Himalayas logo
LambdaLA

Storage Engineering Manager

Lambda Labs is an AI infrastructure company providing GPU cloud services, servers, and workstations designed to accelerate deep learning and machine learning processes.

Lambda

Employee count: 201-500

Salary: 330k-495k USD

United States only

Lambda is the #1 GPU Cloud for ML/AI teams training, fine-tuning and inferencing AI models, where engineers can easily, securely and affordably build, test and deploy AI products at scale. Lambda’s product portfolio includes on-prem GPU systems, hosted GPUs across public & private clouds and managed inference services – servicing government, researchers, startups and Enterprises world-wide.

If you'd like to build the world's best deep learning cloud, join us.

*Note: This position requires presence in our San Jose office location 4 days per week; Lambda’s designated work from home day is currently Tuesday.

Engineering at Lambda is responsible for building and scaling our cloud offering. Our scope includes the Lambda website, cloud APIs and systems as well as internal tooling for system deployment, management and maintenance.

In the world of distributed AI, raw GPU and CPU horsepower is just a part of the story. High-performance networking and storage are the critical components that enable and unite these systems, making groundbreaking AI training and inference possible.

The Lambda Infrastructure Engineering organization forges the foundation of high-performance AI clusters by welding together the latest in AI storage, networking, GPU and CPU hardware.

Our expertise lies at the intersection of:

  • High-Performance Distributed Storage Solutions and Protocols: We engineer the protocols and systems that serve massive datasets at the speeds demanded by modern clustered GPUs.

  • Dynamic Networking: We design advanced networks that provide multi-tenant security and intelligent routing without compromising performance, using the latest in AI networking hardware.

  • Compute Virtualization: We enable cutting-edge virtualization and clustering that allows AI researchers and engineers to focus on AI workloads, not AI infrastructure, unleashing the full compute bandwidth of clustered GPUs.

About the Role:

We are seeking a seasoned Storage Engineering Manager with experience in the specification, evaluation, deployment, and management of HPC storage solutions across multiple datacenters to build out a world-class team. You will hire and guide a team of storage engineers in building storage infrastructure that serves our AI/ML infrastructure products, ensuring the seamless deployment and operational excellence of both the physical and logical storage infrastructure (including proprietary and open source solutions).

Your role is not just to manage people, but to serve as the ultimate technical and operational authority for our high-performance, petabyte-scale storage solutions.Your leadership will be pivotal in ensuring our systems are not just high-performing, but also reliable, scalable, and manageable as we grow toward exascale.

This is a unique opportunity to work at the intersection of large-scale distributed systems and the rapidly evolving field of artificial intelligence infrastructure. This is an opportunity to have a significant impact on the future of AI. You will be building the foundational infrastructure that powers some of the most advanced AI research and products in the world.

What You’ll Do

  • Team Leadership & Management:

    • Grow/Hire, lead, and mentor a top-talent team of high-performing storage engineers delivering HPC, petabyte-scale storage solutions.

    • Foster a high-velocity culture of innovation, technical excellence, and collaboration.

    • Conduct regular one-on-one meetings, provide constructive feedback, and support career development for team members.

    • Drive outcomes by managing project priorities, deadlines, and deliverables using Agile methodologies.

  • Technical Strategy & Execution:

    • Drive the technical vision and strategy for Lambda distributed storage solutions.

    • You will lead storage vendor selection criteria, vendor selection, and vendor relationship management (support, installation, scheduling, specification, procurement).

    • Manage team in storage lifecycle management (installation, cabling, capacity upgrades, service, RMA, updating both hardware and software components as needed).

    • You will guide choices around optimization of storage pools, sharding, and tiering/caching strategies.

    • Lead team in tasks related to multi-tenant security, tenant provisioning, metering integration, storage protocol interconnection, and customer data-migration.

    • Guide Storage SREs in development of scripting and automation tools for configuration management, monitoring, and operational tasks.

