LinkedIn Lead Gen Outreach
/install linkedin-lead-gen-outreach
LinkedIn Lead Gen Outreach
Run a clean, review-first LinkedIn prospecting workflow focused on lead quality, concise messaging, and simple export-ready sales operations.
Keep every output structured, evidence-based, and easy to review before outreach.
Workflow
Use this sequence for complete requests:
- define targeting
- collect prospect data
- apply simple lead scoring
- draft short personalized outreach
- export structured lead data
- summarize campaign metrics
1. Define targeting
Capture the search brief before producing leads.
Minimum inputs:
- keywords
- target job titles
- seniority
- industry or company type
- location
- exclusions
- business objective
If the request is underspecified, convert it into a concise ICP before generating leads.
2. Collect prospect data
Use visible LinkedIn information, user-provided data, or manually reviewed search results.
Capture these fields whenever possible:
- full name
- LinkedIn URL
- title
- company
- location
- search match
- business potential note
- personalization signal
- source list or query
Useful personalization signals include:
- recent post theme
- recent promotion or job change
- hiring activity
- company growth signal
Do not invent facts. If evidence is weak, mark it clearly and keep the message more general.
3. Apply simple lead scoring
Use a lightweight and explainable scoring model.
Default scoring dimensions:
- role relevance: 0-5
- company fit: 0-5
- likely need: 0-5
- timing signal: 0-5
- personalization depth: 0-5
Total score bands:
- 20-25: high priority
- 12-19: medium priority
- 0-11: low priority
Always include a one-line explanation.
4. Draft personalized messages
Write opening messages that are:
- professional
- concise
- 2-3 lines max
- easy to review and edit
- grounded in real signals
Recommended structure:
- relevant opener
- business relevance
- soft CTA
Rules:
- keep messages short and polished
- avoid hype, pressure, or artificial urgency
- avoid unsupported claims
- if personalization is weak, prefer a role-based message over forced specificity
5. Use message templates
Adapt one of the templates in references/templates.md.
Prefer:
- signal-based messages when evidence is strong
- role-based messages when evidence is moderate
- executive-tone messages for senior stakeholders
6. Export format
Prefer a flat CSV structure that also imports cleanly into Google Sheets.
Recommended columns:
- first_name
- last_name
- full_name
- linkedin_url
- title
- company
- location
- keyword_match
- business_potential_note
- personalization_note
- score_total
- priority
- score_reason
- message_v1
- campaign_name
- owner
- source
- status
- next_action
Suggested status values:
- to_review
- approved
- ready_for_outreach
- contacted
- replied
- disqualified
7. Dashboard and statistics
When the user asks for a dashboard, produce a lightweight summary that can live in Markdown, CSV-derived calculations, or Google Sheets.
Include these default metrics:
- total leads
- high / medium / low priority counts
- leads by title
- leads by geography
- personalization coverage
- leads ready for outreach
Keep it simple and executive-friendly.
Google Sheets guidance
When preparing a sheet:
- freeze the top row
- apply filters to all headers
- use data validation for
priority,status, andnext_action - add a summary section above or in a second tab
- preserve the original raw data columns
Compliance standard
Operate in a LinkedIn-compliant, review-first manner.
Use this skill to support:
- profile research
- qualification
- message drafting
- structured exports
- reporting
Do not rely on deceptive automation, hidden sending loops, or behavior intended to bypass platform safeguards.
Deliverable order
For a complete request, produce outputs in this order:
- targeting summary
- scoring rubric
- lead table or CSV-ready rows
- message variants
- dashboard summary
- Google Sheets notes
Quality bar
A strong result is:
- clean and business-ready
- grounded in visible evidence
- concise enough for sales execution
- easy to export or review
- compliant and professional
Community edition note
This edition focuses on lightweight prospect research, simple prioritization, concise outreach drafting, and clean CSV or Sheets-ready exports.
Resources
Use bundled resources when useful:
references/templates.mdfor ICP, scoring, and message templatesscripts/csv_builder.pyto convert JSON leads into CSVscripts/sheets_prep.pyto normalize CSV fields for Google Sheets workflowsscripts/dashboard_stats.pyto compute simple campaign metrics from a CSV file
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install linkedin-lead-gen-outreach - After installation, invoke the skill by name or use
/linkedin-lead-gen-outreach - Provide required inputs per the skill's parameter spec and get structured output
What is LinkedIn Lead Gen Outreach?
Lightweight LinkedIn prospecting and outreach workflow for researching qualified leads, applying simple prioritization, drafting concise personalized message... It is an AI Agent Skill for Claude Code / OpenClaw, with 184 downloads so far.
How do I install LinkedIn Lead Gen Outreach?
Run "/install linkedin-lead-gen-outreach" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is LinkedIn Lead Gen Outreach free?
Yes, LinkedIn Lead Gen Outreach is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does LinkedIn Lead Gen Outreach support?
LinkedIn Lead Gen Outreach is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created LinkedIn Lead Gen Outreach?
It is built and maintained by GaelBuenoBarthe (@gaelbuenobarthe); the current version is v1.0.0.