Sort by
Refine Your Search
-
Brazilian or foreign researchers holding a PhD in Statistics, obtained in Brazil or abroad, with proven experience in Survival Analysis and/or Reliability, and the ability to propose and validate new
-
(ICP-OES), mass spectrometry or graphite furnace atomic absorption spectrometry (GF-AAS); 3) Experience in data analysis and statistical tools: cluster analysis and principal component analysis; 4
-
and electronic states; • Inductively coupled plasma techniques (ICP-OES/MS) for compositional and elemental analysis. - Familiarity with advanced characterization methods at large-scale facilities
-
staff position within a Research Infrastructure? No Offer Description The call is aimed at researchers with proven experience in research and extension in public policy analysis and Agroforestry Systems
-
developing projects that involve both data collection and data analysis using the group’s extensive datasets, with themes related to fire, open ecosystems, and functional ecology. Responsibilities: organize
-
fellowship funded by the São Paulo Research Foundation (FAPESP). The research will focus on the molecular analysis of muscle tissue samples from systemic autoimmune myopathies (SAM). Activities - Management
-
. The post-doctoral fellow will be responsible for image acquisition, analysis, interpretation, and sample collection, data integration, and development of technical protocols. The selected candidate will
-
of Artificial Lift Operation”, considering data analysis (time series analysis) to identify failures and damages in the artificial oil lifting process. The fellow will work within the scope of the Energy
-
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
-
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