django/docs/ref/contrib/postgres/search.txt

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================
Full text search
================
The database functions in the ``django.contrib.postgres.search`` module ease
the use of PostgreSQL's `full text search engine
<https://www.postgresql.org/docs/current/textsearch.html>`_.
For the examples in this document, we'll use the models defined in
:doc:`/topics/db/queries`.
.. seealso::
For a high-level overview of searching, see the :doc:`topic documentation
</topics/db/search>`.
.. currentmodule:: django.contrib.postgres.search
The ``search`` lookup
=====================
.. fieldlookup:: search
A common way to use full text search is to search a single term against a
single column in the database. For example::
>>> Entry.objects.filter(body_text__search='Cheese')
[<Entry: Cheese on Toast recipes>, <Entry: Pizza Recipes>]
This creates a ``to_tsvector`` in the database from the ``body_text`` field
and a ``plainto_tsquery`` from the search term ``'Cheese'``, both using the
default database search configuration. The results are obtained by matching the
query and the vector.
To use the ``search`` lookup, ``'django.contrib.postgres'`` must be in your
:setting:`INSTALLED_APPS`.
``SearchVector``
================
.. class:: SearchVector(*expressions, config=None, weight=None)
Searching against a single field is great but rather limiting. The ``Entry``
instances we're searching belong to a ``Blog``, which has a ``tagline`` field.
To query against both fields, use a ``SearchVector``::
>>> from django.contrib.postgres.search import SearchVector
>>> Entry.objects.annotate(
... search=SearchVector('body_text', 'blog__tagline'),
... ).filter(search='Cheese')
[<Entry: Cheese on Toast recipes>, <Entry: Pizza Recipes>]
The arguments to ``SearchVector`` can be any
:class:`~django.db.models.Expression` or the name of a field. Multiple
arguments will be concatenated together using a space so that the search
document includes them all.
``SearchVector`` objects can be combined together, allowing you to reuse them.
For example::
>>> Entry.objects.annotate(
... search=SearchVector('body_text') + SearchVector('blog__tagline'),
... ).filter(search='Cheese')
[<Entry: Cheese on Toast recipes>, <Entry: Pizza Recipes>]
See :ref:`postgresql-fts-search-configuration` and
:ref:`postgresql-fts-weighting-queries` for an explanation of the ``config``
and ``weight`` parameters.
``SearchQuery``
===============
.. class:: SearchQuery(value, config=None, search_type='plain')
``SearchQuery`` translates the terms the user provides into a search query
object that the database compares to a search vector. By default, all the words
the user provides are passed through the stemming algorithms, and then it
looks for matches for all of the resulting terms.
If ``search_type`` is ``'plain'``, which is the default, the terms are treated
as separate keywords. If ``search_type`` is ``'phrase'``, the terms are treated
as a single phrase. If ``search_type`` is ``'raw'``, then you can provide a
formatted search query with terms and operators. Read PostgreSQL's `Full Text
Search docs`_ to learn about differences and syntax. Examples:
.. _Full Text Search docs: https://www.postgresql.org/docs/current/textsearch-controls.html#TEXTSEARCH-PARSING-QUERIES
>>> from django.contrib.postgres.search import SearchQuery
>>> SearchQuery('red tomato') # two keywords
>>> SearchQuery('tomato red') # same results as above
>>> SearchQuery('red tomato', search_type='phrase') # a phrase
>>> SearchQuery('tomato red', search_type='phrase') # a different phrase
>>> SearchQuery("'tomato' & ('red' | 'green')", search_type='raw') # boolean operators
``SearchQuery`` terms can be combined logically to provide more flexibility::
>>> from django.contrib.postgres.search import SearchQuery
>>> SearchQuery('meat') & SearchQuery('cheese') # AND
>>> SearchQuery('meat') | SearchQuery('cheese') # OR
>>> ~SearchQuery('meat') # NOT
See :ref:`postgresql-fts-search-configuration` for an explanation of the
``config`` parameter.
``SearchRank``
==============
.. class:: SearchRank(vector, query, weights=None)
So far, we've returned the results for which any match between the vector and
the query are possible. It's likely you may wish to order the results by some
sort of relevancy. PostgreSQL provides a ranking function which takes into
account how often the query terms appear in the document, how close together
the terms are in the document, and how important the part of the document is
where they occur. The better the match, the higher the value of the rank. To
order by relevancy::
>>> from django.contrib.postgres.search import SearchQuery, SearchRank, SearchVector
>>> vector = SearchVector('body_text')
>>> query = SearchQuery('cheese')
>>> Entry.objects.annotate(rank=SearchRank(vector, query)).order_by('-rank')
[<Entry: Cheese on Toast recipes>, <Entry: Pizza recipes>]
See :ref:`postgresql-fts-weighting-queries` for an explanation of the
``weights`` parameter.
