PhD position on physics-based machine learning modeling for materials and process design {Ingenieur/in - Materialwissenschaften}
The Institute of Material and Process Design at the Helmholtz-Zentrum Hereon is offering a 4-year PhD position in the area of machine learning and computer simulations. The focus of the PhD project will lie on developing machine learning models for clustering, classification, regression and reinforcement tasks to work with, enhance or replace established methods from computational engineering and computer simulation to represent and exploit relationships along the composition-process-structure-property-performance chain; therefore, enable stability and control of novel manufacturing processes as well as achieving desired properties within materials science and engineering. Use cases will be defined within different manufacturing techniques of lightweight structures to enable novel development of materials and process design.
Responsibilities
- Development of novel machine models based on supervised, unsupervised and reinforcement learning that can be combined with, enhance or replace methods from computational engineering and computer simulation
- Data modeling and assimilation towards experimental measurements under consideration of uncertainties
- Utilization of Explainable AI techniques to enable novel scientific discoveries
- Explore and evaluate usability of system architectures such as Retrieval-Augmented Generation (RAG) for data retrieval and knowledge inference
- Implementation of your machine learning pipeline in Python (using e.g. PyTorch)
- Validation of your results in collaboration with colleagues from various application areas (cross-disciplinary)
- Publication and presentation of your scientific results in international scientific journals and at international conferences and workshops
Requirements
- Masters degree in mechanical engineering, materials science, computational engineering, computer science, applied mathematics, physics or a similar area
- Very good programming skills in Python
- Good prior experience with neural networks using common Python-ML libraries such as PyTorch
- Background knowledge in computational mechanics and materials science
- Highly proficient in spoken and written English
Benefits
- An exciting and varied job in a research centre with around 1,000 employees from more than 60 nations
- A well-connected research campus (public transport) and best networking opportunities
- Individual opportunities for further training
- Social benefits according to the collective agreement of the public service and remuneration up to pay group 13 according to TV EntgO Bund
- An excellent technical infrastructure and modern workplace equipment
- 6 weeks holiday per year; company holidays between Christmas and New Years Day
- Very good compatibility of private and professional life; offers of mobile and flexible work
- PhD Buddy Program
- Family-friendly company policy with childcare facilities, e.g. nursery close to the company
- Free assistance program for employees (EAP)
- Corporate benefits
- A varied offer in the canteen on campus