Registration

Essential Statistics for Data Science With Python

Added by: CoursesToday
0
25 Aug 2025
0

Free Download Essential Statistics for Data Science With Python
Published 8/2025
Created by datascience Anywhere,G Sudheer
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Level: All | Genre: eLearning | Language: English | Duration: 41 Lectures ( 6h 10m ) | Size: 2.1 GB


Learn Core Statistical Concepts and Apply Them to Real Data with Python
What you'll learn
Explain the role of statistics in data science and why it is essential for data analysis.
Analyze dataset distributions using skewness, kurtosis, and visualization techniques.
Apply probability rules and concepts to model uncertainty and randomness in data.
Use Python (with pandas) to perform descriptive statistical analysis and visualize key insights.
Bridge theoretical concepts with practical coding to prepare for inferential statistics and machine learning.
Requirements
Basic knowledge of Python programming (variables, lists, functions, loops).
Familiarity with Jupyter Notebook or any Python environment.
Very basic understanding of data (rows, columns, datasets).
Description
Statistics is at the heart of data science, and a solid understanding of it is essential for analyzing, interpreting, and drawing insights from data. This course, Essential Statistics for Data Science with Python, is designed to help you build that strong foundation by blending core statistical concepts with hands-on coding in Python.We begin with descriptive statistics, where you will learn how to summarize and explore datasets using measures such as mean, median, and mode to identify central tendencies. We also cover how data spreads out using variance, standard deviation, range, and interquartile range, as well as advanced measures like skewness and kurtosis to understand distribution shapes.The course then introduces probability, a key building block for data-driven decision making. You will understand basic probability rules, distributions, and how randomness impacts real-world data. These concepts will prepare you for more advanced topics like hypothesis testing and inferential statistics in future modules.What makes this course practical is the integration of pandas, one of the most powerful Python libraries for data analysis. You will learn how to calculate summary statistics, manipulate datasets, and visualize results directly in pandas, making your statistical learning immediately applicable to real-world problems.By the end of the course, you will not only understand essential statistical concepts but also be confident in applying them programmatically for data analysis. This combination of theory and practice ensures you are well-prepared for deeper explorations into inferential statistics, machine learning, and advanced data science techniques.
Who this course is for
Aspiring Data Scientists who want to build a strong statistical foundation before diving into machine learning.
Students and Beginners in Python who are curious about applying statistics to real-world datasets.
Professionals in Non-Technical Fields (business, finance, healthcare, social sciences) who want to strengthen their data analysis skills.
Homepage
https://www.udemy.com/course/statistics-for-data-science-with-python/



Buy Premium From My Links To Get Resumable Support,Max Speed & Support Me


No Password - Links are Interchangeable

Disclaimer

None of the files shown here are hosted or transmitted by this server. The owner of this site, wwebhub.com cannot be held responsible for what its users are posting. The links and content are indexed from other sites on the net. You may not use this site to distribute or download any material when you do not have the legal rights to do so. If you have any doubts about legality of content or you have another suspicions, feel free to contact us at WWEBHUB.COM or use the "REPORT ABUSE" button. Thank you

Comments
Add
reload, if the code cannot be seen

There are no comments yet. You can