Data Engineer

Change Digital – Digital & Tech Recruitment
London
1 day ago
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Are you an experienced Data Engineer ?


Do you have strong Python & Databricks skills ?


Would you like to work for a fast growing business that specialises in Business Intelligence, Data Analytics & AI ?


Its a hybrid working role and you will be based from either their London, Leeds, Manchester, Birmingham or Edinburgh office, typically 3 days a week from home and 2 day in office / on client site.


Responsibilities:

  • Designing and delivering data solutions in client-facing environments
  • Data engineering across modern cloud data platforms
  • Building, transforming, and optimising datasets using PySpark and SQL
  • Supporting analytics and reporting through Power BI
  • Working confidently within Databricks for scalable data processing
  • Communicating effectively with technical and non-technical stakeholders


Preferred skills:

  • Databricks
  • PySpark
  • Python
  • SQL
  • Power BI

Candidates will have real project and client exposure with these technologies, not just academic or limited exposure


Additional skills:

  • Consultant mindset with strong communication skills
  • Comfortable working directly with clients and stakeholders
  • Delivery-focused and able to operate with limited supervision
  • Practical, hands-on engineer rather than a purely strategic or leadership profile
  • Any experience with SAS


This is a fantastic opportunity to join a company that truly values their staff.


For more information get in touch asap

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