at Etched
Location
San Jose
Compensation
$200k–$300k USD
Type
full time
Posted
4 months ago
Market range · function + seniority
p25 · target · p75 · n=800
Posted $300k · above the band
Posting health
Aging · 65Tailor your résumé to this role in 30 seconds.
Free account · ATS keyword check · per-job bullet rewrite by Claude.
About Etched
Etched is building hardware for frontier intelligence. We co-design chips, racks, software, and manufacturing to deliver best-in-class throughput and latency across both prefill and decode workloads. Our first products are heavily focused on inference. Backed by hundreds of millions from top-tier investors and staffed by leading engineers, Etched is redefining the infrastructure layer for the fastest growing industry in history.
Job Summary
We are hiring a Head of Performance Visibility to define how performance is understood across next-generation AI accelerator systems.
Our ML accelerator platform spans custom silicon, supercomputing software, compiler stacks, runtime libraries, and distributed inference environments. Performance at this scale is no longer a device-level question — it is a high-performance distributed system problem. You will define the performance metrics that connect raw hardware signals to distributed workload context, ML cluster dynamics, pod communication patterns, and emergent bottlenecks.
This role requires more than telemetry. You will establish new abstractions, structured counter ontologies, cross-layer event correlation frameworks, distributed time-alignment strategies, and scalable reasoning systems operating across nodes, racks, and clusters. Working at the intersection of hardware design, driver architecture, runtime systems, and ML infrastructure, you will shape how these layers expose and consume performance intelligence. This is a foundational role defining not just tooling, but how our platform reasons about efficiency, scalability, and system behavior for years to come.
Key Responsibilities besides Mentorship and Leadership
System-Level Performance Design
Define the architectural approach for collecting and structuring telemetry across CPUs, drivers, interconnects, and multiple accelerators
Design scalable models for correlating performance events across device and host boundaries
Cross-Layer Event Correlation
Develop mechanisms to align hardware counters, runtime activity, communication phases, and workload semantics across model-layer execution into coherent, actionable insight
Implement time synchronization and trace-alignment strategies across multi-device systems
Telemetry & Counter Modeling
Define structured counter taxonomies separating base signals from derived metrics
Design derived performance models bridging low-level hardware signals and workload-level behavior
Influence instrumentation strategy for future hardware generations
Distributed Performance Reasoning
Build tools that identify bottlenecks among multi-accelerator workloads across chips within hosts
Build cluster-scale performance analysis for distributed inference across data center networks
Tooling & Insight Delivery
Contribute to analysis engines and developer-facing tooling that transform raw telemetry into intuitive insight
Shape how performance intelligence is surfaced to engineers debugging large-scale AI systems
You may be a good fit if you have
Deep experience building complex systems at the intersection of hardware and software
Personally envisioned and built significant portions of profiling, tracing, or observability systems — not solely defined requirements or product strategy
Demonstrated ability to translate raw hardware signals into scalable, production-grade telemetry and analysis infrastructure
Experience correlating time-series events across distributed systems
Deep systems programming expertise (C++ or Rust), with a track record of shipping low-level infrastructure operating close to hardware or runtime systems
Experience designing distributed correlation mechanisms, timestamp-alignment strategies, or performance modeling frameworks across multiple devices or hosts
Experience designing distributed tracing or observability platforms at scale
Experience with high-performance computing systems and large AI training clusters
Experience with timestamp synchronization strategies and event alignment in distributed environments
Experience with hardware counter design and instrumentation strategy
Experience with performance modeling for large-scale ML workloads
Experience leading cross-functional architectural initiatives spanning hardware and software teams
Benefits
Medical, dental, and vision packages with generous premium coverage
$500 per month credit for waiving medical benefits
Housing subsidy of $2k per month for those living within walking distance of the office
Relocation support for those moving to San Jose (Santana Row)
Various wellness benefits covering fitness, mental health, and more
Daily lunch and dinner in our office
Unlimited compute budget subject to ROI justification
How we’re different
Etched believes in the Bitter Lesson. We are the first inference-focused frontier AI system, betting early on transformer and transformer-like architectures and on increasing model sizes. Our addressable market is the entirety of inference, unlike many of our competitors.
We are a fully in-person team in San Jose (Santana Row), and greatly value engineering skills. We do not have boundaries between engineering and research, and we expect all of our technical staff to contribute to both and work across disciplines as needed.
More open roles at Etched
Hiring velocity, headcount trend, and every open posting on one page.
Open postings ranked by description similarity — useful if this role isn't quite right.