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Multi-physics Modeling and Scientific Machine Learning
GE Vernova
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Niskayuna, United States
Location
Niskayuna
Posted
June 03, 2026
Commute
Local Area
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Job Description
**Job Description Summary**
At GE Vernova Advanced Research, we invent and develop cross-cutting transformative technologies to enable a clean and sustainable new era of energy. As a Multi-Physics Modeling & Scientific Machine Learning Engineer within the Aerodynamics & Thermosciences team, you will contribute to the development and application of cutting-edge, high-fidelity, multi-physics modeling techniques and methods to solve complex engineering challenges across GE Vernovaβs next-generation technology platforms, including and not limited to electrification systems, wind turbines, industrial gas turbines, and nuclear reactors.
You will work in a collaborative, multi-disciplinary environment to revolutionize design and optimization methodologies using physics modeling insights, data-driven physics surrogates of spatio-temporal systems, scientific machine learning at scale and high-fidelity scientific computing on HPC for applications in power generation and electrificat...
At GE Vernova Advanced Research, we invent and develop cross-cutting transformative technologies to enable a clean and sustainable new era of energy. As a Multi-Physics Modeling & Scientific Machine Learning Engineer within the Aerodynamics & Thermosciences team, you will contribute to the development and application of cutting-edge, high-fidelity, multi-physics modeling techniques and methods to solve complex engineering challenges across GE Vernovaβs next-generation technology platforms, including and not limited to electrification systems, wind turbines, industrial gas turbines, and nuclear reactors.
You will work in a collaborative, multi-disciplinary environment to revolutionize design and optimization methodologies using physics modeling insights, data-driven physics surrogates of spatio-temporal systems, scientific machine learning at scale and high-fidelity scientific computing on HPC for applications in power generation and electrificat...