Moltbook Fanboy
Automatically browse Moltbook to get trending posts, generate comments and likes, and create daily summary reports. Use when user asks about Moltbook trends,...
技能说明
name: moltbook-fanboy description: Automatically browse Moltbook to get trending posts, generate comments and likes, and create daily summary reports. Use when user asks about Moltbook trends, daily summaries, or automated social interactions. Runs daily via cron at 12:00 Beijing Time.
Moltbook Fanboy Skill
This skill automates interactions with Moltbook by browsing trending posts of the day, analyzing content, autonomously generating comments and likes, and finally generating a daily summary report.
Workflow
When this skill is triggered, the Agent must execute the following steps:
-
Fetch trending posts: Run
scripts/fetch_top_posts.pyto get the top 5 trending posts from the past 24 hours sorted by likes. Data is saved todata/top_posts.json. -
Autonomous content analysis:
- Read each post's title, body, and metadata
- Understand the post's topic, tone, and content quality
- Evaluate whether the post deserves a like or comment
-
Autonomous interaction generation:
- Like decision: Based on post content quality, relevance, creativity, etc., autonomously decide whether to like. Not every post needs a like - decisions should be based on genuine value judgment.
- Comment generation: For posts worth commenting on, autonomously generate natural, meaningful comments. Comments should:
- Be relevant and valuable to the post content
- Have a natural tone fitting the community vibe
- Can be agreement, questions, additional viewpoints, or constructive feedback
- Avoid templated or repetitive comments
- Record all actions: Save like and comment actions to
data/actions.jsonin the following format:[ { "post_title": "Post Title", "action": "like" or "comment", "content": "Comment content (if comment)", "time": "ISO 8601 timestamp" } ]
-
Generate daily summary:
- Use
templates/summary.mdas template - Generate a summary containing:
- Daily Top 5 posts list (sorted by likes)
- Each post's title, publish time, likes count, comments count
- Post content summary
- Action statistics (likes count, comments count)
- Interaction summary (explain why certain posts were liked/commented)
- Daily insights (trends or interesting findings from trending posts)
- Use
Key Principles
- Autonomy: Don't use hardcoded templates or fixed replies. Generate comments based on actual post content each time.
- Authenticity: Interactions should be based on genuine understanding and judgment of content, not mechanical execution.
- Diversity: Comments should be diverse, avoiding repetition or templating.
- Value-oriented: Only interact with posts that are truly valuable or interesting - don't force interactions just to complete tasks.
Configuration Requirements
No configuration needed: Moltbook API v1 is public and requires no API key to fetch post data.
Resource Files
scripts/fetch_top_posts.py: Fetch trending posts (using v1 API, 24-hour window, sorted by likes)scripts/generate_daily_report.py: Generate daily report and save to Obsidiantemplates/summary.md: Daily summary templatedata/top_posts.json: Post data storagedata/actions.json: Interaction action records
Obsidian Sync
Generated reports are automatically saved to Obsidian vault:
- Save path:
/root/clawd/obsidian-vault/reports/moltbook/YYYY-MM-DD.md - Filename format:
YYYY-MM-DD.md - Sync method: Bidirectional sync to your Obsidian vault via GitHub
Execution
When this skill is triggered, the Agent must execute the following steps:
-
Fetch trending posts:
cd /root/clawd/skills/moltbook-fanboy && python3 scripts/fetch_top_posts.py -
Generate daily report (includes interaction generation and Obsidian save):
cd /root/clawd/skills/moltbook-fanboy && python3 scripts/generate_daily_report.py -
Read and send: The script outputs the report content, send directly to Telegram
如何使用「Moltbook Fanboy」?
- 打开小龙虾AI(Web 或 iOS App)
- 点击上方「立即使用」按钮,或在对话框中输入任务描述
- 小龙虾AI 会自动匹配并调用「Moltbook Fanboy」技能完成任务
- 结果即时呈现,支持继续对话优化