100+ datasets found
  1. d

    Grain-size analysis results and locations of sediment samples collected in...

    • catalog.data.gov
    • s.cnmilf.com
    Updated Oct 8, 2025
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    U.S. Geological Survey (2025). Grain-size analysis results and locations of sediment samples collected in Little Egg Inlet and offshore the southern end of Long Beach Island, NJ, during USGS Field Activity 2018-049-FA (simplified point shapefile and CSV files) [Dataset]. https://catalog.data.gov/dataset/grain-size-analysis-results-and-locations-of-sediment-samples-collected-in-little-egg-inle
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    Dataset updated
    Oct 8, 2025
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Area covered
    Long Beach Island, Little Egg Inlet, New Jersey
    Description

    The natural resiliency of the New Jersey barrier island system, and the efficacy of management efforts to reduce vulnerability, depends on the ability of the system to recover and maintain equilibrium in response to storms and persistent coastal change. This resiliency is largely dependent on the availability of sand in the beach system. In an effort to better understand the system's sand budget and processes in which this system evolves, high-resolution geophysical mapping of the sea floor in Little Egg Inlet and along the southern end of Long Beach Island near Beach Haven, New Jersey was conducted from May 31 to June 10, 2018, followed by a sea floor sampling survey conducted from October 22 to 23, 2018, as part of a collaborative effort between the U.S. Geological Survey and Stockton University. Multibeam echo sounder bathymetry and backscatter data were collected along 741 kilometers of tracklines (approximately 200 square kilometers) of the coastal sea floor to regionally define its depth and morphology, as well as the type and distribution of sea-floor sediments. Six hundred ninety-two kilometers of seismic-reflection profile data were also collected to define the thickness and structure of sediment deposits in the inlet and offshore. These new data will help inform future management decisions that affect the natural and recreational resources of the area around and offshore of Little Egg Inlet. These mapping surveys provide high-quality data needed to build scientific knowledge of the evolution and behavior of the New Jersey barrier island system.

  2. Italy - shp files in CSV- from EEA and ISTAT

    • kaggle.com
    Updated Dec 6, 2020
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    Roberto Lofaro (2020). Italy - shp files in CSV- from EEA and ISTAT [Dataset]. https://www.kaggle.com/robertolofaro/italy-shp-files-in-csv-from-eea-and-istat/metadata
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Dec 6, 2020
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    Roberto Lofaro
    License

    Attribution-ShareAlike 4.0 (CC BY-SA 4.0)https://creativecommons.org/licenses/by-sa/4.0/
    License information was derived automatically

    Area covered
    Italy
    Description

    Context

    This dataset is part of a series that contains three other datasets:

    Content

    Dataset components

    namesizecontentssource
    it_1km.csv114.34 MBItaly shape with 1km resolutionA
    it_10km.csv1.17 MBItaly shape with 10km resolutionA
    it_100km.csv15.66 KBItaly shape with 100km resolutionA

    Sources

    source codeorganization websitecontainer file link
    AEEA European Environment AgencyItaly shapefile
    BISTAT Istituto Nazionale di StatisticaBASI TERRITORIALI E VARIABILI CENSUARIE at 2011

    Processing done

    Source: A

    Converted .shp files (same name as the one under "dataset components") into CSV by using GDAL 3.0.4, released 2020/01/28, offline, under Windows 10, using the following command line: ogr2ogr -f CSV

    Source: B

    The data from this source for the time being are not uploaded due to errors in processing the sources (i.e. formatting errors in both .shp files and, when available, the .csv conversion provided by the source).

    Anyway, if interested: the list of all the location as of 2011 is within the ZIP file Localita_2011_Point.csv from "Località italiane (shp)"

    Selected the ZIP file containing the set of files WGS 84 UTM Zona 32n, latest available as of 2020-12-06: 2011

    Release date and timeframe coverage

    The collated dataset was released on 2020-12-06.

    No timeframe coverage information available (the "localita" file is stated by ISTAT as updated at 2011).

    Acknowledgements

    Thanks to EEA and ISTAT for publishing the data

    Inspiration

    Connecting different data points to identify potential correlations, as part of my knowledge update/learning process (and to complement my other publication activities).

    As part of a long-term publishing project (started in 2015 at Expo2015 in Milan), routinely share data that collect along my writing journey- generally via articles on my website on business and social change.

  3. g

    field_685e8fb67dd91 Shapefile

    • geopostcodes.com
    shp
    Updated May 24, 2025
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    GeoPostcodes (2025). field_685e8fb67dd91 Shapefile [Dataset]. https://www.geopostcodes.com/country/uk/shapefile/
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    shpAvailable download formats
    Dataset updated
    May 24, 2025
    Dataset authored and provided by
    GeoPostcodes
    Area covered
    field_685e8fb67dd91
    Description

    Download high-quality, up-to-date field_685e8fb67dd91 shapefile boundaries (SHP, projection system SRID 4326). Our field_685e8fb67dd91 Shapefile Database offers comprehensive boundary data for spatial analysis, including administrative areas and geographic boundaries. This dataset contains accurate and up-to-date information on all administrative divisions, zip codes, cities, and geographic boundaries, making it an invaluable resource for various applications such as geographic analysis, map and visualization, reporting and business intelligence (BI), master data management, logistics and supply chain management, and sales and marketing. Our location data packages are available in various formats, including Shapefile, GeoJSON, KML, ASC, DAT, CSV, and GML, optimized for seamless integration with popular systems like Esri ArcGIS, Snowflake, QGIS, and more. Companies choose our location databases for their enterprise-grade service, reduction in integration time and cost by 30%, and weekly updates to ensure the highest quality.

