Gas Stations Accused of Using AI to Inflate Prices in California
THE SO WHAT
Allegations that major fuel retailers used AI to coordinate higher prices move algorithmic pricing from a margin tool into antitrust and consumer-protection territory. Any operator deploying dynamic pricing should assume regulators will demand transparency on models, data, and intent—not just outcomes.
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