Core Viewpoint - The article discusses the technological anxiety in the intelligent driving sector, particularly among midstream manufacturers, highlighting a slowdown in cutting-edge technology development and a trend towards standardized mass production solutions [1][2]. Group 1: Industry Trends - The mass production of cutting-edge technologies is expected to begin in 2026, with current advancements in intelligent driving technology stagnating [2]. - The overall market for passenger vehicles priced above 200,000 is around 7 million units, but leading new forces have not achieved even one-third of this volume [2]. - The maturity of end-to-end technology is seen as a prerequisite for larger-scale mass production, especially with the advancement of L3 regulations this year [2]. Group 2: Educational Initiatives - A course titled "Practical Class for End-to-End Mass Production" has been launched, focusing on the necessary technical capabilities for mass production in intelligent driving [2]. - The course emphasizes practical applications and is limited to a small number of participants, with only 8 spots remaining [2]. Group 3: Course Content Overview - The course covers various aspects of end-to-end algorithms, including: - Overview of end-to-end tasks, merging perception tasks, and designing learning-based control algorithms [7]. - Two-stage end-to-end algorithm frameworks, including modeling and information transfer between perception and planning [8]. - One-stage end-to-end algorithms that allow for lossless information transfer, enhancing performance [9]. - The application of navigation information in autonomous driving, including map formats and encoding methods [10]. - Introduction to reinforcement learning algorithms to complement imitation learning in driving behavior [11]. - Optimization of trajectory outputs through practical projects involving imitation and reinforcement learning [12]. - Post-processing logic for trajectory smoothing to ensure stability and reliability in mass production [13]. - Sharing of mass production experiences from multiple perspectives, including data, models, and rules [14]. Group 4: Target Audience - The course is aimed at advanced learners with a foundational understanding of autonomous driving algorithms, reinforcement learning, and programming skills [15]. - Participants are expected to have access to a GPU with a recommended capability of 4090 or higher and familiarity with various algorithm frameworks [18].
中游智驾厂商,正在快速抢占端到端人才......
自动驾驶之心·2026-01-16 02:58