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Operations / Data Analyst

Taylor James Resourcing
City of London
2 days ago
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Overview

Client Onboarding KYC Associate. 5 days in office.

Senior HR Manager with Financial Services experience

HR Business Partner. to £65,000

Our client is looking for a Talent Development Specialist

We are looking for a Deputy Group Company Secretary

Details

Date: 29 Nov 2023

Sector: INSURANCE

Type: Contract

Location: London

Salary: £45000 - 70000 per annum

Email:

Ref: BT2731

Operations / Data Analyst – Insurance

to c£70,000

This leading insurance organisation has an excellent market reputation and offers a friendly, flexible and extremely team oriented working environment combined with a class leading benefits package.

Due to continued growth they are looking for a candidate with strong analytical skills and problem-solving abilities and an aptitude for managing data and analysis with advanced Excel skills. Insurance exposure would be beneficial but is not essential.

Knowledge of basic coding or an interest in learning is required.

The Operations team is responsible for data management, accounts processing and managing internal as well as external client relationship. There are opportunities for global exposure and a chance to work with other business units across various locations.

The role is varied and dynamic, and there are several different projects and ad-hoc pieces of work you may be involved with.

Duties
  • Responsible for all Europe Operations MI reporting - Design and develop MI for reporting teams performance and account processing statuses, various Op’s initiatives including implementation, plus any ad hoc reports required
  • Responsible for managing quality and audits - Responsible for planning & delivery of the Operation’s client audit programme & Co-ordinate the external audit on behalf of Europe Operations
  • Responsible continuous improvement initiatives, change management and control - Lead the Operations CI initiatives by driving forward an innovative and change mindset on the team, collaborate with various stakeholders to improve system /processes, & manage SOP documentation and training materials for Europe Operations
  • Responsible for managing Internal and External stakeholders - Develop effective working relationships with colleagues across the organisation to ensure both client and internal customer needs are met, maintain a thorough understanding of assigned client portfolio and update management reports and escalate any potential reporting issues as and when necessary
  • Manage Internal stakeholders like actuarial functions, finance etc by validating all key reports before sharing with various internal stakeholders and highlight any issues with the client data or extraordinary data trends


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