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Monitor software compliance with Jamf patch summaries in Slack

Jean-Marie Rizkallah Jean-Marie Rizkallah
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2/3/2026
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🧩 Jamf Patch Summary to Slack Stay on top of software patch compliance by automatically posting Jamf patch summaries to Slack. This helps IT and security teams quickly identify outdated installs and take actionβ€”without logging into Jamf.

βœ… Prerequisites β€’ A Jamf Pro API key with permissions to read software titles and patch summary β€’ A Slack app or incoming webhook URL with permission to post messages to your desired channel

πŸ” How it works β€’ Manually trigger the flow or Add a webhook β€’ Fetch a list of software titles from Jamf Pro β€’ Filter to select the software you're tracking (e.g. Chrome, Edge) β€’ Retrieve the patch summary for that software (latest version, up-to-date, out-of-date counts) β€’ Format the summary into Slack Block Kit β€’ Post the formatted summary into a Slack channel

βš™οΈ Set up steps β€’ Takes ~5–10 minutes to configure β€’ Set your server BaseURL variable in the Set Node β€’ Add your Jamf Pro API credentials in the HTTP Request nodes (Get & Retrieve) β€’ Set the target software ID in the Filter node β€’ Add your Slack webhook URL or token in the final HTTP node β€’ Optional: Adjust Slack formatting inside the Function node

Monitor Software Compliance with Jamf Patch Summaries in Slack

This n8n workflow automates the process of fetching software patch compliance summaries from Jamf and posting them to a Slack channel. It allows IT administrators to quickly get an overview of their software's patch status, ensuring systems are up-to-date and secure.

What it does

  1. Manually Trigger: The workflow is initiated manually, allowing you to run it on demand.
  2. Fetch Jamf Patch Summaries: It makes an HTTP request to a Jamf API endpoint to retrieve a summary of software patch compliance.
  3. Process Data: A Code node then processes the raw data received from Jamf, likely extracting relevant information and formatting it for readability.
  4. Filter for Critical Compliance: A Filter node checks for specific conditions, presumably to identify any critical compliance issues or software that falls below a certain patch threshold.
  5. Format for Slack (Edit Fields): If the filter condition is met (e.g., critical compliance issues are found), an "Edit Fields (Set)" node prepares the data into a message format suitable for Slack.
  6. Post to Slack: The formatted message is then posted to a designated Slack channel, alerting the team to the compliance summary.

Prerequisites/Requirements

  • Jamf Instance: Access to a Jamf Pro server with an API endpoint for patch summaries.
  • Jamf API Credentials: An API key or credentials for authenticating with the Jamf API.
  • Slack Account: A Slack workspace and a channel where the compliance summaries will be posted.
  • Slack API Token: A Slack API token (or Bot User OAuth Token) with permissions to post messages to channels.

Setup/Usage

  1. Import the workflow: Download the provided JSON and import it into your n8n instance.
  2. Configure Jamf HTTP Request (Node 19 - "HTTP Request"):
    • Set the URL to your Jamf Pro API endpoint for patch summaries.
    • Configure the Authentication method (e.g., Basic Auth, Bearer Token) using your Jamf API credentials.
  3. Configure Slack (Node 40 - "Slack"):
    • Add a new Slack credential or select an existing one. This typically involves providing your Slack Bot User OAuth Token.
    • Specify the Channel where you want the compliance summaries to be posted (e.g., #it-alerts, #security).
  4. Review Code Node (Node 834 - "Code"): Examine the JavaScript code to understand how it processes and transforms the Jamf API response. Adjust if your Jamf API response structure differs or if you need different data extracted.
  5. Review Filter Node (Node 844 - "Filter"): Understand the conditions set in the filter. This node determines when a message is sent to Slack. Adjust the conditions to match your organization's definition of "critical compliance" or desired alerting thresholds.
  6. Review Edit Fields Node (Node 38 - "Edit Fields"): Check how the data is being formatted for Slack. Customize the message content and structure as needed to be informative for your team.
  7. Execute the workflow: Click "Execute workflow" on the "Manual Trigger" node to run the workflow and test its functionality.

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