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/Responsibilities: Participate in development of multiscale modeling framework for metal AM processes including various direct energy deposition (DED) and powder metallurgy based manufacturing. Participate in
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, including hybrid simulations coupling machine learning with numerical methods, multiscale discretization, nonlocal closure modeling, structure preservation, multilevel and multifidelity machine learning
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include the design and implementation of finite element multiscale models and machine learning algorithms, analyzing related experimental data, and collaborating with industrial collaborators to validate
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Job Description The Opportunity Multiscale Advection Diffusion Analysis Laboratory (MADAL) is seeking candidates for a Postdoctoral Research Scholar position in the area of thermos-fluids modeling
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Apply Now Job ID JR101661Date posted 05/21/2025 Brookhaven National Laboratory’s Center for Multiscale Applied Sensing (CMAS) is a multi-disciplinary center that focuses on providing innovative
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injury, and bleeding pelvic fractures using a very large in-house CT dataset with high-quality labeling and outcome data . 2) Training and validation of state-of-the-art segmentation models
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-inspired approaches for modeling, designing, and predicting the response of composite systems. Responsibilities: Develop AI approaches for predictive multi-physics response of composites in Energy