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The SnT is seeking a Doctoral Researcher to support the research and development work within the SEDAN group (https://www.uni.lu/snt-en/research-groups/sedan ). We seek a candidate with expertise
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for building the next generation of semiconductor quantum chips! You will be part of the LIST Materials Research and Technology department, where you will carry out your work in the Quantum Materials
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: Contract Type: Fixed Term Contract 36 Month Work Hours: Full Time 40.0 Hours per Week Location: Kirchberg Campus Internal Title: Doctoral Researcher Job Reference: UOL07530 The yearly gross salary for every
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utility for a varying range of use cases and data types. The candidate will perform the work together with an interdisciplinary team of postdoctoral researchers who are experts in the field. In general, the
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. For more information, please visit our website: www.uni.lu/snt-en/research-groups/finatrax/ In particular, the successful candidate will be part of the Data-Driven Energy Transition NCER Project (D2ET
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techniques that optimize both aspects. The candidate will perform the work together with a team of postdoctoral researchers who are experts on the field and other PhD student working in the topic. In general
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in their decisions and businesses in their strategies. Do you want to know more about LIST? Check our website: https://www.list.lu/ How will you contribute? You will be part of the LIST Materials
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Perovskite materials are earth abundant, non-toxic and extremely stable making them ideal candidates for use as absorber layers for tandem and indoor photovoltaic applications. The student will investigate
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respect 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 2025 Location: Campus Belval
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photopolymerization of the precursor. The practical work will be complemented by fluid mechanics computer simulations, including solutions employing machine learning, and theoretical analysis using Leslie-Ericksen