jobs in AIM Global Talent

全职 AI Infra Platform Engineer 工作, 薪水, AIM Global Talent 公司招聘中 - Ricebowl

AI Infra Platform Engineer

AIM Global Talent

Undisclosed

Singapore

分享
保存

工作地点

  • Singapore

职位描述

岗位职责

About the Opportunity

Our client is a fast-growing AI research and technology company building reasoning-first, agentic AI systems, with a footprint spanning the US and Asia. The team is behind several widely adopted open-source research agents that have posted top-tier results on industry benchmarks, and is led by scientific leadership with backgrounds spanning top US universities and frontier AI labs. Backed by a serial entrepreneur with a track record of building category-defining tech companies, the company is now scaling its compute infrastructure to support next-generation training and inference workloads at massive scale.


The Role

Build and evolve the core infrastructure layer for large-scale AI training and inference on 10,000+ GPU clusters — Kubernetes scheduling, storage, networking, and reliability engineering that makes massive shared compute efficient, reliable, and easy to operate for research and engineering teams.


What You'll Do

  • Build and evolve Kubernetes-based GPU cluster infrastructure for large-scale AI training & inference
  • Design and operate multi-tenant resource management: queue isolation, priority, quotas, preemption, batch orchestration, elastic resource allocation
  • Improve deployment efficiency, workload stability, and overall GPU utilization across large shared clusters
  • Manage high-performance storage for training data, checkpoints, and model artifacts — lifecycle management, access control, cost optimization
  • Analyze & optimize networking and communication paths: RDMA, NCCL, bandwidth bottlenecks, cluster topology, cross-node communication efficiency
  • Build cluster-level observability: logging, monitoring, alerting, and diagnostics
  • Drive automation for cluster delivery, rollout, configuration management, fault handling, and day-2 operations
  • Partner with training, inference, model, and platform teams to continuously improve the workload experience


What We're Looking For

  • 5+ years in cloud-native infrastructure, distributed systems, ML platform engineering, or AI infrastructure
  • Strong hands-on Kubernetes experience: container orchestration, cluster operations, scheduling, GPU resource management
  • Solid understanding of large-scale GPU infrastructure challenges: scheduling, deployment, networking, storage, observability, reliability
  • Familiarity with distributed workload communication in training/inference — RDMA, NCCL, topology-aware optimization, or high-performance networking is a strong plus
  • Strong Linux, container runtime, and node-level systems fundamentals
  • Proficiency in at least one of Go, Python, or C++
  • Strong execution and cross-functional collaboration skills


Nice to Have

  • Production experience operating clusters at 1,000+ GPU scale
  • Experience with Volcano, Kueue, or Kubernetes scheduler extensions
  • Familiarity with InfiniBand, RoCE, EFA, NVLink, or GPUDirect
  • Experience with distributed storage, high-throughput data access, checkpoint management, or object storage governance
  • Experience with observability stacks: Prometheus, Grafana, Loki/ELK, DCGM Exporter
  • Experience with multi-cloud or hybrid-cloud AI infrastructure


AIM Global Talent Pte. Ltd. | EA Licence No. 25C3207

重要安全守则

申请工作时,切勿提供您的银行或信用卡详细资料。不要转账或完成无关的在线调查问卷。如果您发现可疑内容,请举报此招聘广告。

了解更多