  4. d

    Data and Results for GIS-Based Identification of Areas that have Resource...

    • catalog.data.gov
    • data.usgs.gov
    • +1more
    Updated Oct 2, 2025
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    U.S. Geological Survey (2025). Data and Results for GIS-Based Identification of Areas that have Resource Potential for Lode Gold in Alaska [Dataset]. https://catalog.data.gov/dataset/data-and-results-for-gis-based-identification-of-areas-that-have-resource-potential-for-lo
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    Dataset updated
    Oct 2, 2025
    Dataset provided by
    U.S. Geological Survey
    Description

    This data release contains the analytical results and evaluated source data files of geospatial analyses for identifying areas in Alaska that may be prospective for different types of lode gold deposits, including orogenic, reduced-intrusion-related, epithermal, and gold-bearing porphyry. The spatial analysis is based on queries of statewide source datasets of aeromagnetic surveys, Alaska Geochemical Database (AGDB3), Alaska Resource Data File (ARDF), and Alaska Geologic Map (SIM3340) within areas defined by 12-digit HUCs (subwatersheds) from the National Watershed Boundary dataset. The packages of files available for download are: 1. LodeGold_Results_gdb.zip - The analytical results in geodatabase polygon feature classes which contain the scores for each source dataset layer query, the accumulative score, and a designation for high, medium, or low potential and high, medium, or low certainty for a deposit type within the HUC. The data is described by FGDC metadata. An mxd file, and cartographic feature classes are provided for display of the results in ArcMap. An included README file describes the complete contents of the zip file. 2. LodeGold_Results_shape.zip - Copies of the results from the geodatabase are also provided in shapefile and CSV formats. The included README file describes the complete contents of the zip file. 3. LodeGold_SourceData_gdb.zip - The source datasets in geodatabase and geotiff format. Data layers include aeromagnetic surveys, AGDB3, ARDF, lithology from SIM3340, and HUC subwatersheds. The data is described by FGDC metadata. An mxd file and cartographic feature classes are provided for display of the source data in ArcMap. Also included are the python scripts used to perform the analyses. Users may modify the scripts to design their own analyses. The included README files describe the complete contents of the zip file and explain the usage of the scripts. 4. LodeGold_SourceData_shape.zip - Copies of the geodatabase source dataset derivatives from ARDF and lithology from SIM3340 created for this analysis are also provided in shapefile and CSV formats. The included README file describes the complete contents of the zip file.

  5. g

    Shapefile

    • geopostcodes.com
    shp
    Updated Sep 2, 2025
    + more versions
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    GeoPostcodes (2025). Shapefile [Dataset]. https://www.geopostcodes.com/continent/asia/shapefile/
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    shpAvailable download formats
    Dataset updated
    Sep 2, 2025
    Dataset authored and provided by
    GeoPostcodes
    Description

    Download high-quality, up-to-date shapefile boundaries (SHP, projection system SRID 4326). Our Shapefile Database offers comprehensive boundary data for spatial analysis, including administrative areas and geographic boundaries. This dataset contains accurate and up-to-date information on all administrative divisions, zip codes, cities, and geographic boundaries, making it an invaluable resource for various applications such as geographic analysis, map and visualization, reporting and business intelligence (BI), master data management, logistics and supply chain management, and sales and marketing. Our location data packages are available in various formats, including Shapefile, GeoJSON, KML, ASC, DAT, CSV, and GML, optimized for seamless integration with popular systems like Esri ArcGIS, Snowflake, QGIS, and more. Companies choose our location databases for their enterprise-grade service, reduction in integration time and cost by 30%, and weekly updates to ensure the highest quality.

  6. a

    Florida COVID19 08152020 ByCounty CSV

    • hub.arcgis.com
    • covid19-usflibrary.hub.arcgis.com
    Updated Aug 16, 2020
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    University of South Florida GIS (2020). Florida COVID19 08152020 ByCounty CSV [Dataset]. https://hub.arcgis.com/datasets/2a53e9dca43d487580673cbf33a701d5
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    Dataset updated
    Aug 16, 2020
    Dataset authored and provided by
    University of South Florida GIS
    Area covered
    Description

