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自动驾驶VLA和大模型实战课程
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端到端和VLA的岗位,薪资高的离谱......
自动驾驶之心· 2025-11-19 00:03
Core Insights - There is a significant demand for end-to-end and VLA (Vision-Language Agent) technical talent in the automotive industry, with salaries for experts reaching up to $70,000 per month for positions requiring 3-5 years of experience [1] - The technology stack involved in end-to-end and VLA is complex, covering various advanced algorithms and models such as BEV perception, VLM (Vision-Language Model), diffusion models, reinforcement learning, and world models [2] Course Offerings - The company is launching two specialized courses: "End-to-End and VLA Autonomous Driving Class" and "Practical Course on VLA and Large Models," aimed at helping individuals quickly and efficiently enter the field of end-to-end and VLA technologies [2] - The "Practical Course on VLA and Large Models" focuses on VLA, covering topics from VLM as an autonomous driving interpreter to modular and integrated VLA, including mainstream inference-enhanced VLA [2] - The course includes a detailed theoretical foundation and practical assignments, teaching participants how to build their own VLA models and datasets from scratch [2] Instructor Team - The instructor team consists of experts from both academia and industry, including individuals with extensive research and practical experience in multi-modal perception, autonomous driving VLA, and large model frameworks [7][10][13] - Notable instructors include a Tsinghua University master's graduate with multiple publications in top conferences and a current algorithm expert at a leading domestic OEM [7][13] Target Audience - The courses are designed for individuals with a foundational knowledge of autonomous driving, familiar with basic modules, and who have a grasp of concepts related to transformer large models, reinforcement learning, and BEV perception [15] - Participants are expected to have a background in probability theory and linear algebra, as well as proficiency in Python and PyTorch [15]
做了一份端到端进阶路线图,面向落地求职......
自动驾驶之心· 2025-11-18 00:05
Core Insights - There is a significant demand for end-to-end and VLA (Vision-Language Agent) technical talent in the automotive industry, with salaries for experts reaching up to $70,000 per month for positions requiring 3-5 years of experience [1] - The technology stack for end-to-end and VLA is complex, involving various advanced algorithms such as BEV perception, Vision-Language Models (VLM), diffusion models, reinforcement learning, and world models [1] - The company is offering specialized courses to help individuals quickly and efficiently learn about end-to-end and VLA technologies, collaborating with experts from both academia and industry [1] Course Offerings - The "End-to-End and VLA Autonomous Driving Course" focuses on the macro aspects of end-to-end autonomous driving, covering key algorithms and theoretical foundations, including BEV perception, large language models, diffusion models, and reinforcement learning [10] - The "Autonomous Driving VLA and Large Model Practical Course" is led by academic experts and covers VLA from the perspective of VLM as an autonomous driving interpreter, modular VLA, and current mainstream inference-enhanced VLA [1][10] - Both courses include practical components, such as building a VLA model and dataset from scratch, and implementing algorithms like the Diffusion Planner and ORION algorithm [10][12] Instructor Profiles - The instructors include experienced professionals and researchers from top institutions, such as Tsinghua University and QS30 universities, with backgrounds in multimodal perception, autonomous driving VLA, and large model frameworks [6][9][12] - Instructors have published numerous papers in prestigious conferences and have hands-on experience in developing and deploying advanced algorithms in the field of autonomous driving [6][9][12] Target Audience - The courses are designed for individuals with a foundational knowledge of autonomous driving, familiar with basic modules, and concepts related to transformer large models, reinforcement learning, and BEV perception [14] - Participants are expected to have a background in probability theory and linear algebra, as well as proficiency in Python and PyTorch [14]
端到端和VLA的岗位,三年经验月薪到70k了
自动驾驶之心· 2025-11-14 00:04
Core Insights - There is a significant demand for end-to-end and VLA (Vision-Language Agent) technical talent in the automotive industry, with salaries for experts reaching up to 70k per month for positions requiring 3-5 years of experience [1] - The technology stack for end-to-end and VLA is complex, involving various advanced algorithms such as BEV perception, Vision-Language Models (VLM), diffusion models, reinforcement learning, and world models [1] - The industry is offering specialized courses to help individuals quickly and effectively learn about end-to-end and VLA technologies, featuring collaboration between academia and industry experts [1] Course Offerings - The "End-to-End and VLA Autonomous Driving Course" focuses on key algorithms and theoretical foundations in end-to-end autonomous driving, covering both one-stage and two-stage approaches, including BEV perception and large language models [11] - The "Autonomous Driving VLA and Large Model Practical Course" is designed for beginners in the VLA field, providing a comprehensive overview of VLA, including modules on Vision, Language, and Action, as well as reinforcement learning and diffusion models [2] - Both courses include practical assignments, allowing participants to build their own VLA models and datasets from scratch [2] Instructor Profiles - The course instructors include experts with strong academic backgrounds and practical experience in autonomous driving and large model development, such as those from Tsinghua University and top-tier universities [7][10][13] - Instructors have published numerous papers in prestigious conferences and have experience in leading projects related to multimodal perception and autonomous driving [7][10][13] Target Audience - The courses are aimed at individuals with a foundational knowledge of autonomous driving, familiar with basic modules, and who have a grasp of concepts related to transformer models, reinforcement learning, and BEV perception [15] - Participants are expected to have a background in probability theory and linear algebra, as well as proficiency in Python and PyTorch [15]
端到端和VLA,正在吸引更多智驾公司的关注......
