Oracle Business Intelligence Consultant

In Technology Group
Belfast
10 months ago
Applications closed

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Job Title: Oracle OTBI Developer

Salary: Up to £90,000 + Benefits

Location: Belfast (Remote – occasional travel)


As aOracle OTBI Developer,you will be responsible for creating, managing and optimising reporting solutions and analytics tools within the Oracle Cloud ecosystem


Key Responsibilities:

  • Design, develop OTBI reports and dashboards to meet business requirements.
  • Leverage OTBI subject areas to create ad hoc queries, analyses and dashboards.
  • Ensure data accuracy and relevancy in OTBI Outputs.
  • Create and maintain BI Publisher reports using XML, RTF templates, and SQL queries.
  • Develop pixel-perfect reports and formatted outputs for printing or distribution.
  • Optimize report performance and troubleshoot issues.
  • Analyse business requirements and translate them into data models or reporting solutions
  • Collaborate with functional teams to understand key performance indicators (KPIs) and reporting needs.
  • Integrate OTBI and BI Publisher with Oracle Fusion SaaS modules (e.g., HCM, ERP, SCM)
  • Work with Oracle Data Models and subject areas specific to Oracle SaaS applications.
  • Optimize SQL queries and report designs for performance


The role is for one of the largest consultancy’s in the world, they are a great employer to have on your CV!

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