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, see https://www.ntnu.edu/studies/phiot . As a PhD Candidate, you are obligated to participate in an organized PhD program during the employment period. A condition of appointment is that you are
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diagnostic and therapeutic tools for bacterial infections. Our work is at the interface of carbohydrate chemistry and inorganic chemistry. The group currently has 5 PhD students and a postdoc. The successful
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the interface of machine learning and biology (tools developed by the team: https://github.com/cantinilab ). The team is composed of 8 people : 3PhD students, 3 post doc, 1 research engineer and 1 assistant
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. Electrical signals captured from the brain of mice while they engage in different behaviors such as perception, learning and execution of tasks, as well as social interactions are analysed using advanced
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departments in the Faculty of Economics and Management . Where to apply Website https://www.jobbnorge.no/en/available-jobs/job/298366/phd-position-sfi-celect-s… Requirements Research FieldEngineeringEducation
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interactions on a microscopic scale. Our main motivation is to explore the interface between quantum physics and gravity with new experimental platforms. Your future tasks: You will actively participate in
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anticipated that the successful applicant will pursue advanced doctoral training (MD, PhD or MD/PhD) subsequent to this position. Set up, adjust, calibrate, clean, maintain and troubleshoot equipment Clean
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sanitaire béninois ou une expérience de terrain dans des contextes similaires, facilitera la mise en œuvre du projet doctoral et les interactions avec les acteurs du système de santé.This PhD project requires
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Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description The recruited researcher will study the interaction of a
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project involves interdisciplinary research at the interface of computer science and mathematics, with a focus on bivariate molecular machine learning for modeling molecular interactions and properties