Business Intelligence Data Designer and Engineer

UWA
Crawley
3 days ago
Create job alert

  • 26 weeks paid parental leave after one year and 36 weeks after five years continuous service, regardless of gender.
  • 4 weeks annual leave with the option to purchase more.
  • 13 weeks long service leave after seven/ten years.
  • Salary packaging options.
  • 17% superannuation, with the option to reduce to the minimum super guarantee.
  • 25% off UWA full fee courses, discounted health insurance, and convenient on-campus childcare options.
  • Incremental progression based on 12 months continuous service.

Business Intelligence Data Designer and Engineer

Job no: 521803
Work type: Full Time
Location: Crawley
Categories: Information Technology



  • Play a key role in shaping UWA’s data-driven future by designing and delivering robust BI solutions.
  • Collaborate with stakeholders across the University to transform complex data into meaningful data structures which are suitable for reporting, analytics and ML/AI initiatives.
  • Full-time appointments on an ongoing basis.
  • Base salary range: $104,243 – $115,661 p.a. plus 17% superannuation.

About the area

UWA is making significant investments in the Information and Technology Services to enable its strategic direction and goals. UWA is also looking to utilise technology advancements to expand its services and create new and innovative teaching and research models.


Robust, flexible, integrated and agile enterprise architecture, information and technology services are vital to enabling the university strategic objectives.


About the opportunity

  • Design, model and maintain BI solutions with a focus on data profiling, modelling, transformation, and migration in large and complex environments.
  • Collaborate with business users and technical teams to define requirements and deliver accurate, meaningful data structures for reporting and analytics.
  • Drive improvements in data standards and governance across core University systems.

About you

  • Relevant tertiary qualification or equivalent competency.
  • Substantial experience in planning, designing, and implementing BI systems.
  • Strong skills in cloud-based ETL/ELT tools such as Databricks and Azure BI stack, data modelling (multi-dimensional and relational), and complex systems environments.
  • Highly developed communication and stakeholder engagement skills.
  • Ability to plan and deliver in complex, changing situations while maintaining a customer-focused approach.

Note

Employment checks will include information on gender-based violence, sexual harassment, and related misconduct to meet legal obligations. A current National Police Clearance Certificate will be required by the successful applicant.


Please apply online via the Apply Now button. The content of your Resume and Cover Letter should demonstrate how you meet the selection criteria.


Closing date

11:55 PM AWST on Friday, 30 January 2026


This position is only open to Current UWA staff.


Please note: Unsolicited applications from recruitment agencies will not be accepted outside of formal channels.


About the University

The University of Western Australia (UWA) is ranked among the top 100 universities in the world and a member of the prestigious Australian Group of Eight research intensive universities. With a strong research track record, vibrant campus and working environments, there is no better time to join Western Australia’s top university.


Our commitment to inclusion and diversity

UWA is committed to a diverse workforce and an equitable and inclusive workplace. We are committed to fostering a safe environment for all, including Aboriginal and Torres Strait Islander people, women, those from culturally and linguistically diverse backgrounds, the LGBTIQA+ community, and people living with disability.


If you require any reasonable adjustments, we encourage you to advise us at the time of application. Alternatively, you can contact us for assistance during the recruitment process.


If you have queries relating to your application, please contact the individual named in the advertisement. Alternatively, please contact the Talent team at with details of your query. To enable a quick response, please include the 6-digit job reference number.


Advertised: 23 Jan 2026 W. Australia Standard Time
Applications close: 30 Jan 2026 W. Australia Standard Time


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