Données

Humanitarian Data Exchange results

Chad

Chad - Housing, slums and informal settlements

Proportion of urban population living in slums or informal settlements per country, territory and region, based on 4 out of 5 main household shelter deprivations defined by UN-Habitat as indicators of informality: lack of access to…

Format:
Dataset
Source:
UNHabitat
Posted:
1 Sep 2024
Fichiers:
Téléchargement  + 1 more

Chad

Tchad : Suivi des Inondations

Ce jeu de données est un suivi des inondations au Tchad. Il donne également la capacité des partenaires à répondre aux besoins des sinistrés.

Format:
Dataset
Source:
Government, humanitarian partners
Posted:
23 Aug 2024
Fichiers:
Téléchargement  + 5 more

Chad

Satellite detected water extent in Bongor City as of 26 August 2024

**UNOSAT code: FL20240820TCD, GDACS ID: 1102854** This map illustrates satellite-detected water extent in Bongor City, Mayo-Boneye Department, Mayo-Kebbi Est Region, Chad as observed from a PlanetScope satellite image acquired on 26 August 2024. Within the…

Format:
Dataset
Source:
UN Operational Satellite Applications Programme (UNOSAT)
Posted:
3 Sep 2024
Fichiers:
Téléchargement  + 1 more

Chad

Satellite detected water extent in N'Djamena City as of 26 August 2024

**UNOSAT code: FL20240820TCD** This map illustrates satellite-detected water extent in N'Djamena city, N'Djamena Department, Chad as observed from a PlanetScope satellite image acquired on 26 August 2024. Within the analysed area of about 440 km²,…

Format:
Dataset
Source:
UN Operational Satellite Applications Programme (UNOSAT)
Posted:
30 Aug 2024
Fichiers:
Téléchargement  + 1 more

Chad

Satellite detected water extents between 20 and 24 August 2024 over Chad

**UNOSAT code: FL20240820TCD** This map illustrates cumulative satellite-detected water using VIIRS in Chad between 20 to 24 August 2024. Within the cloud free analysed areas of about 1,200,000 km², a total of about 18,900 km²…

Format:
Dataset
Source:
UN Operational Satellite Applications Programme (UNOSAT)
Posted:
27 Aug 2024
Fichiers:
Téléchargement  + 2 more

Chad

Chad: Acute Food Insecurity Country Data

The IPC Acute Food Insecurity (IPC AFI) classification provides strategically relevant information to decision makers that focuses on short-term objectives to prevent, mitigate or decrease severe food insecurity that threatens lives or livelihoods. This data has…

Format:
Dataset
Source:
National IPC Technical Working Group
Posted:
26 Aug 2024
Fichiers:
Téléchargement  + 10 more

Chad

Chad - Subnational Demographic and Health Data

Contains data from the [DHS data portal](https://api.dhsprogram.com/). There is also a dataset containing [Chad - National Demographic and Health Data](https://data.humdata.org/dataset/dhs-data-for-chad) on HDX. The DHS Program Application Programming Interface (API) provides software developers access to aggregated indicator data…

Format:
Dataset
Source:
The DHS Program
Posted:
20 Aug 2024
Fichiers:
Téléchargement  + 40 more

Chad

Chad - National Demographic and Health Data

Contains data from the [DHS data portal](https://api.dhsprogram.com/). There is also a dataset containing [Chad - Subnational Demographic and Health Data](https://data.humdata.org/dataset/dhs-subnational-data-for-chad) on HDX. The DHS Program Application Programming Interface (API) provides software developers access to aggregated indicator data…

Format:
Dataset
Source:
The DHS Program
Posted:
20 Aug 2024
Fichiers:
Téléchargement  + 42 more

Chad

Satellite detected water extents between 15 and 19 August 2024 over Chad

**UNOSAT code: FL20240820TCD** This map illustrates cumulative satellite-detected water using VIIRS in Chad between 15 to 19 August 2024. Within the cloud free analysed areas of about 1,200,000 km², a total of about 19,000 km²…

Format:
Dataset
Source:
UN Operational Satellite Applications Programme (UNOSAT)
Posted:
21 Aug 2024
Fichiers:
Téléchargement  + 2 more

Humanitarian Data Exchange filters

Humanitarian Data Exchange

This selection of données for Chad is powered by Humanitarian Data Exchange.

Refine the list with filters