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Developers","url":"https://www.snowflake.com/content/snowflake-site/global/en/developers","currentPage":false}],"fragmentPath":"/content/dam/snowflake-site/en/content-fragments/quickstarts/geospatial-analytics-with-snowflake-and-carto-ny",":type":"snowflake-site/components/quickstart/quickstart-hero","isDeveloperGuidesPage":false,"quickstartHeroFirstCertifiedTag":{"tagText":"Quickstart","tagColor":"#29B5E8","tagPath":"/content/cq:tags/snowflake-site/taxonomy/solution-center/certification/quickstart","tagIcon":""},"quickstartHeroTitle":{"lines":["Geospatial Analytics for Retail with Snowflake and CARTO"],"type":"heading2",":type":"snowflake-site/components/title-v2"},"quickstartHeroAuthor":"Oleksii Bielov","quickstartHeroFirstSnowflakeFeatureTag":{"tagText":"Geospatial","tagColor":"#29B5E8","tagPath":"/content/cq:tags/snowflake-site/taxonomy/snowflake-feature/geospatial","tagIcon":""}},"flexible_column_cont":{"id":"flexible-column-container-c5ad966b82","propertiesId":"quickstart-template-main-flexible-container","type":"2-column-75-25","alignColumns":"top","containerMaxWidth":"extra-large","topPadding":"none","bottomPadding":"none","spaceBetween":"small","reverseOnMobile":false,"carouselOnMobile":false,"backgroundImageOption":"none","flexible_column_content_container_1":{"id":"container-5e7b8ce811","layout":"SIMPLE",":type":"snowflake-site/components/flexible-column-container/flexible-column-content-container",":items":{"contentfragment":{"id":"contentfragment-77b103aafa","paragraphs":["&lt;!-- ------------------------ --&gt;\n","\u003Ch2\u003EOverview\u003C/h2\u003E\n","\u003Cp\u003EGeospatial query capabilities in Snowflake are built upon a combination of data types and specialized query functions that can be used to parse, construct, and run calculations over geospatial objects. This guide will introduce you to the \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E data type, help you understand geospatial formats supported by Snowflake, walk you through the use of a variety of functions on a sample geospatial data set from the Snowflake Marketplace, and show you how to analyze and visualize your Snowflake data using CARTO's Analytics Toolbox.\u003C/p\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/carto_sf.png\" alt=\"Carto+SF\"\u003E\u003C/p\u003E\n","\u003Ch3\u003EPrerequisites\u003C/h3\u003E\n\u003Cul\u003E\u003Cli\u003EQuick Video \u003Ca href=\"https://www.youtube.com/watch?v=fEtoYweBNQ4&amp;ab_channel=SnowflakeInc.\"\u003EIntroduction to Snowflake\u003C/a\u003E\u003C/li\u003E\u003Cli\u003ESnowflake \u003Ca href=\"https://www.youtube.com/watch?v=us6MChC8T9Y&amp;ab_channel=SnowflakeInc.\"\u003EData Loading Basics Video\u003C/a\u003E\u003C/li\u003E\u003Cli\u003E\u003Ca href=\"https://docs.carto.com/get-started/#carto-in-a-nutshell\"\u003ECARTO in a nutshell\u003C/a\u003E web guide\u003C/li\u003E\u003Cli\u003E\u003Ca href=\"https://www.youtube.com/watch?v=9W_Attbs-fY\"\u003ECARTO Spatial Extension for Snowflake\u003C/a\u003E video\u003C/li\u003E\u003C/ul\u003E\n","\u003Ch3\u003EWhat You&rsquo;ll Learn\u003C/h3\u003E\n\u003Cul\u003E\u003Cli\u003Ehow to acquire geospatial data from the Snowflake Marketplace\u003C/li\u003E\u003Cli\u003Ehow to interpret the \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E data type\u003C/li\u003E\u003Cli\u003Ehow to understand the different formats that \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E can be expressed in\u003C/li\u003E\u003Cli\u003Ehow to unload/load geospatial data\u003C/li\u003E\u003Cli\u003Ehow to use parser, constructor, and calculation geospatial functions in queries\u003C/li\u003E\u003Cli\u003Ehow to perform geospatial joins\u003C/li\u003E\u003C/ul\u003E\n","\u003Ch3\u003EWhat You&rsquo;ll Need\u003C/h3\u003E\n\u003Cul\u003E\u003Cli\u003EA supported Snowflake \u003Ca href=\"https://docs.snowflake.com/en/user-guide/setup.html\"\u003EBrowser\u003C/a\u003E\u003C/li\u003E\u003Cli\u003ESign-up for a \u003Ca href=\"https://signup.snowflake.com/?utm_source=snowflake-devrel&amp;utm_medium=developer-guides&amp;utm_cta=developer-guides\"\u003ESnowflake Trial\u003C/a\u003E OR have access to an existing Snowflake account with the \u003Ccode\u003EACCOUNTADMIN\u003C/code\u003E role or the \u003Ccode\u003EIMPORT SHARE\u003C/code\u003E privilege. Pick the Enterprise edition to try\u003C/li\u003E\u003Cli\u003ESearch Optimization for Geospatial.\u003C/li\u003E\u003Cli\u003ESign-up for a \u003Ca href=\"http://app.carto.com/signup\"\u003ECARTO Trial\u003C/a\u003E (OR have access to an existing CARTO account )\u003C/li\u003E\u003C/ul\u003E\n","\u003Ch3\u003EWhat You&rsquo;ll Build\u003C/h3\u003E\n\u003Cul\u003E\u003Cli\u003EA sample use case that involves points-of-interest in New York City.\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/mapping-ui-2.png\" alt=\"Mapping UI\"\u003E\u003C/p\u003E\n&lt;!-- ------------------------ --&gt;\n","\u003Ch2\u003EAcquire Marketplace Data and Analytics Toolbox\u003C/h2\u003E\n","\u003Cp\u003EThe first step in the guide is to acquire a geospatial data set that you can freely use to explore the basics of Snowflake's geospatial functionality. The best place to acquire this data is the Snowflake Marketplace!\u003C/p\u003E\n","\u003Cp\u003EWe will also be accessing another asset from the Snowflake Marketplace: The CARTO Analytics Toolbox - a composed set of user-defined functions that extend the geospatial capabilities of Snowflake. The listing gives you access to Open Source modules supporting different spatial indexes and other operations: quadkeys, H3, S2, placekey, geometry constructors, accessors, transformations, etc.\u003C/p\u003E\n","\u003Ch3\u003EAccess Snowflake's Web UI\u003C/h3\u003E\n","\u003Cp\u003E\u003Ca href=\"https://app.snowflake.com/\"\u003Eapp.snowflake.com\u003C/a\u003E\u003C/p\u003E\n","\u003Cp\u003EIf this is the first time you are logging into the Snowflake UI, you will be prompted to enter your account name or account URL that you were given when you acquired a trial. The account URL contains your \u003Ca href=\"https://docs.snowflake.com/en/user-guide/connecting.html#your-snowflake-account-name\"\u003Eaccount name\u003C/a\u003E and potentially the region. You can find your account URL in the email that was sent to you after you signed up for the trial.\u003C/p\u003E\n","\u003Cp\u003EClick \u003Ccode\u003ESign-in\u003C/code\u003E and you will be prompted for your user name and password.\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EIf this is not the first time you are logging into the Snowflake UI, you should see a &quot;Select an account to sign into&quot; prompt and a button for your account name listed below it. Click the account you wish to access and you will be prompted for your user name and password (or another authentication mechanism).\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Ch3\u003EIncrease Your Account Permission\u003C/h3\u003E\n","\u003Cp\u003EThe Snowflake web interface has a lot to offer, but for now, switch your current role from the default \u003Ccode\u003ESYSADMIN\u003C/code\u003E to \u003Ccode\u003EACCOUNTADMIN\u003C/code\u003E. This increase in permissions will allow you to create shared databases from Snowflake Marketplace listings.\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EIf you don't have the \u003Ccode\u003EACCOUNTADMIN\u003C/code\u003E role, switch to a role with \u003Ccode\u003EIMPORT SHARE\u003C/code\u003E privileges instead.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/b9575209bfee61ca.png\" alt=\"assets/b9575209bfee61ca.png\"\u003E\u003C/p\u003E\n","\u003Ch3\u003ECreate a Virtual Warehouse (if needed)\u003C/h3\u003E\n","\u003Cp\u003EIf you don't already have access to a Virtual Warehouse to run queries, you will need to create one.\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003ENavigate to the \u003Ccode\u003EAdmin &gt; Warehouses\u003C/code\u003E screen using the menu on the left side of the window\u003C/li\u003E\u003Cli\u003EClick the big blue \u003Ccode\u003E+ Warehouse\u003C/code\u003E button in the upper right of the window\u003C/li\u003E\u003Cli\u003ECreate an X-Small Warehouse as shown in the screen below\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/new_warehouse.png\" alt=\"assets/new_warehouse.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003EBe sure to change the \u003Ccode\u003ESuspend After (min)\u003C/code\u003E field to 1 min to avoid wasting compute credits.\u003C/p\u003E\n","\u003Ch3\u003EAcquire Data from the Snowflake Marketplace\u003C/h3\u003E\n","\u003Cp\u003ENow you can acquire sample geospatial data from the Snowflake Marketplace.\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003ENavigate to the \u003Ccode\u003EMarketplace\u003C/code\u003E screen using the menu on the left side of the window\u003C/li\u003E\u003Cli\u003ESearch for \u003Ccode\u003EOpenStreetMap New York\u003C/code\u003E in the search bar\u003C/li\u003E\u003Cli\u003EFind and click the \u003Ccode\u003ESonra OpenStreetMap New York\u003C/code\u003E tile\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/marketplace.png\" alt=\"assets/marketplace.png\"\u003E\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003EOnce in the listing, click the big blue \u003Ccode\u003EGet\u003C/code\u003E button\u003C/li\u003E\u003C/ul\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EOn the \u003Ccode\u003EGet\u003C/code\u003E screen, you may be prompted to complete your \u003Ccode\u003Euser profile\u003C/code\u003E if you have not done so before. Click the link as shown in the screenshot below. Enter your name and email address into the profile screen and click the blue \u003Ccode\u003ESave\u003C/code\u003E button. You will be returned to the \u003Ccode\u003EGet\u003C/code\u003E screen.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/get_data.png\" alt=\"assets/get_data.png\"\u003E\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003EOn the \u003Ccode\u003EGet Data\u003C/code\u003E screen, change the name of the database from the default to \u003Ccode\u003EOSM_NEWYORK\u003C/code\u003E, as this name is shorter and all of the future instructions will assume this name for the database.\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/get_data_renamed.png\" alt=\"assets/get_data_renamed.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003ECongratulations! You have just created a shared database from a listing on the Snowflake Marketplace.\u003C/p\u003E\n","\u003Ch3\u003EInstall CARTO Analytics Toolbox from the Snowflake Marketplace\u003C/h3\u003E\n","\u003Cp\u003ENow you can acquire CARTO's Analytics Toolbox from the Snowflake Marketplace. This will share UDFs (User defined functions) to your account that will allow you to perform even more geospatial analytics.\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003ESimilar to how you did with the data in the previous steps, navigate to the Marketplace screen using the menu on the left side of the window\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/search_carto_dataset.png\" alt=\"assets/search_carto_dataset.png\"\u003E\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003ESearch for \u003Ccode\u003ECARTO\u003C/code\u003E in the search bar\u003C/li\u003E\u003Cli\u003EFind and click the \u003Ccode\u003EAnalytics Toolbox\u003C/code\u003E tile\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/analytics_toolbox.png\" alt=\"assets/analytics_toolbox.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003EClick on big blue \u003Ccode\u003EGet\u003C/code\u003E button\nIn the options, name the database \u003Ccode\u003ECARTO\u003C/code\u003E and optionally add more roles that can access the database\u003C/p\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/get_data_permissions.png\" alt=\"assets/get_data_permissions.png\"\u003E\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003EClick on \u003Ccode\u003EGet\u003C/code\u003E and then \u003Ccode\u003EDone\u003C/code\u003E.\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003ECongratulations! Now you have data and the analytics toolbox!\u003C/p\u003E\n&lt;!-- ------------------------ --&gt;\n","\u003Ch2\u003EConnect Snowflake and CARTO\u003C/h2\u003E\n","\u003Cp\u003ELet's connect your Snowflake to CARTO so you can run and visualize the queries in the following exercises of this workshop.\u003C/p\u003E\n","\u003Cp\u003EAccess the CARTO Workspace: \u003Ca href=\"http://app.carto.com/\"\u003Eapp.carto.com\u003C/a\u003E\u003C/p\u003E\n","\u003Ch3\u003EConnection to Snowflake\u003C/h3\u003E\n","\u003Cp\u003EGo to the Connections section in the Workspace, where you can find the list of all your current connections.\u003C/p\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/carto_connection_1.png\" alt=\"assets/carto_connection_1.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003ETo add a new connection, click on \u003Ccode\u003ENew connection\u003C/code\u003E and follow these steps:\u003C/p\u003E\n\u003Col\u003E\u003Cli\u003ESelect Snowflake.\u003C/li\u003E\u003Cli\u003EClick the \u003Ccode\u003ESetup connection\u003C/code\u003E button.\u003C/li\u003E\u003Cli\u003EEnter the connection parameters and credentials.\u003C/li\u003E\u003C/ol\u003E\n","\u003Cp\u003EThese are the parameters you need to provide:\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003E\u003Cstrong\u003EName\u003C/strong\u003E for your connection: You can register different connections with the Snowflake connector. You can use the name to identify the connections.\u003C/li\u003E\u003Cli\u003E\u003Cstrong\u003EUsername\u003C/strong\u003E: Name of the user account.\u003C/li\u003E\u003Cli\u003E\u003Cstrong\u003EPassword\u003C/strong\u003E: Password for the user account.\u003C/li\u003E\u003Cli\u003E\u003Cstrong\u003EAccount\u003C/strong\u003E: Hostname for your account . One way to get it is to check the Snowflake activation email which contains the account_name within the URL ( &lt;account_name&gt;.snowflakecomputing.com ). Just enter what's on the account_name, i.e ok36557.us-east-2.aws\u003C/li\u003E\u003Cli\u003E\u003Cstrong\u003EWarehouse (optional)\u003C/strong\u003E: Default warehouse that will run your queries. Use MY_WH.\u003C/li\u003E\u003C/ul\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EUse MY_WH or the name of the data warehouse you created in the previous step otherwise some queries will fail because CARTO won't know which warehouse to run them against.\u003C/p\u003E\n\u003C/blockquote\u003E\n\u003Cul\u003E\u003Cli\u003E\u003Cstrong\u003EDatabase (optional)\u003C/strong\u003E. Default database to run your queries. Leave Blank.\u003C/li\u003E\u003Cli\u003E\u003Cstrong\u003ERole (optional)\u003C/strong\u003E. Default Role to run your queries. Use ACCOUNTADMIN.\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/carto_connection_2.png\" alt=\"assets/carto_connection_2.