Member of Technical Staff — Kernel / Compiler / Communication

Palo Alto, CA, USA

About the Role

RadixArk is seeking a

Member of Technical Staff — Kernel / Compiler / Communication

to push the limits of performance for frontier AI systems.

You will work at the lowest layers of the stack — kernels, runtimes, compilers, and communication libraries — to unlock maximum efficiency from modern accelerators and interconnects.

This role is critical to scaling training and inference across thousands of GPUs, where microseconds and memory bandwidth matter. Your work will directly shape the performance envelope of next-generation AI systems.

This is a deeply technical role for engineers who enjoy working close to hardware and solving performance problems that most engineers never encounter.

Requirements

5+ years of experience in systems, compiler, or performance engineering

Strong expertise in CUDA or accelerator programming

Deep understanding of GPU architecture and memory hierarchy

Experience writing or optimizing high-performance kernels

Strong background in compilers, runtimes, or code generation

Experience with distributed communication libraries (NCCL, MPI, RCCL, etc.)

Solid knowledge of networking and interconnect technologies

Proficiency in C++ and Python

Strong debugging and profiling skills at system level

Strong Plus

Experience with Triton, TVM, XLA, or MLIR

Experience building compiler passes or IR transformations

Familiarity with NVLink, InfiniBand, or RDMA

Experience optimizing collective communication at scale

Background in HPC or performance-critical systems

Contributions to kernel/compiler/ML systems open source

Experience scaling workloads to 1000+ GPUs

Experience with mixed-precision or quantized kernels

Responsibilities

Design and implement high-performance kernels for AI workloads

Optimize compiler and runtime stacks for ML systems

Improve communication efficiency across large GPU clusters

Reduce latency and increase throughput for distributed workloads

Profile and eliminate system bottlenecks across the stack

Collaborate with training and inference teams on performance optimization

Develop tooling for profiling and performance analysis

Contribute to long-term architecture for performance-critical systems

Push the limits of hardware–software co-design

About RadixArk

RadixArk is an infrastructure-first company built by engineers who've shipped production AI systems, created SGLang (20K+ GitHub stars, the fastest open LLM serving engine), and developed Miles (our large-scale RL framework).

We're on a mission to democratize frontier-level AI infrastructure by building world-class open systems for inference and training.

Our team has optimized kernels serving billions of tokens daily, designed distributed training systems coordinating 10,000+ GPUs, and contributed to infrastructure that powers leading AI companies and research labs.

We're backed by well-known infrastructure investors and partner with Nvidia, Google, AWS, and frontier AI labs.

Join us in building infrastructure that gives real leverage back to the AI community.

Compensation

We offer competitive compensation with meaningful equity, comprehensive benefits, and flexible work arrangements. Compensation depends on location, experience, and level.

Equal Opportunity

RadixArk is an Equal Opportunity Employer and is proud to offer equal employment opportunity to everyone regardless of race, color, ancestry, religion, sex, national origin, sexual orientation, age, citizenship, marital status, disability, gender identity, veteran status, and more.

5+ years of experience in systems, compiler, or performance engineering

Strong expertise in CUDA or accelerator programming

Deep understanding of GPU architecture and memory hierarchy

Experience writing or optimizing high-performance kernels

Strong background in compilers, runtimes, or code generation

Experience with distributed communication libraries (NCCL, MPI, RCCL, etc.)

Solid knowledge of networking and interconnect technologies

Proficiency in C++ and Python

Strong debugging and profiling skills at system level

Strong Plus

Experience with Triton, TVM, XLA, or MLIR

Experience building compiler passes or IR transformations

Familiarity with NVLink, InfiniBand, or RDMA

Experience optimizing collective communication at scale

Background in HPC or performance-critical systems

Contributions to kernel/compiler/ML systems open source

Experience scaling workloads to 1000+ GPUs

Experience with mixed-precision or quantized kernels

Responsibilities

Design and implement high-performance kernels for AI workloads

Optimize compiler and runtime stacks for ML systems

Improve communication efficiency across large GPU clusters

Reduce latency and increase throughput for distributed workloads

Profile and eliminate system bottlenecks across the stack

Collaborate with training and inference teams on performance optimization

Develop tooling for profiling and performance analysis

Contribute to long-term architecture for performance-critical systems

Push the limits of hardware–software co-design

About RadixArk

RadixArk is an infrastructure-first company built by engineers who've shipped production AI systems, created SGLang (20K+ GitHub stars, the fastest open LLM serving engine), and developed Miles (our large-scale RL framework).

We're on a mission to democratize frontier-level AI infrastructure by building world-class open systems for inference and training.

Our team has optimized kernels serving billions of tokens daily, designed distributed training systems coordinating 10,000+ GPUs, and contributed to infrastructure that powers leading AI companies and research labs.

We're backed by well-known infrastructure investors and partner with Nvidia, Google, AWS, and frontier AI labs.

Join us in building infrastructure that gives real leverage back to the AI community.

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