Zimbabwe

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  • 10+ Downloads
    Time Period of the Dataset [?]: February 11, 2014-February 11, 2014 ... More
    Modified [?]: 7 July 2022
    Dataset Added on HDX [?]: 28 May 2015
    This dataset updates: Never
    This map illustrates satellite-detected water bodies at the Tokwe Mukorsi Dam, Masvingo Province, Zimbabwe, as detected by TerraSAR-X on 11 February 2014. The flooded area above the dam has greatly increased due to recent heavy rains and currently encompasses about 2,300 ha. It is likely that flood waters have been systematically underestimated along highly vegetated areas along main river banks because of the special characteristics of the satellite data used. This analysis has not yet been validated in the field. Please send ground feedback to UNITAR /UNOSAT.
  • 60+ Downloads
    Time Period of the Dataset [?]: January 01, 2006-December 31, 2015 ... More
    Modified [?]: 10 November 2019
    Dataset Added on HDX [?]: 19 May 2016
    This dataset updates: Never
    Gender parity index in secondary - Indice de parité de genre au secondaire
  • 200+ Downloads
    Time Period of the Dataset [?]: December 31, 2015-December 31, 2015 ... More
    Modified [?]: 10 November 2019
    Dataset Added on HDX [?]: 23 June 2016
    This dataset updates: Never
    EDUCATION Adult Illiteracy Rate ( % ) - Taux d'analphabetisme des adultes (% )
  • 200+ Downloads
    Time Period of the Dataset [?]: January 01, 2006-December 31, 2015 ... More
    Modified [?]: 10 November 2019
    Dataset Added on HDX [?]: 19 May 2016
    This dataset updates: Never
    Total migrants in Africa.
  • 40+ Downloads
    Time Period of the Dataset [?]: March 29, 2019-March 29, 2019 ... More
    Modified [?]: 10 April 2019
    Dataset Added on HDX [?]: 10 April 2019
    This dataset updates: Never
    This map illustrates the satellite detected surface waters in Manicaland Province, Zimbabwe, as observed from the Sentinel-1 data imagery acquired on 12 and 24 March 2019. Within the analysis extent, over Manicaland Province, 164,130 ha of surface waters were observed the 12 March 2019. and about of 406,600 ha of surface waters were observed the 24 March 2019. It represents an increase of 40 %. This is a preliminary analysis and has not yet been validated in the field. Please send ground feedback to UNITAR - UNOSAT. Satellite data (pre-event) : Sentinel-1 Imagery date: 12 March 2019 Resolution: 10 m Copyright: Copernicus 2019 / ESA Source: ESA Satellite data (post-event) : Sentinel-1 Imagery date: 24 March 2019 Resolution: 10 m Copyright: Copernicus 2019 / ESA Source: ESA Boundary data: OCHA ROSEA Water body & waterway: COD Analysis : UNITAR-UNOSAT Production: UNITAR - UNOSAT
  • 20+ Downloads
    Time Period of the Dataset [?]: March 29, 2019-March 29, 2019 ... More
    Modified [?]: 10 April 2019
    Dataset Added on HDX [?]: 10 April 2019
    This dataset updates: Never
    This map illustrates the satellite detected surface waters in Masvingo Province, Zimbabwe, as observed from the Sentinel-1 data imageries acquired on 12 and 24 March 2019. Within the analysis extent, over Manicaland Province, 84,500 ha of surface waters were observed the 12 March 2019. and about of 288,500 ha of surface waters were observed the 24 March 2019. It represents an icrease of 29 %. This is a preliminary analysis and has not yet been validated in the field. Please send ground feedback to UNITAR - UNOSAT. Satellite data (pre-event) : Sentinel-1 Imagery date: 12 March 2019 Resolution: 10 m Copyright: Copernicus 2019 / ESA Source: ESA Satellite data (post-event) : Sentinel-1 Imagery date: 24 March 2019 Resolution: 10 m Copyright: Copernicus 2019 / ESA Source: ESA Boundary data: OCHA ROSEA Water body & waterway: COD Analysis : UNITAR-UNOSAT Production: UNITAR - UNOSAT
