blob: c66b6c34d1bd46bf9a568388b887de30ef6bf325 [file] [log] [blame]
#!/usr/bin/env python
#
# Copyright 2007 Google Inc.
#
# 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.
#
"""Model classes which are used to communicate between parts of implementation.
These model classes are describing mapreduce, its current state and
communication messages. They are either stored in the datastore or
serialized to/from json and passed around with other means.
"""
__all__ = ["MapreduceState",
"MapperSpec",
"MapreduceControl",
"MapreduceSpec",
"ShardState",
"CountersMap",
"TransientShardState",
"QuerySpec",
"HugeTask"]
import cgi
import datetime
import urllib
import zlib
import google
from google.appengine._internal.graphy.backends import google_chart_api
import simplejson
from google.appengine.api import memcache
from google.appengine.api import taskqueue
from google.appengine.datastore import datastore_rpc
from google.appengine.ext import db
from google.appengine.ext.mapreduce import context
from google.appengine.ext.mapreduce import hooks
from google.appengine.ext.mapreduce import json_util
from google.appengine.ext.mapreduce import util
_MAP_REDUCE_KINDS = ("_GAE_MR_MapreduceControl",
"_GAE_MR_MapreduceState",
"_GAE_MR_ShardState",
"_GAE_MR_TaskPayload")
class _HugeTaskPayload(db.Model):
"""Model object to store task payload."""
payload = db.BlobProperty()
@classmethod
def kind(cls):
"""Returns entity kind."""
return "_GAE_MR_TaskPayload"
class HugeTask(object):
"""HugeTask is a taskqueue.Task-like class that can store big payloads.
Payloads are stored either in the task payload itself or in the datastore.
Task handlers should inherit from base_handler.HugeTaskHandler class.
"""
PAYLOAD_PARAM = "__payload"
PAYLOAD_KEY_PARAM = "__payload_key"
MAX_TASK_PAYLOAD = taskqueue.MAX_PUSH_TASK_SIZE_BYTES - 1024
MAX_DB_PAYLOAD = datastore_rpc.BaseConnection.MAX_RPC_BYTES
PAYLOAD_VERSION_HEADER = "AE-MR-Payload-Version"
PAYLOAD_VERSION = "1"
def __init__(self,
url,
params,
name=None,
eta=None,
countdown=None,
parent=None,
headers=None):
"""Init.
Args:
url: task url in str.
params: a dict from str to str.
name: task name.
eta: task eta.
countdown: task countdown.
parent: parent entity of huge task's payload.
headers: a dict of headers for the task.
Raises:
ValueError: when payload is too big even for datastore, or parent is
not specified when payload is stored in datastore.
"""
self.url = url
self.name = name
self.eta = eta
self.countdown = countdown
self._headers = {
"Content-Type": "application/octet-stream",
self.PAYLOAD_VERSION_HEADER: self.PAYLOAD_VERSION
}
if headers:
self._headers.update(headers)
payload_str = urllib.urlencode(params)
compressed_payload = ""
if len(payload_str) > self.MAX_TASK_PAYLOAD:
compressed_payload = zlib.compress(payload_str)
if not compressed_payload:
self._payload = payload_str
elif len(compressed_payload) < self.MAX_TASK_PAYLOAD:
self._payload = self.PAYLOAD_PARAM + compressed_payload
elif len(compressed_payload) > self.MAX_DB_PAYLOAD:
raise ValueError(
"Payload from %s to big to be stored in database: %s" %
(self.name, len(compressed_payload)))
else:
if not parent:
raise ValueError("Huge tasks should specify parent entity.")
payload_entity = _HugeTaskPayload(payload=compressed_payload,
parent=parent)
payload_key = payload_entity.put()
self._payload = self.PAYLOAD_KEY_PARAM + str(payload_key)
def add(self, queue_name, transactional=False):
"""Add task to the queue."""
task = self.to_task()
task.add(queue_name, transactional)
def to_task(self):
"""Convert to a taskqueue task."""
return taskqueue.Task(
url=self.url,
payload=self._payload,
name=self.name,
eta=self.eta,
countdown=self.countdown,
headers=self._headers)
@classmethod
def decode_payload(cls, request):
"""Decode task payload.
