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development, antibody structure, immune responses in cancer Hands-on experience with core wet lab techniques: cell culture, PCR, western blotting, and basic functional assays using immune or cancer cell models
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and educational issues with the common goal of contributing to an inclusive, open and resourceful society. The Department of Geography and Spatial Planning focuses on spatial development processes
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game development projects, exhibitions, or public-facing digital history projects Language Requirements: Applicants must demonstrate at least B2-level proficiency in the language of their thesis
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enabled High-Performance Computing environments is an asset Open minded critical thinker, willing to actively contribute to the further development of multi-cultural and multi-disciplinary research team
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pathology and therapeutic response. The candidate will be responsible for data harmonization, multi-omics integration, and development of network-based models. In addition to analyzing these models
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models to guide safer and more effective, individualized steroid use. As such, the candidate will be responsible for data harmonization, multi-omics integration as well as the development of machine
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previous experience in XR, UI, and UX development Proficiency in at least one major game engine, e.g., Unity or Unreal Engine, and C#/C++ or similar languages for interactive 3D applications Proven interest
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understandings of structural behavior and concrete degradation mechanisms. The tasks comprise the development of the tracking system, the development of new concrete damage assessment based on spatially continuous
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international environment, and actively shape interdisciplinary theory on sustainable transformations and well-being. The successful candidate will join the Institute for Lifespan Development, Family and Culture
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that methodological advances are developed with direct translational and scalability considerations. Responsabilities: Lead the development of hybrid foundation model-graph neural network architectures for gene