Jonathan Hoss

Jonathan Hoss

PhD Candidate @ TH Rosenheim
Reinforcement Learning · Production Scheduling · Industrial AI

About me

I hold a Master's degree in Industrial Engineering from Rosenheim University of Applied Sciences, graduating with the highest distinction (grade 1.0). With international experience in Malaysia and Finland, I bring a global perspective to my work. Currently, I am a PhD candidate at Rosenheim Technical University, specializing in reinforcement learning for production scheduling and exploring the integration of digitalisation, AI, and cloud technologies to advance innovative industrial solutions.

Outside of academia and research, I enjoy exploring the outdoors—especially paragliding in the mountains, where I also conduct tandem flights in cooperation with Tandemfliegen Chiemgau, sharing the experience with others.

Publications & Work

A Production Scheduling Framework for Reinforcement Learning Under Real-World Constraints

J. Hoss, F. Schelling and N. Klarmann 2025 IEEE 21st International Conference on Automation Science and Engineering (CASE), Los Angeles, CA, USA, 2025, pp. 1736-1743 View publication

The classical Job Shop Scheduling Problem (JSSP) focuses on optimizing makespan under deterministic constraints. Real-world production environments introduce additional complexities that cause traditional scheduling approaches to be less effective. Reinforcement learning (RL) holds potential in addressing these challenges, as it allows agents to learn adaptive scheduling strategies. However, there is a lack of a comprehensive, general-purpose frameworks for effectively training and evaluating RL agents under real-world constraints. To address this gap, we propose a modular framework that extends classical JSSP formulations by incorporating key real-world constraints inherent to the shopfloor, including transport logistics, buffer management, machine breakdowns, setup times, and stochastic processing conditions, while also supporting multi-objective optimization. The framework is a customizable solution that offers flexibility in defining problem instances and configuring simulation parameters, enabling adaptation to diverse production scenarios. A standardized interface ensures compatibility with various RL approaches, providing a robust environment for training RL agents and facilitating the standardized comparison of different scheduling methods under dynamic and uncertain conditions. We release JobShopLab as an open-source tool for both research and industrial applications, accessible at: https://github.com/proto-lab-ro/jobshoplab

What Matters to Me

Since 2020, I've been volunteering as Web & IT Administrator for Conambiki e.V., a charity dedicated to supporting education in Namibia. Together with an amazing team, we've raised over €400,000 to empower young learners and foster community development. It's meaningful work that connects technology with real-world impact, and I'm proud to contribute to making education more accessible.