Graduate Data Analyst

Crawley
11 months ago
Applications closed

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Junior Data Analyst

Our client, a market-leading customer analysis company, is currently recruiting for a Graduate Data Analyst to join their growing analysis team. The Graduate Data Analyst will be responsible for maintaining and analysing a range of customer data.

Responsibilities for the Graduate Data Analyst

Actively support the collection of accurate data within critical timelines
Collate, document, manipulate vast quantities of data through systems
Apply an investigative and enquiring approach to spot errors or gaps in the dataKey Skills & Experience for the Graduate Data Analyst
Essential

Ideally a Graduate in a numerical subject
Intermediate knowledge of Excel, Word and Outlook
Strong problem-solving and analytical abilities
Good written and spoken communication skills
Maths or Statistics-based Graduates please apply as directed

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