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Section 1: Getting started with Datavisualization and descriptive statistics course
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Lecture1.1
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Lecture1.2
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Section 2: Exploratory data analysis using Python 3 graphical libraries.
In this section, students will learn how to use Python 3 graphical libraries such as matplotlib, seaborn and pandas to create professional looking charts of real world data.
13-
Lecture2.1
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Lecture2.2
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Lecture2.3
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Lecture2.4
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Lecture2.5
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Lecture2.6
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Lecture2.7
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Lecture2.8
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Lecture2.9
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Lecture2.10
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Lecture2.11
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Lecture2.12
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Lecture2.13
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Section 3: Projects and hands on applications
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Lecture3.1
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Section4: Computing descriptive statistics in Python Pandas Part 1
In this section, we will learn how to use the Pandas library to compute descriptive statistics in Python
14-
Lecture4.1
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Lecture4.2
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Lecture4.3
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Lecture4.4
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Lecture4.5
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Lecture4.6
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Lecture4.7
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Lecture4.8
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Lecture4.9
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Lecture4.10
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Lecture4.11
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Lecture4.12
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Lecture4.13
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Lecture4.14
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Section 5: Computing Descriptive Statistics using the Numpy library in Python
Students will learn how to use the Numpy library to compute descriptive statistics in Python. In particular, they will learn how to handle missing values when using that library.
2-
Lecture5.1
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Lecture5.2
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Section 6: Hands on analysis of Descriptive statistics data in Python 3
Practical applications of the course Datavisualisation and Descriptive statistics
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