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large language models. Project background Language is a skill unique to humans among other animals. However, little is known about the neurophysiological processes that enable the construction of complex
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codebase used for training large generative neural network models. This role requires a strong background in machine learning, software development, and the ability to work collaboratively in a research
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to engineer human cells and develop advanced gene and cell therapies targeting cancer, as well as metabolic, neurodegenerative, autoimmune and infectious diseases. For more information, please consult our
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have collected large amounts of long read sequencing data (PacBio HiFi) to build genome assemblies and integrate them into pangenomes . This allowed us to investigate the distribution of structural
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large scale for assessing and estimating mass balance. The second topic centers on the characterization and identification of glacier crevasses and their dynamics over time through high-resolution SAR
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) necessitate advanced software capabilities. Key functionalities of the HoloPython tool will include: Efficiently handling and managing large data volumes. Performing numerical reconstruction of holograms
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80%-100%, Zurich, fixed-term Our research group on Law, Economics and Data Science at the Center for Law & Economics is looking for a highly motivated Data Science Research Assistant to develop and
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field experiments in collaboration with policy makers in Switzerland. You will be involved and can develop your skills in: Collection of large scale administrative and survey data Managing, cleaning, and
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(IVT) at ETH Zurich intends to develop scalable optimization systems for operational support in large-scale road networks. Modeling and simulation are powerful tools for the development and validation
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of complex and large-scale biological data through the design and application of novel computational approaches. The DBC is looking for a scientist in the early stage of their career but with a proven track