9 parallel-computing Postdoctoral positions at National Renewable Energy Laboratory NREL
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Posting Title Postdoctoral Researcher - Computational Catalyst and Process Development . Location CO - Golden . Position Type Postdoc (Fixed Term) . Hours Per Week 40 . Working at NREL Join the
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processes Laboratory experiments and data acquisition systems Numerical modeling techniques and computer programming Experience programming in Engineering Equation Solver (EES), MATLAB, Python, or similar
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, etc. and have experience with the FORTRAN, C++ and Python programming languages and be comfortable working in high performance computing environments. Preferred Qualifications . Job Application
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total, reviewed and extended annually based on program needs, funding availability and performance. MCCS Directorate . Basic Qualifications Must be a recent PhD graduate within the last three years
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Posting Title Postdoctoral Researcher – Process modeling and sustainability analysis for plastics upcycling & biorefining . Location CO - Golden . Position Type Postdoc (Fixed Term) . Hours Per Week 40 . Working at NREL Join the National Renewable Energy Laboratory (NREL), where world-class...
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Posting Title Postdoctoral Researcher – Process modeling and sustainability analysis . Location CO - Golden . Position Type Postdoc (Fixed Term) . Hours Per Week 40 . Working at NREL The National Renewable Energy Laboratory (NREL), located at the foothills of the Rocky Mountains in Golden,...
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manufacturability, in-life performance, and / or end-of-life options. In particular, this position will focus on working with a computational materials design team screening and developing biobased monomers
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three years. * Must meet educational requirements prior to employment start date. Additional Required Qualifications Relevant Ph.D. or Ph.D. candidate in Electrical Engineering or Computer
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PSCAD, RSCAD, PSSE, PSLF, and MATLAB/Simulink SimPowerSystems Computer programming (e.g., Python) and simulation automation scripting Experience with machine learning algorithms, especially deep