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), spatial transcriptomics and super-resolution (SIM, STORM/PALM) microscopes; will contribute mainly to microscope user training and to a lesser extent to image analysis; and will participate in the teaching
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Research / Student Assistant in the International Political Economy and Environmental Politics group
such as questionnaires, codebooks and technical reports. In addition to that you will also support the teams with data analysis and reporting to third party stakeholders such as the Federal Office for
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partnerships around the challenges associated with future mobility. Project background This project aims to advance immersive spatial data analysis by integrating 3D representations, cartographic methods, and
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), material flow analysis (MFA), and statistical analysis. In particular, the following tasks will be performed in collaboration with the two doctoral students: modeling of the embodied and operational energy
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), material flow analysis (MFA), and statistical analysis. In particular, the following tasks will be performed in collaboration with the two doctoral students: modeling of the embodied and operational energy
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cleared samples), multiplexed (seqFISH), spatial transcriptomics and super-resolution (SIM, STORM/PALM) microscopes; will contribute mainly to microscope user training and to a lesser extent to image
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, statistics, physics, or mathematics with strong interest in biology Demonstrated experience in analyzing genomics or other high-throughput biological datasets Experience with analysis of proteomics or spatial
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, computer clusters and stereographics, spatialized 3D audio rendering Experience with DCC softwares (Blender, Maya, Substance, etc) Experience with Unity Expertise in 3D graphics, shader language, and
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technologies (e.g., single-cell omics and spatial technologies), computational methods development, and researchers and clinicians at UNIL-CHUV, with the ultimate goal to use the power of the immune system
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single-cell level using nanopore sensors. The approach is the first of its type that can potentially address important biology questions at single-cell level and with a much higher temporal and spatial