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============================
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Performance and optimization
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============================
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This document provides an overview of techniques and tools that can help get
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your Django code running more efficiently - faster, and using fewer system
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resources.
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Introduction
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============
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Generally one's first concern is to write code that *works*, whose logic
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functions as required to produce the expected output. Sometimes, however, this
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will not be enough to make the code work as *efficiently* as one would like.
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In this case, what's needed is something - and in practice, often a collection
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of things - to improve the code's performance without, or only minimally,
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affecting its behavior.
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General approaches
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==================
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What are you optimizing *for*?
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------------------------------
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It's important to have a clear idea what you mean by 'performance'. There is
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not just one metric of it.
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Improved speed might be the most obvious aim for a program, but sometimes other
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performance improvements might be sought, such as lower memory consumption or
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fewer demands on the database or network.
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Improvements in one area will often bring about improved performance in
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another, but not always; sometimes one can even be at the expense of another.
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For example, an improvement in a program's speed might cause it to use more
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memory. Even worse, it can be self-defeating - if the speed improvement is so
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memory-hungry that the system starts to run out of memory, you'll have done
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more harm than good.
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There are other trade-offs to bear in mind. Your own time is a valuable
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resource, more precious than CPU time. Some improvements might be too difficult
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to be worth implementing, or might affect the portability or maintainability of
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the code. Not all performance improvements are worth the effort.
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So, you need to know what performance improvements you are aiming for, and you
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also need to know that you have a good reason for aiming in that direction -
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and for that you need:
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Performance benchmarking
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------------------------
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It's no good just guessing or assuming where the inefficiencies lie in your
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code.
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Django tools
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~~~~~~~~~~~~
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`django-debug-toolbar
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<https://github.com/django-debug-toolbar/django-debug-toolbar/>`_ is a very
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handy tool that provides insights into what your code is doing and how much
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time it spends doing it. In particular it can show you all the SQL queries your
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page is generating, and how long each one has taken.
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Third-party panels are also available for the toolbar, that can (for example)
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report on cache performance and template rendering times.
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Third-party services
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~~~~~~~~~~~~~~~~~~~~
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There are a number of free services that will analyze and report on the
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performance of your site's pages from the perspective of a remote HTTP client,
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in effect simulating the experience of an actual user.
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These can't report on the internals of your code, but can provide a useful
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insight into your site's overall performance, including aspects that can't be
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adequately measured from within Django environment. Examples include:
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* `Yahoo's Yslow <http://yslow.org/>`_
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* `Google PageSpeed <https://developers.google.com/speed/pagespeed/>`_
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There are also several paid-for services that perform a similar analysis,
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including some that are Django-aware and can integrate with your codebase to
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profile its performance far more comprehensively.
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Get things right from the start
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-------------------------------
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Some work in optimization involves tackling performance shortcomings, but some
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of the work can simply be built in to what you'd do anyway, as part of the good
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practices you should adopt even before you start thinking about improving
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performance.
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In this respect Python is an excellent language to work with, because solutions
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that look elegant and feel right usually are the best performing ones. As with
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most skills, learning what "looks right" takes practice, but one of the most
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useful guidelines is:
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Work at the appropriate level
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~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
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Django offers many different ways of approaching things, but just because it's
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possible to do something in a certain way doesn't mean that it's the most
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appropriate way to do it. For example, you might find that you could calculate
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the same thing - the number of items in a collection, perhaps - in a
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``QuerySet``, in Python, or in a template.
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However, it will almost always be faster to do this work at lower rather than
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higher levels. At higher levels the system has to deal with objects through
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multiple levels of abstraction and layers of machinery.
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That is, the database can typically do things faster than Python can, which can
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do them faster than the template language can::
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# QuerySet operation on the database
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# fast, because that's what databases are good at
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my_bicycles.count()
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# counting Python objects
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# slower, because it requires a database query anyway, and processing
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# of the Python objects
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len(my_bicycles)
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# Django template filter
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# slower still, because it will have to count them in Python anyway,
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# and because of template language overheads
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{{ my_bicycles|length }}
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Generally speaking, the most appropriate level for the job is the lowest-level
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one that it is comfortable to code for.
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.. note::
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The example above is merely illustrative.
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Firstly, in a real-life case you need to consider what is happening before
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and after your count to work out what's an optimal way of doing it *in that
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particular context*. The database optimization documents describes :ref:`a
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case where counting in the template would be better
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<overuse_of_count_and_exists>`.
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Secondly, there are other options to consider: in a real-life case, ``{{
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my_bicycles.count }}``, which invokes the ``QuerySet`` ``count()`` method
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directly from the template, might be the most appropriate choice.
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Caching
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=======
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Often it is expensive (that is, resource-hungry and slow) to compute a value,
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so there can be huge benefit in saving the value to a quickly accessible cache,
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ready for the next time it's required.
