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towards practical, real-world problem-solving. Practical Experience: KRI isn't just about theories. We value and encourage hands-on work, ensuring real-world applications for our solutions. Tradition Meets
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of academic administrative experience required or Master’s degree plus 3 years of career coaching, workforce development and partnership engagement. Comprehensive knowledge of career development theories and
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or applied research of a limited scope, primarily using existing theories and methods. Assists the supervisor in the interpretation and publication of results and grants. Maintains the laboratory and may
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About the Opportunity Responsibilities: Courses may include: law and legal reasoning, law and policy, public policy theory and practice, research methods, qualitative methods, quantitative methods
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networking and IoT infrastructure, and enhance security and privacy. Foundations of AI: areas of interest include machine learning, LLMs and SLMs, natural language processing, computer vision, theory, and
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About the Opportunity Performs basic or applied research on critical or difficult problems involving the development of new theories or methodologies. Budget management responsibility
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of interest include machine learning, LLMs and SLMs, natural language processing, computer vision, theory, and transparent and explainable AI models. Human Centered AI: areas of interest include sensing and
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, primarily using existing theories and methods. Assists the supervisor in the interpretation and publication of results and grants. Maintains the laboratory and may exercise functional supervision over
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. This position is in Portland, Maine. Responsibilities: The postdoctoral fellow will perform basic or applied research of a limited scope, primarily using existing theories and methods, and they should have the
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information. We develop novel theoretical approaches to characterize the structure and function of the genome using the tools of statistical physics, information theory, and computational modeling