#
# Copyright (C) 2007-2016 CEA/DAM
# Copyright (C) 2015-2017 Stephane Thiell <sthiell@stanford.edu>
#
# This file is part of ClusterShell.
#
# ClusterShell is free software; you can redistribute it and/or
# modify it under the terms of the GNU Lesser General Public
# License as published by the Free Software Foundation; either
# version 2.1 of the License, or (at your option) any later version.
#
# ClusterShell is distributed in the hope that it will be useful,
# but WITHOUT ANY WARRANTY; without even the implied warranty of
# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU
# Lesser General Public License for more details.
#
# You should have received a copy of the GNU Lesser General Public
# License along with ClusterShell; if not, write to the Free Software
# Foundation, Inc., 51 Franklin Street, Fifth Floor, Boston, MA 02110-1301 USA
"""
ClusterShell Task module.
Simple example of use:
>>> from ClusterShell.Task import task_self, NodeSet
>>>
>>> # get task associated with calling thread
... task = task_self()
>>>
>>> # add a command to execute on distant nodes
... task.shell("/bin/uname -r", nodes="tiger[1-30,35]")
<ClusterShell.Worker.Ssh.WorkerSsh object at 0x7f41da71b890>
>>>
>>> # run task in calling thread
... task.run()
>>>
>>> # get results
... for output, nodelist in task.iter_buffers():
... print('%s: %s' % (NodeSet.fromlist(nodelist), output.message().decode()))
...
"""
from __future__ import print_function
import logging
from operator import itemgetter
import os
import socket
import sys
import threading
from time import sleep
import traceback
try:
basestring
except NameError: # Python 3 compat
basestring = str
from ClusterShell.Defaults import config_paths, DEFAULTS
from ClusterShell.Defaults import _local_workerclass, _distant_workerclass, _load_workerclass
from ClusterShell.Engine.Engine import EngineAbortException
from ClusterShell.Engine.Engine import EngineTimeoutException
from ClusterShell.Engine.Engine import EngineAlreadyRunningError
from ClusterShell.Engine.Engine import EngineTimer
from ClusterShell.Engine.Factory import PreferredEngine
from ClusterShell.Worker.EngineClient import EnginePort, EngineClientError
from ClusterShell.Worker.Popen import WorkerPopen
from ClusterShell.Worker.Tree import TreeWorker
from ClusterShell.Worker.Worker import FANOUT_UNLIMITED
from ClusterShell.Event import EventHandler
from ClusterShell.MsgTree import MsgTree
from ClusterShell.NodeSet import NodeSet
from ClusterShell.Topology import TopologyParser, TopologyError
from ClusterShell.Propagation import PropagationTreeRouter, PropagationChannel
class TaskException(Exception):
"""Base task exception."""
class TaskError(TaskException):
"""Base task error exception."""
class TimeoutError(TaskError):
"""Raised when the task timed out."""
class AlreadyRunningError(TaskError):
"""Raised when trying to resume an already running task."""
class TaskMsgTreeError(TaskError):
"""Raised when trying to access disabled MsgTree."""
def _getshorthostname():
"""Get short hostname (host name cut at the first dot)"""
return socket.gethostname().split('.')[0]
[docs]
class Task(object):
"""
The Task class defines an essential ClusterShell object which aims to
execute commands in parallel and easily get their results.
More precisely, a Task object manages a coordinated (ie. with respect of
its current parameters) collection of independent parallel Worker objects.
See ClusterShell.Worker.Worker for further details on ClusterShell Workers.
Always bound to a specific thread, a Task object acts like a "thread
singleton". So most of the time, and even more for single-threaded
applications, you can get the current task object with the following
top-level Task module function:
>>> task = task_self()
However, if you want to create a task in a new thread, use:
>>> task = Task()
To create or get the instance of the task associated with the thread
object thr (threading.Thread):
>>> task = Task(thread=thr)
To submit a command to execute locally within task, use:
>>> task.shell("/bin/hostname")
To submit a command to execute to some distant nodes in parallel, use:
>>> task.shell("/bin/hostname", nodes="tiger[1-20]")
The previous examples submit commands to execute but do not allow result
interaction during their execution. For your program to interact during
command execution, it has to define event handlers that will listen for
local or remote events. These handlers are based on the EventHandler
class, defined in ClusterShell.Event. The following example shows how to
submit a command on a cluster with a registered event handler:
>>> task.shell("uname -r", nodes="node[1-9]", handler=MyEventHandler())
Run task in its associated thread (will block only if the calling thread is
the task associated thread):
>>> task.resume()
or:
>>> task.run()
You can also pass arguments to task.run() to schedule a command exactly
like in task.shell(), and run it:
>>> task.run("hostname", nodes="tiger[1-20]", handler=MyEventHandler())
A common need is to set a maximum delay for command execution, especially
when the command time is not known. Doing this with ClusterShell Task is
very straightforward. To limit the execution time on each node, use the
timeout parameter of shell() or run() methods to set a delay in seconds,
like:
>>> task.run("check_network.sh", nodes="tiger[1-20]", timeout=30)
You can then either use Task's iter_keys_timeout() method after execution
to see on what nodes the command has timed out, or listen for ev_close()
events in your event handler and check the timedout boolean.
To get command result, you can either use Task's iter_buffers() method for
standard output, iter_errors() for standard error after command execution
(common output contents are automatically gathered), or you can listen for
ev_read() events in your event handler and get live command output.
