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inviting applications for a PhD Student (f/m/x) for the project Theory and Algorithms for Structure Determination from Single Molecule X-Ray Scattering Images Project description Single molecule X-ray
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of globalization. Application Process: Candidates are selected in a two-step process by GSGAS and DAAD. Candidates are nominated during the selection process by the GSGAS to the DAAD. The final decision is made by
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, and studies in the history of science will be examined to trace the contexts of origin, structures of participation, and decisive impulses behind each discovery. Methodological Key Points: • Case Study
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well as surface and bond properties Determination of sorption properties of An-MOFs towards fission products Development of novel An-MOFs with optimized sorption properties Presentation of the results in scientific
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- looking. Sensor technology plays a key role in this transformation, enabling real-time monitoring, automation, and intelligent decision-making. Despite these needs, many water treatment processes still rely
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: nomination to the DAAD and standard application procedure at and final decision by the DAAD (online application with supporting documentation via the DAAD portal) Please send your application (via email as a
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, since immune reactions are particularly important when studying cancer. Application of these tools will allow spatio-temporal determination, if an increase of a given type of RNA modification is directly
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considering the standards of GIANT-REGAIN by means of differential GNSS analysis and Precise Point Positioning, respectively determination of the bedrock displacement due to present-day ice-mass changes using
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written English communication skills as well as the absolute determination to submit the dissertation after 3 years and 9 months of research. What we offer: Pioneering Research Environment: Shape the future
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of the PhD topic (subproject A7- Reinforcement learning for mode choice decisions): This PhD project will develop and implement a Deep Reinforcement Learning (DRL) model for dynamic mode choice within