Lead and grow the storage engineering team responsible for Runpod’s global distributed storage infrastructure optimized for large-scale AI and HPC workloads. Requires 8+ years large-scale storage experience plus 3+ years of people management, deep expertise with VAST Data, Lustre, NFS/RDMA, and Linux systems.
150k – 240k
Remote8+ YOEEngineering Management
About the role
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
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 environments.
Experience with Lustre or comparable HPC filesystems (e.g., GPFS, BeeGFS) supporting high-concurrency workloads.
Deep understanding of NAND, NVMe, PCIe, storage controllers, and performance characteristics across the stack.
Proven experience with NFS over RDMA, RDMA-capable transports, or similar technologies. Familiarity with GPU Direct Storage strongly preferred.
Strong Linux internals knowledge, including filesystems, I/O scheduling, memory management, and tuning for performance workloads.
Experience running 24/7 storage platforms with strong incident response, change management, and post-mortem discipline.
Ability to clearly communicate complex technical tradeoffs and lead teams through high-stakes infrastructure decisions.
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.
Compensation & Benefits
Competitive base pay ranges from $150,000 - $240,000 USD (may be narrowed based on experience, qualifications, and location).
Meaningful equity in a fast-growing company (stock options for everyone).
Generous medical, dental & vision plans.
Flexible PTO.
Remote-first work with collaborative team.
Skills
Storage ArchitectureVast DataLustreNfsSanRdmaGpu Direct StorageLinux InternalsHpc FilesystemsNvmeNandDistributed Storage
Leads team designing high-performance structural components for autonomous aircraft, ensuring integrity, manufacturability, and integration. Requires 8+ years in aerospace structures, CAD proficiency, and team leadership experience.
150k – 220k
On-site8+ YOEEngineering Management
Engineering Manager
ModernFiNew York, NY
Leads and mentors engineering team to deliver high-impact fintech features, owns code delivery, establishes best practices, and scales organization in fast-paced startup. Requires 6+ years engineering with 2+ in leadership and strong full-stack technical skills.
150k – 240k
On-site6+ YOEEngineering Management
Senior Lead Engineer, Code Generation
MongoDBCalifornia +2
Leads engineering team developing GenAI code generation tools to modernize legacy apps into MongoDB-powered microservices. Requires 10+ years experience in platforms, databases (SQL/NoSQL), 2+ years leadership, and enterprise analytics systems.
151k – 297k
Hybrid10+ YOEEngineering Management
AI Platform Architect Manager
NotableSan Mateo, CA
Lead and mentor a team of AI Platform Architects delivering intelligent healthcare workflows. Hands-on player-coach role focused on technical excellence, customer implementations, and cross-functional collaboration.
148k – 185k
Hybrid8+ YOEEngineering Management
Engineering Manager, Data Foundations
GitLabUnited States
Manage and grow a high-performing engineering team building GitLab's Data Insights Platform and classic search capabilities. Drive architecture for high-throughput distributed data systems across multiple deployment models while hiring, coaching, and delivering roadmap outcomes.