NVIDIA

AI

InfrastructureSoftwareEngineer,DeepLearningLibraries

Shanghai, China FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Mid candidates.

The Brief

“Infrastructure Software Engineer, Deep Learning Libraries at NVIDIA. Skills: Infrastructure Software Engineering, Deep Learning Libraries, AI Agents. Design and develop software for testing. Develop scalable automation for build”

What You'll Achieve.

Enable next wave of NVIDIA's libraries; Streamline development, builds, and tests; Improve development velocity

Industry & Context.

AI
Problems you'll solve

Address community needs; Solve challenges

What They're Looking For.

Must Have

Masters Degree in Computer Science or Computer Engineering or equivalent experience, 3+ years of relevant experience, programming skills in Python (or similar), familiarity with C/C++ development, Experience setting up, maintaining, and automating continuous integration systems, Extensive experience in AI agents technology, Fluency in SCM (e.g. Git, Perforce), Fluency in build systems (e.g. Make, CMake, Bazel)

Nice to Have

Experience designing and developing automation in Jenkins with Groovy (or similar), Background with distributed systems, Background with cluster/cloud computing, Kubernetes experience, Experience designing and developing unit and integration test frameworks, Close follow the latest trend in AI industry, Track record of identifying useful new technologies and incorporating them into SW development flows

What You'll Do.

Design and develop software for testing

Develop scalable automation for build

Develop and deploy AI agents

Configure and maintain deployments

Advance state of the art in tools

How You'll Work.

Team & Collaboration

Join technically diverse team; Work with infrastructure experts

Full Job Description

We are now looking for an Infrastructure Software Engineer for Deep Learning Libraries! NVIDIA's Deep Learning Libraries Group is seeking excellent software engineers to enable the next wave of NVIDIA’s highest performing deep learning libraries. The role focuses on NVIDIA's open-source products such as CUTLASS. The mission is to design and develop scalable, modular infrastructure that streamlines development, builds, and tests across NVIDIA’s diverse set of platforms, and address the needs from the open-source community, with the cutting-edge AI technology. Join our technically diverse team of software engineers and infrastructure experts to design the systems that enable NVIDIA to stay ahead of the competition as we deliver the world's fastest deep learning platforms. ****What you 'll be doing:**** * Designing and developing software for testing and analysis of our codebases * Building scalable automation for build, test, integration, and release processes for open-source products * Developing and deploying AI agents and similar technology to automate the end-to-end software development cycle * Configuring, maintaining, and building upon deployments of industry-standard tools (e.g. Kubernetes, Jenkins, Docker, CMake, Gitlab, Jira, etc.) * Advancing the state of the art in those industry-standard tools ****What we need to see:**** * A Masters Degree in Computer Science or Computer Engineering or equivalent experience. * 3+ years of relevant experience * Strong programming skills in Python (or similar) and familiarity with C/C++ development * Experience setting up, maintaining, and automating continuous integration systems (e.g. Jenkins, GitHub Actions, GitLab pipelines, Azure DevOps) * Extensive experience in AI agents technology * Fluency in SCM (e.g. Git, Perforce) and build systems (e.g. Make, CMake, Bazel) ****Ways to stand out from the crowd:**** * Experience designing and developing automation in Jenkins with Groovy (or similar) * Background with distributed

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