Case Study
Monday, December 08
03:00 PM - 03:30 PM
Live in Dearborn, Michigan
Less Details
Achieving robust AI model performance in industry applications is a significant challenge due to the complexity and diversity of real-world scenarios. Data-centric AI development can be used to provide the depth and nuance required for high-performing models, addressing challenges such as edge cases and bias with diverse human data. This session will cover best practices for developing a robust data pipeline for real-world data collection and annotation for building high-performing automotive AI systems. Attendees will gain practical insights into the development of cost-effective, high-quality data, including methods to address privacy and regulatory requirements.
In this session, you will: