Level 6 Sales Data Scientist Apprentice

Mobilize Financial Services
Maple Cross
6 days ago
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As a Data Scientist Apprentice within the Sales Support team, you will work towards a Level 6 Integrated Degree Apprenticeship in Data Science. You will support the business by analysing vehicle finance sales data, identifying trends, and providing actionable insights to improve sales performance, customer engagement, and operational efficiency.


This role blends technical data skills with business acumen, enabling you to contribute to strategic and operational decision-making while developing your expertise in data science.


Key Points

  • Use Excel, Power Query, Power BI to collect, clean, and transform data.
  • Design clear, impactful dashboards and visualizations to support executive decision-making.
  • Deliver presentations to both technical and non-technical audiences.
  • Drive automation and process improvement initiatives.
  • Manage data projects end-to-end, ensuring timelines, resources, and stakeholder expectations are met.
  • Collaborate with stakeholders to gather requirements and address business challenges.
  • Develop and maintain reports and dashboards.
  • Ensure data quality, security, and compliance with GDPR and internal policies.
  • Progressing to use Python to build data automation and machine learning solutions

Knowledge and Skills

  • Understanding of data governance, ethics, and regulatory compliance.
  • Data storytelling: visualisation, reporting, and stakeholder communication.
  • Interest in analytical methods: predictive modelling, machine learning, optimisation.
  • Interest in project management and resource planning for data initiatives.

Requirements

  • 104 UCAS points and GCSE English and Maths (grade C or above), or
  • A recognised and equivalent qualification (examinations and experience will be considered) or
  • Completion of a level 3 apprenticeship/professional qualification in a relevant discipline

Additional

  • Strong Excel and PowerPoint skills.
  • Passion for data, problem-solving, and continuous learning (including new technologies).
  • Strong communication and collaboration skills.
  • Pro-active at working autonomously.

At Mobilize Financial Services, we are proud to be part of the Renault Group, a global alliance that opens doors to exciting opportunities and programs designed to help individuals thrive and grow. Our culture is built on strong value, integrity, innovation, and collaboratio, which we believe make us an exceptional place to work.


At Mobilize Financial Services, we are more than a financial services provider we are a team committed to delivering exceptional experiences for our customers and creating meaningful careers for our employees. By joining us, you open the door to a dynamic and varied career, thanks to the wide range of activities and businesses within our Group. Whether your passion lies in finance, sales, customer service, marketing & digital innovation, or operational excellence, there is a place for you here.


We are looking for someone who can start immediately / as soon as possible
Seniority level

  • Entry level

Employment type

  • Temporary

Job function

Referrals increase your chances of interviewing at Mobilize Financial Services by 2x


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