Software Engineer (Machine Learning)

Nahc.io

Job Summary

Our client is a leading creator of body motion video games, seeking an ML Engineer to join their highly technical engineering team. This role focuses on foundational technology at the intersection of research and real-world systems, specifically developing indoor motion tracking technology using consumer-grade hardware. The ideal candidate will empower researchers and applied scientists by architecting and building mission-critical infrastructure to accelerate ML workflows and model iteration velocity.

Must Have

  • Lead the design and implementation of training pipelines, automated data workflows, and integration tooling that scale with research demand.
  • Build systems for large-scale data collection, preprocessing, and curation to support robust experimentation.
  • Create tools that streamline experiment lifecycles, reduce turnaround time, and help move models toward production smoothly.
  • Collaborate closely with ML researchers to remove technical blockers and improve developer experience.
  • Support model serving pipelines and integrate ML components with broader platform systems.
  • 3+ years experience building production-grade machine learning systems, data infrastructure, or research platforms.
  • Deep hands-on expertise with Python and at least one systems language (e.g., C++, Go, Rust, Java).
  • Experience working with PyTorch or TensorFlow in production or research environments.
  • Proven track record with ML training pipelines, data workflows, and integration tooling.
  • Familiarity with model deployment and inference optimization (MLOps patterns).

Good to Have

  • GPU-accelerated computing
  • Distributed training systems
  • Data versioning tools
  • Experiment tracking tools
  • Docker exposure
  • Kubernetes exposure
  • Contributions to open-source ML projects

Job Description

Our client is a leading creator of body motion video games that run on their own in-house developed device.

They are seeking a ML Engineer to to join their highly technical, forward-thinking engineering team focused on foundational technology at the intersection of research and real-world systems, to be part of developing indoor motion tracking technology that makes use of consumer grade hardware.

The ideal candidate will empower researchers and applied scientists by architecting and building mission-critical infrastructure that accelerates ML workflows and model iteration velocity

What you will do:

  • Lead the design and implementation of training pipelines, automated data workflows, and integration tooling that scale with research demand.
  • Build systems for large-scale data collection, preprocessing, and curation to support robust experimentation.
  • Create tools that streamline experiment lifecycles, reduce turnaround time, and help move models toward production smoothly.
  • Collaborate closely with ML researchers to remove technical blockers and improve developer experience.
  • Support model serving pipelines and integrate ML components with broader platform systems.

What you will need:

  • 3+ years experience building production-grade machine learning systems, data infrastructure, or research platforms.
  • Deep hands-on expertise with Python and at least one systems language (e.g., C++, Go, Rust, Java).
  • Experience working with PyTorch or TensorFlow in production or research environments.
  • Proven track record with ML training pipelines, data workflows, and integration tooling.
  • Familiarity with model deployment and inference optimization (MLOps patterns).

Nice-to-haves:

  • GPU-accelerated computing, distributed training systems, data versioning or experiment tracking tools
  • Docker/Kubernetes exposure
  • Contributions to open-source ML projects.

12 Skills Required For This Role

Cpp Game Texts Rust Model Serving Model Deployment Pytorch Docker Kubernetes Python Tensorflow Java Machine Learning

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