Creating a GIS Application using Flask, Stadia Maps, and MongoDB

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Geographic Information system (GIS) based applications require a beautiful mapping experience for users. Stadia Maps provides digital mapping that you can easily and affordably integrate into your web or mobile applications. They offer hosted map tiles, offline map tiles, static maps, and a few other core products. If you would like to test their services, you can use a local development environment along with their free tier plan. For more details on pricing and service limits, see their pricing plans.

In this Guide

This guide will use Stadia Maps free tier plan and hosted vector map tiles to create a GIS web app using Flask. Your Flask application will use a MongoDB database to store GeoJSON data to display as markers on your Stadia Map powered map. GeoJson is a format for encoding a variety of geographic data structures based on JavaScript Object Notation (JSON).

The GeoJSON data that you will use is a subset of Philadelphia’s Street Tree Inventory dataset. Since the entire dataset is very large, a subset was used to keep this example simple and to reduce MongoDB storage requirements. When you are finished with this guide, you will have a Stadia Maps powered map with markers displaying the location of the trees that surround Linode’s headquarters in Philadelphia, USA.

While the example in this guide is simple, its components can be adopted to build a GIS app that maps any data you would like to display to your users.

The sections in this guide will cover the following topics:

  • Setting up your development environment

  • Starting a local MongoDB instance and importing a data set to your database

  • Creating a Flask app that uses Stadia Maps to display your GeoJSON data as markers on your map.

    Note
    This guide assumes a basic familiarity with programming concepts, Python, HTML, CSS, and JavaScript.

Before you Begin

Note
This guide was written using Python version 3.7.
  1. You can optionally create an account with Stadia maps. When developing locally, you are not required to create an account with Stadia Maps. Once you are ready to deploy your app, you will be required to sign up and select an appropriate service plan.

  2. Install MongoDB following the link’s instructions. This installation will also give you access to the mongoimport command line tool.

  3. We recommend Installing Conda, an open source package and environment management system. Conda lets you easily switch between development environments that have different Python versions and packages installed. While this isn’t a strict requirement for setting up your GIS application, it is a great way to isolate your development environment and keep your system’s global Python version and packages untouched.

Setup Your Development Environment

In this section, you will prepare your development environment by creating your project directories, activating your conda environment, installing the required Python packages, and importing your GeoJSON data to your MongoDB database.

  1. Create a project folder to store your Flask app files and move into that folder:

     mkdir ~/stadia-maps && cd ~/stadia-maps
    
  2. If you are using conda, create a new environment running Python 3.7:

     conda create --name py37 python=3.7
    
  3. Activate your new conda environment:

     conda activate py37
    
  4. Install pip if it is not already available with your Python installation. A Python 3 installation (>=3.4) should automatically include pip. Follow the instructions in pip’s official documentation to install pip, if needed.

  5. Install the required Python packages:

     pip install flask flask-session geojson pymongo Flask-PyMongo
    

Import your GeoJSON File to MongoDB

Before creating your Flask App, you will set up your MongoDB database to store the example data set. This data set was created from the Philadelphia Street Tree inventory GeoJSON data set.

  1. Run your local MongoDB instance. The instance will need to run so that your Flask app can connect to your project’s database. Follow the steps in MongoDB’s official documentation. These steps vary depending on your computer’s operating system.

  2. In your stadia-maps project directory, create a file named linodeStreetTrees.geojson to store your GeoJSON data. Using the text editor of your choice, copy and paste the data located in this linked file. Your file’s final locations should be ~/stadia-maps/linodeStreetTrees.geojson. You will use the data stored in your local file in the next step.

  3. Open a new terminal window and use the mongoimport command line tool to import your GeoJSON data to your database. The import will create a database and collection named linodeStreetTrees and will use the data stored in the linodeStreetTrees.geojson file to create your collection’s documents. In MongoDB, databases hold collections of documents. Collections are analogous to tables in relational databases. Documents store data records of field-value pairs in BSON format, a binary representation of JSON.

     mongoimport --db linodeStreetTrees --collection linodeStreetTrees --file ~/stadia-maps/linodeStreetTrees.geojson
    
  4. Connect to your MongoDB database to verify that all the data was imported as expected. By default, MongoDB will use port 27017 for database connections.

     mongo mongodb://localhost:27017/linodeStreetTrees
    

    From the MongoDB prompt, use the find() collection method to query your database.

     db.linodeStreetTrees.find()
    

    You should see all the data from your imported GeoJSON file returned.

