Instead of retaining cycles which the GC will have a harder time breaking, give it a break and use the knowledge that the associated objects will always exist while the runtime object does to just use a weakref proxy so that the GC will have a easier time breaking this cycle. Change-Id: I6241b2f33354fa58565835a5f08e5766aa601704
158 lines
5.7 KiB
Python
158 lines
5.7 KiB
Python
# -*- coding: utf-8 -*-
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# Copyright (C) 2013 Yahoo! Inc. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License"); you may
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# not use this file except in compliance with the License. You may obtain
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# a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS, WITHOUT
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# WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the
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# License for the specific language governing permissions and limitations
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# under the License.
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from networkx.algorithms import traversal
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import six
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from taskflow import retry as retry_atom
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from taskflow import states as st
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class Analyzer(object):
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"""Analyzes a compilation and aids in execution processes.
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Its primary purpose is to get the next atoms for execution or reversion
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by utilizing the compilations underlying structures (graphs, nodes and
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edge relations...) and using this information along with the atom
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state/states stored in storage to provide other useful functionality to
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the rest of the runtime system.
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"""
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def __init__(self, runtime):
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self._storage = runtime.storage
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self._execution_graph = runtime.compilation.execution_graph
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def get_next_nodes(self, node=None):
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if node is None:
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execute = self.browse_nodes_for_execute()
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revert = self.browse_nodes_for_revert()
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return execute + revert
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state = self.get_state(node)
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intention = self._storage.get_atom_intention(node.name)
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if state == st.SUCCESS:
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if intention == st.REVERT:
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return [node]
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elif intention == st.EXECUTE:
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return self.browse_nodes_for_execute(node)
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else:
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return []
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elif state == st.REVERTED:
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return self.browse_nodes_for_revert(node)
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elif state == st.FAILURE:
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return self.browse_nodes_for_revert()
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else:
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return []
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def browse_nodes_for_execute(self, node=None):
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"""Browse next nodes to execute.
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This returns a collection of nodes that are ready to be executed, if
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given a specific node it will only examine the successors of that node,
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otherwise it will examine the whole graph.
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"""
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if node:
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nodes = self._execution_graph.successors(node)
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else:
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nodes = self._execution_graph.nodes_iter()
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available_nodes = []
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for node in nodes:
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if self._is_ready_for_execute(node):
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available_nodes.append(node)
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return available_nodes
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def browse_nodes_for_revert(self, node=None):
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"""Browse next nodes to revert.
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This returns a collection of nodes that are ready to be be reverted, if
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given a specific node it will only examine the predecessors of that
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node, otherwise it will examine the whole graph.
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"""
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if node:
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nodes = self._execution_graph.predecessors(node)
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else:
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nodes = self._execution_graph.nodes_iter()
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available_nodes = []
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for node in nodes:
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if self._is_ready_for_revert(node):
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available_nodes.append(node)
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return available_nodes
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def _is_ready_for_execute(self, task):
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"""Checks if task is ready to be executed."""
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state = self.get_state(task)
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intention = self._storage.get_atom_intention(task.name)
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transition = st.check_task_transition(state, st.RUNNING)
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if not transition or intention != st.EXECUTE:
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return False
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task_names = []
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for prev_task in self._execution_graph.predecessors(task):
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task_names.append(prev_task.name)
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task_states = self._storage.get_atoms_states(task_names)
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return all(state == st.SUCCESS and intention == st.EXECUTE
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for state, intention in six.itervalues(task_states))
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def _is_ready_for_revert(self, task):
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"""Checks if task is ready to be reverted."""
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state = self.get_state(task)
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intention = self._storage.get_atom_intention(task.name)
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transition = st.check_task_transition(state, st.REVERTING)
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if not transition or intention not in (st.REVERT, st.RETRY):
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return False
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task_names = []
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for prev_task in self._execution_graph.successors(task):
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task_names.append(prev_task.name)
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task_states = self._storage.get_atoms_states(task_names)
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return all(state in (st.PENDING, st.REVERTED)
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for state, intention in six.itervalues(task_states))
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def iterate_subgraph(self, retry):
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"""Iterates a subgraph connected to given retry controller."""
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for _src, dst in traversal.dfs_edges(self._execution_graph, retry):
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yield dst
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def iterate_retries(self, state=None):
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"""Iterates retry controllers that match the provided state.
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If no state is provided it will yield back all retry controllers.
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"""
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for node in self._execution_graph.nodes_iter():
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if isinstance(node, retry_atom.Retry):
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if not state or self.get_state(node) == state:
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yield node
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def iterate_all_nodes(self):
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for node in self._execution_graph.nodes_iter():
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yield node
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def find_atom_retry(self, atom):
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return self._execution_graph.node[atom].get('retry')
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def is_success(self):
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for node in self._execution_graph.nodes_iter():
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if self.get_state(node) != st.SUCCESS:
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return False
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return True
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def get_state(self, node):
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return self._storage.get_atom_state(node.name)
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