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							- .. _guide-workers:
 
- ===============
 
-  Workers Guide
 
- ===============
 
- .. contents::
 
-     :local:
 
-     :depth: 1
 
- .. _worker-starting:
 
- Starting the worker
 
- ===================
 
- .. sidebar:: Daemonizing
 
-     You probably want to use a daemonization tool to start
 
-     in the background.  See :ref:`daemonizing` for help
 
-     detaching the worker using popular daemonization tools.
 
- You can start the worker in the foreground by executing the command:
 
- .. code-block:: bash
 
-     $ celery worker --app=app -l info
 
- For a full list of available command line options see
 
- :mod:`~celery.bin.celeryd`, or simply do:
 
- .. code-block:: bash
 
-     $ celery worker --help
 
- You can also start multiple workers on the same machine. If you do so
 
- be sure to give a unique name to each individual worker by specifying a
 
- host name with the :option:`--hostname|-n` argument:
 
- .. code-block:: bash
 
-     $ celery worker --loglevel=INFO --concurrency=10 -n worker1.example.com
 
-     $ celery worker --loglevel=INFO --concurrency=10 -n worker2.example.com
 
-     $ celery worker --loglevel=INFO --concurrency=10 -n worker3.example.com
 
- .. _worker-stopping:
 
- Stopping the worker
 
- ===================
 
- Shutdown should be accomplished using the :sig:`TERM` signal.
 
- When shutdown is initiated the worker will finish all currently executing
 
- tasks before it actually terminates, so if these tasks are important you should
 
- wait for it to finish before doing anything drastic (like sending the :sig:`KILL`
 
- signal).
 
- If the worker won't shutdown after considerate time, for example because
 
- of tasks stuck in an infinite-loop, you can use the :sig:`KILL` signal to
 
- force terminate the worker, but be aware that currently executing tasks will
 
- be lost (unless the tasks have the :attr:`~@Task.acks_late`
 
- option set).
 
- Also as processes can't override the :sig:`KILL` signal, the worker will
 
- not be able to reap its children, so make sure to do so manually.  This
 
- command usually does the trick:
 
- .. code-block:: bash
 
-     $ ps auxww | grep 'celery worker' | awk '{print $2}' | xargs kill -9
 
- .. _worker-restarting:
 
- Restarting the worker
 
- =====================
 
- Other than stopping then starting the worker to restart, you can also
 
- restart the worker using the :sig:`HUP` signal:
 
- .. code-block:: bash
 
-     $ kill -HUP $pid
 
- The worker will then replace itself with a new instance using the same
 
- arguments as it was started with.
 
- .. note::
 
-     Restarting by :sig:`HUP` only works if the worker is running
 
-     in the background as a daemon (it does not have a controlling
 
-     terminal).
 
-     :sig:`HUP` is disabled on OS X because of a limitation on
 
-     that platform.
 
- .. _worker-process-signals:
 
- Process Signals
 
- ===============
 
- The worker's main process overrides the following signals:
 
- +--------------+-------------------------------------------------+
 
- | :sig:`TERM`  | Warm shutdown, wait for tasks to complete.      |
 
- +--------------+-------------------------------------------------+
 
- | :sig:`QUIT`  | Cold shutdown, terminate ASAP                   |
 
- +--------------+-------------------------------------------------+
 
- | :sig:`USR1`  | Dump traceback for all active threads.          |
 
- +--------------+-------------------------------------------------+
 
- | :sig:`USR2`  | Remote debug, see :mod:`celery.contrib.rdb`.    |
 
- +--------------+-------------------------------------------------+
 
- .. _worker-concurrency:
 
- Concurrency
 
- ===========
 
- By default multiprocessing is used to perform concurrent execution of tasks,
 
- but you can also use :ref:`Eventlet <concurrency-eventlet>`.  The number
 
- of worker processes/threads can be changed using the :option:`--concurrency`
 
- argument and defaults to the number of CPUs available on the machine.
 
