Build generative AI applications using AlloyDB AI

AlloyDB AI is a suite of features included with AlloyDB for PostgreSQL that let you apply the semantic and predictive power of machine learning (ML) models to your data. This page provides an overview of the ML-powered AI functions that are available through AlloyDB.

Store, index, and query vectors

The stock pgvector PostgreSQL extension extension is customized for AlloyDB, and referred to as vector. It supports storing generated embeddings in a vector column. The extension also adds support for scalar quantization feature to create IVF indexes. You can also create an IVFFlat index or HSNW index that are available with stock pgvector.

For more information about storing vectors, see Store vectors.

In addition to the customized vector extension, AlloyDB includes the alloydb_scann extension that implements a highly efficient nearest-neighbor index powered by the ScaNN algorithm.

For more information about creating indexes and querying vectors, see Create indexes and query vectors.

Tune your vector query performance

You can tune your indexes for a balance between query-per-second (QPS) and recall with your queries. For more information about tuning your indexes, see Tune vector query performance.

Generate embeddings and text predictions

AlloyDB AI extends PostgreSQL syntax with two functions for querying models using the google_ml_integration extension:

  • Invoke predictions to call a model using SQL within a transaction.

  • Generate embeddings to have an LLM translate text prompts into numerical vectors.

    You can then apply these vector embeddings as input to pgvector functions. This includes methods to compare and sort samples of text according to their relative semantic distance.

Use models in the cloud with Vertex AI

You can configure AlloyDB Omni to work with Vertex AI.

This gives your applications the following benefits:

What's next