Lead Data Scientist

Next
Leicester
1 month ago
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25% off most NEXT, MADE*, Lipsy*, Gap* and Victoria's Secret* products (*when purchased through NEXT) Company performance based bonus Sharesave scheme On-site Nursery available; OFSTED outstanding in all areas 10% off most partner brands & up to 15% off Branded Beauty Early VIP access to sale stock Access to fantastic discounts at our Staff Shops Restaurants with great food at amazing prices Access a digital GP and other free health and wellbeing services Free on-site parking Financial Wellbeing - Save, track and enhance your financial wellbeing Apprenticeship - Grow and develop on the job whilst gaining a qualification Direct to Work - Discount online and instore, collect your items the next day for free from your place of work or local store Support Networks - Access to Network Groups to empower and celebrate each other Wellhub - Discounted flexible monthly gym memberships, with apps, PT sessions and more

Conditions apply to all benefits. These benefits are discretionary and subject to change. We aim to support all candidates during the application process and are happy to provide workplace adjustments when necessary. Should you need support with your application due to a disability or long-term condition, feel free to get in touch with us by email (please include 'Workplace Adjustments' in the subject line), or call us on and leave a voicemail.

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