Senior HPC AI Cluster Engineer

Nvidia
yesterday

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior

Job location

Tech stack

Artificial Intelligence
Amazon Web Services (AWS)
Azure
Bash
Ubuntu (Operating System)
CentOS
Nvidia CUDA
Continuous Integration
Dynamic Host Configuration Protocol
Linux
DNS
Ethernet
General Parallel File Systems
General-Purpose Computing on Graphics Processing Units
Hyper-V
InfiniBand
Job Scheduling
Python
Kernel-Based Virtual Machine
Network Protocols
Citrix Systems
Remote Direct Memory Access
Red Hat Enterprise Linux - RHEL
Ansible
Supercomputing
Transmission Control Protocol (TCP)
Workflow Management Systems
Data Logging
Graphics Processing Unit (GPU)
Google Cloud Platform
Cloud Platform System
Delivery Pipeline
Deep Learning
Kubernetes
Infrastructure Automation Frameworks
Storage Technologies
Information Technology
Iptables
Deployment Automation
Bare Metal
Slurm
Puppet
Jenkins
VMware
Microservices

Job description

NVIDIA is looking for an experienced HPC-AI Engineer to join the Networking Clusters Solutions Infrastructure team. we are focused on building supercomputers and AI clusters based on groundbreaking technologies. We are looking for an outstanding engineer, be a key player to the most exciting computing hardware and software to contribute to the latest breakthroughs in artificial intelligence and GPU computing. Provide insights on at-scale system design and tuning mechanisms for large-scale compute runs. You will work with the latest Accelerated computing and Deep Learning software and hardware platforms, and with many scientific researchers, developers, and customers to craft improved workflows and develop new, leading differentiated solutions. You will interact with HPC, OS, GPU compute, and systems specialist to architect, develop and bring up large scale performance platforms.

What you will be doing:

  • Design, implement and maintain large scale HPC/AI clusters with monitoring, logging and alerting
  • Manage Linux job/workload schedules and orchestration tools
  • Develop and maintain continuous integration and delivery pipelines
  • Develop tooling to automate deployment and management of large-scale infrastructure environments, to automate operational monitoring and alerting, and to enable self-service consumption of resources
  • Deploy monitoring solutions for the servers, network and storage
  • Perform troubleshooting bottom up from bare metal, operating system, software stack and application level
  • Being a technical resource, develop, re-define and document standard methodologies to share with internal teams
  • Support Research & Development activities and engage in POCs/POVs for future improvements

Requirements

  • A degree in Computer Science, Engineering, or a related field and 8+ years of experience
  • Knowledge of HPC and AI solution technologies from CPU's and GPU's to high speed interconnects and supporting software
  • Experience with job scheduling workloads and orchestration tools such as Slurm, K8s
  • Excellent knowledge of Windows and Linux (Redhat/CentOS and Ubuntu) networking (sockets, firewalld, iptables, wireshark, etc.) and internals, ACLs and OS level security protection and common protocols e.g. TCP, DHCP, DNS, etc.
  • Experience with multiple storage solutions such as Lustre, GPFS, Weka.io. Familiarity with newer and emerging storage technologies.
  • Python programming and bash scripting experience.
  • Comfortable with automation and configuration management tools such as Jenkins, Ansible, Puppet/chef
  • Deep knowledge of Networking Protocols like InfiniBand, Ethernet
  • Deep understanding and experience with virtual systems (for example VMware, Hyper-V, KVM, or Citrix)
  • Familiarity with cloud computing platforms (e.g. AWS, Azure, Google Cloud)

Ways to stand out from the crowd:

  • Knowledge of CPU and/or GPU architecture
  • Knowledge of Kubernetes, container related microservice technologies
  • Experience with GPU-focused hardware/software (DGX, Cuda)
  • Experience with RDMA (InfiniBand or RoCE) fabrics

Apply for this position