In a landmark development for the future of transportation, Uber has announced a strategic partnership with Nvidia to deploy up to 100,000 autonomous robotaxis, starting in 2027. This bold move positions Uber at the forefront of the race to integrate Level 4 self-driving technology into commercial ride-hailing. Leveraging Nvidia’s latest AI-driven hardware and software platforms, the initiative is set to transform how urban mobility is managed and scaled globally.
The Robotaxi Revolution
- Central to the partnership is Nvidia’s newly unveiled DRIVE AGX Hyperion 10 platform.
- This system equips vehicles with high-performance computing, sensors, and software capable of full self-driving in controlled environments, known as Level 4 autonomy.
- This platform allows auto manufacturers to integrate autonomous capabilities during production, ensuring consistency, safety, and efficiency across fleets.
- It also supports the rapid training and simulation of driving scenarios using real-world and synthetic data, significantly reducing development cycles.
Uber’s Role
While Nvidia supplies the AI infrastructure, Uber will manage the end-to-end operations of the autonomous fleet. This includes responsibilities such as,
- Remote monitoring
- Charging and cleaning
- Maintenance
- Customer service support
Uber aims to enhance its mobility network by transitioning from traditional human-driven rides to a hybrid system where autonomous vehicles complement human drivers. This will not only diversify its service but also reduce dependency on gig workers in the long term.
Stellantis and Global Deployment
- As part of the partnership, Stellantis will deliver at least 5,000 Nvidia-powered robotaxis, expected to enter production in 2028.
- Initial rollout will take place in the United States, with global operations expanding based on regulatory approvals and pilot program results.
- Production support will come from electronics giant Foxconn, ensuring systems integration and hardware readiness.
- This collaboration marks a critical step in achieving economies of scale for mass robotaxi deployment.
Boosting AI Development Through Data
Uber is also working with Nvidia to build a robotaxi data factory, gathering over 3 million hours of autonomous driving data. This data will be used to,
- Train and validate AI driving models
- Simulate real-world traffic and weather conditions
- Improve safety and reliability of autonomous systems
- By creating a continuous loop of data ingestion, scenario mining, and large-scale training, this facility aims to accelerate the timeline to profitability for autonomous fleets.
Benefits and Strategic Impact
Deploying 100,000 robotaxis could significantly lower the cost-per-mile for ride-hailing services. Automation reduces operational expenses tied to human labor, making autonomous rides more affordable and accessible over time.
Moreover, by managing a fleet at this scale, Uber can ensure,
- Standardized safety protocols
- Optimized routing and dispatching
- Better service availability in high-demand zones
These benefits can help Uber gain a competitive edge over rivals in both traditional ride-hailing and emerging autonomous services.
Key Static Facts
- Partnership announced: October 2025
- Target deployment: Begin in 2027
- Full production (Stellantis): From 2028
- Robotaxi fleet goal: 100,000 vehicles
- Initial supplier: Stellantis with hardware integration from Foxconn
- Technology used: Nvidia DRIVE AGX Hyperion 10
- Autonomy level targeted: Level 4 (self-driving under specific conditions)
- Pilot cities include: Austin, Atlanta, Abu Dhabi, and others
- Current autonomous partners: Waymo, Nuro, Pony.ai, May Mobility, WeRide, Momenta


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