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WordPress auto-blogging pro - content automation machine for SEO topics

Daniel NgDaniel Ng
5181 views
2/3/2026
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The best content automation in the market! This advanced workflow not only creates and publishes SEO-optimized blog posts to your WordPress website but also backs up all content and images to a designated folder in your Google Drive. In addition, It generates a unique image for each chapter and a featured image for the overall article, and it automatically collects internal website links—seamlessly inserting them throughout each chapter and the entire article. This integrated approach enhances on-page SEO, improves navigation, and streamlines your content creation process, saving you time while ensuring your work is securely stored.

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How it works

  1. Triggers upon adding a new row to a Google Sheets.
  2. Generates a full blog post by writing content based on customizable parameters such as topic, target audience, length, style, and seed keyword.
  3. Generates and adds images for each chapter as well as a featured image for the article.
  4. Gathers internal website links and strategically embeds them within each chapter and throughout the article, boosting SEO and enhancing user navigation.
  5. Publishes the blog post directly to your WordPress website.
  6. Saves all content (blog post and images) to Google Drive, organizing them in a folder named after the blog post title.

Unique features

  1. Full Automation: The workflow is designed to be 100% automated. Once imported and configured, it can run without manual intervention.
  2. Simple Activation: It can be easily triggered through the Google Spreadsheets interface. You simply add a new row to a Google Sheet.
  3. Customization Options: Offers a wide array of customization options, including topic, category, target audience, word count, number of chapters, length of introduction and conclusion, and writing style. It also allows for the inclusion of calls-to-action (CTAs) and company/product introductions.
  4. Automatic Content Saving: After writing a blog post, all content and images are automatically saved to Google Drive, preventing data loss. The folder is even named after the title of the blog post.
  5. SEO-Optimized Content: It's designed to create content optimized for SEO using seed keywords.
  6. AI Model Flexibility: It’s super easy to switch between different AI models through the Open Router node.
  7. Rate Limit Handling: Includes "Wait" nodes to avoid rate limits.
  8. Internal Link Limit: Limits the number of internal links to 20 by default.

Set up steps

  1. Install the workflow template: Import the JSON file into your n8n instance.
  2. Connect the workflow to your accounts: This includes linking your WordPress website, Google Drive, and AI models (such as OpenAI GPT-4o).
  3. Configure the Google Sheet: Ensure your Google Sheet is set up to trigger the workflow upon adding a new row and that the input data is correctly formatted.
  4. Customize the workflow: Adjust parameters like topic, target audience, and writing style to match your specific content needs. Optimize prompts for best results.
  5. Test the workflow: Use low-cost AI models and image settings initially to ensure everything runs smoothly.
  6. Tailor Further as Needed: Modify workflow elements to align perfectly with your needs and content strategy.

n8n Workflow: WordPress Auto-Blogging Pro - Content Automation Machine for SEO Topics

This n8n workflow is designed to automate the process of generating and publishing blog posts to WordPress, focusing on SEO-optimized content. It acts as a "Content Automation Machine" by leveraging AI for content creation, image manipulation, and structured output, then publishing the results to a WordPress site.

What it does

This workflow streamlines the content creation and publishing process with the following steps:

  1. Trigger: The workflow can be initiated manually, on a schedule, or by new data in a Google Sheet. This allows for flexible content planning and execution.
  2. Content Generation (AI): It uses an AI language model (via OpenAI or OpenRouter) to generate content based on a prompt. This likely involves creating blog post titles, outlines, and body content.
  3. Structured Output Parsing: The AI-generated content is then parsed using a structured output parser, ensuring the content adheres to a predefined format (e.g., JSON) for easy extraction of title, body, and other post elements.
  4. Image Generation/Editing: An "Edit Image" node is present, suggesting the workflow can generate or manipulate images to accompany the blog posts, potentially adding borders, cropping, or resizing.
  5. Data Transformation: Various core nodes like "Edit Fields (Set)", "Split in Batches", "Merge", "XML", "Markdown", "Aggregate", "Limit", and "Split Out" are used to process, transform, and structure the data at different stages, ensuring it's in the correct format for subsequent actions.
  6. Conditional Logic: An "If" node allows for conditional branching, enabling dynamic decision-making within the workflow based on certain criteria (e.g., checking content quality, image availability).
  7. File Management: It interacts with Google Drive and Google Docs, likely for storing generated content, images, or input data.
  8. Publish to WordPress: Finally, the processed content and images are published as a new blog post on a WordPress site.
  9. Delay/Wait: A "Wait" node is included, which can be used to introduce delays between operations, useful for respecting API rate limits or staggering posts.

Prerequisites/Requirements

To use this workflow, you will need:

  • n8n Instance: A running n8n instance.
  • WordPress Account: Access to a WordPress site with appropriate API credentials configured in n8n.
  • OpenAI or OpenRouter API Key: For AI content generation. You'll need credentials for either OpenAI or OpenRouter configured in n8n.
  • Google Account: With access to Google Drive and Google Docs, if you plan to use these nodes for input or output storage. You'll need Google OAuth credentials configured in n8n.
  • Google Sheets (Optional): If you intend to trigger the workflow based on new rows in a Google Sheet, you'll need a Google Sheets connection.

Setup/Usage

  1. Import the Workflow: Download the JSON provided and import it into your n8n instance.
  2. Configure Credentials:
    • Set up your WordPress credentials (API key or username/password, depending on your WordPress setup and n8n's WordPress node configuration).
    • Configure your OpenAI or OpenRouter credentials (API key).
    • Set up your Google OAuth credentials for Google Drive, Google Docs, and Google Sheets if you plan to use these integrations.
  3. Customize Nodes:
    • Trigger: Choose your preferred trigger (Manual, Schedule, or Google Sheets) and configure its settings.
    • AI Nodes (OpenAI/OpenRouter): Adjust the prompts and model parameters to generate the desired content for your blog posts.
    • Structured Output Parser: Ensure the schema for the structured output parser matches the expected format of your AI-generated content.
    • Edit Image: Configure image manipulation settings as needed (e.g., blurring, cropping, adding text).
    • WordPress: Map the generated content (title, body, featured image, categories, tags, etc.) to the WordPress node's fields.
    • Google Drive/Docs (Optional): Configure paths and file names if you're using these for storage.
  4. Activate the Workflow: Once configured, activate the workflow to start automating your WordPress blog posts.
  5. Monitor: Regularly check the workflow's execution history for any errors or unexpected behavior.

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