Files
ray/python/ray/actor.py
T
Simon Mo 29ba6bfc64 Basic Async Actor Call (#6183)
* Start trying to figure out where to put fibers

* Pass is_async flag from python to context

* Just running things in fiber works

* Yield implemented, need some debugging to make it work

* It worked!

* Remove debug prints

* Lint

* Revert the clang-format

* Remove unnecessary log

* Remove unncessary import

* Add attribution

* Address comment

* Add test

* Missed a merge conflict

* Make test pass and compile

* Address comment

* Rename async -> asyncio

* Move async test to py3 only

* Fix ignore path
2019-11-21 11:56:46 -08:00

941 lines
38 KiB
Python

from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import os
import copy
import inspect
import logging
import six
import sys
import weakref
from abc import ABCMeta, abstractmethod
from collections import namedtuple
from ray.function_manager import FunctionDescriptor
import ray.ray_constants as ray_constants
import ray._raylet
import ray.signature as signature
import ray.worker
from ray import ActorID, ActorClassID
logger = logging.getLogger(__name__)
def method(*args, **kwargs):
"""Annotate an actor method.
.. code-block:: python
@ray.remote
class Foo(object):
@ray.method(num_return_vals=2)
def bar(self):
return 1, 2
f = Foo.remote()
_, _ = f.bar.remote()
Args:
num_return_vals: The number of object IDs that should be returned by
invocations of this actor method.
"""
assert len(args) == 0
assert len(kwargs) == 1
assert "num_return_vals" in kwargs
num_return_vals = kwargs["num_return_vals"]
def annotate_method(method):
method.__ray_num_return_vals__ = num_return_vals
return method
return annotate_method
# Create objects to wrap method invocations. This is done so that we can
# invoke methods with actor.method.remote() instead of actor.method().
class ActorMethod(object):
"""A class used to invoke an actor method.
Note: This class only keeps a weak ref to the actor, unless it has been
passed to a remote function. This avoids delays in GC of the actor.
Attributes:
_actor: A handle to the actor.
_method_name: The name of the actor method.
_num_return_vals: The default number of return values that the method
invocation should return.
_decorator: An optional decorator that should be applied to the actor
method invocation (as opposed to the actor method execution) before
invoking the method. The decorator must return a function that
takes in two arguments ("args" and "kwargs"). In most cases, it
should call the function that was passed into the decorator and
return the resulting ObjectIDs. For an example, see
"test_decorated_method" in "python/ray/tests/test_actor.py".
"""
def __init__(self,
actor,
method_name,
num_return_vals,
decorator=None,
hardref=False):
self._actor_ref = weakref.ref(actor)
self._method_name = method_name
self._num_return_vals = num_return_vals
# This is a decorator that is used to wrap the function invocation (as
# opposed to the function execution). The decorator must return a
# function that takes in two arguments ("args" and "kwargs"). In most
# cases, it should call the function that was passed into the decorator
# and return the resulting ObjectIDs.
self._decorator = decorator
# Acquire a hard ref to the actor, this is useful mainly when passing
# actor method handles to remote functions.
if hardref:
self._actor_hard_ref = actor
else:
self._actor_hard_ref = None
def __call__(self, *args, **kwargs):
raise Exception("Actor methods cannot be called directly. Instead "
"of running 'object.{}()', try "
"'object.{}.remote()'.".format(self._method_name,
self._method_name))
def remote(self, *args, **kwargs):
return self._remote(args, kwargs)
def _remote(self, args=None, kwargs=None, num_return_vals=None):
if num_return_vals is None:
num_return_vals = self._num_return_vals
def invocation(args, kwargs):
actor = self._actor_hard_ref or self._actor_ref()
if actor is None:
raise RuntimeError("Lost reference to actor")
return actor._actor_method_call(
self._method_name,
args=args,
kwargs=kwargs,
num_return_vals=num_return_vals)
# Apply the decorator if there is one.
if self._decorator is not None:
invocation = self._decorator(invocation)
return invocation(args, kwargs)
def __getstate__(self):
return {
"actor": self._actor_ref(),
"method_name": self._method_name,
"num_return_vals": self._num_return_vals,
"decorator": self._decorator,
}
