Manager, HPC Storage Engineer

· Remote

Location

Remote

Type

Full Time

Job Description

Manager HPC Storage Engineer

Reposted 5 Hours Ago
Easy Apply
Hiring Remotely in USA
Remote
150K-240K Annually
Senior level
Artificial Intelligence • Cloud • Software • Infrastructure as a Service (IaaS)
To create a foundational platform for developers to build and run custom AI systems that scale.
The Role
Lead the storage engineering team at Runpod focusing on distributed storage infrastructure including SAN and NFS systems for AI workloads. Manage performance reliability and scalability while collaborating cross-functionally. Drive innovation in storage technologies and oversee operational excellence.
Summary Generated by Built In

Runpod is pioneering the future of AI and machine learning offering cutting-edge cloud infrastructure for full‑stack AI applications. Founded in 2022 we are a rapidly growing well‑funded remote‑first company with a global team across the US Canada and Europe. Our mission is to create a foundational platform that enables developers and companies to build deploy and scale custom AI systems with speed and flexibility.

As AI workloads continue to push the limits of throughput latency and parallelism Runpod is investing heavily in next-generation storage architectures purpose-built for GPU-centric compute.

We are looking for an Engineering Manager Datacenter Storage Engineering to lead the team responsible for Runpod’s distributed storage infrastructure across all regions. This role owns the end-to-end storage stack — from NAND and NVMe devices through filesystems transport protocols and cluster-level deployment — ensuring performance reliability and scalability for AI workloads.

You will manage engineers designing and operating large-scale SAN and NFS-based systems including high-performance shared filesystems for training workloads. This role requires deep technical fluency and architectural leadership combined with strong people management and operational discipline.

Responsibilities
  • Own Distributed Storage Architecture: Define evolve and operate Runpod’s global storage platforms supporting training inference checkpointing and dataset access at scale.
  • Build the Storage Engineering Team: Manage and grow a team of storage and systems engineers. Set clear ownership technical direction and operational standards across regions.
  • High-Performance Shared Filesystems: Design and operate large-scale SAN and NFS deployments including performance-sensitive shared storage for GPU clusters.=
  • Advanced Filesystems & Platforms: Lead deployments and operations of VAST Data and experience with Lustre or similar parallel filesystems used in HPC and AI environments.
  • End-to-End Performance Ownership: Drive performance optimization from NAND and NVMe media through controllers networking and client access patterns.
  • Next-Generation Storage Technologies: Evaluate and deploy cutting-edge capabilities such as NFS over RDMA GPU Direct Storage (GDS) and low-latency data paths for accelerated workloads.
  • Reliability & Scale: Establish best practices for replication data tiering data protection failure recovery capacity planning and lifecycle management.
  • Automation & Observability: Build automation for provisioning expansion upgrades and monitoring. Ensure deep observability into throughput latency and error characteristics.
  • Cross-Functional Collaboration: Partner with Datacenter Networking GPU Platform SRE and Product teams to ensure storage systems meet evolving workload and customer needs.
  • Vendor & Partner Management: Own technical relationships with storage vendors hardware partners and colocation providers; drive roadmap alignment and issue resolution.
Requirements
  • Engineering Leadership Experience: 3+ years managing storage systems or infrastructure engineering teams in production environments.
  • Distributed Storage Expertise: 8+ years designing and operating large-scale storage systems including SAN and NFS architectures at multi-petabyte scale.
  • VAST Data Experience: Hands-on experience deploying operating or deeply integrating VAST Data in production environments is required.
  • Parallel Filesystems: Experience with Lustre or comparable HPC filesystems (e.g. GPFS BeeGFS) supporting high-concurrency workloads.
  • Low-Level Storage Knowledge: Deep understanding of NAND NVMe PCIe storage controllers and performance characteristics across the stack.
  • High-Performance Data Paths: Proven experience with NFS over RDMA RDMA-capable transports or similar technologies. Familiarity with GPU Direct Storage strongly preferred.
  • Linux Systems Expertise: Strong Linux internals knowledge including filesystems I/O scheduling memory management and tuning for performance workloads.
  • Operational Excellence: Experience running 24/7 storage platforms with strong incident response change management and post-mortem discipline.
  • Communication & Leadership: Ability to clearly communicate complex technical tradeoffs and lead teams through high-stakes infrastructure decisions.
  • Successful completion of a background check.
Preferred Qualifications
  • Experience supporting AI training pipelines large-scale model checkpointing and dataset streaming workloads.
  • Familiarity with RDMA fabrics and close collaboration with datacenter networking teams.
  • Experience designing storage systems for multi-tenant isolation and secure data access.
  • Background in hyperscale HPC or AI-focused infrastructure environments.
  • Experience building internal storage platforms or abstractions consumed by product teams.