HugeTask controls its own payload entirely including urlencoding.
It doesn't depend on any particular web framework.
Args:
request: a webapp Request instance.
Returns:
A dict of str to str. The same as the params argument to __init__.
Raises:
DeprecationWarning: When task payload constructed from an older
incompatible version of mapreduce.
"""
if request.headers.get(cls.PAYLOAD_VERSION_HEADER) != cls.PAYLOAD_VERSION:
raise DeprecationWarning(
"Task is generated by an older incompatible version of mapreduce. "
"Please kill this job manually")
return cls._decode_payload(request.body)
@classmethod
def _decode_payload(cls, body):
compressed_payload_str = None
if body.startswith(cls.PAYLOAD_KEY_PARAM):
payload_key = body[len(cls.PAYLOAD_KEY_PARAM):]
payload_entity = _HugeTaskPayload.get(payload_key)
compressed_payload_str = payload_entity.payload
elif body.startswith(cls.PAYLOAD_PARAM):
compressed_payload_str = body[len(cls.PAYLOAD_PARAM):]
if compressed_payload_str:
payload_str = zlib.decompress(compressed_payload_str)
else:
payload_str = body
result = {}
for (name, value) in cgi.parse_qs(payload_str).items():
if len(value) == 1:
result[name] = value[0]
else:
result[name] = value
return result
class CountersMap(json_util.JsonMixin):
"""Maintains map from counter name to counter value.
The class is used to provide basic arithmetics of counter values (buil
add/remove), increment individual values and store/load data from json.
"""
def __init__(self, initial_map=None):
"""Constructor.
Args:
initial_map: initial counter values map from counter name (string) to
counter value (int).
"""
if initial_map:
self.counters = initial_map
else:
self.counters = {}
def __repr__(self):
"""Compute string representation."""
return "mapreduce.model.CountersMap(%r)" % self.counters
def get(self, counter_name, default=0):
"""Get current counter value.
Args:
counter_name: counter name as string.
default: default value if one doesn't exist.
Returns:
current counter value as int. 0 if counter was not set.
"""
return self.counters.get(counter_name, default)
def increment(self, counter_name, delta):
"""Increment counter value.
Args:
counter_name: counter name as String.
delta: increment delta as Integer.
Returns:
new counter value.
"""
current_value = self.counters.get(counter_name, 0)
new_value = current_value + delta
self.counters[counter_name] = new_value
return new_value
def add_map(self, counters_map):
"""Add all counters from the map.
For each counter in the passed map, adds its value to the counter in this
map.
Args:
counters_map: CounterMap instance to add.
"""
for counter_name in counters_map.counters:
self.increment(counter_name, counters_map.counters[counter_name])
def sub_map(self, counters_map):
"""Subtracts all counters from the map.
For each counter in the passed map, subtracts its value to the counter in
this map.
Args:
counters_map: CounterMap instance to subtract.
"""
for counter_name in counters_map.counters:
self.increment(counter_name, -counters_map.counters[counter_name])
def clear(self):
"""Clear all values."""
self.counters = {}
def to_json(self):
"""Serializes all the data in this map into json form.
Returns:
json-compatible data representation.
"""
return {"counters": self.counters}
@classmethod
def from_json(cls, json):
"""Create new CountersMap from the json data structure, encoded by to_json.
Args:
json: json representation of CountersMap .
Returns:
an instance of CountersMap with all data deserialized from json.
"""
counters_map = cls()
counters_map.counters = json["counters"]
return counters_map
def to_dict(self):
"""Convert to dictionary.
Returns:
a dictionary with counter name as key and counter values as value.
"""
return self.counters
class MapperSpec(json_util.JsonMixin):
"""Contains a specification for the mapper phase of the mapreduce.
MapperSpec instance can be changed only during mapreduce starting process,
and it remains immutable for the rest of mapreduce execution. MapperSpec is
passed as a payload to all mapreduce tasks in JSON encoding as part of
MapreduceSpec.
Specifying mapper handlers:
* '<module_name>.<class_name>' - __call__ method of class instance will be
called
* '<module_name>.<function_name>' - function will be called.
* '<module_name>.<class_name>.<method_name>' - class will be instantiated
and method called.
