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. The fellow wll be based at the University of São Paulo's School of Arts, Sciences and Humanities (EACH-USP) in São Paulo city, Brazil. Objectives - Develop a theoretical and analytical contribution
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) Mechanistic understanding of ncRNAs in host-parasite interactions and parasite metastasis. Candidates must hold a PhD in Molecular Biology, Cell Biology, Genetics, or Biochemistry and must have prior knowledge
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must hold a PhD in astronomy/astrophysics (awarded within the last 7 years), with experience in stellar astrophysics, survey data analysis, or machine learning, and strong programming skills
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scholarship (R$ 12,570.00), which will be valid for two (2) years. The fellowship includes a research contingency fund equivalent to 10% of the annual value of the fellowship which should be spent on items
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the São Paulo Research Foundation (FAPESP) and the National Natural Science Foundation of China (NSFC) involving UNICAMP and Zhejiang University. Candidates must have defended their PhD less than 7 years
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the implementation of case studies to test and evaluate the developed systems; 4. Support in supervising the Technical Training scholarship holders responsible for system development. The fellow will work within the
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Foundation (FAPESP) and the Brazilian Agricultural Research Corporation (EMBRAPA) and based at the State University of Campinas (UNICAMP), is accepting applications for a post-doctoral fellowship in sugarcane
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staff position within a Research Infrastructure? No Offer Description - PhD in Pharmacology, Physiology, Neuroscience, Physical Therapy, Pulmonology, or a related field; - Full-time dedication
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of Python programming and machine learning tools, deep learning, and large language models is desirable. The fellow will be based at the Engineering College of the São Paulo State University (UNESP), in its
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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