最近会开放一批端到端&VLA的岗位需求
自动驾驶之心·2026-01-12 03:15

Core Insights - The consensus among industry experts indicates that 2026 will be a pivotal year for the development of end-to-end (E2E) and VLA (Vision-Language Alignment) technologies in autonomous driving, with a focus on optimizing production processes rather than making significant algorithmic changes [1] - The industry is actively recruiting experienced algorithm engineers and developing talent to tackle the complex challenges ahead, particularly in areas such as BEV perception, large models, diffusion models, and reinforcement learning [1] Course Overview - The course on E2E and VLA autonomous driving is designed to provide a comprehensive learning path from principles to practical applications, developed in collaboration with industry leaders [3] - The course covers various aspects of E2E algorithms, including their historical development, advantages and disadvantages of different paradigms, and current trends in both academia and industry [6][7] - Key technical keywords that are expected to be frequently encountered in job interviews over the next two years are emphasized in the course content [7] Course Structure - Chapter 1 introduces the concept of E2E algorithms, discussing their evolution from modular approaches to current paradigms like VLA [6] - Chapter 2 focuses on the background knowledge necessary for understanding E2E technologies, including VLA, large language models, diffusion models, and reinforcement learning [11] - Chapter 3 delves into two-stage E2E algorithms, exploring their emergence and comparing them with one-stage approaches [7] - Chapter 4 presents one-stage E2E algorithms and VLA, highlighting various subfields and their contributions to achieving the ultimate goals of E2E systems [8] - Chapter 5 involves a practical assignment on RLHF (Reinforcement Learning from Human Feedback) fine-tuning, demonstrating how to build and experiment with pre-training and reinforcement learning modules [9] Learning Outcomes - The course aims to elevate participants to the level of an E2E autonomous driving algorithm engineer within approximately one year, covering a wide range of methodologies including one-stage, two-stage, world models, and diffusion models [15] - Participants will gain a deeper understanding of key technologies such as BEV perception, multimodal large models, reinforcement learning, and diffusion models, enabling them to apply their knowledge in real-world projects [15]

最近会开放一批端到端&VLA的岗位需求 - Reportify