74 modelling-and-simulation-of-combustion-postdoc Postdoctoral positions at Stony Brook University
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with numerical modeling codes such as ASPECT or Underworld Geodynamics (UWG). Preferred Qualifications: Familiarity with landscape evolution modeling tools like Fastscape or BADLANDS is highly desirable
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experience with numerical modeling codes such as ASPECT or Underworld Geodynamics (UWG). Preferred Qualifications: Familiarity with landscape evolution modeling tools like Fastscape or BADLANDS is highly
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experience with numerical modeling codes such as ASPECT or Underworld Geodynamics (UWG). Preferred Qualifications: Familiarity with landscape evolution modeling tools like Fastscape or BADLANDS is highly
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stability assessment methodologies to real-world wind power plants (WPPs). Work with black-box models from OEMs to develop techniques that rely on limited time-domain simulations. Disseminate research
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plants (WPPs). Work with black-box models from OEMs to develop techniques that rely on limited time-domain simulations. Disseminate research findings through peer-reviewed publications, conference
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stability assessment methodologies to real-world wind power plants (WPPs). Work with black-box models from OEMs to develop techniques that rely on limited time-domain simulations. Disseminate research
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models and mouse models to address the role of metabolism and inflammation in ocular diseases. ● Manuscript writing for publication and presentation of research findings at national/international
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experience with larval or pathogen dispersal simulation and connectivity analyses strongly preferred. Knowledge of epidemiological modeling, and proficiency in multiple programming/analytical computer
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models and mouse models to address the role of metabolism and inflammation in ocular diseases. ● Manuscript writing for publication and presentation of research findings at national/international
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experience with larval or pathogen dispersal simulation and connectivity analyses strongly preferred. Knowledge of epidemiological modeling, and proficiency in multiple programming/analytical computer