via Gem
$200K - 300K a year
Design and operate large-scale GPU infrastructure, improve system reliability, and scale training and inference workloads.
Deep expertise in Linux, distributed systems, GPU cluster operation, Kubernetes, and low-level hardware/software debugging, with leadership in reliability engineering.
About Luma AI A new class of intelligence is emerging, systems that understand and generate the world across video, images, audio, and language. Building multimodal AGI is not just a modeling challenge. It is an infrastructure challenge at the edge of what hardware, software, and organizations can support. At Luma, we operate rapidly scaling 10k+ GPU fleets, pushing utilization, throughput, and reliability hard enough that yesterday’s solutions break regularly. Researchers depend on this infrastructure to move the frontier forward. Customers depend on it to power real creative work. Many companies run accelerators. Very few sit directly next to the teams inventing the models that redefine what those accelerators must do. At Luma, improvements to scheduling, efficiency, and reliability immediately translate into faster research iteration and entirely new product capabilities. We are still early. The playbook is still being written. A single exceptional engineer can reshape how the company operates. Where You Come In Our Infrastructure Engineering team is a systems engineering group with company-level responsibility. At Luma, reliability engineers work directly with the researchers and products pushing the limits of multimodal intelligence. We operate close to the metal: Kernels Containers Schedulers Networking Storage GPU behavior But we are also responsible for something bigger: Turning deep systems knowledge into repeatable, scalable reliability for the entire company. We are hiring a leader who will define that direction. You will be a technical authority, an organizational force multiplier, and a magnet for other great engineers. What You’ll Own Reliability of the Frontier Architect and operate large, heterogeneous GPU environments under extreme demand Improve utilization and performance where small gains materially change company outcomes Resolve failures that span hardware, OS, runtimes, and orchestration Eliminate entire classes of instability Build mechanisms that make heroics unnecessary Scaling Training & Inference Define how infrastructure and workloads evolve as cluster size and concurrency grow Design scheduling, placement, and resource management approaches for increasingly complex jobs Work directly with research to build the systems required for new model capabilities Ensure inference platforms scale rapidly without sacrificing reliability or latency Anticipate where today’s abstractions will fail and redesign ahead of them Building the Organization Hire and develop exceptional systems and reliability engineers Set the bar for technical depth, judgment, and production ownership Shape architecture early through strong partnerships with research and product Translate reliability constraints into long-term platform strategy Who You Are Required: Deep expertise in Linux and distributed systems Experience operating GPU / accelerator clusters in real production environments Strong fluency in Kubernetes and modern open-source infrastructure Comfortable debugging across hardware → kernel → runtime → orchestration You understand how systems behave under contention and at scale You write code and build automation You think in bottlenecks, failure modes, and tradeoffs Engineers trust your judgment, especially when things break Important: This role requires comfort operating close to upstream and close to the metal. If most of your experience has been inside highly abstracted internal platforms where others owned the underlying machinery, this is unlikely to be a match. Leadership Expectations You raise reliability standards across the company You influence product and research architecture early You build strong partnerships, not ticket queues You attract and level up exceptional engineers You are curious how models use infrastructure, because improving systems expands what becomes possible Why This Role Is Special Most infrastructure roles optimize mature systems. This one helps define how reliability works for a new generation of AI infrastructure. The decisions you make here will influence: How research progresses How products scale How customers trust us And how the engineering organization grows If you want to build the reliability foundations of a company operating at the technological frontier, we should talk.
This job posting was last updated on 2/19/2026