Runpod is looking for an Engineering Manager, Datacenter Storage Engineering to lead the team behind its global, GPU-centric distributed storage infrastructure, owning the full stack from NAND/NVMe devices through filesystems to cluster-level deployment.
Responsibilities
- ▹Define, evolve, and operate Runpod's global storage platforms, supporting training, inference, checkpointing, and dataset access at scale
- ▹Build and manage a team of storage and systems engineers, setting clear ownership and technical direction
- ▹Design and operate large-scale SAN and NFS deployments, including performance-sensitive shared storage for GPU clusters
- ▹Lead deployments and operations of VAST Data and Lustre or similar parallel filesystems
- ▹Drive end-to-end performance optimization from NAND/NVMe media through controllers, networking, and client access patterns
- ▹Evaluate and deploy next-generation storage technologies such as NFS over RDMA and GPU Direct Storage
- ▹Establish best practices for replication, data tiering, data protection, failure recovery, and capacity planning
- ▹Build automation and observability for provisioning, expansion, upgrades, and monitoring
- ▹Collaborate with Datacenter Networking, GPU Platform, SRE, and Product teams
- ▹Own technical relationships with storage vendors, hardware partners, and colocation providers
Requirements
- ▹3+ years managing storage, systems, or infrastructure engineering teams in production environments
- ▹8+ years designing and operating large-scale storage systems, including SAN and NFS architectures at multi-petabyte scale
- ▹Hands-on experience deploying, operating, or deeply integrating VAST Data in production
- ▹Experience with Lustre or comparable HPC filesystems (e.g., GPFS, BeeGFS) supporting high-concurrency workloads
- ▹Deep understanding of NAND, NVMe, PCIe, and storage controller performance characteristics
- ▹Proven experience with NFS over RDMA or RDMA-capable transports; familiarity with GPU Direct Storage strongly preferred
- ▹Strong Linux internals knowledge: filesystems, I/O scheduling, memory management, and performance tuning
- ▹Experience running 24/7 storage platforms with strong incident response and change management discipline
- ▹Ability to clearly communicate complex technical tradeoffs and lead teams through high-stakes decisions
- ▹Successful completion of a background check
Nice to have
- ▹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
Soft skills
Leadership and architectural thinkingAbility to clearly communicate complex technical tradeoffsLeading teams through high-stakes infrastructure decisionsCross-functional collaboration
What we offer
- ▹Competitive base pay of $150,000-$240,000 USD depending on experience and location
- ▹Meaningful equity in a fast-growing company
- ▹Generous medical, dental & vision plans
- ▹Flexible PTO
- ▹Remote-first role with Slack as the main internal communication channel
About the company
Founded in 2022, Runpod is a fast-growing, well-funded, remote-first company providing cloud infrastructure for full-stack AI applications, with a team spread across the US, Canada, and Europe.
Ähnliche Stellen
Stelle
Senior/Staff Embedded Software Engineer - Camera Systems
Skydio
AI/ML
12 470–20 286 €/Mon.
brutto
🏢 Vor Ort
🇺🇸 San Mateo
🗣️ EN

Stelle
Lead Member of Technical Staff, Inference Infrastructure
Cohere
AI/ML
+2
💰 Gehalt: keine Angabe
🌍 Remote
🇺🇸 San Francisco
🗣️ EN

Stelle
Senior Site Reliability Engineer - SDN
Lambda
AI/ML
+4
💰 Gehalt: keine Angabe
🌍 Remote
🇺🇸 San Francisco Office (Fremont St)
🗣️ EN

Stelle
Senior Software Engineer - Infrastructure Storage
Lambda
AI/ML
💰 Gehalt: keine Angabe
🌍 Remote
🇺🇸 San Francisco Office (Fremont St)
🗣️ EN

Stelle
Senior Network Engineer
Lambda
AI/ML
+5
💰 Gehalt: keine Angabe
🌍 Remote
🇺🇸 San Francisco Office (Fremont St)
🗣️ EN

Stelle
Senior Software Engineer - Fleet
Lambda
AI/ML
💰 Gehalt: keine Angabe
🌍 Remote
🇺🇸 San Francisco Office (Fremont St)
🗣️ EN