    Florida COVID-19 Cases by County exported from the Florida Department of Health GIS Layer on date seen in file name. Archived by the University of South Florida Libraries, Digital Heritage and Humanities Collections. Contact: LibraryGIS@usf.edu.Please Cite Our GIS HUB. If you are a researcher or other utilizing our Florida COVID-19 HUB as a tool or accessing and utilizing the data provided herein, please provide an acknowledgement of such in any publication or re-publication. The following citation is suggested: University of South Florida Libraries, Digital Heritage and Humanities Collections. 2020. Florida COVID-19 Hub. Available at https://covid19-usflibrary.hub.arcgis.com/ . https://doi.org/10.5038/USF-COVID-19-GISLive FDOH DataSource: https://services1.arcgis.com/CY1LXxl9zlJeBuRZ/arcgis/rest/services/Florida_COVID19_Cases/FeatureServerFor data 5/10/2020 or after: Archived data was exported directly from the live FDOH layer into the archive. For data prior to 5/10/2020: Data was exported by the University of South Florida - Digital Heritage and Humanities Collection using ArcGIS Pro Software. Data was then converted to shapefile and csv and uploaded into ArcGIS Online archive. Up until 3/25 the FDOH Cases by County layer was updated twice a day, archives are taken from the 11AM update.For data definitions please visit the following box folder: https://usf.box.com/s/vfjwbczkj73ucj19yvwz53at6v6w614hData definition files names include the relative date they were published. The below information was taken from ancillary documents associated with the original layer from FDOH.Persons Under Investigation/Surveillance (PUI):Essentially, PUIs are any person who has been or is waiting to be tested. This includes: persons who are considered high-risk for COVID-19 due to recent travel, contact with a known case, exhibiting symptoms of COVID-19 as determined by a healthcare professional, or some combination thereof. PUI’s also include people who meet laboratory testing criteria based on symptoms and exposure, as well as confirmed cases with positive test results. PUIs include any person who is or was being tested, including those with negative and pending results. All PUIs fit into one of three residency types: 1. Florida residents tested in Florida2. Non-Florida residents tested in Florida3. Florida residents tested outside of Florida Florida Residents Tested Elsewhere: The total number of Florida residents with positive COVID-19 test results who were tested outside of Florida, and were not exposed/infectious in Florida.Non-Florida Residents Tested in Florida: The total number of people with positive COVID-19 test results who were tested, exposed, and/or infectious while in Florida, but are legal residents of another state. Total Cases: The total (sum) number of Persons Under Investigation (PUI) who tested positive for COVID-19 while in Florida, as well as Florida residents who tested positive or were exposed/contagious while outside of Florida, and out-of-state residents who were exposed, contagious and/or tested in Florida.Deaths: The Deaths by Day chart shows the total number of Florida residents with confirmed COVID-19 that died on each calendar day (12:00 AM - 11:59 PM). Caution should be used in interpreting recent trends, as deaths are added as they are reported to the Department. Death data often has significant delays in reporting, so data within the past two weeks will be updated frequently.Prefix guide: "PUI" = PUI: Persons under surveillance (any person for which we have data about)"T_ " = Testing: Testing information for all PUIs and cases."C_" = Cases only: Information about cases, which are those persons who have COVID-19 positive test results on file“W_” = Surveillance and syndromic dataKey Data about Testing:T_negative : Testing: Total negative persons tested for all Florida and non-Florida residents, including Florida residents tested outside of the state, and those tested at private facilities.T_positive : Testing: Total positive persons tested for all Florida and non-Florida resident types, including Florida residents tested outside of the state, and those tested at private facilities.PUILab_Yes : All persons tested with lab results on file, including negative, positive and inconclusive. This total does NOT include those who are waiting to be tested or have submitted tests to labs for which results are still pending.Key Data about Confirmed COVID-19 Positive Cases: CasesAll: Cases only: The sum total of all positive cases, including Florida residents in Florida, Florida residents outside Florida, and non-Florida residents in FloridaFLResDeaths: Deaths of Florida ResidentsC_Hosp_Yes : Cases (confirmed positive) with a hospital admission notedC_AgeRange Cases Only: Age range for all cases, regardless of residency typeC_AgeMedian: Cases Only: Median range for all cases, regardless of residency typeC_AllResTypes : Cases Only: Sum of COVID-19 positive Florida Residents; includes in and out of state Florida residents, but does not include out-of-state residents who were treated/tested/isolated in Florida. All questions regarding this dataset should be directed to the Florida Department of Health.

  7. Global Administrative Areas of Spain

    • kaggle.com
    zip
    Updated Nov 5, 2016
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    JSimonD (2016). Global Administrative Areas of Spain [Dataset]. https://www.kaggle.com/datasets/juliansimon/esp_adm_shp
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    zip(0 bytes)Available download formats
    Dataset updated
    Nov 5, 2016
    Authors
    JSimonD
    Area covered
    Spain
    Description

    Global Administrative Areas of Spain

    Url with data from any country in the world http://www.gadm.org/country Format file: zip Inside zip files: shp, shx, csv, cpg, dbf, prj

    Fields: OBJECTID ID_0 ISO NAME_0 ID_1 NAME_1 ID_2 NAME_2 HASC_2 CCN_2 CCA_2 TYPE_2 ENGTYPE_2 NL_NAME_2 VARNAME_2

    URL zip http://biogeo.ucdavis.edu/data/gadm2.8/shp/ESP_adm_shp.zip

  8. B

    Residential Schools Locations Dataset (Shapefile format)

    • borealisdata.ca
    • dataone.org
    Updated Jun 5, 2019
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    Rosa Orlandini (2019). Residential Schools Locations Dataset (Shapefile format) [Dataset]. http://doi.org/10.5683/SP2/FJG5TG
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Jun 5, 2019
    Dataset provided by
    Borealis
    Authors
    Rosa Orlandini
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Time period covered
    Jan 1, 1863 - Jun 30, 1998
    Area covered
    Canada
    Description

