Back to search
Harrison Clarke Linkedin · Posted 16d ago

Platform Engineer

San Francisco, CA, United States

Linkedin
Continue to application Add your email once, then Caio opens the original posting.

Indexed description

Our client, an early-stage company building advanced AI systems, is seeking a senior platform engineer to take ownership of their core platform. This is not a traditional DevOps position focused purely on CI/CD, the role spans GPU orchestration, multi-cloud Kubernetes environments, real-time networking, and observability.


The company is already running production workloads across multiple clusters, regions, and hardware types, and is actively expanding into additional cloud providers. This hire will play a key role in scaling and stabilizing that infrastructure.


Key Responsibilities

  • Design and manage multi-region Kubernetes clusters across cloud and GPU-focused providers using infrastructure-as-code
  • Own the deployment lifecycle through GitOps practices (Helm, Kustomize, automated releases, continuous delivery)
  • Manage GPU infrastructure, including scheduling efficiency, workload placement, and cold-start optimization
  • Oversee networking systems such as ingress, gateways, load balancing, and cross-region connectivity
  • Build and maintain observability across metrics, logs, traces, and performance profiling
  • Ensure infrastructure security across identity, secrets, and encryption
  • Maintain CI/CD workflows supporting a monorepo of services and deployment artifacts
  • Partner closely with ML engineers to optimize model serving and GPU utilization


Candidate Profile

  • Strong experience operating Kubernetes in production environments, including troubleshooting, autoscaling, and upgrades
  • Proven background with infrastructure-as-code tools (e.g., Terraform, Pulumi)
  • Hands-on experience running GPU workloads on Kubernetes and understanding resource optimization
  • Familiarity with GitOps tooling such as ArgoCD or Flux, and Helm-based deployments
  • Experience with in-memory data systems (e.g., Redis) and distributed architectures
  • Solid understanding of observability tooling and practices
  • Strong networking fundamentals, particularly in low-latency or distributed systems
  • Experience working in environments with broad ownership across infrastructure


Preferred Background

  • Exposure to GPU cloud providers beyond major hyperscalers
  • Experience with real-time or streaming infrastructure
  • Proficiency in Go or Python
  • Familiarity with ML model deployment and optimization
  • Experience managing infrastructure cost, particularly for GPU-heavy workloads
Free. 20 seconds. No password. See every match in this search.

Create a free Caio profile to unlock more results and save your role and location preferences.

Unlock free search
Want help applying to roles like this? Search Caio for free. If CV tailoring and application tracking get heavy, Full Caio Agent adds a human specialist.
View Full Agent