215 postdoc-in-thermal-network-of-the-physical-building positions at University of Birmingham
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microfabrication techniques such as sputtering, spin coating Experience of working with characterisation techniques such as thermal imaging, profilometry, scanning electron microscopy, UV-VIS spectrometry Experience
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diversification of the College portfolio, encouraging a “future-facing” outlook. The post holder will promote the art of the possible in digital education through the development of external networks that identify
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with evidence-based professional practice to promote lifelong engagement in physical activity, optimising health, wellbeing and performance for everyone. Consistently in the top 10 of the QS World
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well as external partners and local communities, you will build and maintain strong relationships and networks to embed and deliver the University’s new Public and Cultural Engagement Strategy. You will work across
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processes to ensure a high standard of service delivery is maintained. The post holder will make a significant contribution to achieving best value for money in the acquisition of e-resources and print
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technologies with the objectives of training future generations of technical specialists and leaders; developing and manufacturing test components for fast make and demonstrator aero engine projects; researching
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-writing and proposal-writing skills. Confidence in networking and strong relationship-building skills. Ability to apply and/or develop and devise successful models, techniques and methods in research and
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. The work builds on recent findings from our lab showing how flies prioritise competing needs such as mating, feeding, and threat avoidance (e.g. Cazalé-Debat et al., Nature, 2024; Cheriyamkunnel et al
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technicians, and you will be provided opportunities to continue building your skills and up-to-date knowledge of relevant instruments and techniques through participating in relevant workshops and seminars. In
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annotation of these metabolomes using multistage fragmentation (MSⁿ) data, incorporating novel computational methods and strategies (e.g. spectral matching, network-based approaches, machine learning) where