- .. admonition:: Number of processes (multiprocessing)
 
-     More pool processes are usually better, but there's a cut-off point where
 
-     adding more pool processes affects performance in negative ways.
 
-     There is even some evidence to support that having multiple worker
 
-     instances running, may perform better than having a single worker.
 
-     For example 3 workers with 10 pool processes each.  You need to experiment
 
-     to find the numbers that works best for you, as this varies based on
 
-     application, work load, task run times and other factors.
 
- .. _worker-remote-control:
 
- Remote control
 
- ==============
 
- .. versionadded:: 2.0
 
- .. sidebar:: The ``celery`` command
 
-     The :program:`celery` program is used to execute remote control
 
-     commands from the command line.  It supports all of the commands
 
-     listed below.  See :ref:`monitoring-celeryctl` for more information.
 
- pool support: *processes, eventlet, gevent*, blocking:*threads/solo* (see note)
 
- broker support: *amqp, redis, mongodb*
 
- Workers have the ability to be remote controlled using a high-priority
 
- broadcast message queue.  The commands can be directed to all, or a specific
 
- list of workers.
 
- Commands can also have replies.  The client can then wait for and collect
 
- those replies.  Since there's no central authority to know how many
 
- workers are available in the cluster, there is also no way to estimate
 
- how many workers may send a reply, so the client has a configurable
 
- timeout — the deadline in seconds for replies to arrive in.  This timeout
 
- defaults to one second.  If the worker doesn't reply within the deadline
 
- it doesn't necessarily mean the worker didn't reply, or worse is dead, but
 
- may simply be caused by network latency or the worker being slow at processing
 
- commands, so adjust the timeout accordingly.
 
- In addition to timeouts, the client can specify the maximum number
 
- of replies to wait for.  If a destination is specified, this limit is set
 
- to the number of destination hosts.
 
- .. note::
 
-     The solo and threads pool supports remote control commands,
 
-     but any task executing will block any waiting control command,
 
-     so it is of limited use if the worker is very busy.  In that
 
-     case you must increase the timeout waiting for replies in the client.
 
- .. _worker-broadcast-fun:
 
- The :meth:`~@control.broadcast` function.
 
- ----------------------------------------------------
 
- This is the client function used to send commands to the workers.
 
- Some remote control commands also have higher-level interfaces using
 
- :meth:`~@control.broadcast` in the background, like
 
- :meth:`~@control.rate_limit` and :meth:`~@control.ping`.
 
- Sending the :control:`rate_limit` command and keyword arguments::
 
-     >>> celery.control.broadcast('rate_limit',
 
-     ...                          arguments={'task_name': 'myapp.mytask',
 
-     ...                                     'rate_limit': '200/m'})
 
- This will send the command asynchronously, without waiting for a reply.
 
- To request a reply you have to use the `reply` argument::
 
-     >>> celery.control.broadcast('rate_limit', {
 
-     ...     'task_name': 'myapp.mytask', 'rate_limit': '200/m'}, reply=True)
 
-     [{'worker1.example.com': 'New rate limit set successfully'},
 
-      {'worker2.example.com': 'New rate limit set successfully'},
 
-      {'worker3.example.com': 'New rate limit set successfully'}]
 
- Using the `destination` argument you can specify a list of workers
 
- to receive the command::
 
-     >>> celery.control.broadcast('rate_limit', {
 
-     ...     'task_name': 'myapp.mytask',
 
-     ...     'rate_limit': '200/m'}, reply=True,
 
-     ...                             destination=['worker1.example.com'])
 
-     [{'worker1.example.com': 'New rate limit set successfully'}]
 
- Of course, using the higher-level interface to set rate limits is much
 
- more convenient, but there are commands that can only be requested
 
- using :meth:`~@control.broadcast`.
 
- .. control:: revoke
 
- Revoking tasks
 
- ==============
 
- pool support: all
 
- broker support: *amqp, redis, mongodb*
 
- All worker nodes keeps a memory of revoked task ids, either in-memory or
 
- persistent on disk (see :ref:`worker-persistent-revokes`).
 
