We are seeking a Staff Engineer to implement and contribute to the design and optimization of our Serverless Inference infrastructure and APIs. In this role, you will tackle the challenges of large-scale AI workloads, focusing on throughput, GPU utilization, and fault tolerance to support next-generation inference needs of AI native enterprises.
What You'll Do:- Design and build scalable, multi-tenant services that power AI inference and intelligent routing workloads.
- Strengthen platform resiliency through improved observability, capacity management, automation, and operational tooling.
- Partner closely with platform, GPU infrastructure, and product engineering teams to deliver production-grade systems and highly available APIs.
- Raise the engineering bar through strong software design, operational discipline, incident management, and continuous improvement practices.
- Create leverage for the broader engineering organization through reusable patterns, technical standards, documentation, and coaching.
- Provide technical leadership on projects by breaking down ambiguous problems and guiding engineers toward clear execution plans.
- Support the growth of junior and mid-level engineers through coaching, pairing, and constructive feedback.
- Foster a culture of ownership, accountability, and continuous learning across the team.
- Lead by example in incident response, operational readiness, and production-quality engineering practices.
What You'll Bring:Required - 8+ years of experience building and operating multi-tenant platforms or distributed backend systems
- Strong experience operating high-scale distributed services in production environments
- Deep understanding of SRE principles, including observability, incident management, reliability engineering, capacity planning, and operational automation
- 2+ years of hands-on experience with Go / Golang in production systems
- 2+ years of experience with Kubernetes
- Strong understanding of cloud-native architectures, microservices, and distributed systems fundamentals
- Experience debugging performance, scalability, and reliability issues in production systems
- Observability Proficiency: Experience tracking infrastructure and inference metrics like Time To First Token (TTFT), Time Per Output Token (TPOT), and GPU utilization.
Bonus - AI/ML Framework Knowledge: Understanding of modern LLM serving architectures and familiarity with engines like vLLM or Triton.
- Experience with API gateways, traffic routing, or service mesh technologies
- Familiarity with LLM serving stacks such as vLLM, TensorRT-LLM, or similar technologies
- Experience building systems for inference optimization, rate limiting, routing, or workload orchestration
Compensation Range: *This is a remote role
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