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Apply now Job no:538032 Work type:Full Time Location:Sydney, NSW Categories:Information Technology, Analyst Employment Type: full time continuing role, Business Analyst, UNSW IT. Starting Salary
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AI. Candidates must possess substantial experience in artificial intelligence and machine learning methods, specifically in AI-driven materials discovery, machine learning applications for materials
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of ecological data and sustainability issues - Materials Science: AI-driven discovery and design of new materials Applicants should have (i) a Ph.D. in Computer Science, Computer Engineering, Electrical
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Overview: 1 x Full time, ongoing role to join the School of Engineering - Department of Aerospace Engineering Salary Academic Level C ($141,247 - $ 162,872) + 17% super Primarily based at City
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nine colleges and schools. Connections working at Northeastern University More Jobs from This Employer https://main.hercjobs.org/jobs/22131366/snowflake-developer Return to Search Results
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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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Doctoral level study programmes in Electrical Engineering; Develop and improve study courses, integrating research-based and innovation-driven teaching methods; Supervise Doctoral and Master’s theses and
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-organ models; high-content functional screening systems; biomedical digital twins; computational modeling of living systems; AI-driven physiological and pathological modeling; high-performance computing
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. Experience with advanced analytics, including predictive modeling, data science, or statistical analysis to support data-driven decision-making. Demonstrated experience designing and implementing ETL/ELT
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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