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instrumentation overhead and enabling multi-core/multithread debugging (parallel debugging). By integrating with existing tools (GDB) and extending the de-bugging capabilities, this work aims to provide a robust
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the study of the impact of digital and computational pathology on clinical workflows and patient care. Our lab is located in the heart of Munich at the TUM Klinikum rechts der Isar (MRI), Institute
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Generation Sequencing) laboratory in Germany. As a key partner of the Comprehensive Cancer Center Munich TUM (CCCMTUM), the laboratory plays a pivotal role in supporting the Molecular Tumor Board at Klinikum
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in the Transregional Collaborative Research Centre TRR 355 and is funded for three years. Project Overview: The candidate will contribute to a collaborative DFG-funded project aimed at understanding
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in bone marrow chimeras, and Dr. Ursula Zimber-Strobl (Helmholtz-Zentrum München) working on Marginal Zone B cell development. Regular interactions with these collaborators will occur through monthly
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-mandatory, but constitutes a plus. Ability to work in a multi-cultural team and independently. Please note that according to MSCA rules, “the candidate must not have resided or carried out their main activity
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18.10.2022, Wissenschaftliches Personal The lab for Artificial Intelligence in Medical Imaging (www.ai-med.de) is looking for a Post-Doc. The task will be the multi-modal modeling of medical data
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12.10.2021, Wissenschaftliches Personal The TUM Professorship for Data Science in Earth Obervation is seeking a full-time PhD candidate on the topic of “Multi-scale Semantic Understanding
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provide support in data analysis to colleagues of the Collaborative Research Center TRR267: Non-coding RNAs in the cardiovascular system. About us The TRR 267 is a consortium of over 30 world class research
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06.12.2021, Wissenschaftliches Personal The professorship of Data Science in Earth Observation is seeking six new PhD candidates/PostDocs for its new center for Machine Learning in Earth Observation