A complete copy of the source files and sample data used during this workshop, arranged into a step-by-step tutorial series, can be obtained from the repository page on GitHub: https://esricanada-ce.github.io/r-arcgis-tutorials/
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
The Grid Garage Toolbox is designed to help you undertake the Geographic Information System (GIS) tasks required to process GIS data (geodata) into a standard, spatially aligned format. This format is required by most, grid or raster, spatial modelling tools such as the Multi-criteria Analysis Shell for Spatial Decision Support (MCAS-S). Grid Garage contains 36 tools designed to save you time by batch processing repetitive GIS tasks as well diagnosing problems with data and capturing a record of processing step and any errors encountered.
Grid Garage provides tools that function using a list based approach to batch processing where both inputs and outputs are specified in tables to enable selective batch processing and detailed result reporting. In many cases the tools simply extend the functionality of standard ArcGIS tools, providing some or all of the inputs required by these tools via the input table to enable batch processing on a 'per item' basis. This approach differs slightly from normal batch processing in ArcGIS, instead of manually selecting single items or a folder on which to apply a tool or model you provide a table listing target datasets. In summary the Grid Garage allows you to:
The Grid Garage is intended for use by anyone with an understanding of GIS principles and an intermediate to advanced level of GIS skills. Using the Grid Garage tools in ArcGIS ModelBuilder requires skills in the use of the ArcGIS ModelBuilder tool.
Download Instructions: Create a new folder on your computer or network and then download and unzip the zip file from the GitHub Release page for each of the following items in the 'Data and Resources' section below. There is a folder in each zip file that contains all the files. See the Grid Garage User Guide for instructions on how to install and use the Grid Garage Toolbox with the sample data provided.
2019 Novel Coronavirus COVID-19 (2019-nCoV) Visual Dashboard and Map:
https://www.arcgis.com/apps/opsdashboard/index.html#/bda7594740fd40299423467b48e9ecf6
Downloadable data:
https://github.com/CSSEGISandData/COVID-19
Additional Information about the Visual Dashboard:
https://systems.jhu.edu/research/public-health/ncov
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Geological Survey Ireland has a core scanning suite consisting of a Short-Wave Infra-red (SWIR) camera and a Medium-Wave Infra-red (MWIR) camera.We have over 400km of drill core in our core store and are in the process of scanning all of it. We currently have ~7Tb of data.This data is freely available, but due to the size of the files please email gsi.corestore[AT]gsi.ie so we can facilitate delivery.This is a sample dataset consisting of 1 box of core.A single core-box scanned in the Short Wave Infra-red range for use with explanatory notebooks available on our GitHub repository. This data consists of box 25 of drillhole GSI-17-007, 105.98m to 110.35m. This box contains the contact between the Ballymore Formation and the Oakport Formation.We are open to collaboration using either the scanner or the data with any of our stakeholders.For questions, issues, suggestions for improvement or to discuss collaboration, please contact Russell Rogers, c/o duty.geologist[AT]gsi.ie.We also have a GitHub repository that hosts notebooks using the sample dataset, explaining some of the methods we have used in python to pre-process and process our image data.1. Opening and Starting with Geological Survey Ireland Hyperpectral Data2. Denoising Geological Survey Ireland Hyperspectral Data3. Removing the core box from the image4. Removing the continuum5. ClusteringThe notebook uses the Minisom module, because it is a very lightweight implementation with minimal dependencies, but there are many other SOM implementations available in python.
