英伟达NVIDIA 2026 Internships: Software Engineering - China
任职要求
Must be actively enrolled in a university pursuing a Bachelor's, Master's, or PhD degree in Electrical Engineering, Computer Engineering, or a related field, for the entire duration of the internship. Depending on the internship role, prior experience or knowledge requirements could include the following programming skills and technologies: • Java, JavaScript, …
工作职责
By submitting your resume, you’re expressing interest in one of our 2026 Software Engineering Internships. We’ll review resumes on an ongoing basis, and a recruiter may reach out if your experience fits one of our many internship opportunities. NVIDIA pioneered accelerated computing to tackle challenges no one else can solve. Our work in AI and digital twins is transforming the world's largest industries and profoundly impacting society — from gaming to robotics, self-driving cars to life-saving healthcare, climate change to virtual worlds where we can all connect and create. Our internships offer an excellent opportunity to expand your career and get hands on experience with one of our industry leading Software teams. We’re seeking strategic, ambitious, hard-working, and creative individuals who are passionate about helping us tackle challenges no one else can solve. Potential Internships in this field include: Development Tools • Debugging complex system-level issues using Jenkins • Course or internship experience related to the following areas could be required: Relational Databases, Linear Algebra & Numerical Methods, Operating Systems (memory/resource management), Scheduling and Process Control, Hardware Virtualization Cloud • Supporting overall architecture and design of our cloud storage infrastructure • Implementing and troubleshooting storage and data platform tools, automating storage infrastructure end-to-end • Course or internship experience related to the following areas could be required: Distributed Systems, Data Structures & Algorithms, Virtualization, Automation/Scripting, Container & Cluster Management, Debugging Tools Infrastructure • Building industry leading technology by proving workflows and infrastructure, alongside a team of experts in production software development and chip design methodologies • Enabling success for content running on the chip from application tracing and analysis to modeling, diagnostics, performance tuning, and debugging • Course or internship experience related to the following areas and technologies could be required: Unix/Shell Scripting, Linux, Java, JavaScript (including Node, React, Vue), C++, CUDA, OOP, Go, Python, Git, GitLab, Perforce, Kubernetes and Microservices, Schedulers (LSF, SLURM), Containers (Docker), Configuration Automation (Ansible) Machine Learning Operations • Deep Learning, GPU Computing, Accelerated Computing • Validation Frameworks for Deep Learning, Deep Learning Frameworks and Libraries (NumPy, SciPy, cuBLAS, cuDNN) • Data Preprocessing, Training Acceleration (CUDA, cuDNN, NCCL), Convolution Operations (cuDNN), Real-Time Inference (TensorRT) • Building Infrastructure for Back-End Analytics
我们是小红书中台大模型 Infra 团队,专注打造领先易用的「AI 大模型全链路基础设施」!团队深耕大模型「数-训-压-推-评」技术闭环,在大模型训练加速、模型压缩、推理优化、部署提效等方向积累了深厚的技术优势,基于 RedAccel 训练引擎、RedSlim 压缩工具、RedServing 推理部署引擎、DirectLLM 大模型 API 服务、QuickSilver 大模型生产部署平台等核心产品,持续赋能社区、商业、交易、安全、数平、研效等多个核心业务,实现 AI 技术高效落地! 工作职责: 1、参与/负责研发面向大语言模型(LLM)/多模态大模型(MLLM)等类型模型的推理服务框架; 2、参与/负责KV Router、PD分离/EPD分离、KVCache管理、动态PD调整等分布式推理能力建设; 3、通过并行计算优化、分布式架构优化、异构调度等多种框架技术,打造高效、易用、领先的AI推理框架; 4、参与/负责构建推理框架的系统容错能力,包括但不限于请求迁移、优雅退出、故障检测、自愈等能力建设; 5、深度参与周边深度学习系统多个子方向的工作,包括但不限于模型管理、推理部署、日志/监控、工作流编排等; 6、与全公司各业务算法部门深度合作,为重点项目进行算法与系统的联合优化,支撑业务目标达成。
● 从事机密计算领域可信相关的产品化研发及场景落地等工作; ● 追踪并研究机密计算前沿技术并主导创新性工作; ● 参与社区相关开源项目的建设; ● 探索和挖掘机密计算新的应用场景;
1.参与AI与GPU相关项目的性能优化与研发,通过利用并行计算优化、架构优化、量化优化和异构调度等高性能优化技术,研发行业领先的高性能异构AI优化技术与编译优化技术; 2.针对搜广推、音视频以及大模型场景,优化大模型训练和推理场景的性能; 3.与公司各算法部门深度合作,对重点项目进行算法与系统的联合优化。
1. 基于 NVIDIA Isaac 的仿真平台开发 ‒ 搭建和维护基于 NVIDIA Isaac Sim 的机器人仿真系统,支持多种机器人类型(例如移动机器人、机械臂、无人车等)。 ‒ 利用 NVIDIA Omniverse 技术,构建高保真的虚拟环境,模拟物理特性(如动力学、传感器特性、碰撞检测等)。 ‒ 开发和优化 Isaac Sim 中的自定义扩展模块,满足项目需求。 2. 环境建模与场景构建 ‒ 使用 NVIDIA Omniverse 和其他建模工具(如 Blender、Maya)创建逼真的仿真环境和场景。 ‒ 配置和调试虚拟传感器(如激光雷达、摄像头、IMU)以模拟真实硬件行为。 ‒ 构建动态交互场景,用于测试机器人在复杂环境中的性能。 3. 机器人控制与算法验证 ‒ 在仿真环境中集成和测试机器人算法(如SLAM、路径规划、运动控制)。 ‒ 验证和优化机器人感知算法(如视觉检测、环境感知)在高保真模拟环境中的效果。 ‒ 通过仿真结果分析算法性能,为实际机器人实施提供支持。 4. 系统集成与工具链开发 ‒ 与机器人硬件和软件团队合作,将仿真结果与实际机器人验证无缝对接。 ‒ 开发自动化测试工具和数据可视化分析工具,提高开发效率和数据洞察能力。 ‒ 集成 Isaac 与其他机器人框架(如 ROS/ROS 2)以支持全栈开发。 5. 研究与创新 ‒ 研究 NVIDIA Isaac 平台的最新功能和应用场景,将新技术引入仿真系统开发。 ‒ 跟踪机器人仿真领域的前沿技术(如物理引擎优化、AI 模型仿真、数字孪生技术),并应用于项目中。