Data Analyst

Great Burgh
1 year ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

We have a fantastic opportunity for a Data Analyst to join a very successful, international business with modern offices in Epsom, Surrey. This is a well established organisation with a globally successful brand, who can offer excellent opportunities for career progression.

Alongside a competitive salary of up to £34k benefits include free on site parking, hybrid working options, excellent pension contributions, annual bonus, private medical care, life assurance, onsite gym, 25 days holiday plus Bank Holidays and more.

Responsibilities will include:

Produce regular reports on a daily, weekly, monthly and quarterly basis, as well as any ad hoc requests
Maintain high internal control standards to assess and ensure report accuracy and data integrity
Provide support for risk identification, assessment and mitigation through the provision and analysis of data, and assistance with interpretation and application of findings
Analyse the impact of any changes in operational reporting requirements.

The successful candidate will have:

Previous experience in a Data Analyst / Business Analyst / MI Analyst role
Meticulous attention to detail
Excellent communication skills to present findings to stakeholders
Proficiency using Excel and Access
Experience within Financial Services / Banking

For more information apply now!

Morgan McKinley is acting as an Employment Agency and references to pay rates are indicative.

Morgan McKinley encourages applications from all qualified candidates who represent the full diversity of communities in the UK. Accommodations are available on request for candidates taking part in all aspects of the selection process.

BY APPLYING FOR THIS ROLE YOU ARE AGREEING TO OUR WHICH TOGETHER WITH OUR GOVERN YOUR USE OF MORGAN MCKINLEY SERVICES

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