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  <jobs>
    <job>
      <externalid>ff4d3a91-b20</externalid>
      <Title>Principal Engineer - Perf and Benchmarking</Title>
      <Description><![CDATA[<p>We&#39;re looking for a Principal Engineer to be the technical lead of CoreWeave&#39;s Benchmarking &amp; Performance team. You will be responsible for our planet-scale performance data warehouse: Ingesting, storing, transforming and analyzing performance events in all the data centers across our global infrastructure.</p>
<p>You will also be an integral part of achieving industry-leading end-to-end performance benchmarking publications: If MLPerf (Training &amp; Inference), Working closely with NVIDIA (Megatron-LM, TensorRT-LLM &amp; DGX cloud) and the open-source community (llm-d, vLLM and all popular ML frameworks) speak to you, come help us demonstrate CoreWeave&#39;s performance reliability leadership in the field.</p>
<p><strong>Responsibilities</strong></p>
<ul>
<li>Strategy &amp; Leadership - Define the multi-year benchmarking strategy and roadmap; prioritize models/workloads (LLMs, diffusion, vision, speech) and hardware tiers. Build, lead, and mentor a high-performing team of performance engineers and data analysts. Establish governance for claims: documented methodologies, versioning, reproducibility, and audit trails.</li>
</ul>
<ul>
<li>Perf Ownership - Lead end-to-end MLPerf Inference and Training submissions: workload selection, cluster planning, runbooks, audits, and result publication. Coordinate optimization tracks with NVIDIA (CUDA, cuDNN, TensorRT/TensorRT-LLM, Triton, NCCL) to hit competitive results; drive upstream fixes where needed.</li>
</ul>
<ul>
<li>Internal Latency &amp; Throughput Benchmarks - Design a Kubernetes-native, repeatable benchmarking service that exercises CoreWeave stacks across SUNK (Slurm on Kubernetes), Kueue, and Kubeflow pipelines. Measure and report p50/p95/p99 latency, jitter, tokens/s, time-to-first-token, cold-start/warm-start, and cost-per-token/request across models, precisions (BF16/FP8/FP4), batch sizes, and GPU types. Maintain a corpus of representative scenarios (streaming, batch, multi-tenant) and data sets; automate comparisons across software releases and hardware generations.</li>
</ul>
<ul>
<li>Tooling &amp; Automation - Build CI/CD pipelines and K8s controllers/operators to schedule benchmarks at scale; integrate with observability stacks (Prometheus, Grafana, OpenTelemetry) and results warehouses. Implement supply-chain integrity for benchmark artifacts (SBOMs, Cosign signatures).</li>
</ul>
<ul>
<li>Cross-functional &amp; Community - Partner with NVIDIA, key ISVs, and OSS projects (vLLM, Triton, KServe, PyTorch/DeepSpeed, ONNX Runtime) to co-develop optimizations and upstream improvements. Support Sales/SEs with authoritative numbers for RFPs and competitive evaluations; brief analysts and press with rigorous, defensible data.</li>
</ul>
<p><strong>Requirements</strong></p>
<ul>
<li>10+ years building distributed systems or HPC/cloud services, with deep expertise on large-scale ML training or similar high-performance workloads.</li>
</ul>
<ul>
<li>Proven track record of architecting or building planet-scale data systems (e.g., telemetry platforms, observability stacks, cloud data warehouses, large-scale OLAP engines).</li>
</ul>
<ul>
<li>Deep understanding of GPU performance (CUDA, NCCL, RDMA, NVLink/PCIe, memory bandwidth), model-server stacks (Triton, vLLM, TensorRT-LLM, TorchServe), and distributed training frameworks (PyTorch FSDP/DeepSpeed/Megatron-LM).</li>
</ul>
<ul>
<li>Proficient with Kubernetes and ML control planes; familiarity with SUNK, Kueue, and Kubeflow in production environments.</li>
</ul>
<ul>
<li>Excellent communicator able to interface with executives, customers, auditors, and OSS communities.</li>
</ul>
<p><strong>Nice to have</strong></p>
<ul>
<li>Experience with time-series databases, log-structured merge trees (LSM), or custom storage engine development.</li>
</ul>
<ul>
<li>Experience running MLPerf submissions (Inference and/or Training) or equivalent audited benchmarks at scale.</li>
</ul>
<ul>
<li>Contributions to MLPerf, Triton, vLLM, PyTorch, KServe, or similar OSS projects.</li>
</ul>
<ul>
<li>Experience benchmarking multi-region fleets and large clusters (thousands of GPUs).</li>
</ul>
<ul>
<li>Publications/talks on ML performance, latency engineering, or large-scale benchmarking methodology.</li>
</ul>
<p style="margin-top:24px;font-size:13px;color:#666;">XML job scraping automation by <a href="https://yubhub.co">YubHub</a></p>]]></Description>
      <Jobtype>full-time</Jobtype>
      <Experiencelevel>senior</Experiencelevel>
      <Workarrangement>hybrid</Workarrangement>
      <Salaryrange>$206,000 to $333,000</Salaryrange>
      <Skills>Distributed systems, HPC/cloud services, Large-scale ML training, GPU performance, Model-server stacks, Distributed training frameworks, Kubernetes, ML control planes, Time-series databases, Log-structured merge trees, Custom storage engine development, MLPerf submissions, Audited benchmarks, Contributions to OSS projects, Benchmarking multi-region fleets, Large clusters, Publications/talks on ML performance</Skills>
      <Category>Engineering</Category>
      <Industry>Technology</Industry>
      <Employername>CoreWeave</Employername>
      <Employerlogo>https://logos.yubhub.co/coreweave.com.png</Employerlogo>
      <Employerdescription>CoreWeave is a cloud-based platform for artificial intelligence that provides technology, tools, and teams to enable innovators to build and scale AI with confidence.</Employerdescription>
      <Employerwebsite>https://www.coreweave.com</Employerwebsite>
      <Compensationcurrency></Compensationcurrency>
      <Compensationmin></Compensationmin>
      <Compensationmax></Compensationmax>
      <Applyto>https://job-boards.greenhouse.io/coreweave/jobs/4627302006</Applyto>
      <Location>Sunnyvale, CA / Bellevue, WA</Location>
      <Country></Country>
      <Postedate>2026-04-18</Postedate>
    </job>
  </jobs>
</source>