company-discovery
About
This skill helps developers discover and evaluate companies for job searching, operating in two modes. Enrichment mode provides deep research on a specific company, while discovery mode finds and ranks multiple companies within a target industry. It generates detailed profiles with fit scores and creates optimized job search queries based on your constraints.
Quick Install
Claude Code
Recommended/plugin add https://github.com/majiayu000/claude-skill-registrygit clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/company-discoveryCopy and paste this command in Claude Code to install this skill
Documentation
Company Discovery Workflow
Load and execute: workflows/company-discovery/workflow.md
Read the entire workflow file and execute it step by step. This workflow operates in two modes:
Enrichment Mode (specific company):
- Trigger:
/company-discovery Stripeor "tell me more about Stripe" - Deep-dive research on a single company
- Gathers remote policy, tech stack, salary data, funding news
- Creates detailed profile in
research/companies/{industry}/{company}.md
Discovery Mode (industry):
- Trigger:
/company-discovery fintechor "find companies in fintech" - Discovers 5-10 companies in the target industry
- Evaluates and ranks each by fit
- Creates index and individual profiles in
research/companies/{industry}/
Both modes produce:
- Fit scoring against your constraints
- Hiring signals (funding, growth, leadership changes)
- Optimized job search queries for LinkedIn and other platforms
Opening Tracking: Each company profile includes a "Tracked Openings" section that is automatically populated when you run job-scan on postings from that company. This creates a per-company view of all opportunities you've analyzed, with fit scores and links to detailed analyses.
Follow all steps exactly as written. Embody Scout's quality-over-quantity approach to company targeting.
$ARGUMENTS
GitHub Repository
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