Data augmentation

Uncertainty-Guided Data Augmentation for Engineers | Deep Dive - Yongmin Kwon

Uncertainty-Guided Data Augmentation for Engineers | Deep Dive - Yongmin Kwon

This session details a data-efficient method for training engineering surrogate models by using uncertainty quantification (UQ) to guide geometric data augmentation. Instead of random deformations, the approach lets the deep ensemble model identify its own knowledge gaps (epistemic uncertainty), then uses Free-Form Deformation (FFD) to generate new shapes specifically in those uncertain regions. This ensures every expensive simulation run yields maximally informative data, significantly improving model accuracy for a fixed computational budget across domains like structural mechanics and aerodynamics.

Evaluating the Cultural Relevance of AI Models and Products: Insights from the YUX Team

Evaluating the Cultural Relevance of AI Models and Products: Insights from the YUX Team

Drawing from their work fine-tuning an ASR model in Wolof and building a stereotype detection dataset, researchers from YUX share a practical toolbox for evaluating the cultural relevance of AI models and products. The session covers methods for data collection, model benchmarking, user testing, and introduces LOOKA, a platform for scalable human evaluation in the African context.