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through applied research programmes. Faculty in the ICT Cluster undertake funded industry-relevant research, teach courses in Computer Science, Computer Engineering, Information Security and Software
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applications for the process industries with particular emphasis on delivering step change improvements in process performance; Informatics for process and product development with a background in big data
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emphasize multi-wavelength survey science, the galaxy-halo connection, cluster cosmology, and large-scale cosmological simulations. Analysis efforts cover topics such as CMB power spectra, CMB lensing, galaxy
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well as with Computer Science in general (algorithms and data structures, programming languages, software engineering). In addition, collaborations with the VSC (Vienna Scientific Cluster) and subsequently with
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developing new machine learning methodologies that tackle unique computational problems in healthcare applications. We use large real-world complex datasets, including data extracted from electronic health
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biological information processing Working Environment Modern computational infrastructure with access to high-performance clusters Collaborative environment at Institut Pasteur’s vibrant campus in central
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translational research. Machine Learning, Statistical Modeling & Informatics Research Apply ML/AI approaches for pathogenicity prediction, phenotype clustering, or multimodal data modeling. Support translational
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, Consortium for Latino Health Studies, Big Data Health Science Center, and SmartState Centers. The University has been designated by the Carnegie Foundation as a “doctoral institution with highest research
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, Computer Science, or related field. Five (5) years of experience in genomic data processing, variant annotation, or large-scale data analysis. Proven leadership in pipeline development, variant
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posts,PHD Thesis Starting date: 30.10.2025 Job description: DESY Foundation models are multi-dataset and multi-task machine learning methods that once pre-trained can be fine-tuned for a large variety of