README / README.md
SBruccoleriAppen's picture
Update README.md
c4a18c3 verified
# Appen AI Research
**The data behind the models you use every day.**
Appen sits at the intersection of human expertise and AI development β€” we've helped build training data for the world's leading search engines, ranking models, and frontier LLMs. Now we're publishing the research, benchmarks, and insights that come from working at that scale.
## What we publish here
- πŸ“„ **Research** β€” data-centric AI, model performance, model localization and model safety
- πŸ“Š **Benchmarks** β€” evaluation suites covering hallucination, bias, annotation quality, and model readiness
- πŸ“˜ **Whitepapers** β€” practical guides on responsible AI, data strategy, and the annual State of AI & ML report
## Where our expertise runs deep
- **Alignment & RLHF** β€” CoT reasoning traces, SME-led feedback, SFT demonstrations, adversarial red teaming
- **Multimodal** β€” VLM training data, image-text pairs, video annotation, structured document labelling
- **Speech & audio** β€” 500+ global locales, expressive TTS, dialectal and code-switched speech
- **Evaluation** β€” hallucination benchmarking, A/B arena testing, bias detection, regulatory audit support
- **Embodied AI** β€” World Model Data, Egocentric Data, Robotics, LiDAR.
## Learn more
Interested in our Research, our Benchmarks or how we can support your GenAI efforts? Reach out to [researchteam@appen.com](mailto:researchteam@appen.com)
🌐 [appen.com](https://www.appen.com)  |  πŸ“˜ [Whitepapers](https://www.appen.com/whitepapers)  |  πŸ§ͺ [Data-Centric AI](https://www.appen.com/data-centric-ai)