Apprenticeship - Data Engineer Level 5

PowerToFly
Darlington
1 month ago
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DESCRIPTION


We are looking for an enthusiastic Apprentice to join our team specializing in Data Engineering for our Engine Business Segment in Darlington, UK. 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 Engineering Apprentice role is a developmental position within the Digital Team. During the apprenticeship you will work 5 days per week, inclusive of 1 day per week for study at BPP University. The working hours are 08:00 – 16:30 Monday to Thursday and 08:00 – 13:30 Friday. On completion of this apprenticeship, you will obtain a Level 5 Data Engineering qualification.


RESPONSIBILITIES


In this role, you will make an impact in the following ways:



  • Build and Optimise Data Pipelines & Systems
  • Manage and Integrate Data Across Platforms
  • Support Data Quality, Governance, and Compliance
  • Analyse Requirements and Design Data Solutions
  • Collaborate Across Digital & Business Teams
  • Maintain and Support Evolving Data Products

QUALIFICATIONS


To be successful in this role you will need the following:



  • Mathematics at GCSE grade 7 or above (essential)
  • Science at GCSE grade 6,6 if double or above (if applicant has completed separate sciences Physics 6, Chemistry 4, Biology 4) (essential)
  • English Language at GCSE grade 5 or above (essential)
  • Level 3 qualifications in IT or related subjects (desired)
  • Strong numerical and logical skills with Problem solving techniques and strategies
  • Excellent interpersonal and communication skills with some creativity and innovation 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.


Job Engineering


Organization Cummins Inc.


Role Category On-site with Flexibility


Job Type Apprenticeship


ReqID 2422920


Relocation Package No


100% On-Site No


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