Azure Datawarehouse Design Engineer Snowflake Insurance £550/d

City of London
8 months ago
Applications closed

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Datawarehouse Design and Implementation Engineer | Azure Data Factory | Snowflake and Star | Insurance | Geospatial Data | £550/day Inside IR35 | 6 month Contract | London/City (Hybrid working 2 days in the London office per week).

Our client (a global speciality Insurance firm) has a requirement for an experienced Data Warehouse Design / Implementation Engineer to work on the design and implementation of Azure datawarehouses using ADF / Azure Data Factory, with excellent ETL process - and Star / Snowflake schemas on long term Data projects (initially 6 months). You'll also have some experience of Geographical Data / Geospatial Data / Geo Location Data.

Your background will be working on large scale data warehouse projects in Financial Services (preferably Insurance) and with strong Azure experience.

Azure Datawarehouse Design
Azure Datawarehouse Implementation
Snowflake / Star
Geospatial Data / Geo Location Data
ETL processes
Insurance

This role would be Hybrid with 2 days in the office each week.

Please do send me your CV to start a conversation around this role.

£550/day Inside IR35. 6 month initial contract.

Hybrid (2 days in London per week).

Adecco acts as an employment agency for permanent recruitment and an employment business for the supply of temporary workers. The Adecco Group UK & Ireland is an Equal Opportunities Employer.

By applying for this role your details will be submitted to Adecco. Our Candidate Privacy Information Statement explains how we will use your information - please copy and paste the following link in to your browser

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