Setup PostgreSQL w/ pgvector in a docker container
This post is a follow-up to my previous post on how to setup a local MySQL instance in docker.
RAG (Retrieval Augmented Generation) is quickly becoming the "Hello World" of AI apps. If you are working or playing with Large Language Models, you will no doubt need to create a RAG pipeline at some point. An important component of RAG is a vector database, and a popular option is pgvector - an open-source vector similarity search for Postgres. Here's how to quickly setup a local instance in a Docker container.
Pull and run the image
Pull the latest image from the docker repository. Replace 17 with your Postgres server version of choice.
docker pull pgvector/pgvector:pg17
Run the image, set the root user password, and expose the default Postgres port.
docker run -d --name <container_name> -e POSTGRES_PASSWORD=postgres -p 5432:5432 pgvector/pgvector:pg17
Create a db inside the container
With the Postgres server running, create a database inside the container.
docker exec -it <container_name> createdb -U postgres <database_name>
Connect to the database
Now we can connect to the database from our application and initialize the pgvector extension. I'll be using JavaScript. Setting up the entire application is outside the scope of this post, but you will need to install a couple dependencies:
pnpm add pg pgvector
Set a DATABASE_URL in your environment. I use a .env file. It should follow this format:
DATABASE_URL=postgresql://<pg_user>:<pg_password>@localhost:5432/<database_name>
For local development use @localhost, but if you are using something like docker-compose.yml and have named the service, you should use the name of the service e.g. @db.
In your application code, create the connection:
const pool = new pg.Pool({ connectionString: process.env.DATABASE_URL, });
Then, initialize pgvector and create a new table:
async function createStore() { // Initialize pgvector extension and create table if not exists await pool.query('CREATE EXTENSION IF NOT EXISTS vector'); return { vectorStore: await PGVectorStore.initialize(embeddings, { postgresConnectionOptions: { connectionString: process.env.DATABASE_URL, }, tableName: 'documents', // Default table name }), }; }
With the vectorStore setup, you can add content to it using vectorStore.addDocuments and query for context using vectorStore.similaritySearch.
That's it for this post. Maybe next time I will explore more specific uses of pgvector, and/or using it with Drizzle ORM! ?
The above is the detailed content of Setup PostgreSQL w/ pgvector in a docker container. For more information, please follow other related articles on the PHP Chinese website!

Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics











Frequently Asked Questions and Solutions for Front-end Thermal Paper Ticket Printing In Front-end Development, Ticket Printing is a common requirement. However, many developers are implementing...

JavaScript is the cornerstone of modern web development, and its main functions include event-driven programming, dynamic content generation and asynchronous programming. 1) Event-driven programming allows web pages to change dynamically according to user operations. 2) Dynamic content generation allows page content to be adjusted according to conditions. 3) Asynchronous programming ensures that the user interface is not blocked. JavaScript is widely used in web interaction, single-page application and server-side development, greatly improving the flexibility of user experience and cross-platform development.

There is no absolute salary for Python and JavaScript developers, depending on skills and industry needs. 1. Python may be paid more in data science and machine learning. 2. JavaScript has great demand in front-end and full-stack development, and its salary is also considerable. 3. Influencing factors include experience, geographical location, company size and specific skills.

Discussion on the realization of parallax scrolling and element animation effects in this article will explore how to achieve similar to Shiseido official website (https://www.shiseido.co.jp/sb/wonderland/)...

The latest trends in JavaScript include the rise of TypeScript, the popularity of modern frameworks and libraries, and the application of WebAssembly. Future prospects cover more powerful type systems, the development of server-side JavaScript, the expansion of artificial intelligence and machine learning, and the potential of IoT and edge computing.

How to merge array elements with the same ID into one object in JavaScript? When processing data, we often encounter the need to have the same ID...

Different JavaScript engines have different effects when parsing and executing JavaScript code, because the implementation principles and optimization strategies of each engine differ. 1. Lexical analysis: convert source code into lexical unit. 2. Grammar analysis: Generate an abstract syntax tree. 3. Optimization and compilation: Generate machine code through the JIT compiler. 4. Execute: Run the machine code. V8 engine optimizes through instant compilation and hidden class, SpiderMonkey uses a type inference system, resulting in different performance performance on the same code.

Explore the implementation of panel drag and drop adjustment function similar to VSCode in the front-end. In front-end development, how to implement VSCode similar to VSCode...
