Data Strategy - Manager/Senior Manager

Freshminds Interim
City of London
1 week ago
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The Role

A client in the consultancy industry is seeking a Data Strategy Senior Manager (or Manager) to join the team for an eight-week engagement.


You will lead and deliver a high-impact data strategy project, working closely with senior stakeholders to shape recommendations and build a clear, actionable roadmap. You will report to the client's senior leadership team and play a key role in defining the direction and outcomes of the project.


Responsibilities

  • Lead the successful delivery of an 8‑week data strategy engagement, producing a board‑ready strategy, roadmap and investment case
  • Oversee an 'as is' assessment of the client's data landscape, including priorities, capabilities and maturity
  • Shape a compelling Data Vision and a prioritised backlog of high-value initiatives
  • Define a target operating model, capability requirements and light‑touch governance
  • Manage and mentor a project team to produce high‑quality work
  • Build strong, collaborative relationships with senior stakeholders
  • (Senior Manager) Own the engagement end‑to‑end, including client interactions and workshops
  • (Senior Manager) Drive momentum, influence stakeholders and ensure rapid value creation
  • (Manager) Support detailed delivery through analysis, documentation and workshop preparation
  • (Manager) Provide hands‑on support across data strategy and transformation activities

Requirements

  • Strong background in management consulting with experience delivering data strategy or large‑scale data transformation projects
  • Demonstrated ability to manage senior client relationships, including C‑suite stakeholders
  • Deep expertise in data and AI strategy, governance, operating models and value delivery
  • Excellent communication, facilitation and stakeholder management skills
  • Experience applying agile and iterative approaches to strategy development
  • Commercial acumen with the ability to build value‑driven business cases

Details

  • Start date: ASAP
  • Duration: 8 weeks
  • Day rate: £500-£600 Ltd, depending on experience
  • Location: London, hybrid


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