Linkedin - automation
by @red777777
LinkedIn automation — post (with image upload), comment (with @mentions), edit/delete comments, repost, read feed, analytics, like monitoring, engagement tracking, and content calendar with approval workflow. Uses Playwright with persistent browser profile. Use for any LinkedIn task including content strategy, scheduled publishing, engagement analysis, and audience growth.
clawhub install inkedin-automation-that-really-works📖 About This Skill
name: linkedin-automation description: LinkedIn automation — post (with image upload), comment (with @mentions), edit/delete comments, repost, read feed, analytics, like monitoring, engagement tracking, and content calendar with approval workflow. Uses Playwright with persistent browser profile. Use for any LinkedIn task including content strategy, scheduled publishing, engagement analysis, and audience growth.
LinkedIn Automation
> Author: Community Contributors > > ⚠️ DISCLAIMER — PERSONAL USE ONLY > This skill is provided for personal, non-commercial use only. It automates your own LinkedIn account for personal productivity and engagement. Do NOT use this skill for spam, mass outreach, scraping other users' data, or any commercial automation service. Use responsibly and in accordance with LinkedIn's User Agreement. The author assumes no liability for misuse or account restrictions.
Automate LinkedIn interactions via headless Playwright browser with a persistent session.
Prerequisites
pip install playwright && playwright install chromium)scripts/lib/browser.py to match your setupCommands
CLI={baseDir}/scripts/linkedin.pyCheck if session is valid
python3 $CLI check-sessionRead feed
python3 $CLI feed --count 5Create a post (text only)
python3 $CLI post --text "Hello world"Create a post with image (handles LinkedIn's image editor modal automatically)
python3 $CLI post --text "Hello world" --image /path/to/image.pngComment on a post (supports @Mentions — see below)
python3 $CLI comment --url "https://linkedin.com/feed/update/..." --text "Great insight @Betina Weiler!"Edit a comment (match by text fragment)
python3 $CLI edit-comment --url "https://..." --match "old text" --text "new text"Delete a comment
python3 $CLI delete-comment --url "https://..." --match "text to identify"Repost with thoughts
python3 $CLI repost --url "https://..." --thoughts "My take..."Engagement analytics for recent posts
python3 $CLI analytics --count 10Profile-level stats (followers, views)
python3 $CLI profile-statsMonitor your likes for new ones (for comment suggestions)
python3 $CLI scan-likes --count 15Scrape someone's activity
python3 $CLI activity --profile-url "https://linkedin.com/in/someone/" --count 5
All commands output JSON. Enable debug logging: LINKEDIN_DEBUG=1.
@Mentions
Comments support @FirstName LastName syntax. The skill:
1. Types @FirstName → waits for typeahead dropdown
2. Progressively types last name letter by letter if needed
3. Clicks the match only if first+last name both match
4. Falls back to plain text if person not found (returns mention_failed warning)
Check mentions in the JSON result to see if mentions succeeded.
Like Monitor
The scan-likes command checks your recent likes/reactions activity and returns any new likes since the last check. State is persisted to avoid duplicate alerts. Ideal for cron/heartbeat integration:
# In HEARTBEAT.md or cron job:
python3 $CLI scan-likes → if new likes found → suggest comment for each
⚠️ Golden Rule
NEVER post, comment, repost, edit, or delete anything without EXPLICIT user approval.
Always show the user exactly what will be posted and get a clear "yes" before executing. Read-only actions (feed, analytics, check-session, scan-likes) are safe to run freely.
Content Calendar (Scheduled Publishing)
Full approval-based publishing workflow with auto-posting. See references/content-calendar.md for setup.
scripts/cc-webhook.py): Receives approve/edit/skip from a frontend UI"old text -> new text") applied instantly by webhook# Start the webhook (or install as systemd service)
python3 scripts/cc-webhook.pyEnv vars for config:
CC_DATA_FILE=/path/to/cc-data.json
CC_ACTIONS_FILE=/path/to/actions.json
CC_WEBHOOK_PORT=8401
Content Strategy & Engagement
Rate Limits
| Action | Daily Max | Weekly Max | |--------|----------|-----------| | Posts | 2–3 | 10–15 | | Comments | 20–30 | — | | Likes | 100 | — | | Connection requests | 30 | 100 |
Setup
1. Install dependencies: pip install playwright && playwright install chromium
2. Configure browser profile path in scripts/lib/browser.py (or set LINKEDIN_BROWSER_PROFILE env var)
3. Log in to LinkedIn manually once (the session persists)
4. Run python3 scripts/linkedin.py check-session to verify
5. Learn your voice: Run python3 scripts/linkedin.py learn-profile — this scans your recent posts and comments to learn your tone, topics, language, and style. The agent uses this profile when suggesting comments/posts so they sound like you, not like a generic bot.
Voice & Style
On first setup, learn-profile analyzes your content and saves a style profile (~/.linkedin-style.json) containing:
The agent should ALWAYS read this profile (get-style) before drafting any comment or post suggestion. Never impose a foreign voice — match the user's natural style.
Post Age Warning
CRITICAL: Before suggesting a comment on any post, check how old the post is:
Commenting on old posts makes it look like you're mining someone's history with a bot. Always flag post age.
Troubleshooting
references/dom-patterns.md and update scripts/lib/selectors.py/tmp/linkedin_debug_*.png on failure⚙️ Configuration
1. Install dependencies: pip install playwright && playwright install chromium
2. Configure browser profile path in scripts/lib/browser.py (or set LINKEDIN_BROWSER_PROFILE env var)
3. Log in to LinkedIn manually once (the session persists)
4. Run python3 scripts/linkedin.py check-session to verify
5. Learn your voice: Run python3 scripts/linkedin.py learn-profile — this scans your recent posts and comments to learn your tone, topics, language, and style. The agent uses this profile when suggesting comments/posts so they sound like you, not like a generic bot.
📋 Tips & Best Practices
references/dom-patterns.md and update scripts/lib/selectors.py/tmp/linkedin_debug_*.png on failure