Data Analyst - Procurement

Yeovil
1 day ago
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Market-leading business require a Procurement Data Analyst. Applicants should be skilled data analysts with technical expertise across; MS Excel (including VBA), SQL, Python and Power BI. The Procurement Data Analyst will be responsible for creating reports, KPIs, dashboards, and trackers, analysing and draw insights from the procurement data.

The Procurement Data Analyst will be responsible for providing an expert-level data analysis service to the business, creating reports and analysing data to drive procurement strategy and ensure governance against procurement process and procedure.

Specific duties of the Procurement Data Analyst include:

Create; reports, dashboards, KPIs and trackers and insights/trends from procurement department data
Present procurement department data and storytelling to senior procurement and finance colleagues
Monitor, analyse and report on procurement KPIs/data; cost savings, spend analysis, supplier performance etc
Contribute to the development of procurement strategies - supplier selection, rationalisation etc.
Create procurement SOP, guides, processes/procedures and track governance against these policies

Procurement Data Analysts should meet the following criteria:

An experienced data analyst, skilled at data analysis
Technical skill with; MS Excel, SQL, Python, Power BI - the ability to create spreadsheets, dashboards, trackers, KPIs, not simply analyse the data
An understanding of procurement , or willingness to learn
Strong stakeholder engagement skills and the ability to present insights and story-tell at a senior level
Ability to work in the UK without sponsorship

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