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003EOnce you have entered the parameters, you can click the Connect button. CARTO will try to connect to your Snowflake account. If everything is OK, your new connection will be registered.\u003C/p\u003E\n&lt;!-- ------------------------ --&gt;\n","\u003Ch2\u003EUnderstand Geospatial Formats\u003C/h2\u003E\n","\u003Cp\u003ENow we will run different queries to understand how the \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E data type works in Snowflake. Navigate to the query editor by clicking on \u003Ccode\u003EWorksheets\u003C/code\u003E on the top left navigation bar.\u003C/p\u003E\n","\u003Ch3\u003EOpen a New Worksheet and Choose Your Warehouse\u003C/h3\u003E\n\u003Cul\u003E\u003Cli\u003EClick the + Worksheet button in the upper right of your browser window. This will open a new window.\u003C/li\u003E\u003Cli\u003EIn the new Window, make sure \u003Ccode\u003EACCOUNTADMIN\u003C/code\u003E and \u003Ccode\u003EMY_WH\u003C/code\u003E (or whatever your warehouse is named) are selected in the upper right of your browser window.\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/sf_worksheet_1.png\" alt=\"assets/sf_worksheet_1.png\"\u003E\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003EIn the object browser on the left, select Databases tab and expand the \u003Ccode\u003EOSM_NEWYORK\u003C/code\u003E database, the \u003Ccode\u003ENEW_YORK\u003C/code\u003E schema, and the \u003Ccode\u003EViews\u003C/code\u003E grouping to see the various views that you have access to in this shared database. The data provider has chosen to share only database views in this listing. You will use some of these views throughout the guide.\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/sf_worksheet_2.png\" alt=\"assets/sf_worksheet_2.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003ENow you are ready to run some queries.\u003C/p\u003E\n","\u003Ch3\u003EThe GEOGRAPHY data type\u003C/h3\u003E\n","\u003Cp\u003ESnowflake's \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E data type is similar to the \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E data type in other geospatial databases in that it treats all points as longitude and latitude on a spherical earth instead of a flat plane. This is an important distinction from other geospatial types (such as \u003Ccode\u003EGEOMETRY\u003C/code\u003E), but this guide won't be exploring those distinctions. More information about Snowflake's specification can be found \u003Ca href=\"https://docs.snowflake.com/en/sql-reference/data-types-geospatial.html\"\u003Ehere\u003C/a\u003E.\u003C/p\u003E\n","\u003Cp\u003ELook at one of the views in the shared database which has a \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E column by running the following queries. Copy &amp; paste the SQL below into your worksheet editor, put your cursor somewhere in the text of the query you want to run (usually the beginning or end), and either click the blue &quot;Play&quot; button in the upper right of your browser window, or press \u003Ccode\u003ECTRL+Enter\u003C/code\u003E or \u003Ccode\u003ECMD+Enter\u003C/code\u003E (Windows or Mac) to run the query.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Set the working database schema\nuse schema osm_newyork.new_york;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EThe \u003Ca href=\"https://docs.snowflake.com/en/sql-reference/sql/use-schema.html\"\u003Euse schema\u003C/a\u003E command sets the active database.schema for your future queries so you do not have to fully qualify your objects.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Describe the v_osm_ny_shop_electronics view \ndesc view v_osm_ny_shop_electronics;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EThe \u003Ca href=\"https://docs.snowflake.com/en/sql-reference/sql/desc.html\"\u003Edesc or describe\u003C/a\u003E command shows you the definition of the view, including the columns, their data type, and other relevant details. Notice the \u003Ccode\u003Ecoordinates\u003C/code\u003E column is defined of \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E type. This is the column you will focus on in the next steps.\u003C/p\u003E\n","\u003Ch3\u003EView GEOGRAPHY Output Formats\u003C/h3\u003E\n","\u003Cp\u003ESnowflake supports 3 primary geospatial formats and 2 additional variations on those formats. They are:\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003E\u003Cstrong\u003EGeoJSON\u003C/strong\u003E: a JSON-based standard for representing geospatial data\u003C/li\u003E\u003Cli\u003E\u003Cstrong\u003EWKT &amp; EWKT\u003C/strong\u003E: a &quot;Well Known Text&quot; string format for representing geospatial data and the &quot;Extended&quot; variation of that format\u003C/li\u003E\u003Cli\u003E\u003Cstrong\u003EWKB &amp; EWKB\u003C/strong\u003E: a &quot;Well Known Binary&quot; format for representing geospatial data in binary and the &quot;Extended&quot; variation of that format\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003EThese formats are supported for ingestion (files containing those formats can be loaded into a \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E typed column), query result display, and data unloading to new files. You don't need to worry about how Snowflake stores the data under the covers, but rather how the data is displayed to you or unloaded to files through the value of a session variable called \u003Ccode\u003EGEOGRAPHY_OUTPUT_FORMAT\u003C/code\u003E.\u003C/p\u003E\n","\u003Cp\u003ERun the query below to make sure the current format is GeoJSON.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Set the output format to GeoJSON\nalter session set geography_output_format = 'GEOJSON';\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EThe \u003Ca href=\"https://docs.snowflake.com/en/sql-reference/sql/alter-session.html\"\u003Ealter session\u003C/a\u003E command lets you set a parameter for your current user session, which in this case is the \u003Ccode\u003EGEOGRAPHY_OUTPUT_FORMAT\u003C/code\u003E. The default value for this parameter is \u003Ccode\u003E'GEOJSON'\u003C/code\u003E, so normally you wouldn't have to run this command if you want that format, but this guide wants to be certain the next queries are run with the \u003Ccode\u003E'GEOJSON'\u003C/code\u003E output.\u003C/p\u003E\n","\u003Cp\u003ENow run the following query against the \u003Ccode\u003EV_OSM_NY_SHOP_ELECTRONICS\u003C/code\u003E view.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Query the v_osm_ny_shop_electronics view for rows of type 'node' (long/lat points)\nselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'node' limit 25;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EIn the result set, notice the \u003Ccode\u003Ecoordinates\u003C/code\u003E column and how it displays a JSON representation of a point. It should look something like this:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E{   &quot;coordinates&quot;: [     -7.390351649999999e+01,     4.074499730000000e+01   ],   &quot;type&quot;: &quot;Point&quot; }\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EIf you click on a cell in the \u003Ccode\u003Ecoordinates\u003C/code\u003E column of the query result, the JSON representation will also show in the cell panel on the right side of the query window, and it includes a button that allows you to copy that JSON text (see screenshot below). You will use this capability in later exercises.\u003C/p\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/sf_worksheet_3.png\" alt=\"assets/sf_worksheet_3.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003ENow run the next query.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Query the v_osm_ny_shop_electronics view for rows of type 'way' (a collection of many points)\nselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'way' limit 25;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EClick on a cell in the \u003Ccode\u003Ecoordinates\u003C/code\u003E column of the query result. Notice in the cell panel how the JSON is expanded with many more points in the JSON array. This shows you the difference between a geospatial representation of a single point, vs a representation of many points.\u003C/p\u003E\n","\u003Cp\u003ENow look at the same queries but in a different format. Run the following query:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Set the output format to WKT\nalter session set geography_output_format = 'WKT';\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003ERun the previous two queries again. With each run, click on a cell in the \u003Ccode\u003Ecoordinates\u003C/code\u003E column and examine the output.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Eselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'node' limit 25;\nselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'way' limit 25;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EWKT looks different than GeoJSON, and is arguably more readable. Here you can more clearly see the \u003Ca href=\"https://docs.snowflake.com/en/sql-reference/data-types-geospatial.html#geospatial-object-types\"\u003Egeospatial object types\u003C/a\u003E which are represented below in the example output:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// An example of a POINT\nPOINT(-74.0266511 40.6346599)\n// An example of a POLYGON\nPOLYGON((-74.339971 43.0631175,-74.3397734 43.0631363,-74.3397902 43.0632306,-74.3399878 43.0632117,-74.339971 43.0631175))\n\u003C/code\u003E\u003C/pre\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EYou will use several different geospatial object types in this guide, and the guide will explain them more in later sections as you use them.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003ELastly, look at WKB output. Run the following query:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Set the output format to WKB\nalter session set geography_output_format = 'WKB';\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EAnd run the two queries again, click on a cell in the \u003Ccode\u003Ecoordinates\u003C/code\u003E column each time.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode class=\"language-SQL\"\u003Eselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'node' limit 25;\nselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'way' limit 25;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003ENotice how WKB is incomprehensible to a human reader. Other than the length of the binary value, it's hard to tell the difference between the \u003Ccode\u003EPOINT\u003C/code\u003E and the \u003Ccode\u003EPOLYGON\u003C/code\u003E. However, this format is handy in data loading/unloading, as you'll see in the next section.\u003C/p\u003E\n&lt;!-- ------------------------ --&gt;\n","\u003Ch2\u003EUnload/Load Data\u003C/h2\u003E\n","\u003Cp\u003ENow that you understand the different output formats, you can create new files from the electronics view, then load those files into new tables with the \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E data type. You will also encounter your first examples of geospatial parsers and constructors.\u003C/p\u003E\n","\u003Ch3\u003ECreate New WKB Files From Queries\u003C/h3\u003E\n","\u003Cp\u003EIn this step we're going to use Snowflake's \u003Ca href=\"https://docs.snowflake.com/en/sql-reference/sql/copy-into-location.html\"\u003ECOPY into location\u003C/a\u003E feature to take the output of a query and create a file in your local \u003Ca href=\"https://docs.snowflake.com/en/user-guide/data-load-local-file-system-create-stage.html#user-stages\"\u003Euser stage\u003C/a\u003E. Because your output format is set to WKB, the geospatial column in that table will be represented in the WKB format in the new files.\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EThe WKB format is being chosen here for its simplicity within a file. Since WKB is a single alpha-numeric string with no delimiters, spaces, or other difficult characters, it is excellent for storing geospatial data in a file. That doesn't mean other formats are to be avoided in real world use cases, but WKB will make your work easier in this guide.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003EMake sure we're using the WKB output format by running this query again:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Ealter session set geography_output_format = 'WKB';\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EIf you're not familiar with the anatomy of a \u003Ccode\u003ECOPY\u003C/code\u003E command, the code comments below will break down the code of the first query, which copies a few columns and all rows from the electronics view:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Define the write location (@~/ = my user stage) and file name for the file \ncopy into @~/osm_ny_shop_electronics_all.csv \n// Define the query that represents the data output\nfrom (select id,coordinates,name,type from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics ) \n// Indicate the comma-delimited file format and tell it to double-quote strings\nfile_format=(type=csv field_optionally_enclosed_by='&quot;') \n// Tell Snowflake to write one file and overwrite it if it already exists\nsingle=true overwrite=true;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003ERun the query above and you should see an output that indicates the number of rows that were unloaded.\u003C/p\u003E\n","\u003Cp\u003ERun the second unload query below, which adds some filtering to the output query and a parser:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Ecopy into @~/osm_ny_shop_electronics_points.csv \nfrom (\n  select id,coordinates,name,type,st_x(coordinates),st_y(coordinates) \n  from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type='node'\n) file_format=(type=csv field_optionally_enclosed_by='&quot;') \nsingle=true overwrite=true;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EIn this query, the parsers \u003Ccode\u003EST_X\u003C/code\u003E and \u003Ccode\u003EST_Y\u003C/code\u003E are extracting the longitude and latitude from a \u003Ccode\u003EGEOGRAPHY POINT\u003C/code\u003E object. These parsers only accept single points as an input, so you had to filter the query on \u003Ccode\u003Etype = 'node'\u003C/code\u003E. In Snowflake, the &lsquo;x' coordinate is always the longitude and the &lsquo;y' coordinate is always the latitude, and as you will see in a future constructor, the longitude is always listed first.\u003C/p\u003E\n","\u003Ch3\u003ELIST and Query User Staged Files\u003C/h3\u003E\n","\u003Cp\u003EYou should now have 2 files in your user stage. Verify they are there by running the \u003Ca href=\"https://docs.snowflake.com/en/sql-reference/sql/list.html\"\u003Elist\u003C/a\u003E command. The &lsquo;osm' string will act as a filter to tell the command to show only the files beginning with &lsquo;osm'.