Senior Data Analyst

Dublin
1 week ago
Applications closed

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Group Senior Data Analyst

  • Corballis Rd S, Dublin, Ireland

  • Full-time

    Company Description

    At Valeo Foods Group, we’re not just about food – we’re about fueling growth, driving transformation, and shaping the future of our people. With a footprint spanning 106 international markets, over 85 brands, and backed by Bain Capital, we’re on an ambitious path to double in size over the next five years. To help us achieve this, we’re looking for a Senior Data Analyst to join our Finance & ESG team in Dublin.

    This is a fantastic opportunity for an experienced data professional to shape how we manage and leverage data across finance and sustainability functions. You’ll play a key role in driving data accuracy, quality, and governance, enabling better decision-making across the business.

    Job Description

    As Group Senior Data Analyst, you’ll be part of the Group Finance team, working closely with the Group CFO, Finance Projects Manager, and Group Energy Manager. You’ll help develop and implement a master data management (MDM) strategy, ensuring consistent, trusted, and high-quality data across Valeo’s growing global footprint.

    Your responsibilities will include:



Master Data Management: Overseeing data governance initiatives, managing data mapping and ingestion, and ensuring alignment with our data strategy.

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Data Quality & Accuracy: Implementing best practices for storing, cleaning, and securing data, supporting reliable reporting for internal and external stakeholders.

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Collaboration & Integration: Partnering with IT and business teams to represent finance and ESG priorities during data solution implementations.

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Data Analysis & Insights: Identifying data inconsistencies, providing resolution strategies, and driving continuous improvement programs.

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Supporting Projects: Contributing to ESG and finance data management projects, including system integrations and ongoing database quality maintenance.

Qualifications

We’re seeking a detail-oriented and collaborative analyst with:

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Experience in data management, ideally in finance or ESG within the FMCG sector.

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Strong proficiency in ERP systems and master data management processes.

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Excellent analytical skills with the ability to identify trends and deliver actionable insights.

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Expertise in Excel, PowerPoint, and data visualisation tools.

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A proactive mindset with the ability to work under pressure in a fast-paced, evolving environment.

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A passion for sustainability and finance, with a desire to expand your expertise in these growing fields.

Additional Information

You’ll have the opportunity to work closely with senior executives across Dublin and London, gaining exposure to M&A integration projects and influencing data strategy at scale. With Valeo’s ambitious growth plans, this is a chance to make a real impact in a business that is transforming rapidly

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