Key Responsibilities
- Own and extend Circadia’s ML pipeline orchestration using Apache Airflow, including training, evaluation, and deployment workflows.
- Build and maintain automated pipelines for model retraining, validation, and promotion across development, staging, and production environments.
- Implement pipeline monitoring, alerting, and failure recovery to eliminate silent failures and ensure operational reliability.
- Design pipeline architectures that support rapid experimentation while enforcing production-grade reproducibility.
- Deploy and manage ML models on AWS infrastructure (e.g. AWS Batch for batch inference workloads).
- Support deployment of models to edge devices, including Circadia’s clinical monitoring hardware, working with firmware and embedded engineering teams as needed.
- Manage model versioning, promotion, and rollback workflows through the MLflow model registry.
- Evaluate and implement strategies for safe model rollouts (e.g. shadow deployments, canary releases) as the platform matures.
- Maintain and improve the MLflow-based experiment tracking and model registry infrastructure.
- Establish conventions for experiment logging, artifact storage, model metadata, and lineage tracking.
- Enable ML engineers to move seamlessly from experimentation to production deployment with minimal friction.
- Implement and maintain training data versioning and dataset management practices to ensure reproducibility of model training runs.
- Track dataset lineage, labeling provenance, and feature dependencies alongside model versions.
- Collaborate with ML engineers and data engineers to formalise dataset release and validation workflows.
- Build monitoring systems for model performance in production, including data drift detection, prediction quality tracking, and alerting on degradation.
- Implement operational dashboards for pipeline health, compute utilisation, and deployment status.
- Collaborate with data engineering to ensure upstream data quality and pipeline reliability for ML feature inputs.
- Develop incident response procedures and runbooks for ML system failures.
- Manage and optimise AWS compute resources (Batch, EC2, or similar) used for model training and inference.
- Design infrastructure-as-code solutions for reproducible ML environments.
- Drive cost optimisation across ML compute, storage, and data transfer.
- Support Snowflake integrations for feature generation and training data pipelines.
- Introduce and champion ML engineering best practices including CI/CD for models, automated testing for ML pipelines, and reproducible training workflows.
- Build internal tooling and templates that accelerate the ML development-to-production cycle.
- Document operational processes, architecture decisions, and onboarding materials for the ML platform.
- Participate in architecture discussions and technical planning to ensure ML systems scale with Circadia’s growth.
- Ensure all ML pipelines and infrastructure meet healthcare security and privacy requirements, including HIPAA and SOC 2.
- Apply best practices for handling Protected Health Information (PHI) in training data, model artifacts, and inference outputs.
- Maintain audit trails for model decisions, data access, and deployment history.
Required Qualifications
- 4+ years of experience in MLOps, ML Engineering, DevOps, or a closely related infrastructure role.
- Strong proficiency in Python for ML pipeline development, tooling, and automation.
- Hands-on experience with ML pipeline orchestration tools, particularly Apache Airflow.
- Experience with model registries and experiment tracking platforms (MLflow preferred).
- Experience deploying and operating ML workloads on AWS (Batch, EC2, S3, IAM, CloudWatch).
- Solid understanding of the ML lifecycle: training, evaluation, deployment, monitoring, and retraining.
- Experience with containerisation (Docker) and infrastructure-as-code.
- Proficiency with Git and version control workflows.
- Familiarity with SQL and data warehousing platforms (Snowflake preferred).
- Experience implementing monitoring, logging, and alerting for production systems.
- Strong debugging and incident response skills for complex distributed systems.
Preferred Qualifications
- Experience deploying models to edge or embedded devices.
- Background in healthcare, medical devices, or clinical data systems.
- Familiarity with model serving frameworks (e.g., TorchServe, TF Serving, Triton, or custom solutions).
- Experience with CI/CD systems for ML (e.g., GitHub Actions, Jenkins, or similar).
- Experience with data versioning tools (e.g., DVC, LakeFS, or similar).
- Experience supporting data science or ML research teams in a production context.
- Exposure to HIPAA compliance and healthcare security best practices.
- Experience with distributed compute frameworks (e.g. Apache Spark, Dask) for large-scale data processing.
- Experience with streaming or real-time inference architectures.
What You Bring
- You take ownership of ML infrastructure end-to-end — from training pipelines to production monitoring.
- You care deeply about reliability, reproducibility, and operational excellence in ML systems.
- You have strong opinions (loosely held) on how to build a great ML platform, and you’re eager to put them into practice.
- You are comfortable working in a startup environment where you’ll wear multiple hats and move fast.
- You communicate clearly across engineering, data science, and clinical teams.
- You’re motivated by building technology that directly improves patient care.
Skills Required
- 4+ years of experience in MLOps, ML Engineering, DevOps, or related infrastructure role
- Proficiency in Python for ML pipeline development and automation
- Hands-on experience with Apache Airflow for pipeline orchestration
- Experience with model registries and experiment tracking platforms
- Experience deploying and operating ML workloads on AWS (Batch, EC2, S3, IAM, CloudWatch)
- Solid understanding of the ML lifecycle: training, evaluation, deployment, monitoring, and retraining
- Experience with containerization (Docker) and infrastructure-as-code
- Proficiency with Git and version control workflows
- Familiarity with SQL and data warehousing platforms
- Experience implementing monitoring, logging, and alerting for production systems
- Strong debugging and incident response skills for complex distributed systems
- Experience with MLflow model registry and experiment tracking
- Experience deploying models to edge or embedded devices
- Background in healthcare, medical devices, or clinical data systems
- Familiarity with model serving frameworks (TorchServe, TF Serving, Triton, or custom)
- Experience with CI/CD systems for ML (GitHub Actions, Jenkins, or similar)
- Experience with data versioning tools (DVC, LakeFS, or similar)
- Exposure to HIPAA compliance and healthcare security best practices
- Experience with distributed compute frameworks (Apache Spark, Dask) or streaming/real-time inference architectures
What We Do
Circadia Health helps reduce preventable rehospitalizations and save lives across the post-acute care continuum. Our AI-powered early detection system combines proprietary sensor technology – the Circadia C200 System (FDA-cleared) for contactless respiratory, heart rate, and motion monitoring – with EHR data and care coordination. We are venture-backed and in a rapid growth stage. Our US headquarters is in Los Angeles, and we have just opened an office in NYC.
Why Work With Us
We fuse hardware, software, data science, and clinical services to provide a full-stack virtual care delivery model across SNFs and Home. We are a team of designers, engineers, clinicians, and scientists.









