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the fellowship. Experience with machine learning techniques is an advantage. Experience with the analysis of omics data is an advantage. The LEAD AI mobility rules must be followed. Outgoing fellowships require
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are expected to acquire basic pedagogical competency in the course of their fellowship period within the duty component of 25 %. The main purpose of a postdoctoral fellowship is to provide the candidates with
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/ work tasks: The last decade has seen enormous advances in practical methods for machine learning, providing us with data analysis techniques that are, in many cases, much more efficient than the
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analysis of archival data such as AKARI and DIRBE, as well as ongoing projects (e.g., COMAP and PASIPHAE) and future projects, including the LiteBIRD satellite mission. The candidate will participate in
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an educational component including courses. This is the right position if you are highly motivated about fundamental science and excited about physics questions related to solid and fluid mechanics in a biological
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, transcriptomics, antibody assays, and advanced 3D microscopy. For this, a lightsheet microscope dedicated to the imaging of cleared samples is being acquired, as well as a workstation for VR-assisted image analysis
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’ ph.d programme . The PhD programme comprises a training component corresponding to 30 ECTS, which corresponds to one semester. The remaining six months will be allocated to this formal training
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component corresponding to 30 ECTS, which corresponds to one semester. The remaining six months will be allocated to this formal training. Qualifications and personal qualities: The applicant must hold a
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25% teaching component. The position is dedicated to a Nepali case study. About the project UNRULY is dedicated to understanding uncertainty related to hydropower projects in the face of climate change
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students. The candidate will be able to participate in the larger Cosmoglobe project (PI: Prof. Ingunn Wehus), including analysis of archival data such as AKARI and DIRBE, as well as ongoing projects (e.g