Master's Thesis: Attacking Current Backdoor Detection Methods

Fraunhofer-Gesellschaft
📍 Darmstadt, Hessen, Germany 💼 Full-time 🕒 Posted June 06, 2026

Job Description


Background/Motivation:
Backdoor attacks are attacks on neural networks where a so-called trigger alters the decision-making behaviour of the networks, thereby creating vulnerabilities. These triggers can be injected into the training dataset or directly into the model weights. These are then called poisoned. Due to parameter-efficient fine-tuning methods, backdoor attacks on large language models (LLMs) have become significantly more difficult to detect, as a poisoned parameter update is harder to recognise than a poisoned dataset. Therefore, several methods have been developed recently to detect poisoned model updates.


Objective: Due to the variety of backdoor attacks, methods often detect far fewer attacks than they claim, as they frequently make assumptions tha...

Ready to Apply?

Submit your application today and join our talented team at Fraunhofer-Gesellschaft.

Submit Application

Job Details

  • Location Darmstadt, Hessen
  • Job Type Full-time
  • Category Computer Occupations
  • Posted Date June 06, 2026
  • Application Deadline July 16, 2026