| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317318319320321322323324325326327328329330331332333334335336337338339340341342343344345346347348349350351352353 | =============== Workers Guide===============.. contents::    :local:Starting the worker===================You can start celeryd to run in the foreground by executing the command::    $ celeryd --loglevel=INFOYou probably want to use a daemonization tool to start``celeryd`` in the background. See :doc:`../cookbook/daemonizing` for helpstarting celeryd with some of the most popular daemonization tools.For a full list of available command line options see:mod:`~celery.bin.celeryd`, or simply execute the command::    $ celeryd --helpYou can also start multiple celeryd's on the same machine. If you do sobe sure to give a unique name to each individual worker by specifying ahostname with the ``--hostname|-n`` argument::    $ celeryd --loglevel=INFO --concurrency=10 -n worker1.example.com    $ celeryd --loglevel=INFO --concurrency=10 -n worker2.example.com    $ celeryd --loglevel=INFO --concurrency=10 -n worker3.example.comStopping the worker===================Shutdown should be accomplished using the ``TERM`` signal.When shutdown is initiated the worker will finish any tasks it's currentlyexecuting before it terminates, so if these tasks are important you shouldwait for it to finish before doing anything drastic (like sending the ``KILL``signal).If the worker won't shutdown after considerate time, for example becauseof tasks stuck in an infinite-loop, you can use the ``KILL`` signal toforce terminate the worker, but be aware that currently executing tasks willbe lost (unless the tasks have the :attr:`~celery.task.base.Task.acks_late`option set).Also, since the ``KILL`` signal can't be catched by processes the worker willnot be able to reap its children so make sure you do it manually. Thiscommand usually does the trick::    $ ps auxww | grep celeryd | awk '{print $2}' | xargs kill -9Restarting the worker=====================Other than stopping then starting the worker to restart, you can alsorestart the worker using the ``HUP`` signal::    $ kill -HUP $pidThe worker will then replace itself with a new instance using the samearguments as it was started with.Concurrency===========Multiprocessing is used to perform concurrent execution of tasks. The numberof worker processes can be changed using the ``--concurrency`` argument anddefaults to the number of CPUs available.More worker processes are usually better, but there's a cut-off point whereadding more processes affects performance in negative ways.There is even some evidence to support that having multiple celeryd's running,may perform better than having a single worker. For example 3 celeryd's with10 worker processes each, but you need to experiment to find the values thatworks best for you as this varies based on application, work load, taskrun times and other factors.Time limits===========A single task can potentially run forever, if you have lots of taskswaiting for some event that will never happen you will block the workerfrom processing new tasks indefinitely. The best way to defend againstthis scenario happening is enabling time limits.The time limit (``--time-limit``) is the maximum number of seconds a taskmay run before the process executing it is terminated and replaced by anew 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 hardtime limit kills it:.. code-block:: python    from celery.decorators import task    from celery.exceptions import SoftTimeLimitExceeded    @task()    def mytask():        try:            do_work()        except SoftTimeLimitExceeded:            clean_up_in_a_hurry()Time limits can also be set using the ``CELERYD_TASK_TIME_LIMIT`` /``CELERYD_SOFT_TASK_TIME_LIMIT`` settings.**NOTE** Time limits does not currently work on Windows.Max tasks per child setting===========================With this option you can configure the maximum number of tasksa worker can execute before it's replaced by a new process.This is useful if you have memory leaks you have no control overfor example from closed source C extensions.The option can be set using the ``--maxtasksperchild`` argumentto ``celeryd`` or using the ``CELERYD_MAX_TASKS_PER_CHILD`` setting.Remote control==============Workers have the ability to be remote controlled using a high-prioritybroadcast message queue. The commands can be directed to all, or a specificlist of workers.Commands can also have replies. The client can then wait for and collectthose replies, but since there's no central authority to know how manyworkers are available in the cluster, there is also no way to estimatehow many workers may send a reply. Therefore the client has a configurabletimeout — the deadline in seconds for replies to arrive in. This timeoutdefaults to one second. If the worker doesn't reply within the deadlineit doesn't necessarily mean the worker didn't reply, or worse is dead, butmay simply be caused by network latency or the worker being slow at processingcommands, so adjust the timeout accordingly.In addition to timeouts, the client can specify the maximum numberof replies to wait for. If a destination is specified this limit is setto the number of destination hosts.The :func:`~celery.task.