更新于 11月25日

Algorithm Engineer ID197801

面议
  • 北京朝阳区
  • 5-10年
  • 本科
  • 全职
  • 招1人

职位描述

算法工程师
Task Description
• Research, design, and implement computer vision and vision-language model (VLM) use cases tailored for MBOS.
• Train and fine-tune deep learning models focusing on multimodal fusion and efficient deployment on embedded platforms.
• Work closely with software, hardware, and product teams to integrate developed algorithms into the overall vehicle system.
• Build and maintain toolchains for fine-tuning and deploying LLMs/VLMs, manage training clusters, and ensure efficient inference on both server-side and embedded targets.
• Experimentation, Evaluation, and Knowledge Transfer to other team members.
Qualifications
• Master degree or above in Computer Science, Electrical Engineering, Robotics, or a related field.
• Proven hands-on experience in developing and deploying computer vision and/or VLM algorithms, preferably in the automotive or robotics domain.
• Experience with deep learning frameworks (such as PyTorch, TensorFlow) and classical computer vision libraries
• Experience with fine-tuning and optimizing LLMs/VLMs (e.g., LoRA, RAG, prompt engineering)
• Familiarity with multimodal fusion techniques and the architecture of models like Transformer, BERT or similar.
• Solid grounding in both Natural Language Processing and Computer Vision; able to design and implement solutions that leverage both modalities.
• Experience with model compression, quantization, and deployment on resource-constrained environments
• Familiarity with dataset collection, labeling, and evaluation for multimodal tasks
• Strong programming skills in Python and C++.
• Experience with cloud services (e.g., Azure, AWS, Tencent) is a plus.
• Outstanding analytical and problem-solving skills.
• Technical leadership and ability to make decisions based on technical facts.
• Strong sense of ownership and drive.
• Good communication skills and ability to work in a collaborative, cross-functional environment.
• English proficiency in written and spoken form.

工作地点

北京朝阳区利星行广场-B座

职位发布者

吴女士/HRM

当前在线
立即沟通
公司Logo梅赛德斯一奔驰(中国)投资有限公司公司标签
Mercedes-Benz Group at a glance Mercedes-Benz Group AG is one of the world's most successful automotive companies. With Mercedes-Benz AG, the Group is one of the leading global suppliers of premium and luxury cars and vans. Mercedes-Benz Mobility AG offers financing, leasing, car subscription and car rental, fleet management, digital services for charging and payment, insurance brokerage, as well as innovative mobility services. The company founders, Gottlieb Daimler and Carl Benz, made history by inventing the automobile in 1886. As a pioneer of automotive engineering, Mercedes-Benz sees shaping the future of mobility in a safe and sustainable way as both a motivation and obligation. The company's focus therefore remains on innovative and green technologies as well as on safe and superior vehicles that both captivate and inspire. Mercedes-Benz continues to invest systematically in the development of efficient powertrains and sets the course for an all-electric future: The brand with the three-pointed star pursues the goal to go all-electric, where market conditions allow. Shifting from electric-first to electric-only, the world’s pre-eminent luxury car company is accelerating toward an emissions-free and software-driven future. The company's efforts are also focused on the intelligent connectivity of its vehicles, autonomous driving and new mobility concepts as Mercedes-Benz regards it as its aspiration and obligation to live up to its responsibility to society and the environment.关于梅赛德斯-奔驰集团股份公司梅赛德斯-奔驰集团股份公司是一家享誉全球的汽车企业,集团通过梅赛德斯-奔驰股份公司提供豪华乘用车及轻型商务车产品;同时通过梅赛德斯-奔驰出行股份公司提供金融、租赁、汽车订阅及短期租赁服务、车队管理,充电及支付相关的数字化服务、保险经纪和其他创新出行服务。1886年,梅赛德斯-奔驰集团的两位创始人戈特利布·戴姆勒与卡尔·奔驰发明了汽车,由此开启了梅赛德斯-奔驰的历史征程。梅赛德斯-奔驰始终将安全、可持续的未来出行方式视为发展动力和己任,为此不断对创新、绿色的出行技术加大投入,以打造安全、卓越、令人向往的汽车产品。梅赛德斯-奔驰致力于持续投入并打造高效的动力系统,为全面电动的未来奠定坚实基础:在市场条件允许的情况下,三叉星徽品牌致力于实现全面纯电动的目标。这家全球闻名的豪华汽车制造商正在加速奔向零排放和软件驱动的未来。此外,梅赛德斯-奔驰同样在智能互联、自动驾驶及全新出行解决方案等领域不断深耕,并不断致力于践行对社会与环境的坚定承诺。
公司主页