Business Intelligence Analyst

South Yorkshire Fire & Rescue
Sheffield
1 day ago
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An opportunity has arisen for a Business Intelligence Analyst within our Business Intelligence team based at Headquarters in Sheffield.

Business Intelligence Analyst
Location:
Central Sheffield Headquarters, S1
Hours:Full Time, 37 hours per week (Flexi Time)
Contract:FTC until 31 March 2027
Salary:£32,061.00 - £34,434.00 (Grade 6)

As an experienced analyst, you will provide specialist, professional, and technical advice, direction, and input across a range of activities and resources to deliver business intelligence. You will use a wide range of software tools, such as Geographical Information Systems and Business Intelligence Reporting Tools, such as Power BI, to enable users to view complex information in an easy-to-use format. You will also have an excellent working knowledge of SQL & Microsoft Office, particularly Excel, Word and PowerPoint.

You will be using the principles and concepts of trends and identification of intelligence from data to make decisions, to influence others' thinking and to negotiate with them to achieve an outcome.

You will have the ability to speak easily and confidently to management at all levels, advising and directing in data and intelligence. You will need experience in delivering train...

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