职位描述
该职位还未进行加V认证,请仔细了解后再进行投递!
Position Overview
We are seeking an experienced Infrastructure Engineer to architect and manage our AI computing infrastructure. The ideal candidate will have extensive experience in building and scaling ML infrastructure, with particular emphasis on distributed training systems and GPU cluster management.
Key Responsibilities
Design and implement high-performance computing infrastructure for large-scale AI model training
Manage and optimize GPU clusters for distributed training workloads
Build and maintain container orchestration systems for ML workflows
Implement efficient resource allocation and scheduling systems
Design and maintain monitoring and alerting systems for compute infrastructure
Optimize infrastructure costs while maintaining performance
Collaborate with ML teams to support their computing needs
Ensure system reliability, security, and scalability
Required Qualifications
Master's degree in Computer Science, Systems Engineering, or related field
8+ years of experience in infrastructure engineering, with focus on ML/AI infrastructure
Strong experience with:
GPU cluster management and optimization
Kubernetes and container orchestration
Linux system administration
Infrastructure as Code (IaC)
Proven track record in building large-scale computing systems
Experience with major cloud providers (AWS/GCP/Azure or Alibaba Cloud/Tencent Cloud etc)
Preferred Qualifications
Experience with ML infrastructure at major tech companies
Knowledge of distributed training systems (PyTorch DDP, Horovod)
Familiarity with ML frameworks and their infrastructure requirements
Experience with high-performance networking (InfiniBand, RDMA)
Background in performance optimization and troubleshooting
Understanding of ML workload characteristics
Bilingual proficiency (English/Chinese)
Technical Skills
Computing Infrastructure
GPU Clusters: NVIDIA DGX, GPU management tools
Distributed Systems: Slurm, Kubernetes
ML Platforms: Kubeflow, Ray
Job Scheduling: YARN, Slurm
Cloud & Networking
Cloud Platforms:
International: AWS, GCP, Azure
China: Alibaba Cloud, Tencent Cloud
Networking: InfiniBand, RDMA, TCP/IP optimization
Load Balancing: HAProxy, NGINX
Infrastructure Management
Container Technologies: Docker, Kubernetes, Singularity
IaC: Terraform, Ansible, CloudFormation
CI/CD: Jenkins, GitLab CI
Monitoring: Prometheus, Grafana, ELK Stack
Development
Languages: Python, Go, Shell scripting
Version Control: Git
Documentation: Markdown, Confluence
What We Offer
Opportunity to build cutting-edge AI infrastructure
Competitive salary and equity package
Access to latest hardware and technologies
Professional development opportunities
Comprehensive health benefits
Learning and conference budget
Location
Hong Kong (on-site, Hong Kong Science and Technology Park)
Expected Impact
Design and implement next-generation AI computing infrastructure
Optimize resource utilization and cost efficiency
Improve training speed and efficiency for AI models
Build scalable and reliable systems
Projects You'll Work On
Building automated GPU cluster management systems
Implementing efficient resource scheduling for ML workloads
Optimizing distributed training infrastructure
Setting up monitoring and observability systems
Designing disaster recovery and backup solutions
工作地点
地址:香港香港香港沙田区香港科学园10W栋317-318
求职提示:用人单位发布虚假招聘信息,或以任何名义向求职者收取财物(如体检费、置装费、押金、服装费、培训费、身份证、毕业证等),均涉嫌违法,请求职者务必提高警惕。
职位发布者
张先生HR
Video Rebirth Limited
- 计算机软件
- 11-20人
- 外商独资·外企办事处
- 香港科学园10W栋317-318