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It's a sufficiently significant and powerful technique that Django includes a
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comprehensive caching framework, as well as other smaller pieces of caching
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functionality.
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:doc:`The caching framework </topics/cache>`
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--------------------------------------------
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Django's :doc:`caching framework </topics/cache>` offers very significant
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opportunities for performance gains, by saving dynamic content so that it
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doesn't need to be calculated for each request.
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For convenience, Django offers different levels of cache granularity: you can
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cache the output of specific views, or only the pieces that are difficult to
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produce, or even an entire site.
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Implementing caching should not be regarded as an alternative to improving code
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that's performing poorly because it has been written badly. It's one of the
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final steps towards producing well-performing code, not a shortcut.
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:class:`~django.utils.functional.cached_property`
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-------------------------------------------------
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It's common to have to call a class instance's method more than once. If
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that function is expensive, then doing so can be wasteful.
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Using the :class:`~django.utils.functional.cached_property` decorator saves the
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value returned by a property; the next time the function is called on that
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instance, it will return the saved value rather than re-computing it. Note that
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this only works on methods that take ``self`` as their only argument and that
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it changes the method to a property.
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Certain Django components also have their own caching functionality; these are
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discussed below in the sections related to those components.
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Understanding laziness
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======================
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*Laziness* is a strategy complementary to caching. Caching avoids
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recomputation by saving results; laziness delays computation until it's
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actually required.
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Laziness allows us to refer to things before they are instantiated, or even
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before it's possible to instantiate them. This has numerous uses.
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For example, :ref:`lazy translation <lazy-translations>` can be used before the
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target language is even known, because it doesn't take place until the
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translated string is actually required, such as in a rendered template.
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Laziness is also a way to save effort by trying to avoid work in the first
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place. That is, one aspect of laziness is not doing anything until it has to be
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done, because it may not turn out to be necessary after all. Laziness can
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therefore have performance implications, and the more expensive the work
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concerned, the more there is to gain through laziness.
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Python provides a number of tools for lazy evaluation, particularly through the
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:py:term:`generator` and :py:term:`generator expression` constructs. It's worth
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reading up on laziness in Python to discover opportunities for making use of
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lazy patterns in your code.
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Laziness in Django
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------------------
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Django is itself quite lazy. A good example of this can be found in the
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evaluation of ``QuerySets``. :ref:`QuerySets are lazy <querysets-are-lazy>`.
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Thus a ``QuerySet`` can be created, passed around and combined with other
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``QuerySets``, without actually incurring any trips to the database to fetch
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the items it describes. What gets passed around is the ``QuerySet`` object, not
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the collection of items that - eventually - will be required from the database.
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On the other hand, :ref:`certain operations will force the evaluation of a
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QuerySet <when-querysets-are-evaluated>`. Avoiding the premature evaluation of
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a ``QuerySet`` can save making an expensive and unnecessary trip to the
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database.
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Django also offers a :meth:`~django.utils.functional.keep_lazy` decorator.
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This allows a function that has been called with a lazy argument to behave
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lazily itself, only being evaluated when it needs to be. Thus the lazy argument
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- which could be an expensive one - will not be called upon for evaluation
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until it's strictly required.
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Databases
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=========
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Database optimization
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---------------------
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Django’s database layer provides various ways to help developers get the best
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performance from their databases. The :doc:`database optimization documentation
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</topics/db/optimization>` gathers together links to the relevant
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documentation and adds various tips that outline the steps to take when
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attempting to optimize your database usage.
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Other database-related tips
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---------------------------
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Enabling :ref:`persistent-database-connections` can speed up connections to the
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database accounts for a significant part of the request processing time.
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This helps a lot on virtualized hosts with limited network performance, for example.
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HTTP performance
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================
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Middleware
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----------
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Django comes with a few helpful pieces of :doc:`middleware </ref/middleware>`
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that can help optimize your site's performance. They include:
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:class:`~django.middleware.http.ConditionalGetMiddleware`
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~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
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Adds support for modern browsers to conditionally GET responses based on the
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``ETag`` and ``Last-Modified`` headers. It also calculates and sets an ETag if
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needed.
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:class:`~django.middleware.gzip.GZipMiddleware`
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~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
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Compresses responses for all modern browsers, saving bandwidth and transfer
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time. Note that GZipMiddleware is currently considered a security risk, and is
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vulnerable to attacks that nullify the protection provided by TLS/SSL. See the
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warning in :class:`~django.middleware.gzip.GZipMiddleware` for more information.
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Sessions
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--------
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Using cached sessions
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~~~~~~~~~~~~~~~~~~~~~
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:ref:`Using cached sessions <cached-sessions-backend>` may be a way to increase
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performance by eliminating the need to load session data from a slower storage
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source like the database and instead storing frequently used session data in
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memory.
