Build Agents in Relevance AI with Access to Live Azure Data Lake Storage Data via CData Connect AI
Relevance AI is an AI automation and agent-building platform that enables organizations to create autonomous workflows powered by natural language reasoning. Users can visually design agents that interact with APIs, databases, and third-party systems to complete everyday business tasks or data operations.
By integrating Relevance AI with CData Connect AI through the built-in MCP (Model Context Protocol) Server, your agents can query, summarize, and act on live Azure Data Lake Storage data in real time. This connection bridges Relevance AI intelligent workflow engine with the governed enterprise connectivity of CData Connect AI ensuring every query runs securely against authorized sources without manual data export.
This article outlines the steps to configure Azure Data Lake Storage connectivity in Connect AI, register the CData MCP Server in Relevance AI, and build an agent that interacts with live Azure Data Lake Storage data.
Step 1: Configure Azure Data Lake Storage Connectivity for Relevance AI
Connectivity to Azure Data Lake Storage from Relevance AI is made possible through CData Connect AI's Remote MCP Server. To interact with Azure Data Lake Storage data from Relevance AI, we start by creating and configuring a Azure Data Lake Storage connection in CData Connect AI.
- Log into Connect AI, click Sources, and then click Add Connection
- Select Azure Data Lake Storage from the Add Connection panel
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Enter the necessary authentication properties to connect to Azure Data Lake Storage.
Authenticating to a Gen 1 DataLakeStore Account
Gen 1 uses OAuth 2.0 in Entra ID (formerly Azure AD) for authentication.
For this, an Active Directory web application is required. You can create one as follows:
To authenticate against a Gen 1 DataLakeStore account, the following properties are required:
- Schema: Set this to ADLSGen1.
- Account: Set this to the name of the account.
- OAuthClientId: Set this to the application Id of the app you created.
- OAuthClientSecret: Set this to the key generated for the app you created.
- TenantId: Set this to the tenant Id. See the property for more information on how to acquire this.
- Directory: Set this to the path which will be used to store the replicated file. If not specified, the root directory will be used.
Authenticating to a Gen 2 DataLakeStore Account
To authenticate against a Gen 2 DataLakeStore account, the following properties are required:
- Schema: Set this to ADLSGen2.
- Account: Set this to the name of the account.
- FileSystem: Set this to the file system which will be used for this account.
- AccessKey: Set this to the access key which will be used to authenticate the calls to the API. See the property for more information on how to acquire this.
- Directory: Set this to the path which will be used to store the replicated file. If not specified, the root directory will be used.
- Click Save & Test
- Navigate to the Permissions tab and update user-based permissions
Add a Personal Access Token
A Personal Access Token (PAT) is used to authenticate the connection to Connect AI from Relevance AI. It is best practice to create a separate PAT for each integration to maintain granular access control.
- Click the gear icon () at the top right of the Connect AI app to open Settings
- On the Settings page, go to the Access Tokens section and click Create PAT
- Give the PAT a descriptive name and click Create
- Copy the token when displayed and store it securely. It will not be shown again
With the Azure Data Lake Storage connection configured and a PAT generated, Relevance AI can now connect to Azure Data Lake Storage data through the CData MCP Server.
Step 2: Configure Connectivity in Relevance AI
The CData Connect AI MCP endpoint and authorization details are registered within Relevance AI so that agents can call live data from Connect AI.
- Sign in to Relevance AI and create an account if you do not already have one
- From the sidebar, navigate to Agents and then click on New Agent
- Select Build from scratch and name the agent (eg; CData MCP Server)
- Inside the agent editor, select Advanced and then switch to the MCP Server tab
- Click + Add Remote MCP Tools
- In the dialog that appears, fill out the fields as follows:
- URL: https://mcp.cloud.cdata.com/mcp
- Label: Any custom label (eg; cdata_mcp_server)
- Authentication: Select Custom headers
- Add header key:value pair. Combine your email and PAT as email:PAT and encode that string in Base64 and then prefix with the word Basic
- Key: Authorization
- Value: Basic base64(email:PAT)
Click Connect to establish the connection. Relevance AI will verify your credentials and register the CData Connect AI MCP Server for use in agents.
Step 3: Build and Run a Relevance AI Agent with Live Azure Data Lake Storage Data
- Switch to the Run tab for your agent
- Enter a task for example, "List the five most recent incidents from ServiceNow"
- The agent will query Connect AI via the MCP endpoint and display live results from Azure Data Lake Storage data
With the connection complete, Relevance AI agents can now issue queries, retrieve records, and perform AI-driven tasks over live Azure Data Lake Storage data through CData Connect AI MCP Server.
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