Overview
Functionality
Here are the methods exposed by the OfflineStore
interface, along with the core functionality supported by the method:
get_historical_features
: point-in-time correct join to retrieve historical featurespull_latest_from_table_or_query
: retrieve latest feature values for materialization into the online storepull_all_from_table_or_query
: retrieve a saved datasetoffline_write_batch
: persist dataframes to the offline store, primarily for push sourceswrite_logged_features
: persist logged features to the offline store, for feature logging
The first three of these methods all return a RetrievalJob
specific to an offline store, such as a SnowflakeRetrievalJob
. Here is a list of functionality supported by RetrievalJob
s:
export to dataframe
export to arrow table
export to arrow batches (to handle large datasets in memory)
export to SQL
export to data lake (S3, GCS, etc.)
export to data warehouse
export as Spark dataframe
local execution of Python-based on-demand transforms
remote execution of Python-based on-demand transforms
persist results in the offline store
preview the query plan before execution (
RetrievalJob
s are lazily executed)read partitioned data
Functionality Matrix
There are currently four core offline store implementations: FileOfflineStore
, BigQueryOfflineStore
, SnowflakeOfflineStore
, and RedshiftOfflineStore
. There are several additional implementations contributed by the Feast community (PostgreSQLOfflineStore
, SparkOfflineStore
, and TrinoOfflineStore
), which are not guaranteed to be stable or to match the functionality of the core implementations. Details for each specific offline store, such as how to configure it in a feature_store.yaml
, can be found here.
Below is a matrix indicating which offline stores support which methods.
Below is a matrix indicating which RetrievalJob
s support what functionality.
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