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Elist @~/osm;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EYou can query a simple file directly in the stage by using the &lsquo;$' notation below to represent each delimited column in the file, which in this case Snowflake assumes to be a comma-delimited CSV. Run this query:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Eselect $1,$2,$3,$4 from @~/osm_ny_shop_electronics_all.csv;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003ENotice how the second column displays the WKB geospatial data in double-quotes because of how you created the file. This will not load directly into a \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E data type, so you need to further define the file format. Run each query below to create a local database and a new file format in that database. You will also switch your \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E output format back to WKT to improve readability of future queries.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Create a new local database\ncreate or replace database geocodelab;\n// Change your working schema to the public schema in that database\nuse schema geocodelab.public;\n// Create a new file format in that schema\ncreate or replace file format geocsv type = 'csv' field_optionally_enclosed_by='&quot;';\n// Set the output format back to WKT\nalter session set geography_output_format = 'WKT';\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003ENow query the &lsquo;all' files in the stage using the file format:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Eselect $1,TO_GEOGRAPHY($2),$3,$4 \nfrom @~/osm_ny_shop_electronics_all.csv \n(file_format =&gt; 'geocsv');\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003ENotice the use of the \u003Ccode\u003ETO_GEOGRAPHY\u003C/code\u003E constructor which tells Snowflake to interpret the WKB binary string as geospatial data and construct a \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E type. The WKT output format allows you to see this representation in a more readable form. You can now load this file into a table that includes a \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E typed column by running the two queries below:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Create a new 'all' table in the current schema\ncreate or replace table electronics_all \n(id number, coordinates geography, name string, type string);\n// Load the 'all' file into the table\ncopy into electronics_all from @~/osm_ny_shop_electronics_all.csv \nfile_format=(format_name='geocsv');\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EYou should see all rows loaded successfully into the table with 0 errors seen.\u003C/p\u003E\n","\u003Cp\u003ENow turn your attention to the other &lsquo;points' file. If you recall, you used \u003Ccode\u003EST_X\u003C/code\u003E and \u003Ccode\u003EST_Y\u003C/code\u003E to make discrete longitude and latitude columns in this file. It is not uncommon to receive data which contains these values in different columns, and you can use the \u003Ccode\u003EST_MAKEPOINT\u003C/code\u003E constructor to combine two discrete longitude and latitude columns into one \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E typed column. Run this query:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Eselect $1,ST_MAKEPOINT($5,$6),$3,$4,$5,$6 \nfrom @~/osm_ny_shop_electronics_points.csv \n(file_format =&gt; 'geocsv');\n\u003C/code\u003E\u003C/pre\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003ENotice in \u003Ccode\u003EST_MAKEPOINT\u003C/code\u003E that the longitude column is listed first. Despite the common verbal phrase &quot;lat long,&quot; you always put longitude before latitude to represent a geospatial POINT object in Snowflake.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003ENow create a table and load the &lsquo;points' file into that table. Run these two queries.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Create a new 'points' table in the current schema\ncreate or replace table electronics_points \n(id number, coordinates geography, name string, type string, \nlong number(38,7), lat number(38,7));\n// Load the 'points' file into the table\ncopy into electronics_points from (\n  select $1,ST_MAKEPOINT($5,$6),$3,$4,$5,$6 \n  from @~/osm_ny_shop_electronics_points.csv\n) file_format=(format_name='geocsv');\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EYou should see all rows loaded successfully into the table with 0 errors seen.\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EIn the &lsquo;all' file load statement, you didn't have to specify a query to load the file because when you have a column in a file that is already in a Snowflake supported geospatial format, and load that value into a \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E typed column, Snowflake automatically does the geospatial construction for you. In the &lsquo;points' file, however, you must use a transform query to construct two discrete columns into a single \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E column using a geospatial constructor function.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003ETo conclude this section, you can query your recently loaded tables using the two queries below:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Eselect * from electronics_all;\nselect * from electronics_points;\n\u003C/code\u003E\u003C/pre\u003E\n&lt;!-- ------------------------ --&gt;\n","\u003Ch2\u003ECalculations and More Constructors\u003C/h2\u003E\n","\u003Cp\u003ENow that you have the basic understand of how the \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E data type works and what a geospatial representation of data looks like in various output formats, it's time to walkthrough a scenario that requires you to run and visualize geospatial queries to answer some questions.\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EIt's worth noting here that the scenario in the next three sections is more akin to what a person would do with a map application on their mobile phone, rather than how geospatial data would be used in fictional business setting. This was chosen intentionally to make this guide and these queries more relatable to the person doing the guide, rather than trying to create a realistic business scenario that is relatable to all industries, since geospatial data is used very differently across industries.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003EBefore you begin the scenario, switch the active schema back to the shared database and make sure the output format is either GeoJSON or WKT, as you will be using another website (i.e CARTO) to visualize the query results. Which output you choose will be based on your personal preference - WKT is easier for the casual person to read, while GeoJSON is arguably more common. When querying from CARTO the default (\u003Ccode\u003EGEOJSON\u003C/code\u003E) will be used so no need to worry about changing it from that context.\u003C/p\u003E\n","\u003Cp\u003EAlso note that from here on out, SQL statements and functions that have been previously covered will no longer have their usage explained in the code comments or the text of the guide. Run the two queries below:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Euse schema osm_newyork.new_york;\n// Run just one of the below queries based on your preference\nalter session set geography_output_format = 'GEOJSON';\nalter session set geography_output_format = 'WKT';\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Ch3\u003EThe Scenario\u003C/h3\u003E\n","\u003Cp\u003EPretend that you are currently living in your apartment near Times Square in New York City. You need to make a shopping run to Best Buy and the liquor store, as well as grab a coffee at a coffee shop. Based on your current location, what are the closest stores or shops to do these errands, and are they the most optimal locations to go to collectively? Are there other shops you could stop at along the way?\u003C/p\u003E\n","\u003Cp\u003EStart with running a query that represents your current location. This location has been preselected for the guide using a website that returns longitude and latitude when you click on a location on a map. Run this query in the Snowlake editor:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Eselect to_geography('POINT(-73.986226 40.755702)');\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003ENotice there is no \u003Ccode\u003Efrom\u003C/code\u003E clause in this query, which allows you to construct a \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E object in a simple \u003Ccode\u003Eselect\u003C/code\u003E statement.\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EPOINT(-73.986226 40.755702) is already a geography object in WKT format, so there was no real need to convert it again, but it was important to show the most basic way to use TO_GEOGRAPHY to construct a simple geography object.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003ENow let's do the query in CARTO Builder to see where the point is.\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003ECreate a new map. Use a the navigation menu on the left to got to Maps and then click on (+) New Map).\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_1.png\" alt=\"assets/step6_1.png\"\u003E\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003EClick on the &quot;Add Source From&quot;\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_2.png\" alt=\"assets/step6_2.png\"\u003E\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003EThen click on \u003Ccode\u003ECustom Query\u003C/code\u003E and make sure you have selected Snowflake Connection that you have created in previous steps.\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_3.gif\" alt=\"assets/step6_3.gif\"\u003E\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003ENow paste the query and click on the green \u003Ccode\u003ERun\u003C/code\u003E button.\u003C/li\u003E\u003C/ul\u003E\n\u003Cpre\u003E\u003Ccode\u003Eselect to_geography('POINT(-73.986226 40.755702)') as geom;\n\u003C/code\u003E\u003C/pre\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003ECARTO requires that the column containing geospatial data be named \u003Ccode\u003Egeom\u003C/code\u003E so that is why we add as geom in the query. If you don't do this it will fail.\u003C/p\u003E\n\u003C/blockquote\u003E\n\u003Cul\u003E\u003Cli\u003EUse the map zoom controls (+/- buttons) and click the zoom in )+) button until you can see the point better. You should see something like the screenshot below, though you may see more depending on your browser window size.\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_4.png\" alt=\"assets/step6_4.png\"\u003E\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EFeel free to use this as your SQL Editor for the next steps, you can delete and re-run the queries from the workshop here.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003EThe green dot represents the \u003Ccode\u003EPOINT\u003C/code\u003E object location. Now you know where you are!\u003C/p\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_5.png\" alt=\"assets/step6_5.png\"\u003E\u003C/p\u003E\n","\u003Ch3\u003EFind the Closest Locations\u003C/h3\u003E\n","\u003Cp\u003EIn the next step, you are going to run queries to find the closest Best Buy, liquor store, and coffee shop to your current location from above. These queries are very similar and will do several things:\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003EOne will query the electronics view, the other two will query the food &amp; beverages view, applying appropriate filters to find the thing we're looking for.\u003C/li\u003E\u003Cli\u003EAll queries will use the \u003Ccode\u003EST_DWITHIN\u003C/code\u003E function in the \u003Ccode\u003Ewhere\u003C/code\u003E clause to filter out stores that aren't within the stated distance. The function takes two points and a distance to determine whether those two points are less than or equal to the stated distance from each other, returning \u003Ccode\u003Etrue\u003C/code\u003E if they are and \u003Ccode\u003Efalse\u003C/code\u003E if they are not. In this function, you will use the \u003Ccode\u003Ecoordinates\u003C/code\u003E column from each view to scan through all of the Best Buys, liquor stores, or coffee shops and compare them to your current location \u003Ccode\u003EPOINT\u003C/code\u003E, which you will construct using the previously used \u003Ccode\u003EST_MAKEPOINT\u003C/code\u003E. You will then use 1600 meters for the distance value, which is roughly equivalent to a US mile.\u003C/li\u003E\u003Cli\u003ENote that in the queries below, the syntax \u003Ccode\u003EST_DWITHIN(...) = true\u003C/code\u003E is used for readability, but the \u003Ccode\u003E= true\u003C/code\u003E is not required for the filter to work. It is required if you were to need an \u003Ccode\u003E= false\u003C/code\u003E condition.\u003C/li\u003E\u003Cli\u003EAll queries will also use the \u003Ccode\u003EST_DISTANCE\u003C/code\u003E function, which actually gives you a value in meters representing the distance between the two points. When combined with \u003Ccode\u003Eorder by\u003C/code\u003E and \u003Ccode\u003Elimit\u003C/code\u003E clauses, this will help you return only the row that is the smallest distance, or closest.\u003C/li\u003E\u003Cli\u003EAlso note in \u003Ccode\u003EST_DISTANCE\u003C/code\u003E that you use the constructor \u003Ccode\u003ETO_GEOGRAPHY\u003C/code\u003E for your current location point instead of the \u003Ccode\u003EST_MAKEPOINT\u003C/code\u003E constructor that you used earlier in \u003Ccode\u003EST_DWITHIN\u003C/code\u003E. This is to show you that that \u003Ccode\u003ETO_GEOGRAPHY\u003C/code\u003E is a general purpose constructor where \u003Ccode\u003EST_MAKEPOINT\u003C/code\u003E specifically makes a \u003Ccode\u003EPOINT\u003C/code\u003E object, but in this situation they resolve to the same output. Sometimes there is more than one valid approach to construct a geospatial object.