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applications from designers and design researchers who can envision, visualize and make tangible complex scenarios for uncertain futures. About the Munich Design Institute: The newly established Munich Design
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, configuration, and independent operation of these systems Further development and optimization of graphical user interfaces for demonstrators used to visualize measurement results from laboratory setups
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, brochures, workshop materials, roll-ups, and digital formats), ensuring a consistent and appealing visual identity Organization and communication support for online and in-person events, including training
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to visualize and develop future iterations of the AMC Edu:Lab design. You will also contribute to our wide-scale visual presentation. Specific tasks include: ● Create 3D visual renders of the AMC Edu:Lab’s
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Support with data analysis and scientific visualization Your profile: The successful candidate should have experience with computing for physics applications. In particular the following points are required
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Universitätsklinikum Heidelberg – UK Mannheim GmbH | Mannheim, Baden W rttemberg | Germany | 9 days ago
optimize bioinformatic tools, databases and workflows Collaborate with researchers to design experiments and analyze results Develop custom scripts and algorithms for data processing and visualization Your
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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 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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visual age estimation Object detection (e.g., using YOLO, RT-DETRv2, among others) Image classification based on common architectures (e.g., Transformers: ViT, Swin, DeiT; CNNs: ResNet, EfficientNet; GNNs
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using common architectures (e.g., Transformers: ViT, Swin, DeiT, CNNs: ResNet, EfficientNet, GNNs: GraphConv, GAT) image description, visual question answering, and multimodal search using Vision-Language