Kernel Driver Software Engineer
Company: Etched
Location: San Jose
Posted on: April 3, 2026
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Job Description:
About Etched Etched is building the world’s first AI inference
system purpose-built for transformers - delivering over 10x higher
performance and dramatically lower cost and latency than a B200.
With Etched ASICs, you can build products that would be impossible
with GPUs, like real-time video generation models and extremely
deep & parallel chain-of-thought reasoning agents. 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. Key Responsibilities Design,
develop, and maintain kernel-mode drivers ensuring high
reliability, informative debug, and optimal performance. Analyze
and optimize driver performance for demanding AI workloads,
focusing on minimizing latency and maximizing throughput.
Collaborate closely with hardware engineers throughout the ASIC
design process Implement driver support for device virtualization
technologies, including SR-IOV, VFIO, and para-virtualization.
Implement efficient memory management strategies considering kernel
memory mapping, page tables configuration, NUMA awareness for
device data caching, and IOMMU configuration. Build kernel drivers
fundamentally designed to support and maintain security across host
processes, physical memory spaces, and device attestation. Diagnose
and resolve complex driver-related issues, using common kernel
debugging tools and techniques (ftrace, dmesg, etc.) to identify
and fix bugs. Design and implement synchronization mechanisms to
handle concurrent access to multiple accelerators. Develop and
execute comprehensive test plans to validate driver functionality,
stability, and performance in manufacturing and in general
production environments. Collaborate with software and hardware
teams to diagnose and resolve complex system-level issues.
Representative Projects Develop and optimize kernel-mode drivers
for new ML accelerators. Implement and optimize memory management,
including kernel memory mapping and IOMMU configurations, for
high-bandwidth data transfers. Debug and resolve complex
driver-related issues impacting ML workload performance. Develop
performance benchmarks and profiling tools to analyze driver
performance. Integrate driver support for advanced features like
hardware virtualization and security, including SR-IOV and VFIO.
Optimizing PCIe communication between the host and PCIe devices,
using advanced equipment like PCIe analyzers. Implement and debug
power management features for PCIe devices. Integrating ML
accelerators into containerized and virtualized environments.
Implementing and optimizing para-virtualization techniques for PCIe
devices. Configure and optimize page tables for efficient memory
access from the ML accelerator. Participate in hardware-software
co-design reviews across teams to optimize performance and power
efficiency. You may be a good fit if you have Proficiency in C/C++.
Strong understanding of kernel-mode driver development and
debugging. Deep understanding of operating system internals (Linux
preferred). Experience with hardware/software interfacing and
device drivers. Experience with memory management and
synchronization in kernel environments. Strong understanding of
PCIe and other hardware interfaces. Experience with device
virtualization technologies, including SR-IOV and VFIO. Strong
understanding of kernel memory mapping, page table configuration,
and IOMMU. Familiarity with hardware-software co-design principles.
Proven ability to analyze complex technical problems and provide
effective solutions. Excellent communication and collaboration 1
skills. Experience with version control systems (e.g., Git).
Experience with debugging tools (e.g., gdb, kgdb). Strong
candidates may also have experience with (Nice-to-have
qualifications) Candidates with experience in developing and
debugging kernel-mode drivers for GPU or other accelerator devices.
Candidates with a strong understanding of hardware/software
interactions. Candidates with experience in optimizing driver
performance for demanding workloads. Candidates with experience in
ML workloads. Candidates who have debugged complex hardware and
software interactions, especially in virtualized environments.
Candidates with experience in implementing and optimizing SR-IOV
and VFIO. Candidates with in-depth knowledge of kernel memory
mapping, page tables, and IOMMU. Candidates with experience in
hardware-software co-design projects. Experience with GPU driver
development. Experience with CUDA, OpenCL, or other GPU programming
models. Experience with performance profiling and benchmarking
tools (perf, VTune). Knowledge of hardware virtualization
techniques, including para-virtualization. Experience with CI/CD
pipelines. Experience with Rust. Experience with ML frameworks like
Tensorflow or Pytorch. Experience with data center orchestration
technologies (Kubernetes, Docker). 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 dinner in our office How we’re different Etched
believes in the Bitter Lesson . We think most of the progress in
the AI field has come from using more FLOPs to train and run
models, and the best way to get more FLOPs is to build
model-specific hardware. Larger and larger training runs encourage
companies to consolidate around fewer model architectures, which
creates a market for single-model ASICs. 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 as
needed.
Keywords: Etched, Lodi , Kernel Driver Software Engineer, IT / Software / Systems , San Jose, California