Job descriptions & requirements
ABOUT THE COMPANY
CarePay Limited is an independent company that administers healthcare payments between funders, patients and healthcare providers. It directs finances from both public and private funders to healthcare providers for delivery of quality services to their eligible target group.
JOB SUMMARY
Requirements 3+ years of experience in a data-related role Proficiency in Python, SQL, dbt and Airflow Experience building, maintaining, and documenting APIs in Python (preferably FastAPI) Familiarity with modern DevOps practices – Cloud (AWS preferred), IaC (Terraform), CI/CD, Kubernetes Familiarity with data science/ML concepts Strong curiosity and willingness to learn Good understanding of data tooling landscape, ability to pick a right tool for the job while keeping a pragmatic mindset Nice to have: Some experience with LLMs/Agentic AI, Streamlit, Frontend development
RESPONSIBILITIES
The Data Generalist is an individual contributor in the Data team, operating across the full data lifecycle. In a small, highly autonomous team, this role focuses primarily on data engineering and backend engineering, with some involvement in data science and analytics engineering, emphasizing end-to-end delivery, stakeholder impact and continuous learning. Data Engineering & Backend Engineering Maintain and improve the data infrastructure using Snowflake, AWS, Terraform and Kubernetes, always keeping in mind reliability, security and cost Orchestrate, refactor and troubleshootETL pipelines in Airflow Develop FastAPI microservices that expose the data products, from simple reports to advanced rules-based and ML systems Monitor data quality alerts and raise occurring issues to other development teams Collaborate with the Head of Data on architectural decisions and technical improvements Analytics Engineering & Data ModellingBuild and maintain analytics models using dbt, following best practices such as star schemas and dimensional modelling Adapt ETL pipelines to evolving data models Ensure analytical datasets are reliable, well-documented, and optimised for self-service BI and downstream consumption Occasionally work on ad-hoc analyses and customer-facing dashboards Machine Learning & Advanced Analytics Design, build, and productionise machine learning models Develop user-facing ML and AI products and proof-of-concepts using tools such as scikit-learn, LLMs, Streamlit and FastAPI Collaboration & MentorshipActively collaborate with other Data team members through pairing sessions and informal mentorship Share best practices across data, backend and ML engineering Reach out to other technical leads to clarify backend logic, data semantics, or system behaviour required for data initiatives Ownership & Stakeholder InteractionLead data projects end-to-end with minimal supervision, from requirements gathering to delivery Proactively spot opportunities for improvements in the data infrastructure and ML/AI adoption Understand and articulate trade-offs between technical solutions, delivery speed, and stakeholder needs Translate complex technical concepts into clear, business-oriented language Occasionally present and explain data products, insights, and deliveries directly to stakeholders
REQUIRED SKILLS
Data analysis, Database administration, Reporting
REQUIRED EDUCATION
Diploma, Associate's degree
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