Assembly Spartanburg, South Carolina 23.09.2024

Quality & Data Analytics Co-Op (Spring 2025)

A good student experience is never hands-off. We believe in creating an environment where students really can learn by doing during their time with us and where they are given their own areas of responsibilities from the start. That’s why you are treated as part of the team from day one and are encouraged to bring your own ideas to the table. 

Description

Description

 

Support the Assembly Test, Finish, Rework and New Model Launch areas with development of process improvements, innovations, and software tools.  Engage in problem solving related to quality and process flow topics in the department. Work with department management teams to iterate on existing concepts to improve transparency of the quality landscape, F1-F2 and Launch Processes, and Vehicle / Information Flow management.  Also, imagine the next generation of flow concepts and software tools and assess feasibility and potential benefits.  Performs other duties as assigned by management.

 

The qualified intern should be expected to:

 

  • Quality, Data Analytics, Problem Solving:  Engage in Problem solving in the Department related to KPI impacts and quality.  Develop new ways to display operations data that facilitates a faster and clearer path from problem recognition to solution. Participate in Problem solving activities in department to improve KPI’s and develop new methods and tools.  This may include development of new mobile software or hardware solutions in conjunction with software to streamline the defect documentation process. Develop or enhance tools to improve visibility of plant quality process adherence. Includes interfacing with existing plant quality management IT systems. Also may include suggesting and testing new ideas that don’t yet exist.

 

  • Vehicle Flow Management: Support management and quality teams to develop and enhance existing processes with accompanying software tools to manage offline vehicle flow more efficiently through multiple and complex testing and rework areas. Simplify and save labor required from process supporters by providing smarter tools to detect irregularities or inconsistencies in vehicle routing decisions, in order to support faster resolution, feedback to the sources of such issues, and improve on-time delivery.

 

  • Vehicle Launch Preparations: Support management and quality teams to enhance processes related to production, test, and finish related to New Vehicle Launch processes in the Department.

 

  • Creation of innovative dashboards to quantify, understand and visualize all the intricacies of launching future vehicles in Plant 10.

 

 

Qualifications

 

  • Engineering degree (preferably electrical, computer, mechanical, or industrial) / Data Science / Statistics or related field.
  • Strong analytical and problem-solving skills with a keen attention to detail.
  • Microsoft Excel (experience with VLookup, Macros, PivotTables, etc. preferred)
  • Proficiency in data manipulation and analysis utilizing tools such as Python, SQL or similar.
  • Preferred experience with data visualization tools such as Tableau, Power BI, etc.
  • Detail-oriented.
  • Organized.
  • Effective communication skills.
  • Possess a minimum cumulative GPA of 3.0 (not just in major).
  • Have enrolled status at an accredited four-year college or university in the United States.
  • Completed at least 30 credit hours at time of application.
  • Ability to complete 3 Co-op rotations.
  • Ability to work full-time on-site (40 hours / week).
  • Transfer students must have a GPA from current university.
  • MUST ATTACH A COPY OF UNOFFICIAL TRANSCRIPT. 
  • Complete and pass a substance abuse test before the work term. 
  • THE WORK TERM DATES ARE (January 13th – May 16th, 2025)

 

Quality & Data Analytics Co-Op (Spring 2025)
20240923
Automotive
Spartanburg, South Carolina
United States
Legal Entity:
BMW Manufacturing Co., LLC
BMW Group
Location:
Spartanburg, South Carolina
Job Field:
Assembly
Job Id:
140905
Publication Date:
23.09.2024
Internship
FullTime
Print Page