Ejemplo n.º 1
0
def dagnode_from_json(input_json: Any) -> Union[DAGNode, RayServeHandle, Any]:
    """
    Decode a DAGNode from given input json dictionary. JSON serialization is
    only used and enforced in ray serve from ray core API authored DAGNode(s).

    Covers both RayServeHandle and DAGNode types.

    Assumptions:
        - User object's JSON dict does not have keys that collide with our
            reserved DAGNODE_TYPE_KEY
        - RayServeHandle and Deployment can be re-constructed without losing
            states needed for their functionality or correctness.
        - DAGNode type can be re-constructed with new stable_uuid upon each
            deserialization without effective correctness of execution.
            - Only exception is ClassNode used as parent of ClassMethodNode
                that we perserve the same parent node.
        - .options() does not contain any DAGNode type
    """
    node_type_to_cls = {
        # Ray DAG Inputs
        InputNode.__name__: InputNode,
        InputAttributeNode.__name__: InputAttributeNode,
        # Deployment graph execution nodes
        DeploymentExecutorNode.__name__: DeploymentExecutorNode,
        DeploymentMethodExecutorNode.__name__: DeploymentMethodExecutorNode,
        DeploymentFunctionExecutorNode.__name__:
        DeploymentFunctionExecutorNode,
    }
    # Deserialize RayServeHandle type
    if SERVE_HANDLE_JSON_KEY in input_json:
        return serve_handle_from_json_dict(input_json)
    # Base case for plain objects
    elif DAGNODE_TYPE_KEY not in input_json:
        return input_json
    elif input_json[DAGNODE_TYPE_KEY] == RayServeDAGHandle.__name__:
        return RayServeDAGHandle(input_json["dag_node_json"])
    elif input_json[DAGNODE_TYPE_KEY] == "DeploymentSchema":
        return DeploymentSchema.parse_obj(input_json["schema"])
    elif input_json[DAGNODE_TYPE_KEY] == RayServeLazySyncHandle.__name__:
        return RayServeLazySyncHandle(
            input_json["deployment_name"],
            HandleOptions(input_json["handle_options_method_name"]),
        )
    # Deserialize DAGNode type
    elif input_json[DAGNODE_TYPE_KEY] in node_type_to_cls:
        return node_type_to_cls[input_json[DAGNODE_TYPE_KEY]].from_json(
            input_json)
    else:
        # Class and Function nodes require original module as body.
        module_name, attr_name = parse_import_path(input_json["import_path"])
        module = getattr(import_module(module_name), attr_name)
        if input_json[DAGNODE_TYPE_KEY] == FunctionNode.__name__:
            return FunctionNode.from_json(input_json, module)
        elif input_json[DAGNODE_TYPE_KEY] == ClassNode.__name__:
            return ClassNode.from_json(input_json, module)
Ejemplo n.º 2
0
def dagnode_from_json(input_json: Any) -> Union[DAGNode, RayServeHandle, Any]:
    """
    Decode a DAGNode from given input json dictionary. JSON serialization is
    only used and enforced in ray serve from ray core API authored DAGNode(s).

    Covers both RayServeHandle and DAGNode types.

