ML Ops Engineer (Boston, MA)

United StatesUnited States·BostonRemoteFull-time Exemptmid
OtherEngineer
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Quick Summary

Requirements Summary

Architect, build, and operate end-to-end ML pipelines for training, validation and deployment on Google Cloud and AWS. Define, instrument, and maintain logging, monitoring, and alerting for model performance and data drift.

Technical Tools
awsdockergcpgithub-actionsgrafanajavascriptkubernetesnextjspostgresqlprometheuspythonreactterraformtypescriptci-cdmachine-learning
Requirements:
 
  • Architect, build, and operate end-to-end ML pipelines for training, validation and deployment on Google Cloud and AWS.
  • Define, instrument, and maintain logging, monitoring, and alerting for model performance and data drift.
  • Automate CI/CD for ML artifacts and infrastructure using GitHub Actions or equivalent.
  • Collaborate with cross-functional teams, including frontend engineers, backend engineers, research engineers, and infrastructure engineers.
  • Write clean, well-documented, fast, and maintainable code.
  • Help ensure our systems have high availability and performance.
  • Experience in computer graphics or physics-based simulation.
  • Background in setting up Prometheus/Grafana, ELK, or similar monitoring stacks.
  • Experience with Vertex AI.
  • Experience working with custom Domain-Specific Languages.
About Us: 
 
We are an MIT-born, venture-backed Silicon Valley startup building a real-life 'Jarvis'—an AI Copilot for design and manufacturing. Our goal is to utilize advanced AI, physics simulation, and computer graphics to reduce costs and improve engineering productivity across all steps of the design and manufacturing process.
  • BS in Computer Science or a related field.
  • 5+ years of experience as a AI/ML Ops, DevOps, Infrastructure Engineer or equivalent.
  • Expert-level Python and TypeScripts skills.
  • Experience with Docker, Kubernetes, Terraform, Google Cloud and AWS.
  • Deep understanding of machine learning models, including LLMs.
  • Experience designing and maintaining CI/CD pipelines to fine-tune or train ML models.
  • Excellent written and verbal communication skills.
  • Experience in computer graphics or physics-based simulation.
  • Background in setting up Prometheus/Grafana, ELK, or similar monitoring stacks.
  • Experience with Vertex AI.
  • Experience working with custom Domain-Specific Languages.
  • Google Cloud, AWS
  • Python, TypeScript
  • Protobuf, gRPC
  • Next.JS, React.JS
  • GitHub Actions
  • Docker, Kubernetes, Spinnaker
  • PostgreSQL
  • Location & Eligibility

    Where is the job
    Boston, United States
    Remote within one country
    Who can apply
    US

    Listing Details

    Posted
    May 14, 2026
    First seen
    May 14, 2026
    Last seen
    May 15, 2026

    Posting Health

    Days active
    0
    Repost count
    0
    Trust Level
    68%
    Scored at
    May 14, 2026

    Signal breakdown

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    ML Ops Engineer (Boston, MA)