OpenASIC
    • \[\[global:header.categories\]\]
    • \[\[global:header.recent\]\]
    • \[\[global:header.tags\]\]
    • \[\[global:header.popular\]\]
    • \[\[global:header.users\]\]
    • \[\[global:header.groups\]\]
    • \[\[global:header.search\]\]
    • Register
    • Login

    实习招聘贴:英伟达NVIDIA招聘视频架构实习生

    Scheduled Pinned Locked Moved 交流讨论 | General Discussion
    1 Posts 1 Posters 30 Views
    Loading More Posts
    • Oldest to Newest
    • Newest to Oldest
    • Most Votes
    Reply
    • Reply as topic
    Log in to reply
    This topic has been deleted. Only users with topic management privileges can see it.
    • C Offline
      cazhao
      last edited by

      不晓得是否可以在此宣传招聘信息,如有不妥,将及时删帖,保证技术讨论纯粹环境,感恩的心!🙇

      【英伟达上海】深度学习视频架构实习生

      • 要求:硕博在读生,27/28届,实习三个月及以上,base上海
      • 简历投递至cazhao@nvidia.com

      Video Architect Intern- Shanghai
      We’re looking for highly talented students to build excellent AI products. At NVIDIA, you’ll have the opportunity to work with senior engineers to develop cutting‑edge AI technologies used in real‑world applications such as RTX Video Super Resolution, NVIDIA Smooth Motion, the NVIDIA DLSS series, and NVIDIA GeForce NOW. It’s a great place to innovate and transform AI research into products.

      What you’ll be doing:

      • Research next‑generation video codec standards and hardware architectures (e.g., AV2).
      • Conduct research on AI‑based video processing and compression systems.
      • Study and prototype algorithms for the above areas; deploy models across platforms; optimize models, including custom CUDA kernel implementations.

      What we need to see:

      • Master’s/PhD candidate in EE/CS or a related field.
      • Basic proficiency in C/C++/Python is required.
      • Quick learner, creative, and willing to take on challenges in new fields.
      • Fluent in English with strong communication skills.
      • Familiarity with video codec standards such as H.264 and AV1 is a big plus.
      • Experience with deep‑learning–based model training, inference, and deployment is a plus.
      • Background with CUDA development is a plus
      1 Reply Last reply Reply Quote 0
      • 1 / 1
      • First post
        Last post
      Copyright © 2016 OpenASIC.XinKai
      VIP Lab @Fudan University | XK Silicon