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LangChain is a framework used by developers, data engineers, and AI practitioners for building AI-powered applications and workflows by combining reasoning models (LLMs), tools, APIs, and data connectors. By integrating LangChain with CData Connect AI through the built-in MCP Server, workflows can effortlessly access and interact with live Databricks data in real time.
CData Connect AI offers a secure, low-code environment to connect Databricks 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 Databricks connectivity in CData Connect AI, register the MCP server with LangChain, and build a workflow that queries Databricks data in real time.
Accessing and integrating live data from Databricks has never been easier with CData. Customers rely on CData connectivity to:
While many customers are using CData's solutions to migrate data from different systems into their Databricks data lakehouse, several customers use our live connectivity solutions to federate connectivity between their databases and Databricks. These customers are using SQL Server Linked Servers or Polybase to get live access to Databricks from within their existing RDBMs.
Read more about common Databricks use-cases and how CData's solutions help solve data problems in our blog: What is Databricks Used For? 6 Use Cases.
Before LangChain can access Databricks, a Databricks connection must be created in CData Connect AI. This connection is then exposed to LangChain through the remote MCP server.
To connect to a Databricks cluster, set the properties as described below.
Note: The needed values can be found in your Databricks instance by navigating to Clusters, and selecting the desired cluster, and selecting the JDBC/ODBC tab under Advanced Options.
LangChain 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.
With the Databricks connection configured and a PAT generated, LangChain is prepared to connect to Databricks data through the CData MCP server.
Note: You can also generate a PAT from LangChain in the Integrations section of Connect AI. Simply click Connect --> Create PAT to generate it.
π Navigate to the LangChain integration tool and click on Connect.To connect LangChain with CData Connect AI Remote MCP Server and use OpenAI (ChatGPT) for reasoning, you need to configure your MCP server endpoint and authentication values in a config.py file. These values allow LangChain to call the MCP server tools, while OpenAI handles the natural language reasoning.
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.
"""
Integrates a LangChain ReAct agent with CData Connect AI MCP server.
The script demonstrates fetching, filtering, and using tools with an LLM for agent-based reasoning.
"""
import asyncio
from langchain_mcp_adapters.client import MultiServerMCPClient
from langchain_openai import ChatOpenAI
from langgraph.prebuilt import create_react_agent
from config import Config
async def main():
# Initialize MCP client with one or more server URLs
mcp_client = MultiServerMCPClient(
connections={
"default": { # you can name this anything
"transport": "streamable_http",
"url": Config.MCP_BASE_URL,
"headers": {"Authorization": f"Basic {Config.MCP_AUTH}"},
}
}
)
# Load remote MCP tools exposed by the server
all_mcp_tools = await mcp_client.get_tools()
print("Discovered MCP tools:", [tool.name for tool in all_mcp_tools])
# Create and run the ReAct style agent
llm = ChatOpenAI(
model="gpt-4o",
temperature=0.2,
api_key="YOUR_OPEN_API_KEY" #Use your OpenAI API Key here, this can be found here: https://platform.openai.com/
)
agent = create_react_agent(llm, all_mcp_tools)
user_prompt = "How many tables are available in Databricks1?" #Change prompts as per need
print(f"
User prompt: {user_prompt}")
# Send a prompt asking the agent to use the MCP tools
response = await agent.ainvoke(
{ "messages": [{ "role": "user", "content": (user_prompt),}]}
)
# Print out the agent's final response
final_msg = response["messages"][-1].content
print("Agent final response:", final_msg)
if __name__ == "__main__":
asyncio.run(main())
Since this workflow uses LangChain together with CData Connect AI MCP and integrates OpenAI for reasoning, you need to install the required Python packages.
Run the following command in your project terminal:
pip install langchain-mcp-adapters langchain-openai langgraph
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