HOME > Development > Applied Statistics and Data Preparation with Python

Applied Statistics and Data Preparation with Python

  • Development
  • Feb 20, 2025
SynopsisApplied Statistics and Data Preparation with Python, availabl...
Applied Statistics and Data Preparation with Python  No.1

Applied Statistics and Data Preparation with Python, available at $19.99, has an average rating of 3, with 47 lectures, based on 2 reviews, and has 526 subscribers.

You will learn about Applied Statistics using Python This course is ideal for individuals who are Beginner Data Scientist or Analyst interested in Python programming It is particularly useful for Beginner Data Scientist or Analyst interested in Python programming.

Enroll now: Applied Statistics and Data Preparation with Python

Summary

Title: Applied Statistics and Data Preparation with Python

Price: $19.99

Average Rating: 3

Number of Lectures: 47

Number of Published Lectures: 47

Number of Curriculum Items: 47

Number of Published Curriculum Objects: 47

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • Applied Statistics using Python
  • Who Should Attend

  • Beginner Data Scientist or Analyst interested in Python programming
  • Target Audiences

  • Beginner Data Scientist or Analyst interested in Python programming
  • Why learn Data Analysis and Data Science?

    According to SAS, the five reasons are

    1. Gain problem solving skills

    The ability to think analytically and approach problems in the right way is a skill that is very useful in the professional world and everyday life.

    2. High demand

    Data Analysts and Data Scientists are valuable. With a looming skill shortage as more and more businesses and sectors work on data, the value is going to increase.

    3. Analytics is everywhere

    Data is everywhere. All company has data and need to get insights from the data. Many organizations want to capitalize on data to improve their processes. It’s a hugely exciting time to start a career in analytics.

    4. It’s only becoming more important

    With the abundance of data available for all of us today, the opportunity to find and get insights from data for companies to make decisions has never been greater. The value of data analysts will go up, creating even better job opportunities.

    5. A range of related skills

    The great thing about being an analyst is that the field encompasses many fields such as computer science, business, and maths.  Data analysts and Data Scientists also need to know how to communicate complex information to those without expertise.

    The Internet of Things is Data Science + Engineering. By learning data science, you can also go into the Internet of Things and Smart Cities.

    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 an 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 the future)

    – Machine Learning with Python (Modeling and Evaluation)

    Content

    1. Getting Started

    2. Getting Started 2

    3. Getting Started 3

    4. Data Mining Process

    5. Download Data set

    6. Read Data set

    7. Mode

    8. Median

    9. Mean

    10. Range

    11. Range One Column

    12. Quantile

    13. Variance

    14. Standard Deviation

    15. Histogram

    16. QQPLot

    17. Shapiro Test

    18. Skewness and Kurtosis

    19. Describe()

    20. Correlation

    21. Covariance

    22. One Sample T Test

    23. Two Sample TTest

    24. Chi-Square Test

    25. One Way ANOVA

    26. Simple Linear Regression

    27. Multiple Linear Regression

    28. Data Processing: DF.head()

    29. Data Processing: DF.tail()

    30. Data Processing: DF.describe()

    31. Data Processing: Select Variables

    32. Data Processing: Select Rows

    33. Data Processing: Select Variables and Rows

    34. Data Processing: Remove Variables

    35. Data Processing: Append Rows

    36. Data Processing: Sort Variables

    37. Data Processing: Rename Variables

    38. Data Processing: GroupBY

    39. Data Processing: Remove Missing Values

    40. Data Processing: Is THere Missing Values

    41. Data Processing: Replace Missing Values

    42. Data Processing: Remove Duplicates

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Getting Started

    Lecture 2: Getting Started 2

    Lecture 3: Getting Started 3

    Lecture 4: Getting Started 4

    Lecture 5: Data Mining Process

    Lecture 6: Download Dataset

    Lecture 7: Read CSV

    Lecture 8: Mode

    Lecture 9: Median

    Lecture 10: Mean

    Lecture 11: Range

    Lecture 12: Range One Column

    Lecture 13: Quantile

    Lecture 14: Variance

    Lecture 15: Standard Deviation

    Lecture 16: Histogram

    Lecture 17: QQ Plot

    Lecture 18: Shapiro Test

    Lecture 19: Skewness

    Lecture 20: Kurtosis

    Lecture 21: Describe Function

    Lecture 22: Correlation

    Lecture 23: Covariance

    Lecture 24: One Sample T Test

    Lecture 25: Two Sample TTest

    Lecture 26: Two Sample TTest

    Lecture 27: Two Sample TTest

    Lecture 28: Chi Square Test

    Lecture 29: ANOVA

    Lecture 30: Regression Analysis

    Lecture 31: Multiple Regression Analysis

    Lecture 32: Data Processing: DF.Head()

    Lecture 33: Data Processing: DF.Tail()

    Lecture 34: Data Processing: DF.Describe()

    Lecture 35: Data Processing: Select Variable or Column

    Lecture 36: Data Processing: Select Variable or Column

    Lecture 37: Data Processing: Select Rows

    Lecture 38: Data Processing: Select Rows and Variables

    Lecture 39: Data Processing: Remove Variables

    Lecture 40: Data Processing: Append Rows

    Lecture 41: Data Processing: Sort Variables and Columns

    Lecture 42: Data Processing: Rename Variables

    Lecture 43: Data Processing: GroupBy

    Lecture 44: Data Processing: Remove Missing Values

    Lecture 45: Data Processing: Is there Missing Values

    Lecture 46: Data Processing: Replace Missing Values

    Lecture 47: Data Processing: Remove Duplicates

    Instructors

  • Applied Statistics and Data Preparation with Python  No.2
    Goh Ming Hui
    Offer affordable data science courses.
  • Rating Distribution

  • 1 stars: 1 votes
  • 2 stars: 0 votes
  • 3 stars: 0 votes
  • 4 stars: 0 votes
  • 5 stars: 1 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!