Senior Data Analyst

Ageas
Chandler's Ford
4 months ago
Applications closed

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Overview

Job Title: Senior Data Analyst


Target Start Date: ASAP


Contract Type: 12 Month Secondment, Part Time, Full Time, Job Share option available


Salary Range: Up to £60,000 Dependent on Experience


Location: Eastleigh – Hybrid Working Environment


Work Level: 4


Closing Date for applications: Friday 14th November


Hiring Manager: Matt Dent & Thillai Jaganathan


Senior Data Analyst: Its an exciting time for the Claims Analytics Department, and the Senior Data Analyst will be crucial in its continued success. Working as part of a high performing squad, the Senior Claims Analyst will use industry best tools, working closely with stakeholders across Motor and Home insurance claims teams to capture data and reporting requirements, understand business processes and translate them into well-defined requirements.


Main Responsibilities

  • Act as the primary interface between the Claims business teams and the Claims Data squad.
  • Perform data analysis on source data to uncover trends, anomalies, and opportunities.
  • Support Data Management activities such as capturing data definition, business terms, Data quality rules and data quality metrics.
  • Provide detailed requirements documentation for the Data Modeler, BI developer, and Engineers.
  • Build strong relationships with stakeholders to understand their needs and challenges.

Skills and experience

  • Proven experience as a Data Analyst in insurance or financial services, ideally within Claims.
  • Strong SQL skills, experience of using Central Data platforms, data tools such as Excel and PowerBI.
  • Familiarity with the Claims system or similar platforms.
  • Experience with Agile delivery methodologies and working in cross-functional squads.
  • Knowledge of SAS and Snowflake.
  • Excellent communication and stakeholder management skills.

To find out more about this role and for information please contact Matt Dent or Thillai Jaganathan. For a full copy of the Job Description, please contact Dan O’ Connor in Recruitment.


Alternatively, click on the “Apply Button” to be considered.


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