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experimental topics in small subgroups. Teamwork is a key factor in our group’s success. Together we have assembled a unique skill set and knowledge base in quantum information, quantum computation, quantum
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for modeling, analyzing, monitoring, robotic actuation, and control of the fluid flow in plug valve for liquid metal. Research topics Control of an existing robotic manipulator for actuation of the plug valve
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analysis Participation in administrative tasks of the institute Your Profile In-depth knowledge of transportation planning, road design and traffic data analysis Very good computer skills German and English
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to work on projects with clinical relevance, including access to patient data or translational research settings where applicable Participation in a structured PhD program, with training elements that can
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invertebrates Cultivation and experimental handling of Daphnia species under controlled conditions Analysis of lipid composition using chromatographic and mass spectrometric techniques (GC-FID, HPLC-MS/MS, MALDI
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topics in small subgroups. Teamwork is a key factor to our group’s success. Together we have assembled a unique skill set and knowledge base in quantum information, quantum computation, quantum
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where it can be targeted. What you will do Build robust, reproducible scRNA-seq analysis workflows and benchmark methods (simulation + real datasets) Develop rare-event–sensitive CIN/aneuploidy metrics
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from chem- and bioinformatics to computer vision and social network analysis. Machine learning with graphs aims at exploiting the potential of the growing amount of structured data in all these areas
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controlled systems. The end goal is a mechanistic and clinically relevant map of how CIN shapes cancer behavior and where it can be targeted. What you will do Build robust, reproducible scRNA-seq analysis
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and learning algorithms for structured data. Graphs and networks are ubiquitous in various domains from chem- and bioinformatics to computer vision and social network analysis. Machine learning with