171 data-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"Univ" positions at University of Birmingham in United Kingdom
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multidimensional Inverse Synthetic Aperture (ISAR) Data- Aemelia”, funded by NSIP2/UKSA, maximize impact and pave way for the follow on projects on dual use technologies for SDA and space autonomy the position
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of literacy and numeracy, with the ability to write clearly, and to produce and analyse information and data. Strong negotiation skills and the ability to persuade and influence. The ability
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reports, papers, briefings and analyse management information for a range of internal and external audiences. You will use your excellent organisational skills and attention to detail to ensure
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team Collect, analyse and interpret data related to the research project Apply knowledge in a way which develops new intellectual understanding Take a prominent role in delivering the research goals
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mentor if required Contribute to writing bids for research funding Analyse and interpret data Apply knowledge in a way which develops new intellectual understanding Disseminate research findings
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because of climate change. Working alongside the PI and local academic partners, the postdoctoral fellow will then oversee data collection, which is expected to involve interviews, survey questionnaires
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for growth and service to the client You will gather and analyse sales reports and data to identify trends and make recommendations for improvements to processes You will be expected to keep up to date
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within area of specialism Contribute to publications Main Duties Collect research data; this may be through a variety of research methods, such as scientific experimentation, literature reviews, and
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ensuring that appropriate information is disseminated to stakeholders as appropriate. You may be involved in organising events including booking a venue, sending invitations, arranging refreshments, liaising
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responsibility is to test key assumptions about differential disease risk by integrating high-resolution socio-ecological, environmental, and novel health data from individual and population sources. This research