Junior Data Analyst

Agility Resoucing
2 months ago
Applications closed

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Our Energy client based in Altricnham promotes and supports progressive careers within their company and offers a fantastic benefits package as well as a unique, fun working environment. We have already placed a number of graduates into this role and the success of the business and candidates has meant they are looking to expand the team further and invest in new graduate talent!

As a Graduate Data Analyst, you will join the front line of this multi-national organisation. This is a unique opportunity to work across all verticals as a knowledge broker, acting as an intermediary between clients and experts, connecting customers with the organisation you'll be working within!

Responsibilities:

  • Effectively evaluate and analyse data
  • Ensure that company data is recorded accurately and is correct
  • Work as part of a team to evaluate and analyse key data that will be used to shape future business strategies
  • Perform regular client outreach to promote the company's proposition and secure business

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

Please note due to the large volume of applications we receive for these roles, if we have not contacted you within 7 days then unfortunately your application hasn't been successful, however, we may contact you regarding other roles. We're sorry we can't contact you directly but we wish you all the best in your job search.

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