Machine Learning Engineer – Platforms
Listed on 2026-05-31
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IT/Tech
AI Engineer, Data Engineer, Machine Learning/ ML Engineer
As a Machine Learning Engineer – Platforms within the Data Impact & Governance organization, you will shape and scale the enterprise AI/ML platform that powers clinical, research, and operational machine learning across the institution. This is a hands‑on engineering role with direct influence on how data science workflows operate institution‑wide‑enabling safe, efficient, and high‑impact AI delivery.
You’ll work with modern cloud and container technologies, MLOps frameworks, and enterprise‑grade tools while building solutions that improve patient care, strengthen operations, and accelerate scientific discovery.
What’s in it for you?- Exceptional Benefits:
Enjoy paid medical benefits, generous paid time off (PTO), strong retirement plans, and a comprehensive benefits package designed to support your total well‑being. - High‑Impact Work:
Develop and maintain the platforms that allow clinicians, researchers, and data scientists to bring AI solutions into real‑world healthcare environments. - Cutting‑Edge Technology:
Work with Dataiku, Kubernetes, Azure, container technologies, and MLOps frameworks that support large‑scale enterprise ML operations. - Career Growth:
Collaborate with ML engineers, data scientists, architects, and IT teams, gaining exposure to complex, enterprise‑wide AI initiatives and governance. - Mission‑Driven Culture:
Your work will contribute directly to improving patient outcomes and advancing research at a nationally recognized cancer center.
The Machine Learning Engineer – Platforms supports the development, reliability, and scalability of the enterprise AI/ML platform used across clinical and business operations. The role focuses on MLOps engineering, platform integration, automation, container management, model monitoring, and lifecycle governance. The engineer partners closely with data scientists, ML engineers, and enterprise IT teams to support AI development and deployment, while ensuring compliance, performance, and responsible AI practices.
MajorWork Activities
The major work activities of the role include:
- Support development, administration, and maintenance of the enterprise AI/ML platform (Dataiku, Kubernetes, Azure), ensuring scalability, reliability, and smooth integration with institutional systems.
- Orchestrate training, deployment, and inference pipelines within Dataiku targeting Azure and on‑premises Kubernetes clusters.
- Develop and maintain MLOps workflows for reproducibility, version control, governance, and model lifecycle management.
- Manage and optimize containerized environments using Docker and Kubernetes to support data science workloads.
- Provide platform support for data scientists and ML engineers, troubleshooting environment, pipeline, and dependency issues.
- Monitor platform performance, cost, security, and compliance, ensuring alignment with enterprise and regulatory standards.
- Build and support scalable pipelines in Dataiku, Kubernetes, and Azure, including feature engineering, model tracking, and validation workflows.
- Debug, test, and resolve complex platform or pipeline issues using strong analytical and problem‑solving skills.
- Assist with healthcare data integration using standards such as HL7, FHIR, or DICOM when required for model development.
- Share platform knowledge, best practices, and methodologies through training, documentation, and cross‑team collaboration.
- Support analytics and automation workflows by enabling access to data, reviewing project requests, and assisting with interpretation.
- Communicate platform updates, risks, performance, and issue resolutions clearly during meetings and collaborative sessions.
- Work effectively with leaders, technical peers, and end users, ensuring strong communication across both technical and non‑technical stakeholders.
- Perform additional tasks as assigned to support the AI/ML platform, MLOps practices, and enterprise data science initiatives.
Required: Bachelor’s Degree Computer Science, Software Engineering, Data Science, Physics, Math & Statistics, or another related engineering discipline.
Preferred: Master’s Degree Computer Science, Software Engineering, Data Science, Physics, Math & Statistics, or another…
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