Power BI Data Analyst

REED Specialist Recruitment
Belfast
3 days ago
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BI Analyst - Belfast (On site) - Part Time REED Technology are delighted to partner with an excellent retail organisation who are seeking a Power BI analyst to join their Belfast based team. In this role, you will play a key part in transforming data into meaningful insights that support operational excellence and help drive strategic decision-making across the business. Working closely with key stakeholders, you will design, develop and maintain professional dashboards and reports that ensure our teams have timely, accurate and visually engaging information at their fingertips. The successful candidate will embrace our Company values at all times and be committed to continuous improvement. Main Accountabilities Design, develop and maintain Power BI dashboards, reports and data models to support business decision-making. Connect to, clean and transform datasets from various internal and external sources. Convert existing reports into Power BI and improve data visualisation standards across the Company. Work with stakeholders to gather reporting requirements and deliver high-quality, accurate outputs. Ensure data accuracy, integrity and security across all reporting solutions. Support teams across the organisation by providing insight, training and guidance on Power BI usage. Monitor report performance, troubleshoot issues and implement enhancements where necessary. Assist in shaping best practices for reporting, visualisation and data governance. Uphold high standards of documentation, version control and data compliance. The Candidate Demonstrates strong attention to detail and takes ownership of tasks from concept to delivery. Communicates clearly and confidently with stakeholders at all levels. Able to work under pressure, prioritise workload and respond quickly to changing business needs. Shows initiative, curiosity and a willingness to challenge existing processes to drive improvement. Essential & Desirable Criteria Experience using Microsoft Power BI. Strong analytical, problem-solving and data manipulation skills. Ability to interpret data and present insights in a clear and engaging manner. Excellent communication skills with the ability to translate complex data into understandable insights. Experience with SQL, Excel or other data analysis tools. Experience converting legacy reports into Power BI. Knowledge of Power BI Service, data gateways and data refresh processes. Previous experience in a reporting or analytics role. Benefits Commission for telesales Staff discount. On site parking. Enhanced Maternity/Paternity Length of Service Awards Smoke break exchange - allowing 1 extra day leave each year. If you meet the above criteria and would like to learn more then please contact Niall Lennon for a confidential discussion. Skills: Power BI Data analyst report writing

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