Senior Machine Learning Software Engineer

CleerlyDenver, CO
5hRemote

About The Position

We are seeking a senior machine learning software engineer to design, build, deploy, monitor, and optimize production-ready ML services in regulated healthcare. You will work hands-on to package, test, orchestrate, deploy, and maintain ML models, improve workflows, and implement CI/CD and automated testing to ensure reliability, performance, and faster delivery of business value.

Requirements

  • 7+ years of experience in software engineering for ML production or ML platform delivery.
  • Hands-on experience deploying ML models via APIs, batch pipelines, or streaming inference.
  • Proficiency in Python (required), Java, or similar, with software engineering best practices for ML workflows.
  • Experience with unit, integration, and pipeline-level testing for ML models, including data validation, correctness checks, and reproducibility.
  • Familiarity with cloud platforms (AWS preferred: SageMaker, S3, EC2) and reproducible ML pipelines.
  • Experience with CI/CD, Orchestration tools (Airflow, MLflow, Kubernetes, Terraform) and ML/data platforms(SageMaker, Databricks, Unity Catalog, Snowflake/Snowpark) to build scalable ML data pipelines and model workflows.
  • Strong collaboration skills to work effectively with AI scientists, software engineers, and regulatory teams.

Responsibilities

  • Collaborate with AI scientists to package and deploy ML models, ensuring reproducibility, versioning, and compliance.
  • Build and maintain model serving infrastructure including monitoring, drift detection, automated retraining, and logging.
  • Implement unit, integration, and system-level testing for ML models, covering data validation, model correctness, and deployment workflows.
  • Develop and operate end-to-end ML pipelines: ingestion → preprocessing → feature engineering → evaluation → deployment → monitoring.
  • Integrate CI/CD and MLOps practices for automated model builds, testing, and deployment.
  • Identify and resolve workflow inefficiencies or gaps between research and production.
  • Recommend and integrate frameworks, libraries, and infrastructure to improve pipeline efficiency, maintainability, and observability.
  • Collaborate cross-functionally to ensure compliance with regulatory requirements (FDA/HIPAA) in production ML workflows.

Benefits

  • Total Target Compensation (TTC): Total Cash Compensation (including base pay, variable pay, commission, bonuses, etc.) Additionally, stock options, paid benefits, and employee perks are part of your total rewards.
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