NVIDIA

AI4Science Solution Architecture Intern - 2026

China, Beijing Full time

We're seeking outstanding interns to participate in our AI and accelerated computing projects. As an AI4Science Solution Architecture Intern, you’ll collaborate with world-class experts, contribute to groundbreaking innovations, and help build the future of artificial intelligence and high-performance computing. This is an outstanding opportunity to gain hands-on experience while working on real-world projects that make a significant impact!

What you'll be doing:

  • Use your skills in programming, AI, and accelerated computing to build innovative tools and applications in areas such as AI for Science (AI4S), robotics, and computational modeling.

  • Conduct AI engineering work, assist in developing and optimizing AI models and tools using NVIDIA SDKs and frameworks.

  • Collaborating with internal teams and external researchers. Explore brand new trends in AI and computing acceleration to contribute to research and technology transfer projects.

  • Be available 3–4 days per week for at least 6 months. Positions are primarily based in Beijing, Shanghai, or Shenzhen.

What we need to see:

  • Enrolled in a Master’s or Ph.D. program in Computer Science, Electrical Engineering, Applied Mathematics, or a related field.

  • Solid programming experience in at least one language (Python, C/C++, etc.) and familiarity with Linux development environments.

  • Strong analytical and problem-solving skills.

  • Effective communication and a collaborative approach when working with multi-functional teams.

Ways to stand out from the crowd:

  • Hands-on experience or theoretical knowledge in accelerated computing, machine learning, deep learning, or AI4S fields.

  • Familiar with large model inference frameworks or multi-modality models, knowledge of model inference benchmark.

  • Familiarity with modern AI models such as transformers or diffusion models, and understanding of optimization methods.

  • Experience with CUDA programming and popular deep learning frameworks (PyTorch, TensorFlow, etc.).

  • Familiar with NVIDIA libraries (e.g., Modulus, Isaac, BioNeMo, CUDA-Q, PhysicsNeMo) as well as published research or open-source contributions in relevant areas.