246 estimation-methods-"https:"-"Computer-Vision-Center" Postdoctoral positions in Sweden
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the ability to work in a structured and methodical manner Eligibility A person who has been awarded a doctorate in a subject relevant to the position, or a foreign qualification deemed to be the equivalent of a
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application writing Expertise in complementary methods such as SOR, EC-XPS, ICP-MS, SERS, PM-IRRAS, etc. Experience in the use of high-vacuum systems and/or Physical Vapour Deposition processes such as
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animal for the investigation of long-distance navigation at night, using behavioural and electrophysiological methods. The work will take place in our specialised laboratory facilities in both Australia
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that work individually or in swarms (groups). The focus is on developing methods within control, sensor and communication systems, for such systems. The work involves both simulation and practical testing
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at: https://www.umu.se/en/department-of-computing-science/ Project description and working tasks The project will develop privacy-aware machine learning (ML) models. We are interested in data driven models
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-throughput computational screening methods for alloy design, experimental alloy production (casting and/or AM), testing and characterisation of the thermo-physical and mechanical properties of the designed
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knowledge of the physical, chemical and material science methods that are relevant to work with biochar and biomass processes is required. You also have experience in the conversion of biomass into chemical
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Histological techniques, such as in situ hybridization and immunohistochemistry Confocal microscopy High-throughput screening approaches Development or optimization of molecular and experimental methods
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. The project focuses on developing novel representation learning and generative modeling methods to construct a unified cellular morphology state space across heterogeneous datasets. By leveraging shared
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overview describing the proposed research activities, objectives, methods, and potential outcomes. Proposal of research activities: Should include research questions, objectives, methodology, and