Performance Engineer - AI Infrastructure at Andromeda Cluster. Remote Location: Global Remote / San Francisco, CA. Performance Engineer - AI Infrastructure. Location:. Global Remote / San Francisco · Full-Time. About Andromeda. Andromeda Cluster was founded by Nat Friedman and Daniel Gross to give early-stage startups access to the kind of scaled AI infrastructure once reserved only for hyperscalers.. We began with a single managed cluster — but it filled almost instantly. Since then, we’ve been quietly building the systems, network, and orchestration layer that makes the world’s AI infrastructure more accessible.. Today, Andromeda works with leading AI labs, data centers, and cloud providers to deliver compute when and where it’s needed most. Our platform routes training and inference jobs across global supply, unlocking flexibility and efficiency in one of the fastest-growing markets on earth.. Our long-term vision is to build the liquidity layer for global AI compute. We are expanding to new frontiers to find the brightest that work in AI infrastructure, research and engineering.. The Opportunity. We are hiring a . Performance Engineer. to join our Growth team. In this role, your "product" is the efficiency and throughput of our massive-scale AI clusters. As we scale our network, the difference between a "working" cluster and an "optimized" one represents millions of dollars in value and weeks of saved research time for our customers.. You will sit at the intersection of systems engineering and research, profiling end-to-end training runs to hunt down bottlenecks in compute, communication, and storage.. What You’ll Do. Profile & Optimize:. Conduct end-to-end profiling of training workloads to identify bottlenecks across GPU kernels, NCCL communication, and storage I/O.. System Refinement:. Collaborate with systems engineers to improve scheduling efficiency, collective communication performance, and kernel execution.. Observability:. Build and maintain high-fidelity tooling to monitor and visualize MFU, throughput, and cluster uptime.. Process Design:. Design technical processes (e.g., postmortem reviews, incident response) that help the team operate effectively and avoid repeating performance regressions.. What We’re Looking For. Systems Intuition:. You love optimizing performance and digging into systems to understand how every layer interacts—from the training loop to the hardware.. Distributed Training Experience:. Proven experience running distributed training jobs on multi-GPU systems or HPC clusters.. Coding Proficiency:. Strong programming skills in . Python and C++. (Rust or CUDA experience is a major plus).. ML Framework Depth:. Solid understanding of PyTorch, JAX, or TensorFlow, and how large-scale training loops are built.. Infrastructure Knowledge:. Familiarity with modern cloud infrastructure, including Kubernetes and Infrastructure as Code.. Rigor:. A passion for measuring efficiency rigorously and translating raw profiling data into practical engineering improvements.. Strong Candidates May Have. Low-Level Mastery:. Experience with Linux kernel tuning, eBPF, and understanding systems design tradeoffs at the hardware level.. Specialized AI Infra:. Hands-on experience with GPUs, TPUs, or Trainium, and the networking libraries that power them (NCCL, MPI, UCX).. Security & Privacy:. Expertise in security best practices for high-scale infrastructure.. Observability:. Familiarity with monitoring tools like Prometheus and Grafana.. Why You’ll Love It Here. This is a builder’s role. You’ll have ownership and autonomy to shape how our systems run, working directly with customers and providers while building the foundation for reliable, scalable AI infrastructure.. Andromeda Cluster 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 race, religion, color, national origin, gender, sexual orientation, age, marital status, veteran status, or disability status.
Performance Engineer - AI Infrastructure at Andromeda Cluster