Speaker

Francisco Elias

Application Software Engineer, Applied Intuition

Francisco Elias is a solution architect at Applied Intuition. He leads technical engagements with automakers and autonomy programs in the European region, and focuses on working with Tier1s and OEMs globally on sensor simulation topics, including software- and hardware-in-the-loop integration. He graduated with Bachelor's and Master's degrees in Electronics and Computer Engineering focused on robotics and computer vision.

Session

B | Validation & Verification Stream | Solution Study

Monday, March 17

12:45 pm - 01:15 pm

Live in Berlin

Less Details

The journey from identifying data-related issues in perception models to effective ML training is crucial for next-generation autonomy programs. Data-driven workflows provide a robust framework that starts by triaging current model challenges, particularly when faced with insufficient training data. These innovative workflows streamline the collection and generation of diverse, high-quality datasets within a single platform, to help improve model performance through a combination of real and synthetic data.

In this session, you will learn how:

  • The transition from triaging to ML training is essential for addressing data limitations in next-gen autonomy
  • Data-driven workflows begin by identifying and triaging issues within perception models linked to data insufficiencies
  • It enables efficient collection and creation of high-quality datasets, filling gaps to improve training
Presentation

Company

Applied Intuition

Applied Intuition delivers the AI-powered ADAS/AD software toolchain, vehicle platform, and autonomy stack to help customers shorten time to market, build high-quality systems, and create next-generation consumer experiences. Our products are trusted by 18 of the top 20 global automakers and Fortune 500 companies across trucking, construction, mining, and agriculture.