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working language of the project) The ability to work independently while also thriving in an interdisciplinary and international research environment In addition, the following qualifications would be
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representations to tackle real-world challenges—spanning applications from autonomous systems and interactive AI assistants to next-generation AR/VR and digital health technologies. This is an excellent opportunity
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We invite applications for a fully funded 3-year PhD position focused on developing next-generation robotic grippers for biological laboratories. The project combines advances in multi-material 3D
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the project. More specifically, the research should include the following: Creation of a digital twin model of urban surroundings based on large-scale image data that can be generally applicable in various
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information technology and software engineering. The areas will be complementing each other to make way for the engineering of the next generation of reliable, intelligent and interactive software solutions. This includes
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research environments. Excellent communication and teamwork skills. A proactive attitude towards learning and applying new skills. It would further be beneficial if you have some of the following skills
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join a vibrant, multidisciplinary team working across computation, biochemistry, and enzymology to push the boundaries of next-generation enzyme design. Responsibilities and qualifications You must be
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you will develop the next generation of tools for advanced optimisation models for water networks. We are looking for a candidate who is motivated by both technical curiosity and making a real-world
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description Machine learning opens up new opportunities to accelerate the discovery of next-generation energy materials by combining predictive and generative approaches. In this project, we will develop neural