->
Data Analysis Using Pandas In Python : Learn By Exercise
https://www.udemy.com/course/data-analysis-using-pandas-in-python-learn-by-exercise/
Learn to analyze data, run SQL commands, create pivot table on pandas dataframe, filter / sort dataframe, derive fields

 


The course will follow below structure

Section 1: Getting started with Python

  • This section explains how to install Aanconda distribution and write first code

  • Additionally, a walk through of Spyder Platform

Section 2: Working on Data

  • P02 01A running SQL in python

  • P02 01 Understand Data n Add Comments in the code

  • P02 02 Know Contents of the Data

  • P02 03A Missing Value detection n treatment Part1

  • P02 03B Getting Familar with Jupyter IDE

  • P02 03C treating Numeric Missing value with mean n treating date missing value

  • P02 03D Creating copy of a dataframe n dropping records based on missing value of a particular field

  • P02 03E Replacing missing Value with median or mode

  • P02 04 Filtering data n keeping few columns in data

  • P02 05 use iloc to filter data

  • P02 06 Numeric Variable Analysis with Group By n Transpose the result

  • P02 07 Frequency Distribution count n percentage including missing percentage

  • P02 08 Introduction to function n substring stuff

Section 3: working on multiple datasets

  • P03 01 Creating Dataframe on the run Append concatenate dataframe

  • P03 02 Merging DataFrames

  • P03 03 Remove Duplicates Full or column based Sorting Dataframe Keep First Last Max Min

  • P03 04 Getting row for max value of any column easy way n then through idxmax

  • P03 05 use idxmax iterrows forloop to solve a tricky question

  • P03 06 Create derived fields using numerical fields

  • P03 07 Cross Tab Analysis n putting reult into another dataframe transpose result

  • P03 08 Derive variable based on character field

  • P03 09 Derive variable based on date field

  • P03 10 First Day Last Day Same Day of Last n month

Section 4: Data visualization and some frequently used terms

  • P04 01 Histogram n Bar chart in Jupyter and Spyder

  • P04 02 Line Chart Pie Chart Box Plot

  • P04 03 Revisit Some nitty gritty of Python

  • P04 04 Scope of a variable global scope local scope

  • P04 05 Range Object

  • P04 06 Casting or Variable type conversion n slicing strings

  • P04 07 Lambda function n dropping columns from pandas dataframe

Section 5: Some statistical procedures and other advance stuffs

  • P05 01 Simple Outlier detection n treatment

  • P05 02 Creating Excel formatted report

  • P05 03 Creating pivot table on pandas dataframe

  • P05 04 renaming column names of a dataframe

  • P05 05 reading writing appending data into SQLlite database

  • P05 06 writing log of code execution

  • P05 07 Linear regression using python

  • P05 08 chi square test of independence

Data Analysis Using Pandas In Python : Learn By Exercise


 TO MAC USERS: If RAR password doesn't work, use this archive program: 

RAR Expander 0.8.5 Beta 4  and extract password protected files without error.


 TO WIN USERS: If RAR password doesn't work, use this archive program: 

Latest Winrar  and extract password protected files without error.


 Gamystyle   |  

Information
Members of Guests cannot leave comments.




rss