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. Responsible for the developing the full pipeline of the proposed program of research. You will have a PhD in engineering or computer science, and strong expertise in deep learning, embedded systems and hardware
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validations of the concepts developed. Responsible for the development the full pipeline of the proposed program of research. You will have a PhD in engineering or computer science, and strong expertise in
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Computer Science, Data Science, Civil Engineering or a related field Newcastle University is a global University where everyone is treated with dignity and respect. As a University of Sanctuary, we aim to provide a
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logic. You will be supported by an interdisciplinary team from Newcastle University, led by Prof Mohamad Kassem, with expertise in digital construction, construction informatics, software engineering
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into complex ecosystems. You will have the opportunity to work closely with experimentalist and have access to state-of-the-art computational and bio-nano-technology equipment to test, debug and improve
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actively involved in the research programme of the School and to register for an MD (under staff regulations) exploring an aspect of our Learning Communities programme. This is a 2-year FTE post but we would
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-Trust funded research project which aims to understand which computational (reinforcement learning) mechanisms are engaged by different antidepressant treatments. RELMED is a unique opportunity to
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high-calibre individual to join the School of Engineering, which boasts world-leading expertise, research and education in Engineering. The Research Associate will work on the EPSRC funded project EP
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, computational statistics and sports statistics. We are seeking to appoint a research associate/assistant in statistics to the Engineering & Physical Sciences Research Council (EPSRC) funded project SaFEGen: A
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leading team in Electrical and Electronics Engineering, School of Engineering, Newcastle University. The EPSRC Northern Net Zero Accelerator (NNZA) project aims the adoption of unsupervised learning