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    Applied Statistics and Data Preparation with Python

    Posted By: Sigha
    Applied Statistics and Data Preparation with Python

    Applied Statistics and Data Preparation with Python
    .MP4 | Video: 1280x720, 30 fps(r) | Audio: AAC, 44100 Hz, 2ch | 956 MB
    Duration: 2 hours | Genre: eLearning Video | Language: English

    Applied Statistics with Python


    What you'll learn

    Applied Statistics using Python

    Requirements

    Fundamentals Python programming

    Description

    This is the bite size course to learn Python Programming for Applied Statistics. In CRISP DM data mining process, Applied Statistics is at the Data Understanding stage. This course also covers Data processing, which is at the Data Preparation Stage.

    You will need to know some Python programming, and you can learn Python programming from my "Create Your Calculator: Learn Python Programming Basics Fast" course. You will learn Python Programming for applied statistics.

    You can take the course as follows, and you can take a exam at EMHAcademy to get SVBook Certified Data Miner using Python certificate :

    - Create Your Calculator: Learn Python Programming Basics Fast (R Basics)

    - Applied Statistics using Python with Data Processing (Data Understanding and Data Preparation)

    - Advanced Data Visualizations using Python with Data Processing (Data Understanding and Data Preparation, in future)

    - Machine Learning with Python (Modeling and Evaluation)


    Content

    Getting Started

    Getting Started 2

    Getting Started 3

    Data Mining Process

    Download Data set

    Read Data set

    Mode

    Median

    Mean

    Range

    Range One Column

    Qunatile

    Variance

    Standard Deviation

    Histogram

    QQPLot

    Shapiro Test

    Skewness and Kurtosis

    Describe()

    Correlation

    Covariance

    One Sample T Test

    Two Sample TTest

    Chi Square Test

    One Way ANOVA

    Simple Linear Regression

    Multiple LInear Regression

    Data Processing: DF.head()

    Data Processing: DF.tail()

    Data Processing: DF.describe()

    Data Processing: Select Variables

    Data Processing: Select Rows

    Data Processing: Select Variables and Rows

    Data Processing: Remove Variables

    Data Processing: Append Rows

    Data Processing: Sort Variables

    Data Processing: Rename Variables

    Data Processing: GroupBY

    Data Processing: Remove Missing Values

    Data Processing: Is THere Missing Values

    Data Processing: Replace Missing Values

    Data Processing: Remove Duplicates

    Who this course is for:

    Beginner Data Scientist or Analyst interested in Python programming

    Applied Statistics and Data Preparation with Python