AI Infrastructure Engineer at Hydra Host

Hydra Host

$120K — $150K *
US-AnywhereRemote in United States
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • In-depth experience with bare metal Linux, including driver stacks, kernel tuning, and storage configuration.
  • Expertise in NVIDIA GPU stack components such as drivers, CUDA, NCCL, and NVLink.
  • Production experience with orchestration tools like Kubernetes and SLURM, capable of standing up clusters.
  • Strong fundamentals in AI networking, including TCP/IP, VLANs, and high-speed interconnects like InfiniBand.
  • Ability to communicate effectively with customers, translating technical constraints into actionable requirements.
  • Proactive approach, favoring scalable solutions over bespoke deployments.

Responsibilities

  • Prepare AI platform customers for production on Hydra by setting up Kubernetes clusters and troubleshooting issues.
  • Bridge GPU infrastructure with orchestration layers and MLOps tooling for optimized performance.
  • Configure and benchmark NVIDIA driver stacks, ensuring compatibility and performance for workloads.
  • Proactively test Hydra's infrastructure and workflows to identify and resolve potential gaps before customer discovery.
  • Collaborate with Product and Engineering to translate customer insights into product features and automation.
  • Advise customers on GPU selection and tokenomics to improve price/performance efficiency.

Benefits

  • Competitive salary with transparency in compensation.
  • Equity ownership offering a meaningful stake in the company's success.
  • Comprehensive healthcare coverage, including medical, dental, and vision for employees and their families.
  • Remote-first work culture with hubs located in Phoenix, Boulder, and Miami.
  • Direct impact on the deployment of GPU infrastructure within the AI ecosystem.
Full Job Description
The Role

AI platform companies need more than raw GPU capacity. They need bare metal that's ready for their stack-Kubernetes clusters configured for multi-node inference, NVIDIA drivers tuned for their workloads, SLURM environments that work out of the box. Today, getting there requires white-glove onboarding. Your job is to change that.

As an AI Infrastructure Engineer, you'll work directly with AI platform customers to get their infrastructure running on Hydra. Work with platform partners (e.g., Northflank, Rafay, vCluster) to build reference deployments that provision through our API. You'll learn what breaks, what's missing, and what's harder than it should be-then work with Product and Engineering to turn those learnings into capabilities that ship in Brokkr, our core product. The goal is to move from bespoke deployments to fully automated onboarding at scale.

What You'll Do
  • Get AI Platform customers production-ready on Hydra -standing up Kubernetes clusters, configuring GPU drivers, validating networking, and troubleshooting the issues that surface when real workloads hit real hardware.
  • Own the bare metal 12 platform layer -bridging GPU infrastructure (NCCL, InfiniBand, NVLink, storage) with orchestration layers (Kubernetes, SLURM) and MLOps tooling that customers actually use.
  • Configure, benchmark, and debug NVIDIA driver stacks -firmware versions, CUDA compatibility, NCCL tuning, MIG configurations. Run quality benchmarks and diagnostics to validate performance for inference and training workloads across chip types.
  • Identify gaps before customers do-pressure-testing Hydra's infrastructure, APIs, and workflows to find what's missing or broken.
  • Turn customer learnings into product -working with Product and Engineering to build reusable templates, default configurations, and automated workflows that eliminate manual onboarding.
  • Advise customers on chip selection and tokenomics -helping AI platform customers understand price/performance trade-offs across GPU types, cost-per-token economics, and which hardware fits their inference or training workloads.
What We're Looking For

Required
  • Bare metal Linux depth -you've administered GPU servers at the metal: driver stacks, kernel tuning, firmware, storage configuration. Not just managed K8s.
  • NVIDIA GPU stack expertise -drivers, CUDA, NCCL, NVLink, nvidia-smi profiling. You understand how stack compatibility affects performance.
  • Kubernetes and orchestration -production experience with K8s, SLURM, or similar. You know how to stand up clusters, not just deploy to them.
  • AI Networking fundamentals -TCP/IP, VLANs, bonding, and high-speed interconnects (InfiniBand, RoCE) for distributed workloads.
  • Customer-facing communication -you can work directly with engineers at AI platform companies, understand their constraints, and translate that into clear requirements for your team.
  • Bias toward scalable solutions - you'd rather build a feature that helps 10 customers than a custom deployment that helps 1


Nice to Have
  • HPC or large-scale distributed training environments
  • AI workload experience (vLLM, PyTorch, inference frameworks)
  • Storage systems (NVMe, distributed filesystems, CEPH, WEKA)
  • IaC and provisioning tools (Terraform, Ansible, Cloud-init, MaaS)
Why This Role

You'll work at the seam between bare metal and the orchestration layers AI teams actually use. You'll define what it means to be production-ready for our AI Platform customers. Every customer engagement sharpens your understanding of what needs to be built-and you'll have direct influence over Hydra's product roadmap to make it happen.
  • Competitive salary - we pay fairly and transparently
  • Equity ownership - meaningful stake in what we're building
  • Healthcare - medical, dental, vision for you and your family
  • Remote-first - with hubs in Phoenix, Boulder, and Miami
  • Direct impact - your work shapes how GPU infrastructure gets deployed across the AI ecosystem

Similar Jobs

More Jobs at Hydra Host

More Information Technology Jobs

Find similar AI Infrastructure Engineer at Hydra Host jobs: