Source code for feast.feature_service

from datetime import datetime
from typing import Dict, List, Optional, Union

from google.protobuf.json_format import MessageToJson
from typeguard import typechecked

from feast.base_feature_view import BaseFeatureView
from feast.errors import FeatureViewMissingDuringFeatureServiceInference
from feast.feature_logging import LoggingConfig
from feast.feature_view import FeatureView
from feast.feature_view_projection import FeatureViewProjection
from feast.on_demand_feature_view import OnDemandFeatureView
from feast.protos.feast.core.FeatureService_pb2 import (
    FeatureService as FeatureServiceProto,
)
from feast.protos.feast.core.FeatureService_pb2 import (
    FeatureServiceMeta as FeatureServiceMetaProto,
)
from feast.protos.feast.core.FeatureService_pb2 import (
    FeatureServiceSpec as FeatureServiceSpecProto,
)
from feast.usage import log_exceptions


[docs]@typechecked class FeatureService: """ A feature service defines a logical group of features from one or more feature views. This group of features can be retrieved together during training or serving. Attributes: name: The unique name of the feature service. feature_view_projections: A list containing feature views and feature view projections, representing the features in the feature service. description: A human-readable description. tags: A dictionary of key-value pairs to store arbitrary metadata. owner: The owner of the feature service, typically the email of the primary maintainer. created_timestamp: The time when the feature service was created. last_updated_timestamp: The time when the feature service was last updated. """ name: str _features: List[Union[FeatureView, OnDemandFeatureView]] feature_view_projections: List[FeatureViewProjection] description: str tags: Dict[str, str] owner: str created_timestamp: Optional[datetime] = None last_updated_timestamp: Optional[datetime] = None logging_config: Optional[LoggingConfig] = None @log_exceptions def __init__( self, *, name: str, features: List[Union[FeatureView, OnDemandFeatureView]], tags: Dict[str, str] = None, description: str = "", owner: str = "", logging_config: Optional[LoggingConfig] = None, ): """ Creates a FeatureService object. Args: name: The unique name of the feature service. feature_view_projections: A list containing feature views and feature view projections, representing the features in the feature service. description (optional): A human-readable description. tags (optional): A dictionary of key-value pairs to store arbitrary metadata. owner (optional): The owner of the feature view, typically the email of the primary maintainer. """ self.name = name self._features = features self.feature_view_projections = [] self.description = description self.tags = tags or {} self.owner = owner self.created_timestamp = None self.last_updated_timestamp = None self.logging_config = logging_config for feature_grouping in self._features: if isinstance(feature_grouping, BaseFeatureView): self.feature_view_projections.append(feature_grouping.projection)
[docs] def infer_features(self, fvs_to_update: Dict[str, FeatureView]): """ Infers the features for the projections of this feature service, and updates this feature service in place. This method is necessary since feature services may rely on feature views which require feature inference. Args: fvs_to_update: A mapping of feature view names to corresponding feature views that contains all the feature views necessary to run inference. """ for feature_grouping in self._features: if isinstance(feature_grouping, BaseFeatureView): projection = feature_grouping.projection if projection.desired_features: # The projection wants to select a specific set of inferred features. # Example: FeatureService(features=[fv[["inferred_feature"]]]), where # 'fv' is a feature view that was defined without a schema. if feature_grouping.name in fvs_to_update: # First we validate that the selected features have actually been inferred. desired_features = set(projection.desired_features) actual_features = set( [ f.name for f in fvs_to_update[feature_grouping.name].features ] ) assert desired_features.issubset(actual_features) # Then we extract the selected features and add them to the projection. projection.features = [] for f in fvs_to_update[feature_grouping.name].features: if f.name in desired_features: projection.features.append(f) else: raise FeatureViewMissingDuringFeatureServiceInference( feature_view_name=feature_grouping.name, feature_service_name=self.name, ) continue if projection.features: # The projection has already selected features from a feature view with a # known schema, so no action needs to be taken. # Example: FeatureService(features=[fv[["existing_feature"]]]), where # 'existing_feature' was defined as part of the schema of 'fv'. # Example: FeatureService(features=[fv]), where 'fv' was defined with a schema. continue # The projection wants to select all possible inferred features. # Example: FeatureService(features=[fv]), where 'fv' is a feature view that # was defined without a schema. if feature_grouping.name in fvs_to_update: projection.features = fvs_to_update[feature_grouping.name].features else: raise FeatureViewMissingDuringFeatureServiceInference( feature_view_name=feature_grouping.name, feature_service_name=self.name, ) else: raise ValueError( f"The feature service {self.name} has been provided with an invalid type " f'{type(feature_grouping)} as part of the "features" argument.)' )
def __repr__(self): items = (f"{k} = {v}" for k, v in self.__dict__.items()) return f"<{self.__class__.__name__}({', '.join(items)})>" def __str__(self): return str(MessageToJson(self.to_proto())) def __hash__(self): return hash(self.name) def __eq__(self, other): if not isinstance(other, FeatureService): raise TypeError( "Comparisons should only involve FeatureService class objects." ) if ( self.name != other.name or self.description != other.description or self.tags != other.tags or self.owner != other.owner ): return False if sorted(self.feature_view_projections) != sorted( other.feature_view_projections ): return False return True
[docs] @classmethod def from_proto(cls, feature_service_proto: FeatureServiceProto): """ Converts a FeatureServiceProto to a FeatureService object. Args: feature_service_proto: A protobuf representation of a FeatureService. """ fs = cls( name=feature_service_proto.spec.name, features=[], tags=dict(feature_service_proto.spec.tags), description=feature_service_proto.spec.description, owner=feature_service_proto.spec.owner, logging_config=LoggingConfig.from_proto( feature_service_proto.spec.logging_config ), ) fs.feature_view_projections.extend( [ FeatureViewProjection.from_proto(projection) for projection in feature_service_proto.spec.features ] ) if feature_service_proto.meta.HasField("created_timestamp"): fs.created_timestamp = ( feature_service_proto.meta.created_timestamp.ToDatetime() ) if feature_service_proto.meta.HasField("last_updated_timestamp"): fs.last_updated_timestamp = ( feature_service_proto.meta.last_updated_timestamp.ToDatetime() ) return fs
[docs] def to_proto(self) -> FeatureServiceProto: """ Converts a feature service to its protobuf representation. Returns: A FeatureServiceProto protobuf. """ meta = FeatureServiceMetaProto() if self.created_timestamp: meta.created_timestamp.FromDatetime(self.created_timestamp) if self.last_updated_timestamp: meta.last_updated_timestamp.FromDatetime(self.last_updated_timestamp) spec = FeatureServiceSpecProto( name=self.name, features=[ projection.to_proto() for projection in self.feature_view_projections ], tags=self.tags, description=self.description, owner=self.owner, logging_config=self.logging_config.to_proto() if self.logging_config else None, ) return FeatureServiceProto(spec=spec, meta=meta)
[docs] def validate(self): pass