San Francisco, CA
Full time
Engineering
Hyperbolic Labs is on a mission to democratize AI by breaking down the barriers to computing power with our Open-Access AI Cloud. By making better use of idle computing resources across the globe, we offer an innovative GPU marketplace and AI inference service that promise affordability and accessibility for all. As pioneers at the intersection of AI and open-source technology, we believe in an open future where AI innovation is limited only by imagination, not by access to resources. We’re looking for forward-thinking individuals who share our passion for making AI universally accessible, secure, and affordable. Join us in building a platform that empowers innovators everywhere to turn their visionary AI projects into reality.
As we prepare for growth with our seed round, backed by industry leaders, our team—led by co-founders with PhDs in AI, Math, and Computer Science—is poised to redefine computing.
Hyperbolic is scaling fast, and customers need to trust us from day one. We’re looking for someone technical enough to validate performance and smart enough to make it simple for others and build credibility with customers. You’ll bridge the gap between infra suppliers and technical customers, ensuring what we sell is what we deliver.
Customer benchmarking & coordination
Be the technical point-of-contact during trials, running both standardized and custom benchmarks to prove our value.
Design and run performance tests
Design, run, and analyze benchmarks across customer workloads — including comparisons against AWS, Lambda, and others.
Debug and optimize customer trials
Diagnose performance issues (GPU utilization, NCCL setup, container configs) and recommend fixes.
Reporting & documentation
Package results into clear, credible reports and handoffs that make technical findings easy to act on.
Maintain benchmarking infrastructure
Own and maintain the scripts, containers, and environments used to validate performance across SKUs and setups.
Continuous iteration
Identify performance gaps, optimize cluster configs, and work with supply and engineering to close the loop.
Experience running infra performance tests or ML model benchmarks (training, inference, or both).
Strong knowledge of GPU cloud infra — how workloads run, what bottlenecks to watch for, and how configs affect performance.
Clear and fast written communication (reports, docs, handoffs).
Ability to juggle multiple trials/projects at once.
Familiarity with the landscape (AWS, Lambda, CoreWeave, Runpod, etc.).
Bonus points if you have:
Prior customer-facing experience in a startup or devtools setting.
Background as an ML engineer, solutions architect, or technical account manager.
Hyperbolic is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.
Other similar jobs that might interest you