To get command return codes, you can either use Task's iter_retcodes(),
node_retcode() and max_retcode() methods after command execution, or
listen for ev_hup() events in your event handler.
"""
# topology.conf file path list
TOPOLOGY_CONFIGS = config_paths('topology.conf')
_tasks = {}
_taskid_max = 0
_task_lock = threading.Lock()
class _SyncMsgHandler(EventHandler):
"""Special task control port event handler.
When a message is received on the port, call appropriate
task method."""
def __init__(self, task):
EventHandler.__init__(self)
self.task = task
def ev_msg(self, port, msg):
"""Message received: call appropriate task method."""
# pull out function and its arguments from message
func, (args, kwargs) = msg[0], msg[1:]
# call task method
func(self.task, *args, **kwargs)
[docs]
class tasksyncmethod(object):
"""Class encapsulating a function that checks if the calling
task is running or is the current task, and allowing it to be
used as a decorator making the wrapped task method thread-safe."""
[docs]
def __call__(self, f):
def taskfunc(*args, **kwargs):
# pull out the class instance
task, fargs = args[0], args[1:]
# check if the calling task is the current thread task
if task._is_task_self():
return f(task, *fargs, **kwargs)
elif task._dispatch_port:
# no, safely call the task method by message
# through the task special dispatch port
task._dispatch_port.msg_send((f, fargs, kwargs))
else:
task.info("print_debug")(task, "%s: dropped call: %s" % \
(task, str(fargs)))
# modify the decorator meta-data for pydoc
# Note: should be later replaced by @wraps (functools)
# as of Python 2.5
taskfunc.__name__ = f.__name__
taskfunc.__doc__ = f.__doc__
taskfunc.__dict__ = f.__dict__
taskfunc.__module__ = f.__module__
return taskfunc
class _SuspendCondition(object):
"""Special class to manage task suspend condition."""
def __init__(self, lock=threading.RLock(), initial=0):
self._cond = threading.Condition(lock)
self.suspend_count = initial
def atomic_inc(self):
"""Increase suspend count."""
self._cond.acquire()
self.suspend_count += 1
self._cond.release()
def atomic_dec(self):
"""Decrease suspend count."""
self._cond.acquire()
self.suspend_count -= 1
self._cond.release()
def wait_check(self, release_lock=None):
"""Wait for condition if needed."""
self._cond.acquire()
try:
if self.suspend_count > 0:
if release_lock:
release_lock.release()
self._cond.wait()
finally:
self._cond.release()
def notify_all(self):
"""Signal all threads waiting for condition."""
self._cond.acquire()
try:
self.suspend_count = min(self.suspend_count, 0)
self._cond.notify_all()
finally:
self._cond.release()
[docs]
def __new__(cls, thread=None, defaults=None):
"""
For task bound to a specific thread, this class acts like a
"thread singleton", so new style class is used and new object
are only instantiated if needed.
"""
if thread:
if thread not in cls._tasks:
cls._tasks[thread] = object.__new__(cls)
return cls._tasks[thread]
return object.__new__(cls)
[docs]
def __init__(self, thread=None, defaults=None):
"""Initialize a Task, creating a new non-daemonic thread if
needed."""
if not getattr(self, "_engine", None):
# first time called
self._default_lock = threading.Lock()
if defaults is None:
defaults = DEFAULTS
self._default = defaults._task_default.copy()
self._default.update(
{"local_worker": _local_workerclass(defaults),
"distant_worker": _distant_workerclass(defaults)})
self._info = defaults._task_info.copy()
# use factory class PreferredEngine that gives the proper
# engine instance
self._engine = PreferredEngine(self.default("engine"), self._info)
self.timeout = None
# task synchronization objects
self._run_lock = threading.Lock() # primitive lock
self._suspend_lock = threading.RLock() # reentrant lock
# both join and suspend conditions share the same underlying lock
self._suspend_cond = Task._SuspendCondition(self._suspend_lock, 1)
self._join_cond = threading.Condition(self._suspend_lock)
self._suspended = False
self._quit = False
self._terminated = False
# Default router
self.topology = None
self.router = None
self.gateways = {}
# dict of MsgTree by sname
self._msgtrees = {}
# dict of sources to return codes
self._d_source_rc = {}
# dict of return codes to sources
self._d_rc_sources = {}
# keep max rc
self._max_rc = None
# keep timeout'd sources
self._timeout_sources = set()
# allow no-op call to getters before resume()
self._reset()
# special engine port for task method dispatching
self._dispatch_port = EnginePort(handler=Task._SyncMsgHandler(self),
autoclose=True)
self._engine.add(self._dispatch_port)
# set taskid used as Thread name
Task._task_lock.acquire()
Task._taskid_max += 1
self._taskid = Task._taskid_max
Task._task_lock.release()
# create new thread if needed
self._thread_foreign = bool(thread)
if self._thread_foreign:
self.thread = thread
else:
self.thread = thread = \
threading.Thread(None,
Task._thread_start,
"Task-%d" % self._taskid,
args=(self,))
Task._tasks[thread] = self
thread.start()
def _is_task_self(self):
"""Private method used by the library to check if the task is
task_self(), but do not create any task_self() instance."""
return self.thread == threading.current_thread()
[docs]
def default_excepthook(self, exc_type, exc_value, tb):
"""Default excepthook for a newly Task. When an exception is
raised and uncaught on Task thread, excepthook is called, which
is default_excepthook by default. Once excepthook overridden,
you can still call default_excepthook if needed."""
