Enterprise AI tool sprawl generates 15-30% hidden spend waste
Large organizations accumulate AI subscriptions across teams without centralized visibility, creating significant untracked spend and overlapping capabilities. Compliance gaps compound the cost problem as ungoverned AI tools introduce OWASP LLM risks with no audit trail. Finance and IT teams lack tooling to discover, classify, and rationalize the full AI tool inventory.
Signal
Visibility
Leverage
Impact
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