Senior System Software Engineer - DevOps and Infrastructure Automation
at Nvidia
π Santa Clara, United States
USD 184,000-287,500 per year
Used Tools & Technologies
Not specified
Required Skills & Competences
Tag name is followed by "@" symbol and proficiency level value.
About proficiency levels:
- 1-2 β basic awareness. Minimal hands-on experience, and a rudimentary understanding of the technology's purpose;
- 3-6 β daily use. Comfortable and regular usage, capable of handling common tasks and challenges related to the technology;
- 7-9 β you are an expert, you can teach others, you know all the pitfalls and tricks;
- 10 β exceptional knowledge, comprehensive understanding, and adeptness in all aspects of the technology, including advanced problem-solving. Think twice before claiming or demanding such level.
Security @ 4
Ansible @ 4
Docker @ 6
Grafana @ 4
Kubernetes @ 4
Linux @ 7
Prometheus @ 4
DevOps @ 4
IaC @ 6
Terraform @ 4
Python @ 7
GCP @ 4
GitHub @ 4
GitHub Actions @ 4
CI/CD @ 4
Distributed Systems @ 7
Machine Learning @ 4
MLOps @ 4
AWS @ 4
Azure @ 4
Bash @ 7
Git @ 7
Helm @ 4
Networking @ 4
SRE @ 7
Microservices @ 4
Debugging @ 4
Compliance @ 4
CUDA @ 3
GPU @ 3
Deep Learning @ 4
Observability @ 4
AI @ 4
TensorRT @ 3
- 1-2 β basic awareness. Minimal hands-on experience, and a rudimentary understanding of the technology's purpose;
- 3-6 β daily use. Comfortable and regular usage, capable of handling common tasks and challenges related to the technology;
- 7-9 β you are an expert, you can teach others, you know all the pitfalls and tricks;
- 10 β exceptional knowledge, comprehensive understanding, and adeptness in all aspects of the technology, including advanced problem-solving. Think twice before claiming or demanding such level.
Details
Become a Senior System Software Engineer on NVIDIA's AI Inference Operations Team, focusing on DevOps and Infrastructure Automation. Join a company revolutionizing computer graphics, PC gaming, and accelerated computing. You will be working alongside a team of passionate and skilled engineers who are continuously building better tools to deploy and manage this infrastructure. With your help, we will forge the next generation of compute infrastructure. If you thrive at the intersection of systems programming, cloud-native infrastructure, and developer productivity, this is your opportunity to make a lasting impact at a leading technology company.
Responsibilities
- Design, build, and operate the infrastructure backbone powering AI inference products β reliable, performant, and scalable at every layer.
- Own Kubernetes deployments end-to-end across cloud and on-prem: runbooks, canary checks, post-deploy validation, and rollbacks when needed.
- Architect CI/CD pipelines for automated build, test, packaging, and release of inference libraries and their container-based software stacks.
- Build observability that actually tells the truth about platform health β dashboards, logs, metrics, automated checks β and lead first-level incident triage with clean, actionable handoffs to engineering.
- Manage cloud and on-prem environments with infrastructure-as-code (Terraform, Ansible, Helm, Crossplane), and reduce toil using GitHub Actions, GitLab CI, and custom tooling.
- Own the security posture for infrastructure components: vulnerability scans, CVE remediation, and compliance with internal policies.
- Collaborate closely with deep learning framework engineers, compiler teams, and platform architects to streamline end-to-end deployment.
Requirements
- BS/MS in CS/CE or equivalent experience, plus 7+ years operating production distributed systems (SRE / DevOps / Platform Ops).
- Deep Kubernetes expertise β components, subsystems, on-prem setup, and hands-on debugging of telemetry-heavy microservices across AWS, Azure, GCP, and on-prem.
- Strong CI/CD experience (GitLab CI, GitHub Actions), Git-based workflows, Linux systems programming, and scripting in Python and Bash.
- IaC fluency (Terraform, Ansible, Helm, Crossplane) and containerization depth (Docker, containerd, OCI).
- Proven reliability ownership β SLOs/SLIs, on-call, incident response, and post-incident reviews β with hands-on experience with observability stacks like Prometheus, Grafana, and Loki.
- Clear communicator who writes runbooks people actually use.
Ways to stand out
- MLOps experience β crafting, deploying, and operating machine learning pipelines end to end.
- Experience in open-source development workflows and community engagement on projects like Triton Inference Server or ONNX Runtime.
- Familiarity with GPU software stacks β CUDA, cuDNN, TensorRT, and inference serving frameworks.
- Experience building custom test automation frameworks and using data-driven metrics to improve platform health and developer efficiency.
- Demonstrated ability to debug complex issues spanning kernel modules, container runtimes, and distributed networking.
Compensation & Additional Information
- Base salary range: 184,000 USD - 287,500 USD (determined based on location, experience, and pay of employees in similar positions).
- You will also be eligible for equity and benefits (see NVIDIA benefits page).
- Applications for this job will be accepted at least until June 12, 2026. This posting is for an existing vacancy.
- NVIDIA uses AI tools in its recruiting processes and is an equal opportunity employer committed to fostering an inclusive work environment.