AI Infrastructure Engineer

BNY Mellon

$100K — $130K *
Enterprise Technology
8 - 10 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor’s degree in computer science or related field; advanced degree preferred
  • 8-10 years of experience in related roles; experience in financial services is a plus
  • Proficient in Linux administration (RHEL/Ubuntu) and shell scripting
  • Experience with Kubernetes and Docker in containerized settings
  • Familiar with GPU resource management and NVIDIA GPU tools
  • Knowledgeable about CI/CD processes and infrastructure automation tools
  • Exposure to cloud platforms (AWS, GCP, Azure) and hybrid environments

Responsibilities

  • Support enterprise-grade NVIDIA AI infrastructure, focusing on GPU compute and high-performance storage
  • Deploy and monitor containerized AI workloads using Kubernetes and Docker tools
  • Own observability for AI platforms, monitoring performance and reliability
  • Automate infrastructure operations and provisioning utilizing Python, Bash, and Terraform
  • Scale AI training/inference pipelines, integrating workflows into CI/CD systems
  • Troubleshoot and resolve issues within the AI workload environment

Benefits

  • Flexible working location options (Lake Mary, FL or Pittsburgh, PA)
  • Opportunities for hands-on work with cutting-edge AI technology
  • Collaborative environment focused on innovative AI solutions
  • Potential for involvement in high-performance computing at scale
  • Development opportunities in a financial sector context
Full Job Description
AI Infrastructure Engineer

We9re seeking a future team member for the role of AI Infrastructure Engineer to join our Technology team. This role is located in Lake Mary, FL or Pittsburgh, PA

In this role, you9ll make an impact in the following ways:
  • Be hands-on with enterprise-grade NVIDIA AI infrastructure, supporting GPU-based compute, high-performance storage, and network systems designed for ML/AI at scale.
  • Deploy, monitor, and troubleshoot containerized AI workloads using Kubernetes, Docker, and GPU orchestration tools like Run:AI and NVIDIA BCM.
  • Own the observability of our AI platforms-monitor health, identify performance bottlenecks, and make strategic recommendations to drive platform reliability and maturity.
  • Automate infrastructure operations and provisioning using Python, Bash, and tools like Terraform or Ansible to reduce manual toil and accelerate experimentation.
  • Maintain and scale AI training and inference pipelines, integrating infrastructure workflows into CI/CD systems to enable seamless, automated deployment of AI workloads.
  • Working knowledge of NVIDIA, RunAI Software

To be successful in this role, we9re seeking the following:
  • Bachelor9s degree in computer science or a related discipline, or equivalent work experience required; advanced degree preferred8-10 years of related experience required; experience in the securities or financial services industry is a plus.
  • Experience with Linux administration (RHEL/Ubuntu), shell scripting, and system-level debugging.
  • Proven experience running distributed systems in Kubernetes and containerized environments using Docker.
  • Familiarity with GPU resource management, including NVIDIA GPU Operator and device plugin lifecycle.
  • Experience with CI/CD workflows and infrastructure automation tools such as GitLab CI, Jenkins, Terraform, Helm, or Ansible.
  • Knowledge of networking fundamentals and persistent storage systems.
  • Exposure to cloud platforms (AWS, GCP, Azure) and hybrid GPU environments.
  • Ability to read and support Python code focused on ML/AI pipeline integration.
  • Strong analytical and troubleshooting skills with a collaborative mindset.
  • Effective communication skills and proactive ownership of platform reliability and performance.

Similar Jobs

More Jobs at BNY Mellon

More Enterprise Technology Jobs

Find similar AI Infrastructure Engineer jobs: