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Transmission and processing of live measurement data from laboratory setups, as well as storage in databases, and live analysis and visual presentation Active participation in innovative projects based on open
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, the corresponding methods should be extended, if necessary, to be understandable for non-experts as well. This can be achieved, for example, thru visualizations or the automated extraction of the most important input
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The Fraunhofer Institute for Digital Media Technology IDMT is part of the Fraunhofer-Gesellschaft. Headquartered on the campus of Technische Universität Ilmenau in Ilmenau, Thuringia, the institute
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Integration of simulation and measurement data into interactive or VR environments Data processing, signal analysis, and visualization (e.g. in Python / MATLAB) You are not expected to be an expert in all three
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optical communication networks and systems, as well as machine learning, computer vision and compressing digital videos. As part of our project with the start-up TwinCloud, we are looking for a Student
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cultivation, and PV performance at different sites. You collect sensor data, preprocess the data, and analyze it. What you contribute You are studying mechatronics, microsystems technology, computer
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execution of experiments in the field of Machine Learning (ML): cleaning, preparing, splitting, visualizing data, if necessary crawling and scraping data. Applying (implementation of common ML methods such as
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formats, ensuring data quality and plausibility, linking entities across sources, integrating spatial and demographic information, and providing structured access for analysis and visualization. This thesis
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The Fraunhofer Institute for Digital Media Technology IDMT is part of the Fraunhofer-Gesellschaft. Headquartered on the campus of Technische Universität Ilmenau in Ilmenau, Thuringia, the institute
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, visualizing data, if necessary crawling and scraping data Applying (implementation of common ML methods such as hyperparameter optimization, binary/multi-class/multi-label classification, ensemble methods