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Description About Us Ardent Process Technologies is on a mission to save the planet. We create technology to capture and reduce greenhouse gas emissions, avert global warming, and transform industry into a long
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qualifications (required at time of application) Doctoral degree in engineering, oceanography or a related field, with relevant background in data-driven modeling, machine learning and/or fluid mechanics
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Engineer Job Profile Title Application Developer Senior Job Description Summary The Analytics Engineer serves as a critical technical architect within the Advancement Prospect Analytics department
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21 Feb 2026 Job Information Organisation/Company Università degli Studi della Tuscia Research Field Engineering » Industrial engineering Researcher Profile Recognised Researcher (R2) Leading
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the Research Grant Regulations of the Foundation for Science and Technology. 6. Work plan: The RiskMap project aims to develop an AI-driven tool to map degradation risks on historic building facades, using
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rupture, which is one cause of a stroke and thus the prediction of plaque rupture is very relevant. The steps in the development of surrogate models are building data-driven models from medical imaging
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numerical models and machine learning tools to predict loads, assess structural responses, and identify damage under extreme conditions. By combining computational simulations with data-driven approaches
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professional programs, including P&L management, enrollment-driven revenue forecasting, and expense modeling. Lead monthly and annual financial reviews, translating complex financial data into actionable
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engineering Machine learning or AI methods (e.g. anomaly detection, classification, regression, time-series modelling) Programming skills (e.g. Python, MATLAB or similar) Experience with industrial systems
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recently seen the first results in application to engineering materials for wear and plastic damage in steel. A significant opportunity is FLAME GPU general-purpose modelling framework developed in Sheffield