PhD - Machine Learning-based Surrogate Modeling for Computationally Efficient Multiphysics Simulation

PhD - Machine Learning-based Surrogate Modeling for Computationally Efficient Multiphysics Simulation

Bosch Gruppe

Standort

Hexjobs Insights

Position: PhD in Machine Learning-based Surrogate Modeling. Responsibilities include developing frameworks for AI integration in engineering. Requires Master's in related fields, programming skills, and English fluency. Benefits: flexible work, health activities, childcare support.

Schlüsselwörter

Machine Learning
Multiphasic Simulation
Numerical Methods
Python Programming
Contact Mechanics
EHL

Vorteile

  • Flexible working hours and models
  • Wide range of health and sports activities
  • Childcare intermediary services
  • Employee discounts
  • Space for creative work
  • In-house social counseling and care services

Welcome to Bosch

Do you want beneficial technologies being shaped by your ideas? Whether in the areas of mobility solutions, consumer goods, industrial technology or energy and building technology - with us, you will have the chance to improve quality of life all across the globe. Welcome to Bosch.

The Robert Bosch GmbH is looking forward to your application!

Employment type: Limited
Working hours: Full-Time
Joblocation: Renningen

Your tasks

Shaping the future of engineering by redefining the boundaries between artificial intelligence and complex multiphysics simulations – that is your mission. Are you ready to make a crucial contribution to the development of groundbreaking design methods with your research? With us, you will not only create scientific knowledge but also lay the foundation for a new generation of efficient and reliable components in the industry.

  • Your role will be to develop and establish the scientific foundations for a machine learning-based multiphysics framework, using surrogate models trained on validated EHL simulations.
  • You will also create a novel, computationally efficient, data-driven design protocol for lubricated components.
  • Furthermore, you will dramatically accelerate the design process for complex EHL problems, enabling the development of more robust, efficient, and reliable tribological components for critical industrial applications.
  • You will be at the forefront of integrating AI into classical engineering design.
  • Last but not least you will also become an expert in applying machine learning to complex engineering challenges, a skill set that will make you exceptionally valuable for leading roles in both industry and academia.

Your profile

  • Education: Master's degree in Mechanical Engineering, Computational Engineering, Applied Mathematics, Physics or comparable

  • Experience and Know-how:

    • in-depth knowledge of numerical methods
    • a strong interest or background in machine learning
    • experience or knowledge in contact mechanics and elastohydrodynamic lubrication (EHL) is desirable
    • strong programming and scripting experience, preferably in Python
  • Personality and Working Style: you have a high degree of motivation and scientific curiosity, work independently on complex issues, and always find your way to innovative solutions; you succeed in communicating your research results clearly and concisely and contributing constructively to a team; you organize your projects efficiently and keep an overview even with demanding schedules

  • Languages: fluent in written and spoken English, good German language skills are an advantage

This location offers

  • Work-life balance: Flexible working in terms of time, place and working model.
  • Health & Sport: Wide range of health and sports activities.
  • Childcare: Intermediary service for childcare services.
  • Employee discounts: Discounts for employees.
  • Room for creativity: Space for creative work.
  • In-house social counseling and care services: Social counselling and intermediary service for care services.

The recruitment contact or superior will be happy to provide information about the individual benefit plan.

Contact & Additional information

https://www.bosch-ai.com
www.bosch.com/research

Please submit all relevant documents (incl. curriculum vitae, certificates).

Diversity and inclusion are not just trends for us but are firmly anchored in our corporate culture. Therefore, we welcome all applications, regardless of gender, age, disability, religion, ethnic origin or sexual identity.

Need support during your application?
Sarah Schneck (Human Resources)
+49 9352 18 8527

Need further information about the job?
Cesar Pastor (Functional Department)
+49 711 811 43012

Anmelden, um vollständige Details zu sehen

Erstellen Sie ein kostenloses Konto, um auf die vollständige Stellenbeschreibung zuzugreifen und sich zu bewerben.

Aufrufe: 8
Veröffentlichtvor 7 Tagen
Läuft abin 23 Tagen

Ähnliche Jobs, die für Sie von Interesse sein könnten

Basierend auf "PhD - Machine Learning-based Surrogate Modeling for Computationally Efficient Multiphysics Simulation"

Keine Angebote gefunden, versuchen Sie, Ihre Suchkriterien zu ändern.