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---
id: 'ai-python-clients'
title: 'Choosing a Client'
description: 'Learn how to manage vectors using Python'
sidebar_label: 'Choosing a Client'
---
As described in [Structured & Unstructured Embeddings](/docs/guides/ai/structured-unstructured), AI workloads come in many forms.
For data science or ephemeral workloads, the [Supabase Vecs](https://supabase.github.io/vecs/) client gets you started quickly. All you need is a connection string and vecs handles setting up your database to store and query vectors with associated metadata.
<Admonition type="tip">
You can get your connection string from the [**Database Settings**](https://supabase.com/dashboard/project/_/settings/database) page in your dashboard. Make sure to check **Use connection pooling**, then copy the URI. Also, change the URI scheme from `postgres` to `postgresql`. `vecs` uses SQLAlchemy under the hood, which only supports `postgresql` as a dialect.
</Admonition>
For production python applications with version controlled migrations, we recommend adding first class vector support to your toolchain by [registering the vector type with your ORM](https://github.com/pgvector/pgvector-python). pgvector provides bindings for the most commonly used SQL drivers/libraries including Django, SQLAlchemy, SQLModel, psycopg, asyncpg and Peewee.