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Overview
Mid-Level

Machine Learning Engineer

Confirmed live in the last 24 hours

Interwell Health

Interwell Health

Remote, United States
Remote
Posted April 8, 2026

Job Description

Interwell Health is a kidney care management company that partners with physicians on its mission to reimagine healthcare—with the expertise, scale, compassion, and vision to set the standard for the industry and help patients live their best lives. We are on a mission to help people and we know the work we do changes their lives. If there is a better way, we will create it. So, if our mission speaks to you, join us!

As a Machine Learning Engineer, you’re a highly motivated individual with strong fundamentals in computer science and hands‑on experience across the full model development lifecycle—including feature engineering, model development, calibration, deployment, and ongoing monitoring. In this role, you will be flexible, eager to learn new skills, and willing to contribute wherever the team needs support. This Machine Learning Engineer is comfortable working with both traditional tabular machine learning models and modern AI techniques, including prompt engineering and LLM‑based capabilities. 

What You’ll Do 

  • Develop and deliver end‑to‑end machine learning solutions, including defining technical requirements, architecting scalable systems, and implementing monitoring, logging, and maintenance workflows. 
  • Collaborate closely with engineers, product managers, clinicians, and cross‑functional partners to build new ML products and enhance existing systems. 
  • Lead the design and implementation of MLOps frameworks, including pipeline development, CI/CD integration, drift detection, retraining workflows, and rollback strategies. 
  • Monitor model performance in production, identify issues, propose remediation steps, and ensure strong test coverage and system reliability. 
  • Utilize contemporary software engineering practices to implement scalable, secure, and maintainable AI/ML systems. 
  • Develop and customize API integrations to enable seamless connectivity between cloud‑based systems and ML services. 
  • Participate in architectural discussions to ensure ML platforms meet compliance, performance, and scalability standards. 

What You’ll Need: 

  • Bachelor’s degree in Computer Science, Data Analytics, Software/Computer Engineering, Computational Statistics, Mathematics, or a related discipline. 
  • 3+ years of end‑to‑end ML development in production (data prep, feature engineering, modeling, calibration, deployment, monitoring, maintenance). 
  • 3+ years of MLOps experience building production pipelines (CI/CD, model registry, feature store), implementing monitoring & drift detection, and automating retraining. 
  • 3+ years of Python for production ML (testing, packaging, type hints, linting) and SQL for analytical and production workloads; Scala a plus. <
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