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neurodegenerative mouse models Experience in developing image analysis workflows (Python, MATLAB, R, Imaris) Experience in histologic post hoc brain tissue analysis (IF, IHC, RNAScope) Experience in antibody
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Research Assistant (m/f/d) with a Ph.D. in Civil Engineering, Engineering Physics, Physics, Mathemat
., using FEniCSx) Advanced knowledge of scientific programming, preferably in Python, including experience with implementing machine‑learning methods (e.g., PyTorch) Excellent spoken and written English, as
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along with organizational skills, prioritization skills, time management skills, and meticulous attention to detail. Proficient computer skills. Some knowledge in programming using python and/R would be
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Very good methodological knowledge in the field of AI and/or process/physics-based models in the context of remote sensing Very good knowledge of remote sensing data analysis with either R or Python
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language and at least one statistical package, with python/R preferred. Strong experience with high-throughput sequencing data analysis. Experience with Linux, hpc environments, version control and workflow
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in dynamical systems modeling (ODEs) and machine learning and very strong programming skills (Java, Python). A background in evolutionary genomics research is a strong plus, as is previous experience
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strong interest in foundational research very good programming skills, preferably in Python good written and spoken English skills We offer: The position comes with access to high performance computing
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background. • Programming expertise in Python, with experience in PyTorch or TensorFlow. • Familiarity with networking and edge computing (e.g., MEC, IoT, 5G/6G). • Analytical skills for designing and
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PixHawk Autopilot, Arduino boards, Raspberry Pi - or equivalent Experience with ROS/ROS2 Experience with programming languages like Matlab, Python, C++ Familiarity with machine learning and/or deep learning
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data. Writing new R packages or Shiny Apps for implementation of developed methodology. Applying AI and ML tools (including Python, R, and possibly other languages) to test and evaluate biomedical