"""
def __init__(self,
handler_spec,
input_reader_spec,
params,
shard_count,
output_writer_spec=None):
"""Creates a new MapperSpec.
Args:
handler_spec: handler specification as string (see class doc for
details).
input_reader_spec: The class name of the input reader to use.
params: Dictionary of additional parameters for the mapper.
shard_count: number of shards to process in parallel.
Properties:
handler_spec: name of handler class/function to use.
input_reader_spec: The class name of the input reader to use.
params: Dictionary of additional parameters for the mapper.
shard_count: number of shards to process in parallel.
output_writer_spec: The class name of the output writer to use.
"""
self.handler_spec = handler_spec
self.input_reader_spec = input_reader_spec
self.output_writer_spec = output_writer_spec
self.shard_count = int(shard_count)
self.params = params
def get_handler(self):
"""Get mapper handler instance.
This always creates a new instance of the handler. If the handler is a
callable instance, MR only wants to create a new instance at the
beginning of a shard or shard retry. The pickled callable instance
should be accessed from TransientShardState.
Returns:
handler instance as callable.
"""
return util.handler_for_name(self.handler_spec)
handler = property(get_handler)
def input_reader_class(self):
"""Get input reader class.
Returns:
input reader class object.
"""
return util.for_name(self.input_reader_spec)
def output_writer_class(self):
"""Get output writer class.
Returns:
output writer class object.
"""
return self.output_writer_spec and util.for_name(self.output_writer_spec)
def to_json(self):
"""Serializes this MapperSpec into a json-izable object."""
result = {
"mapper_handler_spec": self.handler_spec,
"mapper_input_reader": self.input_reader_spec,
"mapper_params": self.params,
"mapper_shard_count": self.shard_count
}
if self.output_writer_spec:
result["mapper_output_writer"] = self.output_writer_spec
return result
def __str__(self):
return "MapperSpec(%s, %s, %s, %s)" % (
self.handler_spec, self.input_reader_spec, self.params,
self.shard_count)
@classmethod
def from_json(cls, json):
"""Creates MapperSpec from a dict-like object."""
return cls(json["mapper_handler_spec"],
json["mapper_input_reader"],
json["mapper_params"],
json["mapper_shard_count"],
json.get("mapper_output_writer")
)
def __eq__(self, other):
if not isinstance(other, self.__class__):
return False
return self.to_json() == other.to_json()
class MapreduceSpec(json_util.JsonMixin):
"""Contains a specification for the whole mapreduce.
MapreduceSpec instance can be changed only during mapreduce starting process,
and it remains immutable for the rest of mapreduce execution. MapreduceSpec is
passed as a payload to all mapreduce tasks in json encoding.
"""
PARAM_DONE_CALLBACK = "done_callback"
PARAM_DONE_CALLBACK_QUEUE = "done_callback_queue"
def __init__(self,
name,
mapreduce_id,
mapper_spec,
params={},
hooks_class_name=None):
"""Create new MapreduceSpec.
Args:
name: The name of this mapreduce job type.
mapreduce_id: ID of the mapreduce.
mapper_spec: JSON-encoded string containing a MapperSpec.
params: dictionary of additional mapreduce parameters.
hooks_class_name: The fully qualified name of the hooks class to use.
Properties:
name: The name of this mapreduce job type.
mapreduce_id: unique id of this mapreduce as string.
mapper: This MapreduceSpec's instance of MapperSpec.
params: dictionary of additional mapreduce parameters.
hooks_class_name: The fully qualified name of the hooks class to use.
"""
self.name = name
self.mapreduce_id = mapreduce_id
self.mapper = MapperSpec.from_json(mapper_spec)
self.params = params
self.hooks_class_name = hooks_class_name
self.__hooks = None
self.get_hooks()
def get_hooks(self):
"""Returns a hooks.Hooks class or None if no hooks class has been set."""
if self.__hooks is None and self.hooks_class_name is not None:
hooks_class = util.for_name(self.hooks_class_name)
if not isinstance(hooks_class, type):
raise ValueError("hooks_class_name must refer to a class, got %s" %
type(hooks_class).__name__)
if not issubclass(hooks_class, hooks.Hooks):
raise ValueError(
"hooks_class_name must refer to a hooks.Hooks subclass")
self.__hooks = hooks_class(self)
return self.__hooks
def to_json(self):
"""Serializes all data in this mapreduce spec into json form.
