Data Analyst

Forsyth Barnes
Cambridge
3 weeks ago
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Job Title: BI Engineer / Data AnalystLocation: Hybrid – Durham or Cambridgeshire office 1 day per weeIndustry: UtilitiesSalary: Up to £42k + PackageAbout the RoleForsyth Barnes is partnering with a leading utilities company seeking a BI Engineer to strengthen its data analytics capabilities. This role sits within the Data Analytics team, responsible for delivering Management Information (MI) and analysis to drive business decisions and operational efficiency.As a BI Engineer, you will play a key role in designing and developing Power BI reports and dashboards, building scalable dimensional data models, and ensuring data-driven insights support key business functions. You will work closely with stakeholders to define requirements, optimise data structures, and enhance reporting capabilities.Key Responsibilities * Design, develop, and maintain Power BI reports and dashboards. * Gather and define reporting requirements from key stakeholders. * Develop and maintain dimensional data models to support scalable BI solutions. * Extract, transform, and load (ETL) data from multiple sources into structured models. * Ensure data accuracy, consistency, and accessibility for internal teams. * Support the development of MI reporting solutions and data structures. * Document solutions, test outputs, and validate results with users. * Act as a data and analytics business partner to other teams. * Contribute to the Data Analytics Strategy and ensure timely delivery of projects.Key Skills & ExperienceEssential: * Strong experience with Power BI, SQL, and dimensional data modelling. * Understanding of data warehousing and relational databases. * Experience in gathering MI requirements and delivering BI solutions. * Strong analytical and problem-solving skills. * Ability to manage multiple tasks in a fast-paced environment.Desirable: * Knowledge of SSRS, Jira, Confluence, or similar reporting tools. * Experience with MS SQL Server, ETL processes, and data warehouse development. * Understanding of the utilities sector and its data challenges.Personal Attributes * Highly numerate with strong attention to detail. * Organised, proactive, and able to work independently. * Strong communication and stakeholder management skills. * Commercially aware with a passion for data-driven decision-making

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