What You’ll Receive:

  • The competitive base pay for this position ranges from $150000 - $240000 USD. This salary range may be inclusive of several career levels at Runpod and will be narrowed during the interview process based on a number of factors including the candidate’s experience qualifications and location
  • Meaningful equity in a fast-growing company- everyone on the team receives stock options — your impact drives our growth and you share in the upside.
  • Generous medical dental & vision plans — we cover 100% for all employees and partial for dependents. 
  • Flexible PTO- take the time you need to recharge
  • Most roles are remote work first with an inclusive collaborative teams utilizing slack as the main form of internal communication 
  • Join a passionate team on the cutting edge of AI infrastructure — where culture learning and ownership are at the heart of how we scale.

Top Skills

Gpu Direct Storage
Linux
Lustre
Nand
Nfs
Nvme
Pcie
Rdma
San
Vast Data

What the Team is Saying

Jamie Ilario
Max Forsey
Jacob Wright
Am I A Good Fit?
beta
Expert contributor network
Get Personalized Job Insights.
Our AI-powered fit analysis compares your resume with a job listing so you know if your skills & experience align.

The Company
San Francisco California
80 Employees
Year Founded: 2022

What We Do

Runpod is pioneering the future of AI and machine learning offering cutting-edge cloud infrastructure for full-stack AI applications. Founded in 2022 we are a rapidly growing well-funded company with a remote-first organization spread globally. Our mission is to empower innovators and enterprises to unlock AI's true potential driving technology and transforming industries. Join us as we shape the future of AI. We are building Cloud services focused on accelerating AI adoption. Whether you're an experienced ML developer training a large language model or an enthusiast tinkering with stable diffusion we strive to make GPU compute as seamless and affordable as possible.

Why Work With Us

Our Guiding Virtues Give a sh*t - We want to work with people who care - about our customers and about each other. Look in the mirror - We deeply reflect on our own actions and seek to better ourselves. Courage over comfort - We tackle hard truths and tough situations directly even when it makes us uncomfortable.

Gallery

Runpod Offices

Remote Workspace

Employees work remotely.

We’re remote-first offering flexibility with virtual tools for collaboration. For those nearby we have coworking spaces in SF and Seattle. Enjoy the choice of office or remote work with a focus on flexibility and work-life balance

Typical time on-site: None
San Francisco California
Company Office Image
Seattle WA
Learn more

Similar Jobs

Runpod

Security Engineer

Artificial Intelligence • Cloud • Software • Infrastructure as a Service (IaaS)
Easy Apply
Remote
USA
80 Employees
152K-175K Annually

Runpod

Senior Software Engineer

Artificial Intelligence • Cloud • Software • Infrastructure as a Service (IaaS)
Easy Apply
Remote
USA
80 Employees
150K-200K Annually

Runpod

Manager Datacenter Network Engineering

Artificial Intelligence • Cloud • Software • Infrastructure as a Service (IaaS)
Easy Apply
Remote
USA
80 Employees
150K-240K Annually

Runpod

Marketing Manager

Artificial Intelligence • Cloud • Software • Infrastructure as a Service (IaaS)
Easy Apply
Remote
USA
80 Employees
110K-140K Annually
Apply Now

Date Posted

04/16/2026

Views

0

Back to Job Listings Add To Job List Company Profile View Company Reviews
Neutral
Subjectivity Score: 0

Similar Jobs

© 2026 Job Transparency. All rights reserved.