Uber Scaled Solutions for automotive and autonomous vehicles
Use the best of Uber's data labeling, real-world testing, and localization to power precision, safety, and scalability in automotive AI and autonomous vehicles
Why partner with Uber Scaled Solutions?
Uber’s end-to-end data labeling, advanced testing frameworks, and global scalability enable automotive and autonomous vehicle companies to achieve unmatched precision, safety, and operational efficiency. With over 8 years of experience and a global network of expert teams on the knowledge work marketplace, Uber helps drive innovation and accelerate deployment across autonomous and automotive AI applications.
High-precision data for robust model training
uLabel’s multisensor fusion supports advanced perception, allowing autonomous vehicles to understand and respond to complex environments.
Faster development and time to market
Streamlined data labeling and testing processes accelerate development cycles, supporting rapid deployment of new autonomous technologies.
Real-world validation and safety assurance
Scenario-based testing ensures that vehicles can handle unpredictable conditions, enhancing safety and reliability.
Operational efficiency and cost savings
Scalable solutions reduce overhead, enabling cost-effective growth and efficient resource allocation across projects.
Global adaptability through localization expertise
Localization and testing makes sure autonomous systems meet region-specific needs, from regulatory requirements to local road customs.
Enhanced safety and compliance
Rigorous safety testing ensures that autonomous systems meet global safety standards and regulatory benchmarks, protecting users and stakeholders.
How this could apply to you
- High-fidelity data annotation for autonomous model training
Label intricate sensor data to create comprehensive training sets for autonomous decision-making, from object detection to road segmentation.
Impact: Enables more accurate and reliable perception models, enhancing safety and situational awareness
- Real-world and scenario-based testing
Down Small Test autonomous systems across varied environments and driving scenarios, ensuring robustness under real-world conditions.
Impact: Increases reliability and performance, reducing the risk of system failures in complex environments
- Localization and global adaptability
Down Small Makes sure autonomous systems are optimized for diverse global markets, from urban streets to rural areas, with region-specific tuning.
Impact: Expands operational capabilities globally, supporting deployment in different regulatory and geographic settings
- Product testing for durability and scalability
Down Small Comprehensively test vehicle performance, system stability, and hardware-software integration for scalable deployment.
Impact: Guarantees consistent performance across vehicle models, regions, and environmental conditions
How we do this with our tools
- High-precision annotation for autonomous systems
Down Small uLabel offers detailed labeling for complex data types—including LiDAR, radar, camera, and sensor inputs—essential for training autonomous vehicle models.
- Multisensor fusion and 3D labeling
Down Small Supports comprehensive labeling across visual, depth, and spatial data, providing a unified dataset for situational awareness and decision-making.
- Dynamic annotation criteria
Down Small Creates datasets that strengthen autonomous models by using tailored parameters for object detection, road signs, lane markings, and environmental elements.
- Real-time quality assurance
Down Small Ensures the highest-quality labeled data—by using built-in accuracy checks and AI-augmented validation—for reliable model training.
- Global task coordination for large-scale projects
Down Small uTask orchestrates and monitors complex labeling and testing tasks across Uber’s specialized teams, optimizing workflows for high-volume autonomous data needs.
- Specialized workforce allocation
Down Small Assigns tasks to annotators with automotive and autonomy expertise, ensuring accuracy in labeling objects, pedestrian behavior, and dynamic scenarios.
- Comprehensive analytics and progress tracking
Down Small Provides live dashboards with insights into project status, quality metrics, and team performance, ensuring full project transparency.
- Scalable and adaptable infrastructure
Down Small Scales to meet complex, multimodal data needs because it’s designed to handle the vast data requirements of autonomous vehicle training.
- Real-world scenario simulation
Down Small uTest replicates diverse driving conditions—from urban traffic to highway environments—testing autonomous systems under real-world pressures and edge cases.
- Localization and environmental adaptability testing
Down Small Ensures seamless performance across different geographies, accounting for local driving regulations, road structures, and weather conditions.
- Scenario-based safety testing
Down Small Leverages real data to validate safety-critical functions like obstacle avoidance, emergency braking, and pedestrian detection in unpredictable scenarios.
- AI-augmented safety and compliance
Down Small Identifies potential safety risks and optimizes system performance using AI-driven insights that Uber’s full-time program managers oversee, thereby reducing deployment risks and supporting regulatory compliance.