Integrating LlamaIndex with SAS Data Sets Data via CData Connect AI

Leverage the CData Connect AI Remote MCP Server to enable LlamaIndex ReAct agents to securely access and act on SAS Data Sets data in real time.

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 SAS Data Sets data as native tools without writing custom connectors.

CData Connect AI offers a secure, low-code environment to connect SAS Data Sets 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 SAS Data Sets connectivity in CData Connect AI, register the MCP server with LlamaIndex, and build a ReAct agent that queries SAS Data Sets data in real time.

Prerequisites

Step 1: Configure SAS Data Sets Connectivity for LlamaIndex

Before LlamaIndex can access SAS Data Sets, a SAS Data Sets connection must be created in CData Connect AI. This connection is then exposed to LlamaIndex through the remote MCP server.

  1. Log in to Connect AI, click Sources, and then click + Add Connection Adding a Connection
  2. From the available data sources, choose SAS Data Sets Selecting a data source
  3. Enter the necessary authentication properties to connect to SAS Data Sets

    Set the following connection properties to connect to your SAS DataSet files:

    Connecting to Local Files

    • Set the Connection Type to "Local." Local files support SELECT, INSERT, and DELETE commands.
    • Set the URI to a folder containing SAS files, e.g. C:\PATH\TO\FOLDER\.

    Connecting to Cloud-Hosted SAS DataSet Files

    While the driver is capable of pulling data from SAS DataSet files hosted on a variety of cloud data stores, INSERT, UPDATE, and DELETE are not supported outside of local files in this driver.

    Set the Connection Type to the service hosting your SAS DataSet files. A unique prefix at the beginning of the URI connection property is used to identify the cloud data store and the remainder of the path is a relative path to the desired folder (one table per file) or single file (a single table). For more information, refer to the Getting Started section of the Help documentation.

    Configuring a connection (Salesforce is shown)
  4. Click Save & Test
  5. Once authenticated, open the Permissions tab in the SAS Data Sets connection and configure user-based permissions as required Updating permissions

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.

  1. In Connect AI, select the Gear icon in the top-right to open Settings
  2. Under Access Tokens, select Create PAT
  3. Provide a descriptive name for the token and select Create Creating a new PAT
  4. Copy the token and store it securely. The PAT will only be visible during creation

With the SAS Data Sets connection configured and a PAT generated, LlamaIndex is prepared to connect to SAS Data Sets 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.py
file. These values let LlamaIndex’s MCP tool spec call the MCP server tools, while OpenAI handles the natural language reasoning.

  1. Create a folder for the LlamaIndex MCP project
  2. Create two Python files within the folder:
    config.py
    and
    llamaindex_agent.py
  3. 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:PAT
    

    Note: You can create the base64 encoded version of MCP_AUTH using any Base64 encoding tool.

  4. 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 SASDataSets1?"  # 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 SAS Data Sets using LlamaIndex (via the MCP server)

  1. When the installation finishes, run
    python llamaindex_agent.py
    to execute the script
  2. The script connects to the MCP server and discovers the CData Connect AI MCP tools available for querying your connected data
  3. Supply a prompt (e.g., "How many tables are available in SAS Data Sets?")
  4. The agent reasons over the available tools, calls
    queryData
    against SAS Data Sets, and responds with the result

Get CData Connect AI

To get live data access to hundreds of SaaS, Big Data, and NoSQL sources directly from your cloud applications, try CData Connect AI today!

Ready to get started?

Learn more about CData Connect AI or sign up for free trial access:

Free Trial