At a Glance
- Tasks: Develop real-time algorithms for wearable health data analysis.
- Company: Join all.health, a leader in innovative healthcare solutions.
- Benefits: Enjoy remote work options and the chance to impact global health.
- Why this job: Shape the future of digital health with cutting-edge technology.
- Qualifications: MS or PhD in relevant fields and 3-5 years of experience required.
- Other info: Work in a collaborative environment focused on regulatory compliance.
The predicted salary is between 43200 - 72000 £ per year.
all.health is at the forefront of revolutionizing healthcare for millions of patients worldwide. Combining more than 20 years of proprietary wearable technology with clinically relevant signals, all.health connects patients and physicians like never before with continuous, data-driven dialogue. This unique position of daily directed guidance stands to redefine primary care while helping people live happier, healthier, and longer.
We’re looking for a Machine Learning Engineer with a passion for developing impactful healthcare solutions using wearable data. You’ll play a key role in building real-time, FDA-compliant algorithms that analyze continuous physiological signals from wearables. This is a high-impact role with the opportunity to shape the future of digital health and help bring clinically validated, regulatory-ready ML solutions to market.
Location: Remote / Hybrid / (USA-SF, USA-remote, UK-London, UK-remote)
Responsibilities:
- Design and implement machine learning models for real-time analysis of wearable biosignal data (e.g., ECG, PPG, accelerometer).
- Develop algorithms that meet clinical-grade performance standards for use in regulated environments.
- Preprocess and manage large-scale, continuous time-series datasets from wearable sensors.
- Collaborate with clinical, product, and regulatory teams to ensure solutions align with FDA, SaMD, and GMLP requirements.
- Optimize algorithms for deployment on resource-constrained devices (e.g., edge, mobile, embedded systems).
- Run thorough validation experiments including performance metrics like sensitivity, specificity, ROC-AUC, and precision-recall.
- Contribute to technical documentation and regulatory submissions for medical-grade software.
Requirements/Qualifications:
- MS or PhD in Machine Learning, Biomedical Engineering, Computer Science, or a related field.
- 3–5+ years of experience applying machine learning to time-series or physiological data.
- Strong foundation in signal processing and time-series modeling (e.g., deep learning, classical ML, anomaly detection).
- Proficient in Python and ML frameworks such as PyTorch or TensorFlow.
- Familiarity with FDA regulatory pathways for medical software (e.g., 510(k), De Novo), and standards like IEC 62304 or ISO 13485.
- Experience with MLOps practices and model versioning in compliant environments.
Preferred Qualifications:
- Experience building ML models with wearable data (e.g., continuous heart rate, motion, respiration).
- Exposure to embedded AI or edge model deployment (e.g., TensorFlow Lite, Core ML, ONNX).
- Knowledge of healthcare data privacy and security (e.g., HIPAA, GDPR).
- Familiarity with GMLP (Good Machine Learning Practice) and clinical evaluation frameworks.
The successful candidate’s starting pay will be determined based on job-related skills, experience, qualifications, work location, and market conditions. These ranges may be modified in the future.
Machine Learning Engineer – Wearable Health Algorithms employer: all.health
Contact Detail:
all.health Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Machine Learning Engineer – Wearable Health Algorithms
✨Tip Number 1
Familiarise yourself with the latest advancements in wearable technology and healthcare algorithms. Understanding the current trends and challenges in this field will help you engage in meaningful conversations during interviews and demonstrate your passion for the role.
✨Tip Number 2
Network with professionals in the healthcare and machine learning sectors. Attend relevant conferences, webinars, or meetups to connect with industry experts. This can provide valuable insights and potentially lead to referrals that could enhance your application.
✨Tip Number 3
Showcase your practical experience with wearable data by working on personal projects or contributing to open-source initiatives. Having tangible examples of your work can set you apart from other candidates and demonstrate your hands-on skills in real-time analysis.
✨Tip Number 4
Prepare to discuss regulatory compliance in detail, especially regarding FDA pathways and standards like IEC 62304. Being well-versed in these topics will show that you understand the importance of compliance in developing healthcare solutions and can contribute effectively to the team.
We think you need these skills to ace Machine Learning Engineer – Wearable Health Algorithms
Some tips for your application 🫡
Tailor Your CV: Make sure your CV highlights relevant experience in machine learning, particularly with wearable data and time-series analysis. Emphasise any projects or roles that demonstrate your ability to develop algorithms for healthcare applications.
Craft a Compelling Cover Letter: In your cover letter, express your passion for healthcare technology and how your skills align with the role. Mention specific experiences that showcase your expertise in signal processing and compliance with FDA regulations.
Showcase Technical Skills: Clearly outline your proficiency in Python and ML frameworks like PyTorch or TensorFlow. If you have experience with MLOps practices or model versioning, be sure to include that as well, as it is highly relevant to the position.
Highlight Collaborative Experience: Since the role involves collaboration with clinical and regulatory teams, mention any past experiences where you worked cross-functionally. This will demonstrate your ability to communicate effectively and contribute to team goals.
How to prepare for a job interview at all.health
✨Showcase Your Technical Skills
Be prepared to discuss your experience with machine learning models, especially in relation to time-series and physiological data. Highlight specific projects where you've implemented algorithms, and be ready to explain your approach to signal processing and model optimisation.
✨Understand Regulatory Standards
Familiarise yourself with FDA regulatory pathways and standards like IEC 62304 or ISO 13485. Demonstrating knowledge of these regulations will show that you understand the importance of compliance in healthcare technology.
✨Prepare for Practical Scenarios
Expect to tackle real-world problems during the interview. You might be asked to design a simple algorithm or analyse a dataset. Practising these scenarios beforehand can help you articulate your thought process clearly.
✨Emphasise Collaboration Skills
Since the role involves working with clinical, product, and regulatory teams, be ready to discuss your experience in collaborative environments. Share examples of how you've successfully worked with cross-functional teams to achieve project goals.