Data Engineer

Pharmacy2U | Certified B Corp
Leeds
3 days ago
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Overview

Role: Data Engineer

Salary: DOE plus extensive benefits

Contract type: Permanent

Employment type: Full time

Working hours: We work on a core hours principle. Our core hours are 09:30 - 16:00; you can work around these to suit you!

Do you want to work for the nation's largest online pharmacy ensuring excellence for all our patients? We're a market leader in the pharmacy world, with 25 years' experience, helping over 1.8 million patients in England manage their NHS prescriptions from request through to delivery. We are Great Place to Work certified as we consider colleague experience a top priority every day, and as a certified B Corp we also meet high standards of social and environmental responsibility. Our people are fundamental to our success and ensuring we achieve our vision to be a world leading, patient-centric digital healthcare provider. We are committed to continuing to develop a positive, open and honest working environment for all.

Location: We operate a hybrid schedule, meaning a minimum of 1 day a week in the office based at Thorpe Park, Leeds.


What you'll be doing
  • Design and implement data flows to connect production and analytical systems.
  • Create solution and data-flow diagrams, as well as documentation to support governance, maintenance, and usage by internal teams.
  • Ensure adherence to change and release management processes
  • Communicate with stakeholders to properly understand requirements, translating between technical and non-technical language
  • Support the development of data products based on varied data sources, using a range of storage technologies and access methods
  • Assess the current state and recommend appropriate tools and techniques to satisfy new requests
  • Re-engineer existing data flows to better support scalability
  • Consider non-functional requirements such as auditing and archiving of data
  • Support data quality and master data management and assist BI developers and software engineers in effectively integrating and reporting on data with accuracy and reliability
  • Respond to support escalations from DevOps and technical colleagues, providing troubleshooting as required

Who we're looking for
  • Strong experience with MI/BI Technologies (SSIS, SSRS and SSAS)
  • Proven experience as a Data Engineer in a similar role
  • Strong interest in learning about Pharmacy2U
  • Ability to translate technical concepts into non-technical language
  • Strong business communication and stakeholder management skills
  • Ability to troubleshoot and debug complex data engineering problems, including performance bottlenecks and data pipeline failures

What happens next

Please click apply and if we think you are a good match, we will be in touch to arrange an interview.

Applicants must prove they have the right to live in the UK.

All successful applicants will be required to undergo a DBS check.

Unsolicited agency applications will be treated as a gift.


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