Junior Data Analyst

Woking
9 months ago
Applications closed

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Junior Data Analyst

Junior Data Analyst

Junior Data Analyst

Junior Data Analyst

Junior Data Analyst

Junior Data Analyst

A leading consultancy specialising in data extraction and data management have an excellent opportunity for a Junior Data Analyst to join them at their offices in Woking.

Key Skills: Junior Data Analyst, Excel, Visual Basic (VB), SQL, Power BI

Location: Woking - GU22 7AE (working from home on Monday and Friday)

Salary: Circa £30,000 - £32,000

This is a superb opportunity for Junior Data Analyst to grow and develop your skills. As Trade / Data Analyst it is essential you have ability to analyse data (using excel etc as a tool) and have a passion for using data to understand how businesses work.

Key Essential Skills:

Excel - Excellent
Visual Basic (VB) - Good
SQL - Understanding
Power BI - UnderstandingAs Junior Data Analyst you will have some previous experience of data management and able to make decisions based on data. You will love analysing and crunching data!

You will be working as part of a small team and happy to work in a heavily process environment.

This is a hybrid role working from home on Monday and Friday so essential you can get to Woking with ease.

Please note: This position will be on an initial 12 month contract basis.

Please click apply now for more details

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