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Computer Vision and Computer Graphics techniques to digitize human avatars and garments in 3D. Within this project, your role is to advance our existing algorithms that reconstruct 3D garments from multi
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background Our group builds high-throughput experimental platforms that require the development of novel computational methods. Two example areas in which the candidate would contribute are described below. 1
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interdisciplinary study programmes. Candidates with background in biology, bioengineering, biotechnology or microbiology with experiences in method and technology development are welcome to apply as well
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prospect to obtain a PhD degree from ETH Zurich Multifaceted, applied work in a larger team with computer scientists and clinicians/microbiologists From bench to bedside: develop technology and methods
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of 17 doctoral candidates to address research challenges in coupled problems relevant to decarbonization, advanced simulation, sensing, and data-driven methods for energy and industrial systems
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position is to investigate methods and techniques for the planning, fabrication and construction of timber plate structures, with a particular focus on interdisciplinary collaboration. The project will
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. These positions are fixed-term for 24 months in the first instance, with a possibility for extension. Tuberculosis (TB) kills an estimated 1.25 million people each year, making it the single deadliest infectious
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Computational Design Lab and work at the interface of computer vision, computer graphics, hardware, and extended reality. The project is part of ETHAR, a new research initiative at ETH Zürich with a unique focus
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100%, Zurich, fixed-term Human–Computer Interaction in Architecture and Digital Fabrication This fully funded, full-time PhD position spans four years and is embedded within the interdisciplinary
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, transcriptional recording (Record-seq), and related technologies. Develop and apply statistical methods for demultiplexing, normalization/QC, effect-size estimation, biological inference, and predictive modeling