Senior Power BI Data Analyst

Adecco
Birmingham
2 days ago
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Senior Power BI Data Analyst

Government Property Agency

Salary - £42,450 to £46,636

Contract type: Permanent

Location: Birmingham, Bristol, Cardiff, Leeds, Manchester, Nottingham or Swindon

There is also a non- standard RRA of up to £3,000 that may be applied to attract an exceptional candidate.

Job description

Data analytics provides a transformational and powerful combination to support GPA's current and forward planning in key areas such as across Operations, Portfolio Performance, Health and Safety, Risk Management and Sustainability. It provides essential actionable insights to support planning, decision making, scenario planning and predictive analytics. Data analytics across the GPA is already providing a transparent, interactive interface to the large amount of data we collect and process in GPA. A number of exemplar Power BI dashboards are already supporting business plan objectives and crucial reporting in areas such as Occupancy, Property Portfolio, Customer Satisfaction, Client Satisfaction, CRM Reporting, Sustainability etc. In this role you will be responsible for the full lifecycle development and maintenance of part of GPA's dashboard portfolio. Working alongside Business Analysts and Data Architects you will have authority to build analytics solutions that are underpinning the key strategic and operational business decisions of GPA.

Key responsibilities

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