Sofia

  • Capital:Antsohihy
  • Language:Malagasy and French
  • Secretary General:Elliot Serge
  • Population, persons:1.280.847 (2014)
  • Land area, sq. km:50.100,0 (2014)
  • Population density, persons per sq. km:25,57 (2014)
  • Average household size, persons:4,7 (2010)
  • Sex Ratio (males per 100 females):89,6 (2010)
  • Literate, Female (%):84,9 (2009)
  • Literate, Male (%):86,5 (2009)
  • Child Labor (%):25,6 (2010)
  • Poverty Ratio (%):71,5 (2010)

Vergleichen
Alle Datensätze: C D G H I P S T
  • C
    • März 2022
      Quelle: The Africa Information Highway
      Hochgeladen von: Knoema
      Zugriff am: 11 Juli, 2022
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      Data cited at: https://dataportal.opendataforafrica.org/rtufdnc/social This Dataset describes the list of common indicators from census datasets of African countries.
    • Februar 2021
      Quelle: National Institute of Statistics, Madagascar
      Hochgeladen von: Knoema
      Zugriff am: 19 Februar, 2021
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      Data cited at: https://madagascar.opendataforafrica.org/MGCD2015
    • April 2024
      Quelle: Numbeo
      Hochgeladen von: Knoema
      Zugriff am: 24 April, 2024
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      Data cited at: Numbeo Methodology: The Index has been calculated twice per year by considering the latest 36 months. A). Beginning of the Year and B). Mid Year Crime Index is an estimation of the overall level of crime in a given city or a country. We consider crime levels lower than 20 as very low, crime levels between 20 and 40 as being low, crime levels between 40 and 60 as being moderate, crime levels between 60 and 80 as being high and finally crime levels higher than 80 as being very high. Safety index is, on the other way, quite the opposite of crime index. If the city has a high safety index, it is considered very safe.
  • D
  • G
    • März 2023
      Quelle: The Global Data Lab
      Hochgeladen von: Knoema
      Zugriff am: 10 März, 2024
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      Data citation: Data retrieved from the Area Database of the Global Data Lab, https://globaldatalab.org/areadata/, version v4.2.Smits, J. GDL Area Database. Sub-national development indicators for research and policy making. GDL Working Paper 16-101 (2016).
  • H
  • I
  • P
    • Oktober 2021
      Quelle: National Institute of Statistics, Madagascar
      Hochgeladen von: Knoema
      Zugriff am: 15 Dezember, 2021
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    • Januar 2021
      Quelle: National Institute of Statistics, Madagascar
      Hochgeladen von: Knoema
      Zugriff am: 29 Januar, 2021
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    • Mai 2023
      Quelle: African Postharvest Losses Information System
      Hochgeladen von: Knoema
      Zugriff am: 12 Mai, 2023
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      Postharvest loss profiles (PHL profiles) quantify the expected loss – as a percentage – at each point along the postharvest chain. This loss data is collected by reviewing scientific literature and is broken down by crop, type of farm and climate type (based on the Köppen-Geiger climate classification). These profiles provide percentage loss figures for the various crops throughout the value chain under varying conditions and are updated as new research becomes available."   For complete reference information and definitions, Please visit: https://www.aphlis.net/en/page/20/data-tables#/datatables?year=20&tab=references&metric=prc
  • S
    • August 2013
      Quelle: Robert S. Strauss Center for International Security and Law
      Hochgeladen von: Knoema
      Zugriff am: 02 Februar, 2016
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      This dataset provides data on literacy rates, primary and secondary school attendance rates access to improved water and sanitation, household access to electricity, and household ownership of radio and television. Unlike other datasets, notably the World Bank’s World Development Indicators (WDI), this dataset provides data at the subnational level, specifically the first administrative district level. Furthermore, the data is comparable both within and across countries. This subnational level of data allows for assessment of education and household characteristics at a more relevant level for allocation of resources and targeting development interventions.
  • T