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documentation. Develops integrative models of radiation response through the combination of genotype and biomarker data. (Raman, blood marker etc.) Facilitates processes for data transfer and collaboration by
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values of Integrity, Excellence, Respect, and Creativity. This position is part of our Intelligent Cell Simulation System project, which focuses on developing artificial intelligence (AI)-driven models
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modelers, and policymakers working in a data-rich environment with many learning and development opportunities. This position is a great learning opportunity for Hepatitis C surveillance, policy development
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expected to have experience in one or multiple of these skills: Atmospheric modelling, Analysis of atmospheric satellite measurements, Programming in Fortran, and Matlab or Python on Linux systems. To Apply
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in programming with languages commonly used in AI development (e.g., Python, R, Java, C++, JSON). Experience in designing, developing, and evaluating AI/Machine Learning models. Excellent analytical
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to develop deep learning models for analyzing whole-slide histopathology images, as well as natural language processing (NLP) methods for clinical records such as pathology reports and electronic health data
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: Experience working with adaptive optics systems (laboratory or on-sky). Experience with simulation tools used to model adaptive optics systems. E.g. HCIpy, OOPAO, OOMAO Experience with optical design tools
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including patient-derived pre-clinical models, tumour tissue biobank, tumour genome and transcriptome sequencing, and the development of clinical studies. As a multidisciplinary centre, Pancreas Centre BC
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electronic or vibrational strong coupling. The Postdoctoral Fellow is expected to conduct cutting-edge research in the design, fabrication, modeling and characterization of the plasmonic quantum sensors
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these challenges. The Fellow will use predictive AI models that link photoresin formulation, printing conditions, and print fidelity, leveraging NRC’s extensive TVAM dataset. These insights will guide the design of