Source code for feast.infra.passthrough_provider

from datetime import datetime, timedelta
from typing import Any, Callable, Dict, List, Optional, Sequence, Tuple, Union

import pandas as pd
import pyarrow as pa
from tqdm import tqdm

from feast import importer
from feast.batch_feature_view import BatchFeatureView
from feast.entity import Entity
from feast.feature_logging import FeatureServiceLoggingSource
from feast.feature_service import FeatureService
from feast.feature_view import FeatureView
from feast.infra.materialization.batch_materialization_engine import (
    BatchMaterializationEngine,
    MaterializationJobStatus,
    MaterializationTask,
)
from feast.infra.offline_stores.offline_store import RetrievalJob
from feast.infra.offline_stores.offline_utils import get_offline_store_from_config
from feast.infra.online_stores.helpers import get_online_store_from_config
from feast.infra.provider import Provider
from feast.infra.registry.base_registry import BaseRegistry
from feast.protos.feast.types.EntityKey_pb2 import EntityKey as EntityKeyProto
from feast.protos.feast.types.Value_pb2 import Value as ValueProto
from feast.repo_config import BATCH_ENGINE_CLASS_FOR_TYPE, RepoConfig
from feast.saved_dataset import SavedDataset
from feast.stream_feature_view import StreamFeatureView
from feast.usage import RatioSampler, log_exceptions_and_usage, set_usage_attribute
from feast.utils import (
    _convert_arrow_to_proto,
    _run_pyarrow_field_mapping,
    make_tzaware,
)

