Master Thesis Method for dynamic bottleneck prediction in in-house logistics processes (f/m/x)
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We believe in creating an environment where our interns really can learn by doing and where they are given their own areas of responsibility right from the start of their time with us. That’s why our experts will treat you as part of the team from day one, encourage you to bring your own ideas to the table – and give you the opportunity to really show what you can do.
We, the BMW Group, offer you an interesting and varied master thesis on developing a method for dynamic bottleneck prediction in in-house logistics processes. Our team is responsible for all software applications for in-house logistics in all plants worldwide and consists of business and IT experts. The aim of this master's thesis is to clarify whether and how machine learning models can be used to make concrete, useful statements about the material flows in the company and which bottlenecks in in-house logistics can occur in consequence.
Hence, this thesis focuses on developing a method based both on forecasted demand and replenishment data as well as learning from past material flow data used to predict dynamic bottlenecks in the in-house logistics process.
What awaits you?
- Based on the literature review, suitable methodologies for dynamic bottleneck prediction have to be identified.
- To predict the bottlenecks, one possible methodological approach could be, that the material flows need to be predicted first. Based on planned deliveries, the ingoing and outgoing movements into the main storage areas are known as demands and replenishment.
- The exact material flows into these main storage areas and outgoing of these main storage areas however need to be predicted based on observed material flows in the past.
- Once, the material flow relations between the single storage areas are known, the actual load on each storage-to-storage area relation have to be derived and the dynamic bottlenecks (most heavily loaded relation in comparison to predicted available capacity) are to be identified.
- Based on the resources that have been involved in the past in the respective relations, considering that resources can be used in multiple relations.
Please note that your thesis must be supervised by a university on your part.
What should you bring along?
- Study program with a focus on digitalization, logistics or supply chain management.
- Interest in academic research.
- Good English skills.
- Passion for logistics and digitalization.
You are enthused by new technologies and an innovative environment? Apply now!
What do we offer?
- Comprehensive mentoring & onboarding.
- Personal & professional development.
- Flexible working hours.
- Digital offers & mobile working.
- Attractive remuneration.
- Apartment offers for students (subject to availability & only Munich).
- And many other benefits - see bmw.jobs/benefits
At the BMW Group, we see diversity and inclusion in all its dimensions as a strength for our teams. Equal opportunities are a particular concern for us, and the equal treatment of applicants and employees is a fundamental principle of our corporate policy. That is why our recruiting decisions are also based on personality, experience and skills.
Find out more about diversity at the BMW Group at bmwgroup.jobs/diversity
Earliest starting date: from 03/01/2025
Duration: 6 months
Working hours: Full-time
Contact:
BMW Group HR Team
+49 89 382-17001