Join the REACT Cluster’s 4th webinar on synthetic data generation – producing data in simulation, training AI on small and larger datasets! 

This webinar – organised by the GRINNER Project – focuses on the challenge of data scarcity when it comes to training models in industrial settings. Most of the time comprehensive datasets are either impossible or very expensive to collect. Even when collected, data might be commercially sensitive or severely imbalanced with certain categories represented only by a handful of data.

Involving partner projects from the cluster such as iBot4CRMs, DARROWALCHIMIA, and RECLAIM we will share challenges and solutions for synthetic data, transfer learning, few-shot/meta learning, and anomaly detection.

AGENDA

11:00-11:10 Introduction of the REACT Cluster

11:10-11:20 Data Scarcity in Training Models in Industrial Settings | GRINNER | Antonis Porichis from University of Essex

11:20-11:25 Questions

11:25-11:35 Data Scarcity and the Use of Synthetic Data | ALCHIMIA | Marcos Varveris and James Lloyd from EXUS

11:35-11:40 Questions

11:40-11:50 Expanding AI’s Reach: Calibrated Mechanistic Models as a Solution to Data Scarcity | DARROW | Luis Vitores Valcárcel García from Ceit

11:50-11:55 Questions

11:55-12:05 Generating Synthetic Images of Waste Streams in Material Recovery Processes | RECLAIM | Michalis Maniadakis from FORTH

12:15-12:25 Data Augmentation for Critical Raw Materials Recovery | iBot4CRMs | Antonio M. Oritz from Norce Research

12:25-12:30 Questions

12:10-12:15 Questions