NYS Building Footprints - metadata info:The New York State building footprints service contains building footprints with address information. The footprints have address point information folded in from the Streets and Address Matching (SAM - https://gis.ny.gov/streets/) address point file. The building footprints have a field called “Address Range”, this field shows (where available) either a single address or an address range, depending on the address points that fall within the footprint. Ex: 3860 Atlantic Avenue or Ex: 32 - 34 Wheatfield Circle Building footprints in New York State are from four different sources: Microsoft, Open Data, New York State Energy Research and Development Authority (NYSERDA), and Geospatial Services. The majority of the footprints are from NYSERDA, except in NYC where the primary source was Open Data. Microsoft footprints were added where the other 2 sources were missing polygons. Field Descriptions: NYSGeo Source : tells the end user if the source is NYSERDA, Microsoft, NYC Open Data, and could expand from here in the futureAddress Point Count: the number of address points that fall within that building footprintAddress Range : If an address point falls within a footprint it lists the range of those address points. Ex: if a building is on a corner of South Pearl and Beaver Street, 40 points fall on the building, and 35 are South Pearl Street it would give the range of addresses for South Pearl. We also removed sub addresses from this range, primarily apartment related. For example, in above example, it would not list 30 South Pearl, Apartment 5A, it would list 30 South Pearl.Most Common Street : the street name of the largest number of address points. In the above example, it would list “South Pearl” as the most common street since the majority of address points list it as the street. Other Streets: the list of other streets that fall within the building footprint, if any. In the above example, “Beaver Street” would be listed since address points for Beaver Street fall on the footprint but are not in the majority.County Name : County name populated from CIESINs. If not populated from CIESINs, identified by the GSMunicipality Name : Municipality name populated from CIESINs. If not populated from CIESINs, identified by the GSSource: Source where the data came from. If NYSGeo Source = NYSERDA, the data would typically list orthoimagery, LIDAR, county data, etc.Source ID: if NYSGeo Source = NYSERDA, Source ID would typically list an orthoimage or LIDAR tileSource Date: Date the footprint was created. If the source image was from 2016 orthoimagery, 2016 would be the Source Date. Description of each footprint source:NYSERDA Building footprints that were created as part of the New York State Flood Impact Decision Support Systems https://fidss.ciesin.columbia.edu/home Footprints vary in age from county to county.Microsoft Building Footprints released 6/28/2018 - vintage unknown/varies. More info on this dataset can be found at https://blogs.bing.com/maps/2018-06/microsoft-releases-125-million-building-footprints-in-the-us-as-open-data.NYC Open Data - Building Footprints of New York City as a polygon feature class. Last updated 7/30/2018, downloaded on 8/6/2018. Feature Class of footprint outlines of buildings in New York City. Please see the following link for additional documentation- https://github.com/CityOfNewYork/nyc-geo-metadata/blob/master/Metadata/Metadata_BuildingFootprints.mdSpatial Reference of Source Data: UTM Zone 18, meters, NAD 83. Spatial Reference of Web Service: Spatial Reference of Web Service: WGS 1984 Web Mercator Auxiliary Sphere.
This download contains (1) a CNTK model for detecting coconut trees and (2) a test TIFF image.To get started with this deep learning sample, please visit https://github.com/Esri/raster-deep-learning for instructions.
Attribution-NonCommercial-ShareAlike 4.0 (CC BY-NC-SA 4.0)https://creativecommons.org/licenses/by-nc-sa/4.0/
License information was derived automatically
Summary:
The files contained herein represent green roof footprints in NYC visible in 2016 high-resolution orthoimagery of NYC (described at https://github.com/CityOfNewYork/nyc-geo-metadata/blob/master/Metadata/Metadata_AerialImagery.md). Previously documented green roofs were aggregated in 2016 from multiple data sources including from NYC Department of Parks and Recreation and the NYC Department of Environmental Protection, greenroofs.com, and greenhomenyc.org. Footprints of the green roof surfaces were manually digitized based on the 2016 imagery, and a sample of other roof types were digitized to create a set of training data for classification of the imagery. A Mahalanobis distance classifier was employed in Google Earth Engine, and results were manually corrected, removing non-green roofs that were classified and adjusting shape/outlines of the classified green roofs to remove significant errors based on visual inspection with imagery across multiple time points. Ultimately, these initial data represent an estimate of where green roofs existed as of the imagery used, in 2016.
