Goose-skills kol-content-monitor
git clone https://github.com/gooseworks-ai/goose-skills
T=$(mktemp -d) && git clone --depth=1 https://github.com/gooseworks-ai/goose-skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/composites/kol-content-monitor" ~/.claude/skills/gooseworks-ai-goose-skills-kol-content-monitor && rm -rf "$T"
skills/composites/kol-content-monitor/SKILL.mdKOL Content Monitor
Track what Key Opinion Leaders in your space are writing about. Surface trending narratives early — before they peak — so your team can join the conversation at the right time with relevant content.
Core principle: For seed-stage teams, the fastest path to content distribution is riding a wave that's already breaking, not creating one from scratch.
When to Use
- "What are the top voices in [our space] posting about?"
- "What topics are trending on LinkedIn in [industry]?"
- "I want to know what content is resonating before I write anything"
- "Track [list of founders/experts] and tell me what they're saying"
- "Find trending narratives I can contribute to"
Phase 0: Intake
KOL List
- Names and LinkedIn URLs of KOLs to track (if known)
- If unknown: use
skill first to build the listkol-discovery
- If unknown: use
- Twitter/X handles for the same KOLs (optional but recommended for full picture)
- Any specific topics/keywords you care about? (for filtering noisy feeds)
Scope
- How far back? (default: 7 days for weekly monitor, 30 days for first run)
- Minimum engagement threshold to include a post? (default: 20 reactions/likes)
Save config to the current working directory as
kol-monitor.json (or user-specified path).
{ "kols": [ { "name": "Lenny Rachitsky", "linkedin": "https://www.linkedin.com/in/lennyrachitsky/", "twitter": "@lennysan" }, { "name": "Kyle Poyar", "linkedin": "https://www.linkedin.com/in/kylepoyar/", "twitter": "@kylepoyar" } ], "days_back": 7, "min_reactions": 20, "keywords": ["GTM", "growth", "AI", "outbound", "founder"], "output_path": "kol-monitor-[DATE].md" }
Phase 1: Scrape LinkedIn Posts
Run
linkedin-profile-post-scraper for all KOL LinkedIn profiles:
python3 skills/linkedin-profile-post-scraper/scripts/scrape_linkedin_posts.py \ --profiles "<url1>,<url2>,<url3>" \ --days <days_back> \ --max-posts 20 \ --output json
Filter results: only include posts with reactions ≥
min_reactions.
Phase 2: Scrape Twitter/X Posts
Run
twitter-mention-tracker for each handle:
python3 skills/twitter-mention-tracker/scripts/search_twitter.py \ --query "from:<handle>" \ --since <YYYY-MM-DD> \ --until <YYYY-MM-DD> \ --max-tweets 20 \ --output json
Filter: only include tweets with likes ≥
min_reactions / 2 (Twitter engagement is lower than LinkedIn).
Phase 3: Topic Clustering
Group all posts across all KOLs by topic/theme:
Clustering approach:
- Extract the main topic from each post (1-3 word label)
- Group similar topics together
- Count: how many KOLs touched this topic? How many total posts?
- Rank by: total engagement (sum of reactions/likes across all posts on that topic)
This surfaces topics with broad consensus (multiple KOLs talking about it) vs. individual takes.
Signal types to flag:
| Signal | Meaning | Example |
|---|---|---|
| Convergence | 3+ KOLs on same topic in same week | Multiple founders posting about "AI SDR fatigue" |
| Spike | Topic that 2x'd in volume vs last week | Suddenly everyone's talking about [new thing] |
| Underdog | 1 KOL posting about topic nobody else covers | Potential early-mover opportunity |
| Controversy | Posts with high comment/reaction ratio | Debate you could weigh in on |
Phase 4: Output Format
# KOL Content Monitor — Week of [DATE] ## Tracked KOLs [N] KOLs | [N] LinkedIn posts | [N] tweets | Period: [date range] --- ## Trending Topics This Week ### 1. [Topic Name] — CONVERGENCE SIGNAL - **KOLs discussing:** [Name 1], [Name 2], [Name 3] - **Total posts:** [N] | **Total engagement:** [N] reactions/likes - **Trend direction:** ↑ New this week / ↑↑ Growing / → Stable **Best posts on this topic:** > "[Post excerpt — first 150 chars]" — [Author], [Date] | [N] reactions [LinkedIn URL] > "[Tweet text]" — [@handle], [Date] | [N] likes [Twitter URL] **Content opportunity:** [1-2 sentences on how to contribute to this conversation] --- ### 2. [Topic Name] ... --- ## High-Engagement Posts (Top 5 This Week) | Post | Author | Platform | Engagement | Topic | |------|--------|----------|------------|-------| | "[Preview...]" | [Name] | LinkedIn | [N] reactions | [topic] | ... --- ## Emerging Topics to Watch Topics picked up by 1 KOL this week — too early to call a trend but worth tracking: - [Topic] — [KOL name] — [brief description] - [Topic] — ... --- ## Recommended Content Actions ### This Week (Ride the Wave) 1. **[Topic]** is peaking — ideal moment to publish your take. Suggested angle: [angle] 2. **[Controversy]** is generating debate — consider a nuanced response post. Your positioning: [suggestion] ### Next Week (Get Ahead) 1. **[Emerging topic]** is early-stage — write something now before it gets crowded.
Save to the current working directory as
kol-monitor-[YYYY-MM-DD].md (or user-specified path).
Phase 5: Build Trigger-Based Content Calendar
Optional: from the monitor output, propose a content calendar entry for each "Ride the Wave" opportunity:
Topic: [topic] Best post format: [LinkedIn insight post / tweet thread / blog] Suggested hook: [hook] Supporting points: [3 bullets from your product/experience] Ideal publish date: [within 3 days of peak]
Scheduling
Run weekly (Friday afternoon — catches the week's peaks and gives weekend to draft):
0 14 * * 5 python3 run_skill.py kol-content-monitor --client <client-name>
Cost
| Component | Cost |
|---|---|
| LinkedIn post scraping (per profile) | ~$0.05-0.20 (Apify) |
| Twitter scraping (per run) | ~$0.01-0.05 |
| Total per weekly run (10 KOLs) | ~$0.50-2.00 |
Tools Required
- Apify API token —
env varAPIFY_API_TOKEN - Upstream skills:
,linkedin-profile-post-scrapertwitter-mention-tracker - Optional upstream:
(to build initial KOL list)kol-discovery
Trigger Phrases
- "What are the top voices in [space] posting about this week?"
- "Track my KOL list and give me content ideas"
- "Run KOL content monitor for [client]"
- "What's trending on LinkedIn in [industry]?"