    Assumptions:
        - User object's JSON dict does not have keys that collide with our
            reserved DAGNODE_TYPE_KEY
        - RayServeHandle and Deployment can be re-constructed without losing
            states needed for their functionality or correctness.
        - DAGNode type can be re-constructed with new stable_uuid upon each
            deserialization without effective correctness of execution.
            - Only exception is ClassNode used as parent of ClassMethodNode
                that we perserve the same parent node.
        - .options() does not contain any DAGNode type
    """
    # Deserialize RayServeHandle type
    if SERVE_HANDLE_JSON_KEY in input_json:
        return json.loads(input_json, object_hook=serve_handle_object_hook)
    # Base case for plain objects
    elif DAGNODE_TYPE_KEY not in input_json:
        try:
            return json.loads(input_json)
        except Exception:
            return input_json
    # Deserialize DAGNode type
    elif input_json[DAGNODE_TYPE_KEY] == InputNode.__name__:
        return InputNode.from_json(input_json, object_hook=dagnode_from_json)
    elif input_json[DAGNODE_TYPE_KEY] == InputAtrributeNode.__name__:
        return InputAtrributeNode.from_json(input_json, object_hook=dagnode_from_json)
    elif input_json[DAGNODE_TYPE_KEY] == PipelineInputNode.__name__:
        return PipelineInputNode.from_json(input_json, object_hook=dagnode_from_json)
    elif input_json[DAGNODE_TYPE_KEY] == ClassMethodNode.__name__:
        return ClassMethodNode.from_json(input_json, object_hook=dagnode_from_json)
    elif input_json[DAGNODE_TYPE_KEY] == DeploymentNode.__name__:
        return DeploymentNode.from_json(input_json, object_hook=dagnode_from_json)
    elif input_json[DAGNODE_TYPE_KEY] == DeploymentMethodNode.__name__:
        return DeploymentMethodNode.from_json(input_json, object_hook=dagnode_from_json)
    else:
        # Class and Function nodes require original module as body.
        print(f"import_path: {input_json['import_path']}")
        module_name, attr_name = parse_import_path(input_json["import_path"])
        module = getattr(import_module(module_name), attr_name)
        if input_json[DAGNODE_TYPE_KEY] == FunctionNode.__name__:
            return FunctionNode.from_json(
                input_json, module, object_hook=dagnode_from_json
            )
        elif input_json[DAGNODE_TYPE_KEY] == ClassNode.__name__:
            return ClassNode.from_json(
                input_json, module, object_hook=dagnode_from_json
            )
Ejemplo n.º 3
0
        async def __init__(
            self,
            deployment_name,
            replica_tag,
            serialized_deployment_def: bytes,
            serialized_init_args: bytes,
            serialized_init_kwargs: bytes,
            deployment_config_proto_bytes: bytes,
            version: DeploymentVersion,
            controller_name: str,
            detached: bool,
        ):
            configure_component_logger(
                component_type="deployment",
                component_name=deployment_name,
                component_id=replica_tag,
            )

            deployment_def = cloudpickle.loads(serialized_deployment_def)

            if isinstance(deployment_def, str):
                import_path = deployment_def
                module_name, attr_name = parse_import_path(import_path)
                deployment_def = getattr(import_module(module_name), attr_name)
                # For ray or serve decorated class or function, strip to return
                # original body
                if isinstance(deployment_def, RemoteFunction):
                    deployment_def = deployment_def._function
                elif isinstance(deployment_def, ActorClass):
                    deployment_def = deployment_def.__ray_metadata__.modified_class
                elif isinstance(deployment_def, Deployment):
                    logger.warning(
                        f'The import path "{import_path}" contains a '
                        "decorated Serve deployment. The decorator's settings "
                        "are ignored when deploying via import path.")
                    deployment_def = deployment_def.func_or_class

            init_args = cloudpickle.loads(serialized_init_args)
            init_kwargs = cloudpickle.loads(serialized_init_kwargs)

            deployment_config = DeploymentConfig.from_proto_bytes(
                deployment_config_proto_bytes)

            if inspect.isfunction(deployment_def):
                is_function = True
            elif inspect.isclass(deployment_def):
                is_function = False
            else:
                assert False, (
                    "deployment_def must be function, class, or "
                    "corresponding import path. Instead, it's type was "
                    f"{type(deployment_def)}.")

