tensorwave

Staff Infrastructure Engineer – Kubernetes Platform

🇺🇸 Las Vegas, Stany Zjednoczone Na miejscu Opublikowano Maj 11, 2026
Tryb pracy Na miejscu
Język English
Opublikowano 11 maja 2026
Ostatnio sprawdzono 30 maja 2026
Kontekst JobGrid

Podsumowanie roli od JobGrid

Staff Infrastructure Engineer – Kubernetes Platform at tensorwave: Las Vegas, Stany Zjednoczone; Na miejscu. JobGrid adds normalized role facts, source context, and a path to the employer application page so candidates can compare the listing before applying.

  • Location and workplace: Las Vegas, Stany Zjednoczone, Na miejscu
  • Source freshness: checked by JobGrid on 2026-05-30.
  • Application path: candidates continue to the employer application page with non-personal referral tags.

About TensorWave

Our mission is simple: deliver seamless, secure, reliable, and resilient AI compute at scale. We've built a versatile cloud platform that eliminates infrastructure barriers, empowering builders to focus on innovation instead of fighting their stack. Because breakthrough AI should move at the speed of ideas, not infrastructure.

 

About the Role

We’re looking for a Kubernetes Platform Staff Infrastructure Engineer to join our team during an exciting phase of growth. In this role, you’ll be responsible for owning the design, evolution, and operational reliability of our Kubernetes control plane architecture, working closely with cross-functional partners to support business objectives while upholding our standards for excellence, collaboration, and impact.

 

What You’ll Do

Platform Architecture & Strategy

  • Design and evolve Kubernetes control plane architecture across regions

  • Define and implement multi-tenant cluster models, including shared control planes, virtual cluster approaches (e.g., vcluster, Kamaji)

  • Drive transition from standalone clusters to regionally managed platform models

  • Define standards for isolation boundaries, resource segmentation, policy enforcement

Platform Ownership & Operations

  • Own the reliability and behavior of Kubernetes platforms in production

  • Participate in on-call rotation and lead incident response

  • Diagnose and resolve control plane instability, API server saturation, scheduling and resource contention issues

  • Ensure consistent lifecycle management across clusters - provisioning, upgrades, scaling

Multi-Region Scaling

  • Design and implement strategies for regional scaling, multi-data center cluster deployments

  • Ensure consistent behavior and reliability across environments

  • Define cluster topology and failure domain strategies

Networking & Data Plane Integration

  • Design ingress and egress architectures at cluster level and regional level

  • Troubleshoot and optimize pod-to-pod networking, north-south traffic flows, CNI behavior (Cilium preferred)

  • Collaborate with network engineering on high-performance networking integration

Observability & Reliability

  • Improve observability across control plane components, cluster health and performance

  • Define and implement resilience strategies aligned with platform goals

  • Lead root cause analysis for production incidents

Cross-Team Collaboration

  • Work closely with DevOps engineers (automation and CI/CD) and Infrastructure teams (compute, storage, networking)

  • Align Kubernetes platform design with underlying infrastructure capabilities

 

Who You Are

Required Qualifications

  • 7+ years of experience in infrastructure, platform engineering, or distributed systems

  • Deep experience operating Kubernetes at scale in production environments

  • Experience in CSP, hyperscale, or equivalent large-scale environments strongly preferred

  • Proven experience scaling Kubernetes across:

    • Multiple clusters

    • Multiple regions or data centers

  • Strong understanding of Kubernetes internals:

    • API server

    • Scheduler

    • Controller manager

    • etcd

  • Experience designing or evolving:

    • Control plane architectures

    • Multi-tenant cluster models

Technical Depth

  • Strong Linux systems expertise

  • Deep troubleshooting ability across:

    • Kubernetes

    • Container runtime

    • Networking stack

  • Experience with CNI plugins (Cilium preferred)

  • Strong understanding of:

    • Networking and traffic patterns

    • Resource isolation and scheduling

Preferred Qualifications

  • Experience with virtual cluster technologies (vcluster, Kamaji, or similar)

  • Experience supporting GPU workloads in Kubernetes

  • Familiarity with:

    • NUMA-aware scheduling

    • Topology-aware workloads

  • Awareness of RDMA and high-throughput networking environments

  • Experience with observability platforms (Prometheus, Grafana, etc.)

 

What We Offer

  • Stock Options

  • 100% paid Medical, Dental, and Vision insurance for Employees

  • Company Health Savings Account Contributions

  • 100% paid Short Term and Long Term Disability Insurance for Employees

  • Life and Voluntary Supplemental Insurance Options

  • Other Insurance Options, such as Pet & Legal Insurance

  • Various Supplementary Health Benefits, such as discounted Virtual Healthcare Appointments and Serious Illness Support

  • Flexible Spending Account

  • 401(k)

  • Employee Assistance Program

  • Flexible PTO

  • Paid Holidays

  • Parental Leave

  • Other In-Office Perks

 

Equal Employment Opportunity

TensorWave is an Equal Opportunity Employer. We celebrate diversity and are committed to creating an inclusive environment for all employees. We do not discriminate on the basis of any protected status under applicable law.

 

Reasonable Accommodations

TensorWave provides reasonable accommodations in accordance with applicable laws. If you require accommodation during the hiring process, please contact [email protected].

 

Employment Eligibility

All offers of employment are contingent upon verification of identity and authorization to work in the United States, as required by law.

 

Background Checks

Where permitted by law, employment may be contingent upon the successful completion of a job-related background check.

 

Data Privacy Notice

By submitting an application, you acknowledge that TensorWave may collect, use, and retain your personal information for recruiting and employment-related purposes in accordance with applicable data privacy laws.