Returns:
data in json format.
"""
mapper_spec = self.mapper.to_json()
return {
"name": self.name,
"mapreduce_id": self.mapreduce_id,
"mapper_spec": mapper_spec,
"params": self.params,
"hooks_class_name": self.hooks_class_name,
}
@classmethod
def from_json(cls, json):
"""Create new MapreduceSpec from the json, encoded by to_json.
Args:
json: json representation of MapreduceSpec.
Returns:
an instance of MapreduceSpec with all data deserialized from json.
"""
mapreduce_spec = cls(json["name"],
json["mapreduce_id"],
json["mapper_spec"],
json.get("params"),
json.get("hooks_class_name"))
return mapreduce_spec
def __str__(self):
return str(self.to_json())
def __eq__(self, other):
if not isinstance(other, self.__class__):
return False
return self.to_json() == other.to_json()
@classmethod
def _get_mapreduce_spec(cls, mr_id):
"""Get Mapreduce spec from mr id."""
key = 'GAE-MR-spec: %s' % mr_id
spec_json = memcache.get(key)
if spec_json:
return cls.from_json(spec_json)
state = MapreduceState.get_by_job_id(mr_id)
spec = state.mapreduce_spec
spec_json = spec.to_json()
memcache.set(key, spec_json)
return spec
class MapreduceState(db.Model):
"""Holds accumulated state of mapreduce execution.
MapreduceState is stored in datastore with a key name equal to the
mapreduce ID. Only controller tasks can write to MapreduceState.
Properties:
mapreduce_spec: cached deserialized MapreduceSpec instance. read-only
active: if this MR is still running.
last_poll_time: last time controller job has polled this mapreduce.
counters_map: shard's counters map as CountersMap. Mirrors
counters_map_json.
chart_url: last computed mapreduce status chart url. This chart displays the
progress of all the shards the best way it can.
sparkline_url: last computed mapreduce status chart url in small format.
result_status: If not None, the final status of the job.
active_shards: How many shards are still processing. This starts as 0,
then set by KickOffJob handler to be the actual number of input
readers after input splitting, and is updated by Controller task
as shards finish.
start_time: When the job started.
writer_state: Json property to be used by writer to store its state.
This is filled when single output per job. Will be deprecated.
Use OutputWriter.get_filenames instead.
"""
RESULT_SUCCESS = "success"
RESULT_FAILED = "failed"
RESULT_ABORTED = "aborted"
_RESULTS = frozenset([RESULT_SUCCESS, RESULT_FAILED, RESULT_ABORTED])
mapreduce_spec = json_util.JsonProperty(MapreduceSpec, indexed=False)
active = db.BooleanProperty(default=True, indexed=False)
last_poll_time = db.DateTimeProperty(required=True)
counters_map = json_util.JsonProperty(
CountersMap, default=CountersMap(), indexed=False)
app_id = db.StringProperty(required=False, indexed=True)
writer_state = json_util.JsonProperty(dict, indexed=False)
active_shards = db.IntegerProperty(default=0, indexed=False)
failed_shards = db.IntegerProperty(default=0, indexed=False)
aborted_shards = db.IntegerProperty(default=0, indexed=False)
result_status = db.StringProperty(required=False, choices=_RESULTS)
chart_url = db.TextProperty(default="")
chart_width = db.IntegerProperty(default=300, indexed=False)
sparkline_url = db.TextProperty(default="")
start_time = db.DateTimeProperty(auto_now_add=True)
@classmethod
def kind(cls):
"""Returns entity kind."""
return "_GAE_MR_MapreduceState"
@classmethod
def get_key_by_job_id(cls, mapreduce_id):
"""Retrieves the Key for a Job.
Args:
mapreduce_id: The job to retrieve.
Returns:
Datastore Key that can be used to fetch the MapreduceState.
"""
return db.Key.from_path(cls.kind(), str(mapreduce_id))
@classmethod
def get_by_job_id(cls, mapreduce_id):
"""Retrieves the instance of state for a Job.
Args:
mapreduce_id: The mapreduce job to retrieve.
Returns:
instance of MapreduceState for passed id.
