Description: This research direction focuses on the development and optimization of deep learning architectures that can operate efficiently on resource-constrained systems. The goal is to create innovative solutions that enable complex AI models on devices with limited computing power. | Description: This research area deals with the design and implementation of agent-based systems that can handle complex tasks in real-world environments. The focus is on the development of agents that can be used in industrial scenarios (e.g. autonomous robots for manufacturing processes or self-driving vehicles) as well as in educational contexts (e.g. interactive learning environments with AI-controlled components). | Description:This research direction aims to make the decision-making processes of AI systems more transparent and comprehensible, especially in contexts where there is close interaction between humans and machines. The aim is to research and apply techniques for visualizing AI decisions, generating comprehensible explanations and developing intuitive interfaces for interacting with AI systems. |