    The Residential Schools Locations Dataset in shapefile format contains the locations (latitude and longitude) of Residential Schools and student hostels operated by the federal government in Canada. All the residential schools and hostels that are listed in the Indian Residential School Settlement Agreement are included in this data set, as well as several Industrial schools and residential schools that were not part of the IRRSA. This version of the dataset doesn’t include the five schools under the Newfoundland and Labrador Residential Schools Settlement Agreement. The original school location data was created by the Truth and Reconciliation Commission, and was provided to the researcher (Rosa Orlandini) by the National Centre for Truth and Reconciliation in April 2017. The data set was created by Rosa Orlandini, and builds upon and enhances the previous work of the Truth and Reconcilation Commission, Morgan Hite (creator of the Atlas of Indian Residential Schools in Canada that was produced for the Tk'emlups First Nation and Justice for Day Scholar's Initiative, and Stephanie Pyne (project lead for the Residential Schools Interactive Map). Each individual school location in this dataset is attributed either to RSIM, Morgan Hite, NCTR or Rosa Orlandini. Many schools/hostels had several locations throughout the history of the institution. If the school/hostel moved from its’ original location to another property, then the school is considered to have two unique locations in this data set,the original location and the new location. For example, Lejac Indian Residential School had two locations while it was operating, Stuart Lake and Fraser Lake. If a new school building was constructed on the same property as the original school building, it isn't considered to be a new location, as is the case of Girouard Indian Residential School. When the precise location is known, the coordinates of the main building are provided, and when the precise location of the building isn’t known, an approximate location is provided. For each residential school institution location, the following information is provided: official names, alternative name, dates of operation, religious affiliation, latitude and longitude coordinates, community location, Indigenous community name, contributor (of the location coordinates), school/institution photo (when available), location point precision, type of school (hostel or residential school) and list of references used to determine the location of the main buildings or sites. The geographic coordinate system for this dataset is WGS 1984. The data in shapefile format [IRS_locations.zip] can be viewed and mapped in a Geographic Information System software. Detailed metadata in xml format is available as part of the data in shapefile format. In addition, the field name descriptions (IRS_locfields.csv) and the detailed locations descriptions (IRS_locdescription.csv) should be used alongside the data in shapefile format.

  9. d

    Geospatial Data from the Alpine Treeline Warming Experiment (ATWE) on Niwot...

    • search.dataone.org
    • knb.ecoinformatics.org
    • +1more
    Updated Jul 7, 2021
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    Fabian Zuest; Cristina Castanha; Nicole Lau; Lara M. Kueppers (2021). Geospatial Data from the Alpine Treeline Warming Experiment (ATWE) on Niwot Ridge, Colorado, USA [Dataset]. http://doi.org/10.15485/1804896
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    Dataset updated
    Jul 7, 2021
    Dataset provided by
    ESS-DIVE
    Authors
    Fabian Zuest; Cristina Castanha; Nicole Lau; Lara M. Kueppers
    Time period covered
    Jan 1, 2008 - Jan 1, 2012
    Area covered
    Description

    This is a collection of all GPS- and computer-generated geospatial data specific to the Alpine Treeline Warming Experiment (ATWE), located on Niwot Ridge, Colorado, USA. The experiment ran between 2008 and 2016, and consisted of three sites spread across an elevation gradient. Geospatial data for all three experimental sites and cone/seed collection locations are included in this package. ––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––––– Geospatial files include cone collection, experimental site, seed trap, and other GPS location/terrain data. File types include ESRI shapefiles, ESRI grid files or Arc/Info binary grids, TIFFs (.tif), and keyhole markup language (.kml) files. Trimble-imported data include plain text files (.txt), Trimble COR (CorelDRAW) files, and Trimble SSF (Standard Storage Format) files. Microsoft Excel (.xlsx) and comma-separated values (.csv) files corresponding to the attribute tables of many files within this package are also included. A complete list of files can be found in this document in the “Data File Organization” section in the included Data User's Guide. Maps are also included in this data package for reference and use. These maps are separated into two categories, 2021 maps and legacy maps, which were made in 2010. Each 2021 map has one copy in portable network graphics (.png) format, and the other in .pdf format. All legacy maps are in .pdf format. .png image files can be opened with any compatible programs, such as Preview (Mac OS) and Photos (Windows). All GIS files were imported into geopackages (.gpkg) using QGIS, and double-checked for compatibility and data/attribute integrity using ESRI ArcGIS Pro. Note that files packaged within geopackages will open in ArcGIS Pro with “main.” preceding each file name, and an extra column named “geom” defining geometry type in the attribute table. The contents of each geospatial file remain intact, unless otherwise stated in “niwot_geospatial_data_list_07012021.pdf/.xlsx”. This list of files can be found as an .xlsx and a .pdf in this archive. As an open-source file format, files within gpkgs (TIFF, shapefiles, ESRI grid or “Arc/Info Binary”) can be read using both QGIS and ArcGIS Pro, and any other geospatial softwares. Text and .csv files can be read using TextEdit/Notepad/any simple text-editing software; .csv’s can also be opened using Microsoft Excel and R. .kml files can be opened using Google Maps or Google Earth, and Trimble files are most compatible with Trimble’s GPS Pathfinder Office software. .xlsx files can be opened using Microsoft Excel. PDFs can be opened using Adobe Acrobat Reader, and any other compatible programs. A selection of original shapefiles within this archive were generated using ArcMap with associated FGDC-standardized metadata (xml file format). We are including these original files because they contain metadata only accessible using ESRI programs at this time, and so that the relationship between shapefiles and xml files is maintained. Individual xml files can be opened (without a GIS-specific program) using TextEdit or Notepad. Since ESRI’s compatibility with FGDC metadata has changed since the generation of these files, many shapefiles will require upgrading to be compatible with ESRI’s latest versions of geospatial software. These details are also noted in the “niwot_geospatial_data_list_07012021” file.

