Vikram Venkat
Guest author
Vikram is a principal at Cota Capital, where he invests in early-stage enterprise tech and deep tech companies.
Guest author
Vikram is a principal at Cota Capital, where he invests in early-stage enterprise tech and deep tech companies.

Over the past two decades, technical debt meant outdated architecture, messy code, and poorly maintained documentation. That definition is no longer sufficient in the AI era, where failure modes are more subtle and often non-linear. AI systems are introducing new layers of technical debt that live across prompts, models, and data dependencies — making these layers less visible, harder to measure, and often more dangerous than traditional debt.