392232 Graph Neural Networks in Big Data Analytics (S) (WiSe 2022/2023)

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The recent surge of machine learning (ML) has opened up various opportunities when analyzing big datasets. Beyond basic, non-ML supported techniques of big data analytics, such as identifying similar items in big datasets, or arranging how to distribute jobs on large compute clusters, for example, the ML supported techniques enable to extract knowledge from large datasets at utmost diversity and accuracy.

The seminar will start with a mini lecture. First, lectures will explain how to cluster datasets. Clustering is an 'unsupervised' machine learning technique by which to mine social network graphs, for example. Second, 'supervised' machine learning techniques (where 'deep learning' likely is the most prominent recent technique) and their use in analyzing big data will be discussed. The mini lecture will be followed by seminar presentations, to be presented in small groups of 4-5 students.

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31-M-ASM2 Advanced Statistical Methods II Veranstaltungen aus dem Bereich Statistik und/oder in (einem) methodisch verbundenen Gebiet(en) (I.) Graded examination
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39-Inf-AB Algorithmen der Bioinformatik Ausgewähltes Seminar zu Algorithmen der Bioinformatik Study requirement
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Übung zur Vorlesung Student information
39-Inf-BDS Biomedical Data Science for Modern Healthcare Technology Ausgewähltes Seminar oder Projekt Study requirement
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39-Inf-SAB_a Spezielle Algorithmen der Bioinformatik Ausgewähltes Seminar zu Spezielle Algorithmen der Bioinformatik Study requirement
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39-M-Inf-ABDA Advanced Big Data Analytics / Big Data Machine Learning Machine Learning and AI in Advanced Big Data Analytics Ungraded examination
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39-M-Inf-ABDA_a Advanced Big Data Analytics / Big Data Machine Learning Machine Learning and AI in Advanced Big Data Analytics Graded examination
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Degree programme/academic programme Validity Variant Subdivision Status Semester LP  
Studieren ab 50    

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Last update basic details/teaching staff:
Wednesday, September 28, 2022 
Last update times:
Tuesday, October 11, 2022 
Last update rooms:
Tuesday, October 11, 2022 
Type(s) / SWS (hours per week per semester)
S / 2
Language
This lecture is taught in english
Department
Faculty of Technology
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361991412