\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003ERun the following queries (the first one has comments similar to above):\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Find the closest Best Buy\nselect id, coordinates as geom, name, addr_housenumber, addr_street, \n// Use st_distance to calculate the distance between your location and Best Buy\nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  \n// Filter just for Best Buys\nwhere name = 'Best Buy' and \n// Filter for Best Buys that are within about a US mile (1600 meters)\nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \n// Order the results by the calculated distance and only return the lowest\norder by 6 limit 1;\n\u003C/code\u003E\u003C/pre\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Find the closest liquor store\nselect id, coordinates as geom, name, addr_housenumber, addr_street, \nst_distance(geom,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'alcohol' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 6 limit 1;\n\u003C/code\u003E\u003C/pre\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Find the closest coffee shop\nselect id, coordinates as geom, name, addr_housenumber, addr_street, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 6 limit 1;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EIn each case, the query returns a \u003Ccode\u003EPOINT\u003C/code\u003E object, which you aren't going to do anything with just yet, but now you have the queries that return the desired results. It would be really nice, however, if you could easily visualize how these points relate to each other.\u003C/p\u003E\n","\u003Ch3\u003ECollect Points Into a Line\u003C/h3\u003E\n","\u003Cp\u003EIn the next step of this section, you're going to &lsquo;collect' the points using \u003Ccode\u003EST_COLLECT\u003C/code\u003E and make a \u003Ccode\u003ELINESTRING\u003C/code\u003E object with the \u003Ccode\u003EST_MAKELINE\u003C/code\u003E constructor. You will then be able to visualize this line on CARTO.\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003EThe first step in the query to is create a common table expression (CTE) query that unions together the queries you ran in the above step (keeping just the \u003Ccode\u003Ecoordinates\u003C/code\u003E and \u003Ccode\u003Edistance_meters\u003C/code\u003E columns). This CTE will result in a 4 row output - 1 row for your current location, 1 row for the Best Buy location, 1 row for the liquor store, and 1 row for the coffee shop.\u003C/li\u003E\u003Cli\u003EYou will then use \u003Ccode\u003EST_COLLECT\u003C/code\u003E to aggregate those 4 rows in the \u003Ccode\u003Ecoordinates\u003C/code\u003E column into a single geospatial object, a \u003Ccode\u003EMULTIPOINT\u003C/code\u003E. This object type is a collection of \u003Ccode\u003EPOINT\u003C/code\u003E objects that are interpreted as having no connection to each other other than they are grouped. A visualization tool will not connect these points, just plot them, so in the next step you'll turn these points into a line.\u003C/li\u003E\u003Cli\u003EFinally you need to do is convert that \u003Ccode\u003EMULTIPOINT\u003C/code\u003E object into a \u003Ccode\u003ELINESTRING\u003C/code\u003E object using \u003Ccode\u003EST_MAKELINE\u003C/code\u003E, which takes a set of points as an input and turns them into a \u003Ccode\u003ELINESTRING\u003C/code\u003E object. Whereas a \u003Ccode\u003EMULTIPOINT\u003C/code\u003E has points with no assumed connection, the points in a \u003Ccode\u003ELINESTRING\u003C/code\u003E will be interpreted as connected in the order they appear. Needing a collection of points to feed into \u003Ccode\u003EST_MAKELINE\u003C/code\u003E is the reason why you did the \u003Ccode\u003EST_COLLECT\u003C/code\u003E step above, and the only thing you need to do to the query above is wrap the \u003Ccode\u003EST_COLLECT\u003C/code\u003E in an \u003Ccode\u003EST_LINESTRING\u003C/code\u003E like so:\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003ERun this query and examine the output:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Create the CTE 'locations'\nwith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages \nwhere shop = 'alcohol' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\n// Query the CTE result set, aggregating the coordinates into one object\nSelect st_makeline(st_collect(coordinates),to_geography('POINT(-73.986226 40.755702)')) as geom from locations;\n\u003C/code\u003E\u003C/pre\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EYou may be wondering why your current position point was added as an additional point in the line when you already included it as the first point in the MULTIPOINT collection above? Stay tuned for why you need this later, but logically it makes sense that you plan to go back to your New York City apartment at the end of your shopping trip.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003EYou should get this:\u003C/p\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_6.png\" alt=\"assets/step6_6.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003EYikes! You can see in the image above that the various shops are in three different directions from your original location. That could be a long walk. Fortunately, you can find out just how long by wrapping a \u003Ccode\u003EST_DISTANCE\u003C/code\u003E function around the \u003Ccode\u003ELINESTRING\u003C/code\u003E object, which will calculate the length of the line in meters. Run the query below:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Create the CTE 'locations'\nwith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages \nwhere shop = 'alcohol' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\n// Query the CTE result set, aggregating the coordinates into one object\nSelect st_makeline(st_collect(coordinates),to_geography('POINT(-73.986226 40.755702)')) as geom ,\nst_length(geom)  as distance\nfrom locations;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EYou can view non-geospatial parameters by adding a hover pop-up interaction. See GIF below:\u003C/p\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_7.gif\" alt=\"assets/step6_7.gif\"\u003E\u003C/p\u003E\n","\u003Cp\u003EWow! Almost 2120 meters!\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EIt is correct to note that this distance represents a path based on how a bird would fly, rather than how a human would navigate the streets. The point of this exercise is not to generate walking directions, but rather to give you a feel of the various things you can parse, construct, and calculate with geospatial data and functions in Snowflake. CARTO actually lets you to \u003Ca href=\"https://docs.carto.com/analytics-toolbox-snowflake/examples/trade-areas-based-on-isolines/\"\u003Ecalculate drive/walk routes within Snowflake with its Location Data Services module\u003C/a\u003E if you're interested in a more accurate calculation.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003ENow move to the next section to see how you can optimize your shopping trip.\u003C/p\u003E\n&lt;!-- ------------------------ --&gt;\n","\u003Ch2\u003EJoins\u003C/h2\u003E\n","\u003Cp\u003EIn the previous section, all of your queries to find the closest Best Buy, liquor store, and coffee shop were based on proximity to your Times Square apartment. But wouldn't it make more sense to see, for example, if there was a liquor store and/or coffee shop closer to Best Buy? You can use geospatial functions in a table join to find out.\u003C/p\u003E\n","\u003Ch3\u003EIs There Anything Closer to Best Buy?\u003C/h3\u003E\n","\u003Cp\u003EYou have been using two views in your queries so far: \u003Ccode\u003Ev_osm_ny_shop_electronics\u003C/code\u003E, where stores like Best Buy are catalogued, and \u003Ccode\u003Ev_osm_ny_shop_food_beverage\u003C/code\u003E, where liquor stores and coffee shops are catalogued. To find the latter near the former, you'll join these two tables. The new queries introduce a few changes:\u003C/p\u003E\n\u003Cul\u003E\u003Cli\u003EThe electronics view will serve as the primary view in the query, where you'll put a filter on the known Best Buy store using its id value from the view.\u003C/li\u003E\u003Cli\u003EInstead of the \u003Ccode\u003EJOIN\u003C/code\u003E clause using a common \u003Ccode\u003Ea.key = b.key\u003C/code\u003E foreign key condition, the \u003Ccode\u003EST_DWITHIN\u003C/code\u003E function will serve as the join condition (remember before the note about not needing to include the \u003Ccode\u003E= true\u003C/code\u003E part).\u003C/li\u003E\u003Cli\u003EThe \u003Ccode\u003EST_DISTANCE\u003C/code\u003E calculation is now using the Best Buy coordinate and all of the other coordinates in the food &amp; beverage view to determine the closest liquor store and coffee shop location to Best Buy.\u003C/li\u003E\u003C/ul\u003E\n","\u003Cp\u003ERun the two queries below and create a new layer for each:\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EIn order to create a new layer ( and keep the query done in the previous step) click on the blue \u003Ccode\u003E(+) Add source from\u003C/code\u003E button, copy the query and click run. .\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003EFirst run:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Join to electronics to find a liquor store closer to Best Buy\nselect fb.id,fb.coordinates as geom,fb.name,fb.addr_housenumber,fb.addr_street,\n// The st_distance calculation uses coordinates from both views\nst_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \n// The join is based on being within a certain distance\njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \n// Hard-coding the known Best Buy id below\nwhere e.id = 1428036403 and fb.shop = 'alcohol' \n// Ordering by distance and only showing the lowest\norder by 6 limit 1;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/joins_1.png\" alt=\"assets/joins_1.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003EAnd then run:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003E// Join to electronics to find a coffee shop closer to Best Buy\nselect fb.id,fb.coordinates as geom,fb.name,fb.addr_housenumber,fb.addr_street,\nst_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \nwhere e.id = 1428036403 and fb.shop = 'coffee' \norder by 6 limit 1;\n\u003C/code\u003E\u003C/pre\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EMake sure you style the result to make the point / lines bigger or more colorful so that you can see them.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003EIf you note in the result of each query, the first query found a different liquor store closer to Best Buy, whereas the second query returned the same coffee shop from your original search, so you've optimized as much as you can.\u003C/p\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/joins_2.png\" alt=\"assets/joins_2.png\"\u003E\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EThe id of the selected Best Buy was hard coded into the above queries to keep them easier to read and to keep you focused on the join clause of these queries, rather than introducing sub queries to dynamically calculate the nearest Best Buy. Those sub queries would have created longer queries that were harder to read.\u003C/p\u003E\n\u003C/blockquote\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EIf you're feeling adventurous, go read about other possible relationship functions that could be used in the join for this scenario \u003Ca href=\"https://docs.snowflake.com/en/sql-reference/functions-geospatial.html\"\u003Ehere\u003C/a\u003E.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Ch3\u003ECalculate a New Linestring\u003C/h3\u003E\n","\u003Cp\u003ENow that you know that there is a better option for the liquor store, substitute the above liquor store query into the original linestring query to produce a different object. For visualization sake, the order of the statements in the unions have been changed, which affects the order of the points in the object.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Ewith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select fb.coordinates, st_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \nwhere e.id = 1428036403 and fb.shop = 'alcohol' \norder by 2 limit 1)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\nselect st_makeline(st_collect(coordinates),\nto_geography('POINT(-73.986226 40.755702)')) as geom from locations;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003ECopy the result cell from the above query and paste it into the first layer A. You should get this:\u003C/p\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/joins_3.png\" alt=\"assets/joins_3.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003EMuch better! This looks like a more efficient shopping path. Check the new distance by running this query:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Ewith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select fb.coordinates, st_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \nwhere e.id = 1428036403 and fb.shop = 'alcohol' \norder by 2 limit 1)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\nselect st_makeline(st_collect(coordinates),\nto_geography('POINT(-73.986226 40.755702)')) as geom,\nst_length(geom) as distance\nfrom locations;\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/joins_4.png\" alt=\"assets/joins_4.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003ENice! 1537 meters, which is a savings of about 583 meters, or a third of a mile. By joining the two shop views together, you were able to find an object in one table that is closest to an object from another table to optimize your route. Now that you have a more optimized route, can you stop at any other shops along the way? Advance to the next section to find out.\u003C/p\u003E\n&lt;!-- ------------------------ --&gt;\n","\u003Ch2\u003EAdditional Calculations and Constructors\u003C/h2\u003E\n","\u003Cp\u003EThe \u003Ccode\u003ELINESTRING\u003C/code\u003E object that was created in the previous section looks like a nice, clean, four-sided polygon. As it turns out, a \u003Ccode\u003EPOLYGON\u003C/code\u003E is another geospatial object type that you can construct and work with. Where you can think of a \u003Ccode\u003ELINESTRING\u003C/code\u003E as a border of a shape, a \u003Ccode\u003EPOLYGON\u003C/code\u003E is the filled version of the shape itself. The key thing about a \u003Ccode\u003EPOLYGON\u003C/code\u003E is that it must end at its beginning, where a \u003Ccode\u003ELINESTRING\u003C/code\u003E does not need to return to the starting point.\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003ERemember in a previous section when you added your Times Square Apartment location to both the beginning and the end of the LINESTRING? In addition to the logical explanation of returning home after your shopping trip, that point was duplicated at the beginning and end so you can construct a POLYGON in this section!