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one or more of the following will be given priority: Cryo‑EM grid optimization, data collection (Krios/Glacios), and reconstruction workflows Structural analysis of dynamic/heterogeneous complexes
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University of New Hampshire – Main Campus | New Boston, New Hampshire | United States | about 3 hours ago
effective manipulation of gridded data, such as MATLAB, Python, R, or NCO. Ability to read and do limited modifications of C/C++ model source code. Ability to use Windows or MacOS. Ability to run simulations
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. Solid understanding of power electronics, grid integration of renewables, and stability assessment techniques. Excellent analytical, programming, and computational skills. Strong publication record in
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. Related fields, including hydropower and power grid modeling, hydraulic engineering, and sediment transport. The successful candidates must demonstrate an ability to work independently, evidenced by
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). Demonstrated research record (publications, open-source code, or equivalent). Preferred Qualifications Experience with microgrids/shipboard power, demand response of flexible loads, and grid cyber-physical
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approaches to remove atmospheric particulate (e.g., PM2.5) pollution. The math-based subgroup focuses on the use of deep learning and generative AI to address critical problems for the electric grid and broad
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systems, and grid reliability. Knowledge of how AI-driven energy demand intersects with clean energy deployment, transmission expansion, and supply chain vulnerabilities. Ability to design and deploy data
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Smart Grid Center. Texas A&M Engineering provides an outstanding benefits package including but not limited to: Competitive health benefits. Generous paid vacation, sick time, and holidays. Vision, Dental
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and engagement with the Texas A&M Data Science Institute, the Global Cyber Research Institute, the Texas A&M Energy Institute, and the Smart Grid Center. Texas A&M Engineering provides an outstanding
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, 2025. Preferred Qualifications: Experiences in electromagnetic transient analysis, grid-forming IBR modeling, quantum computing, power system stability, cybersecurity, real-time digital simulation, and