Solutions Architect - DevOps
Indexed description
What You'll Be Doing
- Maintain large scale computational and AI infrastructure, focusing on monitoring, logging, workload orchestration (Kubernetes and Linux job schedulers).
- Optimize scalable, production-ready Kubernetes-based container platforms coordinated with enterprise-grade networking and storage.
- Serve as a key technical resource, develop, refine, and document standard methodologies and operational guidelines to be shared with internal teams.
- Perform end-to-end resolving across the stack, from bare metal and operating system, through the software stack, container platform, networking, and storage.
- Support Enterprise, Research & Development activities and engage in POCs/POVs to validate new features, architectures, and upgrade approaches.
- Deploy monitoring solutions for the servers, network and storage with a focus on services performance and availability optimisations to meet requirements and SLAs.
- Develop tooling to automate deployment and management of large-scale infrastructure environments, to automate operational monitoring and alerting, and to enable self-service consumption of resources.
- Create and deliver high-quality documentation, including runbooks, onboarding materials, and best-practice guides for customers and internal teams.
- Become the technical leader for assigned customer accounts, providing strategic guidance on DevOps and platform architecture and influencing long-term infrastructure and operations decisions.
- BS/MS/PhD in Computer Science, Electrical/Computer Engineering, Physics, Mathematics, or related fields, with 5+ years of professional experience in managing scalable cloud environments and automation engineering roles.
- Kubernetes & AI/ML Workloads: Extensive experience with Kubernetes for container orchestration, resource scheduling, scaling, and integration with HPC environments.
- Cloud & HPC Expertise: Proven understanding of networking fundamentals (TCP/IP stack), data center architectures, and hands-on experience managing HPC/AI clusters, including deployment, optimization, and fixing issues.
- Hardware & Software Knowledge: Familiarity with HPC and AI technologies (CPUs, GPUs, high-speed interconnects) and supporting software stacks.
- Linux & Storage Systems: Deep knowledge of Linux (RedHat/CentOS, Ubuntu), OS-level security, and protocols (TCP, DHCP, DNS). Experience with storage solutions such as Lustre, GPFS, ZFS, XFS, and emerging Kubernetes storage technologies.
- Automation & Observability: Proficiency in Python and Bash scripting, configuration management, and Infrastructure-as-Code tools (e.g., Ansible, Terraform). Experience with observability stacks (Grafana, Loki, Prometheus) for monitoring, logging, and building fault-tolerant systems.
- Solution Architecture & Customer Engagement: Strong background in crafting scalable solutions and providing consultative support to customers.
- Knowledge of CI/CD pipelines for software deployment and automation.
- Solid hands-on knowledge of Kubernetes and container-based microservices architectures.
- Experience with GPU-focused hardware and software (e.g., NVIDIA DGX, CUDA, GPU Operator).
- Background with RDMA-based fabrics (InfiniBand or RoCE) in HPC or AI environments.
NVIDIA is committed to fostering a diverse work environment and proud to be an equal opportunity employer. As we highly value diversity in our current and future employees, we do not discriminate (including in our hiring and promotion practices) on the basis of race, religion, color, national origin, gender, gender expression, sexual orientation, age, marital status, veteran status, disability status or any other characteristic protected by law.
, , JR2015236
Create a free Caio profile to unlock more results and save your role and location preferences.
Unlock free search