Data Strategy Manager/Data product Manager (Strategy)

Pontoon
Bromley
17 hours ago
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Job title: Data Strategy Manager/Data product Manager (Strategy)
Location: Bromley (3 days onsite, 2 days remote)
Contract Length: 12 months
Daily Rate: £650/Day
Status: Inside IR35
Working Pattern: Full Time

Are you a data enthusiast with a flair for strategic thinking? Do you thrive in regulated environments and have a passion for modern data practises? If so, we have an exciting opportunity for you! Our client, a leading organisation in the IT/Financial Services sector, is looking for a Data Strategy Manager to join their dynamic team on a temporary basis.

About the Role:
As the Data Strategy Manager, you will play a pivotal role in shaping the data landscape for our client. You will lead the development of data domain strategies, ensuring a seamless end-to-end data flow design. Your collaboration across business and technology teams will drive multiple projects, align strategic objectives and enforcing governance standards. Get ready to make a significant impact!

Who You Are:

Experience in data strategy, data product management, or data transformation
Strong understanding of data platforms, analytics, and modern data architectures is essential.
Global Payments domain expertise: payment rails, clearing/settlement, cross-border flows, correspondent banking, treasury/payments operations is essential
Ability to communicate with both technical teams and business stakeholders
Experience creating strategy documents, roadmap...

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