DEFAULT_BATCH_SIZE = 10_000


[docs]class PassthroughProvider(Provider): """ The passthrough provider delegates all operations to the underlying online and offline stores. """ def __init__(self, config: RepoConfig): super().__init__(config) self.repo_config = config self._offline_store = None self._online_store = None self._batch_engine: Optional[BatchMaterializationEngine] = None @property def online_store(self): if not self._online_store and self.repo_config.online_store: self._online_store = get_online_store_from_config( self.repo_config.online_store ) return self._online_store @property def offline_store(self): if not self._offline_store: self._offline_store = get_offline_store_from_config( self.repo_config.offline_store ) return self._offline_store @property def batch_engine(self) -> BatchMaterializationEngine: if self._batch_engine: return self._batch_engine else: engine_config = self.repo_config._batch_engine_config config_is_dict = False if isinstance(engine_config, str): engine_config_type = engine_config elif isinstance(engine_config, Dict): if "type" not in engine_config: raise ValueError("engine_config needs to have a `type` specified.") engine_config_type = engine_config["type"] config_is_dict = True else: raise RuntimeError( f"Invalid config type specified for batch_engine: {type(engine_config)}" ) if engine_config_type in BATCH_ENGINE_CLASS_FOR_TYPE: engine_config_type = BATCH_ENGINE_CLASS_FOR_TYPE[engine_config_type] engine_module, engine_class_name = engine_config_type.rsplit(".", 1) engine_class = importer.import_class(engine_module, engine_class_name) if config_is_dict: _batch_engine = engine_class( repo_config=self.repo_config, offline_store=self.offline_store, online_store=self.online_store, **engine_config, ) else: _batch_engine = engine_class( repo_config=self.repo_config, offline_store=self.offline_store, online_store=self.online_store, ) self._batch_engine = _batch_engine return _batch_engine
[docs] def update_infra( self, project: str, tables_to_delete: Sequence[FeatureView], tables_to_keep: Sequence[FeatureView], entities_to_delete: Sequence[Entity], entities_to_keep: Sequence[Entity], partial: bool, ): set_usage_attribute("provider", self.__class__.__name__) # Call update only if there is an online store if self.online_store: self.online_store.update( config=self.repo_config, tables_to_delete=tables_to_delete, tables_to_keep=tables_to_keep, entities_to_keep=entities_to_keep, entities_to_delete=entities_to_delete, partial=partial, ) if self.batch_engine: self.batch_engine.update( project, tables_to_delete, tables_to_keep, entities_to_delete, entities_to_keep, )
[docs] def teardown_infra( self, project: str, tables: Sequence[FeatureView], entities: Sequence[Entity], ) -> None: set_usage_attribute("provider", self.__class__.__name__) if self.online_store: self.online_store.teardown(self.repo_config, tables, entities) if self.batch_engine: self.batch_engine.teardown_infra(project, tables, entities)
[docs] def online_write_batch( self, config: RepoConfig, table: FeatureView, data: List[ Tuple[EntityKeyProto, Dict[str, ValueProto], datetime, Optional[datetime]] ], progress: Optional[Callable[[int], Any]], ) -> None: set_usage_attribute("provider", self.__class__.__name__) if self.online_store: self.online_store.online_write_batch(config, table, data, progress)
[docs] def offline_write_batch( self, config: RepoConfig, feature_view: FeatureView, data: pa.Table, progress: Optional[Callable[[int], Any]], ) -> None: set_usage_attribute("provider", self.__class__.__name__) if self.offline_store: self.offline_store.__class__.offline_write_batch( config, feature_view, data, progress )
[docs] @log_exceptions_and_usage(sampler=RatioSampler(ratio=0.001)) def online_read( self, config: RepoConfig, table: FeatureView, entity_keys: List[EntityKeyProto], requested_features: List[str] = None, ) -> List: set_usage_attribute("provider", self.__class__.__name__) result = [] if self.online_store: result = self.online_store.online_read( config, table, entity_keys, requested_features ) return result
[docs] def ingest_df( self, feature_view: FeatureView, df: pd.DataFrame, ): set_usage_attribute("provider", self.__class__.__name__) table = pa.Table.from_pandas(df) if feature_view.batch_source.field_mapping is not None: table = _run_pyarrow_field_mapping( table, feature_view.batch_source.field_mapping ) join_keys = { entity.name: entity.dtype.to_value_type() for entity in feature_view.entity_columns } rows_to_write = _convert_arrow_to_proto(table, feature_view, join_keys) self.online_write_batch( self.repo_config, feature_view, rows_to_write, progress=None )
[docs] def ingest_df_to_offline_store(self, feature_view: FeatureView, table: pa.Table): set_usage_attribute("provider", self.__class__.__name__) if feature_view.batch_source.field_mapping is not None: table = _run_pyarrow_field_mapping( table, feature_view.batch_source.field_mapping ) self.offline_write_batch(self.repo_config, feature_view, table, None)
[docs] def materialize_single_feature_view( self, config: RepoConfig, feature_view: FeatureView, start_date: datetime, end_date: datetime, registry: BaseRegistry, project: str, tqdm_builder: Callable[[int], tqdm], ) -> None: set_usage_attribute("provider", self.__class__.__name__) assert ( isinstance(feature_view, BatchFeatureView) or isinstance(feature_view, StreamFeatureView) or isinstance(feature_view, FeatureView) ), f"Unexpected type for {feature_view.name}: {type(feature_view)}" task = MaterializationTask( project=project, feature_view=feature_view, start_time=start_date, end_time=end_date, tqdm_builder=tqdm_builder, ) jobs = self.batch_engine.materialize(registry, [task]) assert len(jobs) == 1 if jobs[0].status() == MaterializationJobStatus.ERROR and jobs[0].error(): e = jobs[0].error() assert e raise e
[docs] def get_historical_features( self, config: RepoConfig, feature_views: List[FeatureView], feature_refs: List[str], entity_df: Union[pd.DataFrame, str], registry: BaseRegistry, project: str, full_feature_names: bool, ) -> RetrievalJob: set_usage_attribute("provider", self.__class__.__name__) job = self.offline_store.get_historical_features( config=config, feature_views=feature_views, feature_refs=feature_refs, entity_df=entity_df, registry=registry, project=project, full_feature_names=full_feature_names, ) return job
[docs] def retrieve_saved_dataset( self, config: RepoConfig, dataset: SavedDataset ) -> RetrievalJob: set_usage_attribute("provider", self.__class__.__name__) feature_name_columns = [ ref.replace(":", "__") if dataset.full_feature_names else ref.split(":")[1] for ref in dataset.features ] # ToDo: replace hardcoded value event_ts_column = "event_timestamp" return self.offline_store.pull_all_from_table_or_query( config=config, data_source=dataset.storage.to_data_source(), join_key_columns=dataset.join_keys, feature_name_columns=feature_name_columns, timestamp_field=event_ts_column, start_date=make_tzaware(dataset.min_event_timestamp), # type: ignore end_date=make_tzaware(dataset.max_event_timestamp + timedelta(seconds=1)), # type: ignore )
[docs] def write_feature_service_logs( self, feature_service: FeatureService, logs: Union[pa.Table, str], config: RepoConfig, registry: BaseRegistry, ): assert ( feature_service.logging_config is not None ), "Logging should be configured for the feature service before calling this function" self.offline_store.write_logged_features( config=config, data=logs, source=FeatureServiceLoggingSource(feature_service, config.project), logging_config=feature_service.logging_config, registry=registry, )
[docs] def retrieve_feature_service_logs( self, feature_service: FeatureService, start_date: datetime, end_date: datetime, config: RepoConfig, registry: BaseRegistry, ) -> RetrievalJob: assert ( feature_service.logging_config is not None ), "Logging should be configured for the feature service before calling this function" logging_source = FeatureServiceLoggingSource(feature_service, config.project) schema = logging_source.get_schema(registry) logging_config = feature_service.logging_config ts_column = logging_source.get_log_timestamp_column() columns = list(set(schema.names) - {ts_column}) return self.offline_store.pull_all_from_table_or_query( config=config, data_source=logging_config.destination.to_data_source(), join_key_columns=[], feature_name_columns=columns, timestamp_field=ts_column, start_date=make_tzaware(start_date), end_date=make_tzaware(end_date), )