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experiments and take an active role in advancing the statistical methods employed at the Plant Accelerator® . The appointed individual will support plant scientists using our services to address a diverse range
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to global conservation science. To be successful you will need: A PhD in quantitative ecology, quantitative conservation biology, applied mathematics or a related Discipline Publication record in the relevant
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you will need: 1. A completed PhD or a submitted PhD thesis in either computer science, mathematics, computer/software engineering, electrical or electronic engineering, mechanical/mechatronic
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responders and operational risk assessment regarding skin decontamination and will build on a program of work focused on dermal exposure to chemicals. To be successful you will need: Completion of a PhD in
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: PhD (or thesis submitted) or equivalent experience in experimental laser physics, photonics, optics, optical engineering and/or optical sensing. A commitment to research excellence. Demonstrated ability
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environment. To be successful you will need: Masters/ PhD in Mechatronics/Robotics or relevant area, or significant and appropriate industry experience. Demonstrated practical experience in application
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), showing lung expansion and contraction, and we are working on understanding the best methods for interpreting this data. The successful applicant will work with the ReXIl team, AIML, and 4DMedical to turn
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an impactful career in quantum technology within a world-leading research institution. To be successful at Level A you will need: A PhD in Quantum Physics, good knowledge in the Physics of Quantum devices
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. To be successful you will need: PhD or equivalent degree (or thesis submitted) in earth sciences. Demonstrated research ability in sedimentology and sedimentary geochemistry—preferably with expertise in
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PhD in Computer Science, Engineering or other Machine Learning-related field. • Programming experience in python, C++ or other relevant language and experience in deep neural networks • Strong