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- .. _guide-tasks:
- =======
- Tasks
- =======
- Tasks are the building blocks of Celery applications.
- A task is a class that can be created out of any callable. It performs
- dual roles in that it defines both what happens when a task is
- called (sends a message), and what happens when a worker receives that message.
- Every task class has a unique name, and this name is referenced in messages
- so that the worker can find the right function to execute.
- A task message does not disappear
- until the message has been :term:`acknowledged` by a worker. A worker can reserve
- many messages in advance and even if the worker is killed -- caused by power failure
- or otherwise -- the message will be redelivered to another worker.
- Ideally task functions should be :term:`idempotent`, which means that
- the function will not cause unintented effects even if called
- multiple times with the same arguments.
- Since the worker cannot detect if your tasks are idempotent, the default
- behavior is to acknowledge the message in advance, before it's executed,
- so that a task that has already been started is never executed again..
- If your task is idempotent you can set the :attr:`acks_late` option
- to have the worker acknowledge the message *after* the task returns
- instead. See also the FAQ entry :ref:`faq-acks_late-vs-retry`.
- --
- In this chapter you will learn all about defining tasks,
- and this is the **table of contents**:
- .. contents::
- :local:
- :depth: 1
- .. _task-basics:
- Basics
- ======
- You can easily create a task from any callable by using
- the :meth:`~@Celery.task` decorator:
- .. code-block:: python
- from .models import User
- @app.task
- def create_user(username, password):
- User.objects.create(username=username, password=password)
- There are also many :ref:`options <task-options>` that can be set for the task,
- these can be specified as arguments to the decorator:
- .. code-block:: python
- @app.task(serializer='json')
- def create_user(username, password):
- User.objects.create(username=username, password=password)
- .. sidebar:: How do I import the task decorator? And what is "app"?
- The task decorator is available on your :class:`@Celery` application instance,
- if you don't know what that is then please read :ref:`first-steps`.
- If you're using Django or are still using the "old" module based celery API,
- then you can import the task decorator like this::
- from celery import task
- @task
- def add(x, y):
- return x + y
- .. sidebar:: Multiple decorators
- When using multiple decorators in combination with the task
- decorator you must make sure that the `task`
- decorator is applied last (which in Python oddly means that it must
- be the first in the list):
- .. code-block:: python
- @app.task
- @decorator2
- @decorator1
- def add(x, y):
- return x + y
- .. _task-names:
- Names
- =====
- Every task must have a unique name, and a new name
- will be generated out of the function name if a custom name is not provided.
- For example:
- .. code-block:: python
- >>> @app.task(name='sum-of-two-numbers')
- >>> def add(x, y):
- ... return x + y
- >>> add.name
- 'sum-of-two-numbers'
- A best practice is to use the module name as a namespace,
- this way names won't collide if there's already a task with that name
- defined in another module.
- .. code-block:: python
- >>> @app.task(name='tasks.add')
- >>> def add(x, y):
- ... return x + y
- You can tell the name of the task by investigating its name attribute::
- >>> add.name
- 'tasks.add'
- Which is exactly the name that would have been generated anyway,
- if the module name is "tasks.py":
- :file:`tasks.py`:
- .. code-block:: python
- @app.task
- def add(x, y):
- return x + y
- >>> from tasks import add
- >>> add.name
- 'tasks.add'
- .. _task-naming-relative-imports:
- Automatic naming and relative imports
- -------------------------------------
- Relative imports and automatic name generation does not go well together,
- so if you're using relative imports you should set the name explicitly.
- For example if the client imports the module "myapp.tasks" as ".tasks", and
- the worker imports the module as "myapp.tasks", the generated names won't match
- and an :exc:`~@NotRegistered` error will be raised by the worker.
- This is also the case when using Django and using `project.myapp`-style
- naming in ``INSTALLED_APPS``:
- .. code-block:: python
- INSTALLED_APPS = ['project.myapp']
- If you install the app under the name ``project.myapp`` then the
- tasks module will be imported as ``project.myapp.tasks``,
- so you must make sure you always import the tasks using the same name:
- .. code-block:: python
- >>> from project.myapp.tasks import mytask # << GOOD
- >>> from myapp.tasks import mytask # << BAD!!!
- The second example will cause the task to be named differently
- since the worker and the client imports the modules under different names:
- .. code-block:: python
- >>> from project.myapp.tasks import mytask
- >>> mytask.name
- 'project.myapp.tasks.mytask'
- >>> from myapp.tasks import mytask
- >>> mytask.name
- 'myapp.tasks.mytask'
- So for this reason you must be consistent in how you
- import modules, which is also a Python best practice.
- Similarly, you should not use old-style relative imports:
- .. code-block:: python
- from module import foo # BAD!
- from proj.module import foo # GOOD!
- New-style relative imports are fine and can be used:
- .. code-block:: python
- from .module import foo # GOOD!
- If you want to use Celery with a project already using these patterns
- extensively and you don't have the time to refactor the existing code
- then you can consider specifying the names explicitly instead of relying
- on the automatic naming:
- .. code-block:: python
- @task(name='proj.tasks.add')
- def add(x, y):
- return x + y
- .. _task-request-info:
- Context
- =======
- :attr:`~@Task.request` contains information and state related to
- the executing task.
