Junior Data Analyst - Manchester

Agility Resoucing
2 months ago
Applications closed

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Pre Covid 19 we were approached by our client to recruit Junior Data Analyst. Having contacted them, they have asked us to carry on sourcing candidates for this position so interested candidates should still apply. See details of the role below.

My client is a large multinational financial services organisation who have an exciting opportunity for a recent graduate to join their analytical team.

This is an ideal opportunity if you have graduated recently (2018 and 2019 graduates only) with a numerical related degree and are looking to develop your career in an analytical field.

This role offers a fantastic opportunity for a self-motivated, highly numerate graduate to make a significant difference within a well-established and rapidly growing organisation.

Your day to day will consist of:

  • Proactively and collaboratively develop Analysis and Insight to support Operations.
  • Report making to help deliver optimal management decisions.
  • Identify, quantify and prioritise opportunities to enhance operational efficiency and produce world-class deliverables fit for a world-class operation to drive continuous improvement.
  • Apply analytical and technical ability to ensure the team delivers the highest standards of analysis and reporting to key stakeholders.

What we want from you:

  • Minimum 2:1 within a numeric based degree i.e. Maths, Economics, Business, Psychology, Physics etc.
  • Proficient in use of Microsoft Office product suite, particularly Excel i.e. Pivot Tables and V-Lookups.
  • Working knowledge of one or more of the following: SQL, R, Python, C++, Java.
  • Clear, logical analytical approach to problem-solving.
  • Ability to investigate data, find trends, forecast performance and provide insightful recommendations.

It's a bonus if you have:

  • Previous experience presenting information to key stakeholders.
  • Proficient use of VBA.
  • Knowledge and practical experience with Power BI and Cloud collaboration solutions.

If you are interested in this fantastic opportunity based nearManchester, please apply direct with an updated CV.

Apply for this job#J-18808-Ljbffr

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