    • Guide team in problem identification, requirements gathering, solution ideation, and stakeholder alignment on engineering RFCs.

    • Lead the team in supporting customers.

  • Cross-Functional Collaboration:

    • Collaborate with the HPC Architecture team on drive selection, capacity determination, storage networking, cache placement, and rack layouts.

    • Work closely with the storage software teams and networking teams to execute on cross-functional infrastructure initiatives and new data-center deployments including integration of storage protocols across a variety of on-prem storage solutions.

    • Work with procurement data-center operations, and fleet engineering teams to deploy storage solutions into new and existing data centers.

    • Work with vendors to troubleshoot customer performance, reliability, and data-integrity issues.

    • Work closely with Networking, Compute, and Storage Software Engineering teams to deploy high-performance distributed storage solutions to serve AI/ML workloads.

    • Partner with the fleet engineering team to ensure seamless deployment, monitoring, and maintenance of the distributed storage solutions.

  • Innovation & Research:

    • Stay current with the latest trends and research into AI and HPC storage technologies and vendor solutions.

    • Guide team in investigating strategies for using Nvidia SuperNIC DPUs for storage edge-caching, offloading, and GPUDirect Storage capabilities.

    • Work with the Lambda product team to uncover new trends in the AI inference and training product category that will inform emerging storage solutions.

    • Encourage and support the team in exploring new technologies and approaches to improve system performance and efficiency.

You

  • Experience:

  • 10+ years of experience in storage engineering with at least 5+ years in a management or lead role.

  • Demonstrated experience leading a team of storage engineers and storage SREs on complex, cross-functional projects in a fast-paced startup environment.

  • Extensive hands-on experience in designing, deploying, and maintaining distributed storage solutions in a CSP (Cloud Service Provider), NCP (Neo-Cloud provider), HPC-infrastructure integrator, or AI-infrastructure company.

  • Experience with storage solutions serving storage volumes at a scale greater than 20PB.

  • Strong project management skills, leading high-confidence planning, project execution, and delivery of team outcomes on schedule.

  • Extensive experience with storage site reliability engineering.

  • Experience with one or more of the following in an HPC or AI Infrastructure environment: Vast, DDN, Pure Storage, NetApp, Weka.

  • Experience deploying CEPH at scale greater than 25PB.

  • Technical Skills:

    • Experience in serving one or more of the following storage protocols: object storage (e.g., S3), block storage (e.g., iSCSI), or file storage (e.g., NFS, SMB, Lustre).

    • Professional individual contributor experience as a storage engineer or storage SRE.

    • Familiarity with modern storage technologies (e.g., NVMe, RDMA, DPUs) and their role in optimizing performance.

  • People Management:

    • Experience building a high-performance team through deliberate hiring, upskilling, planned skills redundancy, performance-management, and expectation setting.

  • Nice to Have

    • Experience:

      • Experience driving cross-functional engineering management initiatives (coordinating events, strategic planning, coordinating large projects).

      • Experience with NVidia SuperNIC DPUs for edge-caching (such as implementing GPUDirect Storage).

    • Technical Skills:

      • Deep experience with Vast, Weka and/or NetApp in an HPC or AI Infrastructure environment.

      • Deep experience implementing CEPH in an HPC or AI infrastructure environment at a scale greater than 100PB.

    • People Management:

      • Experience driving organizational improvements (processes, systems, etc.)

      • Experience training, or managing managers.

    Salary Range Information

    The annual salary range for this position has been set based on market data and other factors. However, a salary higher or lower than this range may be appropriate for a candidate whose qualifications differ meaningfully from those listed in the job description.

    About Lambda

    • Founded in 2012, ~400 employees (2025) and growing fast

    • We offer generous cash & equity compensation

    • Our investors include Andra Capital, SGW, Andrej Karpathy, ARK Invest, Fincadia Advisors, G Squared, In-Q-Tel (IQT), KHK & Partners, NVIDIA, Pegatron, Supermicro, Wistron, Wiwynn, US Innovative Technology, Gradient Ventures, Mercato Partners, SVB, 1517, Crescent Cove.

