Senior Data Analyst

Wolverhampton
9 months ago
Applications closed

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Senior Data Analyst

Senior Data Analyst

Senior Data Analyst

Senior Data Analyst

Senior Data Analyst

Senior Data Analyst

An ambitious, PE-backed B2B business is seeking a commercially focused Data Analyst to turn insight into impact. With strong backing and a goal to double revenue over the next three years, this business is investing in data to underpin smarter pricing, sharper sales strategies, and better operational decisions.

Role: Data Analyst - Commercial Focus

A dynamic and fast-growing B2B business, backed by private equity, is seeking a highly capable and commercially-driven Data Analyst to join their team. As a key member of the organisation, you will have the opportunity to play a crucial role in driving the business towards its goal of doubling revenue over the next three years.

Responsibilities:

Build and maintain Power BI dashboards to provide visibility of commercial performance.
Utilise SQL to extract and manipulate data from Dynamics 365 / Business Central.
Analyse sales, margin, pricing, and inventory to support strategic decision-making.
Translate complex data into clear, actionable recommendations for senior leadership.
Influence change by embedding a data-led approach across departments.

Requirements:

Strong technical foundation in Power BI, SQL, and Excel.
Ability to translate data into commercially meaningful insights.
Confident working across departments and engaging senior stakeholders.
Background in B2B, wholesale, supply chain, or product-led businesses preferred.
Experience with pricing, margin, or sales optimisation highly valued.
This is a highly visible and impactful role for someone who wants to be at the core of a growing business. You will have autonomy to shape how data is used and the support to make a significant impact.

We welcome individuals from diverse backgrounds to apply for this position. We believe that a diverse and inclusive workplace leads to better ideas and outcomes. We are committed to creating an environment where all employees feel valued, respected, and have equal opportunities for growth and development

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