- The request defines the following attributes:
- :id: The unique id of the executing task.
- :group: The unique id a group, if this task is a member.
- :chord: The unique id of the chord this task belongs to (if the task
- is part of the header).
- :args: Positional arguments.
- :kwargs: Keyword arguments.
- :retries: How many times the current task has been retried.
- An integer starting at `0`.
- :is_eager: Set to :const:`True` if the task is executed locally in
- the client, and not by a worker.
- :eta: The original ETA of the task (if any).
- This is in UTC time (depending on the :setting:`CELERY_ENABLE_UTC`
- setting).
- :expires: The original expiry time of the task (if any).
- This is in UTC time (depending on the :setting:`CELERY_ENABLE_UTC`
- setting).
- :logfile: The file the worker logs to. See `Logging`_.
- :loglevel: The current log level used.
- :hostname: Hostname of the worker instance executing the task.
- :delivery_info: Additional message delivery information. This is a mapping
- containing the exchange and routing key used to deliver this
- task. Used by e.g. :meth:`~@Task.retry`
- to resend the task to the same destination queue.
- Availability of keys in this dict depends on the
- message broker used.
- :called_directly: This flag is set to true if the task was not
- executed by the worker.
- :callbacks: A list of subtasks to be called if this task returns successfully.
- :errback: A list of subtasks to be called if this task fails.
- :utc: Set to true the caller has utc enabled (:setting:`CELERY_ENABLE_UTC`).
- .. versionadded:: 3.1
- :headers: Mapping of message headers (may be :const:`None`).
- :reply_to: Where to send reply to (queue name).
- :correlation_id: Usually the same as the task id, often used in amqp
- to keep track of what a reply is for.
- An example task accessing information in the context is:
- .. code-block:: python
- @app.task(bind=True)
- def dump_context(self, x, y):
- print('Executing task id {0.id}, args: {0.args!r} kwargs: {0.kwargs!r}'.format(
- self.request))
- The ``bind`` argument means that the function will be a "bound method" so
- that you can access attributes and methods on the task type instance.
- .. _task-logging:
- Logging
- =======
- The worker will automatically set up logging for you, or you can
- configure logging manually.
- A special logger is available named "celery.task", you can inherit
- from this logger to automatically get the task name and unique id as part
- of the logs.
- The best practice is to create a common logger
- for all of your tasks at the top of your module:
- .. code-block:: python
- from celery.utils.log import get_task_logger
- logger = get_task_logger(__name__)
- @app.task
- def add(x, y):
- logger.info('Adding {0} + {1}'.format(x, y))
- return x + y
- Celery uses the standard Python logger library,
- for which documentation can be found in the :mod:`logging`
- module.
- You can also use :func:`print`, as anything written to standard
- out/-err will be redirected to logging system (you can disable this,
- see :setting:`CELERY_REDIRECT_STDOUTS`).
- .. _task-retry:
- Retrying
- ========
- :meth:`~@Task.retry` can be used to re-execute the task,
- for example in the event of recoverable errors.
- When you call ``retry`` it will send a new message, using the same
- task-id, and it will take care to make sure the message is delivered
- to the same queue as the originating task.
- When a task is retried this is also recorded as a task state,
- so that you can track the progress of the task using the result
- instance (see :ref:`task-states`).
- Here's an example using ``retry``:
- .. code-block:: python
- @app.task(bind=True)
- def send_twitter_status(self, oauth, tweet):
- try:
- twitter = Twitter(oauth)
- twitter.update_status(tweet)
- except (Twitter.FailWhaleError, Twitter.LoginError) as exc:
- raise self.retry(exc=exc)
- .. note::
- The :meth:`~@Task.retry` call will raise an exception so any code after the retry
- will not be reached. This is the :exc:`~@Retry`
- exception, it is not handled as an error but rather as a semi-predicate
- to signify to the worker that the task is to be retried,
- so that it can store the correct state when a result backend is enabled.
- This is normal operation and always happens unless the
- ``throw`` argument to retry is set to :const:`False`.
- The bind argument to the task decorator will give access to ``self`` (the
- task type instance).
- The ``exc`` method is used to pass exception information that is
- used in logs, and when storing task results.
- Both the exception and the traceback will
- be available in the task state (if a result backend is enabled).
- If the task has a ``max_retries`` value the current exception
- will be re-raised if the max number of retries has been exceeded,
- but this will not happen if:
- - An ``exc`` argument was not given.
- In this case the :exc:`~@MaxRetriesExceeded`
- exception will be raised.
- - There is no current exception
- If there's no original exception to re-raise the ``exc``
- argument will be used instead, so:
- .. code-block:: python
- self.retry(exc=Twitter.LoginError())
- will raise the ``exc`` argument given.
- .. _task-retry-custom-delay:
- Using a custom retry delay
- --------------------------
- When a task is to be retried, it can wait for a given amount of time
- before doing so, and the default delay is defined by the
- :attr:`~@Task.default_retry_delay`
- attribute. By default this is set to 3 minutes. Note that the
- unit for setting the delay is in seconds (int or float).
