392168 Programming (V) (WiSe 2018/2019)

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Bevor Daten analysiert werden können, müssen sie oft erst beschafft und dann transformiert, gereinigt und strukturiert werden ? das heißt, sie sind selten in genau der erforderlichen Form verfügbar. Dieses Modul gibt eine Einführung in die Programmiersprache Python und in die für die Datenanalyse relevanten Bibliotheken.

Lehrinhalte:

1. Einführung in die Programmierung in Python
2. Standardalgorithmen und Datenstrukturen in Python
3. Die Jupyter Notebook-Umgebung
4. Datenvorbereitung und -analyse mit Pandas
5. Wissenschaftliches Rechnen mit NumPy
6. Maschinelles Lernen mit scikit-learn
7. Statistische Datenvisualisierung mit Seaborn und Bokeh
8. Verarbeitung natürlicher Sprache mit NLTK
9. Datenbankprogrammierung
10. Interagieren mit Datenbanken (z. B. Apache HBase)
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Before data can be analyzed it often needs to be obtained and then it needs to be transformed, cleansed and structured ? that means, it is rarely available in exactly the required form. This module provides an introduction to the programming language Python and to the libraries relevant for data analysis.

Topics of this module include:

1. Introduction to programming in Python
2. Standard algorithms and data structures in Python
3. The Jupyter Notebook environment
4. Data munging, preparation and analysis with Pandas
5. Scientific computing with NumPy
6. Machine learning with scikit-learn
7. Statistical data visualization with Seaborn and Bokeh
8. Natural Language Processing with NLTK
9. Database Programming
10. Interacting with Databases (e.g., Apache HBase)

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39-Inf-Pro Programming Programming 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:
Friday, June 14, 2019 
Last update times:
Tuesday, February 12, 2019 
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Tuesday, February 12, 2019 
Type(s) / SWS (hours per week per semester)
V / 2
Language
This lecture is taught in english
Department
Faculty of Technology
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137276497