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Graduate Data Analyst

Switch Recruitment Services Ltd
Cardiff
1 year ago
Applications closed

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Graduate Data Analyst | Fast track your career to consultant in 12 months

GRADUATE - Data Analyst

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GRADUATE - Data Analyst

GRADUATE - Data Analyst

GRADUATE - Data Analyst

As a result of continued expansion our client, a well-established and reputable financial services consultancy, are currently looking for a Graduate Data Analyst to join their growing team.

Candidates will be responsible for managing the data that is pivotal to the successful running of pension schemes. As part of the data team, candidates will support the application and management of the administration database including formatting and loading bulk data sets to the administrative database, performing ongoing maintenance and testing on the data, producing data extracts and reports etc.

Experience:

Our client is looking to either consider someone at the entry level who is educated to degree level in a relevant subject, or someone who has experience of working within a similar role within financial services. You will have excellent Excel skills and ideally knowledge of SQL. Ability to work to deadlines and a high level of attention to detail

In return our client is looking to offer a competitive basic salary as well as an excellent benefits and bonus package and plenty of opportunities for career progression within this growing organisation.

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