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The Dataverse portal of the International Center for Agricultural Research in Dry Ares (ICARDA) has been set up with the aim of making Findable, Accessible, Interoperable and Reusable (F.A.I.R.) the knowledge produced in research for development frameworks, joined by the Center and its partners. The portal is supported by the CGIAR Research Program on LIVESTOCK, the CGIAR Platform for BIGDATA in Agriculture, and is powered by CODEOBIA and hosted by Amazon Web Services (AWS). You may copy, distribute and transmit the data as long as you acknowledge the source through proper citation as shown below. You may not resale or use the data for any commercial purposes except with written permission from the respective authoring institution(s) and the author(s) concerned. By using the ICARDA Dataverse, the user expressly acknowledges that the data may contain some nonconformities, defects, or errors. No warranty is given that the data will meet the user's needs or expectations or that all nonconformities, defects, or errors can or will be corrected. The user should always verify actual data.

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551 to 560 of 599 Results
Feb 11, 2023 - Sustainable use and management of scarce water and land resources
Karrou, Mohammed; Kellas, Nassim; Zaghouane, Omar; Araus, José Luis; Yousfi, Salima; Serret, Maria Dolores; Chadouli, Ahmed, 2015, "ACLIMAS project dataset: yield and yield components", https://hdl.handle.net/20.500.11766.1/FK2/YT1VMH, MELDATA, V3
The dataset contains the results of a trials to study the effects of water regime, nitrogen rate and variety on durum and bread wheat.
Feb 11, 2023 - Big Data and ICT
Biradar, Chandrashekhar, 2015, "Central Asia and NW China absolute change of annual maximum temperature 2020s_A1b", https://hdl.handle.net/20.500.11766.1/FK2/C0HLKT, MELDATA, V5
Central Asia and North-West China (Xingjiang province) absolute change of annual maximum temperature in 2020 according to IPCC near-term climate change scenario A1b
Feb 11, 2023 - Big Data and ICT
Biradar, Chandrashekhar, 2015, "Central Asia and NW China annual average of monthly minimum temperature 2020s_A2", https://hdl.handle.net/20.500.11766.1/FK2/9GIFQ5, MELDATA, V4
Central Asia and North-West China (Xingjiang province) annual average of monthly minimum temperature in 2020 according to IPCC near-term climate change scenario A2
Feb 11, 2023 - Big Data and ICT
Biradar, Chandrashekhar, 2015, "Central Asia and NW China absolute change of the annual minimum temperature 2020s_A1b", https://hdl.handle.net/20.500.11766.1/FK2/OPNQUD, MELDATA, V5
Central Asia and North-West China (Xingjiang province) absolute change of annual minimum temperature in 2020 according to IPCC near-term climate change scenario A1b
Feb 11, 2023 - Sustainable use and management of scarce water and land resources
Nangia, Vinay, 2019, "Sediment yield data used for SWAT modeling", https://hdl.handle.net/20.500.11766.1/FK2/AOUQEL, MELDATA, V3
The dataset contains sediment erosion data used in SWAT modeling, in order to estimate soil erosion estimation on small watersheds.
Feb 11, 2023 - Building resilient integrated crop-livestock farming systems
Majid, Abdul, 2019, "Comparison between maize, millet and guar improved and local varieties for green fodder and dry matter yield - Pakistan 2015", https://hdl.handle.net/20.500.11766.1/FK2/R0KNBQ, MELDATA, V3
The dataset contanins a data comparison between improved maize, millet and guar variety vs. local varieties for green fodder yield (GFY) and dry matter yield (DMY). The data are from 2 farmers fields at Latifal and Saghar village at Chakwal site (Pakistan).
Feb 10, 2023 - Climate adapted crops and livestock
Verma, Ramesh Pal Singh; Singh, Murari; Gyawali, Sanjaya, 2016, "Datasets on High Input Barley Trials 2014", https://hdl.handle.net/20.500.11766.1/FK2/PSLKTA, MELDATA, V3
The dataset contains the results of a high Input barley trials carried on in Morocco and Lebanon during the cropping season 2013-2014.
Feb 10, 2023 - Big Data and ICT
Biradar, Chandrashekhar, 2015, "Central Asia and NW China annual mean precipitation 2020s_A2", https://hdl.handle.net/20.500.11766.1/FK2/8HWJXZ, MELDATA, V7
Central Asia and North-West China (Xingjiang province) annual mean precipitation in 2020 according to IPCC near-term climate change scenario A2
Feb 10, 2023 - Big Data and ICT
Biradar, Chandrashekhar, 2015, "Central Asia and NW China monthly potential evapotranspiration 10_40_A1b", https://hdl.handle.net/20.500.11766.1/FK2/YO2TU6, MELDATA, V3
Central Asia and North-West China (Xingjiang province) monthly potential evapo transpiration 2011-2040 based on the averaged output of 4 GCM models under Greenhouse Gas Emission Scenario 10_40_A1b
Feb 1, 2023 - Dairy Genetics East Africa (DGEA)
Gibson, John Paul; Mwai, Ally Okeyo; Ojango, Julie; Baltenweck, Isabelle; Rao, James; Mujibi, Dennis; Poole, Elizabeth; Kemp, Steve; Mrode, Raphael, 2023, "Germplasm for Dairy Development in East Africa. Phase I: Identifying appropriate germplasm and delivery mechanisms (DGEA1) - Signature of Selection & GWAS data used in Aliloo et al 2020", https://hdl.handle.net/20.500.11766.1/FK2/P5BOX7, MELDATA, V4
DGEA will determine what are the most appropriate genotypes for the range of dairy production systems and levels of production operated by small-holder farmers in East Africa, and how these genotypes can be delivered to small-holders. The project partners will apply high density...
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