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Customer Data Architect - Associate Manager

Accenture
London
6 days ago
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Customer Data Architect – Associate Manager

London, Manchester (or other UK location)

Associate Manager (CL8)

Practice: Song Data & AI

We Are: 

Accenture Song accelerates growth and value for our clients through sustained customer relevance. Our capabilities span ideation to execution: growth, product and experience design; technology and experience platforms; creative, media and marketing strategy; and campaign, content and channel orchestration. With strong client relationships and deep industry expertise, we help our clients operate at the speed of life through the unlimited potential of imagination, technology and intelligence.  Visit us at: https://gb-en/about/accenture-song-index

Role Overview:

As a Customer Data Architect – Associate Manager, you will help design and implement scalable, secure, and high-performing customer data architectures. You will work with cross-functional teams to define data strategies, architect solutions, and enable data readiness for AI, analytics, and customer engagement platforms. This role sits within Accenture’s Data & AI practice, delivering end-to-end solutions from data strategy to core engineering.

Key Responsibilities

  • Architect modern customer data platforms and integration pipelines across structured and unstructured sources.

  • Translate b...

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