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Senior Business Intelligence Data Engineer

Current staff
UK
8 months ago
Applications closed

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Be at the forefront of UWA’s digital transformation. Work closely with cross-functional teams, including IT and business stakeholders. Full-time appointment on a permanent/ongoing basis. Base salary: $112,114 - $122,544 plus 17% superannuation. About the area At UWA, we are making strategic investments in Information and Technology Services to support our university's goals. Our focus is on leveraging technological advancements to enhance our services and enable innovative teaching and research. Robust, flexible, and agile enterprise architecture and IT services are crucial in achieving these objectives. About the opportunity Design and maintain Business Intelligence systems to provide high-quality, actionable insights for key stakeholders across UWA. Working within the BI team, collaborate with diverse University stakeholders to transform complex data into meaningful data structures for reporting. Contribute to UWA’s digital transformation by supporting strategic decision-making through improved data governance and reporting capabilities. About you Relevant tertiary qualification or equivalent experience in designing and implementing Business Intelligence systems. Strong experience with the Azure BI stack, Databricks, data modelling, ETL tools, and preparing data for reporting purposes. Proven ability to deliver robust BI solutions within a complex environment, showing a focus on well designed, repeatable and efficient coding practices. Excellent communication and stakeholder management skills, with the ability to balance competing priorities. Highly developed organisational skills, with the capacity to identify improvement opportunities and drive outcomes. Position description: Senior Business Intelligence Data Engineer (518470).pdf To learn more about this opportunity, please contact Carole Godbolt at carole.godboltuwa.edu.au . How to apply 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 Tuesday, 8 October 2024. This position is only open to Current UWA staff. 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. Learn more about us . 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.

National AI Awards 2025

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