Forward Deployed Engineer (Machine Learning)
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The Role
Our client is building vision agents for large venues such as hotels and casinos— powering real-time video analytics and intelligent surveillance across hundreds of camera streams. Our systems run on‑prem in some of the largest resorts in Las Vegas, and many more in the pipeline.
We’re looking for a Forward Deployed ML Engineer who blends strong technical ML/CV ability with comfort deploying systems in the field. You will own our real‑time vision pipelines end‑to‑end and be the technical face of the client’s inside casinos. This role is not a back‑office research job.
You will:
Ship models into production
Debug production pipelines at client sites
Build new ML features ranging from classical ML, computer vision and LLMs
Work hands‑on with GPU servers & multi‑camera systems
Collaborate with customer surveillance teams and distribution partners
What You’ll Do
Train, tune, and update/deploy deep learning models at client sites
Maintain low‑latency inference pipelines on‑premise using PyTorch, ONNX, and TensorRT and Triton
Build training data processing pipelines, QA/QC labeling and coordinate work with our labeling teams
Work closely with customers and with the product manager to experiment and ship new features
Qualifications
2-3 years of experience in machine learning with strong knowledge about not just deep learning but also classical ML (You’re an ML engineer first — someone who can train models, tune them, debug them in the wild, and build the software around them to make them production‑ready).
Strong skills in Linux, Docker, and shipping models as services
Comfortable working in live production environments with minimal supervision
A startup mindset — resourceful, adaptable, and excited to work across ML, backend, and DevOps boundaries
Nice to Have
Experience with GStreamer, FFmpeg, or RTSP (or similar protocol) video pipelines
Experience with Triton Server, model optimization using TensorRT and other deep learning acceleration frameworks
Benefits
Work remotely Monday - Friday, 40 hours a week (no weekends)
Vacation: 10 business days a year
Holidays: 5 National Holidays a year
Company Holidays: 5 Company Holidays a year (Christmas Eve, Christmas Day, New Year's Eve, New Year's Day, Zipdev Day)
Parental Leave
Health Care Reimbursement
Active Lifestyle Reimbursement
Quarterly Home Office Reimbursementi>
Payroll Deduction Purchase Plans
Longevity Bonus
Continuous Learning Bonus
Access to Training and Professional Development Platforms
Did we mention it's REMOTE?
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