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Information for the position of Programme Manager at the Downing Battcock Institute Salary £41,691-£53,939 per annum (depending on experience) Full-time, permanent position 36.25 hours per week
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engineering, computational neuroscience, artificial neural networks and bio-inspired robotics: "Rhythmic-reactive regulation for robotic locomotion" (Supervisor: Prof Fulvio Forni) will apply techniques from
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to develop novel, bio-inspired neural networks that flexibly and robustly control locomotion in multi-limbed robots. "Self-organised clocks for reliable spiking computation" (Supervisor: Prof Timothy O'Leary
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Postdoctoral By-Fellowships Each year Churchill College appoints around 16 Postdoctoral By-Fellows from the community of postdoctoral researchers of the University of Cambridge and its associated research institutes. The appointments are for up to three years. There is no stipend attached to...
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Applications are invited for a non-stipendiary Early Career Research Fellowship in Computer Science. This will normally be tenable for three years from 1st October 2026. Offer Churchill College
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Fixed-term: The funds for this post are available for 3 years. A doctoral studentship is available in the forthcoming Aspirational Computing Lab (February 2026) in the Department of Computer
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Research Associate - Mechanisms of G protein-coupled receptor (GPCR) activation: A Research Associate position is available in the group of Prof. Daniel Nietlispach at the Department of Biochemistry
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the context of computing Familiarity with research tools and methods, including statistics platforms like R and/or thematic analysis Knowledge of user-centred design and research methods involving human
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to the development of the project, there may be the chance to learn other methods of interest including cell biology and structure determination. We will provide all relevant training in unfamiliar methods
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will be tasked with the development of new models for the early detection of CIN cancers, applying bleeding edge computational methods and machine learning approaches to improve detection and