Lead Data Analyst

Tenth Revolution Group
London
4 days ago
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Lead Data Analyst

Up to £80,000 + Bonus

About the Role

I am currently recruiting for a Lead Data Analyst to support the delivery of data and analytics transformation programmes within a global technology consulting organisation. Working across a variety of enterprise and public sector clients, this role sits between business strategy, data platforms and analytical delivery. You will lead teams responsible for delivering modern analytics solutions, data platforms and reporting capabilities built on modern cloud and big data technologies.

This role is ideal for someone who combines strong analytical and technical capability with leadership and stakeholder engagement experience. The perfect candidate would also be comfortable translating complex business requirements into scalable data and analytics solutions.

You will play a key role in owning analytics delivery within broader data platform programmes, working closely with stakeholders across various workstreams to ensure data initiatives drive measurable business outcomes. Alongside delivery, you will contribute to pre-sales activities, solution design and the development of reusable analytics frameworks, helping shape how modern data solutions are delivered across multiple industries.

Responsibilities

  • Lead delivery of analytics workstreams within broader data platform or t...

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