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    vc-analyst

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    About

    Universal VC investor analysis and outreach agent...

    SKILL.md

    VC Investor Analyst

    Universal agent for startup investor research and outreach.

    Onboarding Flow (REQUIRED FIRST)

    Before analyzing investors, gather project context. Use AskUserQuestion tool.

    Step 1: Project Discovery

    Ask user to provide:

    1. Company website - to fetch and analyze
    2. Pitch deck or materials - file path or link
    3. One-liner - what does the company do?
    AskUserQuestion:
    - "What's your company website?"
    - "Do you have a pitch deck I can review? (path or link)"
    - "In one sentence, what does your company do?"
    

    Step 2: Fetch & Analyze Project

    1. Website: Use mcp__anysite__parse_webpage(url=website) to understand:

      • Product/service description
      • Target market
      • Key features
      • Pricing (if visible)
    2. Pitch deck: Use Read tool if local file, or WebFetch if link

    3. Extract key info:

      • Problem & Solution
      • Market size (TAM/SAM/SOM)
      • Business model
      • Traction metrics
      • Team background
      • Competitive landscape

    Step 3: Fundraising Context

    Ask with AskUserQuestion:

    questions:
      - question: "What stage are you raising?"
        header: "Stage"
        options:
          - label: "Pre-Seed ($250K-$1M)"
            description: "First institutional round, idea to early product"
          - label: "Seed ($1M-$3M)"
            description: "Product-market fit exploration"
          - label: "Series A ($5M-$15M)"
            description: "Scaling proven model"
          - label: "Other"
            description: "Specify your round"
    
      - question: "How much are you raising?"
        header: "Amount"
        options:
          - label: "$500K or less"
          - label: "$500K - $1M"
          - label: "$1M - $2M"
          - label: "$2M+"
    
      - question: "What's your current traction?"
        header: "Traction"
        options:
          - label: "Pre-revenue"
            description: "Building product, no revenue yet"
          - label: "Early revenue (<$10K MRR)"
            description: "First paying customers"
          - label: "$10K-$50K MRR"
            description: "Growing customer base"
          - label: "$50K+ MRR"
            description: "Strong traction"
    

    Step 4: Investor Preferences

    Ask with AskUserQuestion:

    questions:
      - question: "What type of investors are you targeting?"
        header: "Investor Type"
        multiSelect: true
        options:
          - label: "Angel investors"
            description: "Individual investors, $25K-$250K checks"
          - label: "Micro VCs"
            description: "Small funds, $100K-$500K checks"
          - label: "Seed VCs"
            description: "Institutional seed funds, $500K-$2M"
          - label: "Strategic angels"
            description: "Industry experts for advice + capital"
    
      - question: "Geographic preference?"
        header: "Location"
        options:
          - label: "US only"
          - label: "US + Europe"
          - label: "Global"
          - label: "Specific region"
    
      - question: "Any specific industries or themes they should focus on?"
        header: "Thesis"
        multiSelect: true
        options:
          - label: "B2B SaaS"
          - label: "AI/ML"
          - label: "Developer Tools"
          - label: "Other (specify)"
    

    Step 5: Build Investor Profile

    After gathering info, create investor_criteria.json:

    {
      "company": {
        "name": "...",
        "website": "...",
        "one_liner": "...",
        "stage": "Pre-Seed",
        "raising": "$1M",
        "traction": "...",
        "thesis_keywords": ["B2B SaaS", "AI", "..."]
      },
      "ideal_investor": {
        "types": ["Angel", "Micro VC"],
        "check_size": "$50K-$500K",
        "stage_focus": ["Pre-Seed", "Seed"],
        "thesis_match": ["B2B SaaS", "AI", "Developer Tools"],
        "geography": "US + Europe"
      },
      "competitors": ["competitor1", "competitor2"],
      "outreach": {
        "pitch_deck_link": "...",
        "calendar_link": "...",
        "sender_name": "...",
        "sender_title": "..."
      }
    }
    

    Save to data/investor_criteria.json for reference.


    Investor Analysis Workflow

    After onboarding, analyze investors from CSV or list.

    1. Fetch LinkedIn Profile (ALWAYS FIRST)

    mcp__anysite__get_linkedin_profile(user="linkedin-url-or-username")
    

    CSV data has ~20% error rate. Always verify actual role before scoring.

    2. Score Investor (0-100)

    Factor Weight Check
    Is Actually Investor GATE Role: Partner, GP, Angel, EIR (NOT: Director, Manager, Engineer)
    Stage Fit 25% Matches company's raising stage
    Thesis Match 25% Matches company's thesis keywords
    Portfolio Relevance 30% Similar companies in portfolio
    Activity Level 10% Investments in last 12-18 months
    Network Value 10% Accelerator ties, fund network

    Disqualifiers (Score = 0):

    • Corporate role at non-investment firm
    • Thesis mismatch (e.g., Crypto-only when company is SaaS)
    • Wrong person at LinkedIn URL
    • Stage too late (Series B+ fund for pre-seed company)

    3. Check Portfolio Conflicts

    Search for investments in company's competitors:

    WebSearch("[Fund name] portfolio companies")
    WebSearch("[Investor name] investments [competitor name]")
    

    If conflict found: -20 points + flag "PORTFOLIO CONFLICT"

    4. Generate Outreach Message

    For Score > 70, create personalized message using company's outreach config:

    Hi [Name],
    
    [Hook from verified portfolio/achievement relevant to THIS company]
    
    [1-2 sentences about company - from one_liner]
    
    [Traction from company profile]
    
    [Question based on their expertise]
    
    Here's our pitch deck: [pitch_deck_link]
    
    If you'd like to chat: [calendar_link]
    If no slots work, send your availability.
    
    Best,
    [sender_name]
    [sender_title]
    

    Output Format

    Per Investor

    {
      "investor": "Name",
      "linkedin": "url",
      "score": 85,
      "current_role": "Partner @ Fund",
      "stage_fit": "Pre-seed focus - MATCH",
      "thesis_match": ["AI", "B2B SaaS"],
      "portfolio_relevant": ["Company1", "Company2"],
      "conflicts": [],
      "risk_factors": [],
      "outreach_hook": "Your investment in X...",
      "message": "Full outreach text"
    }
    

    Batch Summary

    {
      "batch": 1,
      "total_analyzed": 20,
      "strong_fit": 4,
      "good_fit": 3,
      "not_fit": 13,
      "top_candidates": ["Name1", "Name2"]
    }
    

    Quick Commands

    Command Action
    /vc-analyst Start full onboarding flow
    /vc-analyst analyze [linkedin] Analyze single investor (requires prior onboarding)
    /vc-analyst batch [csv-path] Analyze batch from CSV
    /vc-analyst update-criteria Update investor criteria

    Scoring Reference

    See references/scoring.md for detailed criteria and examples.

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