    { "_id" : ObjectId("5e2a0c20b4d6fb3be09261c0"), "type" : "FeatureCollection", "features" : [ { "type" : "Feature", "properties" : { "OBJECTID" : 36391, "SPECIES" : null, "STATUS" : null, "DBH" : null }, "geometry" : { "type" : "Point", "coordinates" : [ -75.14457809997165, 39.95216128175947 ] } }, { "type" : "Feature", "properties" : { "OBJECTID" : 36392, "SPECIES" : null, "STATUS" : null, "DBH" : null }, "geometry" : { "type" : "Point", "coordinates" : [ -75.14446882894926, 39.95213340459382 ] } }, { "type" : "Feature", "properties" : { "OBJECTID" : 36388, "SPECIES" : null, "STATUS" : null, "DBH" : null }, "geometry" : { "type" : "Point", "coordinates" : [ -75.14436203227342, 39.95213350981046 ] } }, { "type" : "Feature", "properties" : { "OBJECTID" : 36387, "SPECIES" : null, "STATUS" : null, "DBH" : null }, "geometry" : { "type" : "Point", "coordinates" : [ -75.14391916318196, 39.95207850652248 ] } }, { "type" : "Feature", "properties" : { "OBJECTID" : 36385, "SPECIES" : null, "STATUS" : null, "DBH" : null }, "geometry" : { "type" : "Point", "coordinates" : [ -75.14371036845057, 39.95207848246513 ] } }, { "type" : "Feature", "properties" : { "OBJECTID" : 34552, "SPECIES" : null, "STATUS" : null, "DBH" : null }, "geometry" : { "type" : "Point", "coordinates" : [ -75.14525481375121, 39.952402827669786 ] } }, { "type" : "Feature", "properties" : { "OBJECTID" : 34553, "SPECIES" : null, "STATUS" : null, "DBH" : null }, "geometry" : { "type" : "Point", "coordinates" : [ -75.14522060144313, 39.95249257200717 ] } }, { "type" : "Feature", "properties" : { "OBJECTID" : 34554, "SPECIES" : null, "STATUS" : null, "DBH" : null }, "geometry" : { "type" : "Point", "coordinates" : [ -75.14521115802674, 39.95254397352744 ] } }, { "type" : "Feature", "properties" : { "OBJECTID" : 34556, "SPECIES" : null, "STATUS" : null, "DBH" : null }, "geometry" : { "type" : "Point", "coordinates" : [ -75.14507538603768, 39.952630343085694 ] } } ] }
            

    Now that your MongoDB database is set up, you can move on to creating your Flask app.

Create your Flask App

Now that your development environment is set up and your MongoDB data is stored in a database collection, you will create a simple GIS Flask application that will include a single Python file, app.py, a template file base.html, and some css styling stored in a map.css file. At the end of this section, you will be able to render a running Stadia Maps powered map in a browser window.

Create your Project Layout

  1. Ensure you are in your stadia-maps project directory:

     cd ~/stadia-maps
    
  2. Create your Flask App’s project layout. The styles directory will store your app’s stylesheets, while the templates directory will store any Flask templates.

     mkdir -p static/styles && mkdir templates
    

Create your app.py File

In this section, you will write the code for your Flask application. Since this is a simple Flask app example, all your app code will be located in a file named app.py. If you are interested in viewing a more in-depth example of a Flask project layout, you can refer to Flask’s project layout documentation.

  1. In the root of your stadia-maps directory create a file named app.py and add the following import statements. This will ensure that your app has access to all the necessary Python packages and their methods.

    File: ~/stadia-maps/app.py
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    from flask import Flask, request, render_template
    from flask_session import Session
    from geojson import Point
    from flask_pymongo import PyMongo
    from bson.json_util import dumps
    import json
        
  2. Below your import statements, add the Python code to set up the Flask app and connect to your MongoDB database. The code creates an instance of the Flask class, connects to your MongoDB server and linodeStreetTrees database running on port 27017. Finally, an instance of the PyMongo class is created, which manages connections from MongoDB to your Flask app.

    File: ~/stadia-maps/app.py
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    from flask import Flask, request, render_template
    from flask_session import Session
    from geojson import Point
    from flask_pymongo import PyMongo
    from bson.json_util import dumps
    import json
    
    app=Flask(__name__)
    app.config["MONGO_URI"] = "mongodb://localhost:27017/linodeStreetTrees"
    mongo = PyMongo(app)
        
  3. Register your view function for your app’s index page by adding the example’s remaining lines to your app.py file. The route() decorator signals to Flask which URL should trigger the defined function def index(). When a user visits your app’s index (i.e. http://127.0.0.1:5000/), the code defined in the index() function will execute. This code retrieves all the data in your MongoDB linodeStreetTress collection and makes the data available to the base.html template in the street_trees_points template variable. The base.html template will be created in the next section.