  10. RAM Legacy Stock Assessment Database Geospatial Regions

    • zenodo.org
    • data.niaid.nih.gov
    Updated Oct 8, 2021
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    James Rising; James Rising (2021). RAM Legacy Stock Assessment Database Geospatial Regions [Dataset]. http://doi.org/10.5281/zenodo.834755
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    Dataset updated
    Oct 8, 2021
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    James Rising; James Rising
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    This data archive describes region definitions for the RAM Legacy Stock Assessment Database. Within the RAM Legacy database, stock assessments are associated with named areas. We approximate coordinates and bounding boxes for each of these areas, using country EEZs and fishing area shapefiles when appropriate. In addition, we develop a simple language to encode the GIS shapes of the areas, along with an interpreter to translate these codes into polygons. The syntax supports using political entities, shapefile regions, circles and rectangles, clipped versions of these, and combinations of these.

    The archive contains the following contents:

    - syntax.pdf: This document describes the geocoding syntax, and lists all of the geocoding descriptions for the assessment regions.

    - results: This folder contains a shapefile of assessment regions (ram.shp) and a summary file of each region's centroid and size.

    - sources: This folder contains shapefiles for FAO regions and New Zealand fishing regions, used by the syntax system, and latlon.csv which contains the region descriptions for each assessment region.

    - code: load_areas.R contains functions that interpret the geocoding syntax and genshape.R generates the ram.shp shapefile.

  11. e

    Data from: The Tropical Andes Biodiversity Hotspot: A Comprehensive Dataset...

    • knb.ecoinformatics.org
    • dataone.org
    • +3more
    Updated May 30, 2024
    + more versions
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    Pablo Jarrín-V.; Mario H Yánez-Muñoz (2024). The Tropical Andes Biodiversity Hotspot: A Comprehensive Dataset for the Mira-Mataje Binational Basins [Dataset]. http://doi.org/10.5063/F14F1P6H
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    Dataset updated
    May 30, 2024
    Dataset provided by
    Knowledge Network for Biocomplexity
    Authors
    Pablo Jarrín-V.; Mario H Yánez-Muñoz
    Time period covered
    Jun 11, 2022 - Jun 11, 2023
    Area covered
    Description

    We present a flora and fauna dataset for the Mira-Mataje binational basins. This is an area shared between southwestern Colombia and northwestern Ecuador, where both the Chocó and Tropical Andes biodiversity hotspots converge. Information from 120 sources was systematized in the Darwin Core Archive (DwC-A) standard and geospatial vector data format for geographic information systems (GIS) (shapefiles). Sources included natural history museums, published literature, and citizen science repositories across 18 countries. The resulting database has 33,460 records from 5,281 species, of which 1,083 are endemic and 680 threatened. The diversity represented in the dataset is equivalent to 10\% of the total plant species and 26\% of the total terrestrial vertebrate species in the hotspots. It corresponds to 0.07\% of their total area. The dataset can be used to estimate and compare biodiversity patterns with environmental parameters and provide value to ecosystems, ecoregions, and protected areas. The dataset is a baseline for future assessments of biodiversity in the face of environmental degradation, climate change, and accelerated extinction processes. The data has been formally presented in the manuscript entitled "The Tropical Andes Biodiversity Hotspot: A Comprehensive Dataset for the Mira-Mataje Binational Basins" in the journal "Scientific Data". To maintain DOI integrity, this version will not change after publication of the manuscript and therefore we cannot provide further references on volume, issue, and DOI of manuscript publication. - Data format 1: The .rds file extension saves a single object to be read in R and provides better compression, serialization, and integration within the R environment, than simple .csv files. The description of file names is in the original manuscript. -- m_m_flora_2021_voucher_ecuador.rds -- m_m_flora_2021_observation_ecuador.rds -- m_m_flora_2021_total_ecuador.rds -- m_m_fauna_2021_ecuador.rds - Data format 2: The .csv file has been encoded in UTF-8, and is an ASCII file with text separated by commas. The description of file names is in the original manuscript. -- m_m_flora_fauna_2021_all.zip. This file includes all biodiversity datasets. -- m_m_flora_2021_voucher_ecuador.csv -- m_m_flora_2021_observation_ecuador.csv -- m_m_flora_2021_total_ecuador.csv -- m_m_fauna_2021_ecuador.csv - Data format 3: We consolidated a shapefile for the basin containing layers for vegetation ecosystems and the total number of occurrences, species, and endemic and threatened species for each ecosystem. -- biodiversity_measures_mira_mataje.zip. This file includes the .shp file and accessory geomatic files. - A set of 3D shaded-relief map representations of the data in the shapefile can be found at https://doi.org/10.6084/m9.figshare.23499180.v4 Three taxonomic data tables were used in our technical validation of the presented dataset. These three files are: 1) the_catalog_of_life.tsv (Source: Bánki, O. et al. Catalogue of life checklist (version 2024-03-26). https://doi.org/10.48580/dfz8d (2024)) 2) world_checklist_of_vascular_plants_names.csv (we are also including ancillary tables "world_checklist_of_vascular_plants_distribution.csv", and "README_world_checklist_of_vascular_plants_.xlsx") (Source: Govaerts, R., Lughadha, E. N., Black, N., Turner, R. & Paton, A. The World Checklist of Vascular Plants is a continuously updated resource for exploring global plant diversity. Sci. Data 8, 215, 10.1038/s41597-021-00997-6 (2021).) 3) world_flora_online.csv (Source: The World Flora Online Consortium et al. World flora online plant list December 2023, 10.5281/zenodo.10425161 (2023).)

