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The International Crops Research Institute for the Semi-Arid Tropics (ICRISAT) is a non-profit, non-political organization that conducts agricultural research for development in Asia and sub-Saharan Africa with a wide array of partners throughout the world. Covering 6.5 million square kilometers of land in 55 countries, the semi-arid or dryland tropics has over 2 billion people, and 644 million of these are the poorest of the poor. ICRISAT and its partners help empower these poor people to overcome poverty, hunger and a degraded environment through better agriculture.
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1 to 10 of 413 Results
Dec 11, 2019 - Phenotypic
Sobhan, Sajja, 2019, "Data of Finger millet adaptation in Kharif 2017 at ICRISAT, Patancheru.", https://doi.org/10.21421/D2/VVAB8E, ICRISAT Dataverse, V1, UNF:6:nn2qTpPCMc3cpsPSbk+y6A==
Sequential observations of agronomically important traits during cropping season for finger millet crop during Kharif 2017 Experimental location on Google Map
Dec 11, 2019 - Genotypic
Rakesh K. Srivastava, 2019, "DArT seq data generated on Mapping population for high Iron and Zinc in Pearl Millet", https://doi.org/10.21421/D2/D8DAZS, ICRISAT Dataverse, V1
This dataset contains data of the study aimed to construct an integrated genetic map using genetic stock developed for high Iron and Zinc density over a period of five years at ICRISAT Patancheru which is used for the development of DArT Seq Dataset. Diversity Arrays Technology (...
Dec 10, 2019 - Phenotypic
Shivali Sharma, 2019, "Data on Multilocation trial of wild cajanus species derived introgression lines during 2016 rainy season Patancheru, ICRISAT", https://doi.org/10.21421/D2/NJZXJN, ICRISAT Dataverse, V2, UNF:6:wDE8FOtBcsSy6PYIx04BKQ==
This dataset contains data of a multi-location trial conducted at International Crops Research Institute for the Semi-Arid Tropics (ICRISAT), Patancheru location for five agronomic traits viz., days to 50% flowering (DF50), days to maturity (DM), plant height (PH), 100-seed weigh...
Nov 20, 2019 - Genotypic
Rajeev K. Varshney; Mahendar Thudi; Spurthi N. Nayak; Pooran M.Gaur; Junichi Kashiwagi; L. Krishnamurthy; Deepa Jaganathan; Abhishek Bohra; Shailesh Tripathi; Abhishek, Rathore; Aravind K. Jukanti; Veera Jayalakshmi; Anil kumar V; S. J. Singh; Mohammad Yasin; M. S. Sheshshayee; K. P. Viswanatha, 2019, "Genetic dissection of drought tolerance in chickpea (Cicer arietinum L.)", https://doi.org/10.21421/D2/ADJSXL, ICRISAT Dataverse, V1
Screening of 2,717 SSR markers on the parental lines resulted in identification of 321 and 230 polymorphic markers on ICCRIL03 and ICCRIL04, respectively (Lichtenzveig et al. 2005; Varshney et al. 2009; Nayak et al. 2010; Gujaria et al. 2011; Thudi et al. 2011; ESM Table S2). The...
Oct 31, 2019 - Genotypic
Santosh P Deshpande; Laavanya Rayaprolu; Rajeev Gupta; Abhishek, Rathore, 2019, "Genome-wide association study for major biofuel traits in Sorghum minicore collection", https://doi.org/10.21421/D2/GGXBNP, ICRISAT Dataverse, V2
This dataset includes the research work on the evaluation of sorghum mini-core accessions for biofuel traits. This raw sequence data obtained from Genotyping-By-Sequencing (GBS) was originally used for a publication Morris et al. (PNAS 2013:110-2 pp:453-458) by mapping the sequen...
Oct 9, 2019
Precious Makana, makana2011@gmail.com; Chamuka, Thebulo, C.Thebulo@cgiar.org, 2019, "Farmer’s choice and adoption of Rainwater Harvesting Technologies: Empirical Evidence from Malawi", https://doi.org/10.21421/D2/ATZLCE, ICRISAT Dataverse, V1
The data set including research conducted to assess farmer’s choice and adoption of Rainwater Harvesting Technologies in Malawi. The research data employed Multi-stage sampling technique randomly sample 272 households from Balaka district in Malawi. The first stage involved purpo...
Sep 17, 2019 - Genotypic
K N S Usha Kiranmayee; P B Kavi Kishor; C. T. Hash; Santosh, Deshpande, 2019, "Evaluation of QTLs for Shoot Fly (Atherigona soccata) Resistance using 1894 F2 population based on SSR marker data", https://doi.org/10.21421/D2/45YOFR, ICRISAT Dataverse, V1
Seedling leaf blade glossiness and trichome density are morphological traits associated with shoot fly resistance (SFR). A fine-mapping population was developed for shoot fly resistance by crossing introgression lines RSG04008-6 (susceptible) × J2614-11 (resistant). A total of 19...
Sep 17, 2019 - Genotypic
K N S Usha Kiranmayee; C. T. Hash; S Sivasubramani; P Ramu; A Bhanu Prakash; Abhishek, Rathore; P B Kavi Kishor; Rajeev Gupta; Santosh, Deshpande, 2019, "Genotyping by Sequencing SNP data for the cross RSG04008-6 × J2614-11 in Sorghum", https://doi.org/10.21421/D2/TO4JWO, ICRISAT Dataverse, V1
This study was conducted to dissect the genetic basis of stay-green Quantitative Trait Loci (QTL) s and shoot fly resistance morphological QTLs on sorghum chromosome SBI-10 long arm (L) using high-density single nucleotide polymorphism (SNP) genetic markers. A fine-mapping popula...
Aug 28, 2019 - Social Science
Shiferaw Bekele; Obare, Gideon; Muricho, Geoffrey, 2016, "CAPRi Project: Collective Marketing in Mbeere and Makueni Districts, Kenya", https://doi.org/10.21421/D2/LHVD3C, ICRISAT Dataverse, V2
The Study reviews the conceptual issues which are responsible for the presence of the imperfect markets in smallholder agricultural systems and the extent to which the rural institutional and organizational innovations can help in addressing these issues.The data set reports the...
Aug 24, 2019 - Phenotypic
Sharma D; Saxena KB, 2016, "Development of Early Duration Cultivars and Superior Breeding Lines for Grain Production", https://doi.org/10.21421/D2/K0LK4J, ICRISAT Dataverse, V3, UNF:6:QoJw/ldI9wig4L1p7V3ZLA==
Objective of the project is to develop high yielding early maturing cultivars with acceptable grain quality suited to use in pure stands or with early maturing companion crops and contribute breeding lines and populations to breeders throughout the SAT
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