Events

Recent events

Quantum Internet: From Hardware to Application

Prof. Stephanie Wehner TUDelft
(hosted by Krishna Gummadi)
01 Jun 2026, 10:00 am - 11:00 am
Saarbrücken building E1 5, room 029
SWS Distinguished Lecture Series
Software is what turns quantum hardware into technology everyone can use. In this talk we focus on the quantum communication networks, with the first metropolitan scale quantum networks being built and the technologies to connect them over long distances advancing. We begin with the first operating system for quantum networks (QNodeOS), allowing applications to be programmed and executed on arbitrary quantum processors connected to a quantum network. Demonstrated on two different types of quantum hardware, QNodeOS now provides a framework for experimenting with software systems for quantum networks. ...
Software is what turns quantum hardware into technology everyone can use. In this talk we focus on the quantum communication networks, with the first metropolitan scale quantum networks being built and the technologies to connect them over long distances advancing. We begin with the first operating system for quantum networks (QNodeOS), allowing applications to be programmed and executed on arbitrary quantum processors connected to a quantum network. Demonstrated on two different types of quantum hardware, QNodeOS now provides a framework for experimenting with software systems for quantum networks. We then turn to a specific kind of quantum network application, in which entanglement is harnessed for coordination between distant parties. We explore this through a recent example in radio spectrum allocation, opening the door to a new domain of quantum network applications.
Read more

Modern Fine-Grained Complexity

Nick Fischer MPI-INF - D1
06 May 2026, 12:15 pm - 1:15 pm
Saarbrücken building E1 5, room 002
Joint Lecture Series
Put yourself in the shoes of an algorithm designer working on some computational problem. You have found an algorithm running in time O(n^2), say, but after months of effort no faster algorithm is in sight. Perhaps your algorithm is already optimal – but how could you show this? This is the central challenge of fine-grained complexity theory. In the spirit of classical NP-hardness, this theory starts from the assumption that certain canonical problems are hard, and then uses so-called fine-grained reductions to show that many other problems are conditionally hard as well. ...
Put yourself in the shoes of an algorithm designer working on some computational problem. You have found an algorithm running in time O(n^2), say, but after months of effort no faster algorithm is in sight. Perhaps your algorithm is already optimal – but how could you show this? This is the central challenge of fine-grained complexity theory. In the spirit of classical NP-hardness, this theory starts from the assumption that certain canonical problems are hard, and then uses so-called fine-grained reductions to show that many other problems are conditionally hard as well.

In this talk, I will first describe the basic concepts of fine-grained complexity along with some illustrative examples, before turning to more recent developments, including some of my own work. I will discuss some questions that resisted the basic theory for a long time, and how progress on them has required a more sophisticated method – the celebrated structure-versus-randomness paradigm.
Read more

AI-Generated Feedback in Programming Education: Ensuring High Quality and Pedagogically-Guided Interaction

Minh Tung Phung Max Planck Institute for Software Systems
30 Mar 2026, 11:00 am - 12:00 pm
Saarbrücken building E1 5, room 029
SWS Student Defense Talks - Thesis Proposal
Generative AI holds great promise in enhancing programming education by automatically generating personalized feedback for students. However, ensuring that this feedback is both technically accurate and pedagogically effective remains a critical challenge before these systems can be safely deployed in real-world classrooms. This thesis investigates the end-to-end integration of generative AI in programming education, divided into two main parts.

The first part focuses on the optimization of AI-generated feedback quality. We introduce novel techniques that not only enhance the generated feedback but also perform automatic validation of the feedback before returning it. ...
Generative AI holds great promise in enhancing programming education by automatically generating personalized feedback for students. However, ensuring that this feedback is both technically accurate and pedagogically effective remains a critical challenge before these systems can be safely deployed in real-world classrooms. This thesis investigates the end-to-end integration of generative AI in programming education, divided into two main parts.

The first part focuses on the optimization of AI-generated feedback quality. We introduce novel techniques that not only enhance the generated feedback but also perform automatic validation of the feedback before returning it. Specifically, to improve feedback quality, our techniques contextualize the prompt with similar examples from the database and uses symbolic information of failing test cases and fixes. Next, to validate the quality of AI-generated feedback, they leverage another AI agent as simulated students in a run-time validation mechanism. These techniques achieve high-precision, human tutor-style feedback.

The second part transitions to the deployment of the feedback systems in real-world classroom settings, focusing on student-instructor-AI interaction. Specifically, to ensure feedback meets both expert educators' and students' quality standards, we investigate the discrepancies between expert-created rubrics and student perceptions of hint helpfulness. To understand how to position AI-generated hints with traditional pedagogical practices, we examine the interplay between AI-generated hints and student reflection. To address the problem of students being over-reliant on AI support, we base our design on metacognitive theory to introduce different hint types with quotas to require students' critical engagement during interaction with the system. Finally, to ensure students receive relevant support in difficult cases when AI is insufficient, we propose a hybrid instructor-in-the-loop escalation mechanism, allowing instructors to efficiently involve and support students when most needed.

Ultimately, this thesis provides a foundational framework for deploying LLMs that balance automated efficiency with established pedagogical standards and human oversight.
Read more

Archive