Delivery Manager - Data Engineering Platform

hays-gcj-v4-pd-online
London
3 weeks ago
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Your new role

As aDelivery Manager/Product Manager, you will drive the rapid expansion of aData & Analytics Platformfor business-wideEngineering Infrastructureplanning and strategy. This position is a hybrid/transitionary rolebining elements of delivery management and product management, emphasising agile methodologies and tech transformation.

What you'll need to succeed

7+ yearsof leading usingagile and lean principles.Data Literacy:fortable with data, as this roleinterfaces heavily with the Data team.Agile & Scrum: Proven experience withAgile and Scrum methodologies.Product Management: Expertise ingathering and interpreting customer requirementsand familiarity withproduct design, managementanddevelopment.Stakeholder Management: Ability to establish and maintaintrust with stakeholdersthroughtransparentmunication and consistent delivery.Desirable: Experience inTechnology Infrastructure ChangeandBusiness Intelligencedelivery programs.Transitionary Role: Mobilise the platform, add new functionality, and transition it into Business-As-Usual (BAU) product.Product Initiative: Client is pivoting to a moreproduct-focused approach, requiring familiarity with bothproject and product management.

What you'll get in return

12-month contractOpportunity to work for a Globally Recognised Tier 1 Financial services firm.

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