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-motivation and good planning skills. As a PhD candidate, you will be part of an active research environment, collaborating with senior researchers and other doctoral students. Within the framework
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dynamic Electrochemical Impedance Spectroscopy (EIS), combining advanced measurement technology with modelling and data-driven analysis. A key component is a novel measurement approach that enables high
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postdocs will be part of the Research School. The DDLS program has four strategic research areas: cell and molecular biology, evolution and biodiversity, precision medicine and diagnostics, epidemiology and
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Lund University, and you will be interacting with a twin PhD student recruited there. As a PhD student, you devote most of your time to doctoral studies and the research projects of which you are part
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satellite‑based techniques to help accelerate a sustainable climate transition in the agricultural sector. As a PhD student you will be part of a competent, open, and welcoming research group at Linköping
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. The project focuses on developing an integrated approach that combines machine learning techniques with physics-based models to estimate the health of various system components. The aim is that fault diagnosis
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external research funding. Interaction is an integral part of the Linköpings University’s research and educational mission, encompassing the dissemination, accessibility, and utilisation of research. Your
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vehicles). As a PhD student, you devote most of your time to doctoral studies and the research projects of which you are part. Your work may also include teaching or other departmental duties, up to a
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assignments As a postdoc, you will primarily conduct research. A certain amount of teaching may be part of your duties, up to a maximum of 20% of your working hours. The postdoc will investigate new strategies
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distributed MIMO systems. Your work assignments The research focus for the advertised position is machine learning for telecommunications. The position is part of the project "Machine learning for sensing in