Data Analyst / Data Engineer

The Digital Bench Ltd
Australia
Last month
£65,000 – £90,000 pa

Salary

£65,000 – £90,000 pa

Posted
8 Apr 2026 (Last month)

Location: Perth, Sydney and Melbourne, Australia (Relocation support considered)

About the Role

We are seeking a Data Analyst or Data Engineer to support data-driven decision making across multiple business functions and industries in Australia.

You will work with modern analytics tools and contribute to building scalable data solutions.

Key Responsibilities

* Analyse datasets to identify trends and insights

* Develop dashboards and reports

* Build and maintain data pipelines

* Work with stakeholders to understand data requirements

* Ensure data quality and integrity

Required Skills

* Strong SQL skills

* Experience with Power BI, Tableau or similar tools

* Experience with Python or R

* Understanding of ETL processes

* Strong analytical mindset

Desirable

* Experience with cloud data platforms

* Knowledge of data warehousing concepts

* Experience with big data tools

Eligibility Requirement

Applicants must be eligible to live and work in Australia.

Benefits

* Competitive salary package

* Flexible working options

* Career progression opportunities

* Modern technology environment

* Relocation support considered

Develop your data career in Australia

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