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with a PhD in Biology, Ecology, Geosciences, Earth System Science, Environmental Sciences, or related fields and proven experience in computational modeling of vegetation to conduct research
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position within a Research Infrastructure? No Offer Description This post-doctoral fellowship is intended for the development of a comparative study on international models for addressing and managing open
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staff position within a Research Infrastructure? No Offer Description We are looking for a post-doctoral researcher to work on the development of a multiscale reservoir simulator using the finite element
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sciences, engineering, or a related field; • Strong publication record; • Experience in sustainability assessment and quantitative modeling; • Professional proficiency in English, Portuguese, and/or Spanish
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staff position within a Research Infrastructure? No Offer Description A Post-Doctoral (PD) Fellowship is available at the Laboratory of Neuropathology and Myology in the State University of Campinas's
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/IQCKK_aEzxFyQa0GgwfZIw9rATX5DPUGj_16Um3gaB5p7UU?e=NZsYIq . This opportunity is open to candidates of any nationality. The selected candidate will receive a FAPESP Post-Doctoral fellowship in the amount of R$ 12,570.00 monthly and a research
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staff position within a Research Infrastructure? No Offer Description A post-doctoral position funded by FAPESP is available at the State University of Campinas's Institute of Computing (IC-UNICAMP), São
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Paulo's Medical School (EPM-UNIFESP) in Brazil, is offering a post-doctoral fellowship to investigate the associations between obstructive sleep apnea, microbiota, and male reproductive function
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advantageous. Strong English communication skills are required. Duration: 48 months. Fellowship: FAPESP Post-Doctoral Fellowship (R$ 12,570/month + 10% technical reserve exclusively for research-related expenses
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dataset generation technique to optimize the training of neural networks (NNs) for seismic data prediction. The use of neural networks to predict seismic velocity models has shown increasingly accurate and