Integrating LlamaIndex with QuickBooks Online Data via CData Connect AI
LlamaIndex is a data framework for building LLM applications — agents, RAG pipelines, and structured workflows that reason over external data. By integrating LlamaIndex with CData Connect AI through the built-in MCP Server, your agents can discover and query live QuickBooks Online data as native tools without writing custom connectors.
CData Connect AI offers a secure, low-code environment to connect QuickBooks Online and other data sources, removing the need for complex ETL and enabling seamless automation across business applications with live data.
This article outlines how to configure QuickBooks Online connectivity in CData Connect AI, register the MCP server with LlamaIndex, and build a ReAct agent that queries QuickBooks Online data in real time.
Prerequisites
- An account in CData Connect AI
- Python version 3.10 or higher, to install the LlamaIndex packages
- Generate and save an OpenAI API key
- Install Visual Studio Code in your system
About QuickBooks Online Data Integration
CData provides the easiest way to access and integrate live data from QuickBooks Online. Customers use CData connectivity to:
- Realize high-performance data reads thanks to push-down query optimization for complex operations like filters and aggregations.
- Read, write, update, and delete QuickBooks Online data.
- Run reports, download attachments, and send or void invoices directly from code using SQL stored procedures.
- Connect securely using OAuth and modern cryptography, including TLS 1.2, SHA-256, and ECC.
Many users access live QuickBooks Online data from preferred analytics tools like Power BI and Excel, directly from databases with federated access, and use CData solutions to easily integrate QuickBooks Online data with automated workflows for business-to-business communications.
For more information on how customers are solving problems with CData's QuickBooks Online solutions, refer to our blog: https://www.cdata.com/blog/360-view-of-your-customers.
Getting Started
Step 1: Configure QuickBooks Online Connectivity for LlamaIndex
Before LlamaIndex can access QuickBooks Online, a QuickBooks Online connection must be created in CData Connect AI. This connection is then exposed to LlamaIndex through the remote MCP server.
- Log in to Connect AI, click Sources, and then click + Add Connection
- From the available data sources, choose QuickBooks Online
-
QuickBooks Online uses OAuth to authenticate. Click "Sign in" to authenticate with QuickBooks Online
- Once authenticated, open the Permissions tab in the QuickBooks Online connection and configure user-based permissions as required
Generate a Personal Access Token (PAT)
LlamaIndex authenticates to Connect AI using an account email and a Personal Access Token (PAT). Creating separate PATs for each integration is recommended to maintain access control granularity.
- In Connect AI, select the Gear icon in the top-right to open Settings
- Under Access Tokens, select Create PAT
- Provide a descriptive name for the token and select Create
- Copy the token and store it securely. The PAT will only be visible during creation
With the QuickBooks Online connection configured and a PAT generated, LlamaIndex is prepared to connect to QuickBooks Online data through the CData MCP server.
Step 2: Connect to the MCP server in LlamaIndex
To connect LlamaIndex with CData Connect AI Remote MCP Server and use OpenAI for reasoning, configure your MCP server endpoint and authentication in a
config.pyfile. These values let LlamaIndex’s MCP tool spec call the MCP server tools, while OpenAI handles the natural language reasoning.
- Create a folder for the LlamaIndex MCP project
- Create two Python files within the folder:
config.py
andllamaindex_agent.py
- In
config.py
, define your MCP server URL and your Base64-encoded CData Connect AI email and PAT (obtained in the prerequisites):class Config: MCP_BASE_URL = "https://mcp.cloud.cdata.com/mcp" # MCP Server URL MCP_AUTH = "base64encoded(EMAIL:PAT)" # Base64 encoded Connect AI Email:PATNote: You can create the base64 encoded version of MCP_AUTH using any Base64 encoding tool.
- In
llamaindex_agent.py
, wire up the MCP tool spec and a ReAct agent:""" Integrates a LlamaIndex ReAct agent with the CData Connect AI MCP server. The script discovers MCP tools, wraps them as LlamaIndex tools, and runs an agent loop driven by OpenAI for reasoning. """ import asyncio from llama_index.tools.mcp import BasicMCPClient, McpToolSpec from llama_index.core.agent.workflow import ReActAgent from llama_index.llms.openai import OpenAI from config import Config async def main(): # Initialize the MCP client pointed at Connect AI mcp_client = BasicMCPClient( Config.MCP_BASE_URL, headers={"Authorization": f"Basic {Config.MCP_AUTH}"}, ) # Discover tools the MCP server exposes (getCatalogs, queryData, etc.) tool_spec = McpToolSpec(client=mcp_client) tools = await tool_spec.to_tool_list_async() print("Discovered MCP tools:", [t.metadata.name for t in tools]) # Configure the LLM that drives the ReAct loop llm = OpenAI( model="gpt-4o", temperature=0.2, api_key="YOUR_OPENAI_API_KEY", # https://platform.openai.com/ ) # Build the agent with the MCP-backed tools agent = ReActAgent(tools=tools, llm=llm) user_prompt = "How many tables are available in QuickBooksOnline1?" # Change as needed print(f" User prompt: {user_prompt}") response = await agent.run(user_prompt) print("Agent final response:", response) if __name__ == "__main__": asyncio.run(main())
Step 3: Install the LlamaIndex packages
Since this workflow uses LlamaIndex together with the CData Connect AI MCP server and OpenAI for reasoning, install the required Python packages.
Run the following command in your project terminal:
pip install llama-index llama-index-tools-mcp llama-index-llms-openai
Step 4: Prompt QuickBooks Online using LlamaIndex (via the MCP server)
- When the installation finishes, run
python llamaindex_agent.py
to execute the script - The script connects to the MCP server and discovers the CData Connect AI MCP tools available for querying your connected data
- Supply a prompt (e.g., "How many tables are available in QuickBooks Online?")
- The agent reasons over the available tools, calls
queryData
against QuickBooks Online, and responds with the result
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