print('Exception in thread %s:' % self.thread, file=sys.stderr)
traceback.print_exception(exc_type, exc_value, tb, file=sys.stderr)
_excepthook = default_excepthook
def _getexcepthook(self):
return self._excepthook
def _setexcepthook(self, hook):
self._excepthook = hook
# If thread has not been created by us, install sys.excepthook which
# might handle uncaught exception.
if self._thread_foreign:
sys.excepthook = self._excepthook
# When an exception is raised and uncaught on Task's thread,
# excepthook is called. You may want to override this three
# arguments method (very similar of what you can do with
# sys.excepthook)."""
excepthook = property(_getexcepthook, _setexcepthook)
def _thread_start(self):
"""Task-managed thread entry point"""
while not self._quit:
self._suspend_cond.wait_check()
if self._quit: # may be set by abort()
break
try:
self._resume()
except:
self.excepthook(*sys.exc_info())
self._quit = True
self._terminate(kill=True)
def _run(self, timeout):
"""Run task (always called from its self thread)."""
# check if task is already running
if self._run_lock.locked():
raise AlreadyRunningError("task is already running")
# use with statement later
try:
self._run_lock.acquire()
self._engine.run(timeout)
finally:
self._run_lock.release()
def _default_tree_is_enabled(self):
"""Return whether default tree is enabled (load topology_file btw)"""
if self.topology is None:
for topology_file in self.TOPOLOGY_CONFIGS[::-1]:
if os.path.exists(topology_file):
self.load_topology(topology_file)
break
return (self.topology is not None) and self.default("auto_tree")
[docs]
def load_topology(self, topology_file):
"""Load propagation topology from provided file.
On success, task.topology is set to a corresponding TopologyTree
instance.
On failure, task.topology is left untouched and a TopologyError
exception is raised.
"""
self.topology = TopologyParser(topology_file).tree(_getshorthostname())
def _default_router(self, router=None):
"""
Helper to instantiate or bind a default PropagationTreeRouter
for the task which can then be shared by multiple workers.
Called by a TreeWorker when it is scheduled with this task.
"""
if router is None:
if self.router is None:
# Init router with the task's topology (e.g. root node)
self.router = \
PropagationTreeRouter(str(self.topology.root.nodeset),
self.topology)
else:
if self.router is not None:
# Update default router if a different one is used by a worker.
logger = logging.getLogger(__name__)
logger.debug("_default_router: overriding previous default " \
"router %s with %s", self.router, router)
self.router = router
return self.router
[docs]
def default(self, default_key, def_val=None):
"""
Return per-task value for key from the "default" dictionary.
See set_default() for a list of reserved task default_keys.
"""
self._default_lock.acquire()
try:
return self._default.get(default_key, def_val)
finally:
self._default_lock.release()
[docs]
def set_default(self, default_key, value):
"""
Set task value for specified key in the dictionary "default".
Users may store their own task-specific key, value pairs
using this method and retrieve them with default().
Task default_keys are:
- "stderr": Boolean value indicating whether to enable
stdout/stderr separation when using task.shell(), if not
specified explicitly (default: False).
- "stdin": Boolean value indicating whether to enable stdin when
using task.shell(), if not explicitly specified (default: True)
- "stdout_msgtree": Whether to instantiate standard output
MsgTree for automatic internal gathering of result messages
coming from Workers (default: True).
- "stderr_msgtree": Same for stderr (default: True).
- "engine": Used to specify an underlying Engine explicitly
(default: "auto").
- "port_qlimit": Size of port messages queue (default: 100).
- "local_workername": Worker name used when spawning workers
for local commands (default: "exec").
- "distant_workername": Worker name used when spawning workers
for distant commands (default: "ssh").
Threading considerations:
Unlike set_info(), when called from the task's thread or
not, set_default() immediately updates the underlying
dictionary in a thread-safe manner. This method doesn't
wake up the engine when called.
"""
self._default_lock.acquire()
try:
self._default[default_key] = value
if default_key == 'local_workername':
self._default['local_worker'] = _load_workerclass(value)
elif default_key == 'distant_workername':
self._default['distant_worker'] = _load_workerclass(value)
finally:
self._default_lock.release()
[docs]
def info(self, info_key, def_val=None):
"""
Return per-task information. See set_info() for a list of
reserved task info_keys.
"""
return self._info.get(info_key, def_val)
[docs]
@tasksyncmethod()
def set_info(self, info_key, value):
"""
Set task value for a specific key information. Key, value
pairs can be passed to the engine and/or workers.
Users may store their own task-specific info key, value pairs
using this method and retrieve them with info().
The following example changes the fanout value to 128:
>>> task.set_info('fanout', 128)
The following example enables debug messages:
>>> task.set_info('debug', True)
Task info_keys are:
- "debug": Boolean value indicating whether to enable library
debugging messages (default: False).
- "print_debug": Debug messages processing function. This
function takes 2 arguments: the task instance and the
message string (default: an internal function doing standard
print).
- "fanout": Max number of registered clients in Engine at a
time (default: 64).
- "grooming_delay": Message maximum end-to-end delay requirement
used for traffic grooming, in seconds as float (default: 0.25).
- "connect_timeout": Time in seconds to wait for connecting to
remote host before aborting (default: 10).
- "command_timeout": Time in seconds to wait for a command to
complete before aborting (default: 0, which means
unlimited).
- "tree_default:<key>": In tree mode, overrides the key <key>
in Defaults (settings normally set in defaults.conf)
Threading considerations:
Unlike set_default(), the underlying info dictionary is only
modified from the task's thread. So calling set_info() from
another thread leads to queueing the request for late apply
(at run time) using the task dispatch port. When received,
the request wakes up the engine when the task is running and
the info dictionary is then updated.
