The Couchbase Columnar offline store provides support for reading CouchbaseColumnarSources. Note that Couchbase Columnar is available through Couchbase Capella.
- Entity dataframes can be provided as a SQL++ query or can be provided as a Pandas dataframe. A Pandas dataframe will be uploaded to Couchbase Capella Columnar as a collection.
The Couchbase Columnar offline store does not achieve full test coverage. Please do not assume complete stability.
In order to use this offline store, you'll need to run pip install 'feast[couchbase]'
. You can get started by then running feast init -t couchbase
.
To get started with Couchbase Capella Columnar:
- Sign up for a Couchbase Capella account
- Deploy a Columnar cluster
- Create an Access Control Account
- This account should be able to read and write.
- For testing purposes, it is recommended to assign all roles to avoid any permission issues.
- Configure allowed IP addresses
- You must allow the IP address of the machine running Feast.
{% code title="feature_store.yaml" %}
project: my_project
registry: data/registry.db
provider: local
offline_store:
type: couchbase.offline
connection_string: COUCHBASE_COLUMNAR_CONNECTION_STRING # Copied from Settings > Connection String page in Capella Columnar console, starts with couchbases://
user: COUCHBASE_COLUMNAR_USER # Couchbase cluster access name from Settings > Access Control page in Capella Columnar console
password: COUCHBASE_COLUMNAR_PASSWORD # Couchbase password from Settings > Access Control page in Capella Columnar console
timeout: 120 # Timeout in seconds for Columnar operations, optional
online_store:
path: data/online_store.db
{% endcode %}
Note that timeout
is an optional parameter.
The full set of configuration options is available in CouchbaseColumnarOfflineStoreConfig.
The set of functionality supported by offline stores is described in detail here. Below is a matrix indicating which functionality is supported by the Couchbase Columnar offline store.
Couchbase Columnar | |
---|---|
get_historical_features (point-in-time correct join) |
yes |
pull_latest_from_table_or_query (retrieve latest feature values) |
yes |
pull_all_from_table_or_query (retrieve a saved dataset) |
yes |
offline_write_batch (persist dataframes to offline store) |
no |
write_logged_features (persist logged features to offline store) |
no |
Below is a matrix indicating which functionality is supported by CouchbaseColumnarRetrievalJob
.
Couchbase Columnar | |
---|---|
export to dataframe | yes |
export to arrow table | yes |
export to arrow batches | no |
export to SQL | yes |
export to data lake (S3, GCS, etc.) | yes |
export to data warehouse | yes |
export as Spark dataframe | no |
local execution of Python-based on-demand transforms | yes |
remote execution of Python-based on-demand transforms | no |
persist results in the offline store | yes |
preview the query plan before execution | yes |
read partitioned data | yes |
To compare this set of functionality against other offline stores, please see the full functionality matrix.