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group (DSB), Section for Machine Learning, Department of Informatics at the University of Oslo. The DSB research group has seven full-time and five adjunct positions. We perform research over a wide range
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. Strong (inter-)national network in field of application. Experience with high-performance computing (HPC) and large datasets. Experience with machine learning applied to geophysical signals. Experience in
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well as the Horizon Europe project High-Performance Language Technologies (HPLT). The group represents extensive experience and expertise in web-scale data curation, development of large language models (LLMs), and in
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statistical physics, solid mechanics, or fluid mechanics Experience with data-driven modeling, parameter estimation, or model calibration Familiarity with high-performance computing or large-scale simulations
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characterization and kinetic studies will be performed to test computational predictions and microkinetic models, and to refine machine learning models. The successful candidate will collaborate with other groups in
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the user for location-privacy. Software lies at the core of all IT-systems. The Programming Section, in which the candidate should be integrated, performs research and teaching on how to develop high quality
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separation and cosmological parameter estimation, and high-performance computing. This work will also take place within the larger Cosmoglobe framework, and there will be ample opportunities to explore
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collaboration. The successful candidate will be exposed to and trained in both low-level instrumental modeling, high-level component separation and cosmological parameter estimation, and high-performance
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frameworks). Experience working with large HPC-produced datasets and/or high-performance computing environments. Experience in compiled languages and performance-oriented environments (e.g., Fortran/C/C++ and
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PhD Research Fellow in Theoretical and Computational Active Matter Physics for Glioblastoma Invasion
with high-performance computing or large-scale simulations Interest in close collaboration with experimental researchers Language requirement: Good oral and written communication skills in English