These data are associated with an existing GitHub Repository, https://github.com/tnc-ny-science/NYC_GreenRoofMapping, and as needed and appropriate pending future work, versioned updates will be released here.
Terms of Use:
The Nature Conservancy and co-authors of this work shall not be held liable for improper or incorrect use of the data described and/or contained herein. Any sale, distribution, loan, or offering for use of these digital data, in whole or in part, is prohibited without the approval of The Nature Conservancy and co-authors. The use of these data to produce other GIS products and services with the intent to sell for a profit is prohibited without the written consent of The Nature Conservancy and co-authors. All parties receiving these data must be informed of these restrictions. Authors of this work shall be acknowledged as data contributors to any reports or other products derived from these data.
Associated Files:
As of this release, the specific files included here are:
Column Information for the datasets:
Some, but not all fields were joined to the green roof footprint data based on building footprint and tax lot data; those datasets are embedded as hyperlinks below.
For GreenRoofData2016_20180917.csv there are two additional columns, representing the coordinates of centroids in geographic coordinates (Lat/Long, WGS84; EPSG 4263):
Acknowledgements:
This work was primarily supported through funding from the J.M. Kaplan Fund, awarded to the New York City Program of The Nature Conservancy, with additional support from the New York Community Trust, through New York City Audubon and the Green Roof Researchers Alliance.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
This is an open data for rural water supply systems in Narok Water and Sewerage Services Co., Ltd in Kenya. The data format is Mapbox Vector Tiles, you can use it by using Mapbox GL JS or Leaflet through browser. Also, QGIS or ArcGIS can handle Mapbox Vector Tiles format.
You can see the specification of this vector tiles from here.
This vector tiles data is available on Github pages through the URL of https://narwassco.github.io/vt/tiles/{z}/{x}/{y}.mvt. You can use our data together with your own Mapbox style.json. You can also see some example of style.json from our website.
In another way to use our open data, you can choose QGIS 3.14 or above version. QGIS officially supported vector tiles from 3.14 version. You can download narok.mbtiles
from openAFRICA and just drag & drop it to QGIS.
Please let us know if you have any problems to use our data. Also, we would like to know your use cases of our water vector tiles.
Enjoy our vector tiles!
CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
License information was derived automatically
This layer is the example dataset provided in the original GitHub Repository for Action 2017.2 on INSPIRE Alternative Encodings from the INSPIRE JRC MIG-T Action 2017.2. It is provided herein as Alternative Encodings Draft GeoJSON imported into ArcGIS Online; this hosted Feature Layer was created from the GeoJSON at the time of import. This layer demonstrates the simplified/flattened address schema developed under MIG-T Action 2017.2 following the guidance provided for community implementations. The remainder of the ArcGIS INSPIRE Open Data streamlined fGDB templates in this collection follow the guidance and document templates laid out by Action 2017.2.Note: This Address point dataset contains only one point as provided through the GitHub Repository.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
PurposeTo help search and rescue (SAR) volunteer teams and their partners collect mission data. By collecting information in a consistent manner and with spatially explicit tools, SAR agencies can better answer key questions:How many incidents have we responded to?Where are there high concentrations of incidents by type? How many total hours were volunteered in a given year?Audience Public Safety GIS Specialists who are deploying mission data collection solutions.What Is It? The Mountain Rescue Association has provided their Mission Data Collection Schema as a public resource. This is a zip file that contains the XLSForm, example look up tables, and schema fields in a text document. If you want to use ArcGIS Online and Survey123 Connect to deploy this form, please see documentation provided here https://doc.arcgis.com/en/survey123/desktop/create-surveys/xlsformessentials.htmFor DevelopersSee the GitHub repository https://github.com/cmrRose/sar-mission-data-entry
Not seeing a result you expected?
Learn how you can add new datasets to our index.
A complete copy of the source files and sample data used during this workshop, arranged into a step-by-step tutorial series, can be obtained from the repository page on GitHub: https://esricanada-ce.github.io/r-arcgis-tutorials/