Core Insights - The article discusses the evolution of end-to-end algorithms in autonomous driving, highlighting the transition from modular production algorithms to end-to-end and now to Vision-Language Alignment (VLA) models [1][3] - It emphasizes the rich technology stack involved in end-to-end algorithms, including BEV perception, visual language models (VLM), diffusion models, reinforcement learning, and world models [3] Summary by Sections End-to-End Algorithms - End-to-end algorithms are categorized into two main paradigms: single-stage and two-stage, with UniAD being a representative of the single-stage approach [1] - Single-stage can further branch into various subfields, particularly those based on VLA, which have seen a surge in related publications and industrial applications in recent years [1] Courses Offered - The article promotes two courses: "End-to-End and VLA Autonomous Driving Small Class" and "Practical Course on Autonomous Driving VLA and Large Models," aimed at helping individuals quickly and efficiently enter the field [3] - The "Practical Course" focuses on VLA, covering topics from VLM as an autonomous driving interpreter to modular and integrated VLA, along with detailed theoretical foundations [3][12] Instructor Team - The instructor team includes experts from both academia and industry, with backgrounds in multi-modal perception, autonomous driving VLA, and large model frameworks [8][11][14] - Notable instructors have published numerous papers in top-tier conferences and have extensive experience in research and practical applications in autonomous driving and large models [8][11][14] Target Audience - The courses are designed for individuals with a foundational understanding of autonomous driving, familiar with basic modules, and have knowledge of transformer models, reinforcement learning, and BEV perception [15][17]
工业界和学术界都在怎么搞端到端和VLA?
自动驾驶之心·2025-10-17 00:03