def __setstate__(self, state):
self.__init__(
state["actor"],
state["method_name"],
state["num_return_vals"],
state["decorator"],
hardref=True)
class ActorClassMetadata(object):
"""Metadata for an actor class.
Attributes:
modified_class: The original class that was decorated (with some
additional methods added like __ray_terminate__).
class_id: The ID of this actor class.
class_name: The name of this class.
num_cpus: The default number of CPUs required by the actor creation
task.
num_gpus: The default number of GPUs required by the actor creation
task.
memory: The heap memory quota for this actor.
object_store_memory: The object store memory quota for this actor.
resources: The default resources required by the actor creation task.
actor_method_cpus: The number of CPUs required by actor method tasks.
last_export_session_and_job: A pair of the last exported session
and job to help us to know whether this function was exported.
This is an imperfect mechanism used to determine if we need to
export the remote function again. It is imperfect in the sense that
the actor class definition could be exported multiple times by
different workers.
actor_methods: The actor methods.
method_decorators: Optional decorators that should be applied to the
method invocation function before invoking the actor methods. These
can be set by attaching the attribute
"__ray_invocation_decorator__" to the actor method.
method_signatures: The signatures of the methods.
actor_method_names: The names of the actor methods.
actor_method_num_return_vals: The default number of return values for
each actor method.
"""
def __init__(self, modified_class, class_id, max_reconstructions, num_cpus,
num_gpus, memory, object_store_memory, resources):
self.modified_class = modified_class
self.class_id = class_id
self.class_name = modified_class.__name__
self.max_reconstructions = max_reconstructions
self.num_cpus = num_cpus
self.num_gpus = num_gpus
self.memory = memory
self.object_store_memory = object_store_memory
self.resources = resources
self.last_export_session_and_job = None
self.actor_methods = inspect.getmembers(
self.modified_class, ray.utils.is_function_or_method)
self.actor_method_names = [
method_name for method_name, _ in self.actor_methods
]
constructor_name = "__init__"
if constructor_name not in self.actor_method_names:
# Add __init__ if it does not exist.
# Actor creation will be executed with __init__ together.
# Assign an __init__ function will avoid many checks later on.
def __init__(self):
pass
self.modified_class.__init__ = __init__
self.actor_method_names.append(constructor_name)
self.actor_methods.append((constructor_name, __init__))
# Extract the signatures of each of the methods. This will be used
# to catch some errors if the methods are called with inappropriate
# arguments.
self.method_decorators = {}
self.method_signatures = {}
self.actor_method_num_return_vals = {}
for method_name, method in self.actor_methods:
# Print a warning message if the method signature is not
# supported. We don't raise an exception because if the actor
# inherits from a class that has a method whose signature we
# don't support, there may not be much the user can do about it.
self.method_signatures[method_name] = signature.extract_signature(
method, ignore_first=not ray.utils.is_class_method(method))
# Set the default number of return values for this method.
if hasattr(method, "__ray_num_return_vals__"):
self.actor_method_num_return_vals[method_name] = (
method.__ray_num_return_vals__)
else:
self.actor_method_num_return_vals[method_name] = (
ray_constants.DEFAULT_ACTOR_METHOD_NUM_RETURN_VALS)
if hasattr(method, "__ray_invocation_decorator__"):
self.method_decorators[method_name] = (
method.__ray_invocation_decorator__)
class ActorClass(object):
"""An actor class.
This is a decorated class. It can be used to create actors.
Attributes:
__ray_metadata__: Contains metadata for the actor.
"""
def __init__(cls, name, bases, attr):
"""Prevents users from directly inheriting from an ActorClass.
This will be called when a class is defined with an ActorClass object
as one of its base classes. To intentionally construct an ActorClass,
use the '_ray_from_modified_class' classmethod.
Raises:
TypeError: Always.
"""
for base in bases:
if isinstance(base, ActorClass):
raise TypeError("Attempted to define subclass '{}' of actor "
