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research group investigates the effects of different models of hypoxia (real and/or simulated) on central and peripheral physiological adaptations in both humans and rodents. The successful candidate is
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performance in the PhD course; articles in international journals on the subject of the fellowship project; experience in modeling, numerical simulations, and computational programs of chaotic particle
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for Molecular Engineering for Advanced Materials (CEMol) – a Research, Innovation and Dissemination Center (RIDC) funded by the São Paulo Research Foundation (FAPESP) and hosted by CNPEM. The fellow will work
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position within a Research Infrastructure? No Offer Description The research proposal aims to use machine learning, including large-scale language models, to analyze large datasets of smaller Solar System
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Characterization of Proteins of Bioluminescent Systems,” under the supervision of Prof. Vadim Viviani. The project is part of the FAPESP Thematic Project “Bioluminescence: biodiversity; metabolic origin; structure
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position within a Research Infrastructure? No Offer Description A post-doctoral position is available in the Laboratory of Structure and Function of Biomolecules within the Biology of Bacteria and
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summary, up to four pages, following this model https://fapesp.br/en/6351 ; 2. List of up to 5 of your main publications, with a brief description of the main results of each of these publications (maximum
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targets through the investigation of anti-inflammatory peptides derived from animal venoms. The activities involve exploring the biology of the peptides and their in vitro effects on cellular models
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and pasture phenotyping, focusing on the use of advanced remote sensing technologies as drones and satellite imagery. The fellow will develop phenotyping tools and protocols to identify traits
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to anthropogenic climate change. Nevertheless, these extreme events may be modulated by large-scale climate variability modes across a wide range of spatial and temporal scales. Using large ensemble multi-model