langchain/templates/rag-mongo
2023-11-07 15:01:49 -08:00
..
_images update mongo template (#12838) 2023-11-03 10:31:53 -07:00
rag_mongo add ingest for mongo (#12897) 2023-11-06 19:28:22 -08:00
tests
ingest.py update mongo template (#12838) 2023-11-03 10:31:53 -07:00
LICENSE
poetry.lock Relock Templates (#13028) 2023-11-07 15:01:49 -08:00
pyproject.toml Relock Templates (#13028) 2023-11-07 15:01:49 -08:00
rag_mongo.ipynb
README.md add ingest for mongo (#12897) 2023-11-06 19:28:22 -08:00

rag-mongo

This template performs RAG using MongoDB and OpenAI.

Environment Setup

You should export two environment variables, one being your MongoDB URI, the other being your OpenAI API KEY. If you do not have a MongoDB URI, see the Setup Mongo section at the bottom for instructions on how to do so.

export MONGO_URI=...
export OPENAI_API_KEY=...

Usage

To use this package, you should first have the LangChain CLI installed:

pip install -U langchain-cli

To create a new LangChain project and install this as the only package, you can do:

langchain app new my-app --package rag-mongo

If you want to add this to an existing project, you can just run:

langchain app add rag-mongo

And add the following code to your server.py file:

from rag_mongo import chain as rag_mongo_chain

add_routes(app, rag_mongo_chain, path="/rag-mongo")

If you want to set up an ingestion pipeline, you can add the following code to your server.py file:

from rag_mongo import ingest as rag_mongo_ingest

add_routes(app, rag_mongo_ingest, path="/rag-mongo-ingest")

(Optional) Let's now configure LangSmith. LangSmith will help us trace, monitor and debug LangChain applications. LangSmith is currently in private beta, you can sign up here. If you don't have access, you can skip this section

export LANGCHAIN_TRACING_V2=true
export LANGCHAIN_API_KEY=<your-api-key>
export LANGCHAIN_PROJECT=<your-project>  # if not specified, defaults to "default"

If you DO NOT already have a Mongo Search Index you want to connect to, see MongoDB Setup section below before proceeding.

If you DO have a MongoDB Search index you want to connect to, edit the connection details in rag_mongo/chain.py

If you are inside this directory, then you can spin up a LangServe instance directly by:

langchain serve

This will start the FastAPI app with a server is running locally at http://localhost:8000

We can see all templates at http://127.0.0.1:8000/docs We can access the playground at http://127.0.0.1:8000/rag-mongo/playground

We can access the template from code with:

from langserve.client import RemoteRunnable

runnable = RemoteRunnable("http://localhost:8000/rag-mongo")

For additional context, please refer to this notebook.

MongoDB Setup

Use this step if you need to setup your MongoDB account and ingest data. We will first follow the standard MongoDB Atlas setup instructions here.

  1. Create an account (if not already done)
  2. Create a new project (if not already done)
  3. Locate your MongoDB URI.

This can be done by going to the deployement overview page and connecting to you database

connect.png

We then look at the drivers available

driver.png

Among which we will see our URI listed

uri.png

Let's then set that as an environment variable locally:

export MONGO_URI=...
  1. Let's also set an environment variable for OpenAI (which we will use as an LLM)
export OPENAI_API_KEY=...
  1. Let's now ingest some data! We can do that by moving into this directory and running the code in ingest.py, eg:
python ingest.py

Note that you can (and should!) change this to ingest data of your choice

  1. We now need to set up a vector index on our data.

We can first connect to the cluster where our database lives

cluster.png

We can then navigate to where all our collections are listed

collections.png

We can then find the collection we want and look at the search indexes for that collection

search-indexes.png

That should likely be empty, and we want to create a new one:

create.png

We will use the JSON editor to create it

json_editor.png

And we will paste the following JSON in:

 {
   "mappings": {
     "dynamic": true,
     "fields": {
       "embedding": {
         "dimensions": 1536,
         "similarity": "cosine",
         "type": "knnVector"
       }
     }
   }
 }

json.png

From there, hit "Next" and then "Create Search Index". It will take a little bit but you should then have an index over your data!