Skip to main content

llama-index vector_stores mongodb integration

Project description

LlamaIndex Vector_Stores Integration: MongoDB

Setting up MongoDB Atlas as the Datastore Provider

MongoDB Atlas is a multi-cloud database service made by the same people that build MongoDB. Atlas simplifies deploying and managing your databases while offering the versatility you need to build resilient and performant global applications on the cloud providers of your choice.

You can perform semantic search on data in your Atlas cluster running MongoDB v6.0.11, v7.0.2, or later using Atlas Vector Search. You can store vector embeddings for any kind of data along with other data in your collection on the Atlas cluster.

In the section, we provide detailed instructions to run the tests.

Deploy a Cluster

Follow the Getting-Started documentation to create an account, deploy an Atlas cluster, and connect to a database.

Retrieve the URI used by Python to connect to the Cluster

Once deployed, you will need a URI (connection string) to access the cluster. This you should store as the environment variable: MONGODB_URI. It will look something like the following. The username and password, if not provided, can be configured in Database Access under Security in the left panel.

export MONGODB_URI="mongodb+srv://<username>:<password>@cluster0.foo.mongodb.net/?retryWrites=true&w=majority"

Head to Atlas UI to find the connection string.

NOTE: There are a number of ways to navigate the Atlas UI. Keep your eye out for "Connect" and "driver".

On the left panel, find and click 'Database' under DEPLOYMENT. Click the Connect button that appears, then Drivers. Select Python. (Have no concern for the version. This is the PyMongo, not Python, version.) Once you have the Connect Window open, you will see an instruction to pip install pymongo. You will also see a connection string. This is the uri that a pymongo.MongoClient uses to connect to the Database.

Test the connection

Atlas provides a simple check. Once you have your uri and pymongo installed, try the following in a python console.

from pymongo.mongo_client import MongoClient

client = MongoClient(uri)  # Create a new client and connect to the server
try:
    client.admin.command(
        "ping"
    )  # Send a ping to confirm a successful connection
    print("Pinged your deployment. You successfully connected to MongoDB!")
except Exception as e:
    print(e)

Troubleshooting

  • You can edit a Database's users and passwords on the 'Database Access' page, under Security.
  • Remember to add your IP address. (Try curl -4 ifconfig.co)

Create a Database and Collection

As mentioned, Vector Databases provide two functions. In addition to being the data store, they provide very efficient search based on natural language queries. With Vector Search, one will index and query data with a powerful vector search algorithm using "Hierarchical Navigable Small World (HNSW) graphs to find vector similarity.

The indexing runs beside the data as a separate service asynchronously. The Search index monitors changes to the Collection that it applies to. Subsequently, one need not upload the data first. We will create an empty collection now, which will simplify setup in the example notebook.

Back in the UI, navigate to the Database Deployments page by clicking Database on the left panel. Click the "Browse Collections" and then "+ Create Database" buttons. This will open a window where you choose Database and Collection names. (No additional preferences.) Remember these values as they will be as the environment variables, MONGODB_DATABASE and MONGODB_COLLECTION.

Set Datastore Environment Variables

To establish a connection to the MongoDB Cluster, Database, and Collection, plus create a Vector Search Index, define the following environment variables. You can confirm that the required ones have been set like this: assert "MONGODB_URI" in os.environ

IMPORTANT It is crucial that the choices are consistent between setup in Atlas and Python environment(s).

Name Description Example
MONGODB_URI Connection String mongodb+srv://<user>:<password>@llama-index.zeatahb.mongodb.net
MONGODB_DATABASE Database name llama_index_test_db
MONGODB_COLLECTION Collection name llama_index_test_vectorstore
MONGODB_INDEX Search index name vector_index

The following will be required to authenticate with OpenAI.

Name Description
OPENAI_API_KEY OpenAI token created at https://platform.openai.com/api-keys

Create an Atlas Vector Search Index

The final step to configure MongoDB as the Datastore is to create a Vector Search Index. The procedure is described here.

Under Services on the left panel, choose Atlas Search > Create Search Index > Atlas Vector Search JSON Editor.

The Plugin expects an index definition like the following. To begin, choose numDimensions: 1536 along with the suggested EMBEDDING variables above. You can experiment with these later.

{
  "fields": [
    {
      "numDimensions": 1536,
      "path": "embedding",
      "similarity": "cosine",
      "type": "vector"
    }
  ]
}

Running MongoDB Integration Tests

In addition to the Jupyter Notebook in the documentation, a suite of integration tests is available to verify the MongoDB integration unders ./tests. This test suite needs the cluster up and running, and the environment variables defined above.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

llama_index_vector_stores_mongodb-0.9.1.tar.gz (15.4 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

File details

Details for the file llama_index_vector_stores_mongodb-0.9.1.tar.gz.

File metadata

  • Download URL: llama_index_vector_stores_mongodb-0.9.1.tar.gz
  • Upload date:
  • Size: 15.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.9.21 {"installer":{"name":"uv","version":"0.9.21","subcommand":["publish"]},"python":null,"implementation":{"name":null,"version":null},"distro":{"name":"Ubuntu","version":"24.04","id":"noble","libc":null},"system":{"name":null,"release":null},"cpu":null,"openssl_version":null,"setuptools_version":null,"rustc_version":null,"ci":true}

File hashes

Hashes for llama_index_vector_stores_mongodb-0.9.1.tar.gz
Algorithm Hash digest
SHA256 8582ba18812478ce9b3cdf1747b0400cd41a30041b7e478135578fb61957ec4c
MD5 53be94729818b513b84ca0980f6a0706
BLAKE2b-256 9520f93682b58dede51e0550972ff4520da5f205abb341c003d233ce684aee29

See more details on using hashes here.

File details

Details for the file llama_index_vector_stores_mongodb-0.9.1-py3-none-any.whl.

File metadata

  • Download URL: llama_index_vector_stores_mongodb-0.9.1-py3-none-any.whl
  • Upload date:
  • Size: 16.5 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.9.21 {"installer":{"name":"uv","version":"0.9.21","subcommand":["publish"]},"python":null,"implementation":{"name":null,"version":null},"distro":{"name":"Ubuntu","version":"24.04","id":"noble","libc":null},"system":{"name":null,"release":null},"cpu":null,"openssl_version":null,"setuptools_version":null,"rustc_version":null,"ci":true}

File hashes

Hashes for llama_index_vector_stores_mongodb-0.9.1-py3-none-any.whl
Algorithm Hash digest
SHA256 6f54c4289530d9cf9f0ad0202c947ec01cd3750047a38a77998e93dfb23817c1
MD5 2b818e2443139b9bbf2cf233a5cbdb14
BLAKE2b-256 fceee962a6d383ed979eacc782de68fd930480c360fbff43d8c944a3f7305f15

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page