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programme which provides all professional services staff with development opportunities and the encouragement to reach their full potential. With almost 5,000 professional services jobs in a wide-range of
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contribute to the creation of knowledge by undertaking a specified range of activities within an established research programme and/or specific research project. Our international group of highly motivated and
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independently and as part of a team on research programmes Adept at analysing and interpreting data Able to apply knowledge in a way which develops new intellectual understanding Excellent interpersonal and
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Birmingham Professional programme which provides all professional services staff with development opportunities and the encouragement to reach their full potential. With almost 5,000 professional services jobs
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the city and beyond, support them to succeed, and celebrate their success. We are committed to helping the people who work here to develop through our sector-leading Birmingham Professional programme which
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July 2025 Background To create and contribute to the creation of knowledge by undertaking a specified range of activities within an established research programme and/or specific research project. Role
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://www.birmingham.ac.uk/staff/profiles/chemistry/slater-peter.aspx https://www.birmingham.ac.uk/staff/profiles/chemistry/allan-phoebe.aspx and will work on the development of recycling strategies for Li ion battery
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, with opportunities to build an international research portfolio. The post holder will work on developing and testing study design and data analysis methods, particularly related to cluster randomised
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Race Equality Charter Bronze Award and a Stonewall Global Diversity Champion. Learn more about working with us: University of Birmingham Staff Information. Main Duties Research Develop, plan and lead
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can be leveraged to accelerate learning from both classical and quantum data. The project will develop rigorous theoretical frameworks to understand key properties of quantum machine learning models