- You can also provide the `countdown` argument to :meth:`~@Task.retry` to
- override this default.
- .. code-block:: python
- @app.task(bind=True, default_retry_delay=30 * 60) # retry in 30 minutes.
- def add(self, x, y):
- try:
- …
- except Exception as exc:
- raise self.retry(exc=exc, countdown=60) # override the default and
- # retry in 1 minute
- .. _task-options:
- List of Options
- ===============
- The task decorator can take a number of options that change the way
- the task behaves, for example you can set the rate limit for a task
- using the :attr:`rate_limit` option.
- Any keyword argument passed to the task decorator will actually be set
- as an attribute of the resulting task class, and this is a list
- of the built-in attributes.
- General
- -------
- .. _task-general-options:
- .. attribute:: Task.name
- The name the task is registered as.
- You can set this name manually, or a name will be
- automatically generated using the module and class name. See
- :ref:`task-names`.
- .. attribute:: Task.request
- If the task is being executed this will contain information
- about the current request. Thread local storage is used.
- See :ref:`task-request-info`.
- .. attribute:: Task.abstract
- Abstract classes are not registered, but are used as the
- base class for new task types.
- .. attribute:: Task.max_retries
- The maximum number of attempted retries before giving up.
- If the number of retries exceeds this value a :exc:`~@MaxRetriesExceeded`
- exception will be raised. *NOTE:* You have to call :meth:`~@Task.retry`
- manually, as it will not automatically retry on exception..
- The default value is 3.
- A value of :const:`None` will disable the retry limit and the
- task will retry forever until it succeeds.
- .. attribute:: Task.default_retry_delay
- Default time in seconds before a retry of the task
- should be executed. Can be either :class:`int` or :class:`float`.
- Default is a 3 minute delay.
- .. attribute:: Task.rate_limit
- Set the rate limit for this task type which limits the number of tasks
- that can be run in a given time frame. Tasks will still complete when
- a rate limit is in effect, but it may take some time before it's allowed to
- start.
- If this is :const:`None` no rate limit is in effect.
- If it is an integer or float, it is interpreted as "tasks per second".
- The rate limits can be specified in seconds, minutes or hours
- by appending `"/s"`, `"/m"` or `"/h"` to the value.
- Example: `"100/m"` (hundred tasks a minute). Default is the
- :setting:`CELERY_DEFAULT_RATE_LIMIT` setting, which if not specified means
- rate limiting for tasks is disabled by default.
- .. attribute:: Task.time_limit
- The hard time limit for this task. If not set then the workers default
- will be used.
- .. attribute:: Task.soft_time_limit
- The soft time limit for this task. If not set then the workers default
- will be used.
- .. attribute:: Task.ignore_result
- Don't store task state. Note that this means you can't use
- :class:`~celery.result.AsyncResult` to check if the task is ready,
- or get its return value.
- .. attribute:: Task.store_errors_even_if_ignored
- If :const:`True`, errors will be stored even if the task is configured
- to ignore results.
- .. attribute:: Task.send_error_emails
- Send an email whenever a task of this type fails.
- Defaults to the :setting:`CELERY_SEND_TASK_ERROR_EMAILS` setting.
- See :ref:`conf-error-mails` for more information.
- .. attribute:: Task.ErrorMail
- If the sending of error emails is enabled for this task, then
- this is the class defining the logic to send error mails.
- .. attribute:: Task.serializer
- A string identifying the default serialization
- method to use. Defaults to the :setting:`CELERY_TASK_SERIALIZER`
- setting. Can be `pickle` `json`, `yaml`, or any custom
- serialization methods that have been registered with
- :mod:`kombu.serialization.registry`.
- Please see :ref:`calling-serializers` for more information.
- .. attribute:: Task.compression
- A string identifying the default compression scheme to use.
- Defaults to the :setting:`CELERY_MESSAGE_COMPRESSION` setting.
- Can be `gzip`, or `bzip2`, or any custom compression schemes
- that have been registered with the :mod:`kombu.compression` registry.
- Please see :ref:`calling-compression` for more information.
- .. attribute:: Task.backend
- The result store backend to use for this task. Defaults to the
- :setting:`CELERY_RESULT_BACKEND` setting.
- .. attribute:: Task.acks_late
- If set to :const:`True` messages for this task will be acknowledged
- **after** the task has been executed, not *just before*, which is
- the default behavior.
- Note that this means the task may be executed twice if the worker
- crashes in the middle of execution, which may be acceptable for some
- applications.
- The global default can be overridden by the :setting:`CELERY_ACKS_LATE`
- setting.
- .. _task-track-started:
- .. attribute:: Task.track_started
- If :const:`True` the task will report its status as "started"
- when the task is executed by a worker.
- The default value is :const:`False` as the normal behaviour is to not
- report that level of granularity. Tasks are either pending, finished,
- or waiting to be retried. Having a "started" status can be useful for
- when there are long running tasks and there is a need to report which
- task is currently running.
- The host name and process id of the worker executing the task
- will be available in the state metadata (e.g. `result.info['pid']`)
- The global default can be overridden by the
- :setting:`CELERY_TRACK_STARTED` setting.
