Data Scientist

MATALAN
Liverpool
1 month ago
Applications closed

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About Matalan

From humble beginnings to disruptive innovations in the retail industry, find out about how Matalan is ever-evolving here. We know as a team, we are stronger together - we champion equality for all and make lasting connections that go beyond work. We thrive off our inclusive culture, encouraging our colleagues to bring their true selves to work and contributing to collective creativity, open‑mindedness and growth. We want to give every candidate the opportunity to perform at their best throughout the application and interview process and then ultimately in their role. If you require any adjustments during our recruitment process, please don’t hesitate to let us know. In the event that a high volume of suitable applications are received, the post may close prior to the specified closing date. Please apply as soon as possible if interested.


About the role

We’re looking for a skilled and curious Data Scientist to join our team and help transform complex data into clear, You’ll use statistical methods, machine learning, and data visualisation tools to identify trends, solve problems, and support data‑driven decision‑making across the organisation.


In this role, you’ll:



  • Collect, clean, and prepare data from multiple sources to ensure quality and accuracy.
  • Apply statistical and analytical techniques to uncover insights and trends.
  • Build and deploy predictive models using machine learning methods.
  • Visualise data through clear, engaging dashboards and presentations.
  • Work collaboratively with engineers, analysts, and business leaders to deliver impactful projects.
  • Develop and enhance AI/ML tools, including Google Vertex AI and Azure ML.
  • Stay up to date with emerging tools, technologies, and best practices in data science.
  • You'll measure success through model accuracy, quality of insights, project delivery, stakeholder satisfaction, and the tangible business value of your work.

About You

You’re naturally analytical, detail‑oriented, and driven by curiosity – someone who enjoys uncovering stories hidden within data. You combine technical expertise with strong communication skills, making complex information accessible to a range of audiences.


You'll bring:



  • A background in a numerate discipline with experience delivering data science solutions.
  • Hands‑on experience applying forecasting, statistical, and machine learning techniques to solve business problems.
  • Strong proficiency in Python or R, plus solid SQL skills.
  • Experience across the full data science project lifecycle – from development to deployment and maintenance of models.
  • Confidence working with cloud platforms such as AWS, GCP, or Azure.
  • The ability to build credibility with stakeholders and communicate findings in a clear, concise way.
  • A mindset of continuous learning and improvement.

Benefits

In addition to competitive salaries, we also offer the below core benefits:



  • 20% staff discount, which increases with length of service
  • Thrive Recognition Scheme
  • Wellbeing support provided by the Retail Trust
  • Life Assurance
  • Retail Rewards platform offering discounts for other retailers
  • Pension Scheme
  • Access to a wide range of career development
  • Additional benefits may apply depending on your role and area of the business


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