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interdisciplinary hub that hosts multiple research groups working on self-driving laboratories. This environment allows for close integration between your computational models and high-throughput experimentation
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of antibiotics against human pathogens. You will work on antibacterial assays (against Klebsiella) and use genome sequencing and mining to select the most potent strains and use a range of elicitor techniques
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experience in fish vaccine research, including utilizing long-read sequencing and transcriptomic methods to characterize vaccine-induced immune responses. Research experience within microbiology, molecular
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complex natural soils. You will work with chemotaxis experiments, long-read sequencing, microbial community analysis, and LC-MS-based chemical characterization. The PhD project is part of the research
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, microfabrication, pharmaceutical science, and polymer science, ensuring alignment between technology development and market needs. The project is highly interdisciplinary, and we expect that you enjoy teamwork
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still face significant challenges, for instance, for modelling CO2 storage processes, which involve multiple cations and anions, mineral precipitation and dissolution, broad ranges of temperature and
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are eager to contribute to this rapidly developing field. Our research spans multiple disciplines, and we welcome applicants with backgrounds or interests in areas such as quantum optics, nanofabrication
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multiple PhD scholarships in 2026 focusing on nanoparticle catalysis using advanced operando electron microscopy. If you thrive in a collaborative, cutting-edge setting and want to make a global impact, we
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doing so, you will gain insights into how their agency is shaped by conflicting interests and multiple socio-material elements such as legislation, social practices, technology designs, community
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rather than one-shot scenario evaluation. The core research directions of the PhD project include: (i) multi-agent RL to jointly learn policies for multiple control parameters; (ii) uncertainty-aware