Vor 16 Tagen

THESIS: TRUSTWORTHY FEDERATED DEEP LEARNING IN RESOURCE-CONSTRAINED EDGE ENVIRONMENTS

  • Ingolstadt
  • Vollzeit
Vor OrtAktiv auf Suche
City: Ingolstadt Date: Mar 6, 2024 THESIS: TRUSTWORTHY FEDERATED DEEP LEARNING IN RESOURCE-CONSTRAINED EDGE ENVIRONMENTS

The Fraunhofer-Gesellschaft (www.fraunhofer.com) currently operates 76 institutes and research institutions throughout Germany and is the world’s leading applied research organization. Around 30 800 employees work with an annual research budget of 3.0 billion euros.

Federated deep learning has become an emerging paradigm for collaborative learning in large-scale distributed systems with a massive number of networked clients, such as smartphones, connected vehicles or edge devices. Compared to other distributed learning approaches, federated learning allows the clients to train models without sharing raw data, which achieves privacy-preserving machine learning in real application scenarios. This brings great opportunities for deploying AI approaches in future intelligent traffic systems by means of V2X communication networks.

What you will do

As part of your master thesis, you will conduct focused study on how to apply federated learning methods for distributed training on resource-constraint edge environment. You will develop, implement, analyze and validate information theoretic or empirical models for federated learning. Furthermore, you will support our colleagues in research projects for cooperative intelligent traffic systems, where you can deploy your models in real world. We also encourage you to bring your own ideas about the thesis on this research topic, In this case, please include a two-page thesis proposal in your applications.

What you bring to the table

- High motivation in creative AI research and its applications in communication networks
- Very good grades in computer science, mathematics or engineering with fundamental knowledge in deep learning
- Knowledge in the field of federated learning is preferable
- Very good programming skills in Python
- Experience with machine learning frameworks, e. g., Pytorch
- Ambition for achieving results in AI research
- Ability to work independently and resourcefully
- Good presentation skills within research discussions

What you can expect

- Versatile and practical projects in cooperative intelligent traffic systems
- Professional supervision
- Motivated teams in an open-minded working atmosphere
- Research infrastructure with a large number of edge computers, sensors and a powerful computer cluster

Fraunhofer is the largest organisation for application-oriented research in Europe. Our thematic fields are oriented towards people‘s needs: Health, safety, communication, mobility, energy and the environment. We are creative, we shape technology, we design products, we improve processes, we open up new paths.

The Fraunhofer Institute for Transportation and Infrastructure Systems IVI in Dresden employs more than 100 scientists in four departments. The institute cooperates closely with the TU Dresden, the TU Bergakade­mie Freiberg and the Ingolstadt University of Applied Sciences.

The Fraunhofer Application Center »Connected Mobility and Infrastructure« in Ingolstadt as a new structural unit of the Fraunhofer IVI was founded in 2019 and uses the existing synergies from the competences of the THI and the Fraunhofer IVI, especially in its start-up phase. The plan is to develop further fields of technology in the coming years in the areas of autonomous systems, digitalisation in transport and vehicle and road safety.

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.

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!

If you are interested, please apply quoting the reference number IVI-Hiwi-00695 and include the following documents:

- Cover letter
- CV
- Bachelor‘s transcript
- Master‘s transcript

If you would like to contribute your own ideas about your thesis in this research topic, please also include a two-page thesis proposal in your application.

Your contact for application:

Rui Song
rui.song@ivi.fraunhofer.de
Phone +49 (0) 172 5169897
Fraunhofer Application Center »Connected Mobility and Infrastructure«

Postal address
Technische Hochschule Ingolstadt
Esplanade 10
85049 Ingolstadt
www.ivi.fraunhofer.de

Fraunhofer Institute for Transportation and Infrastructure Systems IVI

www.ivi.fraunhofer.de

Requisition Number: IVI-Hiwi-00 695 Application Deadline:


Job Segment: Computer Science, Learning, Engineer, Training, Technology, Research, Human Resources, Engineering, Education

Unternehmensdetails

company logo

Fraunhofer-Gesellschaft

Forschung

10.001 Mitarbeitende

Ingolstadt, Deutschland

Bewertung von Mitarbeitenden

Vorteile für Mitarbeitende

Betriebliche Altersvorsorge

Privat das Internet nutzen

Parkplatz

Betriebsarzt

Flexible Arbeitszeiten

Unternehmenskultur

Fraunhofer-Gesellschaft

Branchen-Durchschnitt

Unternehmenskultur

165 Mitarbeitende haben abgestimmt: Sie bewerten die Unternehmenskultur bei Fraunhofer-Gesellschaft als modern. Dies stimmt in etwa mit dem Branchen-Durchschnitt überein.

Mehr Infos anzeigen

Wir benachrichtigen Dich gerne über ähnliche Jobs in Ingolstadt:

Ähnliche Jobs

Fraunhofer-Gesellschaft

BACHELOR OR MASTER THESIS ON MACHINE LEARNING IN THE FIELD OF AUTONOMOUS FLYING IN INGOLSTADT

Ingolstadt

Fraunhofer-Gesellschaft

3.6

Vor 16 Tagen

Computer scientist, engineer, physicist, mathematician - Data Science (m/f/d)

Ingolstadt

TWT Science & Innovation

50.500 €77.000 €

Vor 30+ Tagen

Fraunhofer-Gesellschaft

MASTERTHESIS ON AUTONOMOUS SYSTEMS AND ARTIFICIAL INTELLIGENCE

Ingolstadt

Fraunhofer-Gesellschaft

3.6

Vor 16 Tagen

Fraunhofer-Gesellschaft

MASTER THESIS MONOCULAR DEPTH ESTIMATION FOR AUTONOMOUS DRONES USING DEEP LEARNING & COMPUTER VISION

Ingolstadt

Fraunhofer-Gesellschaft

3.6

Vor 16 Tagen

Fraunhofer-Gesellschaft

MASTERARBEIT MONOKULARE TIEFENSCHÄTZUNG MITTELS DEEP LEARNING UND COMPUTER VISION

Ingolstadt

Fraunhofer-Gesellschaft

3.6

Vor 16 Tagen

Fraunhofer-Gesellschaft

THESIS (MASTER) ALGORITHM DEVELOPMENT FOR IN-FIELD SHARPNESS MEASUREMENT USING TRAFFIC SIGNS

Ingolstadt

Fraunhofer-Gesellschaft

3.6

Vor 16 Tagen

Helmholtz-Zentrum Hereon

Postdocs in Deep Learning for Earth System Science

Geesthacht

Helmholtz-Zentrum Hereon

3.4

Vor 8 Tagen

Carl Zeiss AG

Doktorand Corporate Research & Technology (f/m/x)

Jena

Carl Zeiss AG

3.8
71.500 €94.500 €

Vor 8 Tagen

Universität Bayreuth

Wissenschaftlicher Mitarbeiter (m/w/d) für den Forschungsbereich "Dezentrales Maschinelles Lernen"

Bayreuth

Universität Bayreuth

3.7
50.000 €60.000 €

Vor 28 Tagen