This page describes how to use stored embeddings to generate indexes and query
embeddings using an IVFFlat
index with AlloyDB for PostgreSQL.
For more information about storing embedding, see
Store vector embeddings.
Before you begin
Before you can start creating indexes, you must complete the following prerequisites.
Embedding vectors are added to a table in your AlloyDB database.
The
vector
extension version0.5.0
or later that is based onpgvector
, extended by Google for AlloyDB is installed.CREATE EXTENSION IF NOT EXISTS vector;
Create an IVFFlat
index
Stock pgvector
also provides a version of the IVF
index named
IVFFlat
that provides faster build time and has a smaller memory footprint as
compared to the hnsw
index.
To create an IVFFlat
index, complete the following steps:
CREATE INDEX INDEX_NAME ON TABLE
USING ivfflat (EMBEDDING_COLUMN DISTANCE_FUNCTION)
WITH (lists = LIST_COUNT);
Replace the following:
INDEX_NAME
: the name of the index you want to create—for example,my-ivf-index
.TABLE
: the table to add the index to.EMBEDDING_COLUMN
: a column that storesvector
data.DISTANCE_FUNCTION
: the distance function to use with this index. Choose one of the following:L2 distance:
vector_l2_ops
Inner product:
vector_ip_ops
Cosine distance:
vector_cosine_ops
LIST_COUNT
: the number of lists to use with this index. For more information about how to decide this value, see Tune an IVFFlat index.To create this index on an embedding column that uses the
real[]
data type instead ofvector
, cast the column into thevector
data type:
CREATE INDEX INDEX_NAME ON TABLE
USING ivfflat (CAST(EMBEDDING_COLUMN AS vector(DIMENSIONS)))'}} DISTANCE_FUNCTION)
WITH (lists = LIST_COUNT);
Replace DIMENSIONS
with the dimensional width of the
embedding column. For more information about how to find the dimensions,
see the vector_dims
function in Vector
functions.
To view the indexing progress, use the pg_stat_progress_create_index
view:
SELECT * FROM pg_stat_progress_create_index;
The phase
column shows the current state of your index creation.
To tune your index for a target recall and QPS balance, see Tune an
IVFFlat
index.
Run a query
After you store and index the embeddings in your database, you can start
querying using the pgvector
query functionality.
To find the nearest semantic neighbors for an embedding vector, you can run the following example query, where you set the same distance function that you used during the index creation.
SELECT * FROM TABLE
ORDER BY EMBEDDING_COLUMN DISTANCE_FUNCTION_QUERY ['EMBEDDING']
LIMIT ROW_COUNT
Replace the following:
TABLE
: the table containing the embedding to compare the text to.INDEX_NAME
: the name of the index you want to use—for example,my-scann-index
.EMBEDDING_COLUMN
: the column containing the stored embeddings.DISTANCE_FUNCTION_QUERY
: the distance function to use with this query. Choose one of the following based on the distance function used while creating the index:L2 distance:
<->
Inner product:
<#>
Cosine distance:
<=>
EMBEDDING
: the embedding vector you want to find the nearest stored semantic neighbors of.ROW_COUNT
: the number of rows to return.Specify
1
if you want only the single best match.
For more information about other query examples, see Querying.
You can also use the embedding()
function to translate the
text into a vector. You apply the vector to one of the
pgvector
nearest-neighbor operators, <->
for L2 distance, to find the database rows with the
most semantically similar embeddings.
Because embedding()
returns a real
array, you must explicitly cast the
embedding()
call to vector
in order to use these values with pgvector
operators.
What's next
- Create a ScaNN index
- Run vector similarity searches
- Tune vector query performance
- Vector index metrics
- Learn how to build a smart shopping assistant with AlloyDB, pgvector, and model endpoint management.