"class '{}'. Inheriting from actor classes is "
"not currently supported. You can instead "
"inherit from a non-actor base class and make "
"the derived class an actor class (with "
"@ray.remote).".format(
name, base.__ray_metadata__.class_name))
# This shouldn't be reached because one of the base classes must be
# an actor class if this was meant to be subclassed.
assert False, ("ActorClass.__init__ should not be called. Please use "
"the @ray.remote decorator instead.")
def __call__(self, *args, **kwargs):
"""Prevents users from directly instantiating an ActorClass.
This will be called instead of __init__ when 'ActorClass()' is executed
because an is an object rather than a metaobject. To properly
instantiated a remote actor, use 'ActorClass.remote()'.
Raises:
Exception: Always.
"""
raise Exception("Actors cannot be instantiated directly. "
"Instead of '{}()', use '{}.remote()'.".format(
self.__ray_metadata__.class_name,
self.__ray_metadata__.class_name))
@classmethod
def _ray_from_modified_class(cls, modified_class, class_id,
max_reconstructions, num_cpus, num_gpus,
memory, object_store_memory, resources):
for attribute in ["remote", "_remote", "_ray_from_modified_class"]:
if hasattr(modified_class, attribute):
logger.warning("Creating an actor from class {} overwrites "
"attribute {} of that class".format(
modified_class.__name__, attribute))
# Make sure the actor class we are constructing inherits from the
# original class so it retains all class properties.
class DerivedActorClass(cls, modified_class):
pass
name = "ActorClass({})".format(modified_class.__name__)
DerivedActorClass.__module__ = modified_class.__module__
DerivedActorClass.__name__ = name
DerivedActorClass.__qualname__ = name
# Construct the base object.
self = DerivedActorClass.__new__(DerivedActorClass)
self.__ray_metadata__ = ActorClassMetadata(
modified_class, class_id, max_reconstructions, num_cpus, num_gpus,
memory, object_store_memory, resources)
return self
def remote(self, *args, **kwargs):
"""Create an actor.
Args:
args: These arguments are forwarded directly to the actor
constructor.
kwargs: These arguments are forwarded directly to the actor
constructor.
Returns:
A handle to the newly created actor.
"""
return self._remote(args=args, kwargs=kwargs)
def options(self, **options):
"""Convenience method for creating an actor with options.
Same arguments as Actor._remote(), but returns a wrapped actor class
that a non-underscore .remote() can be called on.
Examples:
# The following two calls are equivalent.
>>> Actor._remote(num_cpus=4, max_concurrency=8, args=[x, y])
>>> Actor.options(num_cpus=4, max_concurrency=8).remote(x, y)
"""
actor_cls = self
class ActorOptionWrapper(object):
def remote(self, *args, **kwargs):
return actor_cls._remote(args=args, kwargs=kwargs, **options)
return ActorOptionWrapper()
def _remote(self,
args=None,
kwargs=None,
num_cpus=None,
num_gpus=None,
memory=None,
object_store_memory=None,
resources=None,
is_direct_call=None,
max_concurrency=None,
name=None,
detached=False,
is_asyncio=False):
"""Create an actor.
This method allows more flexibility than the remote method because
resource requirements can be specified and override the defaults in the
decorator.
Args:
args: The arguments to forward to the actor constructor.
kwargs: The keyword arguments to forward to the actor constructor.
num_cpus: The number of CPUs required by the actor creation task.
num_gpus: The number of GPUs required by the actor creation task.
memory: Restrict the heap memory usage of this actor.
object_store_memory: Restrict the object store memory used by
this actor when creating objects.
resources: The custom resources required by the actor creation
task.
is_direct_call: Use direct actor calls.
max_concurrency: The max number of concurrent calls to allow for
this actor. This only works with direct actor calls.
name: The globally unique name for the actor.
detached: Whether the actor should be kept alive after driver
exits.
is_asyncio: Turn on async actor calls. This only works with direct
actor calls.
Returns:
A handle to the newly created actor.
"""
if args is None:
args = []
if kwargs is None:
kwargs = {}
if is_direct_call is None:
is_direct_call = bool(os.environ.get("RAY_FORCE_DIRECT"))
if max_concurrency is None:
max_concurrency = 1
if max_concurrency > 1 and not is_direct_call:
raise ValueError(
"setting max_concurrency requires is_direct_call=True")