"""
self._info[info_key] = value
[docs]
def shell(self, command, **kwargs):
"""
Schedule a shell command for local or distant parallel execution. This
essential method creates a local or remote Worker (depending on the
presence of the nodes parameter) and immediately schedules it for
execution in task's runloop. So, if the task is already running
(ie. called from an event handler), the command is started immediately,
assuming current execution constraints are met (eg. fanout value). If
the task is not running, the command is not started but scheduled for
late execution. See resume() to start task runloop.
The following optional parameters are passed to the underlying local
or remote Worker constructor:
- handler: EventHandler instance to notify (on event) -- default is
no handler (None)
- timeout: command timeout delay expressed in second using a floating
point value -- default is unlimited (None)
- autoclose: if set to True, the underlying Worker is automatically
aborted as soon as all other non-autoclosing task objects (workers,
ports, timers) have finished -- default is False
- stderr: separate stdout/stderr if set to True -- default is False.
- stdin: enable stdin if set to True or prevent its use otherwise --
default is True.
Local usage:
task.shell(command [, key=key] [, handler=handler]
[, timeout=secs] [, autoclose=enable_autoclose]
[, stderr=enable_stderr][, stdin=enable_stdin]))
Distant usage:
task.shell(command, nodes=nodeset [, handler=handler]
[, timeout=secs], [, autoclose=enable_autoclose]
[, tree=None|False|True] [, remote=False|True]
[, stderr=enable_stderr][, stdin=enable_stdin]))
Example:
>>> task = task_self()
>>> task.shell("/bin/date", nodes="node[1-2345]")
>>> task.resume()
"""
handler = kwargs.get("handler", None)
timeo = kwargs.get("timeout", None)
autoclose = kwargs.get("autoclose", False)
stderr = kwargs.get("stderr", self.default("stderr"))
stdin = kwargs.get("stdin", self.default("stdin"))
remote = kwargs.get("remote", True)
if kwargs.get("nodes", None):
assert kwargs.get("key", None) is None, \
"'key' argument not supported for distant command"
tree = kwargs.get("tree")
# tree == None means auto
if tree != False and self._default_tree_is_enabled():
# fail if tree is forced without any topology
if tree and self.topology is None:
raise TaskError("tree mode required for distant shell "
"command with unknown topology!")
# create tree worker
wrkcls = TreeWorker
elif not remote:
# create local worker
wrkcls = self.default('local_worker')
else:
# create distant worker
wrkcls = self.default('distant_worker')
worker = wrkcls(NodeSet(kwargs["nodes"]), command=command,
handler=handler, stderr=stderr,
timeout=timeo, autoclose=autoclose, remote=remote)
else:
# create old fashioned local worker
worker = WorkerPopen(command, key=kwargs.get("key", None),
handler=handler, stderr=stderr,
timeout=timeo, autoclose=autoclose)
if not stdin:
try:
worker.set_write_eof() # prevent reading from stdin
except EngineClientError: # not all workers support writing
pass
# schedule worker for execution in this task
self.schedule(worker)
return worker
[docs]
def copy(self, source, dest, nodes, **kwargs):
"""
Copy local file to distant nodes.
Note: in tree mode, copy and rcopy always separate stderr so that
the internal tar/scp error messages are not merged into stdout; an
explicit stderr=False is then ignored.
"""
assert nodes != None, "local copy not supported"
handler = kwargs.get("handler", None)
stderr = kwargs.get("stderr", self.default("stderr"))
timeo = kwargs.get("timeout", None)
preserve = kwargs.get("preserve", None)
reverse = kwargs.get("reverse", False)
tree = kwargs.get("tree")
# tree == None means auto
if tree != False and self._default_tree_is_enabled():
# fail if tree is forced without any topology
if tree and self.topology is None:
raise TaskError("tree mode required for distant shell "
"command with unknown topology!")
# create tree worker
wrkcls = TreeWorker
else:
# create a new copy worker
wrkcls = self.default('distant_worker')
worker = wrkcls(nodes, source=source, dest=dest, handler=handler,
stderr=stderr, timeout=timeo, preserve=preserve,
reverse=reverse)
self.schedule(worker)
return worker
[docs]
def rcopy(self, source, dest, nodes, **kwargs):
"""
Copy distant file or directory to local node.
"""
kwargs['reverse'] = True
return self.copy(source, dest, nodes, **kwargs)
@tasksyncmethod()
def _add_port(self, port):
"""Add an EnginePort instance to Engine (private method)."""
self._engine.add(port)
[docs]
@tasksyncmethod()
def remove_port(self, port):
"""Close and remove a port from task previously created with port()."""
self._engine.remove(port)
[docs]
def port(self, handler=None, autoclose=False):
"""
Create a new task port. A task port is an abstraction object to
deliver messages reliably between tasks.
Basic rules:
- A task can send messages to another task port (thread safe).
- A task can receive messages from an acquired port either by
setting up a notification mechanism or using a polling
mechanism that may block the task waiting for a message
sent on the port.
- A port can be acquired by one task only.
If handler is set to a valid EventHandler object, the port is
a send-once port, ie. a message sent to this port generates an
ev_msg event notification issued the port's task. If handler
is not set, the task can only receive messages on the port by
calling port.msg_recv().