- When a worker receives a revoke request it will skip executing
 
- the task, but it won't terminate an already executing task unless
 
- the `terminate` option is set.
 
- If `terminate` is set the worker child process processing the task
 
- will be terminated.  The default signal sent is `TERM`, but you can
 
- specify this using the `signal` argument.  Signal can be the uppercase name
 
- of any signal defined in the :mod:`signal` module in the Python Standard
 
- Library.
 
- Terminating a task also revokes it.
 
- **Example**
 
- ::
 
-     >>> celery.control.revoke('d9078da5-9915-40a0-bfa1-392c7bde42ed')
 
-     >>> celery.control.revoke('d9078da5-9915-40a0-bfa1-392c7bde42ed',
 
-     ...                       terminate=True)
 
-     >>> celery.control.revoke('d9078da5-9915-40a0-bfa1-392c7bde42ed',
 
-     ...                       terminate=True, signal='SIGKILL')
 
- .. _worker-persistent-revokes:
 
- Persistent revokes
 
- ------------------
 
- Revoking tasks works by sending a broadcast message to all the workers,
 
- the workers then keep a list of revoked tasks in memory.
 
- If you want tasks to remain revoked after worker restart you need to
 
- specify a file for these to be stored in, either by using the `--statedb`
 
- argument to :program:`celery worker` or the :setting:`CELERYD_STATE_DB`
 
- setting.
 
- Note that remote control commands must be working for revokes to work.
 
- Remote control commands are only supported by the RabbitMQ (amqp), Redis and MongDB
 
- transports at this point.
 
- .. _worker-time-limits:
 
- Time Limits
 
- ===========
 
- .. versionadded:: 2.0
 
- pool support: *processes*
 
- .. sidebar:: Soft, or hard?
 
-     The time limit is set in two values, `soft` and `hard`.
 
-     The soft time limit allows the task to catch an exception
 
-     to clean up before it is killed: the hard timeout is not catchable
 
-     and force terminates the task.
 
- A single task can potentially run forever, if you have lots of tasks
 
- waiting for some event that will never happen you will block the worker
 
- from processing new tasks indefinitely.  The best way to defend against
 
- this scenario happening is enabling time limits.
 
- The time limit (`--time-limit`) is the maximum number of seconds a task
 
- may run before the process executing it is terminated and replaced by a
 
- new process.  You can also enable a soft time limit (`--soft-time-limit`),
 
- this raises an exception the task can catch to clean up before the hard
 
- time limit kills it:
 
- .. code-block:: python
 
-     from myapp import celery
 
-     from celery.exceptions import SoftTimeLimitExceeded
 
-     @celery.task
 
-     def mytask():
 
-         try:
 
-             do_work()
 
-         except SoftTimeLimitExceeded:
 
-             clean_up_in_a_hurry()
 
- Time limits can also be set using the :setting:`CELERYD_TASK_TIME_LIMIT` /
 
- :setting:`CELERYD_TASK_SOFT_TIME_LIMIT` settings.
 
- .. note::
 
-     Time limits do not currently work on Windows and other
 
-     platforms that do not support the ``SIGUSR1`` signal.
 
- Changing time limits at runtime
 
- -------------------------------
 
- .. versionadded:: 2.3
 
- broker support: *amqp, redis, mongodb*
 
- There is a remote control command that enables you to change both soft
 
- and hard time limits for a task — named ``time_limit``.
 
- Example changing the time limit for the ``tasks.crawl_the_web`` task
 
- to have a soft time limit of one minute, and a hard time limit of
 
- two minutes::
 
-     >>> celery.control.time_limit('tasks.crawl_the_web',
 
-                                   soft=60, hard=120, reply=True)
 
-     [{'worker1.example.com': {'ok': 'time limits set successfully'}}]
 
- Only tasks that starts executing after the time limit change will be affected.
 
