Senior Staff Solutions Engineer (nyc)

Crusoe Crusoe · Data AI · New York, NY - US · CTO Office

Senior Staff Solutions Engineer for Crusoe Cloud, focusing on enabling enterprise customers to deploy and optimize AI/ML workloads on high-performance GPU infrastructure. Requires deep technical expertise in Kubernetes, MLOps, and cloud infrastructure, with a customer-facing role to guide customers through end-to-end deployment and serve as a technical liaison.

What you'd actually do

  1. Lead technical onboarding and deployment of complex AI/ML workloads with strategic enterprise customers—owning the POC through to post-sales optimization.
  2. Architect and deploy ML workloads using Kubernetes-based stacks (e.g., Ray, Kubeflow) Design infrastructure that balances performance, scalability, and efficiency.
  3. Go beyond abstracted services—deploy and optimize AI/ML workloads directly on Crusoe infrastructure. Ensure performance at the container and hardware level.
  4. Help customers migrate and adapt workloads across AWS, Azure, and GCP. Understand and explain the tradeoffs between cloud-native and Crusoe-native approaches.
  5. Conduct workshops, live demos, and solution reviews. Contribute to case studies, solution briefs, and blog posts that highlight real-world customer success.

Skills

Required

  • Kubernetes
  • MLOps
  • cloud infrastructure
  • Kubernetes-based stacks (e.g., Ray, Kubeflow)
  • containerized environments
  • AWS, Azure, or GCP
  • Linux
  • CLI Proficiency

Nice to have

  • Ray
  • Kubeflow
  • distributed ML orchestration platforms
  • Slurm
  • HPC
  • Multi-cloud deployment or migration experience
  • tech talks
  • blogs
  • public case studies

What the JD emphasized

  • deep technical expertise
  • customer-facing role
  • owning the PoC process
  • optimizing workloads post-sale
  • critical technical voice
  • deep technical expertise
  • customer-facing technical confidence
  • navigate stakeholder conversations
  • gather requirements
  • lead technical engagements
  • support customers in both pre- and post-sales environments

Other signals

  • customer-facing role
  • deploying AI/ML workloads
  • Kubernetes, MLOps, cloud infrastructure
  • optimize workloads post-sale
  • technical voice between customers and engineering