    • We are experiencing extremely high demand for our systems, with quarter over quarter, year over year profitability

    • Our research papers have been accepted into top machine learning and graphics conferences, including NeurIPS, ICCV, SIGGRAPH, and TOG

    • Health, dental, and vision coverage for you and your dependents

    • Wellness and Commuter stipends for select roles

    • 401k Plan with 2% company match (USA employees)

    • Flexible Paid Time Off Plan that we all actually use

    A Final Note:

    You do not need to match all of the listed expectations to apply for this position. We are committed to building a team with a variety of backgrounds, experiences, and skills.

    Equal Opportunity Employer

    Lambda is an Equal Opportunity employer. Applicants are considered without regard to race, color, religion, creed, national origin, age, sex, gender, marital status, sexual orientation and identity, genetic information, veteran status, citizenship, or any other factors prohibited by local, state, or federal law.

    About the job

    Apply before

    Posted on

    Job type

    Full Time

    Experience level

    Manager

    Salary

    Salary: 330k-495k USD

    Location requirements

    Hiring timezones

    United States +/- 0 hours

    About Lambda

    Learn more about Lambda and their company culture.

    View company profile

    At Lambda, we are at the forefront of accelerating artificial intelligence and machine learning capabilities through our groundbreaking compute infrastructure. Founded in 2012, our mission is to empower AI engineers and researchers by providing them with the most efficient and powerful tools to train, fine-tune, and deploy AI models at scale. We recognized early on the immense computational power required for deep learning and set out to build solutions that make this power accessible and affordable. Our innovative approach began with developing high-performance GPU-powered workstations and servers, meticulously designed for the rigorous demands of AI development. This hardware foundation was engineered for plug-and-play simplicity, enabling teams to rapidly deploy and begin their work without complex setup procedures.

    Building on our hardware expertise, Lambda launched the Lambda GPU Cloud, a specialized cloud service offering on-demand and reserved access to cutting-edge NVIDIA GPUs. This platform is engineered to provide a seamless and scalable environment for both AI training and inference, catering to the needs of startups and large enterprises alike. A key component of our ecosystem is the Lambda Stack, a comprehensive AI software repository that simplifies the setup and management of popular deep learning frameworks and drivers with one-line installations. This focus on a streamlined software experience, combined with our high-performance hardware and cloud offerings, allows AI developers to transition from concept to production with unprecedented speed and efficiency. We are committed to pushing the boundaries of what's possible in AI by continuously innovating and providing the essential infrastructure that fuels the next generation of intelligent systems. Our solutions are trusted by leading research institutions, Fortune 500 companies, and pioneering AI-native organizations globally, as we help them tackle complex computational challenges and drive significant advancements in their respective fields.

    Employee benefits

    Learn about the employee benefits and perks provided at Lambda.

    View benefits

    Dental

    Dental coverage.

    Vision

    Vision coverage.

    Sick days

    Five sick days per year.

    Paid holidays

    12 paid holidays per year.

    View Lambda's employee benefits
    Claim this profileLambda logoLA

    Lambda

    View company profile

    Similar remote jobs

    Here are other jobs you might want to apply for.

    View all remote jobs

    32 remote jobs at Lambda

    Explore the variety of open remote roles at Lambda, offering flexible work options across multiple disciplines and skill levels.

    View all jobs at Lambda

    Remote companies like Lambda

    Find your next opportunity by exploring profiles of companies that are similar to Lambda. Compare culture, benefits, and job openings on Himalayas.

    View all companies

    Find your dream job

    Sign up now and join over 100,000 remote workers who receive personalized job alerts, curated job matches, and more for free!

    Sign up
    Himalayas profile for an example user named Frankie Sullivan
    Lambda hiring Storage Engineering Manager • Remote (Work from Home) | Himalayas