Files
ray/python/ray/remote_function.py
T
Robert Nishihara d81e71e297 Enable actor methods to be decorated on the caller side also and get postprocessors. (#4732)
* Allow decorating ray actor methods.

* Add test.

* Add get postprocessors.

* Improve documentation.

* Make it work for remote functions.

* Temporary fix.
2019-05-04 11:53:47 -07:00

153 lines
6.1 KiB
Python

from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import copy
import logging
from ray.function_manager import FunctionDescriptor
import ray.signature
# Default parameters for remote functions.
DEFAULT_REMOTE_FUNCTION_CPUS = 1
DEFAULT_REMOTE_FUNCTION_NUM_RETURN_VALS = 1
DEFAULT_REMOTE_FUNCTION_MAX_CALLS = 0
logger = logging.getLogger(__name__)
class RemoteFunction(object):
"""A remote function.
This is a decorated function. It can be used to spawn tasks.
Attributes:
_function: The original function.
_function_descriptor: The function descriptor.
_function_name: The module and function name.
_num_cpus: The default number of CPUs to use for invocations of this
remote function.
_num_gpus: The default number of GPUs to use for invocations of this
remote function.
_resources: The default custom resource requirements for invocations of
this remote function.
_num_return_vals: The default number of return values for invocations
of this remote function.
_max_calls: The number of times a worker can execute this function
before executing.
_decorator: An optional decorator that should be applied to the remote
function invocation (as opposed to the function execution) before
invoking the function. 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_function" in "python/ray/tests/test_basic.py".
_function_signature: The function signature.
"""
def __init__(self, function, num_cpus, num_gpus, resources,
num_return_vals, max_calls):
self._function = function
self._function_descriptor = FunctionDescriptor.from_function(function)
self._function_name = (
self._function.__module__ + "." + self._function.__name__)
self._num_cpus = (DEFAULT_REMOTE_FUNCTION_CPUS
if num_cpus is None else num_cpus)
self._num_gpus = num_gpus
self._resources = resources
self._num_return_vals = (DEFAULT_REMOTE_FUNCTION_NUM_RETURN_VALS if
num_return_vals is None else num_return_vals)
self._max_calls = (DEFAULT_REMOTE_FUNCTION_MAX_CALLS
if max_calls is None else max_calls)
self._decorator = getattr(function, "__ray_invocation_decorator__",
None)
ray.signature.check_signature_supported(self._function)
self._function_signature = ray.signature.extract_signature(
self._function)
# Export the function.
worker = ray.worker.get_global_worker()
# In which session this function was exported last time.
self._last_export_session = worker._session_index
worker.function_actor_manager.export(self)
def __call__(self, *args, **kwargs):
raise Exception("Remote functions cannot be called directly. Instead "
"of running '{}()', try '{}.remote()'.".format(
self._function_name, self._function_name))
def remote(self, *args, **kwargs):
"""This runs immediately when a remote function is called."""
return self._remote(args=args, kwargs=kwargs)
def _submit(self,
args=None,
kwargs=None,
num_return_vals=None,
num_cpus=None,
num_gpus=None,
resources=None):
logger.warning(
"WARNING: _submit() is being deprecated. Please use _remote().")
return self._remote(
args=args,
kwargs=kwargs,
num_return_vals=num_return_vals,
num_cpus=num_cpus,
num_gpus=num_gpus,
resources=resources)
def _remote(self,
args=None,
kwargs=None,
num_return_vals=None,
num_cpus=None,
num_gpus=None,
resources=None):
"""An experimental alternate way to submit remote functions."""
worker = ray.worker.get_global_worker()
worker.check_connected()
if self._last_export_session < worker._session_index:
# If this function was exported in a previous session, we need to
# export this function again, because current GCS doesn't have it.
self._last_export_session = worker._session_index
worker.function_actor_manager.export(self)
kwargs = {} if kwargs is None else kwargs
args = [] if args is None else args
if num_return_vals is None:
num_return_vals = self._num_return_vals
resources = ray.utils.resources_from_resource_arguments(
self._num_cpus, self._num_gpus, self._resources, num_cpus,
num_gpus, resources)
def invocation(args, kwargs):
args = ray.signature.extend_args(self._function_signature, args,
kwargs)
if worker.mode == ray.worker.LOCAL_MODE:
# In LOCAL_MODE, remote calls simply execute the function.
# We copy the arguments to prevent the function call from
# mutating them and to match the usual behavior of
# immutable remote objects.
result = self._function(*copy.deepcopy(args))
return result
object_ids = worker.submit_task(
self._function_descriptor,
args,
num_return_vals=num_return_vals,
resources=resources)
if len(object_ids) == 1:
return object_ids[0]
elif len(object_ids) > 1:
return object_ids
if self._decorator is not None:
invocation = self._decorator(invocation)
return invocation(args, kwargs)