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computational tools to capture and to analyze geometric urban data to answer important questions regarding cities. In particular, the following subjects will be considered: sidewalk representation, simulation
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approached by tools in both computational chemistry and applied mathematics. Specifically, the project involves the development of mathematical modeling strategies at both numerical and analytical level to
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skills in programming and strong experience in computational geometric modelling. Expertise in the field of Additive Manufacturing, Construction Robotics, and/or Artificial Intelligence is very beneficial
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). More information: https://tablon.upct.es/anuncio/Q0bwmWRyKl Deadline for submission of applications: 6 November. TITLE OF THE POSITION OFFERED: TECHNICAL STAFF SUPPORTING RESEARCH. SUBJECT AREA
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website: http://www.esa.int Field(s) of activity for the internship Topic of the internship: Algorithmic Optimisation of Stowage for a Cargo Return Vehicle You will help develop a numerical optimisation
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New York University Tandon School of Engineering Quantum Geometric Intelligence (QGI) Lab at NYU Tandon School of Engineering is seeking to hire a Full time Research Associate to work with Prof. Amine
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of an optimised methodology for the digital acquisition of dimensional and geometric information; 4) Preparation of publications and informational materials for the dissemination of project outcomes. 6. Applicable
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models. Knowledge base of multivariable and vector calculus, as well as geometric algebra. Familiarity with machine learning and algorithms. Knowledge and proficiency with protein Large Language Models
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in the Sheffield Algebraic Geometry and Mathematical Physics group (https://agmp.sites.sheffield.ac.uk/ ) within the broader School of Mathematical and Physical Sciences at the University of Sheffield
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novel machine learning models—including Physics-Informed Neural Networks (PINNs), variational autoencoders, and geometric deep learning—to fuse multimodal data from diverse experimental probes like Bragg