Machine Learning/Data Engineer
Carda Health
- United Kingdom
- Permanent
- Full-time
- Build and own our data infrastructure to ingest, store, and process large volumes of healthcare data
- Build and deploy robust ML pipelines, including data extraction, feature development, model training, testing, and deployment
- Collaborate with the rest of the engineering team to integrate ML and AI applications into user-facing production systems
- Continuously monitor, evaluate, and optimize the performance of deployed models to ensure they meet business goals and provide high-quality user experiences
- Collaborate with product, engineering, clinical, and operations teams to translate business needs into data and ML solutions
- Implement engineering best practices for CI/CD, automated testing, and model versioning
- 5+ years of ML engineering experience in a professional setting with a proven track record of owning the end-to-end machine learning lifecycle, including data ingestion, preprocessing, model training, deployment, and production monitoring
- 3+ years of experience with modern machine learning tools and libraries (scikit-learn, PyTorch, TensorFlow, spaCy, etc) with strong proficiency in Python
- 3+ years of experience with any of the following fundamental AI technologies: vector search, embedding models, recommender systems, supervised, unsupervised machine learning, deep learning, reinforcement learning, LLM orchestration, RAG systems, etc
- Familiarity with cloud services and MLOps tooling to deploy and scale data and ML workloads cost-effectively
- Familiarity with data warehouses (Redshift, BigQuery, Snowflake, etc) and best practices around data pipeline tools
- Strong proficiency in SQL
- Comfort with ambiguity and short feedback loops
- A passion for building products that make a real-world impact
- Professional experience with healthcare applications of machine learning, AI, and data engineering
- Experience working with HIPAA compliant applications and healthcare data (FHIR, HL7, clinical notes, etc.)
- Previous experience at an early-stage startup