- .. _worker-rate-limits:
 
- Rate Limits
 
- ===========
 
- .. control:: rate_limit
 
- Changing rate-limits at runtime
 
- -------------------------------
 
- Example changing the rate limit for the `myapp.mytask` task to accept
 
- 200 tasks a minute on all servers::
 
-     >>> celery.control.rate_limit('myapp.mytask', '200/m')
 
- Example changing the rate limit on a single host by specifying the
 
- destination host name::
 
-     >>> celery.control.rate_limit('myapp.mytask', '200/m',
 
-     ...            destination=['worker1.example.com'])
 
- .. warning::
 
-     This won't affect workers with the
 
-     :setting:`CELERY_DISABLE_RATE_LIMITS` setting enabled.
 
- .. _worker-maxtasksperchild:
 
- Max tasks per child setting
 
- ===========================
 
- .. versionadded:: 2.0
 
- pool support: *processes*
 
- With this option you can configure the maximum number of tasks
 
- a worker can execute before it's replaced by a new process.
 
- This is useful if you have memory leaks you have no control over
 
- for example from closed source C extensions.
 
- The option can be set using the workers `--maxtasksperchild` argument
 
- or using the :setting:`CELERYD_MAX_TASKS_PER_CHILD` setting.
 
- .. _worker-autoscaling:
 
- Autoscaling
 
- ===========
 
- .. versionadded:: 2.2
 
- pool support: *processes*, *gevent*
 
- The *autoscaler* component is used to dynamically resize the pool
 
- based on load:
 
- - The autoscaler adds more pool processes when there is work to do,
 
-     - and starts removing processes when the workload is low.
 
- It's enabled by the :option:`--autoscale` option, which needs two
 
- numbers: the maximum and minimum number of pool processes::
 
-         --autoscale=AUTOSCALE
 
-              Enable autoscaling by providing
 
-              max_concurrency,min_concurrency.  Example:
 
-                --autoscale=10,3 (always keep 3 processes, but grow to
 
-               10 if necessary).
 
- You can also define your own rules for the autoscaler by subclassing
 
- :class:`~celery.worker.autoscaler.Autoscaler`.
 
- Some ideas for metrics include load average or the amount of memory available.
 
- You can specify a custom autoscaler with the :setting:`CELERYD_AUTOSCALER` setting.
 
- .. _worker-queues:
 
- Queues
 
- ======
 
- A worker instance can consume from any number of queues.
 
- By default it will consume from all queues defined in the
 
- :setting:`CELERY_QUEUES` setting (which if not specified defaults to the
 
- queue named ``celery``).
 
- You can specify what queues to consume from at startup,
 
- by giving a comma separated list of queues to the :option:`-Q` option:
 
- .. code-block:: bash
 
-     $ celery worker -l info -Q foo,bar,baz
 
- If the queue name is defined in :setting:`CELERY_QUEUES` it will use that
 
- configuration, but if it's not defined in the list of queues Celery will
 
- automatically generate a new queue for you (depending on the
 
- :setting:`CELERY_CREATE_MISSING_QUEUES` option).
 
- You can also tell the worker to start and stop consuming from a queue at
 
- runtime using the remote control commands :control:`add_consumer` and
 
- :control:`cancel_consumer`.
 
- .. control:: add_consumer
 
- Queues: Adding consumers
 
- ------------------------
 
- The :control:`add_consumer` control command will tell one or more workers
 
- to start consuming from a queue. This operation is idempotent.
 