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Static files
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------------
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Static files, which by definition are not dynamic, make an excellent target for
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optimization gains.
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:class:`~django.contrib.staticfiles.storage.CachedStaticFilesStorage`
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~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
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By taking advantage of web browsers' caching abilities, you can
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eliminate network hits entirely for a given file after the initial download.
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:class:`~django.contrib.staticfiles.storage.CachedStaticFilesStorage` appends a
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content-dependent tag to the filenames of :doc:`static files
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</ref/contrib/staticfiles>` to make it safe for browsers to cache them
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long-term without missing future changes - when a file changes, so will the
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tag, so browsers will reload the asset automatically.
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"Minification"
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~~~~~~~~~~~~~~
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Several third-party Django tools and packages provide the ability to "minify"
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HTML, CSS, and JavaScript. They remove unnecessary whitespace, newlines, and
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comments, and shorten variable names, and thus reduce the size of the documents
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that your site publishes.
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Template performance
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====================
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Note that:
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* using ``{% block %}`` is faster than using ``{% include %}``
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* heavily-fragmented templates, assembled from many small pieces, can affect
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performance
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The cached template loader
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--------------------------
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Enabling the :class:`cached template loader
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<django.template.loaders.cached.Loader>` often improves performance
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drastically, as it avoids compiling each template every time it needs to be
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rendered.
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Using different versions of available software
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==============================================
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It can sometimes be worth checking whether different and better-performing
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versions of the software that you're using are available.
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These techniques are targeted at more advanced users who want to push the
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boundaries of performance of an already well-optimized Django site.
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However, they are not magic solutions to performance problems, and they're
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unlikely to bring better than marginal gains to sites that don't already do the
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more basic things the right way.
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.. note::
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It's worth repeating: **reaching for alternatives to software you're
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already using is never the first answer to performance problems**. When
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you reach this level of optimization, you need a formal benchmarking
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solution.
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Newer is often - but not always - better
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----------------------------------------
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It's fairly rare for a new release of well-maintained software to be less
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efficient, but the maintainers can't anticipate every possible use-case - so
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while being aware that newer versions are likely to perform better, don't
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simply assume that they always will.
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This is true of Django itself. Successive releases have offered a number of
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improvements across the system, but you should still check the real-world
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performance of your application, because in some cases you may find that
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changes mean it performs worse rather than better.
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Newer versions of Python, and also of Python packages, will often perform
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better too - but measure, rather than assume.
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.. note::
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Unless you've encountered an unusual performance problem in a particular
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version, you'll generally find better features, reliability, and security
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in a new release and that these benefits are far more significant than any
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performance you might win or lose.
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Alternatives to Django's template language
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------------------------------------------
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For nearly all cases, Django's built-in template language is perfectly
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adequate. However, if the bottlenecks in your Django project seem to lie in the
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template system and you have exhausted other opportunities to remedy this, a
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third-party alternative may be the answer.
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`Jinja2 <http://jinja.pocoo.org/docs/>`_ can offer performance improvements,
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particularly when it comes to speed.
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Alternative template systems vary in the extent to which they share Django's
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templating language.
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.. note::
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*If* you experience performance issues in templates, the first thing to do
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is to understand exactly why. Using an alternative template system may
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prove faster, but the same gains may also be available without going to
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that trouble - for example, expensive processing and logic in your
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templates could be done more efficiently in your views.
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Alternative software implementations
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------------------------------------
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It may be worth checking whether Python software you're using has been
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provided in a different implementation that can execute the same code faster.
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However: most performance problems in well-written Django sites aren't at the
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Python execution level, but rather in inefficient database querying, caching,
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and templates. If you're relying on poorly-written Python code, your
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performance problems are unlikely to be solved by having it execute faster.
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Using an alternative implementation may introduce compatibility, deployment,
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portability, or maintenance issues. It goes without saying that before adopting
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a non-standard implementation you should ensure it provides sufficient
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performance gains for your application to outweigh the potential risks.
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With these caveats in mind, you should be aware of:
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`PyPy <http://pypy.org/>`_
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~~~~~~~~~~~~~~~~~~~~~~~~~~
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`PyPy <http://pypy.org/>`_ is an implementation of Python in Python itself (the
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'standard' Python implementation is in C). PyPy can offer substantial
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performance gains, typically for heavyweight applications.
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A key aim of the PyPy project is `compatibility
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<http://pypy.org/compat.html>`_ with existing Python APIs and libraries.
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Django is compatible, but you will need to check the compatibility of other
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libraries you rely on.
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C implementations of Python libraries
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~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
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Some Python libraries are also implemented in C, and can be much faster. They
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aim to offer the same APIs. Note that compatibility issues and behavior
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differences are not unknown (and not always immediately evident).
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