What are the responsibilities and job description for the Research Computing GPU Systems Engineer position at Inside Higher Ed?
đBusiness Affairs: University IT (UIT), Stanford, California, United StatesNewđInformation Technology Servicesđ
î¤î¸î1 day ago Post Dateđ
î¤î¸î109145 Requisition #About the Role
Stanford Research Computing seeks an exceptional GPU Cluster Lead Engineer to oversee technical operations, optimization, and strategic development of Marlowe, Stanford's NVIDIA SuperPOD. This role combines deep technical expertise in GPU computing, large-scale cluster management, and leadership in supporting a diverse research community. You will serve as the technical authority on GPU infrastructure, driving system performance and reliability while enabling groundbreaking research in AI/ML, computational biology, physics, and beyond.
Key Responsibilities
System Operations & Management
Stanford University provides pay ranges representing its good faith estimate of the salary or hourly wage the university reasonably expects to pay for a position upon hire. The pay offered to a selected candidate will be determined based on factors such as (but not limited to) the scope and responsibilities of the position, the qualifications of the selected candidate, departmental budget availability, internal equity, geographic location and external market pay for comparable jobs.
At Stanford University, base pay represents only one aspect of the comprehensive rewards package. The Cardinal at Work website (https://cardinalatwork.stanford.edu/benefits-rewards) provides detailed information on Stanfordâs extensive range of benefits and rewards offered to employees. Specifics about the rewards package for this position may be discussed during the hiring process.
The job duties listed are typical examples of work performed by positions in this job classification and are not designed to contain or be interpreted as a comprehensive inventory of all duties, tasks, and responsibilities. Specific duties and responsibilities may vary depending on department or program needs without changing the general nature and scope of the job or level of responsibility. Employees may also perform other duties as assigned.
Consistent with its obligations under the law, the University will provide reasonable accommodations to applicants and employees with disabilities. Applicants requiring a reasonable accommodation for any part of the application or hiring process should contact Stanford University Human Resources by submitting a contact form.
Additional Information
Stanford Research Computing seeks an exceptional GPU Cluster Lead Engineer to oversee technical operations, optimization, and strategic development of Marlowe, Stanford's NVIDIA SuperPOD. This role combines deep technical expertise in GPU computing, large-scale cluster management, and leadership in supporting a diverse research community. You will serve as the technical authority on GPU infrastructure, driving system performance and reliability while enabling groundbreaking research in AI/ML, computational biology, physics, and beyond.
Key Responsibilities
System Operations & Management
- Lead day-to-day operations of the GPU Cluster, ensuring optimal uptime and performance.
- Architect monitoring, alerting, and observability solutions using Prometheus, Grafana, DCGM, and Base Command Manager.
- Manage job scheduling and resource allocation using Slurm, implementing advanced GPU partitioning and configurations.
- Coordinate maintenance windows, system upgrades, and capacity expansions; lead incident response and root cause analyses.
- System storage management, optimization, benchmarking and observability reporting.
- Design performance tuning strategies for GPU utilization, job throughput, and system efficiency.
- Optimize NVIDIA GPU fabric configurations including NVLink, NVSwitch, and InfiniBand RDMA networking.
- Develop containerization strategies using NVIDIA NGC, Docker, and Singularity/Apptainer.
- Engineer solutions for deep learning frameworks (PyTorch, TensorFlow, JAX) and CUDA application optimization.
- Benchmark system performance and collaborate with NVIDIA on optimization programs.
- Serve as primary technical consultant for researchers using GPU-accelerated computing,
- Develop documentation, best practices guides, and training materials; deliver workshops on GPU computing workflows.
- Profile and optimize user workloads, scaling applications from single-GPU to multi-node distributed training.
- Mentor junior engineers and contribute to strategic planning for GPU infrastructure expansion.
- Evaluate emerging GPU technologies and manage vendor relationships with NVIDIA and hardware suppliers.
- Represent SRC in ongoing interactions with the Stanford Data Sciences group on AI/ML infrastructure; participate in on-call rotation.
