Case Study
Monday, December 09
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:
Overview: With 7+ years of experience in the custom data and SaaS industry, I have worked across organizations to connect innovative products and services to client needs. My work in the automotive space has extended globally from Audi Australia to Volkswagen Singapore to working with BMW out of Germany supporting my clients with data solutions that meet stringent matrixed requirements for their programs. More recently my focus has been on working with large language model builders in evaluating and improving model performance. I am joining the event to help clients who are building models in the automotive space gain access to high-quality bespoke data services.