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Statistical Thinking in Python (Part 1)

IntermediateSkill Level
4.8+
104 reviews
Updated 03/2026
Build the foundation you need to think statistically and to speak the language of your data.
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PythonProbability & Statistics
3 hr
18 videos
61 Exercises
4,550 XP
180K+
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Course Description

After all of the hard work of acquiring data and getting them into a form you can work with, you ultimately want to make clear, succinct conclusions from them. This crucial last step of a data analysis pipeline hinges on the principles of statistical inference. In this course, you will start building the foundation you need to think statistically, speak the language of your data, and understand what your data is telling you. The foundations of statistical thinking took decades to build, but can be grasped much faster today with the help of computers. With the power of Python-based tools, you will rapidly get up-to-speed and begin thinking statistically by the end of this course.

Prerequisites

Python Toolbox
1

Graphical Exploratory Data Analysis

Before diving into sophisticated statistical inference techniques, you should first explore your data by plotting them and computing simple summary statistics. This process, called exploratory data analysis, is a crucial first step in statistical analysis of data.
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2

Quantitative Exploratory Data Analysis

In this chapter, you will compute useful summary statistics, which serve to concisely describe salient features of a dataset with a few numbers.
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Statistical Thinking in Python (Part 1)
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*4.8
from 104 reviews
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  • Morgan
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  • Jhoan Sebastian
    2 weeks ago

  • Harry
    3 weeks ago

  • Caio
    6 weeks ago

  • Huzaifa
    2 months ago

  • Nattawut
    2 months ago

Morgan

Jhoan Sebastian

Caio

FAQs

Is this course for Python beginners or do I need prior experience?

You need intermediate Python skills including functions and the Python toolbox. This is an intermediate-level statistics course, not a Python introduction.

What topics are covered in the exploratory data analysis chapters?

You will learn graphical EDA through plotting, then quantitative EDA with summary statistics to describe key features of your datasets before moving to probability.

Does the course cover both discrete and continuous probability?

Yes. Chapter 3 covers probabilistic thinking for discrete variables like integers, and Chapter 4 extends these concepts to continuous variables with fractional values.

Will this course prepare me for statistical inference?

Yes. It builds the foundation of statistical thinking and probabilistic language you need to move into the inference techniques covered in Statistical Thinking in Python Part 2.

How long does this course typically take?

It has 4 chapters and 61 exercises. The median completion time is about 3.6 hours, though the estimated course length is 180 minutes.

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