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of birth, citizenship, civil state, current residence, identification number as well as the institution conferring the degree and the final classification. Candidates may submit their applications in
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., deep learning methods, multimodal AI) for the automatic identification of behavioral cues during ecological interactions with people and the environment and analyses of video and speech/language data
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conditions: Scientific Area: Agro Sciences, Agro and food Biotechnology Admission requirements: Have a Master degree, as well as knowledge in microbiology and bioinformatics, including identification
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strong command of data wrangling, cleaning, and large-scale dataset management. Machine Learning/Deep Learning: Experience with PyTorch, TensorFlow, or Hugging Face; embedding models; and model validation
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computing on high-performance supercomputers such as Saga and LUMI to accelerate drug candidate identification. The position may include secondments to industry partners for biophysical analyses (X-ray
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. Demonstrated experience applying machine learning and AI-based approaches to empirical disease, ecological, or biological datasets, with an emphasis on pattern identification, prediction, or spatial risk mapping
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for learning about models from data, 2) incorporation of expert knowledge in model building through Bayesian prior elicitation, and 3) develop new methods for identification of conflicts in different parts
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tooling, and full-scale prototyping. RA2) 3D Concrete Printing: Computational design and robotic fabrication of concrete structures, including performance-driven control of deposition paths, development
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datasets, specifically in the areas of RNA-seq and/or pan-genomic analysis. Proficiency in the R or Python programming languages, familiarity in Bioconductor packages and Linux command line. Informal
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their own research in algae collection and in experiments related to filamentous algae culturing at various scales and in controlled environmental conditions. Contributions to grant proposal and research