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Business Intelligence Developer

Impellam Group
Birmingham
1 week ago
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BI/Reporting Developer- £60k+ Bonus - Specialist Fintech


A specialised fintech, one of the UK's leading lending providers, is looking for a Reporting Developer to create and maintain reports for various systems.


Working alongside lead reporting developers and reporting analysts, you will create reports on their loan servicing platform and MI/BI Report for various business units.


Location: Remote with ad-hoc visits to London office (X1 per quarter)

Salary: £60,000 + bonus


Our Expectations for the Ideal Candidate


  • Minimum 3years of experience as a Reporting Developer or a similar role
  • Strong knowledge/experience with Business Objects SAP (Data services and Information design tools)
  • Experience with Mortgage lending services (must have)
  • Extensive experience with SQL, preferably MySQL
  • Desirable experience with Redshift
  • Experience developing ETL processes from multiple data sources/types
  • Ability to communicate and operate with global distributed teams (internal and off-shore)


If you're interested in joining a fintech that has seen significant growth and is dedicating their resources to improving its services with the latest technologies, please get in touch to get a conversation rolling.

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