MLOps Engineer - Databricks Platform

Lumenalta Dominican Republic
Remote
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AI Summary

Design and maintain MLflow-based workflows for experiment tracking, model registry, and lifecycle management. Build and manage Feature Store infrastructure and implement CI/CD pipelines for scalable model deployment and monitoring. Collaborate with data scientists and engineers to operationalize machine learning solutions at Lumenalta.

Key Highlights
MLOps with 3-5+ years production experience
Databricks platform expertise
MLflow and Feature Store implementation
CI/CD for ML workflows
Model monitoring and automated retraining
Key Responsibilities
Design and maintain MLflow-based workflows for experiment tracking, model registry, versioning, and lifecycle management
Build and manage Feature Store infrastructure to enable reusable, consistent feature pipelines across teams and use cases
Develop model deployment pipelines, including serving infrastructure, A/B testing support, versioning, and rollback strategies
Implement CI/CD pipelines tailored for ML workflows, including automated testing, validation gates, and deployment triggers
Orchestrate distributed model training on Databricks, optimizing for compute efficiency, reproducibility, and cost
Monitor deployed models for data drift, performance degradation, and system health, triggering automated retraining workflows as needed
Collaborate with Data Scientists and Data Engineers to reduce friction between experimentation environments and production
Technical Skills Required
MLOps Databricks MLflow CI/CD Feature Store
Benefits & Perks
Fully remote position
6-hour overlap with US business hours

Job Description


At Lumenalta, we partner with forward-thinking organizations to build technology solutions that scale, delight users, and accelerate business growth. Our global teams bring curiosity, commitment, and technical excellence to every project. We value transparency, autonomy, and impact—empowering every team member to do their best work.


We’re seeking an experienced MLOps Engineer responsible for operationalizing machine learning at scale on the Databricks platform. This role bridges data engineering and ML, building the infrastructure and workflows that take models from experimentation to reliable production deployments.


What You'll Be Doing

  • Design and maintain MLflow-based workflows for experiment tracking, model registry, versioning, and lifecycle management.
  • Build and manage Feature Store infrastructure to enable reusable, consistent feature pipelines across teams and use cases.
  • Develop model deployment pipelines, including serving infrastructure, A/B testing support, versioning, and rollback strategies.
  • Implement CI/CD pipelines tailored for ML workflows, including automated testing, validation gates, and deployment triggers.
  • Orchestrate distributed model training on Databricks, optimizing for compute efficiency, reproducibility, and cost.
  • Monitor deployed models for data drift, performance degradation, and system health, triggering automated retraining workflows as needed.
  • Collaborate with Data Scientists and Data Engineers to reduce friction between experimentation environments and production.


What We're Looking For

  • 3–5+ years in MLOps, ML platform engineering, or DevOps for ML, with proven production ML deployments.
  • Hands-on expertise with MLflow for tracking, registry, and project management within Databricks or standalone environments.
  • Experience building and consuming Feature Store solutions (Databricks Feature Store or equivalent).
  • Proven experience deploying and serving ML models at scale, including real-time and batch inference patterns.
  • Ability to design automated pipelines for model training, validation, and deployment using modern CI/CD tooling.
  • Strong familiarity with Databricks for distributed training, job orchestration, and cluster management.
  • Knowledge of model monitoring practices, including drift detection, alerting, and retraining triggers.


Why Lumenalta is an amazing place to work at

At Lumenalta, you can expect that you will:

  • Be 100% dedicated to one project at a time so that you can innovate and grow.
  • Be a part of a team of talented and friendly senior-level developers.
  • Work on projects that allow you to use leading tech.


This is a fully remote position open to candidates based in Latin America (LATAM). While location is flexible, candidates must be willing to maintain at least a 6-hour overlap with core business hours, which are primarily aligned with the Pacific, Central, or Eastern U.S. time zones to ensure effective collaboration with project teams.


Application Deadline

Applications will be accepted until July 12, 2026. Candidates can expect feedback by August 1, 2026.


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