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 code operators and engineers rely on every day.
We're growing quickly, expanding our team and our Phoenix HQ. The work is consequential: what you build helps real plants run safer and smarter.
Eligibility: U.S. citizenship or permanent residency (green card) is required due to DOE export compliance.
What You’ll Do- Own AI hardware architecture end-to-end
Design GPU/CPU systems that deliver consistent, high-performance AI workloads. Define storage, networking, container runtime, and OS standards in partnership with ML and platform engineering teams. - Run and scale our Phoenix AI data center
Manage rack architecture, power/cooling constraints, redundancy, monitoring, firmware lifecycle, and capacity planning. Identify bottlenecks early and fix them before they impact production. - Partner directly with utility IT teams
Analyze and validate customer infrastructure intended to host Nuclearn applications. Conduct architecture reviews, confirm configuration alignment, and prevent GPU/runtime incompatibilities before go-live. - Drive hardware lifecycle evolution
Plan GPU refreshes, expansion pathways, and just-in-time capacity upgrades to ensure infrastructure keeps pace with model complexity and platform growth.
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- Develop and publish a clear AI hardware requirements standard for both internal deployment and customer-facing environments — including GPU sizing models, storage thresholds, networking requirements, and supported configurations.
- Analyze and validate a utility customer’s proposed infrastructure architecture before deployment — identifying performance gaps, GPU/runtime misalignment, or security configuration issues and providing concrete remediation guidance.
- Audit the Phoenix data center and execute just-in-time infrastructure upgrades — adding GPU capacity, expanding storage, or rebalancing workloads to maintain sustained high-performance AI execution as usage scales.
- Degree in Computer Engineering, Electrical Engineering, Computer Science, or equivalent practical experience
- Proficiency in Linux server administration and GPU-based AI systems
- Strong experience deploying and tuning NVIDIA GPU environments for ML workloads
- Familiarity with containerized runtimes (Docker, Kubernetes) and AI model hosting
- Excellent troubleshooting skills at the hardware/software boundary
- Ability to operate independently in a fast-moving, high-ownership startup environment
You are hands-on. You think in systems. You move quickly without sacrificing rigor. You are comfortable being the technical authority in the room when discussing infrastructure with senior engineers or enterprise IT leaders.
Nice To Have (not Required)- Experience in utility IT, energy infrastructure, or other regulated industries
- Experience supporting on-prem or air-gapped environments
- Prior responsibility for production data center operations
- Familiarity with cybersecurity expectations common to critical infrastructure environments
- Establish a standardized AI hardware reference architecture used across all deployments
- Build a scalable infrastructure refresh strategy that prevents hardware drift and obsolescence
- Make AI infrastructure a strategic advantage — stable, scalable, and trusted by customers
- Base salary: $120k - $165k
- Equity:0.025% - 0.125%
- Benefits: Unlimited PTO, health/dental/vision insurance, 4% 401k match
- Full-time, salaried
- Mon–Fri hybrid (Wed remote); expectation is ≥80% in-office (Phoenix HQ)
- 20-min intro with the founder/hiring manager to trade context and assess mutual fit
- Practical work sample (60–90 min; a real task in our stack)
- Team meet + peer programming (system design + collaboration)
We aim to move from first chat to decision quickly.
Top Skills
What We Do
With over 60 reactors around the world relying on our technology, Nuclearn is built on one simple idea: nuclear deserves better tools. Our team—made up of nuclear professionals and engineers—set out to modernize the industry by applying AI to some of its most critical, and often outdated, processes. “We saw this massive gap,” said Bradley Fox, CEO and co-founder. “You’ve got the tech to split atoms, but a lot of the supporting work is still done with decades-old systems. We knew AI could help streamline that complexity—making things safer, faster, and more efficient. It’s a win for the plants, and for the future of clean energy.” Jerrold Vincent, our CFO and co-founder, adds: “Back in 2016, we recognized the potential for AI to support nuclear—not just in cutting costs, but in preparing the next generation of workers. That’s why we started Nuclearn. We believe AI is one of the best tools we have to keep nuclear strong for the long haul.” The software we’ve built isn’t generic. It’s nuclear-specific, pre-trained, and ready to go—designed by people who’ve lived the process and know exactly what this industry needs.








