Data Analyst ( Power BI / SQL )

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Belfast
6 days ago
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Data Analyst - Power BI / SQL Location: Lisburn, Northern Ireland Working Model: Hybrid available Type: Permanent The Opportunity We are hiring a Data Analyst with 2-4 years' commercial experience to join a well established analytics team within a regulated financial services environment. This role sits within a high performing Data Integration, Reporting & Analysis function and will focus on building dashboards, delivering client reporting, and providing meaningful insight across complex financial datasets. You will work closely with senior leadership and external clients, helping translate data into clear, actionable information. This is an excellent opportunity to join a stable, collaborative team where data quality and client impact genuinely matter. What You'll Be Doing Designing and building dashboards in Power BI (and/or SSRS / Tableau) * Writing advanced SQL queries to extract, manipulate, and validate data * Delivering internal and external reporting packs * Monitoring KPIs and identifying trends or anomalies * Supporting forecasting and modelling initiatives * Automating reporting processes and improving data workflows * Collaborating with stakeholders across operations and client teams You will play an important role in ensuring reporting accuracy and helping senior management interpret performance data. What We're Looking For 2-4 years' commercial experience in a Data Analyst or SQL Developer role * Strong T-SQL capability within Microsoft SQL Server * Hands on experience building dashboards in Power BI, SSRS, or Tableau * Understanding of relational databases and data modelling principles * Strong attention to detail and ability to explain data clearly * Comfortable working in a regulated or client facing environment Exposure to financial services data would be advantageous. Why Join Excellent team culture within an established analytics function * Private Health Insurance * Workplace Pension * 24 days annual leave plus statutory days * Hybrid working flexibility after onboarding * Stable, growing organisation within a larger financial software group This is a rare opportunity to work shoulder-to-shoulder with executive leadership, influence real business outcomes, and play a pivotal role in a scaling organisation. If that sounds like you, get in touch with Ryan Quinn directly on LinkedIN for a confidential conversation. Skills: SQL Power BI Benefits: Bonus

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