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to contribute to our groundbreaking research. The project focuses on enhancing RNA detection on microarrays through the development and optimization of novel biochemical strategies. Key Responsibilities: Conduct
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development opportunities and annual performance reviews. You are paid according to the collective agreement for the public sector (Tarifvertrag des öffentlichen Dienstes, TVöD Bund), which includes an annual
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Combining caring responsibilities with an (academic) career Equal opportunities in staff development Cultural change through diversity Leadership culture Sustainability Institutes INSTITUTES Leibniz
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development. It is one of the world's leading research institutions in its field and offers natural and social scientists from around the world an inspiring environment for excellent interdisciplinary research
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development. It is one of the world's leading research institutions in its field and offers natural and social scientists from around the world an inspiring environment for excellent interdisciplinary research
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development. It is one of the world's leading research institutions in its field and offers natural and social scientists from around the world an inspiring environment for excellent interdisciplinary research
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for data analysis interdisciplinary working environment and very good conditions for developing your scientific career and networks doctorate within a structured program The DSMZ offers a lively
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Association with an international reputation and globally networked research infrastructure. It is active in three closely interlinked fields: collection-based research, collection development and cataloguing
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An open and cooperative working atmosphere Opportunities for personal and professional development Interesting, varied and challenging tasks and family-friendly working conditions Company pension plan (VBL
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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