Business Intelligence Developer

Staff Selection UK Ltd
Halifax
2 days ago
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Job Title: Business Intelligence Developer
Location: Halifax, West Yorkshire (Hybrid)
Salary: £45,000 per annum
Experience Required: Minimum 2 years

About the Role
We are looking for a motivated Business Intelligence Developer to join our growing data and analytics team based in Halifax. This role is ideal for someone with at least two years of experience working with data, reporting, and BI tools who is looking to further develop their career in a collaborative and forward-thinking organisation.

As a Business Intelligence Developer, you will be responsible for designing, developing, and maintaining BI solutions that support data-driven decision making across the business. You will work closely with stakeholders to transform data into meaningful insights through dashboards, reports, and data models.

Key Responsibilities

* Develop and maintain BI dashboards and reports using modern BI tools (e.g. Power BI, Tableau, or similar)

* Design and optimise data models to support reporting and analytics requirements

* Write and optimise SQL queries to extract and transform data from multiple sources

* Collaborate with business stakeholders to understand reporting requirements

* Support the development and maintenance of data pipelines and ETL processes

* Ensure data quality, consistency, and performance across reporting systems

* Provide insights and recommendations based on data analysis

Required Skill...

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