Files
deb-python-taskflow/taskflow/engines/action_engine/engine.py
Christian Berendt 6132647fb7 Enabled hacking checks H305 and H307
* H305  imports not grouped correctly
* H307  like imports should be grouped together

Change-Id: If1dd9c89f65ede6959865a885777cb08c263eca0
2014-07-17 09:05:48 +02:00

225 lines
9.0 KiB
Python

# -*- coding: utf-8 -*-
# Copyright (C) 2012 Yahoo! Inc. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License"); you may
# not use this file except in compliance with the License. You may obtain
# a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS, WITHOUT
# WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the
# License for the specific language governing permissions and limitations
# under the License.
import threading
from taskflow.engines.action_engine import compiler
from taskflow.engines.action_engine import executor
from taskflow.engines.action_engine import runtime
from taskflow.engines import base
from taskflow import exceptions as exc
from taskflow.openstack.common import excutils
from taskflow import retry
from taskflow import states
from taskflow import storage as atom_storage
from taskflow.utils import lock_utils
from taskflow.utils import misc
from taskflow.utils import reflection
class ActionEngine(base.EngineBase):
"""Generic action-based engine.
This engine compiles the flow (and any subflows) into a compilation unit
which contains the full runtime definition to be executed and then uses
this compilation unit in combination with the executor, runtime, runner
and storage classes to attempt to run your flow (and any subflows &
contained atoms) to completion.
NOTE(harlowja): during this process it is permissible and valid to have a
task or multiple tasks in the execution graph fail (at the same time even),
which will cause the process of reversion or retrying to commence. See the
valid states in the states module to learn more about what other states
the tasks and flow being ran can go through.
"""
_compiler_factory = compiler.PatternCompiler
_task_executor_factory = executor.SerialTaskExecutor
def __init__(self, flow, flow_detail, backend, conf):
super(ActionEngine, self).__init__(flow, flow_detail, backend, conf)
self._runtime = None
self._compiled = False
self._compilation = None
self._lock = threading.RLock()
self._state_lock = threading.RLock()
self._storage_ensured = False
def __str__(self):
return "%s: %s" % (reflection.get_class_name(self), id(self))
def suspend(self):
if not self._compiled:
raise exc.InvalidState("Can not suspend an engine"
" which has not been compiled")
self._change_state(states.SUSPENDING)
@property
def compilation(self):
"""The compilation result.
NOTE(harlowja): Only accessible after compilation has completed (None
will be returned when this property is accessed before compilation has
completed successfully).
"""
if self._compiled:
return self._compilation
else:
return None
def run(self):
with lock_utils.try_lock(self._lock) as was_locked:
if not was_locked:
raise exc.ExecutionFailure("Engine currently locked, please"
" try again later")
for _state in self.run_iter():
pass
def run_iter(self, timeout=None):
"""Runs the engine using iteration (or die trying).
:param timeout: timeout to wait for any tasks to complete (this timeout
will be used during the waiting period that occurs after the
waiting state is yielded when unfinished tasks are being waited
for).
Instead of running to completion in a blocking manner, this will
return a generator which will yield back the various states that the
engine is going through (and can be used to run multiple engines at
once using a generator per engine). the iterator returned also
responds to the send() method from pep-0342 and will attempt to suspend
itself if a truthy value is sent in (the suspend may be delayed until
all active tasks have finished).
NOTE(harlowja): using the run_iter method will **not** retain the
engine lock while executing so the user should ensure that there is
only one entity using a returned engine iterator (one per engine) at a
given time.
"""
self.compile()
self.prepare()
self._task_executor.start()
state = None
runner = self._runtime.runner
try:
self._change_state(states.RUNNING)
for state in runner.run_iter(timeout=timeout):
try:
try_suspend = yield state
except GeneratorExit:
break
else:
if try_suspend:
self.suspend()
except Exception:
with excutils.save_and_reraise_exception():
self._change_state(states.FAILURE)
else:
ignorable_states = getattr(runner, 'ignorable_states', [])
if state and state not in ignorable_states:
self._change_state(state)
if state != states.SUSPENDED and state != states.SUCCESS:
failures = self.storage.get_failures()
misc.Failure.reraise_if_any(failures.values())
finally:
self._task_executor.stop()
def _change_state(self, state):
with self._state_lock:
old_state = self.storage.get_flow_state()
if not states.check_flow_transition(old_state, state):
return
self.storage.set_flow_state(state)
details = {
'engine': self,
'flow_name': self.storage.flow_name,
'flow_uuid': self.storage.flow_uuid,
'old_state': old_state,
}
self.notifier.notify(state, details)
def _ensure_storage(self):
# NOTE(harlowja): signal to the tasks that exist that we are about to
# resume, if they have a previous state, they will now transition to
# a resuming state (and then to suspended).
self._change_state(states.RESUMING) # does nothing in PENDING state
for node in self._compilation.execution_graph.nodes_iter():
version = misc.get_version_string(node)
if isinstance(node, retry.Retry):
self.storage.ensure_retry(node.name, version, node.save_as)
else:
self.storage.ensure_task(node.name, version, node.save_as)
if node.inject:
self.storage.inject_atom_args(node.name, node.inject)
self._change_state(states.SUSPENDED) # does nothing in PENDING state
@lock_utils.locked
def prepare(self):
if not self._compiled:
raise exc.InvalidState("Can not prepare an engine"
" which has not been compiled")
if not self._storage_ensured:
self._ensure_storage()
self._storage_ensured = True
# At this point we can check to ensure all dependencies are either
# flow/task provided or storage provided, if there are still missing
# dependencies then this flow will fail at runtime (which we can avoid
# by failing at preparation time).
external_provides = set(self.storage.fetch_all().keys())
missing = self._flow.requires - external_provides
if missing:
raise exc.MissingDependencies(self._flow, sorted(missing))
# Reset everything back to pending (if we were previously reverted).
if self.storage.get_flow_state() == states.REVERTED:
self._runtime.reset_all()
self._change_state(states.PENDING)
@misc.cachedproperty
def _task_executor(self):
return self._task_executor_factory()
@misc.cachedproperty
def _compiler(self):
return self._compiler_factory()
@lock_utils.locked
def compile(self):
if self._compiled:
return
self._compilation = self._compiler.compile(self._flow)
self._runtime = runtime.Runtime(self._compilation,
self.storage,
self.task_notifier,
self._task_executor)
self._compiled = True
class SingleThreadedActionEngine(ActionEngine):
"""Engine that runs tasks in serial manner."""
_storage_factory = atom_storage.SingleThreadedStorage
class MultiThreadedActionEngine(ActionEngine):
"""Engine that runs tasks in parallel manner."""
_storage_factory = atom_storage.MultiThreadedStorage
def _task_executor_factory(self):
return executor.ParallelTaskExecutor(self._executor)
def __init__(self, flow, flow_detail, backend, conf, **kwargs):
super(MultiThreadedActionEngine, self).__init__(
flow, flow_detail, backend, conf)
self._executor = kwargs.get('executor')