---
title: Quickstart
description: Get started with ParadeDB in five minutes
canonical: https://docs.paradedb.com/documentation/getting-started/quickstart
---
This guide will walk you through a few queries to give you a feel for ParadeDB.
## Create Example Table
ParadeDB comes with a helpful procedure that creates a table populated with mock data to help
you get started. Once connected with `psql`, run the following commands to create and inspect
this table.
```sql
CALL paradedb.create_bm25_test_table(
schema_name => 'public',
table_name => 'mock_items'
);
SELECT description, rating, category
FROM mock_items
LIMIT 3;
```
```ini Expected Response
description | rating | category
--------------------------+--------+-------------
Ergonomic metal keyboard | 4 | Electronics
Plastic Keyboard | 4 | Electronics
Sleek running shoes | 5 | Footwear
(3 rows)
```
Next, let's create a BM25 index called `search_idx` on this table. A BM25 index is a covering index, which means that multiple columns can be included in the same index.
```sql
CREATE INDEX search_idx ON mock_items
USING bm25 (id, description, category, rating, in_stock, created_at, metadata, weight_range)
WITH (key_field='id');
```
As a general rule of thumb, any columns that you want to filter, `GROUP BY`,
`ORDER BY`, or aggregate as part of a full text query should be added to the
index for faster performance.
Note the mandatory `key_field` option. See [choosing a key
field](/documentation/indexing/create-index#choosing-a-key-field) for more details.
## Match Query
We're now ready to execute a basic text search query. We'll look for matches where `description` matches `running shoes` where `rating` is greater than `2`.
```sql
SELECT description, rating, category
FROM mock_items
WHERE description ||| 'running shoes' AND rating > 2
ORDER BY rating
LIMIT 5;
```
```ini Expected Response
description | rating | category
---------------------+--------+----------
White jogging shoes | 3 | Footwear
Generic shoes | 4 | Footwear
Sleek running shoes | 5 | Footwear
(3 rows)
```
`|||` is ParadeDB's custom [match disjunction](/documentation/full-text/match#disjunction) operator, which means "find me all documents containing
`running OR shoes`.
If we want all documents containing `running AND shoes`, we can use ParadeDB's `&&&` [match conjunction](/documentation/full-text/match#conjunction) operator.
```sql
SELECT description, rating, category
FROM mock_items
WHERE description &&& 'running shoes' AND rating > 2
ORDER BY rating
LIMIT 5;
```
```ini Expected Response
description | rating | category
---------------------+--------+----------
Sleek running shoes | 5 | Footwear
(1 row)
```
## BM25 Scoring
Next, let's add [BM25 scoring](/documentation/sorting/score) to the results, which sorts matches by relevance. To do this, we'll use `pdb.score`.
```sql
SELECT description, pdb.score(id)
FROM mock_items
WHERE description ||| 'running shoes' AND rating > 2
ORDER BY score DESC
LIMIT 5;
```
```ini Expected Response
description | score
---------------------+-----------
Sleek running shoes | 6.817111
Generic shoes | 3.8772602
White jogging shoes | 3.4849067
(3 rows)
```
## Highlighting
Finally, let's also [highlight](/documentation/full-text/highlight) the relevant portions of the documents that were matched.
To do this, we'll use `pdb.snippet`.
```sql
SELECT description, pdb.snippet(description), pdb.score(id)
FROM mock_items
WHERE description ||| 'running shoes' AND rating > 2
ORDER BY score DESC
LIMIT 5;
```
```ini Expected Response
description | snippet | score
---------------------+-----------------------------------+-----------
Sleek running shoes | Sleek running shoes | 6.817111
Generic shoes | Generic shoes | 3.8772602
White jogging shoes | White jogging shoes | 3.4849067
(3 rows)
```
## Top N
ParadeDB is highly optimized for quickly returning the [Top N](/documentation/sorting/topn) results out of the index. In SQL, this means queries that contain an `ORDER BY...LIMIT`:
```sql
SELECT description, rating, category
FROM mock_items
WHERE description ||| 'running shoes'
ORDER BY rating
LIMIT 5;
```
```ini Expected Response
description | rating | category
---------------------+--------+----------
White jogging shoes | 3 | Footwear
Generic shoes | 4 | Footwear
Sleek running shoes | 5 | Footwear
(3 rows)
```
## Facets
[Faceted queries](/documentation/aggregates/facets) allow a single query to return both the Top N results and an aggregate value,
which is more CPU-efficient than issuing two separate queries.
For example, the following query returns the top 3 results as well as the total number of results matched.
```sql
SELECT
description, rating, category,
pdb.agg('{"value_count": {"field": "id"}}') OVER ()
FROM mock_items
WHERE description ||| 'running shoes'
ORDER BY rating
LIMIT 5;
```
```ini Expected Response
description | rating | category | agg
---------------------+--------+----------+----------------
White jogging shoes | 3 | Footwear | {"value": 3.0}
Generic shoes | 4 | Footwear | {"value": 3.0}
Sleek running shoes | 5 | Footwear | {"value": 3.0}
(3 rows)
```
That's it! Next, let's [load your data](/documentation/getting-started/load) to start running real queries.