<?xml version="1.0" encoding="UTF-8" standalone="no"?>
<metadata xml:lang="en">
<Esri>
<CreaDate>20250304</CreaDate>
<CreaTime>13364300</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>TRUE</SyncOnce>
<scaleRange>
<minScale>150000000</minScale>
<maxScale>5000</maxScale>
</scaleRange>
<ArcGISProfile>ItemDescription</ArcGISProfile>
</Esri>
<dataIdInfo>
<idCitation>
<resTitle>Global_AB_25M_simplified_fs_gray</resTitle>
</idCitation>
<idPurp>This service provides INTERACTIVE FEATURE LAYERs based on United Nations Geospatial WORLD SIMPLIFIED Datasets (UN Geodata Simplified), generalized based on UN Geodata 25 million scale and styled for OCHA IMOs to use in country, regional and world web maps.
***The UN Geodata simplified is prepared in the context of the Administrative Instruction on the “Guidelines for the Publication of Maps” and should serve global mapping purposes as opposed to local mapping. The scale is unspecific for the United Nations Geodata simplified and is suitable for generalized world maps and web-maps. ***These live feature services support: * Layer toggling and labeling, * Custom symbology, * Scale-dependent visibility, * Filtering (e.g., by ISO3 country codes), *Querying and data extraction, * Individual or group layer use in web maps and apps.
*** Unlike static vector tile basemaps, these layers enable real-time interaction and flexible map design. Ideal for applications requiring world, sub regional and regional reference data.
*** Included layers: *gbl_Lakes_25M_simplified *gbl_Administrative boundary lines_25M_simplified *gbl_SDGA_sub regions_25M_simplified, *gbl_Intermediary regions_25M_simplified, *gbl_Geographic sub regions_25M_simplified, *gbl_Geographic Region_25M_simplified, * gbl_Country polygons_25M_simplified
*** Best used at scales: 1:148 million (subcontinent), 1:296 million (continent), 1:592 million (world)
*** Edgematched OCHA COD feature services are compatible with UN Geodata -1M international boundaries. Do not combine OCHA COD datasets to this dataset. *****BEST USE CASE: Add this simplified global dataset to your web maps and tailor the symbology, scale ranges, and filters to match your operational context or thematic purpose. To use with other basemaps, simply set the Country Name layer’s fill symbol to transparent for label-only display.
*** For better performance in high-demand apps, a vector tile version is also available [insert link].</idPurp>
<searchKeys>
<keyword>UNGeoportal</keyword>
<keyword>OCHA</keyword>
<keyword>UNGeodata</keyword>
<keyword>United Nations</keyword>
<keyword>Geodata</keyword>
<keyword>World</keyword>
<keyword>cartography</keyword>
<keyword>simplified</keyword>
<keyword>25 Million</keyword>
<keyword>25M</keyword>
<keyword>basemap</keyword>
<keyword>global</keyword>
<keyword>administrative boundary</keyword>
<keyword>AB</keyword>
</searchKeys>
<idAbs>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;Feature service based on United Nations Geospatial World Simplified 25M Dataset (UN Geodata), designed for OCHA IMOs to use in their REGIONAL and COUNTRY level web maps and applications at a scale of 1:25,000,000 or larger. &lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;Layer Descriptions:&lt;/span&gt;&lt;/p&gt;&lt;ul&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;gbl_Lakes_25M_simplified (WBYA): &lt;/span&gt;&lt;span&gt;Polygons/areas of major waterbodies/lakes&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;gbl_Administrative boundary lines_25M_simplified (BNDL): &lt;/span&gt;&lt;span&gt;Line features symbolized using the BDYTYP field codes: 0: Coastline, 1: International boundary, 2: Special boundary line, 3: Armistice or International administrative line, 4: Other line of separation, 8: Autonomous region boundary, 9: Sovereign base limit, 99: Other.&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;gbl_SDGA_sub regions_25M_simplified (SDGA): &lt;/span&gt;&lt;span&gt;Polygon layer for SDG sub regional grouping, label text= RegGroup1 &lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;gbl_Intermediary regions_25M_simplified (INTA): &lt;/span&gt;&lt;span&gt;Polygon layer for aggregated intermediary regions, label text= Intermediary regions&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;gbl_Geographic sub regions_25M_simplified (SUBA): &lt;/span&gt;&lt;span&gt;Polygon layer for aggregated geographic sub regions, label text= Sub-regions&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;gbl_Geographic Region_25M_simplified (GEOA): &lt;/span&gt;&lt;span&gt;Polygon layer for aggregated geographic regions, label text= Geographic regions&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;gbl_Country polygons_25M_simplified (BNDA): &lt;/span&gt;&lt;span&gt;Polygon/areas of countries. Transparent symbology is applied for label-only usage but can be made visible if needed.