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# This Source Code Form is subject to the terms of the Mozilla Public
# License, v. 2.0. If a copy of the MPL was not distributed with this
# file, You can obtain one at http://mozilla.org/MPL/2.0/.

from __future__ import absolute_import, print_function, unicode_literals

import abc


class Task(object):
    """
    Representation of a task in a TaskGraph.  Each Task has, at creation:

    - kind: the name of the task kind
    - label; the label for this task
    - attributes: a dictionary of attributes for this task (used for filtering)
    - task: the task definition (JSON-able dictionary)

    And later, as the task-graph processing proceeds:

    - task_id -- TaskCluster taskId under which this task will be created
    - optimized -- true if this task need not be performed

    A kind represents a collection of tasks that share common characteristics.
    For example, all build jobs.  Each instance of a kind is intialized with a
    path from which it draws its task configuration.  The instance is free to
    store as much local state as it needs.
    """
    __metaclass__ = abc.ABCMeta

    def __init__(self, kind, label, attributes, task):
        self.kind = kind
        self.label = label
        self.attributes = attributes
        self.task = task

        self.task_id = None
        self.optimized = False

        self.attributes['kind'] = kind

    def __eq__(self, other):
        return self.kind == other.kind and \
            self.label == other.label and \
            self.attributes == other.attributes and \
            self.task == other.task and \
            self.task_id == other.task_id

    @classmethod
    @abc.abstractmethod
    def load_tasks(cls, kind, path, config, parameters, loaded_tasks):
        """
        Load the tasks for a given kind.

        The `kind` is the name of the kind; the configuration for that kind
        named this class.

        The `path` is the path to the configuration directory for the kind.  This
        can be used to load extra data, templates, etc.

        The `parameters` give details on which to base the task generation.
        See `taskcluster/docs/parameters.rst` for details.

        At the time this method is called, all kinds on which this kind depends
        (that is, specified in the `kind-dependencies` key in `self.config`
        have already loaded their tasks, and those tasks are available in
        the list `loaded_tasks`.

        The return value is a list of Task instances.
        """

    @abc.abstractmethod
    def get_dependencies(self, taskgraph):
        """
        Get the set of task labels this task depends on, by querying the full
        task set, given as `taskgraph`.

        Returns a list of (task_label, dependency_name) pairs describing the
        dependencies.
        """

    def optimize(self, params):
        """
        Determine whether this task can be optimized, and if it can, what taskId
        it should be replaced with.

        The return value is a tuple `(optimized, taskId)`.  If `optimized` is
        true, then the task will be optimized (in other words, not included in
        the task graph).  If the second argument is a taskid, then any
        dependencies on this task will isntead depend on that taskId.  It is an
        error to return no taskId for a task on which other tasks depend.

        The default never optimizes.
        """
        return False, None

    @classmethod
    def from_json(cls, task_dict):
        """
        Given a data structure as produced by taskgraph.to_json, re-construct
        the original Task object.  This is used to "resume" the task-graph
        generation process, for example in Action tasks.
        """
        return cls(
            kind=task_dict['attributes']['kind'],
            label=task_dict['label'],
            attributes=task_dict['attributes'],
            task=task_dict['task'])