The Information Bottleneck

EP24: Can AI Learn to Think About Money? - with Bayan Bruss (Capital One)

Feb 8, 2026
Bayan Bruss, VP of Applied AI at a major consumer bank building AI for autonomous financial decision-making. He explores why money is a uniquely hard ML problem. They discuss perception-belief-action frameworks for finance. They debate foundation models versus purpose-built encoders, why synthetic time-series data helps, limits of explainability, and hybrid latent vs language reasoning for financial systems.
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ADVICE

Babysit Interactive Code Agents

  • When using interactive code agents like Cloud Code, supervise environment and permissions closely to avoid destructive actions.
  • Provide enforced environment constraints and monitor execution to reduce sandbox escapes.
ANECDOTE

Chess Shows Tools Can Replace Experts

  • Allen remembers watching computer chess transition from human-plus-tool to tool-dominant play over years.
  • He worries similar shifts will transform software roles and career paths.
ADVICE

Prefer Direct Signals Over Proxies

  • Avoid using protected attributes or proxies; prefer direct, causal signals when available.
  • If you must use proxies, ensure clear line-of-sight justification and regulatory compliance.
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