- .. seealso::
- The API reference for :class:`~@Task`.
- .. _task-states:
- States
- ======
- Celery can keep track of the tasks current state. The state also contains the
- result of a successful task, or the exception and traceback information of a
- failed task.
- There are several *result backends* to choose from, and they all have
- different strengths and weaknesses (see :ref:`task-result-backends`).
- During its lifetime a task will transition through several possible states,
- and each state may have arbitrary metadata attached to it. When a task
- moves into a new state the previous state is
- forgotten about, but some transitions can be deducted, (e.g. a task now
- in the :state:`FAILED` state, is implied to have been in the
- :state:`STARTED` state at some point).
- There are also sets of states, like the set of
- :state:`FAILURE_STATES`, and the set of :state:`READY_STATES`.
- The client uses the membership of these sets to decide whether
- the exception should be re-raised (:state:`PROPAGATE_STATES`), or whether
- the state can be cached (it can if the task is ready).
- You can also define :ref:`custom-states`.
- .. _task-result-backends:
- Result Backends
- ---------------
- If you want to keep track of tasks or need the return values, then Celery
- must store or send the states somewhere so that they can be retrieved later.
- There are several built-in result backends to choose from: SQLAlchemy/Django ORM,
- Memcached, RabbitMQ (amqp), MongoDB, and Redis -- or you can define your own.
- No backend works well for every use case.
- You should read about the strengths and weaknesses of each backend, and choose
- the most appropriate for your needs.
- .. seealso::
- :ref:`conf-result-backend`
- RabbitMQ Result Backend
- ~~~~~~~~~~~~~~~~~~~~~~~
- The RabbitMQ result backend (amqp) is special as it does not actually *store*
- the states, but rather sends them as messages. This is an important difference as it
- means that a result *can only be retrieved once*; If you have two processes
- waiting for the same result, one of the processes will never receive the
- result!
- Even with that limitation, it is an excellent choice if you need to receive
- state changes in real-time. Using messaging means the client does not have to
- poll for new states.
- There are several other pitfalls you should be aware of when using the
- RabbitMQ result backend:
- * Every new task creates a new queue on the server, with thousands of tasks
- the broker may be overloaded with queues and this will affect performance in
- negative ways. If you're using RabbitMQ then each queue will be a separate
- Erlang process, so if you're planning to keep many results simultaneously you
- may have to increase the Erlang process limit, and the maximum number of file
- descriptors your OS allows.
- * Old results will be cleaned automatically, based on the
- :setting:`CELERY_TASK_RESULT_EXPIRES` setting. By default this is set to
- expire after 1 day: if you have a very busy cluster you should lower
- this value.
- For a list of options supported by the RabbitMQ result backend, please see
- :ref:`conf-amqp-result-backend`.
- Database Result Backend
- ~~~~~~~~~~~~~~~~~~~~~~~
- Keeping state in the database can be convenient for many, especially for
- web applications with a database already in place, but it also comes with
- limitations.
- * Polling the database for new states is expensive, and so you should
- increase the polling intervals of operations such as `result.get()`.
- * Some databases use a default transaction isolation level that
- is not suitable for polling tables for changes.
- In MySQL the default transaction isolation level is `REPEATABLE-READ`, which
- means the transaction will not see changes by other transactions until the
- transaction is committed. It is recommended that you change to the
- `READ-COMMITTED` isolation level.
- .. _task-builtin-states:
- Built-in States
- ---------------
- .. state:: PENDING
- PENDING
- ~~~~~~~
- Task is waiting for execution or unknown.
- Any task id that is not known is implied to be in the pending state.
- .. state:: STARTED
- STARTED
- ~~~~~~~
- Task has been started.
- Not reported by default, to enable please see :attr:`@Task.track_started`.
- :metadata: `pid` and `hostname` of the worker process executing
- the task.
- .. state:: SUCCESS
- SUCCESS
- ~~~~~~~
- Task has been successfully executed.
- :metadata: `result` contains the return value of the task.
- :propagates: Yes
- :ready: Yes
- .. state:: FAILURE
- FAILURE
- ~~~~~~~
- Task execution resulted in failure.
- :metadata: `result` contains the exception occurred, and `traceback`
- contains the backtrace of the stack at the point when the
- exception was raised.
- :propagates: Yes
- .. state:: RETRY
- RETRY
- ~~~~~
- Task is being retried.
- :metadata: `result` contains the exception that caused the retry,
- and `traceback` contains the backtrace of the stack at the point
- when the exceptions was raised.
- :propagates: No
- .. state:: REVOKED
- REVOKED
- ~~~~~~~
- Task has been revoked.
- :propagates: Yes
- .. _custom-states:
- Custom states
- -------------
- You can easily define your own states, all you need is a unique name.
- The name of the state is usually an uppercase string. As an example
- you could have a look at :mod:`abortable tasks <~celery.contrib.abortable>`
- which defines its own custom :state:`ABORTED` state.
