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COMMERCIAL DATA ANALYST

London
1 day ago
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COMMERCIAL DATA ANALYST - MARKET ANALYSIS & AGGREGATION

Summer-Browning Associates is currently assisting our Central Government client, who is looking for a Commercial Data Analyst for an initial 4-month assignment.

Location: London/Hybrid

The ideal candidate will hold an active SC clearance and a strong background in public sector procurement data analysis.

Key skills and experience include:

Proven expertise in analysing data spend, aggregation, and conducting market maturity assessments within procurement/commercial operations.
Advanced proficiency in Excel, Power BI, and other leading data visualisation tools
In-depth familiarity with global supplier markets and a diverse range of procurement categories.
Strong ability to interpret complex data and deliver actionable insights.
Demonstrated experience in risk assessment and strategic planning.
An understanding of the Procurement Act 2023 and the Public Contracts Regulations (PCR) 2015 is highly desirable.To apply, please submit your latest CV for review

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