Thank you for your interest in joining Solventum. Solventum is a new healthcare company with a long legacy of solving big challenges that improve lives and help healthcare professionals perform at their best. At Solventum, people are at the heart of every innovation we pursue. Guided by empathy, insight, and clinical intelligence, we collaborate with the best minds in healthcare to address our customers’ toughest challenges. While we continue updating the Solventum Careers Page and applicant materials, some documents may still reflect legacy branding. Please note that all listed roles are Solventum positions, and our Privacy Policy: https://www.solventum.com/en-us/home/legal/website-privacy-statement/applicant-privacy/ applies to any personal information you submit. As it was with 3M, at Solventum all qualified applicants will receive consideration for employment without regard to their race, color, religion, sex, sexual orientation, gender identity, national origin, disability, or status as a protected veteran.
ML Engineer
As an ML Engineer, you will be responsible for building and maintaining the pipelines that power AI in our Healthcare Information Systems (HIS). You will help bridge the gap between data science and software engineering by implementing automated workflows, managing cloud infrastructure, and ensuring our AI services are secure and scalable.
Key Responsibilities
MLOps & Deployment: Build and maintain CI/CD pipelines for machine learning, focusing on automated testing, model deployment, and version control using tools like MLflow or Git.
Model Serving: Deploy ML models as scalable APIs and microservices, ensuring they meet performance and latency requirements for clinical use.
Monitoring: Implement basic monitoring tools to track model performance, data drift, and system health in production.
Data Engineering & Integration: Develop and optimize ETL processes to transform healthcare data (FHIR, HL7) into clean, usable datasets for model training and inference.
Feature Management: Help build and maintain feature stores and data layers that ensure consistency between training and production environments.
System Integration: Work closely with backend teams to integrate ML outputs into our core healthcare applications.
Engineering Best Practices: Write clean, maintainable, and well-documented Python code; participate in code reviews to ensure system reliability.
Containerization: Use Docker and Kubernetes to package and orchestrate ML workloads across different environments.
Security & Compliance: Follow established protocols to ensure all data handling and deployments meet HIPAA and HITRUST security standards.
Qualifications
Bachelor’s or Master’s degree in Computer Science, Software Engineering, Data Engineering, or a related field.
3–5 years of professional experience in software engineering or data engineering, with at least 2 years focused on machine learning production environments.
Strong proficiency in Python and familiarity with SQL; knowledge of a compiled language (like Go or Java) is a plus.
Hands‑on experience with at least one major cloud provider (AWS, Azure, or GCP) and containerization (Docker).
Familiarity with ML libraries (PyTorch or Scikit‑learn) and MLOps tools (like Airflow, Prefect, BentoML, or Kubeflow).
Experience with data processing frameworks (like Pandas, Spark, or dbt).
Additional Qualifications (Preferred)
Familiarity with deploying Large Language Models (LLMs) or using frameworks like LangChain.
Experience working in a regulated environment (Healthcare, Finance, etc.).
Understanding of API design and microservices architecture.
Work Location and Travel
Hybrid in Dublin, Ireland. Travel may include up to 10% domestic. Must be legally authorized to work in country of employment without sponsorship for employment visa status.
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