Field of study.: Automation technology, business administration, business administration t.o., electrical engineering, computer science, cybernetics, logistics, aerospace engineering, mechanical engineering, mathematics, mechatronics, physics, control engineering, software design, software engineering, technical computer science, technology management, surveying technology, industrial engineering or comparable.

The advertised student research assistant position is part of the DigiAutoFab project, in which both the IPA and the IFF are consortium partners. The IPA develops solutions for the production sector of industrial companies. The Additive Manufacturing (AM) department has extensive expertise in powder bed-based AM and plant technology, as well as analytics, which can be used to validate data generated through simulation. The IFF conducts research in the areas of artificial intelligence (AI) and machine learning (ML) for cognitive production systems. The focus is on hybrid learning methods, i.e., the integration of domain knowledge with data-driven methods. The advertised position is located at the consortium partner IFF.

Within the DigiAutoFab project, the goal of the IFF is to predict the relationships between various parameters in a chemical post-processing procedure of additively manufactured components in order to identify the most suitable input parameters. Since data from the process are only available to a limited extent, hybrid ML approaches that combine data with domain knowledge are to be investigated and further developed. The domain knowledge is available in the form of differential equations (DEs), or initially to be modeled. Therefore, Physics-Informed Neural Networks (PINNs) are to be used in particular for efficient problem-solving.

What you will do

The position offers an exciting opportunity to delve into the topics of hybrid ML algorithms and post-AM processes. It involves the statistical analysis of experimentally collected data, collaborating in the implementation of various ML algorithms for predicting quality data of the post-AM process. Initially, data-driven and domain knowledge-based approaches (especially PINNs) will be investigated separately and then combined in a hybrid ML approach. Additionally, the position includes setting up and maintaining the necessary hardware. 

Here are the key points again:

  • Literature research / familiarization with the topic of hybrid ML algorithms
  • Setting up new hardware
  • Statistical analysis of experimental data
  • Implementation of data-driven ML algorithms for predicting quality data
  • Implementation of PINNs for solving DEs from the physical model

What you bring to the table

  • Completed Bachelor's degree in a STEM field
  • Programming skills (preferably in Python)
  • Experience in at least one of the following areas:
    • Machine Learning
    • (Partial) Differential Equations
    • Modeling of physical / chemical processes
  • Independent and systematic work approach

What you can expect

  • A high degree of creative freedom
  • A friendly and committed team with a pleasant working atmosphere
  • Collaboration in a large research project with industrial partners
  • The opportunity to write a thesis if interested

Remuneration dependent on qualifications.

We value and promote the diversity of our employees' skills and therefore welcome all applications - regardless of age, gender, nationality, ethnic and social origin, religion, ideology, disability, sexual orientation and identity. Severely disabled persons are given preference in the event of equal suitability. Remuneration according to the general works agreement for employing assistant staff.

With its focus on developing key technologies that are vital for the future and enabling the commercial utilization of this work by business and industry, Fraunhofer plays a central role in the innovation process. As a pioneer and catalyst for groundbreaking developments and scientific excellence, Fraunhofer helps shape society now and in the future. 

Interested? Apply online now. We look forward to getting to know you!
 

Ms. Lisa Bauer
Recruiting
Tel. +49 711 970-3681

lisa.bauer@ipa.fraunhofer.de

Fraunhofer Institute for Manufacturing Engineering and Automation IPA 

www.ipa.fraunhofer.de 

Requisition Number: 71784                Application Deadline:

Location

Stuttgart, DE, 70569

Job Overview
Job Posted:
10 months ago
Job Expires:
Job Type
Full Time

Share This Job: