Demo

Senior Infrastructure Engineer

Nuclearn
Phoenix, AZ Full Time
POSTED ON 4/17/2026
AVAILABLE BEFORE 6/17/2026

Staff AI Infrastructure Engineer

Why Nuclearn.ai

Nuclearn.ai builds AI-powered software for the nuclear and utility industries — tools that keep critical infrastructure reliable, efficient, and safe. Our software integrates AI-driven workflow, documentation, and research automation, and is already used at 60 nuclear reactors across North America. You'll ship production infrastructure operators and engineers rely on every day.

We're growing quickly, expanding our team and our Phoenix AI data center. The work is consequential: the infrastructure you build and maintain is the foundation everything else runs on.

Eligibility: U.S. citizenship or permanent residency (green card) is required due to DOE export compliance.

What You'll Do

This is a hands-on infrastructure role. You will physically build, operate, and scale the GPU compute environment that powers our AI platform — not design it from a desk.

  • Build and operate our Phoenix AI data center — Rack and cable GPU servers, configure power distribution, manage cooling and airflow, maintain redundancy, and handle firmware and hardware lifecycle. You own uptime.
  • Plan and execute infrastructure scaling — Spec and procure hardware. Run capacity planning against real workload data. Execute GPU refreshes, storage expansions, and network upgrades with minimal disruption to production.
  • Own the full stack from power to container — Configure bare-metal servers, IPMI/BMC management, OS provisioning, networking (switches, VLANs, cabling), storage, and container runtimes. Troubleshoot across the entire hardware-software boundary.
  • Partner with utility IT teams on customer deployments — Review and validate customer-proposed infrastructure for hosting Nuclearn applications. Identify GPU/runtime mismatches, networking gaps, and configuration issues before go-live. Provide concrete remediation guidance.

You will operate as a senior individual contributor with high autonomy and direct influence across engineering, ML, product, and customer environments.

Examples of problems you might own in your first 90 days

  • Rack and commission a new GPU node — Receive hardware, plan rack placement for power and thermal constraints, install rails, cable power and networking, configure BMC, provision the OS, validate GPU functionality, and hand off a production-ready machine to the ML team.
  • Develop a hardware requirements standard for both internal and customer-facing deployments — GPU sizing models, storage thresholds, power and cooling requirements, networking specs, and supported configurations.
  • Audit the Phoenix data center end-to-end — Map current power draw against capacity, identify thermal hotspots, assess cable management, review redundancy gaps, and execute targeted upgrades to keep pace with scaling workloads.
  • Validate a utility customer's proposed infrastructure before deployment — catch a GPU/driver mismatch, flag insufficient network throughput, or identify a cooling limitation that would throttle inference performance under load.

What Makes You a Great Fit

  • You've racked servers and managed physical infrastructure — not just in a lab, but in production environments where uptime matters
  • Hands-on experience with NVIDIA GPU hardware: installation, driver and firmware management
  • Strong Linux systems administration (bare metal, not just cloud VMs)
  • Experience with Ceph storage clusters: deployment, tuning, and operations
  • Experience with Proxmox virtualization for managing compute and storage infrastructure
  • Working knowledge of data center fundamentals: power distribution, cooling, cabling, rack layout
  • Experience with network configuration: switches, VLANs, firewall rules, cable management
  • Familiarity with remote management (IPMI, iDRAC, BMC) and OS provisioning at scale
  • Hardware procurement experience: speccing systems, working with vendors, managing RMAs

You are hands-on first. You think in systems — from the power circuit to the container orchestrator. You can be the technical authority in the room whether you're talking to our ML engineers about GPU utilization or walking a utility IT director through their rack layout.

