Business Intelligence Developer

Birchington-on-Sea
2 days ago
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Business Intelligence Developer

We are looking for a skilled and motivated Business Intelligence Developer to join a data and analytics team. This role is ideal for someone with strong technical expertise in Power BI, Microsoft Business Intelligence tools, SQL, and DAX, who is passionate about transforming data into actionable insights.

As a BI Developer, you will be responsible for developing, maintaining, and enhancing business intelligence systems that support data-driven decision-making across the organisation. You will work closely with stakeholders to understand business requirements and deliver scalable, high-quality reporting and analytics solutions.

Key Responsibilities

Design, develop, and maintain Business Intelligence solutions and reporting systems.

Build interactive dashboards and reports using Power BI.

Develop robust data models to support analytics and reporting requirements.

Write efficient queries and stored procedures using SQL.

Develop calculations and measures using DAX to support advanced analytics.

Integrate data from multiple sources using Microsoft Business Intelligence tools.

Ensure data accuracy, performance optimisation, and governance of BI solutions.

Collaborate with business stakeholders to gather requirements and translate them into technical solutions.

Support and enhance existing BI systems, ensuring reliability and scalability.

Key Skills & Experience

Proven experience as a Business Intelligence Developer or similar BI/analytics role.

Strong expertise in Power BI, including dashboard and report development.

Extensive experience with SQL for querying, transformation, and optimisation.

Strong knowledge of DAX for building complex calculations and measures.

Experience with Microsoft Business Intelligence stack (e.g., SSIS, SSAS, SSRS).

Solid understanding of data modelling, including star and snowflake schemas.

Ability to translate business requirements into technical BI solutions.

Strong analytical thinking and problem-solving skills.

Desirable Skills

Experience working with data warehouses or data lake architectures.

Knowledge of ETL processes and data integration.

Experience with Azure data services or cloud-based BI platforms.

Understanding of data governance and best practices in data management

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