英伟达System Software Engineer, Systems Infrastructure - New College Grad 2026
任职要求
The NVIDIA Infrastructure Group is seeking world-class programmers to design, implement, and debug the next generation of large-scale, general-purpose graphics and computing chips. In this role, you will help build the core verification infrastructure that drives the development of our GPU and Tegra chips.This strongly object-oriented C++ and Python infrastructure encompasses several extensive applications that allow us to efficiently verify the world's largest chips with a sophisticated distributed computing execution and triage environment. Come and join our diverse, international, fast-paced team with high production-quality standards.
What You’ll Be Doing:
• Developing environments to program and test next-generation GPU and SoC f…工作职责
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• Help design, develop, and improve scalable infrastructure to support the next generation of AI applications, including copilots and agentic tools. • Drive improvements in architecture, performance, and reliability, enabling teams to bring to bear LLMs and advanced agent frameworks at scale. • Stay informed of the latest advancements in AI infrastructure and contribute to continuous innovation.
A key part of Nvidia's strength is our unique, advanced, development tools and environments that enable our incredible pace of delivering new technology to market. We are looking for hard-working, and creative people who passionate about joining a dynamic agile software team with high production quality standards that can help across our infrastructure. The roles below offer the opportunity to play a critical part in every stage of development of GPU technology, and to learn and improve the daily workflows of the world’s top chip designers and to apply machine and deep learning to every part of our chip development pipeline. All of our roles require excellent interpersonal skills and flexibility/adaptability for working in a dynamic environment with different frameworks and requirements. What you’ll be doing: • Develop the user interface and front-end application for comprehensive workflows for the development of new graphics chips. • Working on backend and frontend design and development of proprietary web applications for hardware development. • Interact directly with end users. • Analyzing performance bottlenecks in the workflow and application. • Build infrastructure and microservices to support the hardware development teams.
• Build internal profiling/analysis tools for real world application perf/power analysis at system from small to large scale. • Build infrastructure or services for data visualization/mining and management. • Work with our users to build their perf/power models on top of our tools for next generation HW design.
At NVIDIA, we pride ourselves in having energy efficient products. We believe that continuing to maintain our products' energy efficiency compared to the competition is key to our continued success. Our team is responsible for researching, developing, and deploying methodologies to help NVIDIA's products become more energy efficient; and is responsible for building energy models that integrate into architectural simulators, RTL simulation, and emulation platforms. Key responsibilities include developing techniques to model, analyze, and reduce the power consumption of NVIDIA GPUs. As a member of the Power Modeling, Methodology, and Analysis Team, you will collaborate with Architects, Performance Engineers, Software Engineers, ASIC Design Engineers, and Physical Design teams to study and implement energy modeling techniques for NVIDIA's next-generation GPUs and Tegra SOCs. Your contributions will help us gain early insight into the energy consumption of graphics and artificial intelligence workloads, and will allow us to influence architectural, design, and power management improvements. What you’ll be doing: • Work with architects and performance architects to develop an energy-efficient GPU. • Develop methodologies and workflows to select and run a wide variety of workloads to train models using ML and/or statistical techniques. • Develop methodologies to improve the accuracy of energy models under various constraints, such as, process, timing, floorplan and layout. • Correlate the predicted energy from models created at different stages of the design cycle, with the goal of bridging early estimates to silicon. • Develop tools to debug energy inefficiencies observed in various workloads run on silicon, RTL and architectural simulators. Work with architects to fix the identified energy inefficiencies. • Work with performance, verification and emulation methodology and infrastructure development teams to integrate energy models into their platforms. • Prototype new architectural features, create an energy model, and analyze the system impact.