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. Knowledge of fluid dynamics and biochemical reaction dynamics is a bonus, but not necessary. What We Provide: A competitive compensation package, with comprehensive health and welfare benefits The opportunity
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offers a rich, collaborative environment with mentorship from experts in both biological imaging and machine learning. Knowledge of fluid dynamics and biochemical reaction dynamics is a bonus, but not
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The Division of Cardiovascular Medicine , within Stanford University Department of Medicine , is a dynamic and innovative center dedicated to excellence in research, medical education, and clinical care. Our
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mathematics. ICTS has an active in-house research program. Current research spans the following broad areas: Complex systems: Nonlinear dynamics and Data assimilation, Statistical physics, Fluid dynamics and
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(UTC) Type of Contract To be defined Job Status Other Offer Starting Date 21 Nov 2025 Is the job funded through the EU Research Framework Programme? Not funded by a EU programme Is the Job related to
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, Fast Fourier transform, Pseudospectral method) is an advantage. Experience as a developer for a model within computational fluid mechanics/geophysical fluid dynamics (such as developing toolboxes
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Date 1 Apr 2026 Is the job funded through the EU Research Framework Programme? Horizon Europe - ERC Is the Job related to staff position within a Research Infrastructure? No Offer Description Spacecraft
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The Division of Cardiovascular Medicine , within Stanford University Department of Medicine , is a dynamic and innovative center dedicated to excellence in research, medical education, and clinical
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for calculations developed with system codes (e.g. TRACE), as well as for new applications that are beginning to emerge with computational fluid dynamics (CFD) codes. Where to apply Website https://www.upv.es
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dynamics, kinematics, acoustics/vibrations, fluid–structure interaction, control, or other mechanics-driven domains. Experience with applied computational methods and machine-learning–based modeling