69 data "https:" "https:" "https:" "https:" "CNRS" "Univ" positions at Cranfield University
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experimental and operational data, evaluating machine performance, and preparing high-quality technical reports for industrial partners. The Research Fellow will also be expected to contribute to the wider
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. You’ll be confident engaging with senior‑level stakeholders, translating product knowledge into compelling value propositions, and using data to inform decision‑making and identify opportunities. You will
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academic teams to align marketing efforts with client needs. You will combine strong analytical skills with creative flair, using data to optimise performance and help drive engagement and lead generation in
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30 Mar 2026 Job Information Organisation/Company Cranfield University Department HR & Development Group Research Field Engineering » Aerospace engineering Researcher Profile Recognised Researcher
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transfer, thermo-fluid systems simulation and programming, as well as exposure to software platforms and algorithms for Artificial Intelligence, Machine Learning and Data Analytics. You will have experience
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may be required to obtain UK Security Clearance. Funding This studentship is open to UK applicants only. How to apply For further information please contact: Name: Prof. David MacManus Email
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23 Mar 2026 Job Information Organisation/Company Cranfield University Department HR & Development Group Research Field Engineering » Aerospace engineering Researcher Profile Recognised Researcher
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provide a bursary of £20,780 (tax free) plus fees* for three years. This opportunity is open to Home and Overseas fee status students. For further information: Name: Dr Abhijeet Ghadge Email
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from passionate, skilled, committed, prospective experts in Data Science in Food Systems to join our team passionate in onion supply chain, to contribute in reducing losses due to fungal disease
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the challenge of forever chemicals in drinking water. The aim of this research is to develop a smart data predictive model that will support utilities’ evidence-based decision-making to improve the resilience and