"""
return db.get(cls.get_key_by_job_id(mapreduce_id))
def set_processed_counts(self, shards_processed):
"""Updates a chart url to display processed count for each shard.
Args:
shards_processed: list of integers with number of processed entities in
each shard
"""
chart = google_chart_api.BarChart(shards_processed)
shard_count = len(shards_processed)
if shards_processed:
stride_length = max(1, shard_count / 16)
chart.bottom.labels = []
for x in xrange(shard_count):
if (x % stride_length == 0 or
x == shard_count - 1):
chart.bottom.labels.append(x)
else:
chart.bottom.labels.append("")
chart.left.labels = ["0", str(max(shards_processed))]
chart.left.min = 0
self.chart_width = min(700, max(300, shard_count * 20))
self.chart_url = chart.display.Url(self.chart_width, 200)
def get_processed(self):
"""Number of processed entities.
Returns:
The total number of processed entities as int.
"""
return self.counters_map.get(context.COUNTER_MAPPER_CALLS)
processed = property(get_processed)
@staticmethod
def create_new(mapreduce_id=None,
gettime=datetime.datetime.now):
"""Create a new MapreduceState.
Args:
mapreduce_id: Mapreduce id as string.
gettime: Used for testing.
"""
if not mapreduce_id:
mapreduce_id = MapreduceState.new_mapreduce_id()
state = MapreduceState(key_name=mapreduce_id,
last_poll_time=gettime())
state.set_processed_counts([])
return state
@staticmethod
def new_mapreduce_id():
"""Generate new mapreduce id."""
return util._get_descending_key()
def __eq__(self, other):
if not isinstance(other, self.__class__):
return False
return self.properties() == other.properties()
class TransientShardState(object):
"""A shard's states that are kept in task payload.
TransientShardState holds two types of states:
1. Some states just don't need to be saved to datastore. e.g.
serialized input reader and output writer instances.
2. Some states are duplicated from datastore, e.g. slice_id, shard_id.
These are used to validate the task.
"""
def __init__(self,
base_path,
mapreduce_spec,
shard_id,
slice_id,
input_reader,
initial_input_reader,
output_writer=None,
retries=0,
handler=None):
"""Init.
Args:
base_path: base path of this mapreduce job. Deprecated.
mapreduce_spec: an instance of MapReduceSpec.
shard_id: shard id.
slice_id: slice id. When enqueuing task for the next slice, this number
is incremented by 1.
input_reader: input reader instance for this shard.
initial_input_reader: the input reader instance before any iteration.
Used by shard retry.
output_writer: output writer instance for this shard, if exists.
retries: the number of retries of the current shard. Used to drop
tasks from old retries.
handler: map/reduce handler.
"""
self.base_path = base_path
self.mapreduce_spec = mapreduce_spec
self.shard_id = shard_id
self.slice_id = slice_id
self.input_reader = input_reader
self.initial_input_reader = initial_input_reader
self.output_writer = output_writer
self.retries = retries
self.handler = handler
self._input_reader_json = self.input_reader.to_json()
def reset_for_retry(self, output_writer):
"""Reset self for shard retry.
Args:
output_writer: new output writer that contains new output files.
"""
self.input_reader = self.initial_input_reader
self.slice_id = 0
self.retries += 1
self.output_writer = output_writer
self.handler = self.mapreduce_spec.mapper.handler
def advance_for_next_slice(self, recovery_slice=False):
"""Advance relavent states for next slice.
Args:
recovery_slice: True if this slice is running recovery logic.
See handlers.MapperWorkerCallbackHandler._attempt_slice_recovery
for more info.
"""
if recovery_slice:
self.slice_id += 2
self.input_reader = self.input_reader.from_json(self._input_reader_json)
else:
self.slice_id += 1
def to_dict(self):
"""Convert state to dictionary to save in task payload."""
result = {"mapreduce_spec": self.mapreduce_spec.to_json_str(),
"shard_id": self.shard_id,
"slice_id": str(self.slice_id),
"input_reader_state": self.input_reader.to_json_str(),
"initial_input_reader_state":
self.initial_input_reader.to_json_str(),
"retries": str(self.retries)}
if self.output_writer:
result["output_writer_state"] = self.output_writer.to_json_str()
serialized_handler = util.try_serialize_handler(self.handler)
if serialized_handler:
result["serialized_handler"] = serialized_handler
return result
@classmethod
def from_request(cls, request):
"""Create new TransientShardState from webapp request."""
