Kompetenzbereiche: Wissen und Verstehen; Einsatz, Anwendung und Erzeugung von Wissen; Kommunikation und Kooperation; Wissenschaftliches Selbstverständnis/Professionalität.
Students can specifically…
• explain the term deep learning (DL) and classify it in the context of artificial intelligence (AI),
• name, delimit, describe and explain the concepts, methods and models of supervised and unsupervised learning,
• understand the mathematical and statistical foundations of the different types of artificial neural networks,
• name and explain basic methods of data analysis and data pre-processing, especially acquisition, transformation, cleansing, partitioning, scaling, visualization and static description,
• Describe the complete process of carrying out a DL project from analysis and pre-processing of the data to the application of the methods and development of models to the post-processing of the data (e.g. model-based forecast).
Students have/can generally...
• Significantly expanded their knowledge at the level of university entrance qualifications,
• demonstrate a broad and deep knowledge and understanding of the scientific foundations of content-related teaching areas (e.g. AI, DL, mathematics, statistics) based on the current state of research,
• a critical understanding of the most important theories, principles and methods of the content-related teaching areas,
• Critically reflect on technical and practice-relevant statements and check the plausibility of envisaged solutions to problems.
Students can specifically (in terms of content)…
• identify and assess the application potential of AI or DL in selected and mostly known application contexts,
• solve specific problems using the R or Python languages and applications.
Students can generally...
• formulate technical and factual solutions to problems within their actions and justify them in discourse with specialist representatives and non-specialists with theoretically and methodologically well-founded arguments,
• communicate and cooperate with other subject representatives and non-specialists in order to solve a task responsibly,
• Reflecting on and taking into account the different perspectives and interests of other participants.
Students can generally...
• develop a professional self-image that is based on the goals and standards of professional action in professional fields that are primarily outside of science,
• justify their own professional actions with theoretical and methodical knowledge,
• Assess one's own abilities, autonomously reflect on factual design and decision-making freedoms and use them under guidance,
• Recognize the framework conditions of professional action that are appropriate to the situation and justify their decisions in a responsible and ethical manner,
• reflect critically on their professional actions in relation to social expectations and consequences.