"""
port = EnginePort(handler, autoclose)
self._add_port(port)
return port
[docs]
def timer(self, fire, handler, interval=-1.0, autoclose=False):
"""
Create a timer bound to this task that fires at a preset time
in the future by invoking the ev_timer() method of *handler*
(provided EventHandler object). Timers can fire either only
once or repeatedly at fixed time intervals. Repeating timers
can also have their next firing time manually adjusted.
The mandatory parameter *fire* sets the firing delay in seconds.
The optional parameter *interval* sets the firing interval of
the timer. If not specified, the timer fires once and then is
automatically invalidated.
Time values are expressed in second using floating point
values. Precision is implementation (and system) dependent.
The optional parameter *autoclose*, if set to True, creates
an "autoclosing" timer: it will be automatically invalidated
as soon as all other non-autoclosing task's objects (workers,
ports, timers) have finished. Default value is False, which
means the timer will retain task's runloop until it is
invalidated.
Return a new EngineTimer instance.
See ClusterShell.Engine.Engine.EngineTimer for more details.
"""
assert fire >= 0.0, \
"timer's relative fire time must be a positive floating number"
timer = EngineTimer(fire, interval, autoclose, handler)
# The following method may be sent through msg port (async
# call) if called from another task.
self._add_timer(timer)
# always return new timer (sync)
return timer
@tasksyncmethod()
def _add_timer(self, timer):
"""Add a timer to task engine (thread-safe)."""
self._engine.add_timer(timer)
[docs]
@tasksyncmethod()
def schedule(self, worker):
"""
Schedule a worker for execution, ie. add worker in task running
loop. Worker will start processing immediately if the task is
running (eg. called from an event handler) or as soon as the
task is started otherwise. Only useful for manually instantiated
workers, for example:
>>> task = task_self()
>>> worker = WorkerSsh("node[2-3]", None, 10, command="/bin/ls")
>>> task.schedule(worker)
>>> task.resume()
"""
assert self in Task._tasks.values(), \
"deleted task instance, call task_self() again!"
# bind worker to task self
worker._set_task(self)
# add worker clients to engine
for client in worker._engine_clients():
self._engine.add(client)
def _resume_thread(self):
"""Resume task - called from another thread."""
self._suspend_cond.notify_all()
def _resume(self):
"""Resume task - called from self thread."""
assert self.thread == threading.current_thread()
try:
try:
self._reset()
self._run(self.timeout)
except EngineTimeoutException:
raise TimeoutError()
except EngineAbortException as exc:
self._terminate(exc.kill)
except EngineAlreadyRunningError:
raise AlreadyRunningError("task engine is already running")
finally:
# task becomes joinable
self._join_cond.acquire()
self._suspend_cond.atomic_inc()
self._join_cond.notify_all()
self._join_cond.release()
[docs]
def resume(self, timeout=None):
"""
Resume task. If task is task_self(), workers are executed in the
calling thread so this method will block until all (non-autoclosing)
workers have finished. This is always the case for a single-threaded
application (eg. which doesn't create other Task() instance than
task_self()). Otherwise, the current thread doesn't block. In that
case, you may then want to call task_wait() to wait for completion.
Warning: the timeout parameter can be used to set an hard limit of
task execution time (in seconds). In that case, a TimeoutError
exception is raised if this delay is reached. Its value is 0 by
default, which means no task time limit (TimeoutError is never
raised). In order to set a maximum delay for individual command
execution, you should use Task.shell()'s timeout parameter instead.
"""
# If you change options here, check Task.run() compatibility.
self.timeout = timeout
self._suspend_cond.atomic_dec()
if self._is_task_self():
self._resume()
else:
self._resume_thread()
[docs]
def run(self, command=None, **kwargs):
"""
With arguments, it will schedule a command exactly like a Task.shell()
would have done it and run it.
This is the easiest way to simply run a command.
>>> task.run("hostname", nodes="foo")
Without argument, it starts all outstanding actions.
It behaves like Task.resume().
>>> task.shell("hostname", nodes="foo")
>>> task.shell("hostname", nodes="bar")
>>> task.run()
When used with a command, you can set a maximum delay of individual
command execution with the help of the timeout parameter (see
Task.shell's parameters). You can then listen for ev_close() events
and check the timedout boolean in your Worker event handlers, or use
num_timeout() or iter_keys_timeout() afterwards.
But, when used as an alias to Task.resume(), the timeout parameter
sets an hard limit of task execution time. In that case, a TimeoutError
exception is raised if this delay is reached.
"""
worker = None
timeout = None
# Both resume() and shell() support a 'timeout' parameter. We need a
# trick to behave correctly for both cases.
#
# Here, we mock: task.resume(10)
if type(command) in (int, float):
timeout = command
command = None
# Here, we mock: task.resume(timeout=10)
elif 'timeout' in kwargs and command is None:
timeout = kwargs.pop('timeout')
# All other cases mean a classical: shell(...)
# we mock: task.shell("mycommand", [timeout=..., ...])
elif command is not None:
worker = self.shell(command, **kwargs)
self.resume(timeout)
return worker
@tasksyncmethod()
def _suspend_wait(self):
"""Suspend request received."""
assert task_self() == self
# atomically set suspend state
self._suspend_lock.acquire()
self._suspended = True
self._suspend_lock.release()
# wait for special suspend condition, while releasing l_run
self._suspend_cond.wait_check(self._run_lock)
# waking up, atomically unset suspend state
self._suspend_lock.acquire()
self._suspended = False
self._suspend_lock.release()
[docs]
def suspend(self):
"""
Suspend task execution. This method may be called from another
task (thread-safe). The function returns False if the task
cannot be suspended (eg. it's not running), or returns True if
the task has been successfully suspended.
