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models, threat mitigations, and system-level architectures to support trustworthy and fail-operational task offloading. Responsibilities: Conduct research in security-aware real-time offloading in
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biological systems, also in collaboration with other researchers and companies. Your profile Applicants should hold a PhD in Computer Science, Computer Engineering, Artificial Intelligence, Physics
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backgrounds in: Civil, Architectural, and Environmental Engineering, Computer and Software Engineering, Computer Science, or a related discipline such as Mechanical Engineering. Candidates must have completed a
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management systems BMS architectures against cyber threats, ensuring system safety, reliability, and performance through advanced security techniques. You will work on a European-funded project. Job
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, Sep; 34(17-18):1190-1209; Nature, 2019, Mar; 567(7746):113-117; Cell Stem Cell, 2018, Oct 4; 23(4):557; NatureCommunications, 2017 Nov 15;8(1):1523; The EMBO Journal, 2016 Jan 4;35(1):24-45; J Cell
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, 2020, Sep; 34(17-18):1190-1209; Nature, 2019, Mar; 567(7746):113-117; Cell Stem Cell, 2018, Oct 4; 23(4):557; Nature Communications, 2017 Nov 15;8(1):1523; The EMBO Journal, 2016 Jan 4;35(1):24-45; J
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should hold a PhD in biotechnology, biochemistry, chemical engineering, biomedicine or a related field. Experience in the following areas will be considered advantageous: Enzymology and carbohydrate
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architecture, Design experiments, collect data, and validate ideas in collaboration with the broader engineering team. Profile and requirements The candidate will participate in research and development
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researchers to analyze gene expression patterns within intact tissue architectures. By preserving the spatial information of RNA molecules in biological samples, this technology provides insights into gene
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Natural Language Processing, Machine Learning, or a similar area. Expertise in large language model architectures and training paradigms (transformer models, fine-tuning strategies, RLHF, etc.). Interest in