Data Analyst

Chessington South
1 week ago
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Northamber Plc is the longest established independent trade only IT distributor in the UK, with over 36 years of experience. Northamber Plc is a distribution division that provides its 5,000+ resellers with personal account managers, a “no voicemail” policy, industry-leading product knowledge and a wealth of services to drive reseller margin.

We have specialist divisions such as Audio Visual, Infrastructure Solutions and Document Management that focus on driving profitable growth for resellers in their specific division while giving them access to all other technologies.

• Use of Power BI to extract information from data sets and identify correlations and patterns

• Organising and transforming information into comprehensible structures

• Using data to predict trends in the customer base

• Performing statistical analysis of data

• Using Power BI to visualise data in easy-to-understand formats, such as diagrams and graphs. Sales, aged stock etc

• Preparing reports and presenting these to management and the wider business

• Identifying business opportunities through the use of data

• Monitoring data quality and removing corrupt data

• Communicating with stakeholders to understand data content and business requirements

Employee Benefits & Company Information

  • 25 days holidays + bank holidays, increasing with service

  • Hybrid/Flexible Working

  • Life assurance

  • Pension contribution

  • Axa (Private Healthcare)

  • Lifestyle Benefits – Discounts on cinema tickets, travel, motoring and much more.

  • EAP (Employee Assistance Program)

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