  12. a

    Great Giant Sea Bass Count 2014

    • spatialdiscovery-ucsb.opendata.arcgis.com
    • arcgis.com
    • +2more
    Updated Jan 1, 2014
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    University of California, Santa Barbara (2014). Great Giant Sea Bass Count 2014 [Dataset]. https://spatialdiscovery-ucsb.opendata.arcgis.com/datasets/4c3b408e6a9845fea75e292c59ba08f7
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    Dataset updated
    Jan 1, 2014
    Dataset authored and provided by
    University of California, Santa Barbara
    Area covered
    Description

    Survey results are available in two seperate formats. The .csv output contains all non-spatial data from the main survey form, and can be loaded in spreadsheet programs such as Microsoft Excel. The spatial content of the survey is available as a zipped collection of one or more shapefiles. These files can be opened in GIS applications such as ArcGISor QGIS. Please note, only completed survey responses are exported. Those still in draft will be excluded.Output columns in both the CSV and shapefile formats are named based on the exportidspecified in the form field configuration. If you are looking to analyze spatial data from the shapefiles based on attributes collected in the main response form, you can join fields from the CSV file with spatial features by joining on the RESPONSE_ID field.

  13. U

    Satellite Data, Golden Eagles (Aquila chrysaetos), Western North America,...

    • data.usgs.gov
    • s.cnmilf.com
    • +2more
    Updated Nov 3, 2020
    + more versions
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    Erica Craig; Mark Fuller; Thomas Zarriello; Tim Craig; Kyle Enns; Tara Bell; Kirk Bates; Cristiana Falvo; Linda Schueck; Anthony Everette (2020). Satellite Data, Golden Eagles (Aquila chrysaetos), Western North America, 1993-1997 [Dataset]. http://doi.org/10.5066/P9QP0TDH
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    Dataset updated
    Nov 3, 2020
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Authors
    Erica Craig; Mark Fuller; Thomas Zarriello; Tim Craig; Kyle Enns; Tara Bell; Kirk Bates; Cristiana Falvo; Linda Schueck; Anthony Everette
    License

    U.S. Government Workshttps://www.usa.gov/government-works
    License information was derived automatically

    Time period covered
    1993 - 1997
    Description

    The satellite data consist of 9,253 estimated locations of 21 golden eagles that were satellite-tagged in either east-central Idaho (Salmon, Idaho) or southwestern Idaho (Snake River National Conservation Area) and tracked between 1993 and 1997 via the Argos satellite system. The raw eagle tracking data provided by Argos were filtered one time using a version of the Douglas Argos-Filter Algorithm and converted into XLS spreadsheet form. This preservation project preserved the geospatial and satellite information from the XLS spreadsheet and released it in shapefile format (Satellite_Data.shp) and CSV format (Satellite_Data.csv). Each tagged bird in this dataset has a unique PTT number that is consistent across the three datasets in this release. Each of the 21 golden eagles (with 23 total PTT IDs, due to recaptures) have satellite location information (provided in the Satellite_Data shapefile and CSV) and 11 of these birds have behavioral observations taken from the ground (see CS ...

  14. d

    Process-based water temperature predictions in the Midwest US: 1 Spatial...

    • catalog.data.gov
    • data.usgs.gov
    • +1more
    Updated Oct 8, 2025
    + more versions
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    U.S. Geological Survey (2025). Process-based water temperature predictions in the Midwest US: 1 Spatial data (GIS polygons for 7,150 lakes) [Dataset]. https://catalog.data.gov/dataset/process-based-water-temperature-predictions-in-the-midwest-us-1-spatial-data-gis-polygons-
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    Dataset updated
    Oct 8, 2025
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Area covered
    Midwestern United States
    Description

    This dataset provides shapefile outlines of the 7,150 lakes that had temperature modeled as part of this study. The format is a shapefile for all lakes combined (.shp, .shx, .dbf, and .prj files). A csv file of lake metadata is also included. This dataset is part of a larger data release of lake temperature model inputs and outputs for 7,150 lakes in the U.S. states of Minnesota and Wisconsin (http://dx.doi.org/10.5066/P9CA6XP8).

  15. d

    Data from: Titanium-vanadium deposits hosted in mafic-ultramafic layered...

    • catalog.data.gov
    • data.usgs.gov
    • +1more
    Updated Oct 1, 2025
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    U.S. Geological Survey (2025). Titanium-vanadium deposits hosted in mafic-ultramafic layered intrusions and massif anorthosite intrusions from around the world [Dataset]. https://catalog.data.gov/dataset/titanium-vanadium-deposits-hosted-in-mafic-ultramafic-layered-intrusions-and-massif-anorth
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    Dataset updated
    Oct 1, 2025
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Description

    This data release includes four .csv files and one Esri shapefile which contain data on titanium-vanadium deposits hosted in mafic-ultramafic layered intrusions and massif anorthosite intrusions from around the world. Some of the data was used to create a grade and tonnage model for titanium-vanadium deposits hosted in mafic-ultramafic layered intrusions. Only deposits with reported grade and tonnage information were included in this data compilation. The Titanium_vanadium_deposits.csv and Titanium_vanadium_deposits.shp files list the deposits and associated information such as the host intrusion, location, grade, and tonnage data, along with other miscellaneous descriptive data about the deposits. The Titanium_vanadium_column_headings.csv file correlates the column headings in the Titanium_vanadium_deposits.csv file with the attribute field names in the Titanium_vanadium_deposits.shp file and provides a brief description of each column heading and attribute field name. The Titanium_vanadium_deposits_concentrate_grade.csv file lists the concentrate grade data for the deposits, when available. The Titanium_vanadium_deposits_references.csv file lists the abbreviated and full references that are cited in the Titanium_vanadium_deposits.csv, and Titanium_vanadium_deposits.shp, and Titanium_vanadium_deposits_concentrate_grade.csv files.

