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. The theory will build upon ideas from information topology, information geometry, and statistical modeling. We will aim to address the question: “How can one detect and characterize emergent properties of real
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Analytics Section at the Amsterdam Business School (University of Amsterdam ) invites applications for a PhD position in Statistics and Machine Learning. We are looking for highly motivated PhD
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control problems in, for example, financial and energy markets, Collaborate with a team of experts in fields such as stochastic analysis, statistics, finance and computational science, Participate in
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Are you a highly motivated student with a strong interest in statistical mechanics and soft active matter? The group of Dr. Sara Jabbari Farouji at the Institute of Theoretical Physics and part of
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to completion; excellent organizational skills; experience conducting empirical research; Statistical skills and command of standard software packages for analyzing data (e.g., R, Julia, Python, Stata), and a
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, eagerness to learn, and openness to criticism. A Research Master´s or MPhil degree or equivalent and expertise in programming/statistical tools (e.g. R, Python, Stata) and automated content analysis
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statistical properties. Explore optimal control problems in renewable energy trading. Collaborate with a team of experts in fields such as sustainable finance, stochastic analysis, statistics and computational
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focus on aquatic ecology or in environmental sciences; Relevant scientific and technical skills, preferably experience with practical field work and with modelling; Good analytical and statistical skills
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writing for a scientific audience; willingness and motivation to independently formulate research projects and carry them through to completion; statistical skills and command of standard software packages
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organizational behavior and/or human resources management; the ability to work systematically and project-oriented; strong analytical skills; experience with quantitative research and advanced statistical methods