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Staff Software Engineer, ML Infrastructure

Voxel
Full TimestaffRemote
San Francisco, CARemotePosted 9 weeks ago

Role Overview

Voxel is hiring a Staff Software Engineer, ML Infrastructure. This is a full-time remote role, with the team based in San Francisco. Part of Voxel's Risk hiring. Full responsibilities, required qualifications, and the apply link are listed in the description below.

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PythonAWSPyTorchCI/CDDevOpsPipelineORLogistics

Job description

WHO WE ARE

Voxel is building the future of Computer Vision and Machine Learning for operations, risk, and safety. We use computer vision and AI to enable existing security cameras to automatically detect hazards and high-risk activities, keep people safe and drive operational efficiencies. Our technology addresses the key cost drivers for workers’ compensation, general liability, and property damage, which cost US employers over $500 billion annually. Our customers include Fortune 500 companies across grocery, retail, manufacturing, food and beverage, logistics, and pharmaceutical distribution. We’ve passed $10M ARR with strong expansion revenue. Based in SF, backed by industry-leading VCs.

ABOUT THE ROLE

Voxel’s perception system is the technical core of everything we ship. Our models detect human activity, equipment interactions, environmental hazards, and operational state in real time across thousands of cameras in manufacturing, logistics, retail, and pharmaceutical environments. Safety was our wedge; it proved our platform works. Now customers are pulling us into operations: equipment utilization, workflow compliance, process efficiency. Every new use case runs through the perception team.

We're hiring a Staff Software Engineer to own ML Infrastructure at Voxel. Our applied ML team is shipping vision models into production every week, across thousands of cameras at Fortune 500 customers, and the infrastructure underneath determines how fast we can move. You'll set the technical direction for how we train, track, and ship vision models, build the foundational systems that the applied ML team relies on, and shape the architectural decisions that will define our ML stack for the next several years.

This is a hands-on role. You'll write code, make architecture calls, and own outcomes end to end. You'll partner closely with applied CV engineers, the ML Data team, and the Platform team, and you'll be the technical voice in the room when ML infrastructure tradeoffs come up.

WHAT YOU'LL DO

  • Set the technical direction for ML infrastructure at Voxel: what we build, what we buy, and how the pieces fit together as the team and model portfolio scale
  • Architect and build the training infrastructure that lets the applied ML team run multiple experiments concurrently and iterate quickly on new architectures (PyTorch, AWS)
  • Own the train-to-deploy handoff: export trained models to optimized inference formats (TensorRT, ONNX), quantify accuracy and latency impact, and partner with Platform on production deployment
  • Pick and roll out the experiment tracking and lifecycle stack (Weights & Biases, MLflow, ClearML, or similar) so researchers can run, compare, and reproduce experiments efficiently
  • Establish DevOps-for-ML best practices (IaC, CI/CD, observability, cost monitoring) so researchers can iterate quickly and safely
  • Mentor engineers across Vision & AI on ML infrastructure best practices, raising the bar for how the org thinks about training, evaluation, and deployment
  • Anticipate where the infrastructure needs to be in 12 to 18 months, including the upcoming move to on-device inference, and architect for that future

WHAT WE'RE LOOKING FOR

  • 7+ years building and shipping large-scale software systems, with at least 3 years focused on ML infrastructure or large-scale data infrastructure
  • A track record of being the person who decides the architecture, not just the person who implements it. You've owned tool selection, framework choices, and build-vs-buy calls for systems other engineers depend on
  • Deep fluency in PyTorch and the modern ML training stack. You know what good experiment tracking looks like, what makes a training pipeline reliable at scale, and where the failure modes live
  • Strong Python. Performant, maintainable code that holds up in production
  • A pragmatic shipping orientation. You can tell the difference between architectural decisions that need to be right and ones that can be revisited later, and you don't over-engineer the latter
  • Strong communication skills. You can explain complex tradeoffs clearly to ML researchers, infra peers, and leadership

NICE TO HAVE

  • Production experience on AWS (S3, EC2, EKS, or similar) for ML workloads
  • Hands-on experience with model export and inference optimization (TensorRT, ONNX, or similar), including measuring accuracy and latency tradeoffs against training-time baselines
  • Experience with modern ML orchestration tools (Ray, Sematic, Flyte, Metaflow, Prefect, or similar)
  • Familiarity with GPU performance profiling and optimization (Nsight, PyTorch profiler, or similar)
  • Background in computer vision model training

COMPENSATION & BENEFITS

  • Equity through Voxel’s Equity Incentive Plan
  • Total compensation includes base salary, annual bonus, and equity
  • Comprehensive health, dental, and vision insurance
  • Competitive paid parental leave
  • Unlimited PTO and flexible work arrangements
  • Daily meals in-office, team events, annual company onsite

About Voxel

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Voxel

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11 other open roles at Voxel on TryApplyNow.

Frequently Asked Questions

How do I apply for the Staff Software Engineer, ML Infrastructure position at Voxel?

Use the Apply button above to submit your application directly to Voxel. Most applications take less than 5 minutes if your resume and contact details are ready, and you'll be routed to the employer's official application system to finish.

Is the Staff Software Engineer, ML Infrastructure role at Voxel remote?

Yes. This is a remote role. The team is based in San Francisco, but the position itself does not require relocating to that office.

What does a Staff Software Engineer, ML Infrastructure at Voxel earn?

Voxel has not disclosed a salary range in this posting. Many employers share specifics later in the interview process; you can also ask during a recruiter screen if compensation transparency is important to you.

When was the Staff Software Engineer, ML Infrastructure role at Voxel posted?

This role was posted on May 6, 2026 (64 days ago). It's still listed as actively hiring; we re-confirm openings against the source system multiple times per day and remove closed roles.

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