Data Warehouse Manager FTC

London
1 year ago
Applications closed

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An excellent opportunity has arisen to work for our established client in London as an Data Warehouse Manager. You will oversee the day-to-day operations of the specialist data and business intelligence team, ensuring that BI Analysts can provide the organisation with quality reporting as well as leading cloud-based data migration projects.

This position is likely to be temporary for 3-6 months with a view to becoming permanent.

Benefits:

27 days holiday + bank holidays, rising to 33 with length of service
Hybrid working
Pension scheme
Enhanced maternity / paternity pay
Paid qualifications
Corporate discounts with hundreds of retailers / services
Season ticket loan
Cash referral bonus scheme
Online wellbeing centreAs the Data Warehouse Manager, you will be responsible for:

Manage the day to day work of the Data Team, responsible for all line management activities.
Provide data governance standards to devolved data analyst teams.
Work with devolved data teams to ensure that operational reporting is implemented in a standardised way and that relevant data can be imported into the warehouse using agree standards and methods.
Design, build and management of dimensionally modelled data warehouse solution.
Write and produce reports from application databases.
Develop and maintain visual reports, scorecards and dashboards via Power BI desktop.The successful Warehouse Manager will have the following related skills / experience:

Significant experience of Microsoft Business Intelligence tools (Power BI, SSIS, SSAS, SSRS).
Significant experience of using and developing within Power BI with a comprehensive understanding of SQL and Data Warehousing Principals.
Experience of developing data warehouse capabilities in Microsoft Azure
Experience in SQL Server & T-SQL
An understanding of a broad range of integration approaches and technologies. SOAP, REST, Service Orientated Architecture
A knowledge of diagramming techniques e.g. UML.For more information, please contact Barbara Hamilton (phone number removed)

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