mapreduce_spec = MapreduceSpec.from_json_str(request.get("mapreduce_spec"))
mapper_spec = mapreduce_spec.mapper
input_reader_spec_dict = simplejson.loads(request.get("input_reader_state"),
cls=json_util.JsonDecoder)
input_reader = mapper_spec.input_reader_class().from_json(
input_reader_spec_dict)
initial_input_reader_spec_dict = simplejson.loads(
request.get("initial_input_reader_state"), cls=json_util.JsonDecoder)
initial_input_reader = mapper_spec.input_reader_class().from_json(
initial_input_reader_spec_dict)
output_writer = None
if mapper_spec.output_writer_class():
output_writer = mapper_spec.output_writer_class().from_json(
simplejson.loads(request.get("output_writer_state", "{}"),
cls=json_util.JsonDecoder))
assert isinstance(output_writer, mapper_spec.output_writer_class()), (
"%s.from_json returned an instance of wrong class: %s" % (
mapper_spec.output_writer_class(),
output_writer.__class__))
handler = util.try_deserialize_handler(request.get("serialized_handler"))
if not handler:
handler = mapreduce_spec.mapper.handler
return cls(mapreduce_spec.params["base_path"],
mapreduce_spec,
str(request.get("shard_id")),
int(request.get("slice_id")),
input_reader,
initial_input_reader,
output_writer=output_writer,
retries=int(request.get("retries")),
handler=handler)
class ShardState(db.Model):
"""Single shard execution state.
The shard state is stored in the datastore and is later aggregated by
controller task. ShardState key_name is equal to shard_id.
Shard state contains critical state to ensure the correctness of
shard execution. It is the single source of truth about a shard's
progress. For example:
1. A slice is allowed to run only if its payload matches shard state's
expectation.
2. A slice is considered running only if it has acquired the shard's lock.
3. A slice is considered done only if it has successfully committed shard
state to db.
Properties about the shard:
active: if we have this shard still running as boolean.
counters_map: shard's counters map as CountersMap. All counters yielded
within mapreduce are stored here.
mapreduce_id: unique id of the mapreduce.
shard_id: unique id of this shard as string.
shard_number: ordered number for this shard.
retries: the number of times this shard has been retried.
result_status: If not None, the final status of this shard.
update_time: The last time this shard state was updated.
shard_description: A string description of the work this shard will do.
last_work_item: A string description of the last work item processed.
writer_state: writer state for this shard. The shard's output writer
instance can save in-memory output references to this field in its
"finalize" method.
Properties about slice management:
slice_id: slice id of current executing slice. A slice's task
will not run unless its slice_id matches this. Initial
value is 0. By the end of slice execution, this number is
incremented by 1.
slice_start_time: a slice updates this to now at the beginning of
execution. If the transaction succeeds, the current task holds
a lease of slice duration + some grace period. During this time, no
other task with the same slice_id will execute. Upon slice failure,
the task should try to unset this value to allow retries to carry on
ASAP.
slice_request_id: the request id that holds/held the lease. When lease has
expired, new request needs to verify that said request has indeed
ended according to logs API. Do this only when lease has expired
because logs API is expensive. This field should always be set/unset
with slice_start_time. It is possible Logs API doesn't log a request
at all or doesn't log the end of a request. So a new request can
proceed after a long conservative timeout.
slice_retries: the number of times a slice has been retried due to
processing data when lock is held. Taskqueue/datastore errors
related to slice/shard management are not counted. This count is
only a lower bound and is used to determined when to fail a slice
completely.
acquired_once: whether the lock for this slice has been acquired at
least once. When this is True, duplicates in outputs are possible.