- Use :meth:`~@Task.update_state` to update a task's state::
- @app.task(bind=True)
- def upload_files(self, filenames):
- for i, file in enumerate(filenames):
- self.update_state(state='PROGRESS',
- meta={'current': i, 'total': len(filenames)})
- Here I created the state `"PROGRESS"`, which tells any application
- aware of this state that the task is currently in progress, and also where
- it is in the process by having `current` and `total` counts as part of the
- state metadata. This can then be used to create e.g. progress bars.
- .. _pickling_exceptions:
- Creating pickleable exceptions
- ------------------------------
- A rarely known Python fact is that exceptions must conform to some
- simple rules to support being serialized by the pickle module.
- Tasks that raise exceptions that are not pickleable will not work
- properly when Pickle is used as the serializer.
- To make sure that your exceptions are pickleable the exception
- *MUST* provide the original arguments it was instantiated
- with in its ``.args`` attribute. The simplest way
- to ensure this is to have the exception call ``Exception.__init__``.
- Let's look at some examples that work, and one that doesn't:
- .. code-block:: python
- # OK:
- class HttpError(Exception):
- pass
- # BAD:
- class HttpError(Exception):
- def __init__(self, status_code):
- self.status_code = status_code
- # OK:
- class HttpError(Exception):
- def __init__(self, status_code):
- self.status_code = status_code
- Exception.__init__(self, status_code) # <-- REQUIRED
- So the rule is:
- For any exception that supports custom arguments ``*args``,
- ``Exception.__init__(self, *args)`` must be used.
- There is no special support for *keyword arguments*, so if you
- want to preserve keyword arguments when the exception is unpickled
- you have to pass them as regular args:
- .. code-block:: python
- class HttpError(Exception):
- def __init__(self, status_code, headers=None, body=None):
- self.status_code = status_code
- self.headers = headers
- self.body = body
- super(HttpError, self).__init__(status_code, headers, body)
- .. _task-semipredicates:
- Semipredicates
- ==============
- The worker wraps the task in a tracing function which records the final
- state of the task. There are a number of exceptions that can be used to
- signal this function to change how it treats the return of the task.
- .. _task-semipred-ignore:
- Ignore
- ------
- The task may raise :exc:`~@Ignore` to force the worker to ignore the
- task. This means that no state will be recorded for the task, but the
- message is still acknowledged (removed from queue).
- This is can be used if you want to implement custom revoke-like
- functionality, or manually store the result of a task.
- Example keeping revoked tasks in a Redis set:
- .. code-block:: python
- from celery.exceptions import Ignore
- @app.task(bind=True)
- def some_task(self):
- if redis.ismember('tasks.revoked', self.request.id):
- raise Ignore()
- Example that stores results manually:
- .. code-block:: python
- from celery import states
- from celery.exceptions import Ignore
- @app.task(bind=True)
- def get_tweets(self, user):
- timeline = twitter.get_timeline(user)
- self.update_state(sate=states.SUCCESS, meta=timeline)
- raise Ignore()
- .. _task-semipred-reject:
- Reject
- ------
- The task may raise :exc:`~@Reject` to reject the task message using
- AMQPs ``basic_reject`` method. This will not have any effect unless
- :attr:`Task.acks_late` is enabled.
- Rejecting a message has the same effect as acking it, but some
- brokers may implement additional functionality that can be used.
- For example RabbitMQ supports the concept of `Dead Letter Exchanges`_
- where a queue can be configured to use a dead letter exchange that rejected
- messages are redelivered to.
- .. _`Dead Letter Exchanges`: http://www.rabbitmq.com/dlx.html
- Reject can also be used to requeue messages, but please be very careful
- when using this as it can easily result in an infinite message loop.
- Example using reject when a task causes an out of memory condition:
- .. code-block:: python
- import errno
- from celery.exceptions import Reject
- @app.task(bind=True, acks_late=True)
- def render_scene(self, path):
- file = get_file(path)
- try:
- renderer.render_scene(file)
- # if the file is too big to fit in memory
- # we reject it so that it's redelivered to the dead letter exchange
- # and we can manually inspect the situation.
- except MemoryError as exc:
- raise Reject(exc, requeue=False)
- except OSError as exc:
- if exc.errno == errno.ENOMEM:
- raise Reject(exc, requeue=False)
- # For any other error we retry after 10 seconds.
- except Exception as exc:
- raise self.retry(exc, countdown=10)
- Example requeuing the message:
- .. code-block:: python
- import errno
- from celery.exceptions import Reject
- @app.task(bind=True, acks_late=True)
- def requeues(self):
- if not self.request.delivery_info['redelivered']:
- raise Requeue('no reason', requeue=True)
- print('received two times')
- Consult your broker documentation for more details about the ``basic_reject``
- method.
- .. _task-semipred-retry:
- Retry
- -----
- The :exc:`~@Retry` exception is raised by the ``Task.retry`` method
- to tell the worker that the task is being retried.
- .. _task-custom-classes:
- Custom task classes
- ===================
- All tasks inherit from the :class:`@Task` class.
- The :meth:`~@Task.run` method becomes the task body.