if max_concurrency < 1:
raise ValueError("max_concurrency must be >= 1")
if is_asyncio and not is_direct_call:
raise ValueError(
"Setting is_asyncio requires is_direct_call=True.")
if is_asyncio and max_concurrency != 1:
raise ValueError("Setting is_asyncio requires max_concurrency=1.")
worker = ray.worker.get_global_worker()
if worker.mode is None:
raise Exception("Actors cannot be created before ray.init() "
"has been called.")
meta = self.__ray_metadata__
if detached and name is None:
raise Exception("Detached actors must be named. "
"Please use Actor._remote(name='some_name') "
"to associate the name.")
# Check whether the name is already taken.
if name is not None:
try:
ray.experimental.get_actor(name)
except ValueError: # name is not taken, expected.
pass
else:
raise ValueError(
"The name {name} is already taken. Please use "
"a different name or get existing actor using "
"ray.experimental.get_actor('{name}')".format(name=name))
# Set the actor's default resources if not already set. First three
# conditions are to check that no resources were specified in the
# decorator. Last three conditions are to check that no resources were
# specified when _remote() was called.
if (meta.num_cpus is None and meta.num_gpus is None
and meta.resources is None and num_cpus is None
and num_gpus is None and resources is None):
# In the default case, actors acquire no resources for
# their lifetime, and actor methods will require 1 CPU.
cpus_to_use = ray_constants.DEFAULT_ACTOR_CREATION_CPU_SIMPLE
actor_method_cpu = ray_constants.DEFAULT_ACTOR_METHOD_CPU_SIMPLE
else:
# If any resources are specified (here or in decorator), then
# all resources are acquired for the actor's lifetime and no
# resources are associated with methods.
cpus_to_use = (ray_constants.DEFAULT_ACTOR_CREATION_CPU_SPECIFIED
if meta.num_cpus is None else meta.num_cpus)
actor_method_cpu = ray_constants.DEFAULT_ACTOR_METHOD_CPU_SPECIFIED
function_name = "__init__"
function_descriptor = FunctionDescriptor(
meta.modified_class.__module__, function_name,
meta.modified_class.__name__)
# Do not export the actor class or the actor if run in LOCAL_MODE
# Instead, instantiate the actor locally and add it to the worker's
# dictionary
if worker.mode == ray.LOCAL_MODE:
actor_id = ActorID.from_random()
worker.actors[actor_id] = meta.modified_class(
*copy.deepcopy(args), **copy.deepcopy(kwargs))
else:
# Export the actor.
if (meta.last_export_session_and_job !=
worker.current_session_and_job):
# If this actor class was not exported in this session and job,
# we need to export this function again, because current GCS
# doesn't have it.
meta.last_export_session_and_job = (
worker.current_session_and_job)
worker.function_actor_manager.export_actor_class(
meta.modified_class, meta.actor_method_names)
resources = ray.utils.resources_from_resource_arguments(
cpus_to_use, meta.num_gpus, meta.memory,
meta.object_store_memory, meta.resources, num_cpus, num_gpus,
memory, object_store_memory, resources)
# If the actor methods require CPU resources, then set the required
# placement resources. If actor_placement_resources is empty, then
# the required placement resources will be the same as resources.
actor_placement_resources = {}
assert actor_method_cpu in [0, 1]
if actor_method_cpu == 1:
actor_placement_resources = resources.copy()
actor_placement_resources["CPU"] += 1
function_signature = meta.method_signatures[function_name]
creation_args = signature.flatten_args(function_signature, args,
kwargs)
actor_id = worker.core_worker.create_actor(
function_descriptor.get_function_descriptor_list(),
creation_args, meta.max_reconstructions, resources,
actor_placement_resources, is_direct_call, max_concurrency,
detached, is_asyncio)
actor_handle = ActorHandle(
actor_id,
meta.modified_class.__module__,
meta.class_name,
meta.actor_method_names,
meta.method_decorators,
meta.method_signatures,
meta.actor_method_num_return_vals,
actor_method_cpu,
worker.current_session_and_job,
original_handle=True)
if name is not None:
ray.experimental.register_actor(name, actor_handle)
return actor_handle
class ActorHandle(object):
"""A handle to an actor.
The fields in this class are prefixed with _ray_ to hide them from the user
and to avoid collision with actor method names.
An ActorHandle can be created in three ways. First, by calling .remote() on