To resume a suspended task, use task.resume().
"""
# first of all, increase suspend count
self._suspend_cond.atomic_inc()
# call synchronized suspend method
self._suspend_wait()
# wait for stopped task
self._run_lock.acquire() # run_lock ownership transfer
# get result: are we really suspended or just stopped?
result = True
self._suspend_lock.acquire()
if not self._suspended:
# not acknowledging suspend state, task is stopped
result = False
self._run_lock.release()
self._suspend_lock.release()
return result
@tasksyncmethod()
def _abort(self, kill=False):
"""Abort request received."""
assert task_self() == self
# raise an EngineAbortException when task is running
self._quit = True
self._engine.abort(kill)
[docs]
def abort(self, kill=False):
"""
Abort a task. Aborting a task removes (and stops when needed)
all workers. If optional parameter kill is True, the task
object is unbound from the current thread, so calling
task_self() creates a new Task object.
"""
if not self._run_lock.acquire(0):
# self._run_lock is locked, try to call synchronized method
self._abort(kill)
# but there is no guarantee that it has really been called, as the
# task could have aborted during the same time, so we use polling
while not self._run_lock.acquire(0):
sleep(0.001)
# in any case, once _run_lock has been acquired, confirm abort
self._quit = True
self._run_lock.release()
if self._is_task_self():
self._terminate(kill)
else:
# abort on stopped/suspended task
self._suspend_cond.notify_all()
def _terminate(self, kill):
"""
Abort completion subroutine.
"""
assert self._quit == True
# already fully terminated by a prior abort pass (#110)
if self._engine is None:
return
self._terminated = True
if kill:
# invalidate dispatch port
self._dispatch_port = None
# clear engine
self._engine.clear(clear_ports=kill)
if kill:
self._engine.release()
self._engine = None
# clear result objects
self._reset()
# unlock any remaining threads that are waiting for our
# termination (late join()s)
# must be called after _terminated is set to True
self._join_cond.acquire()
self._join_cond.notify_all()
self._join_cond.release()
# destroy task if needed
if kill:
Task._task_lock.acquire()
try:
del Task._tasks[threading.current_thread()]
finally:
Task._task_lock.release()
[docs]
def join(self):
"""
Suspend execution of the calling thread until the target task
terminates, unless the target task has already terminated.
"""
self._join_cond.acquire()
try:
if self._suspend_cond.suspend_count > 0 and not self._suspended:
# ignore stopped task
return
if self._terminated:
# ignore join() on dead task
return
self._join_cond.wait()
finally:
self._join_cond.release()
[docs]
def running(self):
"""
Return True if the task is running.
"""
return self._engine and self._engine.running
def _reset(self):
"""
Reset buffers and retcodes management variables.
"""
# reinit MsgTree dict
self._msgtrees = {}
# other re-init's
self._d_source_rc = {}
self._d_rc_sources = {}
self._max_rc = None
self._timeout_sources.clear()
def _msgtree(self, sname, strict=True):
"""Helper method to return msgtree instance by sname if allowed."""
if self.default("%s_msgtree" % sname):
if sname not in self._msgtrees:
self._msgtrees[sname] = MsgTree()
return self._msgtrees[sname]
elif strict:
raise TaskMsgTreeError("%s_msgtree not set" % sname)
def _msg_add(self, worker, node, sname, msg):
"""
Process a new message into Task's MsgTree that is coming from:
- a worker instance of this task
- a node
- a stream name sname (string identifier)
"""
assert worker.task == self, "better to add messages from my workers"
msgtree = self._msgtree(sname, strict=False)
# As strict=False, if msgtree is None, this means task is set to NOT
# record messages... in that case we ignore this request, still
# keeping possible existing MsgTree, thus allowing temporarily
# disabled ones.
if msgtree is not None:
msgtree.add((worker, node), msg)
def _rc_set(self, worker, node, rc):
"""
Add a worker return code (rc) that is coming from a node of a
worker instance.
"""
assert rc is not None
source = (worker, node)
# store rc by source
self._d_source_rc[source] = rc
# store source by rc
self._d_rc_sources.setdefault(rc, set()).add(source)
# update max rc
if self._max_rc is None or rc > self._max_rc:
self._max_rc = rc
def _timeout_add(self, worker, node):
"""
Add a timeout indicator that is coming from a node of a worker
instance.
"""
# store source in timeout set
self._timeout_sources.add((worker, node))
def _msg_by_source(self, worker, node, sname):
"""Get a message by its worker instance, node and stream name."""
msg = self._msgtree(sname).get((worker, node))
if msg is None:
return None
return bytes(msg)
def _call_tree_matcher(self, tree_match_func, match_keys=None, worker=None):
"""Call identified tree matcher (items, walk) method with options."""
if isinstance(match_keys, basestring): # change to str for Python 3
raise TypeError("Sequence of keys/nodes expected for 'match_keys'.")
# filter by worker and optionally by matching keys
if worker and match_keys is None:
match = lambda k: k[0] is worker
elif worker and match_keys is not None:
match = lambda k: k[0] is worker and k[1] in match_keys
elif match_keys:
match = lambda k: k[1] in match_keys
else:
match = None
# Call tree matcher function (items or walk)
return tree_match_func(match, itemgetter(1))
def _rc_by_source(self, worker, node):
"""Get a return code by worker instance and node."""
return self._d_source_rc[(worker, node)]
def _rc_iter_by_key(self, key):
"""
Return an iterator over return codes for the given key.