自动驾驶之心· 2025-10-23 00:04
Core Insights - There is a significant demand for end-to-end and VLA (Vision-Language-Action) technical talent in the automotive industry, particularly among major manufacturers and suppliers [1][3] - The industry is evolving from modular production algorithms to end-to-end solutions and now to VLA, with core algorithms involving BEV perception, VLM, diffusion models, reinforcement learning, and world models [3] Group 1: Industry Demand and Trends - The demand for end-to-end and VLA technology talent is high, with inquiries from multiple companies, including three major manufacturers and several suppliers [1] - The industry primarily operates under two paradigms: single-stage and two-stage approaches, with UniAD being a representative of the single-stage model [1] - The end-to-end approach has diversified into various subfields, especially those based on VLA, with a surge in related academic publications and industrial applications in recent years [1] Group 2: Educational Initiatives - The company has launched courses focused on end-to-end and VLA autonomous driving, aimed at helping individuals quickly and efficiently enter these fields [3][12] - The "VLA and Large Model Practical Course" covers VLA from VLM as an autonomous driving interpreter to modular and integrated VLA, including detailed theoretical foundations and practical assignments [3][12] - The "End-to-End and VLA Autonomous Driving Course" focuses on key algorithms and theoretical foundations, including BEV perception, large language models, diffusion models, and reinforcement learning [12][14] Group 3: Instructor Expertise - The courses are led by experts from both academia and industry, with backgrounds in multimodal perception, autonomous driving VLA, and large model frameworks [8][11][14] - Instructors have published numerous papers in top-tier conferences and possess extensive experience in research and practical applications in autonomous driving and large models [8][11][14] Group 4: Target Audience - The courses are designed for individuals with a foundational knowledge of autonomous driving, familiar with basic modules, and concepts such as transformer models, reinforcement learning, and BEV perception [15][16] - Participants are expected to have a background in probability theory, linear algebra, and programming skills in Python and PyTorch [15][16]
端到端和VLA占据自动驾驶前沿方向的主流了。。。
自动驾驶之心· 2025-10-13 04:00
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 approaches and the recent focus on Vision-Language Models (VLA) [1][3]. Group 1: End-to-End Algorithms - End-to-end algorithms are central to the current mass production of autonomous driving technology, involving a rich technology stack [1]. - There are two main paradigms in the industry: single-stage and two-stage approaches, with UniAD being a representative of the single-stage paradigm [1]. - The single-stage approach can be further categorized into several subfields, including perception-based, diffusion model-based, world model-based, and VLA-based end-to-end algorithms [1]. Group 2: VLA and Course Offerings - The article mentions the recent surge in interest regarding how to efficiently learn about end-to-end and VLA technologies, leading to the creation of specialized courses [3]. - The "End-to-End and VLA Autonomous Driving Course" focuses on VLA, covering topics from VLM as an autonomous driving interpreter to modular and integrated VLA approaches [3]. - The course includes a detailed theoretical foundation and practical assignments to help participants build their own VLA models and datasets [3]. Group 3: Course Instructors - The course features a team of instructors with significant academic and practical experience in multi-modal perception, autonomous driving VLA, and large model frameworks [7][9]. - Instructors have published numerous papers in top international conferences and have hands-on experience in developing and implementing cutting-edge algorithms in the field [7][9][10]. Group 4: Target Audience and Requirements - The courses are designed for individuals with a foundational understanding of autonomous driving and familiarity with key technologies such as transformer models, reinforcement learning, and BEV perception [13]. - Participants are expected to have a basic knowledge of probability theory, linear algebra, and proficiency in Python and PyTorch [13].
学术界和工业界都在如何研究端到端与VLA?三个月搞定端到端自动驾驶!
自动驾驶之心· 2025-10-09 04:00
Core Viewpoint - The article discusses the evolution and current state of end-to-end algorithms in autonomous driving, highlighting the emergence of various subfields, particularly those based on Visual Language Models (VLA) and the increasing interest in these technologies within both academia and industry [1][3]. Summary by Sections End-to-End Algorithms - End-to-end algorithms are central to the current mass production of autonomous driving technologies, involving a rich technology stack. There are primarily two paradigms: single-stage and two-stage. The single-stage approach, exemplified by UniAD, directly models vehicle trajectories from sensor inputs, while the two-stage approach outputs trajectories based on perception results [1]. VLA and Related Technologies - The development has progressed from modular production algorithms to end-to-end systems and now to VLA. Key technologies involved include BEV perception, Visual Language Models (VLM), diffusion models, reinforcement learning, and world models. The article emphasizes the importance of understanding these technologies to grasp the cutting-edge directions in both academia and industry [3]. Courses Offered - The article promotes two courses aimed at helping individuals quickly and efficiently learn about end-to-end and VLA in autonomous driving. The courses are designed for those new to large models and VLA, covering foundational theories and practical applications [3][10]. Course Content - The "VLA and Large Model Practical Course" focuses on VLA, starting from VLM as an interpreter for autonomous driving, and covers modular and integrated VLA, as well as mainstream inference-enhanced VLA. It includes detailed theoretical foundations and practical assignments to build VLA models and datasets from scratch [3][10]. Instructor Team - The courses are led by experienced instructors from both academia and industry, with backgrounds in multi-modal perception, autonomous driving VLA, and large model frameworks. They have published numerous papers in top conferences and have substantial practical experience in the field [7][9][10]. Target Audience - The courses are aimed at individuals with a foundational understanding of autonomous driving, familiar with basic modules, and possessing knowledge of transformer models, reinforcement learning, and BEV perception. A background in probability theory, linear algebra, and programming in Python and PyTorch is also recommended [13].