Graduate Data Analyst

Ashdown Group
Dartford
2 days ago
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A well-established business is looking for a Graduate Data Analyst to join its team, based in Dartford, Kent. Please note that this role requires the chosen candidate to be based in the office 5 days per week.In order to be suitable for this role, you must be experienced in analysing data and producing complex reports using a variety of report writing technologies. The successful candidate must have demonstrable knowledge of SSRS and SQL Server (2012 edition and later), as well as experience with developing applications using Microsoft Office, particularly Access and Excel or other databases that use SQL Server. Any prior experience using Power BI would be advantageous to your application.You will assist in the development of database systems to minimise duplication of effort and to continually improve the quality of data collection and dissemination, using technology to remove inefficiencies, so as to ensure that information is provided to key stakeholders in readily accessible formats.This is an exceptional opportunity for an organised and methodical Data Analyst with excellent communication skills and attention to detail to join a supportive and collaborative organisation.

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