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Veranstaltungsbeschreibung

335103a Big Data Scenarios Vorlesung

Zuletzt geändert:06.07.2023 / Meth
EDV-Nr:335103a
Studiengänge: Online-Medien-Management (Bachelor, 7 Semester) , Prüfungsleistung im Modul Big Data Scenarios in Semester 7
Häufigkeit: unregelmäßig
Studienübergreifendes Angebot - Minors, Prüfungsleistung im Modul Big Data Scenarios in Semester 1
Häufigkeit: nur WS
Wirtschaftsinformatik und digitale Medien (Bachelor, 7 Semester) , Prüfungsleistung im Modul Big Data Scenarios in Semester
Häufigkeit: nur WS
Dozent:
Sprache: Englisch
Art: V
Umfang: 2 SWS
ECTS-Punkte: 4
Workload: 22,5 hours teaching time + project work, preparation and follow-up work: 127,5 hours = 150 hours
Inhaltliche Verbindung zu anderen Lehrveranstaltungen im Modul: This lecture is part of a module. The second course belonging to this module is 335103b Big Data Project.
Prüfungsform:
Bemerkung zur Veranstaltung: Englisch
Beschreibung: The module “Big Data Scenarios“ introduces students to the analysis of large volumes of text data in different formats (structured, semi-structured, unstructured). The module consists of four elements: • The lecture introduces Big Data architectures, methods and concepts. To get an in-depth understanding of the introduced methods, they are applied in two types of labs: • tool-based labs, using state-of-the-art data science software (RapidMiner) and • method-based labs without any specific data science tool support. • Finally, students work in teams to implement a full big data analytics solution, applying the methods and tools, which they got to know in the labs. The module has no formal pre-requisites, but is addressed to bachelor students in their final semesters. No programming is required but good analytic skills, a high motivation and an interest to develop models.
English Title: Big Data Scenarios - Lecture
English Abstract: The module “Data Science Project“ introduces students to the analysis of structured data using Data Science algorithms. The module consists of three elements: • lecture: introduces data science methods, algorithms and concepts. • technology-based labs, using state-of-the-art data science tools or programming languages • a project to apply everything learned in a broader context The module is addressed to bachelor students in their final semesters. Good analytic and programming skills, a high motivation and an interest to develop models are required.
Literatur: Kotu, Vijay, and Bala Deshpande. Predictive Analytics and Data Mining: Concepts and Practice with Rapidminer. Morgan Kaufmann, 2014.

EMC Education Services. Data Science and Big Data Analytics: Discovering, Analyzing, Visualizing and Presenting Data. John Wiley & Sons, 2015

Manning, Christopher D., and Hinrich Schütze. Foundations of statistical natural language processing. MIT press, 1999.

D. Jurafsky, J. H. Martin. Speech and Language Processing: An Introduction to Natural Language Processing, Speech Recognition, and Computational Linguistics (2nd ed.), Prentice-Hall, 2009.

Weitere Literatur finden Sie in der HdM-Bibliothek.