Data Analyst

Duxford
3 days ago
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Hybrid role available*

Are you an experienced Data Analyst with advanced Excel skills?

Job Title: Data Analyst

Location: Duxford, Essex

Salary: up to £32,000 DOE

Hours: Monday - Friday 9:00am - 5:30pm / 37.5 hours per week Hybrid role (3 days in the office)

Contract Type: Full time, permanent

Our client based in Duxford is looking for a Data Analyst to join their team and provide an outstanding service to their customers.

As Data Analyst you will be responsible for:

  • Dealing with large datasets

  • Standardising incoming data

  • Utilise SQL to retrieve data

  • In-depth data analysis

  • VBA scripts

  • Liaising with other team members and departments to understand data requirements

  • Communcating issues with data

    An ideal candidate for the Data Analyst will have:

  • SQL experience

  • Excellent communication skills

  • Experience dealing with large data sets

  • Strong IT skills including advanced Excel.

    Ideally you will have experience within a similar position. Interviews will take place in Newmarket, following a registration process by PureKat Consultancy Ltd. If we have not responded to your application within 3-5 days, unfortunately you have not been successful on this occasion, but please feel free to contact us for other opportunities. PureKat Consultancy is acting as an Employment Agency for permanent vacancies and as an Employment Business for temporary roles

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