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signal processing algorithms on FPGA, optimized to significantly improve the resolution of real-time energy measurements made by the ATLAS Liquid Argon Calorimeter system. Use novel high-level synthesis
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collaboration with industry partners. This work will apply optimal control theory, including machine-learning algorithms and Bayesian estimation, to coherent control of nitrogen-vacancy centers in diamond
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, Medical Education, the Office of Learner Affairs (OLA) is dedicated to working with and supporting learners from the Temerty Faculty of Medicine’s undergraduate medical education (MD and MD/PhD
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in OPMD iPSCs-derived muscle cells and in a mouse model of OPMD. The series of preclinical experiments will include developing and optimizing different RNA cargos, differentiating iPSCs into muscle
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given uncertain metal supply from orebodies and commodity demand. Stochastic optimization techniques in mine design and production scheduling. Uncertainty quantification and orebody representation
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the Mitochondrial Innovation Initiative (www.mito2i.ca ). Qualifications include a PhD in a relevant field of biomedical or life sciences with a minimum of 1-year postdoctoral experience in mitochondrial research and
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, computational approaches, and AI applications. Assist in the design, implementation, and validation of data management frameworks for D2R-HeDS projects. Work with research teams to develop and optimize
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. The project will optimize fishing practices to reduce ecological impacts, providing actionable insights to inform policy decisions that balance economic performance with environmental conservation. Project
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to geometallurgical modelling. Additional drilling, reserve classification, grade control and mine planning optimization. Risk quantification in life-of-mine production schedules. Course description: https
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University of British Columbia | Northern British Columbia Fort Nelson, British Columbia | Canada | about 1 month ago
on developing mathematical models and control theory tools to support sustainable fisheries management. The project will optimize fishing practices to reduce ecological impacts, providing actionable insights