Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
position within a Research Infrastructure? No Offer Description Applications are open until April 30, 2026, for one (1) post-doctoral fellowship in Cultural Visual Accessibility, linked to the Center
-
, graphs); experience with analysis and processing of large volumes of data; development of reproducible scientific software; proficiency in Python and libraries (Pandas/NumPy and PyTorch/TensorFlow/Scikit
-
position within a Research Infrastructure? No Offer Description Activities: This research investigates the use of artificial intelligence in developing data visualization systems for born-digital collections
-
identifying systemic events in the Brazilian Interconnected Power System (SIN). In addition, the project proposes the development of a processing and graphical visualization platform based on Grafana, enabling
-
characterization (immunofluorescence – IF, immunohistochemistry – IHC and flow cytometry), functional cell assays (migration, invasion) and application of radioisotope techniques aimed at molecular analysis and the
-
-concentration purposes). Analytical platforms will be applied in environmental and food analysis, among other applications. Mandatory requirements: PhD in Sciences (areas: Analytical Chemistry or Materials
-
position within a Research Infrastructure? No Offer Description The project involves the use of models for the hydrological and environmental analysis of watersheds, as well as for assessing the impacts
-
the state of São Paulo (Brazil), using Light Detection and Range-LiDAR profiling data covering the entire state. LiDAR technology will enable a detailed analysis of forest structure, while deep learning
-
based on document analysis and interviews with pre-selected candidates. This opportunity is open to candidates of any nationality. The selected candidate will receive a FAPESP Post-Doctoral fellowship in
-
, and citizenship); - Experience in building and organizing databases using international, national, and local data sources; - Experience in quantitative data analysis; - Work schedule and location: a