Sustainability Data Analyst

London
1 day ago
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Why Greencore?

Following the combination with Bakkavor in January 2026, we're one of the UK's leading creators of convenience food, driven by a simple purpose: to make everyday taste better.

As a vibrant and fast-moving business, we're proud to employ over 28,000 talented colleagues across 36 manufacturing sites and 21 distribution depots in the UK and the US. Together, we bring delicious food to life. Our products cover every meal occasion from breakfast through to dinner and dessert, with lunch and snacking in between. In FY25, our shared passion helped us achieve combined revenues of approximately £4bn.

Our extensive direct to store (DTS) network, with 17 depots across the UK, allows us to deliver fresh and frozen food both our own and from trusted partners to thousands of stores every day, ensuring consumers enjoy the very best, whenever and wherever they shop.

Role Purpose

To deliver robust, accurate, and well-governed sustainability data that supports Greencore's sustainability strategy, reporting, and decision-making. The role ensures strong data integrity, effective systems and processes, and high-quality analysis to enable reliable internal and external reporting and longer-term modelling

Key Accountabilties

Implement and maintain a sustainability data governance framework, ensuring effective procedures for data integrity and robust internal and external reporting .

Maintain clear documentation of sustainability data processes, methodologies, and controls

Work with, and where appropriate develop, systems and tools to collect, analyse, and report sustainability data from multiple sources

Conduct robust quality checks to ensure accuracy, consistency, and reliability of sustainability data

Consolidate sustainability data from multiple sources into clear, usable formats to support the wider Sustainability team and stakeholders and as a key input into external sustainability (mandatory and voluntary) reporting

Liaise with internal and external auditors to support sustainability assessments and reviews

Prepare sustainability data and supporting evidence for internal and external assurance processes.

Prepare data and responses for disclosure requests such as CDP, EcoVadis, Manufacture 2030/Secaro and ad hoc customer specific questionnaires

Prepare data for monthly reporting of the sustainability metrics including Remuneration objectives

Prepare data for governance forums including visuals and tables and maintain agreed glidepathsWhat we're looking for

Essential

Strong data analysis skills with the ability to generate insight from complex data sets

Extensive understanding of data tools, systems, and software to consolidate, analyse, and present data in useful formats

Experience implementing strong data governance processes (e.g. working with audit/assurance)

High attention to detail with a structured and analytical approach

Ability to work collaboratively across functionsDesirable

Finance background

Experience working with sustainability or ESG data Experience supporting external/third-party audit or assurance processesWe're not all the same at Greencore and our differences help us to make every day taste better for all our stakeholders. We truly put our people at the core and are proud of our diversity.

If this sounds like you join us, grow with Greencore and be a part of driving our future success.

What you'll get in return:

Competitive salary and job-related benefits

25 days Holiday

Competitive matched pension contributions

Company share save scheme

Greencore Qualifications

Exclusive Greencore employee discount platform

Access to a full Wellbeing Centre platform

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