Degree Apprenticeship – Data Scientist Level 6

Cummins Europe
Darlington
1 day ago
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We are looking for an enthusiastic apprentice to join our team specializing in Data Science for our Cummins Services (Shared Services) in Darlington, United Kingdom. During your apprenticeship with us, you will learn how a major global organization operates, gaining the tools and exposure you will need to become an expert in the industry and power your potential!


Summary Of The Course

The Data Scientist Integrated Degree Apprentice role is a developmental position within Cummins Services Organisation. During the apprenticeship you will work 5 days per week, inclusive of 1 day per week for study with the BPP University. The working hours are 08:00 – 16:30 Mon – Thurs and 08:00 – 13:30 Fri. On completion of this apprenticeship, you will obtain a Level 6 (Degree) qualification.


Responsibilities

  • Evaluate, initiate, create and support business solutions using digital technology.
  • Influence the local organisation with a key focus on delivering business improvements.
  • Create impactful presentations and dashboards to summarise key findings.
  • Communicate effectively with key stakeholders to help drive timely decision making.

Qualifications

  • UCAS point of 104 or above in a STEM related subject either from A levels or BTEC.
  • Mathematics at GCSE grade 7 or above and English at GCSE grade 5 or above.
  • Science at GCSE grade 6 or 6 if double or above and an average grade of 5 across remaining subjects.
  • A recognised and equivalent qualification (examinations and experience will be considered) or completion of a level 3 apprenticeship/professional qualification in a relevant discipline.
  • Work experience in data or IT for 2 years or above will be considered.
  • Strong numerical, logical skills, problem solving techniques and strategies.
  • Excellent interpersonal and communication skills.

Why Cummins

As an apprentice at Cummins, you will have the chance to develop your skills and knowledge in a supportive and dynamic environment. Our program is designed to provide a comprehensive learning experience that prepares you for a successful career in the industry.


Working at Cummins

At Cummins, we are committed to fostering a diverse and inclusive workplace. We provide equal employment opportunities to all qualified individuals, regardless of race, gender, color, disability, national origin, age, religion, union affiliation, sexual orientation, veteran status, citizenship, gender identity, and/or expression, or any other status protected by law. As a disability confident employer, we strive to make our recruitment process as accessible as possible. If you require any reasonable adjustments to accommodate a health condition or disability, please let us know. Your journey with us matters!


Key Details

  • Job: Engineering
  • Organization: Cummins Inc.
  • Role Category: On-site with Flexibility
  • Job Type: Apprenticeship
  • ReqID: 2424778
  • Relocation Package: No
  • 100% On-Site: No


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