.. _postgresql-fts-search-configuration:
Changing the search configuration
=================================
You can specify the ``config`` attribute to a :class:`SearchVector` and
:class:`SearchQuery` to use a different search configuration. This allows using
different language parsers and dictionaries as defined by the database::
>>> from django.contrib.postgres.search import SearchQuery, SearchVector
>>> Entry.objects.annotate(
... search=SearchVector('body_text', config='french'),
... ).filter(search=SearchQuery('œuf', config='french'))
[<Entry: Pain perdu>]
The value of ``config`` could also be stored in another column::
>>> from django.db.models import F
>>> Entry.objects.annotate(
... search=SearchVector('body_text', config=F('blog__language')),
... ).filter(search=SearchQuery('œuf', config=F('blog__language')))
[<Entry: Pain perdu>]
.. _postgresql-fts-weighting-queries:
Weighting queries
=================
Every field may not have the same relevance in a query, so you can set weights
of various vectors before you combine them::
>>> from django.contrib.postgres.search import SearchQuery, SearchRank, SearchVector
>>> vector = SearchVector('body_text', weight='A') + SearchVector('blog__tagline', weight='B')
>>> query = SearchQuery('cheese')
>>> Entry.objects.annotate(rank=SearchRank(vector, query)).filter(rank__gte=0.3).order_by('rank')
The weight should be one of the following letters: D, C, B, A. By default,
these weights refer to the numbers ``0.1``, ``0.2``, ``0.4``, and ``1.0``,
respectively. If you wish to weight them differently, pass a list of four
floats to :class:`SearchRank` as ``weights`` in the same order above::
>>> rank = SearchRank(vector, query, weights=[0.2, 0.4, 0.6, 0.8])
>>> Entry.objects.annotate(rank=rank).filter(rank__gte=0.3).order_by('-rank')
Performance
===========
Special database configuration isn't necessary to use any of these functions,
however, if you're searching more than a few hundred records, you're likely to
run into performance problems. Full text search is a more intensive process
than comparing the size of an integer, for example.
In the event that all the fields you're querying on are contained within one
particular model, you can create a functional index which matches the search
vector you wish to use. The PostgreSQL documentation has details on
`creating indexes for full text search
<https://www.postgresql.org/docs/current/textsearch-tables.html#TEXTSEARCH-TABLES-INDEX>`_.
``SearchVectorField``
---------------------
.. class:: SearchVectorField
If this approach becomes too slow, you can add a ``SearchVectorField`` to your
model. You'll need to keep it populated with triggers, for example, as
described in the `PostgreSQL documentation`_. You can then query the field as
if it were an annotated ``SearchVector``::
>>> Entry.objects.update(search_vector=SearchVector('body_text'))
>>> Entry.objects.filter(search_vector='cheese')
[<Entry: Cheese on Toast recipes>, <Entry: Pizza recipes>]
.. _PostgreSQL documentation: https://www.postgresql.org/docs/current/textsearch-features.html#TEXTSEARCH-UPDATE-TRIGGERS
Trigram similarity
==================
Another approach to searching is trigram similarity. A trigram is a group of
three consecutive characters. In addition to the :lookup:`trigram_similar`
lookup, you can use a couple of other expressions.
To use them, you need to activate the `pg_trgm extension
<https://www.postgresql.org/docs/current/pgtrgm.html>`_ on PostgreSQL. You can
install it using the
:class:`~django.contrib.postgres.operations.TrigramExtension` migration
operation.
``TrigramSimilarity``
---------------------
.. class:: TrigramSimilarity(expression, string, **extra)
Accepts a field name or expression, and a string or expression. Returns the
trigram similarity between the two arguments.
Usage example::
>>> from django.contrib.postgres.search import TrigramSimilarity
>>> Author.objects.create(name='Katy Stevens')
>>> Author.objects.create(name='Stephen Keats')
>>> test = 'Katie Stephens'
>>> Author.objects.annotate(
... similarity=TrigramSimilarity('name', test),
... ).filter(similarity__gt=0.3).order_by('-similarity')
[<Author: Katy Stevens>, <Author: Stephen Keats>]
``TrigramDistance``
-------------------
.. class:: TrigramDistance(expression, string, **extra)
Accepts a field name or expression, and a string or expression. Returns the
trigram distance between the two arguments.
Usage example::
>>> from django.contrib.postgres.search import TrigramDistance
>>> Author.objects.create(name='Katy Stevens')
>>> Author.objects.create(name='Stephen Keats')
>>> test = 'Katie Stephens'
>>> Author.objects.annotate(
... distance=TrigramDistance('name', test),
... ).filter(distance__lte=0.7).order_by('distance')
[<Author: Katy Stevens>, <Author: Stephen Keats>]