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Built

Connect and Simplify Doing Business in Real Estate

Senior Machine Learning Operations Engineer

Machine Learning EngineerMachine Learning EngineerOtherRemoteSeniorTeam 201-500H1B SponsorCompany SiteLinkedIn

Location

Tennessee

Posted

114 days ago

Salary

$140K - $210K / year

Seniority

Senior

Job Description

Senior Machine Learning Operations Engineer

Built

• Build and operationalize the infrastructure that allows machine learning to run reliably in production. • Architect and implement Built’s foundational ML Ops platform from scratch • Define and deploy reusable patterns for model training, deployment, monitoring, and retraining • Build CI/CD pipelines for ML lifecycle automation, including versioning and experimentation tracking • Stand up a feature store integrated with Snowflake and AWS to support structured and unstructured data • Implement model registry and governance standards to ensure reproducibility, auditability, and rollback capability • Integrate ML workloads into our event-driven architecture (Kafka, Kinesis) • Develop observability frameworks to monitor drift, performance, latency, and model quality in production • Automate ML infrastructure using Terraform and AWS-native tooling (SageMaker, Lambda, ECS, Batch, Step Functions) • Establish security and compliance standards across ML assets, including data lineage and access control • Mentor engineers on ML Ops patterns and deployment best practices

Job Requirements

  • Experience architecting and deploying ML systems in production environments
  • Deep familiarity with ML lifecycle automation (training, CI/CD, deployment, monitoring)
  • Strong AWS experience, particularly within ML pipelines (SageMaker preferred)
  • Proven experience building infrastructure-as-code solutions (Terraform)
  • Experience productionizing ML workflows end-to-end, not just optimizing existing systems
  • Strong Python proficiency
  • Experience integrating ML workloads with data platforms and event-driven systems
  • Solid SQL skills and familiarity working with Snowflake.

Benefits

  • Competitive benefits including: uncapped vacation, health, dental & vision insurance
  • 401k with match and expedited vesting
  • Robust compensation package, including equity in the form of stock options
  • Flexible working hours, paid family leave, ERGs & Mentorship opportunities
  • Learning grant program to support ongoing professional development

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