Lead Data Analyst

Harnham - Data & Analytics Recruitment
London
1 month ago
Applications closed

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LEAD DATA ANALYST

£65,000 + Benefits

LONDON (HYBRID)

This is an opportunity to step into a high-impact Lead Data Analyst role where you shape data strategy, own end-to-end delivery, and influence senior stakeholders. You will work closely with performance-driven teams and have the freedom to build, innovate, and lead.

The CompanyWe are a fast-growing performance marketing and technology business that uses modern data tooling to drive commercial impact. Our focus is on building tailored analytical solutions that help clients scale profitably. You will join a cooperative environment that values clear thinking, technical rigour, and a proactive approach to solving complex problems. As one of their early senior hires, you will help set strong foundations for future growth.

The Role

This role positions you as the strategic lead for high-value analytics projects, partnering closely with senior stakeholders to shape data strategy and create an impact with insights. You will combine hands-on technical work with client leadership, owning the full lifecycle of data solutions from transformation design to executive-level presentation. It is an opportunity to drive commercial outcomes, elevate analytical capability, and play a key role in a growing data function.

  • Lead analytical strategy across key client accounts, acting as a ...

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