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Graduate Data Analyst - Keighley

Agility Resoucing
West Yorkshire
2 months ago
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£18000 - £24000 per annum + dependent on experience

Location

United Kingdom,West Yorkshire

Job Type

Permanent

Description

Our client an established financial services company based near Keighley are looking for a graduate to join their analytics team. With steady growth this company offers a fantastic progression package, along with a perfect opportunity for an ambitious graduate.

Responsibilities for the role are as follows:

  • Drive best-in-class understanding and knowledge of data to maximise its value
  • Utilise segmentation and decisioning tools to implement intricate business strategies
  • Apply intelligent data modelling and outstanding data quality to our wealth of data
  • Partner with the business to identify issues, recommend solutions and solve complex problems
  • Provide management information reports to senior management
  • Examine, analyse and forecast operational and business performance

What are we looking for?

  • Degree in Maths, Economics, Physics or a numerate focused degree (min 2:1)
  • A high level of analytical and numerical problem-solving skills.
  • An ability to use data interrogation, manipulation and reporting/ dashboard creation tools i.e. Excel, T-SQL queries, SharePoint, Power BI, SSRS etc. Although desirable this isn't essential as training will be provided.

Benefits of the role?

  • 33 days holiday
  • Private Health Insurance
  • Employer pension contribution of 6%
  • Free car parking
  • Profit related bonus

If you are interested in this fantastic opportunity based near Keighley, please contact Sam Fish at Agility Resourcing on or apply direct with an updated CV.

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