an ActorClass. Second, by passing an actor handle into a task (forking the
ActorHandle). Third, by directly serializing the ActorHandle (e.g., with
cloudpickle).
Attributes:
_ray_actor_id: Actor ID.
_ray_module_name: The module name of this actor.
_ray_actor_method_names: The names of the actor methods.
_ray_method_decorators: Optional decorators for the function
invocation. This can be used to change the behavior on the
invocation side, whereas a regular decorator can be used to change
the behavior on the execution side.
_ray_method_signatures: The signatures of the actor methods.
_ray_method_num_return_vals: The default number of return values for
each method.
_ray_class_name: The name of the actor class.
_ray_actor_method_cpus: The number of CPUs required by actor methods.
_ray_original_handle: True if this is the original actor handle for a
given actor. If this is true, then the actor will be destroyed when
this handle goes out of scope.
"""
def __init__(self,
actor_id,
module_name,
class_name,
actor_method_names,
method_decorators,
method_signatures,
method_num_return_vals,
actor_method_cpus,
session_and_job,
original_handle=False):
self._ray_actor_id = actor_id
self._ray_module_name = module_name
self._ray_original_handle = original_handle
self._ray_actor_method_names = actor_method_names
self._ray_method_decorators = method_decorators
self._ray_method_signatures = method_signatures
self._ray_method_num_return_vals = method_num_return_vals
self._ray_class_name = class_name
self._ray_actor_method_cpus = actor_method_cpus
self._ray_session_and_job = session_and_job
self._ray_function_descriptor_lists = {
method_name: FunctionDescriptor(
self._ray_module_name, method_name,
self._ray_class_name).get_function_descriptor_list()
for method_name in self._ray_method_signatures.keys()
}
for method_name in actor_method_names:
method = ActorMethod(
self,
method_name,
self._ray_method_num_return_vals[method_name],
decorator=self._ray_method_decorators.get(method_name))
setattr(self, method_name, method)
def _actor_method_call(self,
method_name,
args=None,
kwargs=None,
num_return_vals=None):
"""Method execution stub for an actor handle.
This is the function that executes when
`actor.method_name.remote(*args, **kwargs)` is called. Instead of
executing locally, the method is packaged as a task and scheduled
to the remote actor instance.
Args:
method_name: The name of the actor method to execute.
args: A list of arguments for the actor method.
kwargs: A dictionary of keyword arguments for the actor method.
num_return_vals (int): The number of return values for the method.
Returns:
object_ids: A list of object IDs returned by the remote actor
method.
"""
worker = ray.worker.get_global_worker()
args = args or []
kwargs = kwargs or {}
function_signature = self._ray_method_signatures[method_name]
if not args and not kwargs and not function_signature:
list_args = []
else:
list_args = signature.flatten_args(function_signature, args,
kwargs)
if worker.mode == ray.LOCAL_MODE:
function = getattr(worker.actors[self._actor_id], method_name)
object_ids = worker.local_mode_manager.execute(
function, method_name, args, kwargs, num_return_vals)
else:
object_ids = worker.core_worker.submit_actor_task(
self._ray_actor_id,
self._ray_function_descriptor_lists[method_name], list_args,
num_return_vals, self._ray_actor_method_cpus)
if len(object_ids) == 1:
object_ids = object_ids[0]
elif len(object_ids) == 0:
object_ids = None
return object_ids
# Make tab completion work.
def __dir__(self):
return self._ray_actor_method_names
def __repr__(self):
return "Actor({}, {})".format(self._ray_class_name,
self._actor_id.hex())
def __del__(self):
"""Kill the worker that is running this actor."""
# TODO(swang): Also clean up forked actor handles.
# Kill the worker if this is the original actor handle, created
# with Class.remote(). TODO(rkn): Even without passing handles around,
# this is not the right policy. the actor should be alive as long as
# there are ANY handles in scope in the process that created the actor,
# not just the first one.
worker = ray.worker.get_global_worker()
exported_in_current_session_and_job = (
self._ray_session_and_job == worker.current_session_and_job)
if (worker.mode == ray.worker.SCRIPT_MODE
and not exported_in_current_session_and_job):
