Basic Statistics and Regression in Python Practice Exam

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Bookmark Enrolled Intermediate

Basic Statistics and Regression in Python Practice Exam

Basic Statistics and Regression in Python is about understanding how numbers and data can be studied to find patterns and make predictions. Statistics helps us describe data—like averages, percentages, or variability—while regression allows us to build models that predict future outcomes based on past data. Using Python, a popular programming language, makes this process simple and practical because it has libraries that handle calculations and visualizations.

This certification teaches you how to use Python to perform statistical analysis and build regression models. These skills are widely applied in real-world situations, such as predicting sales, analyzing customer behavior, or understanding trends. By mastering these fundamentals, learners can start their journey into data science, analytics, and machine learning.

Who should take the Exam?

This exam is ideal for:

  • Students & Beginners 
  • Data Analysts 
  • Business Analysts 
  • Researchers 
  • Software Developers 
  • Aspiring Data Scientists 

Skills Required

  • Basic knowledge of Python programming
  • Interest in working with numbers and data
  • Logical thinking and problem-solving ability
  • Curiosity about data patterns and predictions

Knowledge Gained

  • Understanding descriptive and inferential statistics
  • Applying probability concepts in real-world scenarios
  • Building and interpreting regression models
  • Using Python libraries like NumPy, Pandas, and Scikit-learn
  • Visualizing data and results with Matplotlib/Seaborn
  • Preparing for advanced machine learning and analytics courses


Course Outline

The Basic Statistics and Regression in Python Exam covers the following topics - 

1. Introduction to Statistics and Python

  • Importance of Statistics in Data Science
  • Python Setup for Statistical Analysis
  • Key Python Libraries

2. Descriptive Statistics

  • Mean, Median, Mode
  • Variance and Standard Deviation
  • Data Distribution and Visualization

3. Probability Fundamentals

  • Basic Probability Concepts
  • Probability Distributions (Normal, Binomial, Poisson)
  • Sampling Methods

4. Inferential Statistics

  • Hypothesis Testing
  • Confidence Intervals
  • p-values and Significance

5. Introduction to Regression Analysis

  • What is Regression?
  • Simple Linear Regression
  • Correlation and Causation

6. Multiple Regression Models

  • Multiple Linear Regression
  • Evaluating Model Fit (R², Adjusted R²)
  • Handling Multicollinearity

7. Python for Regression

  • Using Scikit-learn for Regression
  • Model Training and Prediction
  • Error Metrics (MAE, MSE, RMSE)

8. Practical Applications

  • Predicting Sales or Revenue
  • Customer Behavior Analysis
  • Trend Forecasting

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