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Senior ML Engineer Deployment and Databricks MLOps

Jobs via Dice

Austin · Hybrid Full-time Senior 2w ago

About the role

Role Summary

We are looking for a hands-on Senior ML Engineer to help productionize machine learning solutions for manufacturing use cases involving deployment and pipeline buildout. This role will sit at the intersection of model operationalization, data/feature pipelines, and CI/CD, helping us move from proof of concept to repeatable, governed, production-ready delivery. The role is aligned to our current direction of hardening Databricks-based MLOps infrastructure, MLflow-based lifecycle management, and CI/CD-driven promotion of models and workflows into operational use.

What This Role Will Do

  • Build and operationalize ML pipelines in Databricks to support training, validation, batch scoring, and deployment workflows.
  • Implement and maintain CI/CD pipelines for ML code, data pipelines, and model promotion using Git-driven development practices and automated quality checks.
  • Partner with data scientists and data engineers to turn experimental models into production candidates with clear dependencies, reproducible artifacts, and governed deployment paths.
  • Build and manage feature/data pipelines that support model retraining, re-scoring, monitoring, and downstream consumption.
  • Establish model lifecycle controls using MLflow and Unity Catalog, including experiment tracking, model registration, versioning, lineage, and controlled promotion across environments.
  • Improve reliability of ML systems through data validation, testing, monitoring, and automation that reduce manual intervention and deployment risk.
  • Support deployment patterns that can extend from lab and cloud development into plant-ready operational workflows over time.

Key Responsibilities

  • Productionize machine learning models developed by the data science team for manufacturing applications.
  • Design, build, and maintain reusable ML workflows for data preparation, feature engineering, model training, evaluation, deployment, and inference.
  • Own CI/CD patterns for ML and pipeline assets, including unit tests, smoke tests, code quality checks, and release automation.
  • Manage Databricks jobs and workflows for retraining, scoring, orchestration, and scheduled execution.
  • Package and promote versioned model artifacts with traceability to code commits, data snapshots, and registry versions.
  • Collaborate across ML, data engineering, cloud/platform, and manufacturing stakeholders to ensure deployed solutions are scalable, supportable, and aligned to production constraints.

Required Qualifications

  • Bachelor s, Master s, or equivalent experience in Computer Science, Data Science, Engineering, or a related technical field.
  • Strong software engineering skills in Python and production-quality development practices.
  • Experience deploying machine learning models into production environments.
  • Strong experience with Databricks, including jobs/workflows, repos, and MLflow-based experimentation and model lifecycle management.
  • Experience building CI/CD pipelines for ML or data products using Git-based workflows and automated testing.
  • Strong understanding of data pipelines, feature engineering, batch processing, and pipeline orchestration.
  • Experience working across model development, deployment, and operational support in cross-functional environments.

Preferred Qualifications

  • Experience with manufacturing, industrial IoT, quality, or plant-floor analytics use cases.
  • Experience with model governance, lineage, reproducibility, and controlled promotion of ML assets across environments.
  • Experience designing resilient ML pipelines that can handle changing upstream data conditions and retraining needs.
  • Familiarity with model monitoring, validation checks, and operational observability.
  • Experience supporting the transition from PoC or R&D models into production-ready solution patterns.

What Success Looks Like

  • In the near term, this person will help establish a repeatable path to deploy and operate manufacturing ML solutions on Databricks, including model lifecycle management, underlying pipelines, and CI/CD automation. Over time, the role should help create a reusable template that bridges experimentation, deployment, and governed operations across multiple manufacturing AI/ML use cases.
  • Short posting version
  • We are seeking a Senior ML Engineer to help deploy machine learning models and build the Databricks-based MLOps, pipeline, and CI/CD foundation behind them. This person will partner with data scientists, data engineers, and platform teams to productionize manufacturing AI/ML solutions through MLflow-based model lifecycle management, automated workflows, governed releases, and scalable data/feature pipelines.

Skills

DatabricksGitMLflowPython

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