talk-data.com talk-data.com

M

Speaker

Mohammed Farag

1

talks

Senior Manager, Machine Learning & AI Rivian Automotive, LLC

Mohammed Farag is Senior Manager of AI & Machine Learning at Rivian, where he leads the integration of real-time machine learning into vehicle control systems, enabling intelligent performance, predictive diagnostics, and optimized EV charging. His work focuses on scaling AI/ML platforms for embedded systems, from deep learning to MLOps. He holds a Ph.D. in Engineering from McMaster Univ. and a Master’s in Management from Harvard. Prior to Rivian, Mohammed led autonomous driving architecture at BMW and was founder of a digital twin company for battery management systems. He holds multiple patents and received the IEEE Best Paper Award. His work bridges AI, energy systems, and control engineering to drive innovation in electric mobility.

Bio from: Data + AI Summit 2025

Filtering by: Data + AI Summit 2025 ×

Filter by Event / Source

Talks & appearances

Showing 1 of 1 activities

Search activities →
Optimizing EV Charging Experience: Machine Learning for Accurate Charge Time Estimation

Accurate charge time estimation is key to vehicle performance and user experience. We developed a scalable ML model that enhances real-time charge predictions in vehicle controls. Traditional rule-based methods struggle with dynamic factors like environment, vehicle state, and charging conditions. Our adaptive ML solution improves accuracy by 10%. We use Unity Catalog for data governance, Delta Tables for storage, and Liquid Clustering for data layout. Job schedulers manage data processing, while AutoML accelerates model selection. MLflow streamlines tracking, versioning, and deployment. A dedicated serving endpoint enables A/B testing and real-time insights. As our data ecosystem grew, scalability became critical. Our flexible ML framework was integrated into vehicle control systems within months. With live accuracy tracking and software-driven blending, we support 50,000+ weekly charge sessions, improving energy management and user experience.