
GIVE THE PERFECT GIFT
Erin Mills Town Centre Gift Cards are the perfect choice for your gift giving needs.Purchase gift cards at kiosks near the food court or centre court, at Guest Services, or click below to purchase online.PURCHASE HEREHome
Application of LLM in Vehicle Dynamics and Control Modeling, encompassing Human-Vehicle Interaction: A Thorough Reference for Researchers, Engineers, and Students
Indigo
Loading Inventory...
Application of LLM in Vehicle Dynamics and Control Modeling, encompassing Human-Vehicle Interaction: A Thorough Reference for Researchers, Engineers, and Students
By None
Current price: $233.95


By None
Application of LLM in Vehicle Dynamics and Control Modeling, encompassing Human-Vehicle Interaction: A Thorough Reference for Researchers, Engineers, and Students
Current price: $233.95
Loading Inventory...
Size: Hardcover
*Product information may vary - to confirm product availability, pricing, shipping and return information please contact Indigo
This book provides a forward-looking guide on how Large Language Models (LLMs) are transforming the field of vehicle dynamics and control. It offers a practical roadmap for engineers and researchers to leverage AI for designing, simulating, and optimizing vehicle systems. This book directly addresses the challenge of moving beyond traditional, time-consuming modeling techniques to embrace a more efficient, data-driven, and interactive approach. Key Topics and Their Relevance Foundation in Vehicle Dynamics: The book begins by establishing a strong foundation in vehicle dynamics, including the core principles of longitudinal, lateral, and vertical motion, as well as classic control systems like ABS and ESC. This is crucial for understanding the traditional context before exploring how LLMs can augment these processes. LLMs in the Automotive Workflow: The readers will learn how to integrate LLMs into every stage of the development cycle, from data preprocessing and analysis to generating simulation code and dynamic scenarios. This is important because it shows how LLMs act as a powerful co-pilot, automating repetitive tasks and accelerating innovation. Human&Vehicle Interaction (HVI): A dedicated section explores the cutting-edge use of LLMs to interpret driver state and intentions through technologies like eye and head tracking. This is highly relevant as it demonstrates how AI can lead to safer, more personalized, and intuitive driving experiences. Real-World Implementation with MLOps: The book tackles the practicalities of deploying these advanced models on a vehicle's embedded systems. It covers critical topics such as model compression, edge computing, and MLOps workflows using Docker. This book is for a target audience of professionals and students in automotive engineering, control systems, and data science who want to understand and implement the latest AI technologies to shape the future of smart vehicles.
This book provides a forward-looking guide on how Large Language Models (LLMs) are transforming the field of vehicle dynamics and control. It offers a practical roadmap for engineers and researchers to leverage AI for designing, simulating, and optimizing vehicle systems. This book directly addresses the challenge of moving beyond traditional, time-consuming modeling techniques to embrace a more efficient, data-driven, and interactive approach. Key Topics and Their Relevance Foundation in Vehicle Dynamics: The book begins by establishing a strong foundation in vehicle dynamics, including the core principles of longitudinal, lateral, and vertical motion, as well as classic control systems like ABS and ESC. This is crucial for understanding the traditional context before exploring how LLMs can augment these processes. LLMs in the Automotive Workflow: The readers will learn how to integrate LLMs into every stage of the development cycle, from data preprocessing and analysis to generating simulation code and dynamic scenarios. This is important because it shows how LLMs act as a powerful co-pilot, automating repetitive tasks and accelerating innovation. Human&Vehicle Interaction (HVI): A dedicated section explores the cutting-edge use of LLMs to interpret driver state and intentions through technologies like eye and head tracking. This is highly relevant as it demonstrates how AI can lead to safer, more personalized, and intuitive driving experiences. Real-World Implementation with MLOps: The book tackles the practicalities of deploying these advanced models on a vehicle's embedded systems. It covers critical topics such as model compression, edge computing, and MLOps workflows using Docker. This book is for a target audience of professionals and students in automotive engineering, control systems, and data science who want to understand and implement the latest AI technologies to shape the future of smart vehicles.


















