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, experimental evolution and behavioural studies that involves different trophic levels. The practical work also entails cultivation and rearing of plants, butterflies and parasitoids, sampling for chemical and
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is a solid education in a subject such as biophysics, biochemistry, molecular biology, or biology. The research may entail both experimental and computational work. Therefore, experience in
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also operates at research stations, experimental forests and teaching sites throughout Sweden. SLU has around 3,000 employees, 5,000 students and doctoral students and a turnover of over SEK 3 billion
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• Perform genetic studies and bioinformatic analysis to identify genes and mechanisms that control these traits • Develop DNA markers for future application in plant breeding In the research studies, you will
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Are you interested in developing computational tools to understand the detailed mechanical behaviour of multi-phase materials? Then this PhD position at Chalmers University of Technology might be
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and inhibition of mechanisms such as blebbing. Qualifications Requirements for the Position: A university degree at Bachelor’s or Master’s level, or an equivalent foreign degree related to the research
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, optimization) or AI.- Someone who enjoys working in a team, takes initiative, and isn’t afraid to think outside the box.- Someone with excellent grades from BSc and MSc studies, and not afraid of experimental
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in vitro studies on pancreatic cancer cells to investigate metastatic potential and inhibition of mechanisms such as blebbing. Qualifications Requirements for the Position: A university degree at
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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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effort at the intersection of machine learning and applied mechanics. The focus of this position is on extracting information about what a neural network has learnt in a symbolic and (human) interpretable