HR Data Analytics Graduate — 2-Year Scheme

Mercedes AMG High Performance Powertrains
Northampton
18 hours ago
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A leading automotive engineering company in Northampton is seeking an HR Business Analyst Graduate for a 2-year scheme. This entry-level position focuses on data analysis, HRIS management, and process improvement within a robust HR department. Candidates with a degree in Business Data Analytics, Business Studies, or IT are encouraged to apply. The role offers a salary of £33,000 pa and numerous benefits, including 36 days of annual leave and a private medical scheme. Start date is September 2026.
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