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research assistant in applied adversarial machine learning. This exciting opportunity will contribute to the D-XPERT (AI-Based Recommender System for Smart Energy Saving) project. The D-XPERT project
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PhD-level courses (about 36 European credits) in information economics/ operations management, econometrics, machine learning, extensive data analytics and qualitative research methods. The training can
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CHINA SCHOLARSHIP COUNCIL: Application of machine learning to the analysis of spectroscopy data in neurological disease School of Medicine and Population Health PhD Research Project Competition
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to advance peace, justice, and inclusion. Learn about CIC's approach and comparative advantage here . CIC, as part of NYU, is at the heart of a leading research university that spans the globe. We seek
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three main projects. (1) The recruited PhD student will perform natural language processing and machine learning research into AI-augmented coaching to provide a pre-coaching session AI-based question and
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development, cognitive neuroscience and/or the implications of poverty on cognition. This is an ideal job for someone who is interested in continuing to a PhD or MD as, if justified, there will be opportunities
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and/or machine learning and AI High skills in computer programming languages such as Fortran, C++, or Python Ability to generate alternative funding projects through effective liaison with industry and
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, data skills and machine learning methods for effectively handling micro-level panel data, providing valuable skills for future careers. A Masters degree is not a prerequisite. Undergraduate and master’s
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for all. We demonstrate Courageous Integrity through setting exceptional standards and acting in the best interest of our communities. We are encouraged to Be Curious about opportunities for learning
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of economic decisions. The pre-doc’s task will include designing and implementing experiments; analyzing survey, observational and textual data; and machine learning applications to experimental data