Case Study
Monday, June 30
12:00 PM - 12:30 PM
Live in San Francisco
Less Details
As AVs become more connected and reliant on complex software systems, cybersecurity threats pose a significant challenge to their safe deployment. Traditional security measures struggle to keep pace with the evolving attack landscape, necessitating a shift towards intelligent, adaptive defense mechanisms. This presentation explores how ML enhances AV security by detecting anomalies, predicting cyber threats, and enabling real-time threat mitigation. We will discuss ML-based intrusion detection systems, adversarial attack defenses, and the role of continuous learning in safeguarding AVs against emerging risks. Attendees will gain insights into the practical applications of ML in AV security, industry challenges, and the regulatory implications of AI-driven cybersecurity.
In this session, you will learn more about:
Srivalli Boddupalli is a Senior Data Scientist at Lucid Motors, specializing in designing and deploying machine learning systems for real-time vehicle cybersecurity. With a Ph.D. in Connected Autonomous Vehicle Security, she has developed scalable anomaly detection platforms, big data ETL pipelines, and user-friendly tools to enhance automotive cybersecurity.
The Pop in Your Job – What drives you? Why do you love your job?
Being part of a team that's extremely driven to solve intricate problems and collaborate with diverse engineering groups at Lucid motivates me to give my best at work. This is a great time to be part of this organization, as it gives each one of us an incredible opportunity to add value to the final products.