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machine learning (ML) algorithms to identify previously unknown correlations between synthesis parameters (inputs) and optical, electronic and chemical properties (outputs), such as quantum yield, light
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to the project; - Preference will be given to candidates with experience in recording and analyzing sleep and breathing parameters in humans, including protocol design, data collection, and result interpretation
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solutions to hyperbolic equations, or more in general, for evolution equations; dispersive estimates; global existence (in time) of solutions to semilinear problems, possibly assuming small initial data
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postdoctoral fellowships. 1. Robust Methods for Volatility Estimation with High-Dimensional Data — design, implementation, and computational analysis. Supervisor: Prof. Luiz Koodi Hotta. 2. Forecasting Methods
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-ranked university in Latin America, boasts a Computer Vision Group at IME-USP with over 20 years of experience in machine learning research and strong international collaborations. ** Application Process
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. Prerequisites: - Bachelor's degree in Computer Science, Computer Engineering, or related fields; - Doctorate may be in a related field, if proven experience in AI/ML is demonstrated; - Scientific and mathematical
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staff position within a Research Infrastructure? No Offer Description The School of Electrical and Computer Engineering (FEEC) and the Agricultural Engineering School (FEAGRI), both from the State
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travel, computer equipment and research expenses (https://fapesp.br/en/5427 ). Applicants should submit a CV, publication list, and a concise statement detailing research accomplishments and interests
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Department of Statistics (DE-UFSCar) and the University of São Paulo's São Carlos Institute of Mathematical and Computer Sciences (ICMC-USP). The fellow will be based at UFSCar. The position is open to
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; dispersive estimates; global existence (in time) of solutions to semilinear problems, possibly assuming small initial data. This position will be supervised by Marcelo Rempel Ebert, Professor at the University