            # Set the controller name so that serve.connect() in the user's
            # code will connect to the instance that this deployment is running
            # in.
            ray.serve.context.set_internal_replica_context(
                deployment_name,
                replica_tag,
                controller_name,
                servable_object=None,
            )

            assert controller_name, "Must provide a valid controller_name"

            controller_handle = ray.get_actor(controller_name,
                                              namespace=SERVE_NAMESPACE)

            # This closure initializes user code and finalizes replica
            # startup. By splitting the initialization step like this,
            # we can already access this actor before the user code
            # has finished initializing.
            # The supervising state manager can then wait
            # for allocation of this replica by using the `is_allocated`
            # method. After that, it calls `reconfigure` to trigger
            # user code initialization.
            async def initialize_replica():
                if is_function:
                    _callable = deployment_def
                else:
                    # This allows deployments to define an async __init__
                    # method (required for FastAPI).
                    _callable = deployment_def.__new__(deployment_def)
                    await sync_to_async(_callable.__init__)(*init_args,
                                                            **init_kwargs)

                # Setting the context again to update the servable_object.
                ray.serve.context.set_internal_replica_context(
                    deployment_name,
                    replica_tag,
                    controller_name,
                    servable_object=_callable,
                )

                self.replica = RayServeReplica(
                    _callable,
                    deployment_name,
                    replica_tag,
                    deployment_config,
                    deployment_config.user_config,
                    version,
                    is_function,
                    controller_handle,
                )

            # Is it fine that replica is None here?
            # Should we add a check in all methods that use self.replica
            # or, alternatively, create an async get_replica() method?
            self.replica = None
            self._initialize_replica = initialize_replica
Ejemplo n.º 4
0
        async def __init__(
            self,
            deployment_name,
            replica_tag,
            init_args,
            init_kwargs,
            deployment_config_proto_bytes: bytes,
            version: DeploymentVersion,
            controller_name: str,
            controller_namespace: str,
            detached: bool,
        ):

            if import_path is not None:
                module_name, attr_name = parse_import_path(import_path)
                deployment_def = getattr(import_module(module_name), attr_name)
            else:
                deployment_def = cloudpickle.loads(serialized_deployment_def)

            deployment_config = DeploymentConfig.from_proto_bytes(
                deployment_config_proto_bytes)

            if inspect.isfunction(deployment_def):
                is_function = True
            elif inspect.isclass(deployment_def):
                is_function = False
            else:
                assert False, (
                    "deployment_def must be function, class, or "
                    "corresponding import path. Instead, it's type was "
                    f"{type(deployment_def)}.")

            # Set the controller name so that serve.connect() in the user's
            # code will connect to the instance that this deployment is running
            # in.
            ray.serve.api._set_internal_replica_context(
                deployment_name,
                replica_tag,
                controller_name,
                controller_namespace,
                servable_object=None,
            )

            assert controller_name, "Must provide a valid controller_name"

            controller_handle = ray.get_actor(controller_name,
                                              namespace=controller_namespace)

            # This closure initializes user code and finalizes replica
            # startup. By splitting the initialization step like this,
            # we can already access this actor before the user code
            # has finished initializing.
            # The supervising state manager can then wait
            # for allocation of this replica by using the `is_allocated`
            # method. After that, it calls `reconfigure` to trigger
            # user code initialization.
            async def initialize_replica():
                if is_function:
                    _callable = deployment_def
                else:
                    # This allows deployments to define an async __init__
                    # method (required for FastAPI).
                    _callable = deployment_def.__new__(deployment_def)
                    await sync_to_async(_callable.__init__)(*init_args,
                                                            **init_kwargs)

                # Setting the context again to update the servable_object.
                ray.serve.api._set_internal_replica_context(
                    deployment_name,
                    replica_tag,
                    controller_name,
                    controller_namespace,
                    servable_object=_callable,
                )

                self.replica = RayServeReplica(
                    _callable,
                    deployment_name,
                    replica_tag,
                    deployment_config,
                    deployment_config.user_config,
                    version,
                    is_function,
                    controller_handle,
                )

            # Is it fine that replica is None here?
            # Should we add a check in all methods that use self.replica
            # or, alternatively, create an async get_replica() method?
            self.replica = None
            self._initialize_replica = initialize_replica