- As an example, the following code,
- .. code-block:: python
- @app.task
- def add(x, y):
- return x + y
- will do roughly this behind the scenes:
- .. code-block:: python
- @app.task
- class AddTask(Task):
- def run(self, x, y):
- return x + y
- add = registry.tasks[AddTask.name]
- Instantiation
- -------------
- A task is **not** instantiated for every request, but is registered
- in the task registry as a global instance.
- This means that the ``__init__`` constructor will only be called
- once per process, and that the task class is semantically closer to an
- Actor.
- If you have a task,
- .. code-block:: python
- from celery import Task
- class NaiveAuthenticateServer(Task):
- def __init__(self):
- self.users = {'george': 'password'}
- def run(self, username, password):
- try:
- return self.users[username] == password
- except KeyError:
- return False
- And you route every request to the same process, then it
- will keep state between requests.
- This can also be useful to cache resources,
- e.g. a base Task class that caches a database connection:
- .. code-block:: python
- from celery import Task
- class DatabaseTask(Task):
- abstract = True
- _db = None
- @property
- def db(self):
- if self._db is None:
- self._db = Database.connect()
- return self._db
- that can be added to tasks like this:
- .. code-block:: python
- @app.task(base=DatabaseTask)
- def process_rows():
- for row in process_rows.db.table.all():
- …
- The ``db`` attribute of the ``process_rows`` task will then
- always stay the same in each process.
- Abstract classes
- ----------------
- Abstract classes are not registered, but are used as the
- base class for new task types.
- .. code-block:: python
- from celery import Task
- class DebugTask(Task):
- abstract = True
- def after_return(self, *args, **kwargs):
- print('Task returned: {0!r}'.format(self.request)
- @app.task(base=DebugTask)
- def add(x, y):
- return x + y
- Handlers
- --------
- .. method:: after_return(self, status, retval, task_id, args, kwargs, einfo)
- Handler called after the task returns.
- :param status: Current task state.
- :param retval: Task return value/exception.
- :param task_id: Unique id of the task.
- :param args: Original arguments for the task that returned.
- :param kwargs: Original keyword arguments for the task
- that returned.
- :keyword einfo: :class:`~celery.datastructures.ExceptionInfo`
- instance, containing the traceback (if any).
- The return value of this handler is ignored.
- .. method:: on_failure(self, exc, task_id, args, kwargs, einfo)
- This is run by the worker when the task fails.
- :param exc: The exception raised by the task.
- :param task_id: Unique id of the failed task.
- :param args: Original arguments for the task that failed.
- :param kwargs: Original keyword arguments for the task
- that failed.
- :keyword einfo: :class:`~celery.datastructures.ExceptionInfo`
- instance, containing the traceback.
- The return value of this handler is ignored.
- .. method:: on_retry(self, exc, task_id, args, kwargs, einfo)
- This is run by the worker when the task is to be retried.
- :param exc: The exception sent to :meth:`~@Task.retry`.
- :param task_id: Unique id of the retried task.
- :param args: Original arguments for the retried task.
- :param kwargs: Original keyword arguments for the retried task.
- :keyword einfo: :class:`~celery.datastructures.ExceptionInfo`
- instance, containing the traceback.
- The return value of this handler is ignored.
- .. method:: on_success(self, retval, task_id, args, kwargs)
- Run by the worker if the task executes successfully.
- :param retval: The return value of the task.
- :param task_id: Unique id of the executed task.
- :param args: Original arguments for the executed task.
- :param kwargs: Original keyword arguments for the executed task.
- The return value of this handler is ignored.
- on_retry
- ~~~~~~~~
- .. _task-how-they-work:
- How it works
- ============
- Here comes the technical details, this part isn't something you need to know,
- but you may be interested.
- All defined tasks are listed in a registry. The registry contains
- a list of task names and their task classes. You can investigate this registry
- yourself:
- .. code-block:: python
- >>> from celery import current_app
- >>> current_app.tasks
- {'celery.chord_unlock':
- <@task: celery.chord_unlock>,
- 'celery.backend_cleanup':
- <@task: celery.backend_cleanup>,
- 'celery.chord':
- <@task: celery.chord>}
- This is the list of tasks built-in to celery. Note that tasks
- will only be registered when the module they are defined in is imported.
- The default loader imports any modules listed in the
- :setting:`CELERY_IMPORTS` setting.
- The entity responsible for registering your task in the registry is the
- metaclass: :class:`~celery.task.base.TaskType`.
- If you want to register your task manually you can mark the
- task as :attr:`~@Task.abstract`:
- .. code-block:: python
- class MyTask(Task):
- abstract = True
- This way the task won't be registered, but any task inheriting from
- it will be.
- When tasks are sent, no actual function code is sent with it, just the name
- of the task to execute. When the worker then receives the message it can look
- up the name in its task registry to find the execution code.
- This means that your workers should always be updated with the same software
- as the client. This is a drawback, but the alternative is a technical
- challenge that has yet to be solved.
- .. _task-best-practices:
- Tips and Best Practices
- =======================
- .. _task-ignore_results:
- Ignore results you don't want
- -----------------------------
- If you don't care about the results of a task, be sure to set the
- :attr:`~@Task.ignore_result` option, as storing results
- wastes time and resources.
