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Technical Data Analyst

Munich Re
London
5 days ago
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Company
Great Lakes Insurance SE
Location
London, United Kingdom
Together, we engage with everything we have and are, to help humankind act braver and better.
About Great Lakes Insurance SE:
As a specialty provider of primary insurance services in the UK, Great Lakes London Branch (“ GLLB ”) is a substantial part of Great Lakes Insurance SE in Munich. Our interlocked business model is to seize opportunities closely connected to the reinsurance core business and innovation opportunities, in our role as an integral part of the Munich Re Group. Great Lakes Insurance SE operates from its headquarters in Munich, and via branch offices in the UK, Ireland, Switzerland, Italy, and Australia.
Great Lakes Insurance UK Limited (“ GLLS ”), regulated by Prudential Regulation Authority and the Financial Conduct Authority, is a fully owned subsidiary of Great Lakes Insurance SE and acts as the preferred facilitator of agency insurance business in the UK in the post-Brexit world.
About the role: As a Technical Data Analyst, your role will be to support the business in gathering and reviewing regulatory and financial data from insurance intermediaries. You will also support internal regulatory teams in analysing and extracting data held in the Great Lakes Data intake solution (DFEnS) to satisfy data transfer requirements. You will work with a team of skilled data analysts and technical analysts who support and maintain DFEnS by improving the data quality received and liaising with internal stakeholders to ensure data requirements are satisfied to a high standard. You will report into the Agency Management Platform Manager. This is a 12 months fixed-term contract.
Responsibilities:
Support and/or develop data extraction for Environmental Social Governance (ESG) project teams including Insurance Associated Emissions - IAE (Initially from DFEnS and later from Data Lakehouse).
Support and liaise with Great Lakes ESG project team as well as MR group ESG colleagues to support their data requirements.
Learn how the DFEnS system works in order to satisfy data requirements and queries.
Work closely with other Data Team members to learn and share information on DFEnS enhancements and new template rollouts.
Help identify and define systems and process alternatives that can meet business needs.
Utilize standard reporting tools to write, maintain & support a variety of reports/queries.
Maintain data integrity in systems by running queries and analysing data.
Develop standardised reports for internal customers to help them monitor their processes-working with departmental staff to identify these requirements.
Support best practices for system and process change management, documentation of system processes and business practices & the development of standards for processes.
Contribute to the improvement of GL data management processes and systems.
Minimum Requirements:
SQL script writing - Advanced
Experience with large data volumes (4M+ rows extract transfer & load (ETL))
Comfortable with facilitating, presenting & negotiating skills
Hands-on with business process design and change management
Strong understanding of IT business architecture design and operating models.
Experience with process enhancements using better structured tasks & IT solutions
Dataiku experience to facilitate working with large data volumes (4M+ rows - ETL)
A good understanding of systems development life cycle & relevant iterative agile systems improvements
Previous experience leading and guiding new and inexperienced team members.
Data process mapping
Support the managing finance projects end to end
Support cross-over between IT and Finance with critical thinking (analyse, reasoning, evaluating, problem solving, decision making, analysing again).
Support business modelling & requirements engineering
Ability to work with third parties and offshore development teams.
Regulatory & Conduct Requirements:
Satisfying all regulatory reporting requirements in collaboration with the reporting function
Liaising with all relevant regulatory bodies in the UK, creating a highly credible reputation and strong, collaborative relationship
Ensuring compliance with Munich Re’s Code of Conduct and the FCA Conduct Rules
If you are excited about this role but your experience does not align perfectly with everything outlined, or you don’t meet every requirement, we encourage you to apply anyway. You might just be the candidate we are looking for!
All candidates in consideration for any role can request a reasonable adjustment at any point in our recruitment process. You can request an adjustment by speaking to your Talent Acquisition contact.

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