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. Candidates must have a proven track record of scientific achievement in graduate and/or postdoctoral studies. Experience in cell culture, molecular biology techniques, fluorescence microscopy, and animal
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staff position within a Research Infrastructure? No Offer Description The Center for Plant Molecular Breeding (CeM²P), an Applied Research Center (ARC) jointly supported by the São Paulo Research
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staff position within a Research Infrastructure? No Offer Description The Stochastic Systems Modeling project in São Paulo state, Brazil, is recruiting one post-doctoral fellow in the fields
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staff position within a Research Infrastructure? No Offer Description The Stochastic Systems Modeling project in São Paulo state, Brazil, is recruiting one post-doctoral fellow in the fields
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staff position within a Research Infrastructure? No Offer Description The post-doctoral position is part of the project “Integrated Modeling and Predictive Analysis of Flood Risk under Distinct
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assays of proteins from bioluminescent systems. Candidates should have proven experience in molecular biology, heterologous protein expression and purification, enzymatic assays, and familiarity with
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the maintenance of tick colonies, molecular biology, cultivation of fastidious bacteria and blood sampling from small animals. The required registration documents are: 1) Curriculum Vitae. List of publication in
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experience in molecular biology is required, especially in techniques such as DNA/RNA extraction, PCR and genomic analysis, as well as experience in data analysis using bioinformatics tools. Knowledge of next
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collaboration with physicians from Hospital das Clínicas (HC), the hospital complex run by the University of São Paulo's Medical School (FMUSP). Candidates must have previous experience in molecular microbiology
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or abroad, in Soil Science, Remote Sensing, Environmental Sciences, or Pedometrics; - Proven experience in pedometrics, soil remote sensing, predictive soil modeling, soil organic carbon, and data science