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The Franciszek Górski Institute of Plant Physiology Polish Academy of Sciences | Poland | 7 days ago
Description Competition for the position: Post-doc position for the implementation of the Sonata 20 research project funded by the Polish National Science Centre at The Franciszek Górski Institute of Plant
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applications for the position of at the Faculty of Mechanical Engineering Research Assistant Professor (POST-DOC) under the NCN project No. UMO-2024/53/B/ST8/02908: “Optimization of hydrogen oxy-combustion and
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focuses on single-cell genomics, biotechnology, and bioinformatics. The project involves transcriptomic and genomic profiling of single microbes. The post-doc will work on machine and deep learning methods
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efficiency, and resource utilization. Strong expertise in machine learning, deep learning, and advanced time series modeling Additional education in economics (e.g., a completed Master’s or postgraduate degree
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, particularly radionuclides, on a continental scale. The aim is to develop a new class of inverse Bayesian models, STE-EU-SCALE, combining innovative forward dispersion models, machine learning techniques, and
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a degree of Master of Science, Master of Engineering, medical doctor or equivalent in the field of: exact sciences, natural sciences, medical sciences or related disciplines, granted by a Polish or
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institution, title, contract number, project PI) Where to apply E-mail karolina.swiderska@pwr.edu.pl Requirements Research FieldChemistry » OtherEducation LevelPhD or equivalent Skills/Qualifications
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the project is the development of AI-based pipelines for detecting, segmenting, and classifying lichen communities. Convolutional neural networks (e.g., U-Net, DeepLab) and machine-learning algorithms (e.g