111 machine-learning-"https:" "https:" "https:" "https:" "https:" "https:" "Simons Foundation" uni jobs at Zintellect
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Degree, Master's Degree, or Doctoral Degree. Academic Level(s): Any academic level. Discipline(s): Computer, Information, and Data Sciences (14 ) Engineering (27 ) Mathematics and Statistics (10
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. Given data from such “in the wild” techniques, CCDC ARL researchers are seeking to apply machine learning methods to both predict behavior and make inferences about the underlying processes that generate
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for analysis and interpretation. Learning Objectives: Gain expertise and research skills in setting up field, greenhouse, and growth chamber experiments involving staple crops in the MS Delta. Gain skills in
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seed production, research plot establishment and evaluation, and greenhouse tasks associated with plant breeding. Learning Objectives: Participants will be trained in plant breeding techniques and
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seed production, research plot establishment and evaluation, and greenhouse tasks associated with plant breeding. Learning Objectives: Participants will be trained in plant breeding techniques and
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seed production, research plot establishment and evaluation, and greenhouse work associated with plant breeding. Learning Objectives: Participant will be trained in plant breeding techniques and be
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, evaluating performance and resilience of controllers, cyber-physical system modeling and state estimation, and anomaly detection techniques using phasor measurement unit data and machine learning/artificial
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programming languages (including both MATLAB and Python) is preferred. Candidate should be motivated to learn new skills and research independently and as part of a team. Background knowledge in coastal
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engineering, computer science, or related fields Expertise in machine-learning and/or online BCI Advanced programming skills (i.e. Python, Matlab, R) and strong experience in algorithmic design, mathematical
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dynamic environments and situations. HRED leverages human-robot interaction, human-informed machine learning, human cognition and adaptive teaming to improve human-autonomy teaming for future Army teams