"""
for (w, k), rc in self._d_source_rc.items():
if k == key:
yield rc
def _rc_iter_by_worker(self, worker, match_keys=None):
"""
Return an iterator over return codes and keys list for a
specific worker and optional matching keys.
"""
if match_keys:
# Use the items iterator for the underlying dict.
for rc, src in self._d_rc_sources.items():
keys = [t[1] for t in src if t[0] is worker and \
t[1] in match_keys]
if len(keys) > 0:
yield rc, keys
else:
for rc, src in self._d_rc_sources.items():
keys = [t[1] for t in src if t[0] is worker]
if len(keys) > 0:
yield rc, keys
def _krc_iter_by_worker(self, worker):
"""
Return an iterator over key, rc for a specific worker.
"""
for rc, src in self._d_rc_sources.items():
for w, k in src:
if w is worker:
yield k, rc
def _num_timeout_by_worker(self, worker):
"""
Return the number of timed out "keys" for a specific worker.
"""
cnt = 0
for (w, k) in self._timeout_sources:
if w is worker:
cnt += 1
return cnt
def _iter_keys_timeout_by_worker(self, worker):
"""
Iterate over timed out keys (ie. nodes) for a specific worker.
"""
for (w, k) in self._timeout_sources:
if w is worker:
yield k
def _flush_buffers_by_worker(self, worker):
"""
Remove any messages from specified worker.
"""
msgtree = self._msgtree('stdout', strict=False)
if msgtree is not None:
msgtree.remove(lambda k: k[0] == worker)
def _flush_errors_by_worker(self, worker):
"""
Remove any error messages from specified worker.
"""
errtree = self._msgtree('stderr', strict=False)
if errtree is not None:
errtree.remove(lambda k: k[0] == worker)
[docs]
def key_buffer(self, key):
"""
Get buffer for a specific key. When the key is associated
to multiple workers, the resulting buffer will contain
all workers content that may overlap. This method returns an
empty buffer if key is not found in any workers.
"""
msgtree = self._msgtree('stdout')
select_key = lambda k: k[1] == key
return b''.join(bytes(msg) for msg in msgtree.messages(select_key))
node_buffer = key_buffer
[docs]
def key_error(self, key):
"""
Get error buffer for a specific key. When the key is associated
to multiple workers, the resulting buffer will contain all
workers content that may overlap. This method returns an empty
error buffer if key is not found in any workers.
"""
errtree = self._msgtree('stderr')
select_key = lambda k: k[1] == key
return b''.join(bytes(msg) for msg in errtree.messages(select_key))
node_error = key_error
[docs]
def key_retcode(self, key):
"""
Return return code for a specific key. When the key is
associated to multiple workers, return the max return
code from these workers. Raises a KeyError if key is not found
in any finished workers.
"""
codes = list(self._rc_iter_by_key(key))
if not codes:
raise KeyError(key)
return max(codes)
node_retcode = key_retcode
[docs]
def max_retcode(self):
"""
Get max return code encountered during last run or None in the
following cases:
- all commands timed out
- no command-based worker was executed
How do retcodes work? If the process exits normally, the return
code is its exit status. If the process is terminated by a
signal, the return code is 128 + signal number.
"""
return self._max_rc
def _iter_msgtree(self, sname, match_keys=None):
"""Helper method to iterate over recorded buffers by sname."""
try:
msgtree = self._msgtrees[sname]
return self._call_tree_matcher(msgtree.walk, match_keys)
except KeyError:
if not self.default("%s_msgtree" % sname):
raise TaskMsgTreeError("%s_msgtree not set" % sname)
return iter([])
[docs]
def iter_buffers(self, match_keys=None):
"""
Iterate over buffers, returns a tuple (buffer, keys). For remote
workers (Ssh), keys are list of nodes. In that case, you should use
NodeSet.fromlist(keys) to get a NodeSet instance (which is more
convenient and efficient):
Optional parameter match_keys add filtering on these keys.
Usage example:
>>> for buffer, nodelist in task.iter_buffers():
... print(NodeSet.fromlist(nodelist))
... print(buffer.message().decode())
"""
return self._iter_msgtree('stdout', match_keys)
[docs]
def iter_errors(self, match_keys=None):
"""
Iterate over error buffers, returns a tuple (buffer, keys).
See iter_buffers().
"""
return self._iter_msgtree('stderr', match_keys)
[docs]
def iter_retcodes(self, match_keys=None):
"""
Iterate over return codes of command-based workers, returns a
tuple (rc, keys).
Optional parameter *match_keys* add filtering on these keys.
How do retcodes work? If the process exits normally, the return
code is its exit status. If the process is terminated by a
signal, the return code is 128 + signal number.
"""
if match_keys:
# Use the items iterator for the underlying dict.
for rc, src in self._d_rc_sources.items():
keys = [t[1] for t in src if t[1] in match_keys]
yield rc, keys
else:
for rc, src in self._d_rc_sources.items():
yield rc, [t[1] for t in src]
[docs]
def num_timeout(self):
"""
Return the number of timed out "keys" (ie. nodes).
"""
return len(self._timeout_sources)
[docs]
def iter_keys_timeout(self):
"""
Iterate over timed out keys (ie. nodes).
"""
for (w, k) in self._timeout_sources:
yield k
[docs]
def flush_buffers(self):
"""
Flush all task messages (from all task workers).
