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approaches and research themes here: www.scilifelab.se/researchers/lisandro-milocco/ This project leverages the rise of data-driven dynamic modeling—from fluid dynamics to ecosystem studies—to uncover
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lab and instruments clean and organized, as a postdoctoral researcher in the group you need to be able to be a role model in that sense. You must be very organized and systematic in your work. As an
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Cell initiative is a new flagship research program aiming to develop an AI model of a human cell to predict key cellular functions. It is funded by the Knut & Alice Wallenberg Foundation (KAW) and
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-throughput measurements of molecular binding with simulations and quantitative modeling to gain a physical understanding of life at the molecular level. We are recruiting a Postdoctor that wants to use and
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advanced biostatistics/machine learning analyses, but also with other types of analysis. The work involves supporting Swedish researchers under a “user fee-based” support model. The projects will differ in
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, and analysis. Mentoring MSc, PhD students, and postdoctoral researchers in toxicology and related methods. Maintaining and managing laboratory equipment, and ensuring compliance with chemical and
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, research vessels, and marine modelling resources. In addition, the BSC plays a coordinating role with SU for activities conducted at the Centre for Coastal Ecosystem and Climate Change Research (CoastClim
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Department of Ecology We are looking for a postdoc/researcher to develop and implement tools for analysis of output from Bayesian inference under phylogenetic models About the position A postdoc
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for phylogenomic analysis. Together with other team members, you will also be developing and implementing the evolutionary models used in the phylogenomic analyses, and in interpreting and publishing the results
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well as modelling strategies to answer fundamental biology issues with advanced light microscopy data. The lab’s research scope ranges from reinforcement learning for drug design, interpretable ML pipelines