BI Data Analyst

Rullion Ltd
Manchester
3 months ago
Applications closed

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BI Data Analyst

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Power BI Data Analyst

Power BI Data Analyst

Data Analyst - Power BI

We're looking for a talented BI Data Analyst to join our Customer Insights team on a 3-month contract. Reporting to the Insights Manager, you'll play a pivotal role in turning data into actionable insights that shape customer strategy and operational performance. You'll help evolve our BI suite, deliver executive-level reporting, and ensure that our analysis reflects the voice of the customer across the business.

Key Responsibilities

Lead the design, delivery, and continuous improvement of BI reporting and dashboards (Power BI essential).
Partner with internal stakeholders to gather and document reporting requirements.
Develop and maintain key KPI reports, from daily operational performance to forecasting projections.
Build and enhance data models, ensuring accuracy, efficiency, and scalability.
Create and automate reporting processes using Excel (advanced) and VBA macros.
Drive automation and integration between BI tools and the CRM system.
Produce business-critical reporting such as Executive Dashboards and insight packs.
Identify and correct inefficiencies in existing reporting processes.What You'll Bring

Proven experience in BI development and data analysis roles.
Expertise in Power BI, including DAX, data modelling, and visualisation best practices.
Advanced proficiency in Excel, including pivot tables, macros, VBA, and data forecasting/modelling.
Strong analytical mindset and meticulous attention to detail.
Excellent stakeholder management and communication skills.
Ability to work independently and collaboratively in a fast-paced environment.
Adaptability to evolving business requirements and data challenges.Key Relationships

Customer Leadership Teams (SLT & WLT)
Customer Business Partners and Delivery Managers
Customer Business Analysts and Business SupportRullion celebrates and supports diversity and is committed to ensuring equal opportunities for both employees and applicants

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