"""
msgtree = self._msgtree('stdout', strict=False)
if msgtree is not None:
msgtree.clear()
[docs]
def flush_errors(self):
"""
Flush all task error messages (from all task workers).
"""
errtree = self._msgtree('stderr', strict=False)
if errtree is not None:
errtree.clear()
[docs]
@classmethod
def wait(cls, from_thread):
"""
Class method that blocks calling thread until all tasks have
finished (from a ClusterShell point of view, for instance,
their task.resume() return). It doesn't necessarily mean that
associated threads have finished.
"""
Task._task_lock.acquire()
try:
tasks = Task._tasks.copy()
finally:
Task._task_lock.release()
for thread, task in tasks.items():
if thread != from_thread:
task.join()
def _pchannel(self, gateway, metaworker):
"""Get propagation channel for gateway (create one if needed).
Use self.gateways dictionary that allows lookup like:
gateway (string) => (worker channel, set of metaworkers)
"""
gwstr = str(gateway)
# create gateway channel if needed
if gwstr not in self.gateways:
chan = PropagationChannel(self, gateway)
logger = logging.getLogger(__name__)
logger.debug("pchannel: creating new channel %s", chan)
# invoke gateway
timeout = None # FIXME: handle timeout for gateway channels
wrkcls = self.default('distant_worker')
chanworker = wrkcls(gateway, command=metaworker.invoke_gateway,
handler=chan, stderr=True, timeout=timeout)
chanworker._update_task_rc = False
# gateway is special! define worker._fanout to not rely on the
# engine's fanout, and use the special value FANOUT_UNLIMITED to
# always allow registration of gateways
chanworker._fanout = FANOUT_UNLIMITED
# change default stream names to avoid internal task buffering
# and conform with channel stream names
chanworker.SNAME_STDIN = chan.SNAME_WRITER
chanworker.SNAME_STDOUT = chan.SNAME_READER
chanworker.SNAME_STDERR = chan.SNAME_ERROR
self.schedule(chanworker)
# update gateways dict
self.gateways[gwstr] = (chanworker, set([metaworker]))
else:
# TODO: assert chanworker is running (need Worker.running())
chanworker, metaworkers = self.gateways[gwstr]
metaworkers.add(metaworker)
return chanworker.eh
def _pchannel_release(self, gateway, metaworker):
"""Release propagation channel associated to gateway.
Lookup by gateway, decref associated metaworker set and abort channel
worker if not used anymore.
Called by TreeWorker._check_fini()
"""
logger = logging.getLogger(__name__)
logger.debug("pchannel_release %s %s", gateway, metaworker)
gwstr = str(gateway)
if gwstr not in self.gateways:
logger.error("pchannel_release: no pchannel found for gateway %s",
gwstr)
else:
# TODO: delay gateway closing when other gateways are running
chanworker, metaworkers = self.gateways[gwstr]
metaworkers.remove(metaworker)
if len(metaworkers) == 0:
logger.debug("pchannel_release: closing channel %s",
chanworker.eh)
# Call PropagationChannel._close() that will close the channel
# properly, update the opened/setup flags and abort the worker.
# We might be in an event handler and we want to make sure we
# ignore any pending messages from this gateway from now on.
chanworker.eh._close(abort=True)
def _pchannel_close(self, gateway, chanworker):
"""A propagation channel is closing.
Perform necessary cleanup actions when a gateway channel is closing.
Called by PropagationChannel.ev_close().
"""
logger = logging.getLogger(__name__)
logger.debug("pchannel_closing: %s", gateway)
chwrk, metaworkers = self.gateways[gateway]
assert chwrk is chanworker, (chwrk, chanworker)
metaworkers_copy = list(metaworkers)
for mw in metaworkers_copy:
mw._gateway_abort(gateway)
del self.gateways[gateway]
[docs]
def task_self(defaults=None):
"""
Return the current Task object, corresponding to the caller's thread of
control (a Task object is always bound to a specific thread). This function
provided as a convenience is available in the top-level ClusterShell.Task
package namespace.
"""
return Task(thread=threading.current_thread(), defaults=defaults)
[docs]
def task_wait():
"""
Suspend execution of the calling thread until all tasks terminate, unless
all tasks have already terminated. This function is provided as a
convenience and is available in the top-level ClusterShell.Task package
namespace.
"""
Task.wait(threading.current_thread())
[docs]
def task_terminate():
"""
Destroy the Task instance bound to the current thread. A next call to
task_self() will create a new Task object. Not to be called from a signal
handler. This function provided as a convenience is available in the
top-level ClusterShell.Task package namespace.
"""
task_self().abort(kill=True)
[docs]
def task_cleanup():
"""
Cleanup routine to destroy all created tasks. This function provided as a
convenience is available in the top-level ClusterShell.Task package
namespace. This is mainly used for testing purposes and should be avoided
otherwise. task_cleanup() may be called from any threads but not from a
signal handler.
"""
# be sure to return to a clean state (no task at all)
while True:
Task._task_lock.acquire()
try:
tasks = Task._tasks.copy()
if len(tasks) == 0:
break
finally:
Task._task_lock.release()
# send abort to all known tasks (it's needed to retry as we may have
# missed the engine notification window (it was just exiting, which is
# quite a common case if we didn't task_join() previously), or we may
# have lost some task's dispatcher port messages.
for task in tasks.values():
task.abort(kill=True)
# also, for other task than self, task.abort() is async and performed
# through an EngineAbortException, so tell the Python scheduler to give
# up control to raise this exception (handled by task._terminate())...
sleep(0.001)