Lambda's GPU cloud is used by deep learning engineers at Stanford, Berkeley, and Carnegie Mellon. Lambda's on-prem systems power research and engineering at Intel, Microsoft, Kaiser Permanente, major universities, and the Department of Defense.
If you'd like to build the world's best deep learning cloud, join us.
What You’ll Do
- Remotely install, upgrade, operate and maintain bare-metal Kubernetes clusters (up to thousands of nodes each)
- Handle cluster degradation, recovery and resizing using our fleet management tooling
- Perform out-of-hours on-call response for critical incidents as part of a well-balanced on-call rotation
- Work on improving our tooling, automation, and processes, for both daily operations, alerting, and incident response
- Dive into systems at a low level to solve unique cluster problems and write up your findings
- Assist customers with high-level Kubernetes questions and integration with applications, storage and authentication
- Assist with initial cluster build-outs and validation to help identify failed hardware before customer delivery
- Work closely with our HPC Ops and Datacenter Ops teams on issues that require lower-level expertise or cross-functional solutions
- Mentor and assist less-experienced team members
- Have a voice in our product direction and help us think about how to minimize operational costs and complexity
You
- Are an experienced operations engineer, SRE, sysadmin or similar with a deep knowledge of running Linux clusters and systems
- Are very familiar with running on bare-metal (including knowledge of BMCs, kernel drivers, PXE, RAID, VLANs, hypervisors)
- Have a good understanding of containers, virtualisation, and the mechanisms underpinning them
- Have a good understanding of daily operation, bug-fixing and maintenance of Kubernetes
- Have experience in an on-call environment and with incident response
- Can perform incident post-mortems and develop procedures and tooling to prevent root causes from reoccurring
- Have an excellent ability to learn on-the-fly and adapt to solve problems
- Are able to work either independently with limited direction, or as part of a team
- Are able to work with customers during incidents either via tickets, live messaging, or as part of a larger call.
Nice to Have
- Deep Kubernetes experience
- Experience with user-level restrictions and hardening (e.g. AppArmor)
- Experience with network engineering
- Experience with HPC clusters, environments & tooling
- Experience with large-scale AI/ML training clusters
- Experience with machine learning/AI frameworks
- A passion for running your own bare-metal lab
Salary Range Information
Based on market data and other factors, the salary range for this position is approximately £135,200 - £194,400. 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
- We offer generous cash & equity compensation
- Investors include Gradient Ventures, Google’s AI-focused venture fund
- 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
- We have a wildly talented team of 250, and growing fast
- Health, dental, and vision coverage for you and your dependents
- Commuter/Work from home stipends for select roles
- 401k Plan with 2% company match
- 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.