Lead Business Intelligence Analyst

Langham Recruitment
Birmingham
1 month ago
Applications closed

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Lead BI Analyst | PLC | Birmingham – Hybrid Working | £60,000 + Bonus + Car Allowance

We’re on the lookout for a Lead Business Intelligence Analyst to join a well-established PLC as they continue to invest in their data and analytics capability.

As the Lead BI Analyst, you’ll take ownership of the reporting and data insight function, lead a small team of BI Analysts, and play a key role in shaping the organisation’s BI strategy - combining hands-on Power BI development with leadership responsibility.

The Role:
Lead / mentor a small BI team, managing workloads, performance, and development.
Oversee the design and delivery of accurate, consistent, and visually engaging Power BI dashboards and reports.
Own the full reporting lifecycle — from data extraction and modelling through to delivery and presentation.
Drive BI best practices, improving data quality, design standards, and automation.
Collaborate with business stakeholders to translate reporting needs into technical requirements.
Support and enhance enterprise data architecture, governance, and documentation.About You:
Proven experience as a Lead or Senior BI Analyst, Data Analytics Lead, or Senior Power BI Developer or similar 
Experience managing or mentoring BI Analysts.
Advanced Power BI skills, including DAX and data modelling.
Strong understanding of relational databases, data warehousing, and tools such as Databricks.
Experienc...

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