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analysis. You should possess excellent analytical skills, a genuine interest in interdisciplinary research, and the ability to work both independently and as part of a team. You are expected to have good
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applications such as isolation of circulating tumorcells from cancer patient derived blood samples, or enrichment and biomarker analysis of extracellular vesicles in blood samples. More about our research group
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protein design or structural bioinformatics Hands-on experience in biophysical techniques used in structural analysis Prior experience with chemical cross-linking (XL-MS) and hydrogen–deuterium exchange
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emphasis on bioinformatic and evolutionary analysis. Qualification requirements In order to be admitted to postgraduate education, the applicant must have the general and specific entry requirements
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biochemistry, especially protein purification, and computational image analysis must be acquired before starting PhD project work. As a PhD candidate, you must also be fluent in both oral and written English
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, especially protein purification, and computational image analysis must be acquired before starting PhD project work. As a PhD candidate, you must also be fluent in both oral and written English..[AB5] [BF6
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areas, of which at least 30 credits must be at an advanced level. Courses in statistical analysis, quantitative methods, or mathematical models acquired outside these subject areas may also be included
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areas, of which at least 30 credits must be at an advanced level. Courses in statistical analysis, quantitative methods, or mathematical models acquired outside these subject areas may also be included
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and/or dynamic approaches to detect them in the code or prevent their execution at runtime. Keywords for this project: code analysis, static analysis, reverse engineering, defense mechanisms
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for multimodal machine learning, combining large-scale image data with molecular profiling and clinical data. This includes, for instance, research on deep learning-based image analysis and data assimilation