Agent skill
omm-view
Start the omm web viewer to explore architecture diagrams in the browser. Use when the user says "omm view", "open viewer", "show diagrams", "view architecture", or "open architecture".
Install this agent skill to your Project
npx add-skill https://github.com/oh-my-mermaid/oh-my-mermaid/tree/main/skills/omm-view
SKILL.md
omm-view — Architecture Viewer
Purpose
Launch the interactive web viewer so the user can explore .omm/ architecture diagrams in their browser.
Prerequisites
Ensure the omm CLI is available:
command -v omm || npm install -g oh-my-mermaid
If the install command fails (permission denied), tell the user:
"Please run npm install -g oh-my-mermaid in your terminal, then try again."
Steps
Step 1: Verify .omm/ exists
omm list
If no classes found, tell the user:
"No architecture docs found. Run /omm-scan first to generate them."
Then stop.
Step 2: Start the viewer
omm view
If the user specified a port:
omm view --port <port>
Step 3: Report
Tell the user the viewer is running and provide the URL (default: http://localhost:3000).
The viewer auto-refreshes when .omm/ files change.
Rules
- Always check for existing classes before starting the viewer
- If no classes exist, suggest
/omm-scaninstead of starting an empty viewer - The viewer is read-only — it does not modify
.omm/files
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