\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Ch3\u003EConstruct a Polygon\u003C/h3\u003E\n","\u003Cp\u003EConstructing a \u003Ccode\u003EPOLYGON\u003C/code\u003E is done with the \u003Ccode\u003EST_MAKEPOLYGON\u003C/code\u003E function, just like the \u003Ccode\u003EST_MAKELINE\u003C/code\u003E. The only difference is where \u003Ccode\u003EST_MAKELINE\u003C/code\u003E makes a line out of points, \u003Ccode\u003EST_MAKEPOLYGON\u003C/code\u003E makes a polygon out of lines. Therefore, the only thing you need to do to the previous query that constructed the line is to wrap that construction with \u003Ccode\u003EST_MAKEPOLYGON\u003C/code\u003E like this:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode class=\"language-step_8\"\u003Eselect st_makepolygon(st_makeline(st_collect(coordinates),\nto_geography('POINT(-73.986226 40.755702)')))\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EThis really helps illustrate the construction progression: from individual points, to a collection of points, to a line, to a polygon. Run this query to create your polygon:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Ewith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select fb.coordinates, st_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \nwhere e.id = 1428036403 and fb.shop = 'alcohol' \norder by 2 limit 1)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\nselect st_makepolygon(st_makeline(st_collect(coordinates),\nto_geography('POINT(-73.986226 40.755702)'))) as geom\nfrom locations\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003EClick on \u003Ccode\u003E(+) Add source from\u003C/code\u003E and copy the result cell from the above query. You should get this:\u003C/p\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step8_1.png\" alt=\"assets/step8_1.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003EAnd just like before where you could calculate the distance of a \u003Ccode\u003ELINESTRING\u003C/code\u003E using \u003Ccode\u003EST_DISTANCE\u003C/code\u003E, you can calculate the perimeter of a \u003Ccode\u003EPOLYGON\u003C/code\u003E using \u003Ccode\u003EST_PERIMETER\u003C/code\u003E, which you wrap around the polygon construction in the same way you wrapped around the line construction. Run this query to calculate the perimeter:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003Ewith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select fb.coordinates, st_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \nwhere e.id = 1428036403 and fb.shop = 'alcohol' \norder by 2 limit 1)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\nselect st_makepolygon(st_makeline(st_collect(coordinates),\nto_geography('POINT(-73.986226 40.755702)'))) as geom,\nst_perimeter(geom) as perimeter_meters\nfrom locations\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step8_2.png\" alt=\"assets/step8_2.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003ENice! That query returned the same 1537 meters you got before as the distance of the \u003Ccode\u003ELINESTRING\u003C/code\u003E, which makes sense, because the perimeter of a \u003Ccode\u003EPOLYGON\u003C/code\u003E is the same distance as a \u003Ccode\u003ELINESTRING\u003C/code\u003E that constructs a \u003Ccode\u003EPOLYGON\u003C/code\u003E.\u003C/p\u003E\n&lt;!-- ------------------------ --&gt;\n","\u003Ch2\u003EUsing Spatial Indexes\u003C/h2\u003E\n","\u003Ch3\u003EThe Scenario, Part 2\u003C/h3\u003E\n","\u003Cp\u003EThe lease for our very nice Times Square apartment has ended so we have to find a new apartment! You love coffee shops, specifically Starbucks, so let's find an area where we have the MOST Starbuck locations.\u003C/p\u003E\n","\u003Cp\u003EOpen a new map and let's map all the starbucks in NYC:\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003ESELECT GEOG AS GEOM, store_name\nFROM CARTO.public.starbucks_locations_usa\nWHERE CITY = 'New York'\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step9_1.png\" alt=\"assets/step9_1.png\"\u003E\u003C/p\u003E\n\u003Cblockquote\u003E\n","\u003Cp\u003EWe are using a sample dataset included in the CARTO Analytics Toolbox named \u003Ccode\u003Estarbucks_locations_usa\u003C/code\u003E. You can find it under \u003Ccode\u003EPUBLIC\u003C/code\u003E. So the full qualified name should be something like \u003Ccode\u003ECARTO.public.starbucks_locations_usa\u003C/code\u003E.\u003C/p\u003E\n\u003C/blockquote\u003E\n","\u003Cp\u003ENow let' s aggregate using a spatial index. We are going to calculate how many Starbucks locations fall within each quadkey grid cell of resolution 15. This query adds two new columns to our dataset: geom, representing the boundary of each of the Quadkey grid cells where there's at least one Starbucks, and agg_total, containing the total number of locations that fall within each cell. Finally, we can visualize the result.\u003C/p\u003E\n\u003Cpre\u003E\u003Ccode\u003EWITH data AS (\n  SELECT carto.carto.QUADINT_FROMGEOGPOINT(geog, 15) AS qk,\n  COUNT(*) as agg_total\n  FROM carto.public.starbucks_locations_usa\n  WHERE geog IS NOT null\n  AND CITY = 'New York'\n  GROUP BY qk\n)\nSELECT\n  qk,\n  agg_total,\n  carto.carto.QUADINT_BOUNDARY(qk) AS geom\nFROM\n  data\n\u003C/code\u003E\u003C/pre\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step9_2.png\" alt=\"assets/step9_2.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003EYou can click on the layer and go into the Fill Color palette to color by \u003Ccode\u003Eagg_total\u003C/code\u003E.\u003C/p\u003E\n","\u003Cp\u003EFinally add widget to filter the area with the most starbucks:\u003C/p\u003E\n","\u003Cp\u003E\u003Cimg src=\"https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step9_3.png\" alt=\"assets/step9_3.png\"\u003E\u003C/p\u003E\n","\u003Cp\u003ECongratulations! You have borrowed your search!\u003C/p\u003E\n&lt;!-- ------------------------ --&gt;\n","\u003Ch2\u003EConclusion\u003C/h2\u003E\n","\u003Cp\u003EIn this guide, you acquired geospatial data from the Snowflake Marketplace, explored how the \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E data type and its associated formats work, created data files with geospatial data in it, loaded those files into new tables with \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E typed columns, and queried geospatial data using parser, constructor, transformation and calculation functions on single tables and multiple tables with joins. You then saw how newly constructed geospatial objects could be visualized in CARTO!\u003C/p\u003E\n","\u003Cp\u003EYou are now ready to explore the larger world of Snowflake \u003Ca href=\"https://docs.snowflake.com/en/sql-reference/data-types-geospatial.html\"\u003Egeospatial support\u003C/a\u003E and \u003Ca href=\"https://docs.snowflake.com/en/sql-reference/functions-geospatial.html\"\u003Egeospatial functions\u003C/a\u003E as well as \u003Ca href=\"https://docs.carto.com/analytics-toolbox-snowflake/overview/getting-started/\"\u003ECARTO's Analytics Toolbox for Snowflake\u003C/a\u003E!\u003C/p\u003E\n","\u003Ch3\u003EWhat we've covered\u003C/h3\u003E\n","\u003Cp\u003EHow to acquire a shared database from the Snowflake Marketplace.\u003C/p\u003E\n","\u003Cp\u003EThe \u003Ccode\u003EGEOGRAPHY\u003C/code\u003E data type, its formats \u003Ccode\u003EGeoJSON\u003C/code\u003E, \u003Ccode\u003EWKT\u003C/code\u003E, \u003Ccode\u003EEWKT\u003C/code\u003E, \u003Ccode\u003EWKB\u003C/code\u003E, and \u003Ccode\u003EEWKB\u003C/code\u003E, and how to switch between them.\u003C/p\u003E\n","\u003Cp\u003EHow to unload and load data files with geospatial data.\u003C/p\u003E\n","\u003Cp\u003EHow to use parsers like \u003Ccode\u003EST_X\u003C/code\u003E and \u003Ccode\u003EST_Y\u003C/code\u003E.\u003C/p\u003E\n","\u003Cp\u003EHow to use constructors like \u003Ccode\u003ETO_GEOGRAPHY\u003C/code\u003E, \u003Ccode\u003EST_MAKEPOINT\u003C/code\u003E, \u003Ccode\u003EST_MAKELINE\u003C/code\u003E, and \u003Ccode\u003EST_MAKEPOLYGON\u003C/code\u003E.\u003C/p\u003E\n","\u003Cp\u003EHow to use a transformation like \u003Ccode\u003EST_COLLECT\u003C/code\u003E.\u003C/p\u003E\n","\u003Cp\u003EHow to perform measurement calculations like \u003Ccode\u003EST_DISTANCE\u003C/code\u003E, \u003Ccode\u003EST_LENGTH\u003C/code\u003E, and \u003Ccode\u003EST_PERIMETER\u003C/code\u003E.\u003C/p\u003E\n","\u003Cp\u003EHow to perform relational calculations like \u003Ccode\u003EST_DWITHIN\u003C/code\u003E and \u003Ccode\u003EST_WITHIN\u003C/code\u003E.\u003C/p\u003E\n","\u003Cp\u003EHow to use Spatial Indexes to Aggregate data using the CARTO Analytics Toolbox\u003C/p\u003E\n","\u003Cp\u003ECreating Map Dashboards!\u003C/p\u003E"],"description":"Analyze New York City points-of-interest using Snowflake GEOGRAPHY and CARTO Analytics Toolbox for retail insights.","title":"Geospatial Analytics for Retail with Snowflake and CARTO",":type":"snowflake-site/components/contentfragment",":items":{},":itemsOrder":[],"elements":{"quickstartArticleBody":{"dataType":"string","value":"\u003C!-- ------------------------ --\u003E\n## Overview \n\nGeospatial query capabilities in Snowflake are built upon a combination of data types and specialized query functions that can be used to parse, construct, and run calculations over geospatial objects. This guide will introduce you to the `GEOGRAPHY` data type, help you understand geospatial formats supported by Snowflake, walk you through the use of a variety of functions on a sample geospatial data set from the Snowflake Marketplace, and show you how to analyze and visualize your Snowflake data using CARTO's Analytics Toolbox.\n\n![Carto+SF](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/carto_sf.png) \n\n### Prerequisites\n- Quick Video [Introduction to Snowflake](https://www.youtube.com/watch?v=fEtoYweBNQ4&ab_channel=SnowflakeInc.)\n- Snowflake [Data Loading Basics Video](https://www.youtube.com/watch?v=us6MChC8T9Y&ab_channel=SnowflakeInc.)\n- [CARTO in a nutshell](https://docs.carto.com/get-started/#carto-in-a-nutshell) web guide\n- [CARTO Spatial Extension for Snowflake](https://www.youtube.com/watch?v=9W_Attbs-fY) video\n\n### What You’ll Learn \n- how to acquire geospatial data from the Snowflake Marketplace\n- how to interpret the `GEOGRAPHY` data type\n- how to understand the different formats that `GEOGRAPHY` can be expressed in\n- how to unload/load geospatial data\n- how to use parser, constructor, and calculation geospatial functions in queries\n- how to perform geospatial joins\n\n### What You’ll Need \n- A supported Snowflake [Browser](https://docs.snowflake.com/en/user-guide/setup.html)\n- Sign-up for a [Snowflake Trial](https://signup.snowflake.com/?utm_source=snowflake-devrel&utm_medium=developer-guides&utm_cta=developer-guides) OR have access to an existing Snowflake account with the `ACCOUNTADMIN` role or the `IMPORT SHARE` privilege. Pick the Enterprise edition to try\n- Search Optimization for Geospatial.\n- Sign-up for a [CARTO Trial](http://app.carto.com/signup) (OR have access to an existing CARTO account )\n\n### What You’ll Build \n- A sample use case that involves points-of-interest in New York City.\n\n![Mapping UI](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/mapping-ui-2.png)\n\n\u003C!-- ------------------------ --\u003E\n## Acquire Marketplace Data and Analytics Toolbox\n\nThe first step in the guide is to acquire a geospatial data set that you can freely use to explore the basics of Snowflake's geospatial functionality. The best place to acquire this data is the Snowflake Marketplace!\n\nWe will also be accessing another asset from the Snowflake Marketplace: The CARTO Analytics Toolbox - a composed set of user-defined functions that extend the geospatial capabilities of Snowflake. The listing gives you access to Open Source modules supporting different spatial indexes and other operations: quadkeys, H3, S2, placekey, geometry constructors, accessors, transformations, etc.\n\n### Access Snowflake's Web UI\n[app.snowflake.com](https://app.snowflake.com/)\n\nIf this is the first time you are logging into the Snowflake UI, you will be prompted to enter your account name or account URL that you were given when you acquired a trial. The account URL contains your [account name](https://docs.snowflake.com/en/user-guide/connecting.html#your-snowflake-account-name) and potentially the region. You can find your account URL in the email that was sent to you after you signed up for the trial.\n\nClick `Sign-in` and you will be prompted for your user name and password.\n\n\u003E \n\u003E  If this is not the first time you are logging into the Snowflake UI, you should see a \"Select an account to sign into\" prompt and a button for your account name listed below it. Click the account you wish to access and you will be prompted for your user name and password (or another authentication mechanism).\n\n### Increase Your Account Permission\nThe Snowflake web interface has a lot to offer, but for now, switch your current role from the default `SYSADMIN` to `ACCOUNTADMIN`. This increase in permissions will allow you to create shared databases from Snowflake Marketplace listings.\n\n\u003E \n\u003E  If you don't have the `ACCOUNTADMIN` role, switch to a role with `IMPORT SHARE` privileges instead.\n\n![assets/b9575209bfee61ca.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/b9575209bfee61ca.png)\n\n### Create a Virtual Warehouse (if needed)\n\nIf you don't already have access to a Virtual Warehouse to run queries, you will need to create one.\n\n- Navigate to the `Admin \u003E Warehouses` screen using the menu on the left side of the window\n- Click the big blue `+ Warehouse` button in the upper right of the window\n- Create an X-Small Warehouse as shown in the screen below\n\n![assets/new_warehouse.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/new_warehouse.png)\n\nBe sure to change the `Suspend After (min)` field to 1 min to avoid wasting compute credits.\n\n### Acquire Data from the Snowflake Marketplace\nNow you can acquire sample geospatial data from the Snowflake Marketplace.\n\n- Navigate to the `Marketplace` screen using the menu on the left side of the window\n- Search for `OpenStreetMap New York` in the search bar\n- Find and click the `Sonra OpenStreetMap New York` tile\n\n![assets/marketplace.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/marketplace.png)\n\n- Once in the listing, click the big blue `Get` button\n\n\u003E \n\u003E  On the `Get` screen, you may be prompted to complete your `user profile` if you have not done so before. Click the link as shown in the screenshot below. Enter your name and email address into the profile screen and click the blue `Save` button. You will be returned to the `Get` screen.\n\n![assets/get_data.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/get_data.png)\n\n- On the `Get Data` screen, change the name of the database from the default to `OSM_NEWYORK`, as this name is shorter and all of the future instructions will assume this name for the database.\n\n![assets/get_data_renamed.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/get_data_renamed.png)\n\nCongratulations! You have just created a shared database from a listing on the Snowflake Marketplace.