"""
RESULT_SUCCESS = "success"
RESULT_FAILED = "failed"
RESULT_ABORTED = "aborted"
_RESULTS = frozenset([RESULT_SUCCESS, RESULT_FAILED, RESULT_ABORTED])
_MAX_STATES_IN_MEMORY = 10
mapreduce_id = db.StringProperty(required=True)
active = db.BooleanProperty(default=True, indexed=False)
input_finished = db.BooleanProperty(default=False, indexed=False)
counters_map = json_util.JsonProperty(
CountersMap, default=CountersMap(), indexed=False)
result_status = db.StringProperty(choices=_RESULTS, indexed=False)
retries = db.IntegerProperty(default=0, indexed=False)
writer_state = json_util.JsonProperty(dict, indexed=False)
slice_id = db.IntegerProperty(default=0, indexed=False)
slice_start_time = db.DateTimeProperty(indexed=False)
slice_request_id = db.ByteStringProperty(indexed=False)
slice_retries = db.IntegerProperty(default=0, indexed=False)
acquired_once = db.BooleanProperty(default=False, indexed=False)
update_time = db.DateTimeProperty(auto_now=True, indexed=False)
shard_description = db.TextProperty(default="")
last_work_item = db.TextProperty(default="")
def __str__(self):
kv = {"active": self.active,
"slice_id": self.slice_id,
"last_work_item": self.last_work_item,
"update_time": self.update_time}
if self.result_status:
kv["result_status"] = self.result_status
if self.retries:
kv["retries"] = self.retries
if self.slice_start_time:
kv["slice_start_time"] = self.slice_start_time
if self.slice_retries:
kv["slice_retries"] = self.slice_retries
if self.slice_request_id:
kv["slice_request_id"] = self.slice_request_id
if self.acquired_once:
kv["acquired_once"] = self.acquired_once
keys = kv.keys()
keys.sort()
result = "ShardState is {"
for k in keys:
result += k + ":" + str(kv[k]) + ","
result += "}"
return result
def reset_for_retry(self):
"""Reset self for shard retry."""
self.retries += 1
self.last_work_item = ""
self.active = True
self.result_status = None
self.input_finished = False
self.counters_map = CountersMap()
self.slice_id = 0
self.slice_start_time = None
self.slice_request_id = None
self.slice_retries = 0
self.acquired_once = False
def advance_for_next_slice(self, recovery_slice=False):
"""Advance self for next slice.
Args:
recovery_slice: True if this slice is running recovery logic.
See handlers.MapperWorkerCallbackHandler._attempt_slice_recovery
for more info.
"""
self.slice_start_time = None
self.slice_request_id = None
self.slice_retries = 0
self.acquired_once = False
if recovery_slice:
self.slice_id += 2
else:
self.slice_id += 1
def set_for_failure(self):
self.active = False
self.result_status = self.RESULT_FAILED
def set_for_abort(self):
self.active = False
self.result_status = self.RESULT_ABORTED
def set_input_finished(self):
self.input_finished = True
def is_input_finished(self):
return self.input_finished
def set_for_success(self):
self.active = False
self.result_status = self.RESULT_SUCCESS
self.slice_start_time = None
self.slice_request_id = None
self.slice_retries = 0
self.acquired_once = False
def copy_from(self, other_state):
"""Copy data from another shard state entity to self."""
for prop in self.properties().values():
setattr(self, prop.name, getattr(other_state, prop.name))
def __eq__(self, other):
if not isinstance(other, self.__class__):
return False
return self.properties() == other.properties()
def get_shard_number(self):
"""Gets the shard number from the key name."""
return int(self.key().name().split("-")[-1])
shard_number = property(get_shard_number)
def get_shard_id(self):
"""Returns the shard ID."""
return self.key().name()
shard_id = property(get_shard_id)
@classmethod
def kind(cls):
"""Returns entity kind."""
return "_GAE_MR_ShardState"
@classmethod
def shard_id_from_number(cls, mapreduce_id, shard_number):
"""Get shard id by mapreduce id and shard number.
Args:
mapreduce_id: mapreduce id as string.
shard_number: shard number to compute id for as int.
Returns:
shard id as string.
"""
return "%s-%d" % (mapreduce_id, shard_number)
@classmethod
def get_key_by_shard_id(cls, shard_id):
"""Retrieves the Key for this ShardState.
Args:
shard_id: The shard ID to fetch.
Returns:
The Datatore key to use to retrieve this ShardState.
"""
return db.Key.from_path(cls.kind(), shard_id)
@classmethod
def get_by_shard_id(cls, shard_id):
"""Get shard state from datastore by shard_id.
