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Tabular Data - 2.1 KB - 3 Variables, 21 Observations - UNF:6:jGj7mr4ISP6sR59iIE/x+w==
Tabular Data - 3.3 KB - 5 Variables, 48 Observations - UNF:6:p/R6MC/eT+oH2fo4cfJlxw==
Information about the variables captured in the experiments
Sep 21, 2020 - CIMMYT Research Data
Hodson, David P.; Jaleta, Moti; Tesfaye, Kindie; Yirga, Chilot; Beyene, Habekirstos; Kilian, Andrzej; Carling, Jason; Disasa, Tesfaye; Alemu, Sisay Kidane; Daba, Tadessa; Alemayehu, Yoseph; Badebo, Ayele; Abeyo, Bekele; Erenstein, Olaf, 2020, "Wheat National Survey for DNA fingerprinting in Ethiopia", https://hdl.handle.net/11529/10548514, CIMMYT Research Data & Software Repository Network, V1
This dataset include data from a national wheat survey in Ehiopia in 2016 during the main season for a DNA fingerprinting study. The data contain wheat varieties genotyped using DNA fingerprinting (DNA FP), farmers recall survey and matching of DNA FP with farmers recall.
Sep 19, 2020 - CIMMYT Research Data
Sehgal, Deepmala; Mondal, Suchismita; Crespo Herrera, Leonardo Abdiel; Govindan, Velu; Juliana, Philomin; Huerta Espino, Julio; Shrestha, Sandesh; Poland, Jesse; Singh, Ravi; Dreisigacker, Susanne, 2020, "Haplotype-based genome-wide association study unveils stable genomic regions for grain yield in CIMMYT spring bread wheat", https://hdl.handle.net/11529/10548504, CIMMYT Research Data & Software Repository Network, V1
Genetic architecture of grain yield (GY) has been extensively investigated in wheat using genome wide association study (GWAS) approach. However, most studies have used small panel sizes in combination with large genotypic data, typical examples of the so-called ‘large p small n’...
Gzip Archive - 55.4 KB - MD5: 97092f66a4b0bc48db0d6409e0e52159
DataPhenotypic data
EYT2011-12-phenotypic data
Gzip Archive - 77.8 KB - MD5: 52ee2651f8326decd82c23a6b1496c97
DataPhenotypic data
EYT2012-13-Phenotypic data
Gzip Archive - 72.6 KB - MD5: 8e3e78bcf2ec249167c1a5d7835758c9
DataPhenotypic data
EYT2013-14-Phenotypic data
Gzip Archive - 69.4 KB - MD5: 2814503902a420d5ca71c9cf20c1bedb
DataPhenotypic data
EYT2014-15-Phenotypic data
Gzip Archive - 62.6 KB - MD5: 84fa26e968b557a0536eb9f30f36e809
DataPhenotypic data
EYT2015-16-Phenotypic data
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