vectorize 0.10.1

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vectorize 0.10.1
Date
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Stable
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vectorize 0.18.3 —
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Abstract
The simplest way to do vector search on Postgres
Description
Vectorize automates the transformation and orchestration of text to embeddings, allowing you to do vector and semantic search on existing data with as little as two function calls.
Released By
tembo
License
PostgreSQL
Resources
Special Files
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Extensions

vectorize 0.10.1
The simplest way to do vector search on Postgres

Documentation

README
vector-serve

README

A Postgres extension that automates the transformation and orchestration of text to embeddings, allowing you to do vector and semantic search on existing data with as little as two function calls.

One function call to initialize your data. Another function call to search. Automated management of Postgres triggers and background jobs to keep your embeddings up to date.


Static Badge PGXN version

Features

  • Integrations with OpenAI’s embeddings endpoints and a self-hosted container for running Hugging Face Sentence-Transformers
  • Automated creation of Postgres triggers to keep your embeddings up to date
  • High level API - one function to initialize embeddings transformations, and another function to search

Table of Contents

Installation

The fastest way to get started is by running the Tembo docker container and the vector server with docker compose:

docker compose up -d

Then connect to Postgres:

docker compose exec -it postgres psql

Enable the extension and its dependencies

CREATE EXTENSION vectorize CASCADE;

If you’re installing in an existing Postgres instance, you will need the following dependencies:

Rust:

Postgres Extensions:

Then set the following either in postgresql.conf or as a configuration parameter:

-- requires restart of Postgres
alter system set shared_preload_libraries = 'vectorize,pg_cron';
alter system set cron.database_name = 'postgres'

And if you’re running the vector-serve container, set the following url as a configuration parameter in Postgres.

alter system set vectorize.embedding_service_url = 'http://vector-serve:3000/v1/embeddings'

SELECT pg_reload_conf();

API Overview

pg_vectorize is a high level API over pgvector and provides integrations into orcehstrating the transform of text to embeddings through three functions:

vectorize.table()

Configures a vectorize job which handles transforming existing data into embeddings, and keeping the embeddings updated as new data is inserted or existing rows are updated.

SELECT vectorize.table(
    job_name => 'my_job',
    "table" => 'my_table',
    primary_key => 'record_id',
    columns => ARRAY['some_text_column'],
    transformer => 'sentence-transformers/multi-qa-MiniLM-L6-dot-v1'
);

vectorize.search()

An abstraction over a text-to-embedding transformation and pgvector’s vector similarity search functionality. Used in conjuction with vectorize.table().

Returns ARRAY[json]

SELECT * FROM vectorize.search(
    job_name => 'my_job',
    query => 'my raw text search query',
    return_columns => ARRAY['record_id', 'some_text_column'],
    num_results => 3
);

vectorize.transform_embeddings()

A direct hook to a transformer model of your choice.

Returns ARRAY[float] (embeddings)

select vectorize.transform_embeddings(
    input => 'the quick brown fox jumped over the lazy dogs',
    model_name => 'sentence-transformers/multi-qa-MiniLM-L6-dot-v1'
);

{-0.2556323707103729,-0.3213586211204529 ..., -0.0951206386089325}

Hugging Face Example

Setup a products table. Copy from the example data provided by the extension.

CREATE TABLE products AS 
SELECT * FROM vectorize.example_products;
SELECT * FROM products limit 2;
 product_id | product_name |                      description                       |        last_updated_at        
------------+--------------+--------------------------------------------------------+-------------------------------
          1 | Pencil       | Utensil used for writing and often works best on paper | 2023-07-26 17:20:43.639351-05
          2 | Laptop Stand | Elevated platform for laptops, enhancing ergonomics    | 2023-07-26 17:20:43.639351-05

Create a job to vectorize the products table. We’ll specify the tables primary key (product_id) and the columns that we want to search (product_name and description).

SELECT vectorize.table(
    job_name => 'product_search_hf',
    "table" => 'products',
    primary_key => 'product_id',
    columns => ARRAY['product_name', 'description'],
    transformer => 'sentence-transformers/multi-qa-MiniLM-L6-dot-v1'
);

This adds a new column to your table, in our case it is named product_search_embeddings, then populates that data with the transformed embeddings from the product_name and description columns.

Then search,

SELECT * FROM vectorize.search(
    job_name => 'product_search_hf',
    query => 'accessories for mobile devices',
    return_columns => ARRAY['product_id', 'product_name'],
    num_results => 3
);

                                       search_results                                        
---------------------------------------------------------------------------------------------
 {"product_id": 13, "product_name": "Phone Charger", "similarity_score": 0.8147814132322894}
 {"product_id": 6, "product_name": "Backpack", "similarity_score": 0.7743061352550308}
 {"product_id": 11, "product_name": "Stylus Pen", "similarity_score": 0.7709902653575383}

OpenAI Example

pg_vectorize also works with using OpenAI’s embeddings, but first you’ll need an API key.

Set your API key as a Postgres configuration parameter.

ALTER SYSTEM SET vectorize.openai_key TO '<your api key>';

SELECT pg_reload_conf();

Create an example table if it does not already exist.

CREATE TABLE products AS 
SELECT * FROM vectorize.example_products;

Then create the job:

SELECT vectorize.table(
    job_name => 'product_search_openai',
    "table" => 'products',
    primary_key => 'product_id',
    columns => ARRAY['product_name', 'description'],
    transformer => 'text-embedding-ada-002'
);

It may take some time to generate embeddings, depending on API latency.

SELECT * FROM vectorize.search(
    job_name => 'product_search_openai',
    query => 'accessories for mobile devices',
    return_columns => ARRAY['product_id', 'product_name'],
    num_results => 3
);

                                         search_results                                     
    
--------------------------------------------------------------------------------------------
----
 {"product_id": 13, "product_name": "Phone Charger", "similarity_score": 0.8564681325237845}
 {"product_id": 24, "product_name": "Tablet Holder", "similarity_score": 0.8295988934993099}
 {"product_id": 4, "product_name": "Bluetooth Speaker", "similarity_score": 0.8250355616233103}
(3 rows)

Trigger based updates

When vectorize job is set up as realtime (the default behavior, via vectorize.table(..., schedule => 'realtime')), vectorize will create triggers on your table that will keep your embeddings up to date. When the text inputs are updated or if new rows are inserted, the triggers handle creating a background job that updates the embeddings. Since the transformation is executed in a background job and the transformer model is invoked in a separate container, there is minimal impact on the performance of the update or insert statement.

INSERT INTO products (product_id, product_name, description)
VALUES (12345, 'pizza', 'dish of Italian origin consisting of a flattened disk of bread');

UPDATE products
SET description = 'sling made of fabric, rope, or netting, suspended between two or more points, used for swinging, sleeping, or resting'
WHERE product_name = 'Hammock';

Try it on Tembo Cloud

Try it for yourself! Install with a single click on a Vector DB Stack (or any other instance) in Tembo Cloud today.