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Data and Reporting Analyst

Lime Street
9 months ago
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Data and Reporting Analyst (Insurance)
EC3, London / Hybrid (3 days in the office per week) – WFH / Remote working
£40,000 - £50,000 plus excellent benefits including generous pension, private medical, dental, rising holiday, up to 30 days holiday, rising and lots more.

My client is a global reinsurance provider who offers a proven career path, generous staff benefits and a supportive working environment. Due to expansion, they are looking for a talented and motivated Data and Reporting Analyst to join their dynamic global team. You will have a passion for problem-solving with a strong analytical mindset.

Data and Reporting Analyst - Duties and Responsibilities

You will play a key role in driving data-driven decision making be responsible for supporting local regulatory and statutory reporting needs.

The Data & Reporting Analyst is responsible for understanding and providing valid, relevant data to key stakeholders. The analyst will collaborate with stakeholders and Lead BI developer to build reporting for departmental needs and business objectives.

In this role, you will be a key contributor to the organization’s data strategies and be in position to influence the strategic direction of portfolio business. Duties:

  • Help define and create big data analytics framework to uncover trends, patterns, and correlations in large amounts of raw data to help make informed decisions by partnering with stakeholders (Operations, Actuarial, UW, etc.) to design and create data solutions that will facilitate accessibility to data and evaluation of portfolios.

  • Work with stakeholders to collate, define and document data and reporting requirements to create actionable insights for the organisation.

  • Maintain the data quality and change framework to facilitate iterative feedback and address any issues as it pertains to existing analytical tools and data views.

  • Use tools and programming language (e.g.., PowerBI, Palantir, Python, SQL) to consolidate, cleanse and/or transform and present data from various sources.

  • Assist Lead BI developer in validating data solutions (e.g., reconciling, profiling and reviewing against raw source) and dashboard results against Financial and original source BDX files

  • Analyse data and identify data quality issues against key monitoring criteria and continually identify new areas of monitoring.

    Data and Reporting Analyst – Over to You! The Successful Candidate Will Have;

  • Data Analysis experience gained within the insurance / reinsurance industry

  • Strong proficiency in data programming languages such as R, Python and/or SQL.

  • Knowledge of the reinsurance industry preferred (property and casualty, life and health, marine, energies etc.).

  • Experience with data visualization tools (i.e., Power BI).

  • Experience with AI technology and tools (i.e., Matlab, Simulink)

  • Strong analytical and problem-solving skills and excellent verbal and written communication skills.

  • Ability to present findings to both technical and non-technical audiences.

  • Strong attention to detail and commitment to data accuracy.

  • Ability to work collaboratively in a fast-paced environment.

  • In addition, experience in data platforms such as Apache Spark, Databricks, HD Insight and experience working with Data Governance Programs and a Mathematics/Statistics background is a bonus!

    In return, my client offers a proven career path within a structured, global reinsurance provider and excellent benefits including hybrid working, a generous pension, private medical, dental, rising holiday, up to 30 days holiday, rising and lots more. Sound interesting and something you would love to be part of? Apply today!

    Integral Recruitment is acting as an employment agency in regard to this vacancy

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