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) the theoretical development, and ii) empirical application of procedures to correct for the measurement error and underreporting in IPD-MA. Qualifications/ Requirements A statistician/ biostatistician with
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Fellowship aims to deepen the Government of Canada’s knowledge about China, and to foster the development of the next generation of policy-focused China experts who will be at the forefront in academia
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join the Tang Lab. The Tang Lab (https://tangxinlab.org/ ) develops explainable, autonomous, and multimodal artificial intelligence (AI) systems to advance biological discovery. Our research integrates
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Department of Computer Science and the Data Science Institute. Learn more about the lab and its research here: https://nunez-comp-mental-health-cancer-care.github.io/ . RESPONSIBILITIES Reporting to Dr. John
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Postdoctoral Fellow to join the Tang Lab. The Tang Lab (https://tangxinlab.org/ ) works at the intersection of AI-driven automation, self-driving laboratories, and scientific discovery, in close collaboration
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to the development of further grant applications. Other activities as required. Job Qualifications: Completed a Ph.D. within the last 3 years in a relevant discipline (e.g. gerontology, nursing, medical anthropology
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have developed (https://doi.org/10.1158/0008-5472.CAN-22-3620 and https://doi.org/10.1101/2024.11.30.624592 ). More specifically, the incumbent will Design and carry out experiments to understand
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mission: concept, scientific objectives and data products. Bull. Amer. Meteor. Soc., BAMS-D-23-0309.1, https://doi.org/10.1175/BAMS-D-23-0309.1, in press. The HAWC Science Development Team (SDT) is jointly
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on Indigenous Knowledge Systems. https://abundant-intelligences.net/ . The Toronto pod is comprised of faculty from OCAD University and York University in close partnership with collaborating institutions
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evidence from diverse sources, analyze international survey data, and contribute to the development of a conceptual framework that captures the multi-level and intersectional nature of stigma. Findings from