    The final block of code provides a way for Python to handle both script execution and importing. Finally, if the conditional evaluates to true, it will execute Flask’s run() method to run your app.

    File: ~/stadia-maps/app.py
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    from flask import Flask, request, render_template
    from flask_session import Session
    from geojson import Point
    from flask_pymongo import PyMongo
    from bson.json_util import dumps
    import json
    
    app=Flask(__name__)
    app.config["MONGO_URI"] = "mongodb://localhost:27017/linodeStreetTrees"
    mongo = PyMongo(app)
    
    @app.route('/')
    def index():
        street_trees_points_query = dumps(mongo.db.linodeStreetTrees.find({}, {'_id': False}))
        street_trees_points = json.loads(street_trees_points_query)
        return render_template('base.html', street_trees_points=street_trees_points)
    
    if __name__ == '__main__':
        app.debug=True
        app.run()
    
        

Create your Template File

In this section you will create your Flask app’s template. Flask templates are used to render the front end portion of your app. You can make use of the Jinja templating language for Python to add additional functionality to your templates.

In this example, the base.html template connects to Stadia Maps to retrieve their vector map tiles and renders them on your site’s index page. Stadia Map’s implementation relies on the Mapbox GL JavaScript library. The template accesses your database’s data and uses it to render marker’s on your map with the help of Mapbox GL and Stadia Maps. This example utilizes Stadia Map’s boiler plate vector maps example as a foundation. The example file is heavily commented, which you can use to better understand each section of the file.

  1. Create a file named base.html in your root project’s templates directory with the example file content.

    File: ~/stadia-maps/templates/base.html
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    <html>
    <head>
        <title>Stadia Maps + Flask + MongoDB Demo</title>
        <meta charset="utf-8">
        <meta name="viewport" content="initial-scale=1,maximum-scale=1,user-scalable=no" />
        <script src="//cdnjs.cloudflare.com/ajax/libs/mapbox-gl/0.52.0/mapbox-gl.js"></script>
        <link href="//cdnjs.cloudflare.com/ajax/libs/mapbox-gl/0.52.0/mapbox-gl.css" rel="stylesheet" />
        <link rel="stylesheet" type="text/css" href="{{ url_for('static', filename='../static/styles/map.css') }}" />
        <script type="text/javascript" src="//cdnjs.cloudflare.com/ajax/libs/jquery/3.2.1/jquery.min.js"></script>
    </head>
    <body>
        <h1>
            Stadia Maps + Flask + MongoDB Demo
        </h1>
        <div id="map"></div>
        <script>
         var map = new mapboxgl.Map({
           container: 'map',
           style: 'https://tiles.stadiamaps.com/styles/alidade_smooth.json',  // Theme URL; see our themes documentation for more options
           center: [-75.144867, 39.952278],  // Initial focus coordinate
           zoom: 16
         });
    
         mapboxgl.setRTLTextPlugin('https://api.mapbox.com/mapbox-gl-js/plugins/mapbox-gl-rtl-text/v0.2.1/mapbox-gl-rtl-text.js');
    
         // Add zoom and rotation controls to the map.
         map.addControl(new mapboxgl.NavigationControl());
    
         var mongoData = JSON.parse('{{ street_trees_points| tojson | safe }}');
         var markerCollection = mongoData[0];
    
            // Next, we can add markers to the map
            markerCollection.features.forEach(function(point) {
                var elem = document.createElement('div');
                elem.className = 'marker';
    
                // Now, we construct a marker and set it's coordinates from the GeoJSON. Note the coordinate order.
                var marker = new mapboxgl.Marker(elem);
                marker.setLngLat(point.geometry.coordinates);
    
                // Finally, we add the marker to the map.
                marker.addTo(map);
            });
        </script>
    </body>
    </html>
          

    Key portions of the file that you should take note of are the following:

    • The <head> element contains a call to the Mapbox GL JavaScript file that the rest of the template makes use of. Other needed external scripts and files, like jQuery, are called in this section.
    • The call to the app’s stylesheet contains an href attribute (line 8) whose value makes use of the Jinja templating language. The code "{{ url_for('static', filename='../static/styles/map.css') }" allows Flask to generate URLs for any static files.
    • Line 15 (<div id="map"></div>) creates the div element that will contain the rendered map.
    • The script beginning on line 16 creates a new mapboxgl instance whose methods will be used throughout the script to construct your map. Notice that upon instantiation, Stadia Map’s theme URL is called to retrieve their Alidade Smooth theme. For details on all the MapBox GL methods that are used throughout the template, see the MapBox GL reference.
    • Line 29 is responsible for grabbing your databases data, using Jinja, from the street_trees_points variable that was exposed in the app.py file. The data is serialized and passed to the markerCollection variable. The forEach() method is then used to create markers for each collection document (from your database’s serialized data) and render them on your map.

