Senior Solutions Architect
Zymtrace
- New York, New York, United States
- New York, New York, United States
Über
As a Senior Solutions Architect, you’ll be the technical bridge between zymtrace and our most important customers. You’ll work directly with AI/ML engineering teams, SRE leads, and infrastructure decision-makers at companies running large-scale GPU fleets to help them understand, deploy, and extract maximum value from zymtrace. This is a high-impact, early-stage role where you’ll shape how some of the world’s most demanding organizations think about GPU optimization. GPU optimization is one of the hardest and most consequential problems in modern computing. You’ll help customers squeeze every drop of performance from the hardware that powers the AI revolution. Key Responsibilities
Own the technical relationship with enterprise customers from proof-of-concept through production deployment and ongoing optimization Design and deliver technical demos, workshops, and architecture reviews tailored to each customer’s inference and training workloads Partner closely with founders and sales on technical discovery, scoping, and deal strategy Build and maintain technical content: reference architectures, deployment guides, case studies, and best practices documentation Represent zymtrace at industry events, conferences, and in the broader AI infrastructure community Collaborate with engineering to improve the product based on real-world customer feedback and deployment patterns What We’re Looking For
2+ years in a solutions architecture, sales engineering, or technical customer-facing role within infrastructure, observability, or cloud-native tooling Strong understanding of GPU computing: CUDA, GPU memory hierarchies, inference and training pipelines, and common performance bottlenecks Hands‑on experience with AI/ML frameworks such as PyTorch, JAX or similar Familiarity with Linux systems internals, profiling tools, and observability stacks (OpenTelemetry, Prometheus, Grafana, etc.) Ability to communicate complex, low-level technical concepts clearly to both engineers and executive stakeholders Self‑starter mentality suited to a fast‑moving, early‑stage environment where you’ll define your own playbook Nice to Have
Experience with eBPF, kernel tracing, or low-level performance engineering Experience with Helm charts and Kubernetes Background in HPC, scientific computing, or quantitative research infrastructure Familiarity with NVIDIA tools like Nsight Compute, DCGM, or NVML Previous experience at an infrastructure or developer tools startup Existing relationships with AI/ML infrastructure teams at major enterprises or cloud providers Work at the frontier.
GPU optimization is one of the hardest and most consequential problems in modern computing. You’ll help customers squeeze every drop of performance from hardware that powers the AI revolution. Shape the company.
This is an early-stage team. Your fingerprints will be on the product, the go-to-market motion, and the culture. World‑class teammates.
You’ll work alongside engineers who helped build the eBPF profiler for OpenTelemetry, created disassemblers used in Firefox and WebKit, and joined from Google to hack on compilers and kernels. Real customer impact.
Our customers include leading AI labs and Fortune 500 companies. The work you do will directly translate into faster models, lower costs, and reclaimed infrastructure budgets. Competitive salary and meaningful equity 401(k) plan Comprehensive health, dental, and vision insurance Annual learning and development budget Job ID: sa-01
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Sprachkenntnisse
- English
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