Data Modeller - £80,000 + 15% - London

London
11 months ago
Applications closed

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Data Modeller - £80,000 + 15% - London

Company Overview:

Our client is a leading Data consultancy who work with some of the biggest clients across the globe on their most cutting-edge projects. They are known for their top talent and this is an excellent chance to work on some amazing projects while growing professionally and personally.

You will be joining their finance department who work with a range of top organisations across the financial services sector.

Role Overview:

This role is working with a reinsurance client in the London Market. You will design and develop physical, conceptual, and logical data models based on business requirements of key technical and non-technical stakeholders. You will be heavily involved in working with architects, engineers and analysts within a data warehouse environment.

Requirements:

Strong Data Modelling Experience
Experience with ERwin, Oracle SQL
ETL Experience
Experience within London Reinsurance Market
Pricing Tool Experience

This is an unmissable chance to hone your skills and grow your career working for a top partner, interviews are already underway so don't miss your chance. Apply Now!

Contact - (url removed) // (phone number removed)

Data Model Configuration, Data Modelling, Modeller, Pricing, Reinsurance

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