&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;/ul&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;UN Geodata Description:&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;UN Geodata is a worldwide geospatial dataset compiled by the United Nations to support cartographic production and mapping practices consistent with UN standards. It includes geometries, attributes, and labels necessary for accurate depiction of global administrative areas, boundaries, and populated places. The geospatial datasets here included are referred to as UN Geodata and are suitable at the scale of 1:25 million and more. The UN Geodata is prepared in the context of the Administrative Instruction on the “Guidelines for the Publication of Maps” and should serve national and regional mapping.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Original Feature Layers Include:&lt;/span&gt;&lt;/p&gt;&lt;ul&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;BNDA_simplified:&lt;/span&gt;&lt;span&gt; Polygons/areas of countries &lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;GEOA_simplified, SUBA_simplified, INTA_simplified&lt;/span&gt;&lt;span&gt;: aggregated regional areas are available following M49 methodology &lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;SDGA_simplified: &lt;/span&gt;&lt;span&gt;SDG regional grouping &lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;BNDL_simplified: &lt;/span&gt;&lt;span&gt;lines for international boundaries and limits &lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;WBYA_simplified: &lt;/span&gt;&lt;span&gt;major water body&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;/ul&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;Other Technical Details:&lt;/span&gt;&lt;/p&gt;&lt;ul&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;Data File: &lt;/span&gt;&lt;span&gt;File Geodatabase&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;Owner: &lt;/span&gt;&lt;span&gt;United_Nations_Geospatial&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;Info Updated: &lt;/span&gt;&lt;span&gt;June 12, 2023&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;Date Updated: &lt;/span&gt;&lt;span&gt;June 12, 2023&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;Published Date: &lt;/span&gt;&lt;span&gt;June 12, 2023&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;Downloaded by FIS Date: &lt;/span&gt;&lt;span&gt;March 4,2025&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;OCHA Published Date:&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;/ul&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span style='font-weight:bold;'&gt;Terms of use&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;The boundaries and names shown and the designations used on this map do not imply official endorsement or acceptance by the United Nations.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span style='font-style:italic;font-weight:bold;'&gt;The designations employed and the presentation of material on this map do not imply the expression of any opinion whatsoever on the part of the Secretariat of the United Nations concerning the legal status of any country, territory, city or area or of its authorities, or concerning the delimitation of its frontiers or boundaries.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span style='font-style:italic;font-weight:bold;'&gt;Final boundary between the Republic of Sudan and the Republic of South Sudan has not yet been determined. Dotted line represents approximately the Line of Control in Jammu and Kashmir agreed upon by India and Pakistan. The final status of Jammu and Kashmir has not yet been agreed upon by the parties. A dispute exists between the Governments of Argentina and the United Kingdom of Great Britain and Northern Ireland concerning sovereignty over the Falkland Islands (Malvinas).&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Includes Non-Self-Governing Territories as defined by the United Nations.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;</idAbs>
<idCredit>UN Geospatial, OCHA FISS</idCredit>
<resConst>
<Consts>
<useLimit/>
</Consts>
</resConst>
</dataIdInfo>
<mdHrLv>
<ScopeCd value="005"/>
</mdHrLv>
<mdDateSt Sync="TRUE">20250424</mdDateSt>
<Binary>
<Thumbnail>
<Data EsriPropertyType="PictureX">iVBORw0KGgoAAAANSUhEUgAAASwAAADICAYAAABS39xVAAAAAXNSR0IB2cksfwAAAAlwSFlzAAAO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</Data>
</Thumbnail>
</Binary>
</metadata>
