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solvers, e.g. UVLM, DLM, hybrid 2.5D/VLM coupling, free wake methods and vortex particle solvers; or Experience with high-fidelity solvers, e.g. SU2, OpenFoam, StarCCM+, Fluent; Proficiency in programming
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| What You Will Do As part of the research project "Revealing the Secrets of High-Energy Galactic Particle Accelerators with Multi-messenger and Multi-Wavelength Observations," funded under the Marsden
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of Michigan, Ann Arbor. This joint project seeks to uncover the dynamics of RNA molecules at the single-particle level in live cells using state-of-the-art single molecule fluorescence microscopy and live-cell
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). It is anticipated that the selected candidate will be based at CERN. Required Education Candidates should have a Ph.D. in experimental particle physics or a closely related area. Required Experience
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, including gene manipulation and protein purification. “Cosmology in-laboratory” or “particle/nuclear physics in-laboratory” experimental research in material systems that models physics phenomena related
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narratives that are relevant to them. To facilitate finding suitable narratives, we aim to design and evaluate a machine learning based artificial intelligence recommender system to filter narratives based
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GNC. Ability to develop resilient advanced filtering techniques and advanced guidance strategies suitable for multivehicle systems in contested environments. Ability to integrate data-driven methods
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challenges in hardware such as common mode noise, electromagnetic interference, filter design, etc. Evaluate and recommend efficient and reliable power system architecture(s) with other merits of high-density
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Physics, Cosmology & Gravitation, High Energy Physics, and Particle Astrophysics. In their application, applicants are encouraged to discuss potential research group or groups that they would be interested
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, spectrometers, focal plane arrays, or particle/radiation detectors. Proven ability to contribute effectively in a collaborative research environment. Proficiency in software development using both Python and C