Junior Data Analyst

Chesterfield
3 weeks ago
Create job alert

Junior Data Analyst
Derbyshire
£27k + Bonus & Benefits
 
Cactus Search are pleased to be working with a financial services organisation that is looking for an ambitious Data Analyst to come on board and join their Member Data function.

The focus of the Junior Data Analyst is the ability to understand, interrogate and analyse data whilst proactively seeking opportunities to utilise technology to improve the value of the data that’s managed.

What we need you to have…

Intermediate level Excel (Lookups, Pivots etc)
A strong desire to extend current experience in data analysis to a high level of commercial competence is a must (Excel, SQL, Python Power BI)
Good investigative and comprehension skills
Diagnostic, analytical and process skills with attention to detail
Ability to work to deadlines and manage workload appropriately
Positive and professional attitude 
If the above opportunity sounds of interest, please forward your CV via the apply button.

We look forward to hearing from you

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