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data from live imaging and spatially resolved gene expression profiling. The work of the PhD fellow will be theoretical and computational in nature and will include: Developing minimal active-matter
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received after the review date will only be considered if the position has not yet been filled. Position description The Spatial Climate Solutions Lab at the University of California, Santa Barbara, is
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atmospheric CO₂ and co-emitted species with inventories to improve them. Develop clustering methods to compare data under similar atmospheric conditions. Analyze spatial and satellite data to assess urban
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. This interdisciplinary initiative includes professors Marjo Saastamoinen (biodiversity), Anna-Liisa Laine (biodiversity), Jarno Vanhatalo (statistics), Lassi Ahlvik (environmental economics) and Kari Hyytiäinen
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Applicable Driver's License: A driver's license is not required for this position. More About This Job Preferred Qualifications: Master’s degree or PhD in statistics, bioinformatics, computational biology, or
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associate to carry out research on machine spatial reasoning. The appointment is for one year, renewable for a second year, given the availability of funds. The focus is on developing tools for characterizing
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methods; statistical methods, geoinformatics (including spatial econometrics), AI methods (e.g. NLP methods - Sentiment Analysis, Topic Modelling, Discourse analysis), visualization methods, as
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emission') et des corrélations spatiales inexpliquées entre des points d'émission distants. Dans ce contexte, une approche moléculaire est complémentaire aux barrières d'oxydes métalliques largement étudiées
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-performance computing equipment. Learn more about why McGill is an exciting place to work: https://www.mcgill.ca/careers/why-mcgill Under the direction of the Bioinformatics Manager, the Bioinformatics Analyst
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and Statistics we conduct research within the theory and implementation of biomathematics, biostatistics, spatial modeling, differential equations, Bayesian inference, large-scale computational methods