The main focus of DYNADIV Team is
tounderstand how biodiversity of tropical plants is shaped through evolutionary forces resulting from human and environmental impacts.

Its activity is essentially based on population genetics but also integrates a multidisciplinary approach including ecology, botany, molecular phylogenetics and anthropology. It is structured around three axes:
  • Evolutionary history & domestication;
  • Diversity & conservation;
  • Global changes, diversity & adaptation.
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1 to 10 of 157 Results
Sep 17, 2025
Kaczmarek, Thomas; Faye, Adama; Ilmi Ahmed, Aicha; Veltman, Margaretha; Thuillet, Anne-Celine; Scarcelli, Nora; Sultan, Benjamin; Vigouroux, Yves; Cubry, Philippe, 2025, "Testing the impact of environmental variables on the predictive performance of genomic offset statistics: crop-specific metrics computed from the EWEMBI v.1 climate dataset.", https://doi.org/10.23708/M9YGDC, DataSuds, V1, UNF:6:EdX+/x3auhCXDY0Q7OgZ4g== [fileUNF]
The ability of species and populations to adapt to their environment faces increasing challenges as climate change accelerates. Recent methods based on genomic offset (GO) statistics aim to quantify the risk of non-adaptation of populations to future climates. While several studi...
Network Common Data Form - 123.6 MB - MD5: 69a3987dbf4cc68d86230068ffeed8cc
Données
A NetCDF file with climate crop-specific metrics stored for each pixel (resolution 0.5°) located within a defined area covering West Africa.
Tabular Data - 508.5 KB - 185 Variables, 173 Observations - UNF:6:EdX+/x3auhCXDY0Q7OgZ4g==
Données
Precipatation, Temperature and radiation crop-specific climate variables computed and extracted from the EWEMBI (V1) dataset, for 173 populations of pearl millet.
Python Source Code - 6.7 KB - MD5: bebbb223232f0f478feb8cdcd2685b46
Code
A python script that extracts crop-specific metrics from the netCDF file, with a passport file containing geographical coordinates.
Plain Text - 1.8 KB - MD5: b4beefe745809f4a1f5ca15b1dba090f
Documentation
Contains citation, description and conditions of use of dataset data
Aug 27, 2025
Duminil, Jerome; Dupiol, Pablo; Chakocha Ngandjui, Armel Franklin; Tientcheu, Avana Marie Louise; Mariac, Cedric; Charahabil, Mohamed Mahamoud; Barnaud, Adeline, 2025, "Development of new microsatellites markers for Cola acuminata (Malvaceae), a socio-economically important fruit tree species in Central Africa", https://doi.org/10.23708/6FCSLF, DataSuds, V1, UNF:6:JjyY2CKXXeBPZvLKRN5hnA== [fileUNF]
Data from the publication "Development of new microsatellites markers for Cola acuminata (Malvaceae), a socio-economically important fruit tree species in Central Africa". Manuscript PJS_2_147801 Plant Ecology and Evolution. We developed a new set of nuclear microsatellite marker...
Plain Text - 1.3 KB - MD5: 74d25aa64ab14373c48e4b570ee3bd57
Documentation
Contains citation, description and conditions of use of dataset data
Tabular Data - 390 B - 2 Variables, 5 Observations - UNF:6:JkE4eofLBJ/AAoTufZI0Nw==
Documentation
Data dictionnary
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