- .. code-block:: python
- @app.task(ignore_result=True)
- def mytask(…):
- something()
- Results can even be disabled globally using the :setting:`CELERY_IGNORE_RESULT`
- setting.
- .. _task-disable-rate-limits:
- Disable rate limits if they're not used
- ---------------------------------------
- Disabling rate limits altogether is recommended if you don't have
- any tasks using them. This is because the rate limit subsystem introduces
- quite a lot of complexity.
- Set the :setting:`CELERY_DISABLE_RATE_LIMITS` setting to globally disable
- rate limits:
- .. code-block:: python
- CELERY_DISABLE_RATE_LIMITS = True
- You find additional optimization tips in the
- :ref:`Optimizing Guide <guide-optimizing>`.
- .. _task-synchronous-subtasks:
- Avoid launching synchronous subtasks
- ------------------------------------
- Having a task wait for the result of another task is really inefficient,
- and may even cause a deadlock if the worker pool is exhausted.
- Make your design asynchronous instead, for example by using *callbacks*.
- **Bad**:
- .. code-block:: python
- @app.task
- def update_page_info(url):
- page = fetch_page.delay(url).get()
- info = parse_page.delay(url, page).get()
- store_page_info.delay(url, info)
- @app.task
- def fetch_page(url):
- return myhttplib.get(url)
- @app.task
- def parse_page(url, page):
- return myparser.parse_document(page)
- @app.task
- def store_page_info(url, info):
- return PageInfo.objects.create(url, info)
- **Good**:
- .. code-block:: python
- def update_page_info(url):
- # fetch_page -> parse_page -> store_page
- chain = fetch_page.s() | parse_page.s() | store_page_info.s(url)
- chain()
- @app.task()
- def fetch_page(url):
- return myhttplib.get(url)
- @app.task()
- def parse_page(page):
- return myparser.parse_document(page)
- @app.task(ignore_result=True)
- def store_page_info(info, url):
- PageInfo.objects.create(url=url, info=info)
- Here I instead created a chain of tasks by linking together
- different :func:`~celery.subtask`'s.
- You can read about chains and other powerful constructs
- at :ref:`designing-workflows`.
- .. _task-performance-and-strategies:
- Performance and Strategies
- ==========================
- .. _task-granularity:
- Granularity
- -----------
- The task granularity is the amount of computation needed by each subtask.
- In general it is better to split the problem up into many small tasks, than
- have a few long running tasks.
- With smaller tasks you can process more tasks in parallel and the tasks
- won't run long enough to block the worker from processing other waiting tasks.
- However, executing a task does have overhead. A message needs to be sent, data
- may not be local, etc. So if the tasks are too fine-grained the additional
- overhead may not be worth it in the end.
- .. seealso::
- The book `Art of Concurrency`_ has a section dedicated to the topic
- of task granularity [AOC1]_.
- .. _`Art of Concurrency`: http://oreilly.com/catalog/9780596521547
- .. [AOC1] Breshears, Clay. Section 2.2.1, "The Art of Concurrency".
- O'Reilly Media, Inc. May 15, 2009. ISBN-13 978-0-596-52153-0.
- .. _task-data-locality:
- Data locality
- -------------
- The worker processing the task should be as close to the data as
- possible. The best would be to have a copy in memory, the worst would be a
- full transfer from another continent.
- If the data is far away, you could try to run another worker at location, or
- if that's not possible - cache often used data, or preload data you know
- is going to be used.
- The easiest way to share data between workers is to use a distributed cache
- system, like `memcached`_.
- .. seealso::
- The paper `Distributed Computing Economics`_ by Jim Gray is an excellent
- introduction to the topic of data locality.
- .. _`Distributed Computing Economics`:
- http://research.microsoft.com/pubs/70001/tr-2003-24.pdf
- .. _`memcached`: http://memcached.org/
- .. _task-state:
- State
- -----
- Since celery is a distributed system, you can't know in which process, or
- on what machine the task will be executed. You can't even know if the task will
- run in a timely manner.
- The ancient async sayings tells us that “asserting the world is the
- responsibility of the task”. What this means is that the world view may
- have changed since the task was requested, so the task is responsible for
- making sure the world is how it should be; If you have a task
- that re-indexes a search engine, and the search engine should only be
- re-indexed at maximum every 5 minutes, then it must be the tasks
- responsibility to assert that, not the callers.
- Another gotcha is Django model objects. They shouldn't be passed on as
- arguments to tasks. It's almost always better to re-fetch the object from
- the database when the task is running instead, as using old data may lead
- to race conditions.
- Imagine the following scenario where you have an article and a task
- that automatically expands some abbreviations in it:
- .. code-block:: python
- class Article(models.Model):
- title = models.CharField()
- body = models.TextField()
- @app.task
- def expand_abbreviations(article):
- article.body.replace('MyCorp', 'My Corporation')
- article.save()
- First, an author creates an article and saves it, then the author
- clicks on a button that initiates the abbreviation task::
- >>> article = Article.objects.get(id=102)
- >>> expand_abbreviations.delay(article)
- Now, the queue is very busy, so the task won't be run for another 2 minutes.