\n\n### Install CARTO Analytics Toolbox from the Snowflake Marketplace\nNow you can acquire CARTO's Analytics Toolbox from the Snowflake Marketplace. This will share UDFs (User defined functions) to your account that will allow you to perform even more geospatial analytics.\n\n- Similar to how you did with the data in the previous steps, navigate to the Marketplace screen using the menu on the left side of the window\n\n![assets/search_carto_dataset.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/search_carto_dataset.png)\n\n- Search for `CARTO` in the search bar\n- Find and click the `Analytics Toolbox` tile\n\n![assets/analytics_toolbox.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/analytics_toolbox.png)\n\nClick on big blue `Get` button\nIn the options, name the database `CARTO` and optionally add more roles that can access the database\n\n![assets/get_data_permissions.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/get_data_permissions.png)\n\n- Click on `Get` and then `Done`.\n\nCongratulations! Now you have data and the analytics toolbox!\n\n\u003C!-- ------------------------ --\u003E\n## Connect Snowflake and CARTO\n\nLet's connect your Snowflake to CARTO so you can run and visualize the queries in the following exercises of this workshop.\n\nAccess the CARTO Workspace: [app.carto.com](http://app.carto.com/)\n\n### Connection to Snowflake\nGo to the Connections section in the Workspace, where you can find the list of all your current connections.\n\n![assets/carto_connection_1.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/carto_connection_1.png)\n\nTo add a new connection, click on `New connection` and follow these steps:\n\n1. Select Snowflake.\n2. Click the `Setup connection` button.\n3. Enter the connection parameters and credentials.\n\nThese are the parameters you need to provide:\n\n- **Name** for your connection: You can register different connections with the Snowflake connector. You can use the name to identify the connections.\n- **Username**: Name of the user account.\n- **Password**: Password for the user account.\n- **Account**: Hostname for your account . One way to get it is to check the Snowflake activation email which contains the account_name within the URL ( \u003Caccount_name\u003E.snowflakecomputing.com ). Just enter what's on the account_name, i.e ok36557.us-east-2.aws\n- **Warehouse (optional)**: Default warehouse that will run your queries. Use MY_WH.\n\n\u003E \n\u003E  Use MY_WH or the name of the data warehouse you created in the previous step otherwise some queries will fail because CARTO won't know which warehouse to run them against.\n\n- **Database (optional)**. Default database to run your queries. Leave Blank.\n- **Role (optional)**. Default Role to run your queries. Use ACCOUNTADMIN.\n\n![assets/carto_connection_2.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/carto_connection_2.png)\n\nOnce you have entered the parameters, you can click the Connect button. CARTO will try to connect to your Snowflake account. If everything is OK, your new connection will be registered.\n\n\u003C!-- ------------------------ --\u003E\n## Understand Geospatial Formats\n\nNow we will run different queries to understand how the `GEOGRAPHY` data type works in Snowflake. Navigate to the query editor by clicking on `Worksheets` on the top left navigation bar.\n\n### Open a New Worksheet and Choose Your Warehouse\n\n- Click the + Worksheet button in the upper right of your browser window. This will open a new window.\n- In the new Window, make sure `ACCOUNTADMIN` and `MY_WH` (or whatever your warehouse is named) are selected in the upper right of your browser window.\n\n![assets/sf_worksheet_1.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/sf_worksheet_1.png)\n\n- In the object browser on the left, select Databases tab and expand the `OSM_NEWYORK` database, the `NEW_YORK` schema, and the `Views` grouping to see the various views that you have access to in this shared database. The data provider has chosen to share only database views in this listing. You will use some of these views throughout the guide.\n\n![assets/sf_worksheet_2.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/sf_worksheet_2.png)\n\nNow you are ready to run some queries.\n\n### The GEOGRAPHY data type\nSnowflake's `GEOGRAPHY` data type is similar to the `GEOGRAPHY` data type in other geospatial databases in that it treats all points as longitude and latitude on a spherical earth instead of a flat plane. This is an important distinction from other geospatial types (such as `GEOMETRY`), but this guide won't be exploring those distinctions. More information about Snowflake's specification can be found [here](https://docs.snowflake.com/en/sql-reference/data-types-geospatial.html).\n\nLook at one of the views in the shared database which has a `GEOGRAPHY` column by running the following queries. Copy & paste the SQL below into your worksheet editor, put your cursor somewhere in the text of the query you want to run (usually the beginning or end), and either click the blue \"Play\" button in the upper right of your browser window, or press `CTRL+Enter` or `CMD+Enter` (Windows or Mac) to run the query.\n\n```\n// Set the working database schema\nuse schema osm_newyork.new_york;\n```\n\nThe [use schema](https://docs.snowflake.com/en/sql-reference/sql/use-schema.html) command sets the active database.schema for your future queries so you do not have to fully qualify your objects.\n\n```\n// Describe the v_osm_ny_shop_electronics view \ndesc view v_osm_ny_shop_electronics;\n```\n\nThe [desc or describe](https://docs.snowflake.com/en/sql-reference/sql/desc.html) command shows you the definition of the view, including the columns, their data type, and other relevant details. Notice the `coordinates` column is defined of `GEOGRAPHY` type. This is the column you will focus on in the next steps.\n\n### View GEOGRAPHY Output Formats\nSnowflake supports 3 primary geospatial formats and 2 additional variations on those formats. They are:\n\n- **GeoJSON**: a JSON-based standard for representing geospatial data\n- **WKT & EWKT**: a \"Well Known Text\" string format for representing geospatial data and the \"Extended\" variation of that format\n- **WKB & EWKB**: a \"Well Known Binary\" format for representing geospatial data in binary and the \"Extended\" variation of that format\n\nThese formats are supported for ingestion (files containing those formats can be loaded into a `GEOGRAPHY` typed column), query result display, and data unloading to new files. You don't need to worry about how Snowflake stores the data under the covers, but rather how the data is displayed to you or unloaded to files through the value of a session variable called `GEOGRAPHY_OUTPUT_FORMAT`.\n\nRun the query below to make sure the current format is GeoJSON.\n\n```\n// Set the output format to GeoJSON\nalter session set geography_output_format = 'GEOJSON';\n```\n\nThe [alter session](https://docs.snowflake.com/en/sql-reference/sql/alter-session.html) command lets you set a parameter for your current user session, which in this case is the `GEOGRAPHY_OUTPUT_FORMAT`. The default value for this parameter is `'GEOJSON'`, so normally you wouldn't have to run this command if you want that format, but this guide wants to be certain the next queries are run with the `'GEOJSON'` output.\n\nNow run the following query against the `V_OSM_NY_SHOP_ELECTRONICS` view.\n\n```\n// Query the v_osm_ny_shop_electronics view for rows of type 'node' (long/lat points)\nselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'node' limit 25;\n```\n\nIn the result set, notice the `coordinates` column and how it displays a JSON representation of a point. It should look something like this:\n\n```\n{   \"coordinates\": [     -7.390351649999999e+01,     4.074499730000000e+01   ],   \"type\": \"Point\" }\n```\n\nIf you click on a cell in the `coordinates` column of the query result, the JSON representation will also show in the cell panel on the right side of the query window, and it includes a button that allows you to copy that JSON text (see screenshot below). You will use this capability in later exercises.\n\n![assets/sf_worksheet_3.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/sf_worksheet_3.png)\n\nNow run the next query.\n\n```\n// Query the v_osm_ny_shop_electronics view for rows of type 'way' (a collection of many points)\nselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'way' limit 25;\n```\n\nClick on a cell in the `coordinates` column of the query result. Notice in the cell panel how the JSON is expanded with many more points in the JSON array. This shows you the difference between a geospatial representation of a single point, vs a representation of many points.\n\nNow look at the same queries but in a different format. Run the following query:\n\n```\n// Set the output format to WKT\nalter session set geography_output_format = 'WKT';\n```\n\nRun the previous two queries again. With each run, click on a cell in the `coordinates` column and examine the output.\n\n```\nselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'node' limit 25;\nselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'way' limit 25;\n```\n\nWKT looks different than GeoJSON, and is arguably more readable. Here you can more clearly see the [geospatial object types](https://docs.snowflake.com/en/sql-reference/data-types-geospatial.html#geospatial-object-types) which are represented below in the example output:\n\n```\n// An example of a POINT\nPOINT(-74.0266511 40.6346599)\n// An example of a POLYGON\nPOLYGON((-74.339971 43.0631175,-74.3397734 43.0631363,-74.3397902 43.0632306,-74.3399878 43.0632117,-74.339971 43.0631175))\n```\n\u003E \n\u003E  You will use several different geospatial object types in this guide, and the guide will explain them more in later sections as you use them.\n\nLastly, look at WKB output. Run the following query:\n\n```\n// Set the output format to WKB\nalter session set geography_output_format = 'WKB';\n```\nAnd run the two queries again, click on a cell in the `coordinates` column each time.\n\n```SQL\nselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'node' limit 25;\nselect coordinates, name from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type = 'way' limit 25;\n```\nNotice how WKB is incomprehensible to a human reader. Other than the length of the binary value, it's hard to tell the difference between the `POINT` and the `POLYGON`. However, this format is handy in data loading/unloading, as you'll see in the next section.\n\n\u003C!-- ------------------------ --\u003E\n## Unload/Load Data\n\nNow that you understand the different output formats, you can create new files from the electronics view, then load those files into new tables with the `GEOGRAPHY` data type. You will also encounter your first examples of geospatial parsers and constructors.\n\n### Create New WKB Files From Queries\n\nIn this step we're going to use Snowflake's [COPY into location](https://docs.snowflake.com/en/sql-reference/sql/copy-into-location.html) feature to take the output of a query and create a file in your local [user stage](https://docs.snowflake.com/en/user-guide/data-load-local-file-system-create-stage.html#user-stages). Because your output format is set to WKB, the geospatial column in that table will be represented in the WKB format in the new files.\n\n\u003E \n\u003E  The WKB format is being chosen here for its simplicity within a file. Since WKB is a single alpha-numeric string with no delimiters, spaces, or other difficult characters, it is excellent for storing geospatial data in a file. That doesn't mean other formats are to be avoided in real world use cases, but WKB will make your work easier in this guide.\n\nMake sure we're using the WKB output format by running this query again:\n\n```\nalter session set geography_output_format = 'WKB';\n```\n\nIf you're not familiar with the anatomy of a `COPY` command, the code comments below will break down the code of the first query, which copies a few columns and all rows from the electronics view:\n\n```\n// Define the write location (@~/ = my user stage) and file name for the file \ncopy into @~/osm_ny_shop_electronics_all.csv \n// Define the query that represents the data output\nfrom (select id,coordinates,name,type from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics ) \n// Indicate the comma-delimited file format and tell it to double-quote strings\nfile_format=(type=csv field_optionally_enclosed_by='\"') \n// Tell Snowflake to write one file and overwrite it if it already exists\nsingle=true overwrite=true;\n```\n\nRun the query above and you should see an output that indicates the number of rows that were unloaded.\n\nRun the second unload query below, which adds some filtering to the output query and a parser:\n\n```\ncopy into @~/osm_ny_shop_electronics_points.csv \nfrom (\n  select id,coordinates,name,type,st_x(coordinates),st_y(coordinates) \n  from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  where type='node'\n) file_format=(type=csv field_optionally_enclosed_by='\"') \nsingle=true overwrite=true;\n```\n\nIn this query, the parsers `ST_X` and `ST_Y` are extracting the longitude and latitude from a `GEOGRAPHY POINT` object. These parsers only accept single points as an input, so you had to filter the query on `type = 'node'`. In Snowflake, the ‘x' coordinate is always the longitude and the ‘y' coordinate is always the latitude, and as you will see in a future constructor, the longitude is always listed first.\n\n### LIST and Query User Staged Files\n\nYou should now have 2 files in your user stage. Verify they are there by running the [list](https://docs.snowflake.com/en/sql-reference/sql/list.html) command. The ‘osm' string will act as a filter to tell the command to show only the files beginning with ‘osm'.\n\n```\nlist @~/osm;\n```\n\nYou can query a simple file directly in the stage by using the ‘$' notation below to represent each delimited column in the file, which in this case Snowflake assumes to be a comma-delimited CSV. Run this query:\n\n```\nselect $1,$2,$3,$4 from @~/osm_ny_shop_electronics_all.csv;\n```\n\nNotice how the second column displays the WKB geospatial data in double-quotes because of how you created the file. This will not load directly into a `GEOGRAPHY` data type, so you need to further define the file format. Run each query below to create a local database and a new file format in that database. You will also switch your `GEOGRAPHY` output format back to WKT to improve readability of future queries.