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purpose including a proposal for development based on the project (available at: News – https://www.cosmopoliticasdocuidado.net/ ), and a Curricular Summary using the model established by FAPESP (the São
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(“Autonomous System for Hybrid Hyperspectral-SAR Monitoring in Precision Agriculture”, Supervisor Prof. Hugo Hernández Figueroa, and “Development of Methodology and Robust Operational Algorithms for Hybrid
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Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description The main activities to be developed by the postdoctoral researcher
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experience in Hyperbolic Partial Differential Equations (PDEs) (or more generally in evolution equations) in the sense of Petrowsky, and who have defended their PhD for a maximum of 6 years. Selection criteria
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available to develop the project “Endothelial Dysfunction in Hypertensive Disorders of Pregnancy” in Botucatu, São Paulo state (Brazil) supported by the São Paulo Research Foundation (FAPESP 21/12010-7) and
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: • Bachelor's degree in Economics and/or Social Sciences; • Doctoral dissertation focusing on PNRA Rural Settlements; • Research experience in Public Policy; • Research experience in Technological Development and
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using methodologies recently developed by our group; and (3) exploring the star–disk interface through LSST light curves, spectroscopic and polarimetric follow-up, and hydrodynamic simulations. Candidates
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Be stars via AI/ML tools applied to LSST multi-band data; (2) characterizing disk formation and dissipation events using methodologies recently developed by our group; and (3) exploring the star–disk
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Foundation (FAPESP, Grant nº 2024/15681-8), under the supervision of Prof. Dr. Carlos Eduardo Paiva. The project investigates postmenopausal luminal breast cancer (HR+/HER2-) and aims to develop predictive
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to be developed by the postdoctoral researcher will focus on proposing an innovative approach based on semantic segmentation with deep neural networks for the identification of multiple facies classes in