Remote: ML Engineer (Image Processing/Life Sciences)
Why This Role Stands Out
This remote ML Engineer role offers an exceptional opportunity to contribute to a groundbreaking global imaging platform, fostering significant career growth through cutting-edge MLOps and platform engineering. You'll thrive here if you're a mid-senior ML Engineer passionate about building robust ML workflows and integrating models within the life sciences sector, so be sure to apply!
Quick Overview
Job Description
Project: Global Imaging Platform Design & Build
Role Overview
This role will help enable algorithm development, model packaging, model registration, reproducible execution, and governed deployment workflows across imaging datasets, Integrated Data Products, and Analysis-Ready Datasets.
The role is focused on ML platform engineering, MLOps, model integration, and validation readiness rather than developing new clinical interpretation algorithms.
Key Responsibilities
- Build and support ML / MLOps capabilities within the Global Imaging Platform.
- Integrate ML models and workflows with GIP IDPs, ARDs, App Catalog, and model registry.
- Support SageMaker integration as the first connected algorithm development environment.
- Package algorithms for repeatable execution, versioning, lineage, and auditability.
- Implement model metadata, version control, experiment tracking, and reproducible build patterns.
- Support in-platform inferencing workflows for SageMaker-hosted or connected models.
- Work with data engineers, architects, and validation teams to ensure traceability from dataset to model output.
- Support CI/CD pipelines for ML model packaging, deployment, rollback, and promotion.
- Contribute to governance, observability, monitoring, and lifecycle controls for ML models.
- Support validation evidence generation, including documentation for GxP-ready workflows where applicable.
- Collaborate with architects, data scientists, platform engineers, and Genentech SMEs to align ML workflows with platform standards.
- Assist with onboarding future connected environments such as Vertex AI, Posit Workbench, and HPC.
Required Skills
- Strong hands-on experience with Python and ML engineering libraries.
- Experience with AWS SageMaker, model deployment, and endpoint / inference workflows.
- Experience with MLOps, model registry, experiment tracking, model versioning, and reproducibility.
- Familiarity with tools such as MLflow, Docker, GitHub, CI/CD pipelines, Kubernetes / EKS, or similar.
- Experience working with data pipelines, APIs, metadata, and lineage concepts.
- Understanding of model packaging, release management, rollback, and environment reproducibility.
- Ability to work with cross-functional teams across architecture, data engineering, validation, and product teams.
- Strong documentation skills for technical designs, implementation notes, and validation evidence.
Preferred Skills
- Experience in life sciences, clinical imaging, healthcare AI, or regulated data platforms.
- Familiarity with imaging formats and workflows such as DICOM, radiology, ophthalmology, or digital pathology.
- Experience with PyTorch, TensorFlow, or similar ML frameworks.
- Exposure to GxP, SaMD, validation, audit trail, traceability, or 21 CFR Part 11-aligned environments.
- Experience integrating ML models into enterprise platforms or application catalogs.
- Experience with cloud-native architecture and observability dashboards.
Expected Deliverables
- ML model packaging and registration workflows.
- SageMaker integration support for GIP algorithm framework.
- Reproducible ML execution patterns.
- Model metadata, lineage, and versioning implementation.
- ML lifecycle documentation and technical implementation notes.
- Support for validation evidence and audit-readiness documentation.
- Support for model deployment, monitoring, and rollback workflows.
Qualifications
- Bachelor’s or Master’s degree in Computer Science, Data Science, Engineering, Biomedical Engineering, or related field.
- 4+ years of experience in ML engineering, MLOps, or applied AI platform development.
- Prior experience supporting enterprise-scale ML platforms or regulated data environments is preferred.
Skills
Similar jobs
ML Engineer
Apex Systems · McLean, United States
1 hour ago€75/hrMachine Learning Researcher / Machine Learning Engineer
Anson McCade · New York, United States
2 hours ago$200k - $2000k/yrPrincipal Machine Learning Engineer I
LexisNexis(LNLP) · Raleigh, United States
3 hours ago$136.1k - $252.8k/yrMachine Learning Engineer Lead
LexisNexis(LNLP) · Raleigh, United States
3 hours ago$115.4k - $192.3k/yrSenior Machine Learning Engineer III ***Raleigh, NC***
LexisNexis(LNLP) · Raleigh, United States
3 hours ago$118.3k - $219.8k/yrAir Force A10 AI/ML Engineer / Data Scientist with Security Clearance
Noblis · Arlington, United States
9 hours ago$132.9k - $207.8k/yr