Uber Scaled Solutions for generative AI: data labeling, testing, and localization for LLMs and more
Enabling generative AI companies to accelerate innovation, enhance model precision, and achieve global reach
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 advanced model training
uLabel’s multimodal capabilities provide rich, nuanced data that strengthens generative models and improves accuracy.
Accelerated development and time to market
Streamlined annotation and testing processes shorten development cycles, enabling rapid deployment and scalability.
Enhanced global relevance
Localization expertise makes sure generative models produce contextually accurate outputs catering to diverse cultural and language requirements.
Operational efficiency with reduced costs
Scalable solutions reduce overhead and enable flexible growth, allowing resources to be allocated efficiently.
User-centric testing for high-quality output
Real-world scenario testing ensures that generative applications produce engaging, coherent content, enhancing user satisfaction.
Scalable infrastructure for rapid growth
High-volume task management supports evolving generative AI projects, allowing companies to expand without sacrificing quality.
How this could apply to you
- High-quality data annotation for generative training
Label intricate multimodal data, from tone-specific text to detailed visual styles, to enrich generative AI models.
Impact: Supports faster, more accurate model training for a broad range of creative applications
- Localization and cultural adaptability
Down Small Test generative outputs for cultural, linguistic, and contextual relevance, adapting to global markets with ease across 100+ languages.
Impact: Increases user engagement and inclusivity by making sure outputs resonate across diverse audiences
- Complex scenario simulation and testing
Down Small Evaluate models in real-world scenarios, from interactive chatbot responses to image generation, ensuring reliability and creative coherence.
Impact: Improves user experience with high-quality, stable outputs that meet real-world demands
- Product testing for scalability and responsiveness
Down Small Run comprehensive testing on generative applications for performance under high user load and dynamic content demands.
Impact: Ensures that generative AI apps can scale smoothly and maintain high performance across platforms
How we do this with our tools
- Comprehensive annotation for generative models
Down Small uLabel provides intricate tagging for diverse data types—including text, image, audio, and video—ensuring rich data to train generative AI.
- Multimodal and contextual labeling
Down Small Handles complex, multilayered data inputs, supporting the nuanced requirements of generative AI across formats and applications.
- Adaptive labeling criteria
Down Small Customized annotation parameters allow for specific needs, such as emotional tone for conversational AI, stylistic elements in image generation, and language nuances.
- Quality-controlled annotation
Down Small Built-in accuracy checks and AI-assisted validation ensure reliable, error-free labeled data that drives model performance and innovation.
- Scalable task management
Down Small uTask coordinates large-scale labeling projects across Uber’s specialized teams, optimizing workflows for speed and quality.
- Skill-based workforce allocation
Down Small Assigns tasks, such as sentiment analysis, creative language understanding, and visual style recognition, to annotators with domain-specific expertise.
- Real-time analytics and insights
Down Small Provides transparency, showing project progress, quality metrics, and team performance through live dashboards and detailed reporting.
- Flexible, high-volume capability
Down Small Designed for rapid scaling, uTask adapts to complex generative AI needs, supporting projects of any size.
- Robust testing for generative applications
Down Small uTest simulates real-world user interactions and stress-tests generative models in apps for stability, responsiveness, and creative coherence.
- Localization and cultural adaptability testing
Down Small Validates generative outputs across 100+ languages, global cultures, and demographics to ensure high relevance and inclusivity.
- Scenario-based testing
Down Small Leverages real data to evaluate performance across use cases like conversational AI, image synthesis, and dynamic content creation.
- AI-driven quality assurance
Down Small Detects anomalies and optimizes model performance by using AI insights coupled with Uber’s strategic program managers, thereby reducing risks and ensuring readiness for live deployment.
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