Uncertainty Quantification
When AI can explain to us that it's unsure, it adds a critical layer of transparency for its safe deployment and use. We’re developing ways to foster and streamline the common practices of quantifying, evaluating, improving, and communicating uncertainty in the AI application development lifecycle.
Our work
IBM’s Uncertainty Quantification 360 toolkit boosts trust in AI
ReleasePrasanna Sattigeri and Vera Liao7 minute readAI boosts the discovery of metamaterials vital for next-gen gadgets
ResearchYoussef Mroueh, Karthikeyan Shanmugam, and Payel Das10 minute read
Publications
- Mingjian Jiang
- Yangjun Yangjun
- et al.
- 2024
- NeurIPS 2024
- Maohao Shen
- Subhro Das
- et al.
- 2024
- ICML 2024
- Apoorva Nitsure
- Youssef Mroueh
- et al.
- 2024
- ICML 2024
- Natalia Martinez Gil
- Dhaval Patel
- et al.
- 2024
- UAI 2024
- Young Jin Park
- Hao Wang
- et al.
- 2024
- UAI 2024
- Abhin Shah
- Maohao Shen
- et al.
- 2024
- ISIT 2024