Nice To Have (not Required)

  • Experience tuning GPU environments for ML inference and training workloads
  • Familiarity with AI model serving, RAG pipelines, or LLM deployment
  • Experience with containerized runtimes (Docker, Kubernetes) for AI workloads
  • Experience with InfiniBand or other high-speed interconnects (RoCE, GPUDirect RDMA) for distributed AI workloads
  • Experience in utility IT, energy infrastructure, or other regulated industries
  • Experience operating on-prem or air-gapped environments
  • Hardware vendor relationships (NVIDIA, Supermicro, Dell, etc.)
  • Familiarity with cybersecurity expectations in critical infrastructure environments
  • Network certifications or deep switching/routing experience

Impact You'll Have (near-term roadmap)

  • Establish a standardized AI hardware reference architecture used across all internal and customer deployments
  • Build a capacity planning and hardware refresh strategy that keeps infrastructure ahead of model complexity and platform growth
  • Make our physical infrastructure a competitive advantage — reliable, scalable, and trusted by customers running critical workloads

Compensation & Benefits

  • Base salary: $120k - $165k
  • Equity: 0.025% - 0.125%
  • Benefits: Unlimited PTO, health/dental/vision insurance, 4% 401k match

Work Model & Schedule

  • Full-time, salaried
  • Mon–Fri hybrid (Wed remote); expectation is ≥80% in-office (Phoenix HQ)
  • Periodic on-site data center work required

How We Hire (fast, respectful, practical)

  1. 20-min intro with the founder/hiring manager to trade context and assess mutual fit
  2. Practical work sample (60–90 min; a real task in our stack)
  3. Team meet peer conversation (system design collaboration)

We aim to move from first chat to decision quickly.

Salary : $120,000 - $165,000

If your compensation planning software is too rigid to deploy winning incentive strategies, it’s time to find an adaptable solution. Compensation Planning
Enhance your organization's compensation strategy with salary data sets that HR and team managers can use to pay your staff right. Surveys & Data Sets

What is the career path for a Senior Infrastructure Engineer?

Sign up to receive alerts about other jobs on the Senior Infrastructure Engineer career path by checking the boxes next to the positions that interest you.
Income Estimation: 
$103,075 - $132,729
Income Estimation: 
$123,335 - $160,476
Income Estimation: 
$110,906 - $139,379
Income Estimation: 
$117,606 - $144,658
Income Estimation: 
$86,680 - $110,316
Income Estimation: 
$110,730 - $135,754
Income Estimation: 
$117,033 - $148,289
Employees: Get a Salary Increase
View Core, Job Family, and Industry Job Skills and Competency Data for more than 15,000 Job Titles Skills Library

Job openings at Nuclearn

  • Nuclearn Phoenix, AZ
  • Why Nuclearn.ai Nuclearn.ai builds AI-powered software for the nuclear and utility industries—tools that keep critical infrastructure reliable, efficient, ... more
  • 15 Days Ago

  • Nuclearn Phoenix, AZ
  • Why Nuclearn.ai Nuclearn.ai builds AI‑powered software for the nuclear and utility industries—tools that keep critical infrastructure reliable, efficient, ... more
  • 2 Days Ago

  • Nuclearn Phoenix, AZ
  • Why Nuclearn.ai Nuclearn.ai builds AI-powered software for the nuclear and utility industries — tools that keep critical infrastructure reliable, efficient... more
  • 2 Days Ago


Not the job you're looking for? Here are some other Senior Infrastructure Engineer jobs in the Phoenix, AZ area that may be a better fit.

  • GFT Infrastructure, Inc. Phoenix, AZ
  • What You Will Do: GFT is seeking a Senior Geotechnical Project Engineer with significant Deep Foundation Experience to join our Geotechnical Dams & Hydraul... more
  • 27 Days Ago

  • Hubcom Corp Phoenix, AZ
  • Role: Senior Infrastructure Kafka Engineer Location: Phoenix, AZ- Onsite Employment type: contract-to-hire Role Overview Client is seeking a Senior Infrast... more
  • 1 Day Ago

AI Assistant is available now!

Feel free to start your new journey!