  • 10+ Downloads
    Time Period of the Dataset [?]: March 29, 2019-March 29, 2019 ... More
    Modified [?]: 10 April 2019
    Dataset Added on HDX [?]: 10 April 2019
    This dataset updates: Never
    This map illustrates the satellite detected surface waters in Mashonaland East Province, Zimbabwe, as observed from the Sentinel-1 data imageries acquired on 12 and 24 March 2019. Within the analysis extent, over Manicaland Province, 108,780 ha of surface waters were observed the 12 March 2019. and about of 469,680 ha of surface waters were observed the 24 March 2019. It represents an icrease of 23 %. This is a preliminary analysis and has not yet been validated in the field. Please send ground feedback to UNITAR - UNOSAT. Satellite data (pre-event) : Sentinel-1 Imagery date: 12 March 2019 Resolution: 10 m Copyright: Copernicus 2019 / ESA Source: ESA Satellite data (post-event) : Sentinel-1 Imagery date: 24 March 2019 Resolution: 10 m Copyright: Copernicus 2019 / ESA Source: ESA Boundary data: OCHA ROSEA Water body & waterway: COD Analysis : UNITAR-UNOSAT Production: UNITAR - UNOSAT
  • 200+ Downloads
    Time Period of the Dataset [?]: January 01, 2007-January 01, 2007 ... More
    Modified [?]: 16 August 2018
    Dataset Added on HDX [?]: 16 October 2015
    This dataset updates: Never
    Zimbabwe Health Infrastructure from the Ministry of Health
  • 40+ Downloads
    Time Period of the Dataset [?]: June 30, 2017-June 30, 2017 ... More
    Modified [?]: 28 July 2017
    Dataset Added on HDX [?]: 28 July 2017
    This dataset updates: Never
    Dashboard about Southern Africa Situation and Response (UNICEF) from 1 January - 30 june 2017
  • 400+ Downloads
    Time Period of the Dataset [?]: October 27, 2016-October 27, 2016 ... More
    Modified [?]: 7 July 2017
    Dataset Added on HDX [?]: 16 April 2015
    This dataset updates: Never
    This dataset contains data about the number of people reached with food assistance in emergency settings. The data is collected from external WFP situation reports and emergency dashboards.
  • 200+ Downloads
    Time Period of the Dataset [?]: August 06, 2015-August 06, 2015 ... More
    Modified [?]: 17 January 2017
    Dataset Added on HDX [?]: 8 November 2016
    This dataset updates: Never
    African Development Bank, Bank Operations, 1967 January - 2012 December
  • 300+ Downloads
    Time Period of the Dataset [?]: December 08, 2011-December 08, 2011 ... More
    Modified [?]: 24 November 2016
    Dataset Added on HDX [?]: 13 October 2016
    This dataset updates: Never
    Leadership, innovation and targeted investments in a number of social sectors have led to transformative interventions and in many cases revolutionized people’s lives, says an annual report produced jointly by the Economic Commission for Africa (ECA), the African Union (AU), the African Development Bank (AfDB) and the United Nations Development Programme (UNDP), called “Assessing Progress in Africa Toward the Millennium Development Goals”.
