Post New YouTube Videos to X
Automated YouTube Video Promotion Workflow
Automate the promotion of new YouTube videos on X (formerly Twitter) with minimal effort. This workflow is perfect for content creators, marketers, and social media managers who want to keep their audience updated with fresh content consistently.
How it works
This workflow triggers every 30 minutes to check for new YouTube videos from a specified channel. If a new video is found, it utilizes OpenAI's ChatGPT to craft an engaging, promotional message for X. Finally, the workflow posts the generated message to Twitter, ensuring your latest content is shared with your audience promptly.
Set up steps
- Schedule the workflow to run at your desired frequency.
- Connect to your YouTube account and set up the node to fetch new videos based on your Channel ID.
- Integrate with OpenAI to generate promotional messages using GPT-3.5 turbo.
- Link to your X account and set up the node to post the generated content.
Please note, you'll need API keys and credentials for YouTube, OpenAI, and X. Check out this quick video tutorial to make the setup process a breeze.
Additional Tips
- Customize the workflow to match your branding and messaging tone.
- Test each step to ensure your workflow runs smoothly before going live.
Post New YouTube Videos to X (Formerly Twitter)
This n8n workflow automates the process of identifying new YouTube videos from a specified channel, generating a concise summary and relevant hashtags using OpenAI, and then posting this information to X (formerly Twitter). It simplifies content distribution by leveraging AI to create engaging social media updates for new video releases.
What it does
- Triggers on Schedule: The workflow runs at a set interval (e.g., every hour) to check for new videos.
- Fetches YouTube Channel Videos: It connects to the YouTube API to retrieve the latest videos from a configured channel.
- Generates Social Media Content with OpenAI: For each new video, it sends the video title and description to OpenAI to generate a short, engaging summary and relevant hashtags suitable for X.
- Posts to X: It then composes a tweet including the AI-generated summary, hashtags, and a direct link to the new YouTube video, and posts it to the configured X account.
Prerequisites/Requirements
- n8n Instance: A running n8n instance.
- YouTube API Key: A Google Cloud Project with the YouTube Data API v3 enabled and an API key configured in n8n.
- OpenAI API Key: An OpenAI API key configured in n8n.
- X (Formerly Twitter) Account: An X Developer Account with the necessary API keys and access tokens configured as credentials in n8n.
Setup/Usage
- Import the Workflow: Download the provided JSON and import it into your n8n instance.
- Configure Credentials:
- YouTube: Set up your Google OAuth2 or API Key credential for YouTube.
- OpenAI: Set up your OpenAI API Key credential.
- X: Set up your X (formerly Twitter) OAuth1.0a credential with your Consumer Key, Consumer Secret, Access Token, and Access Token Secret.
- Customize Nodes:
- Schedule Trigger: Adjust the interval for how often you want the workflow to check for new videos.
- YouTube Node:
- Select the "Get All Videos from Channel" operation.
- Enter the Channel ID of the YouTube channel you want to monitor.
- OpenAI Node:
- Review the prompt used to generate the summary and hashtags. You can modify it to better suit your desired tone and content style.
- X Node:
- Ensure the "Tweet" operation is selected.
- Verify the message template to ensure it correctly pulls the OpenAI-generated summary, hashtags, and the YouTube video URL.
- Activate the Workflow: Once all credentials and configurations are set, activate the workflow to start monitoring for new YouTube videos and posting them to X.
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