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473 lines
17 KiB
Plaintext
============================
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Database access optimization
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============================
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Django's database layer provides various ways to help developers get the most
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out of their databases. This document gathers together links to the relevant
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documentation, and adds various tips, organized under a number of headings that
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outline the steps to take when attempting to optimize your database usage.
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Profile first
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=============
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As general programming practice, this goes without saying. Find out :ref:`what
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queries you are doing and what they are costing you <faq-see-raw-sql-queries>`.
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Use :meth:`.QuerySet.explain` to understand how specific ``QuerySet``\s are
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executed by your database. You may also want to use an external project like
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django-debug-toolbar_, or a tool that monitors your database directly.
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Remember that you may be optimizing for speed or memory or both, depending on
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your requirements. Sometimes optimizing for one will be detrimental to the
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other, but sometimes they will help each other. Also, work that is done by the
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database process might not have the same cost (to you) as the same amount of
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work done in your Python process. It is up to you to decide what your
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priorities are, where the balance must lie, and profile all of these as required
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since this will depend on your application and server.
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With everything that follows, remember to profile after every change to ensure
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that the change is a benefit, and a big enough benefit given the decrease in
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readability of your code. **All** of the suggestions below come with the caveat
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that in your circumstances the general principle might not apply, or might even
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be reversed.
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.. _django-debug-toolbar: https://github.com/jazzband/django-debug-toolbar/
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Use standard DB optimization techniques
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=======================================
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...including:
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* Indexes_. This is a number one priority, *after* you have determined from
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profiling what indexes should be added. Use
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:attr:`Meta.indexes <django.db.models.Options.indexes>` or
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:attr:`Field.db_index <django.db.models.Field.db_index>` to add these from
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Django. Consider adding indexes to fields that you frequently query using
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:meth:`~django.db.models.query.QuerySet.filter()`,
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:meth:`~django.db.models.query.QuerySet.exclude()`,
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:meth:`~django.db.models.query.QuerySet.order_by()`, etc. as indexes may help
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to speed up lookups. Note that determining the best indexes is a complex
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database-dependent topic that will depend on your particular application.
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The overhead of maintaining an index may outweigh any gains in query speed.
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.. _Indexes: https://en.wikipedia.org/wiki/Database_index
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* Appropriate use of field types.
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We will assume you have done the things listed above. The rest of this document
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focuses on how to use Django in such a way that you are not doing unnecessary
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work. This document also does not address other optimization techniques that
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apply to all expensive operations, such as :doc:`general purpose caching
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</topics/cache>`.
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Understand ``QuerySet``\s
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=========================
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Understanding :doc:`QuerySets </ref/models/querysets>` is vital to getting good
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performance with simple code. In particular:
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Understand ``QuerySet`` evaluation
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----------------------------------
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To avoid performance problems, it is important to understand:
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* that :ref:`QuerySets are lazy <querysets-are-lazy>`.
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* when :ref:`they are evaluated <when-querysets-are-evaluated>`.
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* how :ref:`the data is held in memory <caching-and-querysets>`.
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Understand cached attributes
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----------------------------
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As well as caching of the whole ``QuerySet``, there is caching of the result of
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attributes on ORM objects. In general, attributes that are not callable will be
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cached. For example, assuming the :ref:`example blog models
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<queryset-model-example>`::
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>>> entry = Entry.objects.get(id=1)
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>>> entry.blog # Blog object is retrieved at this point
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>>> entry.blog # cached version, no DB access
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But in general, callable attributes cause DB lookups every time::
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>>> entry = Entry.objects.get(id=1)
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>>> entry.authors.all() # query performed
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>>> entry.authors.all() # query performed again
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Be careful when reading template code - the template system does not allow use
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of parentheses, but will call callables automatically, hiding the above
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distinction.
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Be careful with your own custom properties - it is up to you to implement
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caching when required, for example using the
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:class:`~django.utils.functional.cached_property` decorator.
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Use the ``with`` template tag
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-----------------------------
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To make use of the caching behavior of ``QuerySet``, you may need to use the
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:ttag:`with` template tag.
