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721 to 730 of 1,255 Results
Unknown - 36.0 KB - MD5: b093f653351328e2fd1b502b146da9b8
Climatic data reported during the 2015-2016 wheat cycle in Obregon, Sonora (Mexico).
Unknown - 31.4 KB - MD5: 3915bfa4f59509a998378ffa49359825
Climatic data reported during the 2016-2017 wheat cycle in Obregon, Sonora (Mexico).
Unknown - 729.5 KB - MD5: 331e639b848cc953a4445266cd43886b
Germplasm 2016
Lists of Germplasm related to IWYP projects sown in Obregon season 2015-2016
Unknown - 630.6 KB - MD5: 4c54a4951a63dc659dc947941819c757
Germplasm 2017
Lists of Germplasm related to IWYP projects sown in Obregon season 2016-2017
Oct 10, 2017 - CIMMYT Research Data
Montesinos-López, Osval A.; Montesinos-López, Abelardo; Crossa, Jose; Montesinos-López, José Cricelio; Mota-Sanchez, David; Estrada-Gonzalez, Fermin; Gilberg, Jussi; Singh, Ravi; Mondal, Suchismita; Juliana, Philomin, 2017, "Prediction of multiple-trait and multiple-environment genomic data using recommender systems", https://hdl.handle.net/11529/11099, CIMMYT Research Data & Software Repository Network, V2
In genomic-enabled prediction, the task of improving the accuracy of the prediction of lines in environments is difficult because the available information is generally sparse and usually has low correlations between traits. In current genomic selection, while researchers have a...
Unknown - 19.1 KB - MD5: f543faa4b1f3c7b38397ae6e5309da2d
Phenotypic data
Phenotypic wheat data
Unknown - 369.0 KB - MD5: 6a64605058cc14524a8bf9a0c96b6025
Genotypic data
Genotypic maize data
Unknown - 451.4 KB - MD5: bbbc8321e114ab9d957ccfd220ace5be
Genotypic data
Genotypic wheat data
Unknown - 380.1 KB - MD5: f2bbc7f000c4b5437f5191a0b51693e7
Phenotypic data
Large phenotypic wheat data
Unknown - 7.5 KB - MD5: 93f6462433c6f1f0f693820679f71ea9
Phenotypic data
Phenotypic maize data
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