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Remote: ML Engineer (Image Processing/Life Sciences)

KE StaffingUnited States🇺🇸United StatesPosted 13 Jul 2026

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

Work Type
Remote
Level
Mid Senior

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

Docker
AWS
MLOps
MLflow
Kubernetes
PyTorch
Python
TensorFlow

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