Agent Skills: Thesis Matching

Matches inbound deals against investment thesis criteria and fund strategy

UncategorizedID: a5c-ai/babysitter/thesis-matching

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plugins/babysitter/skills/babysit/process/specializations/domains/business/venture-capital/skills/thesis-matching/SKILL.md

Skill Metadata

Name
thesis-matching
Description
Matches inbound deals against investment thesis criteria and fund strategy

Thesis Matching

Overview

The Thesis Matching skill provides systematic matching of inbound investment opportunities against the fund's investment thesis, strategic priorities, and portfolio construction criteria. It enables rapid triage of deal flow while ensuring alignment with fund strategy.

Capabilities

Investment Thesis Encoding

  • Encode multi-dimensional investment thesis criteria
  • Define sector focus areas and exclusions
  • Specify stage preferences and check size ranges
  • Articulate strategic themes and conviction areas

Deal Matching Analysis

  • Match incoming deals against thesis dimensions
  • Score alignment across criteria with weighted importance
  • Identify thesis exceptions worth considering
  • Flag anti-thesis or exclusion criteria matches

Portfolio Construction Fit

  • Assess portfolio concentration and diversification
  • Check against sector and stage allocation targets
  • Evaluate vintage year and deployment pacing
  • Consider follow-on reserve requirements

Thesis Evolution Tracking

  • Track thesis adjustments over fund lifecycle
  • Document thesis exceptions and rationale
  • Analyze deal flow patterns vs. thesis alignment
  • Support thesis refinement for successor funds

Usage

Match Deal to Thesis

Input: Deal summary, company data, sector classification
Process: Compare against thesis criteria, score alignment
Output: Thesis match score, alignment details, flags

Triage Inbound Flow

Input: Batch of inbound deals
Process: Rapid thesis matching and prioritization
Output: Prioritized list, pass recommendations, review queue

Analyze Portfolio Fit

Input: Potential investment, current portfolio
Process: Assess concentration, diversification, reserves
Output: Portfolio fit analysis, construction implications

Update Thesis Definition

Input: Revised thesis criteria, rationale
Process: Update thesis model, recalculate pipeline matches
Output: Updated thesis, pipeline re-scoring results

Thesis Dimensions

| Dimension | Typical Criteria | |-----------|------------------| | Sector | Software, Healthcare, Fintech, Consumer, etc. | | Stage | Pre-seed, Seed, Series A, Growth | | Geography | North America, Europe, Global | | Business Model | SaaS, Marketplace, Consumer, Deep Tech | | Check Size | $500K - $2M, $5M - $15M, etc. | | Themes | AI/ML, Climate, Future of Work, etc. |

Integration Points

  • Deal Flow Tracker: Automatic thesis scoring on deal entry
  • Deal Scoring Engine: Feed thesis match into composite score
  • Proactive Deal Sourcing: Guide sourcing toward thesis areas
  • IC Memo Generator: Include thesis alignment analysis

Best Practices

  1. Clearly document thesis with specific, measurable criteria
  2. Define "core thesis" vs. "opportunistic" boundaries
  3. Track and document all thesis exceptions
  4. Review thesis alignment quarterly with deal flow patterns
  5. Evolve thesis thoughtfully as market conditions change