# If the worker is a driver and driver id has changed because
# Ray was shut down re-initialized, the actor is already cleaned up
# and we don't need to send `__ray_terminate__` again.
logger.warning(
"Actor is garbage collected in the wrong driver." +
" Actor id = %s, class name = %s.", self._ray_actor_id,
self._ray_class_name)
return
if worker.connected and self._ray_original_handle:
# Note: in py2 the weakref is destroyed prior to calling __del__
# so we need to set the hardref here briefly
try:
self.__ray_terminate__._actor_hard_ref = self
self.__ray_terminate__.remote()
finally:
self.__ray_terminate__._actor_hard_ref = None
@property
def _actor_id(self):
return self._ray_actor_id
def _serialization_helper(self, ray_forking):
"""This is defined in order to make pickling work.
Args:
ray_forking: True if this is being called because Ray is forking
the actor handle and false if it is being called by pickling.
Returns:
A dictionary of the information needed to reconstruct the object.
"""
worker = ray.worker.get_global_worker()
worker.check_connected()
state = {
# Local mode just uses the actor ID.
"core_handle": worker.core_worker.serialize_actor_handle(
self._ray_actor_id)
if hasattr(worker, "core_worker") else self._ray_actor_id,
"module_name": self._ray_module_name,
"class_name": self._ray_class_name,
"actor_method_names": self._ray_actor_method_names,
"method_decorators": self._ray_method_decorators,
"method_signatures": self._ray_method_signatures,
"method_num_return_vals": self._ray_method_num_return_vals,
"actor_method_cpus": self._ray_actor_method_cpus
}
return state
def _deserialization_helper(self, state, ray_forking):
"""This is defined in order to make pickling work.
Args:
state: The serialized state of the actor handle.
ray_forking: True if this is being called because Ray is forking
the actor handle and false if it is being called by pickling.
"""
worker = ray.worker.get_global_worker()
worker.check_connected()
self.__init__(
# TODO(swang): Accessing the worker's current task ID is not
# thread-safe.
# Local mode just uses the actor ID.
worker.core_worker.deserialize_and_register_actor_handle(
state["core_handle"])
if hasattr(worker, "core_worker") else state["core_handle"],
state["module_name"],
state["class_name"],
state["actor_method_names"],
state["method_decorators"],
state["method_signatures"],
state["method_num_return_vals"],
state["actor_method_cpus"],
worker.current_session_and_job)
def __getstate__(self):
"""This code path is used by pickling but not by Ray forking."""
return self._serialization_helper(False)
def __setstate__(self, state):
"""This code path is used by pickling but not by Ray forking."""
return self._deserialization_helper(state, False)
def make_actor(cls, num_cpus, num_gpus, memory, object_store_memory, resources,
max_reconstructions):
# Give an error if cls is an old-style class.
if not issubclass(cls, object):
raise TypeError(
"The @ray.remote decorator cannot be applied to old-style "
"classes. In Python 2, you must declare the class with "
"'class ClassName(object):' instead of 'class ClassName:'.")
if issubclass(cls, Checkpointable) and inspect.isabstract(cls):
raise TypeError(
"A checkpointable actor class should implement all abstract "
"methods in the `Checkpointable` interface.")
if max_reconstructions is None:
max_reconstructions = 0
if not (ray_constants.NO_RECONSTRUCTION <= max_reconstructions <=
ray_constants.INFINITE_RECONSTRUCTION):
raise Exception("max_reconstructions must be in range [%d, %d]." %
(ray_constants.NO_RECONSTRUCTION,
ray_constants.INFINITE_RECONSTRUCTION))
# Modify the class to have an additional method that will be used for
# terminating the worker.
class Class(cls):
def __ray_terminate__(self):
worker = ray.worker.get_global_worker()
if worker.mode != ray.LOCAL_MODE:
ray.actor.exit_actor()
def __ray_checkpoint__(self):
"""Save a checkpoint.
This task saves the current state of the actor, the current task
frontier according to the raylet, and the checkpoint index
(number of tasks executed so far).
"""
worker = ray.worker.global_worker
if not isinstance(self, ray.actor.Checkpointable):
raise Exception(
"__ray_checkpoint__.remote() may only be called on actors "
"that implement ray.actor.Checkpointable")
return worker._save_actor_checkpoint()
Class.__module__ = cls.__module__
Class.__name__ = cls.__name__
return ActorClass._ray_from_modified_class(
Class, ActorClassID.from_random(), max_reconstructions, num_cpus,
