no code implementations • 4 Sep 2024 • Jannik Peters, Constantin Waubert de Puiseau, Hasan Tercan, Arya Gopikrishnan, Gustavo Adolpho Lucas De Carvalho, Christian Bitter, Tobias Meisen
Its objective is to serve as a reference for researchers interested in or proficient in the field.
Multi-agent Reinforcement Learning reinforcement-learning +2
no code implementations • 4 Sep 2024 • Constantin Waubert de Puiseau, Fabian Wolz, Merlin Montag, Jannik Peters, Hasan Tercan, Tobias Meisen
The job shop scheduling problem (JSSP) and its solution algorithms have been of enduring interest in both academia and industry for decades.
no code implementations • 11 Jun 2024 • Constantin Waubert de Puiseau, Christian Dörpelkus, Jannik Peters, Hasan Tercan, Tobias Meisen
In addition, we propose an algorithm for obtaining the optimal parameterization for such a given number of solutions and any given trained agent.
no code implementations • 17 May 2023 • Constantin Waubert de Puiseau, Hasan Tercan, Tobias Meisen
In this paper, we further improve DLR as an underlying method by actively incorporating the variability of difficulty within the same problem size into the design of the learning process.
1 code implementation • 10 Jan 2023 • Constantin Waubert de Puiseau, Jannik Peters, Christian Dörpelkus, Hasan Tercan, Tobias Meisen
Research on deep reinforcement learning (DRL) based production scheduling (PS) has gained a lot of attention in recent years, primarily due to the high demand for optimizing scheduling problems in diverse industry settings.
no code implementations • 2 Apr 2020 • Richard Meyes, Constantin Waubert de Puiseau, Andres Posada-Moreno, Tobias Meisen
The need for more transparency of the decision-making processes in artificial neural networks steadily increases driven by their applications in safety critical and ethically challenging domains such as autonomous driving or medical diagnostics.
1 code implementation • 24 Jan 2019 • Richard Meyes, Melanie Lu, Constantin Waubert de Puiseau, Tobias Meisen
considering the growth in size and complexity of state-of-the-art artificial neural networks (ANNs) and the corresponding growth in complexity of the tasks that are tackled by these networks, the question arises whether ablation studies may be used to investigate these networks for a similar organization of their inner representations.