Data Analyst

Smart10Ltd
Borehamwood
4 weeks ago
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Data Analyst

Salary: £35,000 + 15% company bonus

Benefits: 2 day working from home, 20 days holiday, Life insurance+ 5 % pension

Location: Borehamwood

A globally recognised, heritage-led brand offering a collaborative and inclusive working environment, where employees are supported to develop their skills, contribute ideas, and take pride in representing a name synonymous with quality and excellence.
Committed to high standards, integrity, and long-term growth, Filippo Berio values teamwork, cultural diversity, and employee wellbeing, encouraging a people-first culture within a stable and respected international organisation
Responsibilities:

Liaise with the sales and finance teams in preparing, inputting and evaluating promotions on our Vistex / SAP management tool.
To liaise with the corporate Vistex team in Italy to align with international trade marketing functions.
Compile weekly market audit of Companies and competitor product pricing in the market across product range
Prepare monthly reports using data sets showing product and brand performance. Generate data and actionable insights
Help the sales team in preparing customer presentations.
To prepare and issue daily / weekly / monthly sales and margin customer data to internal teams
To evaluate promotions to evaluate success against KPIs
Attributes:

Previous experience as a Data analyst essential
Experience in FMCG, Retail and E-commerce is highly beneficia
Tenacious, intelligent, ambitious, pro active team player
Numerate with excellent data analytical and presentation skills
Smart10 is a multi-award-winning specialist recruitment consultancy focused on the supply of temporary, contract and permanent placements across a select group of business sectors. In order to keep up to date and search for all our active jobs, please visit our website, like us on Facebook and follow us on Instagram or LinkedIn. Please refer to Smart10's Privacy Policy as to how we hold your data

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