\n\n```\n// Create a new local database\ncreate or replace database geocodelab;\n// Change your working schema to the public schema in that database\nuse schema geocodelab.public;\n// Create a new file format in that schema\ncreate or replace file format geocsv type = 'csv' field_optionally_enclosed_by='\"';\n// Set the output format back to WKT\nalter session set geography_output_format = 'WKT';\n```\n\nNow query the ‘all' files in the stage using the file format:\n\n```\nselect $1,TO_GEOGRAPHY($2),$3,$4 \nfrom @~/osm_ny_shop_electronics_all.csv \n(file_format =\u003E 'geocsv');\n```\n\nNotice the use of the `TO_GEOGRAPHY` constructor which tells Snowflake to interpret the WKB binary string as geospatial data and construct a `GEOGRAPHY` type. The WKT output format allows you to see this representation in a more readable form. You can now load this file into a table that includes a `GEOGRAPHY` typed column by running the two queries below:\n\n```\n// Create a new 'all' table in the current schema\ncreate or replace table electronics_all \n(id number, coordinates geography, name string, type string);\n// Load the 'all' file into the table\ncopy into electronics_all from @~/osm_ny_shop_electronics_all.csv \nfile_format=(format_name='geocsv');\n```\n\nYou should see all rows loaded successfully into the table with 0 errors seen.\n\nNow turn your attention to the other ‘points' file. If you recall, you used `ST_X` and `ST_Y` to make discrete longitude and latitude columns in this file. It is not uncommon to receive data which contains these values in different columns, and you can use the `ST_MAKEPOINT` constructor to combine two discrete longitude and latitude columns into one `GEOGRAPHY` typed column. Run this query:\n\n```\nselect $1,ST_MAKEPOINT($5,$6),$3,$4,$5,$6 \nfrom @~/osm_ny_shop_electronics_points.csv \n(file_format =\u003E 'geocsv');\n```\n\n\u003E \n\u003E  Notice in `ST_MAKEPOINT` that the longitude column is listed first. Despite the common verbal phrase \"lat long,\" you always put longitude before latitude to represent a geospatial POINT object in Snowflake.\n\nNow create a table and load the ‘points' file into that table. Run these two queries.\n\n```\n// Create a new 'points' table in the current schema\ncreate or replace table electronics_points \n(id number, coordinates geography, name string, type string, \nlong number(38,7), lat number(38,7));\n// Load the 'points' file into the table\ncopy into electronics_points from (\n  select $1,ST_MAKEPOINT($5,$6),$3,$4,$5,$6 \n  from @~/osm_ny_shop_electronics_points.csv\n) file_format=(format_name='geocsv');\n```\n\nYou should see all rows loaded successfully into the table with 0 errors seen.\n\n\u003E \n\u003E  In the ‘all' file load statement, you didn't have to specify a query to load the file because when you have a column in a file that is already in a Snowflake supported geospatial format, and load that value into a `GEOGRAPHY` typed column, Snowflake automatically does the geospatial construction for you. In the ‘points' file, however, you must use a transform query to construct two discrete columns into a single `GEOGRAPHY` column using a geospatial constructor function.\n\nTo conclude this section, you can query your recently loaded tables using the two queries below:\n\n```\nselect * from electronics_all;\nselect * from electronics_points;\n```\n\n\u003C!-- ------------------------ --\u003E\n## Calculations and More Constructors\n\nNow that you have the basic understand of how the `GEOGRAPHY` data type works and what a geospatial representation of data looks like in various output formats, it's time to walkthrough a scenario that requires you to run and visualize geospatial queries to answer some questions.\n\n\u003E \n\u003E  It's worth noting here that the scenario in the next three sections is more akin to what a person would do with a map application on their mobile phone, rather than how geospatial data would be used in fictional business setting. This was chosen intentionally to make this guide and these queries more relatable to the person doing the guide, rather than trying to create a realistic business scenario that is relatable to all industries, since geospatial data is used very differently across industries.\n\nBefore you begin the scenario, switch the active schema back to the shared database and make sure the output format is either GeoJSON or WKT, as you will be using another website (i.e CARTO) to visualize the query results. Which output you choose will be based on your personal preference - WKT is easier for the casual person to read, while GeoJSON is arguably more common. When querying from CARTO the default (`GEOJSON`) will be used so no need to worry about changing it from that context.\n\nAlso note that from here on out, SQL statements and functions that have been previously covered will no longer have their usage explained in the code comments or the text of the guide. Run the two queries below:\n\n```\nuse schema osm_newyork.new_york;\n// Run just one of the below queries based on your preference\nalter session set geography_output_format = 'GEOJSON';\nalter session set geography_output_format = 'WKT';\n```\n\n### The Scenario\n\nPretend that you are currently living in your apartment near Times Square in New York City. You need to make a shopping run to Best Buy and the liquor store, as well as grab a coffee at a coffee shop. Based on your current location, what are the closest stores or shops to do these errands, and are they the most optimal locations to go to collectively? Are there other shops you could stop at along the way?\n\nStart with running a query that represents your current location. This location has been preselected for the guide using a website that returns longitude and latitude when you click on a location on a map. Run this query in the Snowlake editor:\n\n```\nselect to_geography('POINT(-73.986226 40.755702)');\n```\n\nNotice there is no `from` clause in this query, which allows you to construct a `GEOGRAPHY` object in a simple `select` statement.\n\n\u003E \n\u003E  POINT(-73.986226 40.755702) is already a geography object in WKT format, so there was no real need to convert it again, but it was important to show the most basic way to use TO_GEOGRAPHY to construct a simple geography object.\n\nNow let's do the query in CARTO Builder to see where the point is.\n\n- Create a new map. Use a the navigation menu on the left to got to Maps and then click on (+) New Map).\n\n![assets/step6_1.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_1.png)\n\n- Click on the \"Add Source From\"\n\n![assets/step6_2.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_2.png)\n\n- Then click on `Custom Query` and make sure you have selected Snowflake Connection that you have created in previous steps.\n\n![assets/step6_3.gif](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_3.gif)\n\n- Now paste the query and click on the green `Run` button.\n\n```\nselect to_geography('POINT(-73.986226 40.755702)') as geom;\n```\n\n\u003E \n\u003E  CARTO requires that the column containing geospatial data be named `geom` so that is why we add as geom in the query. If you don't do this it will fail.\n\n- Use the map zoom controls (+/- buttons) and click the zoom in )+) button until you can see the point better. You should see something like the screenshot below, though you may see more depending on your browser window size.\n\n![assets/step6_4.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_4.png)\n\n\u003E \n\u003E  Feel free to use this as your SQL Editor for the next steps, you can delete and re-run the queries from the workshop here.\n\nThe green dot represents the `POINT` object location. Now you know where you are!\n\n![assets/step6_5.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_5.png)\n\n### Find the Closest Locations\n\nIn the next step, you are going to run queries to find the closest Best Buy, liquor store, and coffee shop to your current location from above. These queries are very similar and will do several things:\n\n- One will query the electronics view, the other two will query the food & beverages view, applying appropriate filters to find the thing we're looking for.\n- All queries will use the `ST_DWITHIN` function in the `where` clause to filter out stores that aren't within the stated distance. The function takes two points and a distance to determine whether those two points are less than or equal to the stated distance from each other, returning `true` if they are and `false` if they are not. In this function, you will use the `coordinates` column from each view to scan through all of the Best Buys, liquor stores, or coffee shops and compare them to your current location `POINT`, which you will construct using the previously used `ST_MAKEPOINT`. You will then use 1600 meters for the distance value, which is roughly equivalent to a US mile.\n- Note that in the queries below, the syntax `ST_DWITHIN(...) = true` is used for readability, but the `= true` is not required for the filter to work. It is required if you were to need an `= false` condition.\n- All queries will also use the `ST_DISTANCE` function, which actually gives you a value in meters representing the distance between the two points. When combined with `order by` and `limit` clauses, this will help you return only the row that is the smallest distance, or closest.\n- Also note in `ST_DISTANCE` that you use the constructor `TO_GEOGRAPHY` for your current location point instead of the `ST_MAKEPOINT` constructor that you used earlier in `ST_DWITHIN`. This is to show you that that `TO_GEOGRAPHY` is a general purpose constructor where `ST_MAKEPOINT` specifically makes a `POINT` object, but in this situation they resolve to the same output. Sometimes there is more than one valid approach to construct a geospatial object.\n\nRun the following queries (the first one has comments similar to above):\n\n```\n// Find the closest Best Buy\nselect id, coordinates as geom, name, addr_housenumber, addr_street, \n// Use st_distance to calculate the distance between your location and Best Buy\nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  \n// Filter just for Best Buys\nwhere name = 'Best Buy' and \n// Filter for Best Buys that are within about a US mile (1600 meters)\nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \n// Order the results by the calculated distance and only return the lowest\norder by 6 limit 1;\n```\n\n```\n// Find the closest liquor store\nselect id, coordinates as geom, name, addr_housenumber, addr_street, \nst_distance(geom,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'alcohol' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 6 limit 1;\n```\n\n```\n// Find the closest coffee shop\nselect id, coordinates as geom, name, addr_housenumber, addr_street, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 6 limit 1;\n```\n\nIn each case, the query returns a `POINT` object, which you aren't going to do anything with just yet, but now you have the queries that return the desired results. It would be really nice, however, if you could easily visualize how these points relate to each other.\n\n### Collect Points Into a Line\nIn the next step of this section, you're going to ‘collect' the points using `ST_COLLECT` and make a `LINESTRING` object with the `ST_MAKELINE` constructor. You will then be able to visualize this line on CARTO.\n\n- The first step in the query to is create a common table expression (CTE) query that unions together the queries you ran in the above step (keeping just the `coordinates` and `distance_meters` columns). This CTE will result in a 4 row output - 1 row for your current location, 1 row for the Best Buy location, 1 row for the liquor store, and 1 row for the coffee shop.\n- You will then use `ST_COLLECT` to aggregate those 4 rows in the `coordinates` column into a single geospatial object, a `MULTIPOINT`. This object type is a collection of `POINT` objects that are interpreted as having no connection to each other other than they are grouped. A visualization tool will not connect these points, just plot them, so in the next step you'll turn these points into a line.\n- Finally you need to do is convert that `MULTIPOINT` object into a `LINESTRING` object using `ST_MAKELINE`, which takes a set of points as an input and turns them into a `LINESTRING` object. Whereas a `MULTIPOINT` has points with no assumed connection, the points in a `LINESTRING` will be interpreted as connected in the order they appear. Needing a collection of points to feed into `ST_MAKELINE` is the reason why you did the `ST_COLLECT` step above, and the only thing you need to do to the query above is wrap the `ST_COLLECT` in an `ST_LINESTRING` like so:\n\nRun this query and examine the output:\n\n```\n// Create the CTE 'locations'\nwith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages \nwhere shop = 'alcohol' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\n// Query the CTE result set, aggregating the coordinates into one object\nSelect st_makeline(st_collect(coordinates),to_geography('POINT(-73.986226 40.755702)')) as geom from locations;\n```\n\n\u003E \n\u003E  You may be wondering why your current position point was added as an additional point in the line when you already included it as the first point in the MULTIPOINT collection above? Stay tuned for why you need this later, but logically it makes sense that you plan to go back to your New York City apartment at the end of your shopping trip.\n\nYou should get this:\n\n![assets/step6_6.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_6.png)\n\nYikes! You can see in the image above that the various shops are in three different directions from your original location. That could be a long walk. Fortunately, you can find out just how long by wrapping a `ST_DISTANCE` function around the `LINESTRING` object, which will calculate the length of the line in meters. Run the query below:\n\n```\n// Create the CTE 'locations'\nwith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages \nwhere shop = 'alcohol' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select coordinates as geom, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters from OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\n// Query the CTE result set, aggregating the coordinates into one object\nSelect st_makeline(st_collect(coordinates),to_geography('POINT(-73.986226 40.755702)')) as geom ,\nst_length(geom)  as distance\nfrom locations;\n```\n\nYou can view non-geospatial parameters by adding a hover pop-up interaction. See GIF below:\n\n![assets/step6_7.gif](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step6_7.gif)\n\nWow! Almost 2120 meters!\n\n\u003E \n\u003E  It is correct to note that this distance represents a path based on how a bird would fly, rather than how a human would navigate the streets. The point of this exercise is not to generate walking directions, but rather to give you a feel of the various things you can parse, construct, and calculate with geospatial data and functions in Snowflake. CARTO actually lets you to [calculate drive/walk routes within Snowflake with its Location Data Services module](https://docs.carto.com/analytics-toolbox-snowflake/examples/trade-areas-based-on-isolines/) if you're interested in a more accurate calculation.