In this two part post we’ll look at implementing an address search using the Ordnance Survey Open Names dataset. We’ll use the power of Postgres with the PostGIS extension leveraging it’s built in Full Text Search, and use Python and the SQLAlchemy ORM to create a simple CLI.
Part 1 – Data Load and DB Config
The UK is very badly served for free address data. The best we have is the Ordnance Survey OpenNames dataset. It will work as a Postcode lookup or a street finder (at a push), but the dataset would require a lot of additional processing to be a useful address search. OS really want you to purchase AddressBase
That said, OpenNames will suffice for this example and it should be easy to extend the example to a fuller dataset if you’re lucky enough to have one.
Loading Data to PostGIS
You can download OpenNames as either CSV, or GML. I’d recommend GML as it’s simpler to load it into PostGIS using OGR2OGR.
Once you unzip the archive you’ll see that the files are referenced according to the British National Grid, so you can load as much or as little as you want.
We’ll load NS68 which contains addresses in my home town of Stirling, as follows (swap out the values for your db):
ogr2ogr -f PostgreSQL PG:"host=localhost dbname=Real-World port=5432 user=iain password=password" NS68.gml -progress -nln open_names --config PG_USE_COPY YES
You should now have a new table called open_names containing the addressing info.
Note if you want to load more gml files just use the -append flag:
ogr2ogr -f PostgreSQL PG:"host=localhost dbname=Real-World port=5432 user=iain password=password" NS88.gml -append -progress -nln open_names --config PG_USE_COPY YES
Setting up Full Text Search
We now have our open_names table, but no text search column. So we can add a textsearchable column which must be of type TSVECTOR as follows:
ALTER TABLE open_names ADD COLUMN textsearchable TSVECTOR;
We can populate the column by using the built in function TO_TSVECTOR, this tokenises the words based on the supplied config, in our case english. However, multiple configs are supported.
UPDATE open_names SET textsearchable = TO_TSVECTOR('english', text || ' ' || localid);
If you look at the data in your new column you’ll see that it now contains text tokens representing the address data.
Increase accuracy by concatenating multiple columns
Note that we’re concatenating 2 columns together in this update statement – text and localid. In our case the reason for doing this is that the postcode in the localid column is stored without a space, meaning our search will return a result if the user enters a postcode without a space.
However, it should be clear if we had better address data, we could concat multiple columns. Meaning if a user searched for “1 Main St, Stirling, FK3 4GG” we would be able to return an accurate match.
Add an Index for faster searching
Now that we have data set up we can add an index to our new column which will ensure searches are fast:
CREATE INDEX textsearch_idx ON open_names USING GIN (textsearchable);
Let’s do some searches
Now lets query our new column to see if we can find some matches using the TO_TSQUERY function
SELECT COUNT(1) FROM open_names WHERE textsearchable @@ TO_TSQUERY('english', 'avenue')
Here we find we have 41 streets in Stirling area containing the word avenue. You’ll note that I don’t need to worry about lowercase, uppercase or where the word might appear in the string. Full text search takes care of that for me 🙂
The @@ operator basically means that the query matches the tsvector column.
Using AND and OR for better matches
A very powerful feature of Postgres’ Full Text Search is the ability to find matches contain all or some of the words in the query using the AND & operator or the OR | operator, as these examples show:
select * from open_names where textsearchable @@ to_tsquery('english', 'forth & view');
Here we only return one result Forth View which contains both Forth and View, if we change this to an OR search:
select * from open_names where textsearchable @@ to_tsquery('english', 'forth | view')
We get 7 results including Forth View, Bruce View, Forth Place.
Again it should be easy to see how powerful text searches could be built for complex text documents.
A final note on Triggers
While our address data is fairly static, if you had a table where users were regularly editing address data, or any other columns you wanted to run a full text search on, you should consider adding a trigger to keep the TSVECTOR column up to date, as outlined here.
So for our example the trigger would look like:
CREATE TRIGGER tsvectorupdate BEFORE INSERT OR UPDATE ON open_names FOR EACH ROW EXECUTE PROCEDURE tsvector_update_trigger(textsearchable, 'pg_catalog.english', localid, text);
Hopefully Part 1 has demonstrated how it is very easy to set up powerful text searching in Postgres. In Part 2 we’ll look at how we can use Python and SQLAlchemy to allow you to integrate this functionality into your apps and APIs.