  • 200+ Downloads
    Time Period of the Dataset [?]: August 20, 2016-August 20, 2016 ... More
    Modified [?]: 24 November 2016
    Dataset Added on HDX [?]: 8 November 2016
    This dataset updates: Never
    AFDB Commodity Prices, Monthly January 1960 - July 2016
  • 100+ Downloads
    Time Period of the Dataset [?]: October 12, 2015-October 12, 2015 ... More
    Modified [?]: 24 November 2016
    Dataset Added on HDX [?]: 8 November 2016
    This dataset updates: Never
    AFDB Market Trends, January 2011 - July 2015
  • 400+ Downloads
    Time Period of the Dataset [?]: April 17, 2016-April 17, 2016 ... More
    Modified [?]: 24 November 2016
    Dataset Added on HDX [?]: 8 November 2016
    This dataset updates: Never
    African Regional Energy Statistics, 2000 - 2014
  • 300+ Downloads
    Time Period of the Dataset [?]: July 15, 2015-July 15, 2015 ... More
    Modified [?]: 24 November 2016
    Dataset Added on HDX [?]: 8 November 2016
    This dataset updates: Never
    The AfDB Statistics Department and the Fragile States Unit have compiled this data set from various sources (the World Bank, WHO, IMF, and many others)
  • 200+ Downloads
    Time Period of the Dataset [?]: July 08, 2016-July 08, 2016 ... More
    Modified [?]: 24 November 2016
    Dataset Added on HDX [?]: 8 November 2016
    This dataset updates: Never
    African Financial Survey Database, 2005-2014
  • 100+ Downloads
    Time Period of the Dataset [?]: August 22, 2013-August 22, 2013 ... More
    Modified [?]: 24 November 2016
    Dataset Added on HDX [?]: 8 November 2016
    This dataset updates: Never
    Economic Community of Central African States Statistics, 2013
  • 100+ Downloads
    Time Period of the Dataset [?]: April 22, 2014-April 22, 2014 ... More
    Modified [?]: 24 November 2016
    Dataset Added on HDX [?]: 8 November 2016
    This dataset updates: Never
    AfDB Country Policy and Institutional Assessment, 2013
  • 100+ Downloads
    Time Period of the Dataset [?]: December 08, 2011-December 08, 2011 ... More
    Modified [?]: 24 November 2016
    Dataset Added on HDX [?]: 8 November 2016
    This dataset updates: Never
    African Development Bank, Food Security, January 1960 - December 2011
  • 100+ Downloads
    Time Period of the Dataset [?]: December 08, 2011-December 08, 2011 ... More
    Modified [?]: 24 November 2016
    Dataset Added on HDX [?]: 8 November 2016
    This dataset updates: Never
    African Development Bank, Food Security, Prices, Monthly, January 1980 - December 2011
  • 300+ Downloads
    Time Period of the Dataset [?]: July 16, 2013-July 16, 2013 ... More
    Modified [?]: 24 November 2016
    Dataset Added on HDX [?]: 8 November 2016
    This dataset updates: Never
    African Port Statistics, 2005-2009
  • 100+ Downloads
    Time Period of the Dataset [?]: April 21, 2016-April 21, 2016 ... More
    Modified [?]: 21 June 2016
    Dataset Added on HDX [?]: 17 June 2016
    This dataset updates: Never
    This dataset contains a list of the countries affected by the El Niño as at April 21, 2016 as reported jointly by FAO, the Global Food Security Cluster and WFP on 21 April 2016 in the 2015-2016 El Niño: WFP and FAO Overview update. According to the World Bank, El Niño is likely to have a negative impact in more isolated local food markets, and many countries are already facing increased food prices. Food Security Cluster partners have implemented preparedness activities and are responding in countries where the effects of El Niño have materialised, such as Ethiopia, Papua New Guinea, Malawi and throughout Central America. In Southern Africa, many areas have seen the driest October-December period since at least 1981, and some 14 million people in the region are already facing hunger, which adds to fears of a spike in the numbers of the food insecure later this year through 2017.
  • 40+ Downloads
    Time Period of the Dataset [?]: December 31, 2015-December 31, 2015 ... More
    Modified [?]: 29 January 2016
    Dataset Added on HDX [?]: 14 January 2016
    This dataset updates: Never
    This dataset is part of the data series [?]: UNDRR - GAR15 Global Exposure
    The GAR15 global exposure database is based on a top-down approach where statistical information including socio-economic, building type, and capital stock at a national level are transposed onto the grids of 5x5 or 1x1 using geographic distribution of population data and gross domestic product (GDP) as proxies.
  • 20+ Downloads
    Time Period of the Dataset [?]: July 01, 2015-July 01, 2015 ... More
    Modified [?]: 15 October 2015
    Dataset Added on HDX [?]: 15 October 2015
    This dataset updates: Never
    This dataset is part of the data series [?]: HDX - Food Insecurity Mapping
    This Archive contains shapefiles for FEWS NET Food Security Outlook for Southern Africa. It was last updated on August 19, 2015. The classification used is IPC V2.0 Compatible, aimed to address acute food insecurity. The two shapefiles represent the two analytic periods: SA201304_ML1 Most likely food security outcome for July-September 2015 SA201304_ML2 Most likely food security outcome for October-December 2015 Within the shapefiles, the food security outlook is contained in a field named as ML1 or ML2 according to the outlook period. The code itself is the IPC phase. Two additional codes are used: 66 = water 88 = parks, forests, reserves 99 = missing data (usually urban centers)