Uber Scaled Solutions for AI-driven robotics
Empowering robotics companies with scalable data labeling, product testing, and global deployment solutions for precision, reliability, and scale.
Why partner with Uber Scaled Solutions?
Uber’s powerful data labeling, advanced testing frameworks, and global scalability support generative AI companies in creating high-quality, reliable models. With over 8 years of experience and a global network of AI-focused teams, Uber has end-to-end solutions that drive innovation, streamline operations, and accelerate time to market for generative AI applications.
High-precision data for robust models
uLabel’s multimodal capabilities provide critical data for building sophisticated robotics systems capable of nuanced intents and actions.
Reduced development time and faster time to market
Streamlined testing processes minimize delays, enabling rapid deployment and scaling across markets.
Resilient performance in real-world conditions
Simulation and testing of challenging operational scenarios makes sure robots can handle unpredictable environments and conditions.
Cost-effective scalability for high-growth robotics
Scalable infrastructure supports growing robotics companies as they expand, with reduced costs due to efficient processes.
Enhanced global reach through localized testing
Localization expertise across 100+ languages ensures that robots perform reliably in any region, accounting for diverse terrains, network conditions, and regulatory requirements.
Increased operational efficiency and safety
Comprehensive testing and pixel-precise annotation, including safety checks and user journey simulations, minimizes errors and enhances safety for operators and the environment.
How this could apply to you
- Advanced data annotation for model training
Annotate complex data sources, including sensor readings and environmental elements, for effective model training in robotics.
Impact: Accelerates the development of precise and responsive robotics systems
- Multi-scenario testing and validation
Down Small Test robotics applications under diverse real-world conditions, from warehouse floors to outdoor terrains.
Impact: Ensures reliable performance across environments, minimizing operational risk and downtime
- Localization and environmental adaptability
Down Small Validate system functionality in various global markets, accounting for environmental and infrastructure differences.
Impact: Optimizes robots for international deployment with region-specific adaptations
- Product testing for scalability and durability
Down Small Conduct thorough testing on system endurance, power consumption, and load-bearing capacity for high-demand use cases.
Impact: Delivers scalable and resilient robotics solutions for long-term operation and minimal maintenance
How we do this with our tools
- Precise annotation for robotics applications
Down Small uLabel tags complex data such as sensor readings, environmental cues, and object recognition, ensuring high-quality data for robotics models.
- Multi-sensor and multimodal labeling
Down Small Supports diverse data types—including visual, LiDAR, audio, and haptic inputs—providing holistic datasets for advanced robotics use cases.
- Flexible annotation criteria
Down Small Tailors labeling requirements to each robotics project, from intricate object tracking to real-time environmental analysis.
- High speed and accuracy
Down Small Uses built-in quality checks to make sure labeled data is precise and reliable, reducing error rates and supporting faster model deployment.
- Global task management for large-scale projects
Down Small Manages and monitors labeling and testing tasks across Uber’s specialized teams worldwide, guaranteeing seamless project execution.
- Specialized workforce allocation
Down Small Matches tasks with experts skilled in robotics-specific needs, such as motion tracking, spatial understanding, and object interaction.
- Live monitoring and detailed reporting
Down Small Provides insights into task progress, quality metrics, and project timelines to keep you informed at every stage.
- Scalable infrastructure
Down Small Optimizes for high-volume, complex robotics projects, ensuring fast adaptation to project demands.
- Real-world simulation for robotics testing
Down Small Simulates diverse environments and operational conditions to evaluate robotics systems in real-world settings, from warehouse automation to field applications.
- Localization and environmental testing
Down Small Makes sure robots function across varying situations—including challenging terrains and weather conditions, and network constraints—and in 100+ languages.
- Complex scenario simulation
Down Small Leverages Uber’s experience, learnings and program management expertise to create intricate testing scenarios, enabling robots to handle edge cases like obstacle avoidance and variable speed adjustments.
- Rapid, AI-driven testing cycles
Down Small Uses insights from AI to predict system performance and identify potential vulnerabilities, supporting robust performance and minimizing risk.
About us
Overview
8+ years of nuanced expertise
30+ capabilities
100+ languages
Solutions
Data annotation and labeling
Testing
Language and localization
Industries
Auto & AV
BFSI
Catalog management
Chatbots / customer support
Consumer apps
E-commerce / retail
Generative AI
Health / medical AI
Manufacturing
Media / entertainment
Robotics
Social media
Tech
Offerings
Data labeling
Reasoning
Text and language
Image
Media
Search
Testing
E2E functional testing
Linguistic testing
Accessibility and compliance
Model evaluation
App performance testing
Localization
Product UI
Marketing
Support
Legal
Technology
uLabel
A highly configurable UI platform for all your data needs
uTask
A fully configurable, real-time work orchestration platform equipped for all your needs
Testlab
Uber’s custom test management & testing platform
uTranslate
Uber’s in-house platform that makes apps feel local for everyone, everywhere