Team — Dr. Simon Hirländer

Research Team

Our team at the Smart Analytics & Reinforcement Learning (SARL) lab is dedicated to advancing AI through research spanning from theoretical foundations to real-world applications.

PhD Students

Primary supervision of doctoral candidates working on cutting-edge RL and AI research.

SP

Sabrina Pochaba

Data Science PhD

Multi-Agent Reinforcement Learning for Resource Allocation in Wireless Network Communication

ST

Sarah Trausner

PhD Student

FOCUS: Forecasting and optimization under constraints and uncertainty for sustainable industrial energy systems

CS

Christoph Schranz

PhD Student

Contactless Monitoring Beyond Ballistocardiography

RK

Reuf Kozlica

Data Science PhD

Hierarchical reinforcement learning in assembly line optimization

GS

Georg Schaefer

PhD Student

Improving Trajectory Tracking by Augmenting States with Future Targets

MD

Markus Dygruber

PhD Student

INSPIRE: Intelligent Novel Support for Personalized Instruction and Robust Evaluation in STEM

Master Students

LX

Laya Shibu Xavior

Master Student

Regelungsoptimierung von Piezoantrieben

SD

Sahan Warnakulasooriya Dabarera

Data Science Master

Adaptive PID Tuning via Meta-Reinforcement Learning

OM

Olga Mironova

Data Science Master

Causal GP-MPC: Where Structure, Safety, and Online Learning Meet

BH

Benjamin Halilovic

Data Science Master

Robust Real-Time Optimization of SIS18 Injection using Gaussian Process MPC

JL

Julian Langschwert

Master Student

Online Parameter Identification via Reinforcement Learning Integrated with Model Predictive Control

Bachelor Students

MT

Maximilian Tengler

AI Bachelor

Reinforcement Learning Beyond Greedy Optimisation

KG

Kevin Gajic

AI Bachelor

Agentic AI

SR

Stefan Reiter

AI Bachelor

Contracts and AI – Risk, Regulation, and Strategic Impact

FM

Fabio Matanza

AI Bachelor

Curriculum-Guided PPO for LUMEN Engine

AB

Armin Brückl

CS Bachelor

TBD topic in Reinforcement Learning

MP

Maria Pape

Bachelor

Welche Methoden ermöglichen die Einbettung domänenspezifischen Unternehmenswissens in KI-Systeme?

KB

Kajsa Bjoerkbom

Bachelor

Reinforcement Learning Beyond Greedy Optimisation for Delayed-Consequence Accelerator Control

Secondary Supervision

Co-supervision and advisory roles for doctoral students.

  • Raoul Kutil — Data Science PhD: Knowledge Graphs in medicine
  • Juan Manuel Montoya Bayardo — Data Science PhD: Binary Trigger Signals for Deep RL in Equity Trading / Nautical Robotics
  • Olivia Zechner — Towards AI-Driven Adaptive Virtual Environments, based on Biosignals: XR training to improve decision-making and acting in stressful situations
  • Jakob Uhl — Tangible XR for Training of Challenging Occupations: Increasing Presence and Sensory

Alumni

Former students who have successfully completed their theses.

  • Lukas Lamminger (finished May 2023) — Data Science Master: Model based and Meta reinforcement learning in accelerator physics
  • Sascha Schuster (finished March 2023) — Data Science Master: Reinforcement learning in medicine (DTR of insulin dosing)

Interested in joining our team?
We welcome motivated students interested in Reinforcement Learning, AI safety, and applications in healthcare, robotics, and industrial systems. Feel free to reach out to discuss potential research opportunities.