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] Subject Area: Algebra Appl Deadline: 2025/05/09 11:59PM (posted 2025/04/04, listed until 2025/05/10) Position Description: Apply Position Description The Centre for Mathematical Sciences at Lund University
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several scientific fields and a multitude of educations ranked highly in international comparisons, is looking for a doctoral student to work on a compiler for linear algebra expressions. The Department
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Algebra Expressions. The employment is full-time and for three years, starting on a mutually convenient date. The deadline for applications is August 1, 2025. Department of Computing science Our institution
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global academic and industry network🌟 Who we’re looking for:- A curious, ambitious researcher with a strong background in signal processing, wireless systems, mathematics (statistics, linear algebra
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This reasearch postion is part of a larger project financed by the Göran Gustafsson Foundation for Research in Natural Sciences and Medicine and concerns representation of algebraic invariants and
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and its relation to practical implementation. Understanding analogue and digital circuit design. Fluency in mathematics, especially within linear algebra and optimization. Experience from using machine
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Analysis in One Variable, MATA32 Algebra and Vector Geometry and NUMA01 Computational Programming with Python. In all roles, you will be supported by the teacher responsible for the course who can answer
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Kahl (Computer Vision, Chalmers), Kathlén Kohn (Algebraic Geometry, KTH), and Mårten Björkman (Robotics, Perception and Learning, KTH). The research focuses on developing novel machine learning methods
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attention is paid to the following Knowledge and skills in numerical analysis, specifically numerical methods for differential equations and numerical linear algebra are required. Knowledge in applied
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academia and industry. Requirements The following qualifications are required: Solid knowledge in mathematics and statistics, in areas such as linear algebra, probability theory, machine learning, high