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Event

Artificial Intelligence in Production [WS222149921]

Type
lecture (V)
Präsenz/Online gemischt
Term
WS 22/23
SWS
2
Language
Deutsch
Appointments
15
Links
ILIAS

Lecturers

Organisation

  • KIT-Fakultät für Maschinenbau

Part of

Literature

Skript zur Veranstaltung wird über Ilias (https://ilias.studium.kit.edu/) bereitgestellt.

Lecture notes will be provided in Ilias (https://ilias.studium.kit.edu/).

Appointments

  • 28.10.2022 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 04.11.2022 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 11.11.2022 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 18.11.2022 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 25.11.2022 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 02.12.2022 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 09.12.2022 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 16.12.2022 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 23.12.2022 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 13.01.2023 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 20.01.2023 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 27.01.2023 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 03.02.2023 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 10.02.2023 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal
  • 17.02.2023 14:00 - 17:15 - Room: 20.40 Egon-Eiermann-Hörsaal

Note

The module AI in Production is designed to teach students the practical, holistic integration of machine learning and artificial intelligence methods in production. The course is oriented towards the phases of the CRISP-DM process with the aim of developing a deep understanding of the necessary steps and content-related aspects (methods) within the individual phases. In addition to teaching the practical aspects of integrating the most important machine learning methods, the focus is primarily on the necessary steps for data generation and data preparation as well as the implementation and validation of the methods in an industrial environment.

The lecture"Artificial Intelligence in Production" deals with the theoretical basics in a practical context. Here, the six phases of the CRISP-DM process are run through sequentially and the necessary basics for the implementation of the respective phases are taught. The course first deals with the data sources that are prevalent in the production environment. Subsequently, possibilities for target-oriented data acquisition as well as data transfer and data storage are introduced. Possibilities for data filtering and data preprocessing are discussed and production-relevant aspects are pointed out. The course then covers in detail the necessary algorithms and procedures for implementing AI in production, before techniques and fundamentals for making the models permanent in production (deployment) are discussed.

Learning Outcomes:

The students

  • understand the relevance for the application of AI in production and know the main drivers and challenges.
  • will understand the CRISP-DM process for implementing AI projects in manufacturing. Students will be able to name the main data sources, data ingestion methods, communication architectures, models and methods for data processing.
  • will understand the main machine learning techniques and be able to contrast and select them in the context of industrial issues.
  • are able to assess whether a specific problem in the context of production can be solved in a target-oriented manner using machine learning methods, as well as what the necessary steps are for implementation.
  • are able to assess the most important challenges and name possible approaches to solve them.
  • are able to apply the phases of the CRISP-DM to a problem in production. Students will know the steps necessary to build a data pipeline and will be able to do so theoretically in the context of a real-world use case.
  • are able to evaluate the results of common deep learning methods and, based on this, to theoretically elaborate and theoretically apply proposed solutions (from the field of machine learning).


Workload:

MACH:
regular attendance: 31,5 hours
self-study: 88,5 hours
WING:
regular attendance: 31,5 hours
self-study: 118,5 hours