Integrate Live Confluence Data in the Windsurf IDE via CData Connect AI
Windsurf is an AI-native IDE built around Cascade, an autonomous coding agent that understands project context and executes multi-step tasks directly inside the editor. Cascade supports the Model Context Protocol (MCP), allowing the agent to discover and call external tools and data sources without leaving the development environment.
By integrating Windsurf with CData Connect AI through the built-in MCP server, the Cascade agent gains governed, real-time access to live Confluence data. This enables developers to list catalogs, inspect schemas, and query records from Confluence data within the IDE using natural language prompts.
This article explains how to configure Confluence connectivity in Connect AI, generate the required personal access token, configure the Connect AI MCP Server in Windsurf, and verify the integration by querying live Confluence data from the Cascade chat.
Step 1: Configure Confluence connectivity for Windsurf
Connectivity to Confluence from Windsurf is made possible through Connect AI's Remote MCP Server. To interact with Confluence data from Windsurf, start by creating and configuring a Confluence connection in Connect AI.
- Log into Connect AI, click Sources, and then click Add Connection
- Select Confluence from the Add Connection panel
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Enter the necessary authentication properties to connect to Confluence.
Obtaining an API Token
An API token is necessary for account authentication. To generate one, login to your Atlassian account and navigate to API tokens > Create API token. The generated token will be displayed.
Connect Using a Confluence Cloud Account
To connect to a Cloud account, provide the following (Note: Password has been deprecated for connecting to a Cloud Account and is now used only to connect to a Server Instance.):
- User: The user which will be used to authenticate with the Confluence server.
- APIToken: The API Token associated with the currently authenticated user.
- Url: The URL associated with your JIRA endpoint. For example, https://yoursitename.atlassian.net.
Connect Using a Confluence Server Instance
To connect to a Server instance, provide the following:
- User: The user which will be used to authenticate with the Confluence instance.
- Password: The password which will be used to authenticate with the Confluence server.
- Url: The URL associated with your JIRA endpoint. For example, https://yoursitename.atlassian.net.
- 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 Windsurf. 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 Confluence connection configured and a PAT generated, Windsurf can now connect to Confluence data.
Step 2: Configure Connect AI MCP in Windsurf
Next, configure the Connect AI Remote MCP Server in Windsurf so that the Cascade agent can discover and call live data tools through Connect AI.
- Download and install the Windsurf IDE
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Open Windsurf, click your profile icon in the top right, and select Windsurf Settings
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Under the Cascade section, locate MCP Servers and click Open MCP Registry
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In the MCP Marketplace, click Add custom MCP in the top right
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This opens the mcp_config.json file. Paste the following JSON:
{ "mcpServers": { "cdata-mcp": { "serverUrl": "https://mcp.cloud.cdata.com/mcp", "headers": { "Authorization": "Basic your_base64_encoded_email_PAT", "Content-Type": "application/json" } } } }Note: Windsurf will use Basic authentication with Connect AI. Combine your Connect AI user email and the PAT you created earlier in the format email:PAT, base64 encode the combined string, and prefix it with Basic. For example, given [email protected]:ABC123...XYZ789, the Authorization header value becomes something like: Basic dXNlckBkb21haW4uY29tOkFCQzEyMy4uLlhZWjc4OQ==
- Save the mcp_config.json file and return to the MCP Registry
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Under Installed, confirm that cdata-mcp is listed and marked as Enabled
With the MCP server registered and enabled, Windsurf is ready to query live Confluence data through Connect AI.
Step 3: Query live Confluence data from Windsurf
With the integration complete, use the Cascade chat panel in Windsurf to interact with live Confluence data through natural language prompts.
- On the top bar of Windsurf, switch from Editor to Agent to open a new Cascade chat
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At the bottom of the chat panel, confirm that the cdata-mcp server is listed and the toggle is enabled
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Start interacting with the agent by entering prompts like:
- List all catalogs in my cdata-mcp connection
- Show the available schemas and tables for Confluence
- Query the top 5 records from a table in Confluence data
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The Cascade agent calls the Connect AI MCP Server and returns live results from Confluence data
At this point, your Windsurf IDE communicates with the Connect AI MCP Server and retrieves live Confluence data through remote MCP directly from the editor.
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