  16. a

    Florida COVID19 05282021 ByZip CSV

    • hub.arcgis.com
    Updated May 28, 2021
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    University of South Florida GIS (2021). Florida COVID19 05282021 ByZip CSV [Dataset]. https://hub.arcgis.com/datasets/c01796e63af24285ad933e941bff716d
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    Dataset updated
    May 28, 2021
    Dataset authored and provided by
    University of South Florida GIS
    Area covered
    Description

    Florida COVID-19 Cases by Zip Code exported from the Florida Department of Health GIS Layer on date seen in file name. Archived by the University of South Florida Libraries, Digital Heritage and Humanities Collections. Contact: LibraryGIS@usf.edu.Please Cite Our GIS HUB. If you are a researcher or other utilizing our Florida COVID-19 HUB as a tool or accessing and utilizing the data provided herein, please provide an acknowledgement of such in any publication or re-publication. The following citation is suggested: University of South Florida Libraries, Digital Heritage and Humanities Collections. 2020. Florida COVID-19 Hub. Available at https://covid19-usflibrary.hub.arcgis.com/.https://doi.org/10.5038/USF-COVID-19-GISLive FDOH Data Source: https://services1.arcgis.com/CY1LXxl9zlJeBuRZ/arcgis/rest/services/Florida_Cases_Zips_COVID19/FeatureServerFor data 5/10/2020 or after: Archived data was exported directly from the live FDOH layer into the archive. For data prior to 5/10/2020: Data was exported by the University of South Florida - Digital Heritage and Humanities Collection using ArcGIS Pro Software. Data was then converted to shapefile and csv and uploaded into ArcGIS Online archive. For data definitions please visit the following box folder: https://usf.box.com/s/vfjwbczkj73ucj19yvwz53at6v6w614hData definition files names include the relative date they were published. The below information was taken from ancillary documents associated with the original layer from FDOH.Q. How is the zip code assigned to a person or case? Cases are counted in a zip code based on residential or mailing address, or by healthcare provider or lab address if other addresses are missing.Q. Why is the city data and the zip code data different? The zip code data is supplied to a healthcare worker, case manager, or lab technician by each individual during intake when a test is first recorded. When entering a zip code, the system we use automatically produces a list of cities within that zip code for the individual to further specify where they live. Sometimes the individual uses the postal city, which may be Miami, when in reality that person lives outside the City of Miami boundaries in the jurisdiction of Coral Gables. Many zip codes contain multiple city/town jurisdictions, and about 20% of zip codes overlap more than one county. Q: How is the Zip Code data calculated and/or shown? If a COUNTY has five or more cases (total): • In zip codes with fewer than 5 cases, the total number of cases is shown as “<5”. • Zip codes with 0 cases in these counties are “0" or "No cases.” • All values of 5 or greater are shown by the actual number of cases in that zip code. If a COUNTY has fewer than five total cases across all of its zip codes, then ALL of the zip codes within that county show the total number of cases as "Suppressed." Q: My zip code says "SUPPRESSED" under cases. What does that mean? IF Suppressed: This county currently has fewer than five cases across all zip codes in the county. In an effort to protect the privacy of our COVID-19-Positive residents, zip code data is only available in counties where five or more cases have been reported. Q: What about PO Box zip codes, or zip codes with letters, like 334MH? PO Box zip codes are not shown in the map. “Filler” zip codes with letters, like 334MH, are typically areas where no or very few people live – like the Florida Everglades, and are shown on the map like any other zip code. Key Data about Cases by Zip Code: ZIP = The zip code COUNTYNAME = The county for the zip code (multi-part counties have been split) ZIPX = The unique county-zip identifier used to pair the data during updates POName = The postal address name assigned to the zip code place_labels = A list of the municipalities intersecting the zip code boundary c_places = The list of cities cases self-reported as being residents of Cases_1 = The number of cases in each zip code, with conditions*LabelY = A calculated field for map display only. All questions regarding this dataset should be directed to the Florida Department of Health.

  17. c

    Location and analysis of sediment samples collected by the U.S. Geological...

    • s.cnmilf.com
    • dataone.org
    • +3more
    Updated Oct 1, 2025
    + more versions
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    U.S. Geological Survey (2025). Location and analysis of sediment samples collected by the U.S. Geological Survey in 2014 along the Delmarva Peninsula, MD and VA (Esri point shapefile and CSV file, Geographic, WGS 84) [Dataset]. https://s.cnmilf.com/user74170196/https/catalog.data.gov/dataset/location-and-analysis-of-sediment-samples-collected-by-the-u-s-geological-survey-in-2014-a
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    Dataset updated
    Oct 1, 2025
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Area covered
    Delmarva Peninsula
    Description

    The Delmarva Peninsula is a 220-kilometer-long headland, spit, and barrier island complex that was significantly affected by Hurricane Sandy. A U.S. Geological Survey cruise was conducted in the summer of 2014 to map the inner continental shelf of the Delmarva Peninsula using geophysical and sampling techniques to define the geologic framework that governs coastal system evolution at storm-event and longer timescales. Data collected during the 2014 cruise include swath bathymetry, sidescan sonar, chirp and boomer seismic-reflection profiles, acoustic Doppler current profiler, and sample and bottom photograph data. Processed data in raster and vector format are released here for the bottom photographs and sediment samples. More information about the USGS survey conducted as part of the Hurricane Sandy Response-- Geologic Framework and Coastal Vulnerability Study can be found at the project website or on the WHCMSC Field Activity Web pages: https://woodshole.er.usgs.gov/project-pages/delmarva/ and https://cmgds.marine.usgs.gov/fan_info.php?fan=2014-002-FA

