At a Glance
- Tasks: Own and optimise ML infrastructure for a healthcare AI platform, ensuring reliability and performance.
- Company: Join Circadia Health, a pioneering healthcare AI company transforming senior care operations.
- Benefits: Flexible remote work, competitive salary, and opportunities for professional growth.
- Other info: Dynamic team environment focused on innovation and improving healthcare outcomes.
- Why this job: Make a real impact on patient care with cutting-edge AI technology.
- Qualifications: 4+ years in MLOps or related fields, strong Python skills, and AWS experience.
The predicted salary is between 60000 - 80000 £ per year.
Circadia Health is a growth-stage healthcare AI company on a mission to prevent avoidable hospitalizations and transform senior-care operations. Our Circadia Intelligence Platform combines:
- Contactless sensing that monitors respiration and motion with medical-grade accuracy
- Predictive analytics & agentic AI workflows that detect 85% of preventable rehospitalizations ~11 days in advance
- Enterprise integrations that embed insights directly into EHR, care-coordination, billing, and compliance systems
Today our technology touches 40,000+ post-acute patients daily across skilled-nursing, home-health, and home-care networks. We are backed by leading healthcare and AI investors like Khosla Ventures, Village Global, Headline, Eric Yuan (CEO of Zoom), and others.
As an ML Ops Engineer at Circadia Health, you will own the infrastructure and operational lifecycle of the machine learning systems that power our clinical monitoring platform. You will build and maintain the production ML pipelines, deployment infrastructure, and monitoring systems that enable Circadia's predictive models to identify early signs of clinical deterioration. Reporting to the Principal ML Engineer, you will work across ML, backend, data, and clinical teams to ensure models are reliably trained, versioned, deployed, and monitored in both cloud and edge environments. You will be a key driver in elevating Circadia's ML practice – from reproducibility and experiment tracking to CI/CD for models and operational observability. This is a high-ownership role at a lean company where production reliability, rapid iteration, and pragmatic engineering are essential.
ML Pipeline Orchestration & Automation
- 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.
Model Deployment & Serving
- 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.
- Enable ML engineers to move seamlessly from experimentation to production deployment with minimal friction.
Data & Model Versioning
- Implement and maintain training data versioning and dataset management practices to ensure reproducibility of model training runs.
- Collaborate with ML engineers and data engineers to formalise dataset release and validation workflows.
Monitoring, Observability & Data Quality
- 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.
Elevating ML Practice
- 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.
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 deploying and operating ML workloads on AWS (Batch, EC2, S3, IAM, CloudWatch).
- Solid understanding of the ML lifecycle: training, evaluation, deployment, monitoring, and retraining.
- Familiarity with SQL and data warehousing platforms (Snowflake preferred).
- Experience implementing monitoring, logging, and alerting for production systems.
- Background in healthcare, medical devices, or clinical data systems.
- Experience with CI/CD systems for ML.
- Experience with data versioning tools (e.g., Apache Spark, Dask) for large-scale data processing.
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 communicate clearly across engineering, data science, and clinical teams. You’re motivated by building technology that directly improves patient care. Circadia Health is redefining patient monitoring through contactless sensing and AI-driven clinical insights. As we scale from tens of thousands to hundreds of thousands of monitored patients, our data infrastructure is central to everything we do. Build data systems that power clinical-grade AI and ML.
Remote Machine Learning Engineer employer: Circadia Health
Circadia Health is an exceptional employer for those passionate about leveraging AI to enhance healthcare outcomes. With a strong focus on employee growth, our collaborative work culture encourages innovation and ownership, allowing you to make a meaningful impact in the lives of patients. Located in a dynamic environment, we offer competitive benefits and the opportunity to work with cutting-edge technology that is transforming senior care operations.
StudySmarter Expert Advice🤫
We think this is how you could land Remote Machine Learning Engineer
✨Tip Number 1
Network like a pro! Reach out to folks in the industry, attend meetups, and connect with people on LinkedIn. You never know who might have the inside scoop on job openings or can refer you directly.
✨Tip Number 2
Show off your skills! Create a portfolio showcasing your projects, especially those related to ML Ops and healthcare. This gives potential employers a taste of what you can do and sets you apart from the crowd.
✨Tip Number 3
Prepare for interviews by brushing up on common ML Ops questions and scenarios. Practice explaining your past projects and how they relate to the role at Circadia Health. Confidence is key!
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen. Plus, we love seeing candidates who are proactive about their job search.
We think you need these skills to ace Remote Machine Learning Engineer
Some tips for your application 🫡
Tailor Your CV:Make sure your CV is tailored to the role of a Machine Learning Engineer. Highlight your experience with ML pipelines, AWS, and any relevant projects that showcase your skills in MLOps. We want to see how your background aligns with our mission at Circadia Health!
Craft a Compelling Cover Letter:Your cover letter is your chance to shine! Use it to explain why you're passionate about healthcare AI and how you can contribute to our team. Be sure to mention specific technologies or methodologies you've worked with that relate to the job description.
Showcase Your Projects:If you've worked on any relevant projects, whether personal or professional, make sure to include them. We love seeing practical applications of your skills, especially those that demonstrate your understanding of ML lifecycle and deployment strategies.
Apply Through Our Website:We encourage you to apply directly through our website for the best chance of getting noticed. It helps us keep track of applications and ensures you’re considered for the role. Plus, it’s super easy to do!
How to prepare for a job interview at Circadia Health
✨Know Your Tech Stack
Make sure you’re well-versed in the technologies mentioned in the job description, especially Python, Apache Airflow, and AWS. Brush up on your experience with ML pipeline orchestration and deployment strategies, as these will likely come up during the interview.
✨Showcase Your Problem-Solving Skills
Be prepared to discuss specific challenges you've faced in previous roles related to MLOps or ML engineering. Think of examples where you improved pipeline reliability or optimised model performance, and be ready to explain your thought process and the impact of your solutions.
✨Understand Healthcare Context
Since Circadia Health operates in the healthcare sector, it’s crucial to demonstrate your understanding of healthcare data systems and compliance requirements like HIPAA. Familiarise yourself with how AI can improve patient care and be ready to discuss how your skills can contribute to this mission.
✨Ask Insightful Questions
Prepare thoughtful questions that show your interest in Circadia's goals and challenges. Inquire about their current ML practices, how they handle data quality, or what their vision is for scaling their technology. This not only shows your enthusiasm but also helps you gauge if the company is the right fit for you.