# Extract, transform and load The scripts in this directory are used to extract, transform and load (ETL) the core datasets for Colouring London. This README acts as a guide for setting up the Colouring London database with these datasets and updating it. # Contents - :arrow_down: [Downloading Ordnance Survey data](#arrow_down-downloading-ordnance-survey-data) - :penguin: [Making data available to Ubuntu](#penguin-making-data-available-to-ubuntu) - :new_moon: [Creating a Colouring London database from scratch](#new_moon-creating-a-colouring-london-database-from-scratch) - :full_moon: [Updating the Colouring London database with new OS data](#full_moon-updating-the-colouring-london-database-with-new-os-data) # :arrow_down: Downloading Ordnance Survey data The building geometries are sourced from Ordnance Survey (OS) MasterMap (Topography Layer). We also make use of OS Open TOID data which proves access to a generalised location for those geometries. ## Downloading MasterMap data 1. Sign up for the Ordnance Survey [Data Exploration License](https://www.ordnancesurvey.co.uk/business-government/licensing-agreements/data-exploration-sign-up). You should receive an e-mail with a link to log in to the platform (this could take up to a week). 2. Navigate to https://orders.ordnancesurvey.co.uk/orders and click the button for: ✏️ Order. From here you should be able to click another button to add a product. 3. Drop a rectangle or Polygon over London and make the following selections, clicking the "Add to basket" button for each: ![](screenshot/MasterMap.png)

4. You should be then able to check out your basket and download the files. Note: there may be multiple `.zip` files to download for MasterMap due to the size of the dataset. 6. Unzip the MasterMap `.zip` files and move all the `.gz` files from each to a single folder in a convenient location. We will use this folder in later steps. ## Downloading OS Open TOID data 1. Navigate to the download page at https://osdatahub.os.uk/downloads/open/OpenTOID 2. Select the area of the map you require location data for (e.g. the squares covering London) and download the data in CSV format: ![](screenshot/OpenTOID.png) 3. Unzip the `.zip` file(s) to get the CSV files and move them to a single folder in a convenient location. We will use this folder in later steps. # :penguin: Making data available to Ubuntu Before creating or updating a Colouring London database, you'll need to make sure the downloaded OS files are available to the Ubuntu machine where the database is hosted. If you are using Virtualbox, you could host share folder(s) containing the OS files with the VM (e.g. [see these instructions for Mac](https://medium.com/macoclock/share-folder-between-macos-and-ubuntu-4ce84fb5c1ad)). # :new_moon: Creating a Colouring London database from scratch ## Prerequisites You should already have set up PostgreSQL and created a database in an Ubuntu environment. Make sure to create environment variables to use `psql` if you haven't already: ```bash export PGPASSWORD= export PGUSER= export PGHOST=localhost export PGDATABASE= ``` Create the core database tables: ```bash cd ~/colouring-london psql < migrations/001.core.up.sql ``` There is some performance benefit to creating indexes after bulk loading data. Otherwise, it's fine to run all the migrations at this point and skip the index creation steps below. You should already have installed GNU parallel, which is used to speed up loading bulk data. ## Processing and loading Ordnance Survey data Move into the `etl` directory and set execute permission on all scripts. ```bash cd ~/colouring-london/etl chmod +x *.sh ``` Extract the MasterMap data (this step could take a while). ```bash sudo ./extract_mastermap.sh /path/to/mastermap_dir ``` Filter MasterMap 'building' polygons. ```bash sudo ./filter_transform_mastermap_for_loading.sh /path/to/mastermap_dir ``` Load all building outlines. Note: you should ensure that `mastermap_dir` has permissions that will allow the linux `find` command to work without using sudo. ```bash ./load_geometries.sh /path/to/mastermap_dir ``` Index geometries. ```bash psql < ../migrations/002.index-geometries.up.sql ``` Create a building record per outline. ```bash ./create_building_records.sh ``` Run the remaining migrations in `../migrations` to create the rest of the database structure. ```bash ls ~/colouring-london/migrations/*.up.sql 2>/dev/null | while read -r migration; do psql < $migration; done; ``` # :full_moon: Updating the Colouring London database with new OS data In the Ubuntu environment where the database exists, set up environment variable to make the following steps simpler. ```bash export PGPASSWORD= export PGUSER= export PGHOST=localhost export PGDATABASE= ``` Move into the `etl` directory and set execute permission on all scripts. ```bash cd ~/colouring-london/etl chmod +x *.sh ``` Extract the new MasterMap data (this step could take a while). ```bash sudo ./extract_mastermap.sh /path/to/mastermap_dir ``` Filter MasterMap 'building' polygons. ```bash sudo ./filter_transform_mastermap_for_loading.sh /path/to/mastermap_dir ``` Load all new building outlines. This step will only add geometries that are not already present (based on the `TOID`). Note: you should ensure that `mastermap_dir` has permissions that will allow the linux `find` command to work without using sudo. ```bash ./load_geometries.sh /path/to/mastermap_dir ``` Create a virtual environment for python in the `etl` folder of your repository. In the following example we have name the virtual environment *colouringlondon* but it can have any name. ```bash pyvenv colouringlondon ``` Activate the virtual environment so we can install python packages into it. ```bash source colouringlondon/bin/activate ``` Install python pip package manager and related tools. ```bash pip install --upgrade pip pip install --upgrade setuptools wheel ``` Install the required python packages. ```bash pip install -r requirements.txt ``` Converting the OS Open TOID data OSGB36 Eastings and Northings to WGS84 longitude and latitude coordinates.
WARNING EC note: When testing this in my developemt setup, due to memory constraints I actually ended up running this Python step on my Mac directly, rather than in my Ubuntu Virtualbox environment.

```bash python convert_opentoid_bng_latlon.py /path/to/opentoids_dir ``` Assign latitude and longitude to buildings with the converted OS Open TOID data. ```bash ./load_coordinates.sh /path/to/opentoids_dir ```