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Operations Senior Data Analyst

Morgan McKinley
London
6 days ago
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Senior Data Analyst Responsibilities:

Cultivate stakeholder relationships to enhance data services.
Understand and optimize business intelligence for informed investment decisions.
Enforce data controls for accuracy and timeliness.
Manage high-quality securities reference data.
Execute daily tasks proficiently and seek expertise in team operations.
Analyze data exceptions and propose preventive actions.
Maintain documentation and ensure task completion.
Lead change initiatives and projects in data operations.

Regulatory Responsibilities:
Adhere to FCA's Conduct Rules.

Personal Specification:
Proficient in data management tools and investment systems such as MarkitEDM and EAGLE.
Strong data analysis skills using Excel or SQL.
Experience in securities reference data management.
Effective communication and organizational skills.
Analytical and problem-solving abilities.
Deadline-oriented and results-focused.
Ability to work well in a team and coordinate with stakeholders.

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

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

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