Master’s Thesis in the Field of Data Science / Machine Learning in Injection Molding (f/m/d)
Working at Freudenberg: "We will wow your world!" This is our promise. As a global technology group, we not only make the world cleaner, healthier and more comfortable, but also offer our 52,000 employees a networked and diverse environment where everyone can thrive individually. Be surprised and experience your own wow moments. Together with our partners, customers and the world of science, we develop leading\-edge technologies, and excellent products and services for about 40 markets and for thousands of applications: seals, vibration control components, batteries and fuel cells, technical textiles, filters, cleaning technologies and products, specialty chemicals and medical products.
Some of your Benefits
Cafeteria/ Canteen
Cafeteria/ Canteen: We offer fresh food on\-site, both hot and cold.
Diversity \& Inclusion
Diversity \& Inclusion: We focus on providing an inclusive environment and recognize our diversity contributes to our success.
Easily Reachable
Easily Reachable: Easy, low\-stress access by car or public transport.
Public Transportation Allowance
Public Transportation Allowance: Commute more affordable thanks to public transport allowance.
Employee discounts
Employee discounts: Opportunities for deals on products and services.
Weinheim
On\-Site
Freudenberg Technology Innovation SE \& Co. KG
The increasing digitalization of production processes opens up new opportunities for data\-driven optimization of manufacturing operations. In injection molding in particular, extensive process and machine data offer significant potential for the application of data science and machine learning methods.
The objective of this master’s thesis is to develop and evaluate data\-driven models for the analysis, prediction, and optimization of injection molding processes.
You support our team as
Master’s Thesis in the Field of Data Science / Machine Learning in Injection Molding (f/m/d)
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Responsibilities
- You will analyze and prepare production and process data from injection molding systems
- You will identify relevant influencing factors affecting part quality, cycle time, and scrap rates
- You will develop and implement machine learning models (e.g., regression, classification, anomaly detection)
- You will evaluate the models in terms of predictive performance and industrial applicability
- You will visualize and interpret the results for technical stakeholders
- You will derive actionable recommendations for process optimization
- You will document your results and prepare the scientific thesis
Qualifications
- You are currently enrolled in a degree program in Data Science, Computer Science, Mechanical Engineering, Mechatronics, Industrial Engineering, or a comparable field.
- You have strong knowledge of statistics, data science, and machine learning
- You have experience with Python and common libraries (e.g., pandas, scikit\-learn, PyTorch/TensorFlow)
- You have an interest in production processes, ideally with knowledge of injection molding or manufacturing technologies
- You have very good German or English language skills, both written and spoken
- You ideally have an interest in pursuing an industrial PhD following your thesis
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