  18. d

    Mission Creek, MT

    • dataone.org
    • hydroshare.org
    Updated Dec 5, 2021
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    Sara Goeking (2021). Mission Creek, MT [Dataset]. https://dataone.org/datasets/sha256%3A6429150384a7e550c752de9ce29623116c8c1b70edd51e5d0b578c47ead40f77
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    Dataset updated
    Dec 5, 2021
    Dataset provided by
    Hydroshare
    Authors
    Sara Goeking
    Description

    This resource contains shapefiles and text/csv files for the Mission Creek basin, Montana, above USGS gage with STAID 12377150. The point shapefile represents the gage location, as identified in the USGS StreamStats online application, and the polygon shapefile is the basin boundary as delineated by StreamStats given the gage location as the outflow. The Mission_Creek_basin.csv contains descriptive information about the watershed, such as percent forest, min/max/mean elevation, precipitation, etc.

  19. g

    United Arab Emirates Shapefile

    • geopostcodes.com
    shp
    Updated May 15, 2025
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    GeoPostcodes (2025). United Arab Emirates Shapefile [Dataset]. https://www.geopostcodes.com/country/uea/shapefile/
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    shpAvailable download formats
    Dataset updated
    May 15, 2025
    Dataset authored and provided by
    GeoPostcodes
    Area covered
    United Arab Emirates
    Description

    Download high-quality, up-to-date United Arab Emirates shapefile boundaries (SHP, projection system SRID 4326). Our United Arab Emirates Shapefile Database offers comprehensive boundary data for spatial analysis, including administrative areas and geographic boundaries. This dataset contains accurate and up-to-date information on all administrative divisions, zip codes, cities, and geographic boundaries, making it an invaluable resource for various applications such as geographic analysis, map and visualization, reporting and business intelligence (BI), master data management, logistics and supply chain management, and sales and marketing. Our location data packages are available in various formats, including Shapefile, GeoJSON, KML, ASC, DAT, CSV, and GML, optimized for seamless integration with popular systems like Esri ArcGIS, Snowflake, QGIS, and more. Companies choose our location databases for their enterprise-grade service, reduction in integration time and cost by 30%, and weekly updates to ensure the highest quality.

  20. SA Permanent Marks Dataset. - Dataset - SARIG catalogue

    • pid.sarig.sa.gov.au
    Updated Jun 16, 2025
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    pid.sarig.sa.gov.au (2025). SA Permanent Marks Dataset. - Dataset - SARIG catalogue [Dataset]. https://pid.sarig.sa.gov.au/dataset/mesac29673
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    Dataset updated
    Jun 16, 2025
    Dataset provided by
    Government of South Australiahttp://sa.gov.au/
    Description

    This download contains the complete Permanent Mark database for South Australia. PM information provided in both Shapefile and CSV format. Data provided is in GDA2020 Datum. This download contains the complete Permanent Mark database for South Australia. PM information provided in both Shapefile and CSV format. Data provided is in GDA2020 Datum.

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U.S. Geological Survey (2025). Grain-size analysis results and locations of sediment samples collected in Little Egg Inlet and offshore the southern end of Long Beach Island, NJ, during USGS Field Activity 2018-049-FA (simplified point shapefile and CSV files) [Dataset]. https://catalog.data.gov/dataset/grain-size-analysis-results-and-locations-of-sediment-samples-collected-in-little-egg-inle

Grain-size analysis results and locations of sediment samples collected in Little Egg Inlet and offshore the southern end of Long Beach Island, NJ, during USGS Field Activity 2018-049-FA (simplified point shapefile and CSV files)

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Dataset updated
Oct 8, 2025
Dataset provided by
United States Geological Surveyhttp://www.usgs.gov/
Area covered
Long Beach Island, Little Egg Inlet, New Jersey
Description

The natural resiliency of the New Jersey barrier island system, and the efficacy of management efforts to reduce vulnerability, depends on the ability of the system to recover and maintain equilibrium in response to storms and persistent coastal change. This resiliency is largely dependent on the availability of sand in the beach system. In an effort to better understand the system's sand budget and processes in which this system evolves, high-resolution geophysical mapping of the sea floor in Little Egg Inlet and along the southern end of Long Beach Island near Beach Haven, New Jersey was conducted from May 31 to June 10, 2018, followed by a sea floor sampling survey conducted from October 22 to 23, 2018, as part of a collaborative effort between the U.S. Geological Survey and Stockton University. Multibeam echo sounder bathymetry and backscatter data were collected along 741 kilometers of tracklines (approximately 200 square kilometers) of the coastal sea floor to regionally define its depth and morphology, as well as the type and distribution of sea-floor sediments. Six hundred ninety-two kilometers of seismic-reflection profile data were also collected to define the thickness and structure of sediment deposits in the inlet and offshore. These new data will help inform future management decisions that affect the natural and recreational resources of the area around and offshore of Little Egg Inlet. These mapping surveys provide high-quality data needed to build scientific knowledge of the evolution and behavior of the New Jersey barrier island system.

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