77 phd-studenship-in-computer-vision-and-machine-learning Postdoctoral positions in Canada
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, including the job posting number their resume a summary of their PhD dissertation (1 page) a research proposal (2-3 pages) with explicit mention of: research steps and timeline alignment with Activator’s
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in place for this fellowship opportunity. The Canada Postdoctoral Research Award (CPRA) program recognizes and supports the next generation of outstanding innovators, knowledge workers, creative
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Qualifications: PhD in Chemistry Before applying, please note that to work at McGill University, you must be both authorized to work in Canada and willing to work in the province of Quebec at the campus where
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with multivariate statistics, machine learning, and/or remote sensing would be an asset. Experience and education: Ph.D. degree in geography, agriculture/agronomy, environmental science, or a related
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group, founded in 2021, is dedicated to advancing our understanding of the neuronal mechanisms of learning and decision-making. We are particularly excited to recruit a promising scientist to investigate
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execution of Methods Think Tank sessions and working groups, including structured discussions on novel trial designs and implementation science approaches Qualifications: PhD in a health-related discipline
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://www.schenlabuottawa.com/ Key Responsibilities: Lead a project that identifies the roles of specialized gene expression programs in distinct excitatory and inhibitory neuron subtypes during motor learning. Utilize in vivo
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identifying avenues to escape these traps. Qualifications: The successful candidate will have:-A PhD by the time they begin the position.-A background in group concept/interrelationship mapping and/or network
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working with Environment Canada to build better species distribution models that include species interactions and connectivity. The postdoc will develop professionally by learning new statistical techniques
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: Work on a research project in the general area of Materials and Structures reporting to Professor Damiano Pasini. Investigate and develop reprogrammable metamaterials. Computational design of