Waymo enters 3 more cities: Minneapolis, New Orleans, and Tampa

TechCrunchThursday, November 20, 2025 at 2:57:08 PM
  • Waymo is expanding its autonomous vehicle services to Minneapolis, New Orleans, and Tampa, marking a significant step in its growth strategy.
  • This expansion is crucial as it allows Waymo to adapt its technology to diverse driving conditions and urban layouts, enhancing its service offerings.
  • The company's ongoing efforts to remove safety drivers in Miami and expand to additional cities reflect its commitment to leading the autonomous transportation market, showcasing its advancements in technology and operational readiness.
— via World Pulse Now AI Editorial System

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