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Master Thesis Advanced Control Strategies for Next-Generation Vehicle Dynamics(m/w/x)
Developing robust control strategies for next-gen vehicle stability using RL/MPC in professional simulation at tech developer for mobility solutions. Profound ML/control engineering knowledge and Python DL frameworks experience required. Work in a high-tech simulation environment, tackling challenging conditions.
Anforderungen
- Master studies in Cybernetics, Engineering, Mathematics, Computer Science or comparable
- Profound knowledge of machine learning and control engineering
- Experience in Python DL frameworks like Pytorch, Tensorflow, or Jax
- Autonomous, systematic working practice and sharp analytical thinking
- Very good English skills
- Enrollment at university
Aufgaben
- Develop a robust control strategy for vehicle stability
- Investigate advanced methodologies like Reinforcement Learning or MPC
- Implement solutions within a professional simulation environment
- Rigorously test control functions under challenging conditions
- Analyze and present research findings
- Design innovative functions to enhance vehicle handling
Ausbildung
- Laufendes Studium
Sprachen
- Englisch – verhandlungssicher
Tools & Technologien
- Python
- Pytorch
- Tensorflow
- Jax
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Master Thesis Advanced Control Strategies for Next-Generation Vehicle Dynamics(m/w/x)
Developing robust control strategies for next-gen vehicle stability using RL/MPC in professional simulation at tech developer for mobility solutions. Profound ML/control engineering knowledge and Python DL frameworks experience required. Work in a high-tech simulation environment, tackling challenging conditions.
Anforderungen
- Master studies in Cybernetics, Engineering, Mathematics, Computer Science or comparable
- Profound knowledge of machine learning and control engineering
- Experience in Python DL frameworks like Pytorch, Tensorflow, or Jax
- Autonomous, systematic working practice and sharp analytical thinking
- Very good English skills
- Enrollment at university
Aufgaben
- Develop a robust control strategy for vehicle stability
- Investigate advanced methodologies like Reinforcement Learning or MPC
- Implement solutions within a professional simulation environment
- Rigorously test control functions under challenging conditions
- Analyze and present research findings
- Design innovative functions to enhance vehicle handling
Ausbildung
- Laufendes Studium
Sprachen
- Englisch – verhandlungssicher
Tools & Technologien
- Python
- Pytorch
- Tensorflow
- Jax
Gefällt dir diese Stelle?
BetaDein Career Agent findet täglich ähnliche Jobs für dich.
Über das Unternehmen
Bosch Group
Branche
Engineering
Beschreibung
Das Unternehmen entwickelt hochwertige Technologien und Dienstleistungen, die das Leben der Menschen verbessern.
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