- To tell all workers in the cluster to start consuming from a queue
 
- named "``foo``" you can use the :program:`celery control` program:
 
- .. code-block:: bash
 
-     $ celery control add_consumer foo
 
-     -> worker1.local: OK
 
-         started consuming from u'foo'
 
- If you want to specify a specific worker you can use the
 
- :option:`--destination`` argument:
 
- .. code-block:: bash
 
-     $ celery control add_consumer foo -d worker1.local
 
- The same can be accomplished dynamically using the :meth:`@control.add_consumer` method::
 
-     >>> myapp.control.add_consumer('foo', reply=True)
 
-     [{u'worker1.local': {u'ok': u"already consuming from u'foo'"}}]
 
-     >>> myapp.control.add_consumer('foo', reply=True,
 
-     ...                            destination=['worker1.local'])
 
-     [{u'worker1.local': {u'ok': u"already consuming from u'foo'"}}]
 
- By now I have only shown examples using automatic queues,
 
- If you need more control you can also specify the exchange, routing_key and
 
- even other options::
 
-     >>> myapp.control.add_consumer(
 
-     ...     queue='baz',
 
-     ...     exchange='ex',
 
-     ...     exchange_type='topic',
 
-     ...     routing_key='media.*',
 
-     ...     options={
 
-     ...         'queue_durable': False,
 
-     ...         'exchange_durable': False,
 
-     ...     },
 
-     ...     reply=True,
 
-     ...     destination=['worker1.local', 'worker2.local'])
 
- .. control:: cancel_consumer
 
- Queues: Cancelling consumers
 
- ----------------------------
 
- You can cancel a consumer by queue name using the :control:`cancel_consumer`
 
- control command.
 
- To force all workers in the cluster to cancel consuming from a queue
 
- you can use the :program:`celery control` program:
 
- .. code-block:: bash
 
-     $ celery control cancel_consumer foo
 
- The :option:`--destination` argument can be used to specify a worker, or a
 
- list of workers, to act on the command:
 
- .. code-block:: bash
 
-     $ celery control cancel_consumer foo -d worker1.local
 
- You can also cancel consumers programmatically using the
 
- :meth:`@control.cancel_consumer` method:
 
- .. code-block:: bash
 
-     >>> myapp.control.cancel_consumer('foo', reply=True)
 
-     [{u'worker1.local': {u'ok': u"no longer consuming from u'foo'"}}]
 
- .. control:: active_queues
 
- Queues: List of active queues
 
- -----------------------------
 
- You can get a list of queues that a worker consumes from by using
 
- the :control:`active_queues` control command:
 
- .. code-block:: bash
 
-     $ celery inspect active_queues
 
-     [...]
 
- Like all other remote control commands this also supports the
 
- :option:`--destination` argument used to specify which workers should
 
- reply to the request:
 
- .. code-block:: bash
 
-     $ celery inspect active_queues -d worker1.local
 
-     [...]
 
- This can also be done programmatically by using the
 
- :meth:`@control.inspect.active_queues` method::
 
-     >>> myapp.inspect().active_queues()
 
-     [...]
 
-     >>> myapp.inspect(['worker1.local']).active_queues()
 
-     [...]
 
- .. _worker-autoreloading:
 
- Autoreloading
 
- =============
 
- .. versionadded:: 2.5
 
- pool support: *processes, eventlet, gevent, threads, solo*
 
- Starting :program:`celery worker` with the :option:`--autoreload` option will
 
- enable the worker to watch for file system changes to all imported task
 
- modules imported (and also any non-task modules added to the
 
- :setting:`CELERY_IMPORTS` setting or the :option:`-I|--include` option).
 
- This is an experimental feature intended for use in development only,
 
- using auto-reload in production is discouraged as the behavior of reloading
 
- a module in Python is undefined, and may cause hard to diagnose bugs and
 
- crashes.  Celery uses the same approach as the auto-reloader found in e.g.
 
- the Django ``runserver`` command.
 
- When auto-reload is enabled the worker starts an additional thread
 
- that watches for changes in the file system.  New modules are imported,
 
- and already imported modules are reloaded whenever a change is detected,
 
- and if the processes pool is used the child processes will finish the work
 
- they are doing and exit, so that they can be replaced by fresh processes
 
- effectively reloading the code.
 
- File system notification backends are pluggable, and it comes with three
 
- implementations:
 
- * inotify (Linux)
 
-     Used if the :mod:`pyinotify` library is installed.
 
