Slice Podcast

S2E10: The AI Stack That Found 2 Unicorns – Inside Blue Moon’s Automated VC Model

9 snips
Jun 16, 2025
Romain, a former institutional investor and the engineering mind behind the AI-powered venture fund Blue Moon, shares insights on revolutionizing venture capital. He discusses how he and Ben identified flaws in traditional VC and built Agatha, an AI model that screens over 8,000 founding teams annually. Romain dives into the power of predictive targeting, improving outreach, and unique behavioral interviews to assess founder potential. With a focus on scaling their model, they celebrate the success of two unicorns and envision the future of seed investing.
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INSIGHT

AI Scales Dealflow Beyond Networks

  • Blue Moon built AI to scale sourcing because traditional VC deal flow is limited by networks and time.
  • Agatha finds ~8,000 founding teams yearly and narrows them to ~400 for human engagement.
INSIGHT

Agents Across The Investment Funnel

  • Blue Moon layers multiple agents across the investment lifecycle, not just sourcing.
  • DaVinci analyzes decks, transcripts and refreshes insights from a living knowledge base.
INSIGHT

Predicting Series B As A Practical Target

  • Agatha scores co-founders 0–100 predicting Series B probability by ingesting public signals and inferred personality.
  • Training on reaching ~$20M rounds creates more training data and faster feedback loops.
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