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Posting Title Graduate (3-12 month) Intern - Machine Learning Applications to Power System Operations . Location CO - Golden . Position Type Intern (Fixed Term) . Hours Per Week 40 . Working at NREL
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building/using machine learning models based on protein sequence/structure data or modeling data Knowledge of python programming for software development and machine learning Experience developing python
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for linear programming refinery integration and may require some interface with Python or Fortran. . Basic Qualifications Relevant PhD . Or, relevant Master's Degree and 3 or more years of experience
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. Knowledge on multiphase (gas-particle two phase system), thermal energy storage, and/or renewable hydrogen technologies. Familiar with application of machine learning and deep learning algorithms to fluid and
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Posting Title Graduate PhD (Year-Round) Intern - Grid Modeling . Location CO - Golden . Position Type Intern (Fixed Term) . Hours Per Week 20 . Working at NREL NREL is located at the foothills
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qualifications: Experience with data analytics, big data management, scraping data off the web, high-performance/distributed computing, machine learning and/or deep learning. Knowledge with supply chain
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-based and image-based machine learning . Basic Qualifications Minimum of a 3.0 cumulative grade point average. Undergraduate: Must be enrolled as a full-time student in a bachelor’s degree program from
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renewable dynamic modeling or power market optimization. This will be a 3-month opportunity with the possibility to extend to 12-months. To learn more about the work this team does, please click here Power
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-the-loop experimentation Awareness of NFPA and other Code applied to physical installations Computer Aided Drawing experience Strong organizational skills and task discipline Desire to mentor and teach team
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issues that arise This internship will involve extensive time in a laboratory environment, and it is essential for the selected candidate to support a safe and efficient work environment To learn more