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Research Infrastructure? No Offer Description Two fully-funded 3-year PhD studentships are available in Neuromorphic and Bio-inspired computing at the interface between control engineering, electrical
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the Department of Computer Science and Engineering, at the University of Cambridge, UK. The Postdoc will work across several projects, interfacing with teams of students and research collaborators on developing
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well as basic IT skills such as the use of emails, record keeping and smartphone technology. Candidates should be adaptable, able to use their own initiative within set parameters, and be able to respond
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wet- and dry-lab scientists that are studying RNA, chromatin and transposon biology, covering all aspects of this RNA-based immune system, including the biogenesis of small non-coding RNAs and the
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Two fully-funded 3-year PhD studentships are available in Neuromorphic and Bio-inspired computing at the interface between control engineering, electrical engineering, computational neuroscience
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Trinity College Cambridge is seeking an Investment Manager to support the Senior Bursar in the management of its £2.5 billion Endowment during the maternity leave of the current role holder. This is
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built a strong reputation for transforming individuals, organisations, and society through research and teaching. Located at the centre of the Cambridge Cluster, Europe's leading technology
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or related areas. The ideal candidates will have extensive experience in microscopy, micromanipulation, growth of microorganisms, and dynamical systems theory. Fixed-term: The funds for this post are available
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built a strong reputation for transforming individuals, organisations, and society through research and teaching. Located at the centre of the Cambridge Cluster, Europe's leading technology
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areas: machine learning, decision making, and theory and practice of deep learning. We encourage applicants who will strengthen our current research activities in probabilistic machine learning