hello-demo
Delivery Instructions
When triggered:
- Copy the asset to outputs:
cp assets/hello-demo.html /mnt/user-data/outputs/
- Provide the computer link:
[View hello-demo.html](computer:///mnt/user-data/outputs/hello-demo.html)
- Add one-line description: "Interactive HTML demo with bookmarklet showing token-efficient artifact delivery."
DO NOT:
- Generate HTML from scratch
- Explain the file contents in detail
- Add verbose commentary
The asset contains a complete, styled HTML page with:
- Bookmarklet demonstration
- Usage instructions
- Token efficiency explanation
Token efficiency: This pattern saves ~500 tokens vs. generating explanatory text each time.
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