


Self-driving truck plans don't fit into the realm of ideal cars
According to people familiar with the matter, Li Auto seems to be interested in getting involved in the field of self-driving trucks. The company is reportedly actively looking for professionals related to self-driving truck technology and may have Lang Xianpeng, vice president of intelligent driving business, leading the initiative. Although the company's official response stated that it has no plans to get involved in the field of self-driving trucks, its actions clearly show a potential interest
It is reported that Li Auto has begun searching for candidates in the field of self-driving trucks through multiple headhunting companies. Professional talents, in addition, some employees of self-driving companies have also interviewed at Li Auto, which further confirms its focus on self-driving truck technology and recruitment plans.
Although car officials claim that their recruitment plans are mainly concentrated in the field of smart manufacturing, focusing on smart driving logistics and efficient parts distribution projects, the job information shows that they are looking for a person named "Truck Autonomous Driving" Technical Director" professional talents. This position will be fully responsible for the design, development, testing and experimental verification of the factory logistics truck autonomous driving system to deliver safe and efficient autonomous driving products. This information indicates that Li Auto may be planning to get involved in the field of self-driving trucks and is committed to launching the application of self-driving technology in the logistics field
According to the editor’s understanding, self-driving technology has broad development prospects in the field of trucks , can improve transportation efficiency, reduce accident risks, and reduce labor costs. Therefore, if Li Auto decides to join this field, it is expected to promote the development and application of self-driving truck technology in the future. However, this plan is still in its preliminary stages, and the company's specific strategies and plans may be adjusted based on changes in the market and technology.
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