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MLOps Engineer

CurieDx

Hosur · On-site Full-time Mid Level Today

About the role

About

Curie Dx is a Johns Hopkins–affiliated digital health startup building a “lab in your pocket.” Our platform uses smartphone images, digital biomarkers, and AI to detect infections like strep throat, influenza, and UTI, helping patients and clinicians make faster, evidence‑based decisions without swabs, labs, or long clinic visits.
We are moving deep learning models from research into real‑world clinical deployment. This role is critical to making that happen reliably, securely, and at scale.
We’re a small, fast team where your work ships to production and directly impacts patient care. This is a role where you’ll be building the data pipelines and ML infrastructure from the ground up.

Responsibilities

  • ML Pipeline Engineering

    • Build and maintain AWS SageMaker pipelines for training, validation, and deployment
    • Implement experiment tracking and model versioning
    • Automate retraining workflows
  • Data Engineering for ML

    • Write Python scripts to ingest, clean, transform, and validate metadata datasets
    • Build preprocessing and augmentation pipelines for image and other data formats
    • Structure data so ML engineers can immediately begin model development
    • Maintain dataset versioning and lineage
  • Infrastructure & Cloud Architecture

    • Design AWS architecture for GPU training workloads
    • Manage S3 data storage, IAM roles, networking, and security configurations
    • Optimize cost and compute efficiency
    • Build monitoring and logging systems for production ML services
  • Production Deployment

    • Containerize and deploy models for inference
    • Implement performance monitoring and drift detection
    • Improve reliability and observability of deployed ML systems

Requirements

  • 3+ years of experience in MLOps, ML engineering, or production ML system deployments
  • Hands‑on experience building data pipelines for image/video preprocessing, augmentation, and annotation workflows
  • Deep AWS expertise with hands‑on experience in SageMaker, EC2 (GPU instances), S3, Lambda, and the broader AWS ecosystem for ML workloads
  • Experience with CI/CD pipelines, containerization (Docker), and orchestration tools (Airflow, Step Functions)
  • Familiarity with annotation tools and data labeling workflows
  • Must be comfortable operating in lean environments – scrappy, resourceful, and action‑oriented

Why Join Curie Dx

  • Backed by Johns Hopkins, Microsoft, National Institutes of Health, National Science Foundation, and BARDA
  • Real‑world deployment of AI in healthcare
  • Lean, fast‑moving startup environment
  • Opportunity to build foundational ML infrastructure from the ground up

Summary

If you’re passionate about creating meaningful impact and want to join a team that values collaboration and innovation, we’d love to hear from you.

Curie Dx is an equal opportunity employer and values diversity. All qualified applicants will be considered without regard to race, color, religion, gender, gender identity or expression, sexual orientation, national origin, genetics, disability, age, or veteran status.

Requirements

  • 3+ years of experience in MLOps, ML engineering, or production ML system deployments
  • Hands-on experience building data pipelines for image/video preprocessing, augmentation, and annotation workflows
  • Deep AWS expertise with hands-on experience in Sage Maker, EC2 (GPU instances), S3, Lambda, and broader AWS ecosystem for ML workloads
  • Experience with CI/CD pipelines, containerization (Docker), and orchestration tools (Airflow, Step Functions)
  • Familiarity with annotation tools and data labeling workflows
  • Must be comfortable operating in lean environments - scrappy, resourceful, and action-oriented

Responsibilities

  • Build and maintain AWS Sage Maker pipelines for training, validation, and deployment
  • Implement experiment tracking and model versioning
  • Automate retraining workflows
  • Write Python scripts to ingest, clean, transform, and validate metadata datasets
  • Build preprocessing and augmentation pipelines for image and other data formats
  • Structure data so ML engineers can immediately begin model development
  • Maintain dataset versioning and lineage
  • Design AWS architecture for GPU training workloads
  • Manage S3 data storage, IAM roles, networking, and security configurations
  • Optimize cost and compute efficiency
  • Build monitoring and logging systems for production ML services
  • Containerize and deploy models for inference
  • Implement performance monitoring and drift detection
  • Improve reliability and observability of deployed ML systems

Skills

AWSAWS LambdaAWS Sage MakerCI/CDDockerEC2IAMMLOpsPythonS3Step Functions

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