diff --git a/docs/modules/agents/agent_executors/examples/agent_vectorstore.ipynb b/docs/modules/agents/agent_executors/examples/agent_vectorstore.ipynb index aac01158..04635069 100644 --- a/docs/modules/agents/agent_executors/examples/agent_vectorstore.ipynb +++ b/docs/modules/agents/agent_executors/examples/agent_vectorstore.ipynb @@ -1,6 +1,7 @@ { "cells": [ { + "attachments": {}, "cell_type": "markdown", "id": "68b24990", "metadata": {}, @@ -9,7 +10,7 @@ "\n", "This notebook covers how to combine agents and vectorstores. The use case for this is that you've ingested your data into a vectorstore and want to interact with it in an agentic manner.\n", "\n", - "The reccomended method for doing so is to create a RetrievalQA and then use that as a tool in the overall agent. Let's take a look at doing this below. You can do this with multiple different vectordbs, and use the agent as a way to route between them. There are two different ways of doing this - you can either let the agent use the vectorstores as normal tools, or you can set `return_direct=True` to really just use the agent as a router." + "The recommended method for doing so is to create a RetrievalQA and then use that as a tool in the overall agent. Let's take a look at doing this below. You can do this with multiple different vectordbs, and use the agent as a way to route between them. There are two different ways of doing this - you can either let the agent use the vectorstores as normal tools, or you can set `return_direct=True` to really just use the agent as a router." ] }, {