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information about us, please visit: www.dbb.su.se . Main responsibilities We are looking for a highly motivated staff scientist to join the In Situ Sequencing (ISS). While formally affiliated with DBB
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level in computational biology, physics, applied mathematics, computer science, bioinformatics, structural biology, or a related subject or completed courses with a minimum of 240 credits, at least 60 of
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cold solid tumors, remain resistant to current immunotherapies. A major goal in the field is therefore to develop new strategies that increase tumor immunogenicity and improve anti-tumor immune responses
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/or statistical modelling, demonstrated through thesis work and/or scientific publications. Solid programming skills, for example in Python (and/or R), and experience with relevant ML libraries (e.g
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information about us, please visit: www.dbb.su.se . Project description The goal of this project is to further develop the application of cryo-EM to detect and analyze different types of lipid asymmetries in
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. The future of life science is data-driven. Will you be leading the change with us? Then join us in this unique program! Subject description At the Department of Gene Technology, at KTH Royal Institute
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Giacomello. Examples of tasks: Design, perform, and optimize experimental workflows for ST, SmT and single-cell multiomics Prepare and process animal and plant tissue samples for spatial and sequencing-based
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university. More information about us, please visit: the Department of Biochemistry and Biophysics . Project description Project title: Perturbation-based Multi-omics Inference of Gene Regulatory Networks
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-school/ The future of life science is data-driven. Will you be part of that change? Then join us in this unique program! At KTH, we are announcing the position as DDLS PhD student in Data driven cell and
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. The project focuses on developing novel representation learning and generative modeling methods to construct a unified cellular morphology state space across heterogeneous datasets. By leveraging shared