-     If you are running on Linux this is the recommended implementation,
 
-     to install the :mod:`pyinotify` library you have to run the following
 
-     command:
 
-     .. code-block:: bash
 
-         $ pip install pyinotify
 
- * kqueue (OS X/BSD)
 
- * stat
 
-     The fallback implementation simply polls the files using ``stat`` and is very
 
-     expensive.
 
- You can force an implementation by setting the :envvar:`CELERYD_FSNOTIFY`
 
- environment variable:
 
- .. code-block:: bash
 
-     $ env CELERYD_FSNOTIFY=stat celery worker -l info --autoreload
 
- .. _worker-autoreload:
 
- .. control:: pool_restart
 
- Pool Restart Command
 
- --------------------
 
- .. versionadded:: 2.5
 
- Requires the :setting:`CELERYD_POOL_RESTARTS` setting to be enabled.
 
- The remote control command :control:`pool_restart` sends restart requests to
 
- the workers child processes.  It is particularly useful for forcing
 
- the worker to import new modules, or for reloading already imported
 
- modules.  This command does not interrupt executing tasks.
 
- Example
 
- ~~~~~~~
 
- Running the following command will result in the `foo` and `bar` modules
 
- being imported by the worker processes:
 
- .. code-block:: python
 
-     >>> celery.control.broadcast('pool_restart',
 
-     ...                          arguments={'modules': ['foo', 'bar']})
 
- Use the ``reload`` argument to reload modules it has already imported:
 
- .. code-block:: python
 
-     >>> celery.control.broadcast('pool_restart',
 
-     ...                          arguments={'modules': ['foo'],
 
-     ...                                     'reload': True})
 
- If you don't specify any modules then all known tasks modules will
 
- be imported/reloaded:
 
- .. code-block:: python
 
-     >>> celery.control.broadcast('pool_restart', arguments={'reload': True})
 
- The ``modules`` argument is a list of modules to modify. ``reload``
 
- specifies whether to reload modules if they have previously been imported.
 
- By default ``reload`` is disabled. The `pool_restart` command uses the
 
- Python :func:`reload` function to reload modules, or you can provide
 
- your own custom reloader by passing the ``reloader`` argument.
 
- .. note::
 
-     Module reloading comes with caveats that are documented in :func:`reload`.
 
-     Please read this documentation and make sure your modules are suitable
 
-     for reloading.
 
- .. seealso::
 
-     - http://pyunit.sourceforge.net/notes/reloading.html
 
-     - http://www.indelible.org/ink/python-reloading/
 
-     - http://docs.python.org/library/functions.html#reload
 
- .. _worker-inspect:
 
- Inspecting workers
 
- ==================
 
- :class:`@control.inspect` lets you inspect running workers.  It
 
- uses remote control commands under the hood.
 
- You can also use the ``celery`` command to inspect workers,
 
- and it supports the same commands as the :class:`@Celery.control` interface.
 
- .. code-block:: python
 
-     # Inspect all nodes.
 
-     >>> i = celery.control.inspect()
 
-     # Specify multiple nodes to inspect.
 
-     >>> i = celery.control.inspect(['worker1.example.com',
 
-                                     'worker2.example.com'])
 
-     # Specify a single node to inspect.
 
-     >>> i = celery.control.inspect('worker1.example.com')
 
- .. _worker-inspect-registered-tasks:
 
- Dump of registered tasks
 
- ------------------------
 
- You can get a list of tasks registered in the worker using the
 
- :meth:`~@control.inspect.registered`::
 
-     >>> i.registered()
 
-     [{'worker1.example.com': ['tasks.add',
 
-                               'tasks.sleeptask']}]
 
- .. _worker-inspect-active-tasks:
 
- Dump of currently executing tasks
 
- ---------------------------------
 
- You can get a list of active tasks using
 
- :meth:`~@control.inspect.active`::
 