num_gpus, memory, object_store_memory, resources)
def exit_actor():
"""Intentionally exit the current actor.
This function is used to disconnect an actor and exit the worker.
Raises:
Exception: An exception is raised if this is a driver or this
worker is not an actor.
"""
worker = ray.worker.global_worker
if worker.mode == ray.WORKER_MODE and not worker.actor_id.is_nil():
# Intentionally disconnect the core worker from the raylet so the
# raylet won't push an error message to the driver.
worker.core_worker.disconnect()
ray.disconnect()
# Disconnect global state from GCS.
ray.state.state.disconnect()
sys.exit(0)
assert False, "This process should have terminated."
else:
raise Exception("exit_actor called on a non-actor worker.")
ray.worker.global_worker.make_actor = make_actor
CheckpointContext = namedtuple(
"CheckpointContext",
[
# Actor's ID.
"actor_id",
# Number of tasks executed since last checkpoint.
"num_tasks_since_last_checkpoint",
# Time elapsed since last checkpoint, in milliseconds.
"time_elapsed_ms_since_last_checkpoint",
],
)
"""A namedtuple that contains information about actor's last checkpoint."""
Checkpoint = namedtuple(
"Checkpoint",
[
# ID of this checkpoint.
"checkpoint_id",
# The timestamp at which this checkpoint was saved,
# represented as milliseconds elapsed since Unix epoch.
"timestamp",
],
)
"""A namedtuple that represents a checkpoint."""
class Checkpointable(six.with_metaclass(ABCMeta, object)):
"""An interface that indicates an actor can be checkpointed."""
@abstractmethod
def should_checkpoint(self, checkpoint_context):
"""Whether this actor needs to be checkpointed.
This method will be called after every task. You should implement this
callback to decide whether this actor needs to be checkpointed at this
time, based on the checkpoint context, or any other factors.
Args:
checkpoint_context: A namedtuple that contains info about last
checkpoint.
Returns:
A boolean value that indicates whether this actor needs to be
checkpointed.
"""
pass
@abstractmethod
def save_checkpoint(self, actor_id, checkpoint_id):
"""Save a checkpoint to persistent storage.
If `should_checkpoint` returns true, this method will be called. You
should implement this callback to save actor's checkpoint and the given
checkpoint id to persistent storage.
Args:
actor_id: Actor's ID.
checkpoint_id: ID of this checkpoint. You should save it together
with actor's checkpoint data. And it will be used by the
`load_checkpoint` method.
Returns:
None.
"""
pass
@abstractmethod
def load_checkpoint(self, actor_id, available_checkpoints):
"""Load actor's previous checkpoint, and restore actor's state.
This method will be called when an actor is reconstructed, after
actor's constructor.
If the actor needs to restore from previous checkpoint, this function
should restore actor's state and return the checkpoint ID. Otherwise,
it should do nothing and return None.
Note, this method must return one of the checkpoint IDs in the
`available_checkpoints` list, or None. Otherwise, an exception will be
raised.
Args:
actor_id: Actor's ID.
available_checkpoints: A list of `Checkpoint` namedtuples that
contains all available checkpoint IDs and their timestamps,
sorted by timestamp in descending order.
Returns:
The ID of the checkpoint from which the actor was resumed, or None
if the actor should restart from the beginning.
"""
pass
@abstractmethod
def checkpoint_expired(self, actor_id, checkpoint_id):
"""Delete an expired checkpoint.
This method will be called when an checkpoint is expired. You should
implement this method to delete your application checkpoint data.
Note, the maximum number of checkpoints kept in the backend can be
configured at `RayConfig.num_actor_checkpoints_to_keep`.
Args:
actor_id: ID of the actor.
checkpoint_id: ID of the checkpoint that has expired.
Returns:
None.
"""
pass
def get_checkpoints_for_actor(actor_id):
"""Get the available checkpoints for the given actor ID, return a list
sorted by checkpoint timestamp in descending order.
"""
checkpoint_info = ray.state.state.actor_checkpoint_info(actor_id)
if checkpoint_info is None:
return []
checkpoints = [
Checkpoint(checkpoint_id, timestamp) for checkpoint_id, timestamp in
zip(checkpoint_info["CheckpointIds"], checkpoint_info["Timestamps"])
]
return sorted(
checkpoints,
key=lambda checkpoint: checkpoint.timestamp,
reverse=True,
)