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Description of the workplace Automatic Control is an exciting and broad subject, covering both advanced mathematics and hands-on engineering. Historically, it has been instrumental in many areas
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energy system models based on the institute`s own open-source FINE framework https://github.com/FZJ-IEK3-VSA/FINE. Your tasks in detail: Implementing geothermal plants with material co-production in
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use cutting-edge techniques leveraging automation and high-throughput methods to generate high-quality and large datasets providing novel insights into improving predictability of in vitro assays
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for predicting sand and particle transport struggle with the cross-shore processes (perpendicular to the beach), and they even have difficulties predicting the sign right (offshore transport vs. onshore transport
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policies from a minimal number of real examples; implementing and evaluating real-time task-execution monitoring and failure-prediction modules that leverage the digital twin as a safety validation
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University of North Carolina at Chapel Hill | Chapel Hill, North Carolina | United States | about 11 hours ago
to; system piping, expansion joints, condensate return units, pumps, motors, metering devices, trap assemblies, supply/exhaust fans, pneumatic systems and electrical control systems. This position is also
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with industrial application using sensor systems, systematized software production and scientific production and writing, designing, building and testing laboratory prototypes for predictive maintenance
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to generate baseline datasets for calibrating and validating predictive models of biodiversity-rich forests. Using machine learning (ML) algorithms, the Research Assistant will help predict the occurrence
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: senior technologist) to collaborate with the funded line of research “SIHFT techniques and reliability prediction in on-chip systems. University Institute for Computer Research”. Reference: I-PTGAI 20-26
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protocol design and analysis. Prior experience with MEG or EEG is a plus. Good command of scientific English (oral/written). • Qualities: Autonomy, appetite for interdisciplinary work, organizational skills