Data Analyst

PRO GLOBAL
Gloucester
2 weeks ago
Applications closed

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Data Analyst - Digital Services

Pro currently has an exciting opportunity for a motivated and detail-orientated individual to join its Insurance Services team as a Data Analyst within the Digital Services area.

The job holder will be involved in building data mapping processes for various bordereaux (both Risk and Claims) using data ingestion / analysis tools such as Intrali, Quantemplate or Matillion. The project centres on the extraction, transformation and loading (ETL) of data from various sources into data warehouses and data lakes.

This is the perfect role for an aspiring Data Architect in the Insurance Industry.

Pro operates a hybrid working policy, with time split between home and our Gloucester or Liverpool office. This vacancy however is suitable for an individual who is fully remote and we support home working.

Main Duties and Responsibilities

  • Data collection and processing; gathering data from various sources, pre-processing and preparing datasets for analysis.
  • Creation and management of both Risk and Claims data maps (models) and reconciliation of results.
  • Processing tasks accurately, in an efficient manner, in line with client driven requirements.
  • Identifying or correcting anomalies identified within the Bordereau, raising queries and amending where necessary.
  • Interacting with clients in a professional manner over the phone, Teams or via email.
  • Maintain and update workflows and ad hoc documentation (process flows)
  • Collaborate well with colleagues

 Skills and Experience

  • Strong technical skills (logical and methodical thinking) and ability to prioritise workload to meet deadlines independently.
  • Ability to problem solve with good attention to detail.
  • Experience in working with Microsoft packages including Excel or PowerBI is desirable.
  • A logical mindset and good problem-solving capabilities.
  • Database Querying and/or development skills (e.g. SQL, R, Python, VBA, PowerBI) would be desirable.
  • Understanding of principles of insurance and reinsurance is desirable.
  • Essential to be able to maintain a conscientious, positive and enthusiastic approach to work.

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