Data Engineer

FRESH.
Birmingham
7 months ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer | HealthTech | Fully Remote (UK-Based) 🚀


Are you passionate about building data systems that genuinely make a difference? Join a fast-growing HealthTech company that's transforming how patient experience is understood and acted upon.


FRESH has partnered with a cutting-edge, Seed Funded AI-powered analytics platform that helps healthcare providers across the UK and US improve patient outcomes in real time. As they continue scaling, they’re looking for an experiencedData Engineerto help power their data infrastructure.


🔍 What You'll Be Doing:

  • Designing and optimising robust data pipelines using AWS services (Glue, Redshift, S3)
  • Developing scalable systems following best practices in data modelling and storage
  • Writing clean, efficient, maintainable Python code (TypeScript is a plus!)
  • Automating infrastructure deployments with AWS CDK and/or CloudFormation
  • DBT experience
  • Collaborating with cross-functional teams in an Agile/Scrum environment using tools like Jira


✅ We’re Looking for Someone Who:

  • Has hands-on experience with AWS data services and modern data architecture
  • Is confident working with PostgreSQL, Redshift, and large-scale data workflows
  • Understands data modelling principles and cloud-based system design
  • Communicates clearly and enjoys working as part of a collaborative team


🎁 What’s in It for You:

  • A dynamic and supportive work culture that values innovation and growth
  • Monthly wellbeing allowance
  • Opportunities for career development in a mission-driven organisation


If you're excited about building systems that directly contribute to improving lives in healthcare, this could be the perfect next step in your career.

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