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:func:`~celery.task.control.broadcast` in the background, like:func:`~celery.task.control.rate_limit` and :func:`~celery.task.control.ping`.Sending the ``rate_limit`` command and keyword arguments::    >>> from celery.task.control import broadcast    >>> 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::    >>> 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 workersto receive the command::    >>> broadcast    >>> 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 muchmore convenient, but there are commands that can only be requestedusing :func:`~celery.task.control.broadcast`.Rate limits-----------Example changing the rate limit for the ``myapp.mytask`` task to accept200 tasks a minute on all servers:    >>> from celery.task.control import rate_limit    >>> rate_limit("myapp.mytask", "200/m")Example changing the rate limit on a single host by specifying thedestination hostname::    >>> rate_limit("myapp.mytask", "200/m",    ...            destination=["worker1.example.com"])**NOTE** This won't affect workers with the ``CELERY_DISABLE_RATE_LIMITS``setting on. To re-enable rate limits then you have to restart the worker.Remote shutdown---------------This command will gracefully shut down the worker remotely::    >>> broadcast("shutdown") # shutdown all workers    >>> broadcast("shutdown, destination="worker1.example.com")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 specifya custom timeout::    >>> from celery.task.control import ping    >>> ping(timeout=0.5)    [{'worker1.example.com': 'pong'},     {'worker2.example.com': 'pong'},     {'worker3.example.com': 'pong'}]:func:`~celery.task.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'}]Enable/disable events---------------------You can enable/disable events by using the ``enable_events``,``disable_events`` commands. This is useful to temporarily monitora worker using celeryev/celerymon.    >>> broadcast("enable_events")    >>> broadcast("disable_events")Writing your own remote control commands----------------------------------------Remote control commands are registered in the control panel andthey take a single argument: the current:class:`~celery.worker.control.ControlDispatch` instance.From there you have access to the active:class:`celery.worker.listener.CarrotListener` 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.logger.critical("Connection reset by remote control.")        panel.listener.reset_connection()        return {"ok": "connection reset"}These can be added to task modules, or you can keep them in their own modulethen import them using the ``CELERY_IMPORTS`` setting::    CELERY_IMPORTS = ("myapp.worker.control", )Inspecting workers==================:class:`celery.task.control.inspect` lets you inspect running workers. It usesremote control commands under the hood... code-block:: python    >>> from celery.task.control import inspect    # Inspect all nodes.    >>> i = inspect()    # Specify multiple nodes to inspect.    >>> i = inspect(["worker1.example.com", "worker2.example.com"])    # Specify a single node to inspect.    >>> i = inspect("worker1.example.com")Dump of registered tasks------------------------You can get a list of tasks registered in the worker using the:meth:`~celery.task.control.inspect.registered_tasks`::    >>> i.registered_tasks()    [{'worker1.example.com': ['celery.delete_expired_task_meta',                              'celery.execute_remote',                              'celery.map_async',                              'celery.ping',                              'celery.task.http.HttpDispatchTask',                              'tasks.add',                              'tasks.sleeptask']}]Dump of currently executing tasks---------------------------------You can get a list of active tasks using:meth:`~celery.task.control.inspect.active`::    >>> i.active()    [{'worker1.example.com':        [{"name": "tasks.sleeptask",          "id": "32666e9b-809c-41fa-8e93-5ae0c80afbbf",          "args": "(8,)",          "kwargs": "{}"}]}]Dump of scheduled (ETA) tasks-----------------------------You can get a list of tasks waiting to be scheduled by using:meth:`~celery.task.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 that these are tasks with an eta/countdown argument, not periodic tasks.Dump of reserved tasks----------------------Reserved tasks are tasks that has been received, but is still waiting to beexecuted.You can get a list of these using:meth:`~celery.task.control.inspect.reserved`::    >>> i.reserved()    [{'worker1.example.com':        [{"name": "tasks.sleeptask",          "id": "32666e9b-809c-41fa-8e93-5ae0c80afbbf",          "args": "(8,)",          "kwargs": "{}"}]}]
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