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15, 2025. For more information on the PhD program and the application process, please visit our website at www.geschkult.fu-berlin.de/hcs . If you have any questions about the call for applications
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methods to study RNA phage-induced complexome remodeling and decipher the molecular mechanisms and consequences of this process. Requirements: Master’s degree/Diploma or equivalent in biology, biochemistry
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of neural hydrology, where hydrological models are directly learned from data via machine learning (e.g., LSTM neural networks, [1]). Initially, these models ignored all physical background knowledge and did
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; degrees in Chemistry, Physics, Biochemistry, Chemical Engineering, or a related discipline will be accepted. At the time of the nomination (estimated January 2026), your last final exam should have taken
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. Accordingly, we welcome all applicants who would like to commit themselves, their achievements and productivity to the success of the whole institution. At the Faculty of Physics,Institute of Applied Physics
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, their achievements and productivity to the success of the whole institution. At the Faculty of Physics, Institute of Nuclear and Particle Physics, the Chair of Accelerator Mass Spectrometry and Isotope Research offers
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research spectrum covers a unique range. Institute of Coastal Ocean Dynamics The Institute of Coastal Ocean Dynamics at the Hereon develops innovative technologies, investigates the physical and
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Biology, Biochemistry, Life Science, (Bio-)Physics, Chemistry, Computer Science, or related fields. Visit the IMPRS-LM website for more information about the program, the application process , and the
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of membrane electrode assembly for fuel cell Your profile Completed university studies (Master/Diploma) in the field of Mechanical Engineering, Process Engineering, Chemistry, Physics or related field Very good
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demands. To break this bottleneck and cut simulation time by orders of magnitude, you will design and implement surrogate models that learn the behavior of full‑physics codes using modern machine‑learning