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Remote Sensing; Machine Learning Models for Predicting Wildfire Spread; Wildfire Risk Assessment Through Multi-Modal Data Integration; Automated Vegetation and Fuel Load Mapping Using Computer Vision; AI
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, remuneration level 33, which corresponds to the amount of €2,408.11. IV - Modality and duration 1. The opening of this tender procedure is intended for the selection of a doctoral candidate to carry out
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dynamic team of clinicians and research scientists. The candidate is responsible for developing and investigating longitudinal and multi-modal AI models for deformable image registration and dose
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software for data analysis and integration with other modalities. Performance Objectives Successful candidates will develop research methodologies, collaborate with investigators across the health sciences
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: Assist in the distribution, collection, organization, and analysis of program data. Coordination with other units: Coordinate with school and college-based offices that oversee undergraduate research
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) - email : antoine.berthet@centralesupelec.fr – web : https://scholar.google.com/citations?user=jxMJvuUAAAAJ&hl=en Bibliography: [1] J. Federici and L. Moeller, “Review of terahertz and subterahertz
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-cell and bulk transcriptomics, mutant screens and transformation approaches to identify signalling pathways and regulatory components. You will analyze data and integrate multi-modal datasets by applying
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diagnostic and therapeutic modalities to impact these disorders. Job Summary The Moellering lab is seeking an experienced Chemical Biologist to work on projects including, but not limited to, proteomic
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; assisting with data analysis; assisting with preparation of reports and tables; attending team meetings; and performing other duties as assigned. The final salary and offer components are subject to
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, and preparation of the collected data; collaboration in the preliminary analysis of the data and in supporting the dissemination of the project’s scientific and technical results. 5. Applicable