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Use ``iterator()``
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------------------
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When you have a lot of objects, the caching behavior of the ``QuerySet`` can
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cause a large amount of memory to be used. In this case,
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:meth:`~django.db.models.query.QuerySet.iterator()` may help.
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Use ``explain()``
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-----------------
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:meth:`.QuerySet.explain` gives you detailed information about how the database
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executes a query, including indexes and joins that are used. These details may
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help you find queries that could be rewritten more efficiently, or identify
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indexes that could be added to improve performance.
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Do database work in the database rather than in Python
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======================================================
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For instance:
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* At the most basic level, use :ref:`filter and exclude <queryset-api>` to do
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filtering in the database.
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* Use :class:`F expressions <django.db.models.F>` to filter
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based on other fields within the same model.
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* Use :doc:`annotate to do aggregation in the database
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</topics/db/aggregation>`.
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If these aren't enough to generate the SQL you need:
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Use ``RawSQL``
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--------------
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A less portable but more powerful method is the
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:class:`~django.db.models.expressions.RawSQL` expression, which allows some SQL
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to be explicitly added to the query. If that still isn't powerful enough:
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Use raw SQL
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-----------
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Write your own :doc:`custom SQL to retrieve data or populate models
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</topics/db/sql>`. Use ``django.db.connection.queries`` to find out what Django
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is writing for you and start from there.
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Retrieve individual objects using a unique, indexed column
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==========================================================
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There are two reasons to use a column with
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:attr:`~django.db.models.Field.unique` or
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:attr:`~django.db.models.Field.db_index` when using
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:meth:`~django.db.models.query.QuerySet.get` to retrieve individual objects.
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First, the query will be quicker because of the underlying database index.
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Also, the query could run much slower if multiple objects match the lookup;
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having a unique constraint on the column guarantees this will never happen.
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So using the :ref:`example blog models <queryset-model-example>`::
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>>> entry = Entry.objects.get(id=10)
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will be quicker than:
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>>> entry = Entry.objects.get(headline="News Item Title")
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because ``id`` is indexed by the database and is guaranteed to be unique.
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Doing the following is potentially quite slow:
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>>> entry = Entry.objects.get(headline__startswith="News")
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First of all, ``headline`` is not indexed, which will make the underlying
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database fetch slower.
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Second, the lookup doesn't guarantee that only one object will be returned.
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If the query matches more than one object, it will retrieve and transfer all of
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them from the database. This penalty could be substantial if hundreds or
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thousands of records are returned. The penalty will be compounded if the
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database lives on a separate server, where network overhead and latency also
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play a factor.
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Retrieve everything at once if you know you will need it
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========================================================
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Hitting the database multiple times for different parts of a single 'set' of
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data that you will need all parts of is, in general, less efficient than
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retrieving it all in one query. This is particularly important if you have a
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query that is executed in a loop, and could therefore end up doing many database
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queries, when only one was needed. So:
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Use ``QuerySet.select_related()`` and ``prefetch_related()``
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------------------------------------------------------------
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Understand :meth:`~django.db.models.query.QuerySet.select_related` and
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:meth:`~django.db.models.query.QuerySet.prefetch_related` thoroughly, and use
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them:
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* in :doc:`managers and default managers </topics/db/managers>` where
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appropriate. Be aware when your manager is and is not used; sometimes this is
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tricky so don't make assumptions.
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* in view code or other layers, possibly making use of
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:func:`~django.db.models.prefetch_related_objects` where needed.
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Don't retrieve things you don't need
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====================================
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Use ``QuerySet.values()`` and ``values_list()``
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-----------------------------------------------
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When you only want a ``dict`` or ``list`` of values, and don't need ORM model
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objects, make appropriate usage of
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:meth:`~django.db.models.query.QuerySet.values()`.
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These can be useful for replacing model objects in template code - as long as
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the dicts you supply have the same attributes as those used in the template,
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you are fine.
