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mapping, GIS and drone photogrammetry for 3D results of specific case studies. This role directly contributes to the development of a high-resolution comparative spatial atlas of long-term refugee camps by
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across HHMI. The Foundational Microscopy Image Analysis (MIA) project sits at the heart of AI@HHMI. Our ambition is big: to create one of the world’s most comprehensive, multimodal 3D/4D microscopy
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). Experience with volumetric 3D/4D microscopy data analysis tools. Experience with high performance compute environments (cloud-based and slurm/lsf clusters). Clear, proactive, and efficient communication style
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Sorbonne Université SIS (Sciences, Ingénierie, Santé) | Palaiseau, le de France | France | about 2 months ago
employ a 3D dynamical model called a Cloud-Resolving Model (CRM). It is a non-hydrostatic atmospheric model simulating a rather small, local domain (a few hundred kilometers across, to be compared
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computer programs, e.g. Revit, CAD, Adobe Creative Cloud, 3DS Max, 20/20, CED Designer, Enscape, virtual reality/augmented reality. Proposed Salary Commensurate with experience. This is an exempt position
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Overview: RMIT UNIVERSITY COMMITMENT RMIT is committed to the rights of students and staff to be safe, respected, valued, and treated as an equal in their place of study and work. All staff
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assist others with NVIDIA DGX playbooks and high performance computing tasks. Onboard users into our HPC environment (MSI) and cloud platforms (AWS, Azure) Serve as an on-site point of contact for student
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towers; Participation in the elaboration of requirements; Development of a 3D vision system; Processing using artificial intelligence; Fusion of depth maps to obtain point clouds and visualization
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research and teaching interests align with one or more of the following critical areas: Computer Architecture – including In-/near-memory or in-/near-storage processing, circuit/technology impacts (e.g., 3D
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) Application and further development of deep learning methods for automated object recognition and classification in point clouds and 3D data Establishment of a data processing pipeline for the efficient