Your personal AI career agent
Master Thesis Data-Efficient Hybrid Machine Learning for Robust Vibration System Prediction(m/w/x)
Developing data-efficient hybrid ML models for vibration system prediction. Advanced ML techniques and Python proficiency required. Thesis completion with potential for publication.
Requirements
- Master's degree in Engineering, Mathematics, Physics, or comparable with good grades
- Good understanding of dynamics (mechanical vibrations) / mechanics
- Very good knowledge of Python (Pytorch, Pandas, Numpy etc.)
- Good to very good knowledge of fundamental machine learning concepts and algorithms, particularly relevant for regression
- High degree of self-motivation
- Independent work
- Effective communication of progress and ideas
- Driving innovation
- Fluent English and basic German
- Fluent German and very good English
- CV, transcript of records, examination regulations attached
- Valid work and residence permit if indicated
Tasks
- Investigate developing robust predictive models for technical systems
- Enhance a machine-learning toolbox for vibration-loaded systems
- Add capabilities to learn from scarce measurement data
- Research and apply advanced machine learning techniques
- Integrate limited measurement data into model training
- Develop a benchmark using simulated and new measurement data
- Utilize machine learning algorithms to predict system behavior
- Apply and evaluate chosen machine learning approaches
- Compare model performance against simulation-only models
- Communicate ideas and contributions openly
- Exchange ideas with team colleagues and experts
- Engage with a broader network across company domains and locations
Education
- Master's degree
Languages
- English – Fluent
- German – Basic
Tools & Technologies
- Python
- Pytorch
- Pandas
- Numpy
- Machine learning
Like this job?
BetaYour Career Agent finds similar jobs for you every day.
Not a perfect match?
- Bosch GroupFull-timeInternshipOn-siteRenningen
- Bosch Group
Master Thesis Bridging the Gap between Reinforcement Learning & E2E Driving(m/w/x)
Full-timeInternshipOn-siteRenningen - Bosch Group
Master Thesis in Validation and Optimization of Controllers Using Foundation Models(m/w/x)
Full-timeOn-siteNot specifiedRenningen - Bosch Group
Master Thesis Automated Scalable Deployment of Predictive Maintenance in Cloud(m/w/x)
Full-timeInternshipOn-siteStuttgart - Fraunhofer-Gesellschaft
Master Thesis - Reinforcement Learning for wheeled, bipedal robots(m/w/x)
Full-timeInternshipOn-siteStuttgart
Master Thesis Data-Efficient Hybrid Machine Learning for Robust Vibration System Prediction(m/w/x)
Developing data-efficient hybrid ML models for vibration system prediction. Advanced ML techniques and Python proficiency required. Thesis completion with potential for publication.
Requirements
- Master's degree in Engineering, Mathematics, Physics, or comparable with good grades
- Good understanding of dynamics (mechanical vibrations) / mechanics
- Very good knowledge of Python (Pytorch, Pandas, Numpy etc.)
- Good to very good knowledge of fundamental machine learning concepts and algorithms, particularly relevant for regression
- High degree of self-motivation
- Independent work
- Effective communication of progress and ideas
- Driving innovation
- Fluent English and basic German
- Fluent German and very good English
- CV, transcript of records, examination regulations attached
- Valid work and residence permit if indicated
Tasks
- Investigate developing robust predictive models for technical systems
- Enhance a machine-learning toolbox for vibration-loaded systems
- Add capabilities to learn from scarce measurement data
- Research and apply advanced machine learning techniques
- Integrate limited measurement data into model training
- Develop a benchmark using simulated and new measurement data
- Utilize machine learning algorithms to predict system behavior
- Apply and evaluate chosen machine learning approaches
- Compare model performance against simulation-only models
- Communicate ideas and contributions openly
- Exchange ideas with team colleagues and experts
- Engage with a broader network across company domains and locations
Education
- Master's degree
Languages
- English – Fluent
- German – Basic
Tools & Technologies
- Python
- Pytorch
- Pandas
- Numpy
- Machine learning
Like this job?
BetaYour Career Agent finds similar jobs for you every day.
About the Company
Bosch Group
Industry
Research
Description
Das Unternehmen entwickelt hochwertige Technologien und Dienstleistungen, die das Leben der Menschen verbessern.
Not a perfect match?
- Bosch Group
Master Thesis Advanced Control Strategies for Next-Generation Vehicle Dynamics(m/w/x)
Full-timeInternshipOn-siteRenningen - Bosch Group
Master Thesis Bridging the Gap between Reinforcement Learning & E2E Driving(m/w/x)
Full-timeInternshipOn-siteRenningen - Bosch Group
Master Thesis in Validation and Optimization of Controllers Using Foundation Models(m/w/x)
Full-timeOn-siteNot specifiedRenningen - Bosch Group
Master Thesis Automated Scalable Deployment of Predictive Maintenance in Cloud(m/w/x)
Full-timeInternshipOn-siteStuttgart - Fraunhofer-Gesellschaft
Master Thesis - Reinforcement Learning for wheeled, bipedal robots(m/w/x)
Full-timeInternshipOn-siteStuttgart