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JUNIQ’s user platform by integrating QCs into the Modular Supercomputer of JSC Developing and conducting trainings for QC users Collaborating with project partners from academia and industry Presenting
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also undesirable outcomes such as stereotyping and other biases. These biases are reduced when people experience cognitive conflicts. In a DFG-funded project, we aim to test whether cognitive conflicts
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phenotyping, including image analysis evaluations, for trait quantification Handle NGS datasets for RNAseq or SNP detection and linkage analysis using R Your qualifications and skills: You have a PhD or
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side projects and build networks inside and outside the institute Analyze diverse data sets for multi-omics integration in plant genetics Expand expertise and collaborations beyond plant research Our Lab
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, and energy systems into a comprehensive bio-based circular economy. We develop and integrate techniques, processes, and management strategies, effectively converging technologies to intelligently
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physiology. The project focuses on understanding gut barrier loss during aging in killifish, utilizing techniques such as microscopy, cytometry, and genome editing. Research focus of the Lab: The Valenzano
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populations. This project will explore the genetic and evolutionary mechanisms shaping adaptation through a combination of genomic, computational, laboratory, and field-based approaches. Research focus
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products and processes in real-time. Why join us Creative freedom – opportunities for knowledge growth – industry connections – dynamic team Your tasks • Scientific research and project management
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team to work on machine learning-supported rapeseed genomics and breeding. Your tasks: You design, train and interpret deep-learning models to predict regulatory gene variants in rapeseed genomes. You
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at large scale facilities Establishment of cooperation projects with energy-related institutes at Forschungszentrum Jülich Initiating grant applications Supervision of MSc and BSc students Presentation