Create your App’s Styling

In the previous section, the base.html template file calls your app’s style sheet. You are now ready to create the stylesheet.

  1. Create a file named map.css in your project’s ~/stadia-maps/static/styles directory and add the example file’s content. The marker that will be rendered on your map is provided by Stadia Map.

    File: ~/stadia-maps/static/styles/map.css
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    body {
      margin: 0;
      padding: 0;
    }
    
    #map {
      position: absolute;
      top: 0;
      bottom: 0;
      width: 100%;
    }
    
    /* We recommend using an icon that is 2x the intended display size, so that it renders nicely on retina displays.
    * The icon used in the background-image property is owned by Stadia Maps. While you maintain an account with us, we grant you royalty-free use of
    * this image when displayed on our maps.
    */
    .marker {
    background-image: url('data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAAADQAAABUCAYAAADNjBSxAAAACXBIWXMAAAsTAAALEwEAmpwYAAAAGXRFWHRTb2Z0d2FyZQBBZG9iZSBJbWFnZVJlYWR5ccllPAAACE1JREFUeNrUW0tsFEcQHQ/2wbZsIyUHJD62OAQJB+IzH2HlFD5KfMSAFKRE4nfxDeGTufA5ZS98DpFiJMN5EZ+zDZxyssG+Ii9WJA5B8lqyI4hgUm/Utaqp7Zmdnpn9pKSWd2G2p1+9rlfV3TNdQRB4Rdjg4OAI/Rk3DZ+PJVxeobZKbR5tY2Nj3ivIuvIAIhDb6c95077LMY4qtTK12bzgMgEyQErUJqgNecXaEvomYLMtAURgZujPVByQPXv2eAcPHvQOHDjgDQ8Ph9+lvXz50qtWq96bN2/Czwm2gPsQsMWmACIgY5gStqkFAGfPnvVOnTrl7d6928lBz549854+fRo2ALXYdQI1UyggAnPeTLEIK0ePHvWuXbvmHTlyJPa3kgUbY2w0aO/OnTve3bt3bcAwDcfpmvWGgwWgpDYwMDBDLZBtdHQ0oIEG2paWloIbN24Ex48fD/RvZDt06FBw4cKFYG5uLlhfX4/0QWCCq1ev2n63Sm2s0XgbgZnVHV+8eDG8KRsGRJ4N9u/fnwgiqQHcixcvIsBev34dOk5du94IVBKYKX3jhw8fRm4KD+/cuTMzEN1Onz4dVCqVCFsnTpywgRpxAkQ/mJCd7Nq1K6CgjbDSaFplbXAQHCUNs0Jdt0htu23sdaJgMv6iFID79+97Z86cCT/TVPDIa2EQN9NwP9xXfocSCntAYzivf+db+pqVYG7fvt1yMLBHjx55xIwnnYr0IOxncv5Eomwbef6DvyOvoONWg4ljam1tzSOFlLKOmnBMyrlvKWdCGxoaqnWEDtoBhpm6efNm+BlJe3p6Wv73sKla6hkiQPiP32xxMzk5GWZ0V8MUOXnyZJiA3717F7JMShlXETSsKNAPDIkcfYnCdqTGklC2VZk42Z48eeKsVFoVdeIkBzn3iWTMhqSu/n8qIttapmW+yZIw48BIs+SXhk3K+eHDhyNVBAPiGJqQscNTDdMDgehiKFIxzRqZlOS0RmVV7fPly5cjsWSK53pAUDY2AHI1+fskQ4BzTKQ1OJdzkeU+IQbfIBvSA0IQv3r1yhkQGE5rWDO5GgOicWtQ48zQuF4S6LK/WZZF7WS1oBxyjAGNSZkF8jyAXAaJVaurIRdi9kjny7LNNzs0ddOFf+RqWKCljQeRS5yMf4cFo7IRP25OZ70ZmOVyKcmQrLMaM2tZ7oeAjtkYylPmoKi8d+9eLDOQ9awOa2Aj3c0KeFpGh3sEUCJ2FKZxllTgYt3N7BwA0sZUUeab/S/bTo/3P7TViCjIRKoWUx1lLF6WOA8BrdpySNz+WScYj80iLOsRQPIC1zqrVYZQ4Nmjkz+2jX1zpBFZSHUyIFm/qUoj1AJfH18watCapXhsFSDEj9oFmpfLh8e24k+tOdpuqAwYkAIDK0tAZZk7eNphseZ6mtBMO3fuXFzNWOFjF9/QN2s2G+oulp20Wwx4xiC9KIUr2TYaSzKOOCehk05IsleuXKmVUKp8qprNUSugGku8F4ZO1F5YW9lBcasAlawbjeYfY1lqZyxJduRGibFZ60aj2D1d5T0G5CIWCKgK7wa1WtlWVlZqsYMdXGF1G/a+yrR1LDEgyGXS0WOzTG53cRiI2JnR19uOUyIsIcEuLy/XSqNWgsK9nj9/HseO9TDZt2xCrEvkyEu8pEYNdenSpbawI49WDDuluPWQbWcFF1fk6pNLdSheK2Qcp+tcVWM5rzZtSnEn4n5Cn1NyWYHlNMs4DsGaLQQs03CkUrZK0nMLfsL+V1muZhGQvM+NkqiZsQSHSZlWe31TjZbgSRbxhPTUrVu3miYEXIDCgapmWzCOzgbILC0e8HdkaE62zRIIKQSI3SQHZ2GorhOZC4oWCCkEcJzl1Hs+NyDqBDnpuq0kwjxHWVJ0vWZJoqnYSctQXeEqcwK8WkSdB7ZZCOAwtV9w3Ti2GEC6JJLJlgdTlEy7JNE8DDFLFZvi5V3ZSofAUWmTaC5ASSVRHpbgCDjE5ihXdlwZ4qV6oSwVyY4zIK02eVnS7FiW1iXXwWUBVJaKJweBwbnkJbkBY1E2Z3YyAUpaqvNyOa1JZVMlTiZ2sjJUl5c0S2kMy3nOO/L5A54FWdjJDMjcrCwBcSWO0iXNkySSHV6auFYFRTJUd9O5ubnULEEM5PmTEoOFtFVBoYDMTRdsg0L5nyQOMs6gkmq9U8rh5FwMRfbE9KM0SSzJIxEVO5VG651mAyq7igOOaHiJYDkSKeccTz5AWhzk4BAjtsohIZFGGG8XQxGvIhbko5y2R80SHl9bcn0TpSmAzJyv2ljSx5pyulme9ZktwLmFMOTFTTutdpIdy9Ne5Y4EhGkn1U6yJBOuEoOlPLmncEBaam3TTh7HWwDNF+TYwhiCPZaVs9xn00xZHv0sdyKgmpcR7Fzb8VOSEpBip1rka59FAop4WQY9wMhnHhRD8wWOoThAJqgrNkBQN8mQkuvOBKQHJx9bkdWBJX46GtCiZMH2mKfKP9UiqoOWMGQJ/tDUWy6LXtHW6DXKxDcSKb1Q+8q0vdT2DQwM/CXfUuHXQ22vc/b392MfbB+1HaKfnjxjSvVibldXFwb+tQHQZ/722K7t7e39sbu7+9cUvtza3Nz85cuXL5txOkPtX2ofTK24QWPdajjWOEAEAgP/xnivx4V18vyU7/vfJ4H5+PHj9KdPn966iim1tzTmtSyAfnAFIq2vr29y27ZtPxlG5RRfJiC/ZwAjbYX6eesKaNTERXbF8f3+np6evQTsW7rP5ufPn5dzAoH9Q+1P6m/DCZCYdjtMG8zDWAEg/qb2nsb7PlMMJQDsNQLhKZBf5RwwB/yW+L5F4/vg0tF/AgwACuIdiHmTJCAAAAAASUVORK5CYII=');
    background-size: cover;
    width: 27px;
    height: 42px;
    cursor: pointer;
    }
        

Run your Flask App

You are now ready to run your Flask app locally to view your rendered Stadia Map.

  1. Open a new terminal window and navigate to your stadia-maps root directory.

     cd ~/stadia-maps
    
  2. Run your Flask application with the following command:

     python3 app.py
    

    You will see that your Flask server runs with the following output:

    * Serving Flask app "app" (lazy loading)
    * Environment: production
      WARNING: This is a development server. Do not use it in a production deployment.
      Use a production WSGI server instead.
    * Debug mode: on
    * Running on http://127.0.0.1:5000/ (Press CTRL+C to quit)
    * Restarting with stat
    * Debugger is active!
    * Debugger PIN: 140-560-688
        
  3. Open a browser and navigate to the local URL. In our example, this is: http://127.0.0.1:5000/. You should see a Stadia Map render that displays the location of Linode’s headquarters and the location of some of the neighborhood’s surrounding trees.

Next Steps

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