\n\nNow move to the next section to see how you can optimize your shopping trip.\n\n\u003C!-- ------------------------ --\u003E\n## Joins\n\nIn the previous section, all of your queries to find the closest Best Buy, liquor store, and coffee shop were based on proximity to your Times Square apartment. But wouldn't it make more sense to see, for example, if there was a liquor store and/or coffee shop closer to Best Buy? You can use geospatial functions in a table join to find out.\n\n### Is There Anything Closer to Best Buy?\n\nYou have been using two views in your queries so far: `v_osm_ny_shop_electronics`, where stores like Best Buy are catalogued, and `v_osm_ny_shop_food_beverage`, where liquor stores and coffee shops are catalogued. To find the latter near the former, you'll join these two tables. The new queries introduce a few changes:\n\n- The electronics view will serve as the primary view in the query, where you'll put a filter on the known Best Buy store using its id value from the view.\n- Instead of the `JOIN` clause using a common `a.key = b.key` foreign key condition, the `ST_DWITHIN` function will serve as the join condition (remember before the note about not needing to include the `= true` part).\n- The `ST_DISTANCE` calculation is now using the Best Buy coordinate and all of the other coordinates in the food & beverage view to determine the closest liquor store and coffee shop location to Best Buy.\n\nRun the two queries below and create a new layer for each:\n\n\u003E \n\u003E  In order to create a new layer ( and keep the query done in the previous step) click on the blue `(+) Add source from` button, copy the query and click run. .\n\nFirst run:\n```\n// Join to electronics to find a liquor store closer to Best Buy\nselect fb.id,fb.coordinates as geom,fb.name,fb.addr_housenumber,fb.addr_street,\n// The st_distance calculation uses coordinates from both views\nst_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \n// The join is based on being within a certain distance\njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \n// Hard-coding the known Best Buy id below\nwhere e.id = 1428036403 and fb.shop = 'alcohol' \n// Ordering by distance and only showing the lowest\norder by 6 limit 1;\n```\n\n![assets/joins_1.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/joins_1.png)\n\nAnd then run:\n```\n// Join to electronics to find a coffee shop closer to Best Buy\nselect fb.id,fb.coordinates as geom,fb.name,fb.addr_housenumber,fb.addr_street,\nst_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \nwhere e.id = 1428036403 and fb.shop = 'coffee' \norder by 6 limit 1;\n```\n\n\u003E \n\u003E  Make sure you style the result to make the point / lines bigger or more colorful so that you can see them.\n\nIf you note in the result of each query, the first query found a different liquor store closer to Best Buy, whereas the second query returned the same coffee shop from your original search, so you've optimized as much as you can.\n\n![assets/joins_2.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/joins_2.png)\n\n\u003E \n\u003E  The id of the selected Best Buy was hard coded into the above queries to keep them easier to read and to keep you focused on the join clause of these queries, rather than introducing sub queries to dynamically calculate the nearest Best Buy. Those sub queries would have created longer queries that were harder to read.\n\n\u003E \n\u003E  If you're feeling adventurous, go read about other possible relationship functions that could be used in the join for this scenario [here](https://docs.snowflake.com/en/sql-reference/functions-geospatial.html).\n\n### Calculate a New Linestring\n\nNow that you know that there is a better option for the liquor store, substitute the above liquor store query into the original linestring query to produce a different object. For visualization sake, the order of the statements in the unions have been changed, which affects the order of the points in the object.\n\n```\nwith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select fb.coordinates, st_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \nwhere e.id = 1428036403 and fb.shop = 'alcohol' \norder by 2 limit 1)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\nselect st_makeline(st_collect(coordinates),\nto_geography('POINT(-73.986226 40.755702)')) as geom from locations;\n```\n\nCopy the result cell from the above query and paste it into the first layer A. You should get this:\n\n![assets/joins_3.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/joins_3.png)\n\nMuch better! This looks like a more efficient shopping path. Check the new distance by running this query:\n\n```\nwith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select fb.coordinates, st_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \nwhere e.id = 1428036403 and fb.shop = 'alcohol' \norder by 2 limit 1)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\nselect st_makeline(st_collect(coordinates),\nto_geography('POINT(-73.986226 40.755702)')) as geom,\nst_length(geom) as distance\nfrom locations;\n```\n\n![assets/joins_4.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/joins_4.png)\n\nNice! 1537 meters, which is a savings of about 583 meters, or a third of a mile. By joining the two shop views together, you were able to find an object in one table that is closest to an object from another table to optimize your route. Now that you have a more optimized route, can you stop at any other shops along the way? Advance to the next section to find out.\n\n\u003C!-- ------------------------ --\u003E\n## Additional Calculations and Constructors\n\nThe `LINESTRING` object that was created in the previous section looks like a nice, clean, four-sided polygon. As it turns out, a `POLYGON` is another geospatial object type that you can construct and work with. Where you can think of a `LINESTRING` as a border of a shape, a `POLYGON` is the filled version of the shape itself. The key thing about a `POLYGON` is that it must end at its beginning, where a `LINESTRING` does not need to return to the starting point.\n\n\u003E \n\u003E  Remember in a previous section when you added your Times Square Apartment location to both the beginning and the end of the LINESTRING? In addition to the logical explanation of returning home after your shopping trip, that point was duplicated at the beginning and end so you can construct a POLYGON in this section!\n\n### Construct a Polygon\nConstructing a `POLYGON` is done with the `ST_MAKEPOLYGON` function, just like the `ST_MAKELINE`. The only difference is where `ST_MAKELINE` makes a line out of points, `ST_MAKEPOLYGON` makes a polygon out of lines. Therefore, the only thing you need to do to the previous query that constructed the line is to wrap that construction with `ST_MAKEPOLYGON` like this:\n```step_8\nselect st_makepolygon(st_makeline(st_collect(coordinates),\nto_geography('POINT(-73.986226 40.755702)')))\n```\nThis really helps illustrate the construction progression: from individual points, to a collection of points, to a line, to a polygon. Run this query to create your polygon:\n```\nwith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select fb.coordinates, st_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \nwhere e.id = 1428036403 and fb.shop = 'alcohol' \norder by 2 limit 1)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\nselect st_makepolygon(st_makeline(st_collect(coordinates),\nto_geography('POINT(-73.986226 40.755702)'))) as geom\nfrom locations\n```\n\nClick on `(+) Add source from` and copy the result cell from the above query. You should get this:\n\n![assets/step8_1.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step8_1.png)\n\nAnd just like before where you could calculate the distance of a `LINESTRING` using `ST_DISTANCE`, you can calculate the perimeter of a `POLYGON` using `ST_PERIMETER`, which you wrap around the polygon construction in the same way you wrapped around the line construction. Run this query to calculate the perimeter:\n```\nwith locations as (\n(select to_geography('POINT(-73.986226 40.755702)') as coordinates, \n0 as distance_meters)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages  \nwhere shop = 'coffee' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1)\nunion all\n(select fb.coordinates, st_distance(e.coordinates,fb.coordinates) as distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  e \njoin OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_food_beverages fb on st_dwithin(e.coordinates,fb.coordinates,1600) \nwhere e.id = 1428036403 and fb.shop = 'alcohol' \norder by 2 limit 1)\nunion all\n(select coordinates, \nst_distance(coordinates,to_geography('POINT(-73.986226 40.755702)'))::number(6,2) \nas distance_meters \nfrom OSM_NEWYORK.NEW_YORK.v_osm_ny_shop_electronics  \nwhere name = 'Best Buy' and \nst_dwithin(coordinates,st_makepoint(-73.986226, 40.755702),1600) = true \norder by 2 limit 1))\nselect st_makepolygon(st_makeline(st_collect(coordinates),\nto_geography('POINT(-73.986226 40.755702)'))) as geom,\nst_perimeter(geom) as perimeter_meters\nfrom locations\n```\n![assets/step8_2.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step8_2.png)\n\nNice! That query returned the same 1537 meters you got before as the distance of the `LINESTRING`, which makes sense, because the perimeter of a `POLYGON` is the same distance as a `LINESTRING` that constructs a `POLYGON`.\n\n\u003C!-- ------------------------ --\u003E\n## Using Spatial Indexes\n\n### The Scenario, Part 2\nThe lease for our very nice Times Square apartment has ended so we have to find a new apartment! You love coffee shops, specifically Starbucks, so let's find an area where we have the MOST Starbuck locations.\n\nOpen a new map and let's map all the starbucks in NYC:\n\n```\nSELECT GEOG AS GEOM, store_name\nFROM CARTO.public.starbucks_locations_usa\nWHERE CITY = 'New York'\n```\n\n![assets/step9_1.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step9_1.png)\n\n\u003E \n\u003E  We are using a sample dataset included in the CARTO Analytics Toolbox named `starbucks_locations_usa`. You can find it under `PUBLIC`. So the full qualified name should be something like `CARTO.public.starbucks_locations_usa`.\n\nNow let' s aggregate using a spatial index. We are going to calculate how many Starbucks locations fall within each quadkey grid cell of resolution 15. This query adds two new columns to our dataset: geom, representing the boundary of each of the Quadkey grid cells where there's at least one Starbucks, and agg_total, containing the total number of locations that fall within each cell. Finally, we can visualize the result.\n\n```\nWITH data AS (\n  SELECT carto.carto.QUADINT_FROMGEOGPOINT(geog, 15) AS qk,\n  COUNT(*) as agg_total\n  FROM carto.public.starbucks_locations_usa\n  WHERE geog IS NOT null\n  AND CITY = 'New York'\n  GROUP BY qk\n)\nSELECT\n  qk,\n  agg_total,\n  carto.carto.QUADINT_BOUNDARY(qk) AS geom\nFROM\n  data\n```\n\n![assets/step9_2.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step9_2.png)\n\nYou can click on the layer and go into the Fill Color palette to color by `agg_total`.\n\nFinally add widget to filter the area with the most starbucks:\n\n![assets/step9_3.png](https://www.snowflake.com/content/dam/snowflake-site/developers/guides/geospatial-analytics-with-snowflake-and-carto-ny/step9_3.png)\n\nCongratulations! You have borrowed your search!\n\n\u003C!-- ------------------------ --\u003E\n## Conclusion\n\nIn this guide, you acquired geospatial data from the Snowflake Marketplace, explored how the `GEOGRAPHY` data type and its associated formats work, created data files with geospatial data in it, loaded those files into new tables with `GEOGRAPHY` typed columns, and queried geospatial data using parser, constructor, transformation and calculation functions on single tables and multiple tables with joins. You then saw how newly constructed geospatial objects could be visualized in CARTO!\n\nYou are now ready to explore the larger world of Snowflake [geospatial support](https://docs.snowflake.com/en/sql-reference/data-types-geospatial.html) and [geospatial functions](https://docs.snowflake.com/en/sql-reference/functions-geospatial.html) as well as [CARTO's Analytics Toolbox for Snowflake](https://docs.carto.com/analytics-toolbox-snowflake/overview/getting-started/)!\n\n### What we've covered\nHow to acquire a shared database from the Snowflake Marketplace.\n\nThe `GEOGRAPHY` data type, its formats `GeoJSON`, `WKT`, `EWKT`, `WKB`, and `EWKB`, and how to switch between them.\n\nHow to unload and load data files with geospatial data.\n\nHow to use parsers like `ST_X` and `ST_Y`.\n\nHow to use constructors like `TO_GEOGRAPHY`, `ST_MAKEPOINT`, `ST_MAKELINE`, and `ST_MAKEPOLYGON`.\n\nHow to use a transformation like `ST_COLLECT`.\n\nHow to perform measurement calculations like `ST_DISTANCE`, `ST_LENGTH`, and `ST_PERIMETER`.\n\nHow to perform relational calculations like `ST_DWITHIN` and `ST_WITHIN`.\n\nHow to use Spatial Indexes to Aggregate data using the CARTO Analytics Toolbox\n\nCreating Map Dashboards!\n","title":"Quickstart Article Body","multiValue":false,":type":"text/x-markdown"},"quickstartArticleLogoImage":{"dataType":"string","title":"Quickstart Article Logo Image","multiValue":false,":type":"text/plain"}},"elementsOrder":["quickstartArticleBody","quickstartArticleLogoImage"],"isDeveloperGuidesPage":false,"model":"snowflake-site/models/quickstart-article"},"flexible_column_cont":{"id":"flexible-column-container-42a02a14ac","type":"2-column-75-25","alignColumns":"top","containerMaxWidth":"extra-large","topPadding":"none","bottomPadding":"none","spaceBetween":"none","reverseOnMobile":false,"carouselOnMobile":false,"backgroundImageOption":"none","flexible_column_content_container_1":{"id":"container-4797c6e382","layout":"SIMPLE",":type":"snowflake-site/components/flexible-column-container/flexible-column-content-container",":items":{"quickstart_last_modi":{"id":"quickstart-last-modified-0b62652385","icon":{"id":"icon","icon":"calendar",":type":"snowflake-site/components/icon","appliedCssClassNames":"snowflake-icon-blue"},"lastModifiedDatePrefix":"Updated","lastModifiedDate":"2025-12-20",":type":"snowflake-site/components/quickstart/quickstart-last-modified","appliedCssClassNames":"snowflake-responsive-component-top-padding-small"},"text":{"id":"text-5b3c8361e9","additionalClasses":"qs-disclaimer-text","text":"\u003Cp\u003E\u003Cspan style=\"color: #666;\"\u003EThis content is provided as is, and is not maintained on an ongoing basis. 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