Automate website performance analysis and comparison using Gemini and PageSpeed Insights
The Page Speed Insight workflow automates website performance analysis by integrating Google PageSpeed Insights API with Discord messaging and Gemini. This n8n workflow provides expert-level performance audits and comparisons, delivering actionable insights for website owners, SEO professionals, and developers.
Disclaimer: this workflow using community nodes Google PageSpeed Insights Community Node
š” Why Use Page Speed Insight?
- Save Time: Instantly analyze and compare website speeds without manual tool usage
- Eliminate Guesswork: Receive expert audit reports that translate technical data into clear, actionable insights
- Improve Website Outcomes: Identify critical bottlenecks and enhancements prioritized by AI-driven analysis
- Seamless Integration: Pull URLs and deliver reports directly via Discord for team collaboration and immediate response
ā” Who Is This For?
- Webmasters and website owners seeking fast, automated performance checks
- SEO analysts who need consistent, data-backed website comparisons
- Developers requiring clear, prioritized action points from performance audits
- Digital agencies managing multiple client sites with ongoing monitoring needs
š§ What This Workflow Does
- ā± Trigger: Discord message containing URLs or scheduled execution
- š Parse: Extracts URLs and determines analysis type (single/comparison)
- š Analyze: Calls Google PageSpeed API for performance data
- š¤ Process: AI generates user-friendly reports from raw Lighthouse JSON
- š Deliver: Sends chunked reports to Discord channels
- š Log: Stores execution data for review and improvement
š Setup Instructions
-
Import the provided JSON workflow into your n8n instance
-
Set up credentials for:
- Google PageSpeed API (ensure you have a valid API key ā get yours here)
- Discord Bot API with permissions to read messages and send messages in your chosen guild/channel
-
Customize the workflow by adjusting:
- Discord guild and channel IDs where messages are monitored and results posted
- Scheduled trigger interval if needed
- Any prompt text or AI model parameters to tailor report tone and detail level
-
Test thoroughly with real URLs and Discord interaction to confirm smooth data flow and output quality
š§© Pre-Requirements
- Active n8n instance (Cloud or self-hosted)
- n8n Google PageSpeed community node
- Google PageSpeed Insights API key
- Discord Bot credentials with channel access
- Google Gemini AI credentials (recommended)
š ļø Customize It Further
- Extend to analyze desktop performance or other device types easily by modifying the PageSpeed API call
- Integrate with Slack, email, or other team tools alongside Discord for broader notification
- Enhance report depth by adding more AI-driven insights like competitor site recommendations or historical trend tracking
š§ Nodes Used
- Google PageSpeed Insights Community Node
- Discord (getAllMessages, sendMessage)
- Code (URL parsing, message chunking)
- AI Language Model (Google Gemini)
- Schedule Trigger
- Switch (message type handling)
- Sticky Notes (workflow guidance)
š Support
Made by: khaisa Studio
Tag: automation, performance, SEO, google-pagespeed, discord
Category: Monitoring & Reporting
Need a custom solution? Contact Me
Automate Website Performance Analysis and Comparison using Gemini and PageSpeed Insights
This n8n workflow leverages the power of Google Gemini and PageSpeed Insights to automate the analysis and comparison of website performance, providing actionable insights directly to a Discord channel.
Description
This workflow simplifies the process of regularly checking the performance of specified websites. It uses a scheduled trigger to initiate performance checks, fetches data, processes it with a large language model (LLM) for analysis and comparison, and then posts the summarized results to a Discord channel. This allows for proactive monitoring and quick identification of performance regressions or improvements.
What it does
- Triggers on Schedule: The workflow starts at a predefined interval (e.g., daily, weekly) to perform website checks.
- Executes Custom Code: It runs a JavaScript code snippet that is expected to interact with an external API (like PageSpeed Insights) to fetch performance metrics for a list of URLs.
- Processes Data with Gemini: The collected performance data is then fed into a "Basic LLM Chain" which utilizes the "Google Gemini Chat Model". This chain is designed to analyze the raw performance data, compare it (presumably against previous runs or different URLs), and generate a concise summary or actionable insights.
- Filters Output (Conditional Logic): A "Switch" node is present, suggesting that the workflow might conditionally process or send data based on certain criteria derived from the LLM's output or the initial performance metrics.
- Posts to Discord: Finally, the analyzed and summarized performance report is sent as a message to a specified Discord channel, notifying relevant stakeholders of the website's performance status.
Prerequisites/Requirements
- n8n Instance: A running instance of n8n.
- Discord Account & Webhook: A Discord server and channel where the performance reports will be posted. You'll need to configure a Discord credential in n8n.
- Google Gemini API Key: An API key for the Google Gemini Chat Model to enable the LLM analysis. This will be configured as a credential in n8n.
- PageSpeed Insights (or similar) API Access: While not explicitly shown as a dedicated node, the "Code" node implies interaction with an external service like PageSpeed Insights to retrieve website performance data. You might need an API key or specific setup for that service.
Setup/Usage
- Import the Workflow: Download the provided JSON and import it into your n8n instance.
- Configure Credentials:
- Discord: Create a new Discord credential in n8n, providing your Bot Token or Webhook URL.
- Google Gemini: Create a new Google Gemini Chat Model credential, entering your API Key.
- Customize the Code Node:
- Open the "Code" node.
- Modify the JavaScript code to fetch performance data from your desired source (e.g., PageSpeed Insights API, Lighthouse CI results). Ensure it returns the data in a format suitable for the LLM chain.
- Specify the URLs you want to analyze within this code.
- Configure the Basic LLM Chain:
- Open the "Basic LLM Chain" node.
- Adjust the prompt to guide the Google Gemini model on how to analyze the website performance data, what comparisons to make, and what kind of summary or insights to generate.
- Configure the Switch Node:
- If you wish to add conditional logic (e.g., only send reports if performance drops below a threshold), configure the "Switch" node with the appropriate expressions based on the LLM's output.
- Configure the Discord Node:
- Select your configured Discord credential.
- Specify the Channel ID where the messages should be posted.
- Customize the message content to display the analyzed performance report from the LLM.
- Set the Schedule Trigger:
- Open the "Schedule Trigger" node.
- Define the desired interval for the workflow to run (e.g., every day, once a week).
- Activate the Workflow: Save and activate the workflow to start automating your website performance analysis.
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