-     >>> i.active()
 
-     [{'worker1.example.com':
 
-         [{'name': 'tasks.sleeptask',
 
-           'id': '32666e9b-809c-41fa-8e93-5ae0c80afbbf',
 
-           'args': '(8,)',
 
-           'kwargs': '{}'}]}]
 
- .. _worker-inspect-eta-schedule:
 
- Dump of scheduled (ETA) tasks
 
- -----------------------------
 
- You can get a list of tasks waiting to be scheduled by using
 
- :meth:`~@control.inspect.scheduled`::
 
-     >>> i.scheduled()
 
-     [{'worker1.example.com':
 
-         [{'eta': '2010-06-07 09:07:52', 'priority': 0,
 
-           'request': {
 
-             'name': 'tasks.sleeptask',
 
-             'id': '1a7980ea-8b19-413e-91d2-0b74f3844c4d',
 
-             'args': '[1]',
 
-             'kwargs': '{}'}},
 
-          {'eta': '2010-06-07 09:07:53', 'priority': 0,
 
-           'request': {
 
-             'name': 'tasks.sleeptask',
 
-             'id': '49661b9a-aa22-4120-94b7-9ee8031d219d',
 
-             'args': '[2]',
 
-             'kwargs': '{}'}}]}]
 
- .. note::
 
-     These are tasks with an eta/countdown argument, not periodic tasks.
 
- .. _worker-inspect-reserved:
 
- Dump of reserved tasks
 
- ----------------------
 
- Reserved tasks are tasks that has been received, but is still waiting to be
 
- executed.
 
- You can get a list of these using
 
- :meth:`~@control.inspect.reserved`::
 
-     >>> i.reserved()
 
-     [{'worker1.example.com':
 
-         [{'name': 'tasks.sleeptask',
 
-           'id': '32666e9b-809c-41fa-8e93-5ae0c80afbbf',
 
-           'args': '(8,)',
 
-           'kwargs': '{}'}]}]
 
- Additional Commands
 
- ===================
 
- .. control:: shutdown
 
- Remote shutdown
 
- ---------------
 
- This command will gracefully shut down the worker remotely::
 
-     >>> celery.control.broadcast('shutdown') # shutdown all workers
 
-     >>> celery.control.broadcast('shutdown, destination='worker1.example.com')
 
- .. control:: ping
 
- Ping
 
- ----
 
- This command requests a ping from alive workers.
 
- The workers reply with the string 'pong', and that's just about it.
 
- It will use the default one second timeout for replies unless you specify
 
- a custom timeout::
 
-     >>> celery.control.ping(timeout=0.5)
 
-     [{'worker1.example.com': 'pong'},
 
-      {'worker2.example.com': 'pong'},
 
-      {'worker3.example.com': 'pong'}]
 
- :meth:`~@control.ping` also supports the `destination` argument,
 
- so you can specify which workers to ping::
 
-     >>> ping(['worker2.example.com', 'worker3.example.com'])
 
-     [{'worker2.example.com': 'pong'},
 
-      {'worker3.example.com': 'pong'}]
 
- .. _worker-enable-events:
 
- .. control:: enable_events
 
- .. control:: disable_events
 
- Enable/disable events
 
- ---------------------
 
- You can enable/disable events by using the `enable_events`,
 
- `disable_events` commands.  This is useful to temporarily monitor
 
- a worker using :program:`celery events`/:program:`celerymon`.
 
- .. code-block:: python
 
-     >>> celery.control.enable_events()
 
-     >>> celery.control.disable_events()
 
- .. _worker-custom-control-commands:
 
- Writing your own remote control commands
 
- ========================================
 
- Remote control commands are registered in the control panel and
 
- they take a single argument: the current
 
- :class:`~celery.worker.control.ControlDispatch` instance.
 
- From there you have access to the active
 
- :class:`~celery.worker.consumer.Consumer` if needed.
 
- Here's an example control command that restarts the broker connection:
 
- .. code-block:: python
 
-     from celery.worker.control import Panel
 
-     @Panel.register
 
-     def reset_connection(panel):
 
-         panel.consumer.reset_connection()
 
-         return {'ok': 'connection reset'}
 
 
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