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Use ``QuerySet.defer()`` and ``only()``
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---------------------------------------
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Use :meth:`~django.db.models.query.QuerySet.defer()` and
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:meth:`~django.db.models.query.QuerySet.only()` if there are database columns
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you know that you won't need (or won't need in most cases) to avoid loading
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them. Note that if you *do* use them, the ORM will have to go and get them in
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a separate query, making this a pessimization if you use it inappropriately.
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Don't be too aggressive in deferring fields without profiling as the database
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has to read most of the non-text, non-VARCHAR data from the disk for a single
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row in the results, even if it ends up only using a few columns. The
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``defer()`` and ``only()`` methods are most useful when you can avoid loading a
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lot of text data or for fields that might take a lot of processing to convert
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back to Python. As always, profile first, then optimize.
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Use ``QuerySet.contains(obj)``
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------------------------------
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...if you only want to find out if ``obj`` is in the queryset, rather than
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``if obj in queryset``.
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Use ``QuerySet.count()``
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------------------------
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...if you only want the count, rather than doing ``len(queryset)``.
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Use ``QuerySet.exists()``
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-------------------------
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...if you only want to find out if at least one result exists, rather than ``if
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queryset``.
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But:
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.. _overuse_of_count_and_exists:
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Don't overuse ``count()`` and ``exists()``
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------------------------------------------
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If you are going to need other data from the QuerySet, evaluate it immediately.
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For example, assuming an Email model that has a ``subject`` attribute and a
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many-to-many relation to User, the following code is optimal::
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if display_emails:
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emails = user.emails.all()
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if emails:
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print('You have', len(emails), 'emails:')
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for email in emails:
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print(email.subject)
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else:
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print('You do not have any emails.')
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It is optimal because:
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#. Since QuerySets are lazy, this does no database queries if
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``display_emails`` is ``False``.
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#. Storing ``user.emails.all()`` in the ``emails`` variable allows its result
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cache to be re-used.
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#. The line ``if emails`` causes ``QuerySet.__bool__()`` to be called, which
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causes the ``user.emails.all()`` query to be run on the database. If there
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aren't any results, it will return ``False``, otherwise ``True``.
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#. The use of ``len(emails)`` calls ``QuerySet.__len__()``, reusing the result
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cache.
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#. The ``for`` loop iterates over the already filled cache.
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In total, this code does either one or zero database queries. The only
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deliberate optimization performed is using the ``emails`` variable. Using
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``QuerySet.exists()`` for the ``if`` or ``QuerySet.count()`` for the count
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would each cause additional queries.
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Use ``QuerySet.update()`` and ``delete()``
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------------------------------------------
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Rather than retrieve a load of objects, set some values, and save them
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individual, use a bulk SQL UPDATE statement, via :ref:`QuerySet.update()
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<topics-db-queries-update>`. Similarly, do :ref:`bulk deletes
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<topics-db-queries-delete>` where possible.
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Note, however, that these bulk update methods cannot call the ``save()`` or
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``delete()`` methods of individual instances, which means that any custom
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behavior you have added for these methods will not be executed, including
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anything driven from the normal database object :doc:`signals </ref/signals>`.
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Use foreign key values directly
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-------------------------------
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If you only need a foreign key value, use the foreign key value that is already on
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the object you've got, rather than getting the whole related object and taking
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its primary key. i.e. do::
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entry.blog_id
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instead of::
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entry.blog.id
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Don't order results if you don't care
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-------------------------------------
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Ordering is not free; each field to order by is an operation the database must
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perform. If a model has a default ordering (:attr:`Meta.ordering
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<django.db.models.Options.ordering>`) and you don't need it, remove
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it on a ``QuerySet`` by calling
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:meth:`~django.db.models.query.QuerySet.order_by()` with no parameters.
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Adding an index to your database may help to improve ordering performance.
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Use bulk methods
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================
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Use bulk methods to reduce the number of SQL statements.
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Create in bulk
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--------------
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When creating objects, where possible, use the
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:meth:`~django.db.models.query.QuerySet.bulk_create()` method to reduce the
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number of SQL queries. For example::
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Entry.objects.bulk_create([
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Entry(headline='This is a test'),
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Entry(headline='This is only a test'),
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])
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...is preferable to::
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Entry.objects.create(headline='This is a test')
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Entry.objects.create(headline='This is only a test')
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Note that there are a number of :meth:`caveats to this method
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<django.db.models.query.QuerySet.bulk_create>`, so make sure it's appropriate
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for your use case.
