Senior Commercial Data Analyst

Manchester
2 days ago
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Job Title: Senior Commercial Data Analyst
Location: Manchester (Hybrid working available)
Salary: Competitive and negotiable depending on experience

A leading UK consultancy is looking to appoint a Senior Commercial Data Analyst to support clients across a range of sectors by providing high-quality commercial insight and data-driven decision making.

This is an excellent opportunity for an experienced analyst who enjoys working with complex datasets, building dashboards, and translating data into clear, actionable business insight for senior stakeholders.

Key Responsibilities:

Collect, cleanse and manage data from multiple sources to ensure accuracy and consistency.

Analyse commercial and operational data to identify trends, patterns and performance improvements.

Produce clear reports, dashboards and visualisations for both technical and non-technical audiences.

Provide insight and recommendations to support strategic business decisions.

Track and report on key performance indicators (KPIs).

Support continuous process improvement initiatives to increase efficiency and effectiveness.

Work collaboratively with internal teams and client stakeholders.

Ensure compliance with health, safety, environmental and quality procedures.

Skills & Experience Required:

Strong experience in data analysis within a commercial or business-focused environment.

Proficient in data visualisation tools such as Power BI, Tableau or similar.

Advanced Excel skills and strong data handling capability.

Experience with data cleansing, preparation and statistical analysis.

Ability to communicate complex data clearly and confidently.

Strong problem-solving and critical thinking skills.

Comfortable working in a fast-paced, project-based environment.

Desirable:

Degree in a relevant discipline (Data, Mathematics, Statistics, Business, Economics, Computer Science or similar).

Professional data certifications (Power BI, Alteryx, SQL, DataCamp or equivalent).

Experience producing dashboards and performance reports for senior stakeholders.

What’s on Offer:

Competitive salary, negotiable depending on experience.

Hybrid and flexible working.

Opportunity to work on varied projects with high-profile clients.

Career progression and professional development support

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