- In the meantime another author makes changes to the article, so
- when the task is finally run, the body of the article is reverted to the old
- version because the task had the old body in its argument.
- Fixing the race condition is easy, just use the article id instead, and
- re-fetch the article in the task body:
- .. code-block:: python
- @app.task
- def expand_abbreviations(article_id):
- article = Article.objects.get(id=article_id)
- article.body.replace('MyCorp', 'My Corporation')
- article.save()
- >>> expand_abbreviations(article_id)
- There might even be performance benefits to this approach, as sending large
- messages may be expensive.
- .. _task-database-transactions:
- Database transactions
- ---------------------
- Let's have a look at another example:
- .. code-block:: python
- from django.db import transaction
- @transaction.commit_on_success
- def create_article(request):
- article = Article.objects.create(…)
- expand_abbreviations.delay(article.pk)
- This is a Django view creating an article object in the database,
- then passing the primary key to a task. It uses the `commit_on_success`
- decorator, which will commit the transaction when the view returns, or
- roll back if the view raises an exception.
- There is a race condition if the task starts executing
- before the transaction has been committed; The database object does not exist
- yet!
- The solution is to *always commit transactions before sending tasks
- depending on state from the current transaction*:
- .. code-block:: python
- @transaction.commit_manually
- def create_article(request):
- try:
- article = Article.objects.create(…)
- except:
- transaction.rollback()
- raise
- else:
- transaction.commit()
- expand_abbreviations.delay(article.pk)
- .. _task-example:
- Example
- =======
- Let's take a real wold example; A blog where comments posted needs to be
- filtered for spam. When the comment is created, the spam filter runs in the
- background, so the user doesn't have to wait for it to finish.
- I have a Django blog application allowing comments
- on blog posts. I'll describe parts of the models/views and tasks for this
- application.
- blog/models.py
- --------------
- The comment model looks like this:
- .. code-block:: python
- from django.db import models
- from django.utils.translation import ugettext_lazy as _
- class Comment(models.Model):
- name = models.CharField(_('name'), max_length=64)
- email_address = models.EmailField(_('email address'))
- homepage = models.URLField(_('home page'),
- blank=True, verify_exists=False)
- comment = models.TextField(_('comment'))
- pub_date = models.DateTimeField(_('Published date'),
- editable=False, auto_add_now=True)
- is_spam = models.BooleanField(_('spam?'),
- default=False, editable=False)
- class Meta:
- verbose_name = _('comment')
- verbose_name_plural = _('comments')
- In the view where the comment is posted, I first write the comment
- to the database, then I launch the spam filter task in the background.
- .. _task-example-blog-views:
- blog/views.py
- -------------
- .. code-block:: python
- from django import forms
- from django.http import HttpResponseRedirect
- from django.template.context import RequestContext
- from django.shortcuts import get_object_or_404, render_to_response
- from blog import tasks
- from blog.models import Comment
- class CommentForm(forms.ModelForm):
- class Meta:
- model = Comment
- def add_comment(request, slug, template_name='comments/create.html'):
- post = get_object_or_404(Entry, slug=slug)
- remote_addr = request.META.get('REMOTE_ADDR')
- if request.method == 'post':
- form = CommentForm(request.POST, request.FILES)
- if form.is_valid():
- comment = form.save()
- # Check spam asynchronously.
- tasks.spam_filter.delay(comment_id=comment.id,
- remote_addr=remote_addr)
- return HttpResponseRedirect(post.get_absolute_url())
- else:
- form = CommentForm()
- context = RequestContext(request, {'form': form})
- return render_to_response(template_name, context_instance=context)
- To filter spam in comments I use `Akismet`_, the service
- used to filter spam in comments posted to the free weblog platform
- `Wordpress`. `Akismet`_ is free for personal use, but for commercial use you
- need to pay. You have to sign up to their service to get an API key.
- To make API calls to `Akismet`_ I use the `akismet.py`_ library written by
- `Michael Foord`_.
- .. _task-example-blog-tasks:
- blog/tasks.py
- -------------
- .. code-block:: python
- from celery import Celery
- from akismet import Akismet
- from django.core.exceptions import ImproperlyConfigured
- from django.contrib.sites.models import Site
- from blog.models import Comment
- app = Celery(broker='amqp://')
- @app.task
- def spam_filter(comment_id, remote_addr=None):
- logger = spam_filter.get_logger()
- logger.info('Running spam filter for comment %s', comment_id)
- comment = Comment.objects.get(pk=comment_id)
- current_domain = Site.objects.get_current().domain
- akismet = Akismet(settings.AKISMET_KEY, 'http://{0}'.format(domain))
- if not akismet.verify_key():
- raise ImproperlyConfigured('Invalid AKISMET_KEY')
- is_spam = akismet.comment_check(user_ip=remote_addr,
- comment_content=comment.comment,
- comment_author=comment.name,
- comment_author_email=comment.email_address)
- if is_spam:
- comment.is_spam = True
- comment.save()
- return is_spam
- .. _`Akismet`: http://akismet.com/faq/
- .. _`akismet.py`: http://www.voidspace.org.uk/downloads/akismet.py
- .. _`Michael Foord`: http://www.voidspace.org.uk/
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