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Update in bulk
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--------------
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When updating objects, where possible, use the
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:meth:`~django.db.models.query.QuerySet.bulk_update()` method to reduce the
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number of SQL queries. Given a list or queryset of objects::
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entries = Entry.objects.bulk_create([
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Entry(headline='This is a test'),
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Entry(headline='This is only a test'),
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])
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The following example::
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entries[0].headline = 'This is not a test'
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entries[1].headline = 'This is no longer a test'
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Entry.objects.bulk_update(entries, ['headline'])
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...is preferable to::
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entries[0].headline = 'This is not a test'
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entries[0].save()
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entries[1].headline = 'This is no longer a test'
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entries[1].save()
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Note that there are a number of :meth:`caveats to this method
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<django.db.models.query.QuerySet.bulk_update>`, so make sure it's appropriate
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for your use case.
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Insert in bulk
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--------------
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When inserting objects into :class:`ManyToManyFields
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<django.db.models.ManyToManyField>`, use
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:meth:`~django.db.models.fields.related.RelatedManager.add` with multiple
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objects to reduce the number of SQL queries. For example::
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my_band.members.add(me, my_friend)
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...is preferable to::
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my_band.members.add(me)
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my_band.members.add(my_friend)
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...where ``Bands`` and ``Artists`` have a many-to-many relationship.
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When inserting different pairs of objects into
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:class:`~django.db.models.ManyToManyField` or when the custom
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:attr:`~django.db.models.ManyToManyField.through` table is defined, use
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:meth:`~django.db.models.query.QuerySet.bulk_create()` method to reduce the
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number of SQL queries. For example::
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PizzaToppingRelationship = Pizza.toppings.through
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PizzaToppingRelationship.objects.bulk_create([
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PizzaToppingRelationship(pizza=my_pizza, topping=pepperoni),
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PizzaToppingRelationship(pizza=your_pizza, topping=pepperoni),
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PizzaToppingRelationship(pizza=your_pizza, topping=mushroom),
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], ignore_conflicts=True)
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...is preferable to::
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my_pizza.toppings.add(pepperoni)
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your_pizza.toppings.add(pepperoni, mushroom)
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...where ``Pizza`` and ``Topping`` have a many-to-many relationship. Note that
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there are a number of :meth:`caveats to this method
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<django.db.models.query.QuerySet.bulk_create>`, so make sure it's appropriate
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for your use case.
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Remove in bulk
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--------------
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When removing objects from :class:`ManyToManyFields
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<django.db.models.ManyToManyField>`, use
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:meth:`~django.db.models.fields.related.RelatedManager.remove` with multiple
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objects to reduce the number of SQL queries. For example::
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my_band.members.remove(me, my_friend)
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...is preferable to::
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my_band.members.remove(me)
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my_band.members.remove(my_friend)
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...where ``Bands`` and ``Artists`` have a many-to-many relationship.
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When removing different pairs of objects from :class:`ManyToManyFields
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<django.db.models.ManyToManyField>`, use
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:meth:`~django.db.models.query.QuerySet.delete` on a
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:class:`~django.db.models.Q` expression with multiple
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:attr:`~django.db.models.ManyToManyField.through` model instances to reduce
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the number of SQL queries. For example::
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from django.db.models import Q
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PizzaToppingRelationship = Pizza.toppings.through
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PizzaToppingRelationship.objects.filter(
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Q(pizza=my_pizza, topping=pepperoni) |
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Q(pizza=your_pizza, topping=pepperoni) |
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Q(pizza=your_pizza, topping=mushroom)
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).delete()
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...is preferable to::
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my_pizza.toppings.remove(pepperoni)
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your_pizza.toppings.remove(pepperoni, mushroom)
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...where ``Pizza`` and ``Topping`` have a many-to-many relationship.
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