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, Preparation for Calculus, Calculus, and Linear Algebra. Adjunct faculty members will be required to use certain texts and meet certain parameters set by the Department of Mathematics. Adjunct instructors will
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to Scientific Data Analysis Statistics for Scientific Data Analysis Calculus I & II for Physical Sciences Vector Calculus, Linear Algebra and Differential Equations Probability and Statistics Numerical Analysis
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scientific computing, control theory, data science, data driven methods, discrete mathematics, graph algorithms, high-performance computing, integral equations and nonlocal models, linear and multilinear
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technology Strong mathematical education, in particular in relation to linear algebra Strong programming experience Ability to effectively communicate in written and spoken English Ability to work autonomously
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Experience and courses in one or more subjects are valued: machine learning, optimisation, linear algebra, deep learning, programming, dynamical systems. Rules governing PhD students are set out in the Higher
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linear algebra, computational methods, probability and statistics, data science, algorithms, artificial intelligence, operations research, and/or quantum optimization. The Department of Mathematics has a
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, tensor analysis, and network science to foster the professional development of team members. Qualifications and experience essential PhD in Applied Mathematics in the fields of Numerical Linear Algebra
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, control theory, data science, data driven methods, discrete mathematics, graph algorithms, high-performance computing, integral equations and nonlocal models, linear and multilinear algebra, machine
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developmental math, Basic Technical Mathematics, Fundamentals of Reasoning, Quantitative Reasoning, Precalculus I & II, Statistics, Applied Calculus, Calculus I-III, Differential Equations, and Linear Algebra
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can also be considered given that the candidate has formal competence in machine learning and/or image analysis/computer vision A solid and documented background in machine learning, mathematics, linear