- Bachelor's degree in Computer Science, Engineering, or related field and ten years of relevant experience or a combination of education and relevant experience.
- 5 years in HPC systems administration or research computing; 3 years managing GPU clusters (NVIDIA A100/H100)
- Expert knowledge of NVIDIA GPU architecture, CUDA, and GPU computing principles (NVLink, MIG, GPUDirect)
- Advanced Linux administration (RHEL, Ubuntu); expertise with Slurm job scheduler
- Experience with high-performance networking (InfiniBand, RoCE) and parallel filesystems (Lustre, GPFS)
- Strong scripting (Python, Bash) and containerization experience (Docker, Singularity, Kubernetes)
- Familiarity with AI/ML frameworks (PyTorch, TensorFlow) and distributed training techniques
- Experience with monitoring tools (Prometheus, Grafana) and NVIDIA DCGM
- Experience with Base Command Manager or Bright Cluster Manager
- Background in academic research computing or national lab environments
- Contributions to open-source HPC or GPU computing projects
- Knowledge of MLOps practices and GPU virtualization (vGPU, MIG)
- Technical leadership
- Creative problem-solving
- Excellent communication with technical and non-technical audiences
- Strong collaboration skills
- Service-oriented mindset
- Adaptability to rapidly evolving technology
- Work with cutting-edge NVIDIA GPU technology enabling groundbreaking research
- Professional development opportunities
- Collaborative environment with talented engineers and researchers
- Comprehensive Stanford benefits package including health, dental, retirement, and education benefits
- Flexible work arrangements
- Constantly perform desk-based computer tasks.
- Frequently sit, grasp lightly/fine manipulation.
- Occasionally stand/walk, writing by hand.
- Rarely use a telephone, lift/carry/push/pull objects that weigh up to 10 pounds.
- Consistent with its obligations under the law, the University will provide reasonable accommodations to applicants and employees with disabilities. Applicants requiring a reasonable accommodation for any part of the application or hiring process should contact Stanford University Human Resources by submitting a contact form.
- May work extended hours, evenings, and weekends.
- Interpersonal Skills: Demonstrates the ability to work well with Stanford colleagues and clients and with external organizations.
- Promote Culture of Safety: Demonstrates commitment to personal responsibility and value for safety; communicates safety concerns; uses and promotes safe behaviors based on training and lessons learned.
- Subject to and expected to stay in sync with all applicable University policies and procedures, including but not limited to the personnel policies and other policies found in Stanford's Administrative Guide, http://adminguide.stanford.edu.
Stanford University provides pay ranges representing its good faith estimate of the salary or hourly wage the university reasonably expects to pay for a position upon hire. The pay offered to a selected candidate will be determined based on factors such as (but not limited to) the scope and responsibilities of the position, the qualifications of the selected candidate, departmental budget availability, internal equity, geographic location and external market pay for comparable jobs.
At Stanford University, base pay represents only one aspect of the comprehensive rewards package. The Cardinal at Work website (https://cardinalatwork.stanford.edu/benefits-rewards) provides detailed information on Stanfordâs extensive range of benefits and rewards offered to employees. Specifics about the rewards package for this position may be discussed during the hiring process.
The job duties listed are typical examples of work performed by positions in this job classification and are not designed to contain or be interpreted as a comprehensive inventory of all duties, tasks, and responsibilities. Specific duties and responsibilities may vary depending on department or program needs without changing the general nature and scope of the job or level of responsibility. Employees may also perform other duties as assigned.
Consistent with its obligations under the law, the University will provide reasonable accommodations to applicants and employees with disabilities. Applicants requiring a reasonable accommodation for any part of the application or hiring process should contact Stanford University Human Resources by submitting a contact form.
Additional Information
- Schedule: Full-time
- Job Code: 4834
- Employee Status: Regular
- Grade: L
- Requisition ID: 109145
- Work Arrangement : Hybrid Eligible
Salary : $190,577 - $200,000