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Client Data Analyst

Meraki Talent
City of London
1 week ago
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Meraki Talent – Client Data Analyst (Contract, London – 3 Months)

Rate: £200/day


Meraki Talent is recruiting for a Client Data Analyst on a 3-month contract for an international bank. This is a short-notice role requiring immediate availability. The ideal candidate will have experience in reference data management, reconciliation, and operational risk frameworks.


Key Responsibilities:

  • Ensure accurate and timely setup and maintenance of reference data across all systems.
  • Resolve data reconciliation exceptions and perform root cause analysis for recurring issues.
  • Maintain audit trails, documentation, and working instructions for all reference data changes.
  • Liaise with Front Office, Operations, and support teams to address requests and support new products.
  • Escalate key risk items and adhere to operational risk and compliance frameworks.


Requirements:

  • Immediate availability.
  • Strong experience in banking operations and reference data management.
  • Attention to detail and excellent problem-solving skills.


If you or someone you know are interested reach out to Nick on or on

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