Learn Statistical Data Analysis with Python

Perform Statistical Data Analysis Techniques with the Python Programming Language. Practice Notebook included.
3.94 (83 reviews)
Udemy
platform
English
language
Data Science
category
Learn Statistical Data Analysis with Python
4β€―762
students
1 hour
content
Jan 2021
last update
FREE
regular price

Why take this course?

πŸš€ Course Title: Learn Statistical Data Analysis with Python πŸš€ Course Headline: Perform Statistical Data Analysis Techniques with the Python Programming Language. Practice Notebook Included!


πŸŽ“ Course Description:

Dive into the world of statistical data analysis with Python, and become adept at extracting meaningful insights from raw data. By the end of this comprehensive course, you will have mastered the essential skills required to perform robust data analysis tasks. Here's what you can expect to learn:

  • Measures of Central Tendency πŸ“ˆ

    • Learn to calculate and interpret the mean, median, and mode.
    • Understand the significance of each measure in different contexts.
  • Measures of Dispersion 🎲

    • Master the calculation and interpretation of variance, standard deviation, range, interquartile range, and more.
    • Learn to assess the spread of data and its implications.
  • Assessing Measures of Tendency and Dispersion 🧐

    • Gain insights into the strengths and weaknesses of each measure.
    • Apply your knowledge to real-world scenarios for a comprehensive understanding.
  • Data Visualization Techniques πŸ“Š

    • Create histograms, bar charts, and box plots to visually represent data distributions.
    • Learn to construct frequency tables for a detailed overview of the data.
  • Exploring Relationships between Variables πŸ”

    • Understand how to generate and interpret scatter plots and line graphs.
    • Use statistical methods such as correlation analysis to determine relationships and trends in data.
  • Advanced Statistical Analysis: Correlation Coefficient πŸ“‹

    • Calculate the Pearson correlation coefficient to quantify the linear relationship between two variables.
    • Learn how this metric can significantly impact your predictive models and data science projects.

Why Take This Course? πŸ€”

  • Real-World Applications: From exploratory data analysis to model validation, you'll learn practical applications of statistical methods.
  • Hands-On Practice: A practice notebook is included for you to apply what you've learned in an interactive environment.
  • Expert Guidance: Learn from Python and statistics expert, Valentine Mwangi, who will guide you through each concept with clarity and depth.

What You Will Be Able To Do After This Course:

  • Confidently apply statistical analysis techniques within the context of data science projects.
  • Generate descriptive analysis reports that provide clear insights into the data being analyzed.
  • Validate and refine predictive models using statistical measures to assess assumptions and relationships in your data.

Join us on this journey to become a proficient Python programmer in statistical data analysis. Whether you're an aspiring data scientist, analyst, or simply looking to enhance your technical skill set, this course will equip you with the tools and knowledge you need to succeed. πŸ’»βœ¨

Enroll now and unlock the full potential of your data analysis capabilities with Python!

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3784532
udemy ID
18/01/2021
course created date
22/01/2021
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