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Attachment to Mobility Cultures: A Cross-border Approach•Ref: 25-20•3 years (36 months) fixed-term employment contract at LISER•Full-time, 40 hours/week •Department: Urban Development and Mobility (UDM)•Work
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procedure law, ideally in connection with its European, international and interdisciplinary aspects. The doctoral researcher will be working under the supervision of Professor Stefan Braum. The thesis work
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for our employees and students. General information: Contract Type: Fixed Term Contract 36 Month Work Hours: Full Time 40.0 Hours per Week Planned start date: October/November 2025 Location: Campus Belval
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translated into comprehensive regional action plans and guiding documents. Two solutions - one focusing on medicine use and the other on wastewater treatment - will be designed and developed to reduce
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-en/research-groups/finatrax/ The candidate will work on the the Data-Driven Energy Transition NCER Project (D2ET). This project aims to accelerate the energy transition in Luxembourg by co-creating
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: www.uni.lu/snt-en/research-groups/finatrax/ The candidate will work on the the Data-Driven Energy Transition NCER Project (D2ET). This project aims to accelerate the energy transition in Luxembourg by co
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We are looking for a doctoral candidate with a strong computational, engineering, data scientific or machine learning background that is keen to work in an interdisciplinary environment and open to
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infrastructures and cyber-physical systems with the aim to protect our most sensitive and valuable assets. We look into systems in the small and how we can prepare them to withstand and operate safely and securely
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information: Contract Type: Fixed Term Contract 36 Month Work Hours: Full Time 40.0 Hours per Week Location: Campus Belval Internal Title: Doctoral Researcher Job Reference: UOL07283 The yearly gross salary
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variants of the sodium channel Nav1.1, which are associated with different forms of epileptic syndromes and migraine. The aim of the project is to use machine-learning assisted molecular dynamics simulations