Welcome to download



Do not remember me!

 
We have Tested and found Below Host Trustable, Please Buy Premium account From Below Host.
UploadGIG.com nitroflare.com
Note: Do not Buy Premium account from Reseller

Latest Comments

    No comments
» » » Python Bootcamp: Data Exploration and Matplotlib Plots

Python Bootcamp: Data Exploration and Matplotlib Plots


Python Bootcamp: Data Exploration and Matplotlib Plots
Genre: eLearning | MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 678 MB | Duration: 2h 3m

Python Data exploration , Essential methods and attributes, Matplotlib plots/graphs/customizations/style sheets
What you'll learn
Initial Analysis of the data using methods or attributes like: Shape, info( ), describe( )etc.
Sort values, unique values, index, mean, reset index, rename column
Data type change for a column/series, Subsetting
Logical OR, Logical AND, isin( ), not isin( )
String methods: copy( ), upper( ), lower( ), title( ), replace( ), split( )
Handling of missing values: isna( ), dropna( ), isna( )
Summary statistics of a numerical column: describe( ), std( ), var( ), boxplot( )
Linspace( )
Slicing using loc and iloc
groupby, query( ), division of values of a column/series by values in another column/series
Matplotlib: plotting basic graphs, customizations (marker size, line width, xlabel, ylabel, title)
Subplopts, subplots with same Y-axis, subplots with same X-axis
Matplotlib: histogram, bargraph, boxplot, scatter plot
Matplotlib: style sheets, saving plot/figures
Description
This course will help you to learn and understand Data exploration in python and basic plots of Matplotlib for better visualization of the dataset.
The python version used in this course is 3.8.5
This course is designed for students who have zero to basic knowledge of Python. All the methods, attributes, plots, graphs, customizations are explained from scratch.
The first part of the course mainly focuses on data analysis and will help you to understand functions/methods that you may need to use to explore your dataset in its entirety.
Further, some part focuses on cleansing as well like handling duplicate and missing values.
The structure for the Data exploration (first part) is:-
Initial Analysis of the data using methods or attributes like: Shape, info( ), describe( )etc.
Sort values, unique values, index, mean, reset index, rename column
Data type change for a column/series, Subsetting
Logical OR, Logical AND, isin( ), not isin( )
String methods: copy( ), upper( ), lower( ), title( ), replace( ), split( )
Handling of missing values: isna( ), dropna( ), isna( )
Summary statistics of a numerical column: describe( ), std( ), var( ), boxplot( )
Linspace( )
Slicing using loc and iloc
groupby, query( ), division of values of a column/series by values in another column/series
The second part mainly focuses on plots/graphs of Matplotlib:-
Matplotlib: plotting basic graphs, customizations (marker size, line width, xlabel, ylabel, title)
Subplopts, subplots with same Y-axis, subplots with same X-axis
Matplotlib: histogram, bargraph, boxplot, scatter plot
Matplotlib: style sheets, saving plot/figures

Download link:

Links are Interchangeable - Single Extraction - Premium is support resumable
UploadGIG.com

Please login or register

Dear visitor, you are browsing our website as Guest. We strongly recommend you to register and login to view hidden contents.

Comments (0)

Leave Comment

Name:*
E-Mail:
Security Code: *
Click on the image to refresh the code if it cannot be viewed