Data Analyst

Moose Toys
Newquay
5 days ago
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Overview

Moose Toys is seeking a Data Analyst to join our team in Cornwall.

About us: Moose Toys exists to make kids superhappy. For this revolutionary brand, happiness lies at the heart of everything we do. Known for our trailblazing toy design, development and manufacturing, and strong commitment to the future of our planet, our toys are consistently recognised with global awards and accolades.

Our Cornwall team is recognised by Great Place To Work as one of the UK’s Best Workplaces for five consecutive years, with further recognition as a Best Workplace for Development, Wellbeing and Women.

We have a range of global toy industry awards, including Preschool Toy of the Year and Best New Property, among others.

At Moose we Playful with a Purpose, and are committed to our people, our values and the planet:

  • We’re a family
  • We dream Big
  • We love Diversity
  • We’re always Learning
  • We prioritise Wellbeing
  • We give back in a big way
  • We’re serious about Sustainability
  • We bring the Fun

The Role

Workdays: Monday to Friday 09:00-17:00 + Hybrid + Flexi

The Data Analyst role partners with Commercial, Sales, Marketing, Supply Chain and Finance to own and interpret performance data that drives commercial decision‑making. Converting complex, multi‑source data into clear, actionable insights that maximises sales opportunities, improves inventory and replenishment outcomes that support both short‑term execution and longer‑term European strategy.


What success looks like in this role
  • Trusted ownership of core commercial and operational reporting, with data that stakeholders rely on to make day to day decisions
  • Clear, actionable insight delivered to Sales, Marketing, Supply Chain and Finance — not just dashboards, but interpretation and recommendations
  • Continuous improvement of reporting and data processes, reducing manual effort and improving speed, accuracy and usability
  • Strong working relationships across the business, acting as a go to analytics partner rather than a back office reporting function

Experience & Qualifications
  • Proven experience in an analytics, commercial insights or similar role, with demonstrated experience in data visualisation and reporting, including the ability to design and maintain clear, usable dashboards for business users
  • Strong Excel expertise and experience using Power BI, with hands‑on experience of Power Query (or equivalent) for data transformation, manipulation, and integration across multiple data sources, maintaining reliable backend logic
  • Comfortable working across the full analytics lifecycle — from data preparation and modelling through to visualisation and business use
  • Bachelor’s Degree (or equivalent experience) in Business, Analytics, Economics or a related field
  • Experience within FMCG, retail, or the toy industry highly regarded, with experience working with large, multi‑retailer POS datasets strongly preferred

Perks & Benefits
  • This is an exciting opportunity to join our friendly, innovative, and collaborative team. Full training and induction will ensure you have the very best ‘Flying Start’ to Moose Toys.
  • We are a family who values team members. Offering a fun, energising, motivating environment with great benefits and recognition programs including:
  • Our contracts are Monday to Friday, 40 hours per week (1/2 hour paid lunch break).
  • Hybrid - We offer non-contractual work from home 2 days a week (Wednesdays and Fridays) depending on business needs.
  • Non-contractual flexi hours scheme with core hours 10:00 – 15:00 (Mon to Fri) and flexible hours otherwise.
  • Company Pension Contribution - 4% after 3 months service
  • Life Assurance and Income Protection Policy from day one
  • Enhanced Holiday, 25 days plus bank holidays. After 3 years this increases by 1 day per year up to 28 days
  • Flexible holiday options with Buy, Borrow, Carry Over & Give Back Holiday Policy
  • Public Holiday - Flexible Leave Swap Day
  • Enhanced Maternity / Adoption & Shared Paternity Pay
  • Study Assistance and Study Leave
  • LinkedIn learning memberships for all employees
  • Mental Health Wellness leave and Wellbeing program
  • Gym & Cycle Schemes
  • Free eye test vouchers
  • Bring your pet to work days
  • Recognition programs including On the Spot Rewards, Superhappygrams and Employee of the Month & Year awards
  • Lively social event calendar and annual celebrations
  • Opportunity to join charity/sustainability teams or DEI committee
  • Volunteer leave
  • Professional development programs including LinkedIn Learning

As part of our commitment to diversity, equity, and inclusion, part-time applications are welcome. We value flexible arrangements to support work–life balance.


If this position sounds of interest, we’d love to hear from you! APPLY today! Please submit your cover letter and CV to include details of your salary expectation and notice period.


Moose Toys is an equal opportunity employer. All qualified applicants will receive consideration for employment regardless of race, colour, religion, sex, sexual orientation, gender identity, age, national origin or disability. If you require any assistance to be included in our process, please contact , quoting the job title and reference number.


Visit our website or our LinkedIn Life Page for more information on our amazing brands and people.

https://www.linkedin.com/company/moose-toys/life/8116859d-111c-4adb-8ca1-060abd41c007/?viewAsMember=true
www.moosetoys.com


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