27 phd-studenship-in-computer-vision-and-machine-learning Fellowship positions at Zintellect
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. Qualifications The ideal candidate should have a strong background in the mathematical and computational aspects of modeling subsurface and surface flows. Knowledge in machine learning, data assimilation, and
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condition leading to medical discharge following combat related trauma in our military. Learning opportunities include, but are not limited to: exposure to various aspects of pre-clinical research by
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Degree received within the last 60 months or currently pursuing. Discipline(s): Chemistry and Materials Sciences (12 ) Communications and Graphics Design (2 ) Computer, Information, and Data Sciences
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to support the nourishment and well-being of all people; sustain our nation’s agroecosystems and natural resources; and ensure the economic competitiveness and excellence of our agriculture. The vision
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. Minimum Overall GPA: 2.50 Discipline(s): Computer, Information, and Data Sciences (17 ) Earth and Geosciences (2 ) Engineering (27 ) Environmental and Marine Sciences (14 ) Life Health and Medical
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Reliability Program (BPRP). As a successful candidate, you should be highly motivated and welcome the use of a variety of approaches to address important, challenging scientific problems. Why should I apply
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education and support your academic and professional goals. Along the way, you will engage in activities and research in several areas. These include, but are not limited to, Learn how to communicate data and
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one another; and delivering world-class science, technology and land management. Research Project: The fellow will contribute their PhD-level social science research skills to understand how project
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. Citizen Only Degree: Doctoral Degree. Discipline(s): Chemistry and Materials Sciences (12 ) Communications and Graphics Design (3 ) Computer, Information, and Data Sciences (17 ) Earth and Geosciences
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machine learning, coupled fire behavior/fire atmosphere modeling, air quality modeling, and system evaluation. Depending on their skills and interests, they can participate in various aspects of the project