24 software-formal-method-phd research jobs at University of Liverpool in United Kingdom
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areas (i) Non-adiabatic chemical dynamics, (ii) Physics of charge transport in the solid state, (iii) QM/MM methods, (iv) Atomistic classical simulations of macromolecules (v) Biophysics. You can write
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minority, people with disabilities and people from LGBTQ+ communities, as they are currently under-represented in the Department of Electrical Engineering and Electronics. If you are still awaiting your PhD
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Leverhulme Research Centre for Functional Materials Design). The post is available on a fixed term basis for up to 3 years from 1 October 2025. If you are still awaiting your PhD to be awarded you will be
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connectivity of the broader community, training, networking, as well as state-of-the-art research. This post will develop artificial intelligence methods for the prediction of crystal structure, the critical
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to meetings with industrial collaborators if required ¿ Engage with your own personal development opportunities. You should have a degree in Chemistry and a PhD in polymer chemistry. All applicants must
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PhD in a relevant scientific discipline, for example, Cell Biology-related subject, Tissue Engineering or Biomaterials. Excellent manual dexterity and experience in cell culture and models, and tissue
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31 August 2027. You should have obtained a PhD, or passed PhD viva, in Materials Science, Chemistry, Mechanical Engineering, or Chemical Engineering. If you are still awaiting your PhD to be awarded
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strategic dissemination, ultimately aiming for widespread adoption and commercial success. If you are still awaiting your PhD to be awarded you will be appointed at Grade 6, spine point 30. Upon written
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relevant global data bases. A team player with excellent organisational and management skills you will use mixed methods research including meta-analysis, interviews with women, partners, and healthcare
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Liverpool where, in the School of Computer Science and Informatics, we have an active group of PhD students, postdocs, and academics working at the intersection of Machine Learning, Verification and