Args:
shard_id: shard id as string.
Returns:
ShardState for given shard id or None if it's not found.
"""
return cls.get_by_key_name(shard_id)
@classmethod
def find_by_mapreduce_state(cls, mapreduce_state):
"""Find all shard states for given mapreduce.
Deprecated. Use find_all_by_mapreduce_state.
This will be removed after 1.8.9 release.
Args:
mapreduce_state: MapreduceState instance
Returns:
A list of ShardStates.
"""
return list(cls.find_all_by_mapreduce_state(mapreduce_state))
@classmethod
def find_all_by_mapreduce_state(cls, mapreduce_state):
"""Find all shard states for given mapreduce.
Args:
mapreduce_state: MapreduceState instance
Yields:
shard states sorted by shard id.
"""
keys = cls.calculate_keys_by_mapreduce_state(mapreduce_state)
i = 0
while i < len(keys):
@db.non_transactional
def no_tx_get(i):
return db.get(keys[i:i+cls._MAX_STATES_IN_MEMORY])
states = no_tx_get(i)
for s in states:
i += 1
if s is not None:
yield s
@classmethod
def calculate_keys_by_mapreduce_state(cls, mapreduce_state):
"""Calculate all shard states keys for given mapreduce.
Args:
mapreduce_state: MapreduceState instance
Returns:
A list of keys for shard states, sorted by shard id.
The corresponding shard states may not exist.
"""
if mapreduce_state is None:
return []
keys = []
for i in range(mapreduce_state.mapreduce_spec.mapper.shard_count):
shard_id = cls.shard_id_from_number(mapreduce_state.key().name(), i)
keys.append(cls.get_key_by_shard_id(shard_id))
return keys
@classmethod
def create_new(cls, mapreduce_id, shard_number):
"""Create new shard state.
Args:
mapreduce_id: unique mapreduce id as string.
shard_number: shard number for which to create shard state.
Returns:
new instance of ShardState ready to put into datastore.
"""
shard_id = cls.shard_id_from_number(mapreduce_id, shard_number)
state = cls(key_name=shard_id,
mapreduce_id=mapreduce_id)
return state
class MapreduceControl(db.Model):
"""Datastore entity used to control mapreduce job execution.
Only one command may be sent to jobs at a time.
Properties:
command: The command to send to the job.
"""
ABORT = "abort"
_COMMANDS = frozenset([ABORT])
_KEY_NAME = "command"
command = db.TextProperty(choices=_COMMANDS, required=True)
@classmethod
def kind(cls):
"""Returns entity kind."""
return "_GAE_MR_MapreduceControl"
@classmethod
def get_key_by_job_id(cls, mapreduce_id):
"""Retrieves the Key for a mapreduce ID.
Args:
mapreduce_id: The job to fetch.
Returns:
Datastore Key for the command for the given job ID.
"""
return db.Key.from_path(cls.kind(), "%s:%s" % (mapreduce_id, cls._KEY_NAME))
@classmethod
def abort(cls, mapreduce_id, **kwargs):
"""Causes a job to abort.
Args:
mapreduce_id: The job to abort. Not verified as a valid job.
"""
cls(key_name="%s:%s" % (mapreduce_id, cls._KEY_NAME),
command=cls.ABORT).put(**kwargs)
class QuerySpec(object):
"""Encapsulates everything about a query needed by DatastoreInputReader."""
DEFAULT_BATCH_SIZE = 50
def __init__(self,
entity_kind,
keys_only=None,
filters=None,
batch_size=None,
model_class_path=None,
app=None,
ns=None):
self.entity_kind = entity_kind
self.keys_only = keys_only or False
self.filters = filters or None
self.batch_size = batch_size or self.DEFAULT_BATCH_SIZE
self.model_class_path = model_class_path
self.app = app
self.ns = ns
def to_json(self):
return {"entity_kind": self.entity_kind,
"keys_only": self.keys_only,
"filters": self.filters,
"batch_size": self.batch_size,
"model_class_path": self.model_class_path,
"app": self.app,
"ns": self.ns}
@classmethod
def from_json(cls, json):
return cls(json["entity_kind"],
json["keys_only"],
json["filters"],
json["batch_size"],
json["model_class_path"],
json["app"],
json["ns"])