local feature preservation of four different remapper algorithms, for various unstructured mesh problems of interest. Future extensions to more practical use cases are also discussed.
Vijay S. Mahadevan
,
Jorge E. Guerra
,
Xiangmin Jiao
,
Paul Kuberry
,
Yipeng Li
,
Paul Ullrich
,
David Marsico
,
Robert Jacob
,
Pavel Bochev
,
Philip Jones
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Project
DOI
Data couplers for Climate Simulation Workflows
Scalable and accurate spatial couplers for climate problems require careful design and implementation to maintain excellent performance on complex architectures. We present an implementation for E3SM, based on MOAB-TempestRemap libraries.
Jun 15, 2021 7:00 PM
IX International Conference on Computational Methods for Coupled Problems in Science and Engineering (virtual)
Vijay S. Mahadevan
,
Iulian Grindeanu
,
Jason Sarich
,
Robert Jacob
Code
Project
Advanced Partitioning Strategies for Scalable Remapping in Climate Models
New inferred partitioning strategy reduces time for mesh intersection, enabling coupling of extreme-size meshes
Mar 4, 2021 5:00 PM
SIAM 2021 Conference on Computational Science and Engineering (virtual)
Iulian Grindeanu
,
Vijay S. Mahadevan
,
Karen Devine
Code
Project
Improving climate model coupling through a complete mesh representation: a case study with E3SM (v1) and MOAB (v5.x)
Accurate climate modeling of coupled Earth systems requires mapping of solution field data between dependent components that use non-matching discrete meshes. While existing workflows provide a pathway to generate the projection weights as an offline step, severe bottlenecks impede flexible setup of high-resolution models. In this paper, we present new algorithmic approaches to simplify the E3SM computational workflow using a scalable software infrastructure to generate the remapping operators.
Vijay S. Mahadevan
,
Iulian Grindeanu
,
Robert Jacob
,
Jason Sarich
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Project
DOI
CANGA
Coupling Approaches for Next-Generation Architectures
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