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⇱ Machine Learning with Python & Statistics | Coursera


Machine Learning with Python & Statistics

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Machine Learning with Python & Statistics

Instructor: EDUCBA

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1 week to complete
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Gain insight into a topic and learn the fundamentals.
1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Apply probability, sampling, and distributions to datasets.

  • Use linear algebra and hypothesis testing for data analysis.

  • Build and validate ML models with Python in real-world contexts.

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Assessments

14 assignments

Taught in English

Build your subject-matter expertise

This course is part of the AI Machine Learning with R & Python Projects Specialization
When you enroll in this course, you'll also be enrolled in this Specialization.
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  • Gain a foundational understanding of a subject or tool
  • Develop job-relevant skills with hands-on projects
  • Earn a shareable career certificate

There are 4 modules in this course

Learners will be able to apply probability, sampling, distributions, and statistical testing to analyze datasets and build machine learning models with Python. By the end of this course, they will differentiate data types, evaluate hypothesis testing approaches, and utilize linear algebra and inferential methods to interpret and validate results in real-world contexts.

This course provides a step-by-step pathway through the foundations of machine learning, beginning with supervised and unsupervised learning concepts, advancing into sampling techniques and data classification, then exploring probability models and distributions. Learners will also gain hands-on exposure to linear algebra essentials, including matrix operations and determinants, before progressing to hypothesis testing, t-tests, Chi-square analysis, goodness of fit, and covariance interpretation. What makes this course unique is its integration of mathematics, statistics, and Python implementation, ensuring learners not only understand the theory but also apply and evaluate it in practical machine learning workflows. Whether you’re preparing for advanced data science roles or strengthening your analytical foundation, this course provides the essential toolkit to succeed.

This module introduces learners to the essential foundations of Machine Learning with Python, exploring its core concepts, real-world applications, and the critical role of data mining in uncovering patterns. Students will gain a strong conceptual base to understand how machine learning systems differ from traditional programming and how data-driven insights power intelligent decision-making.

What's included

8 videos3 assignments

8 videosTotal 58 minutes
  • Introduction to Machine Learning with Python4 minutes
  • Machine Learning Introduction5 minutes
  • Analytics in Machine Learning10 minutes
  • Big Data Machine Learning8 minutes
  • Emerging Trends Machine Learning9 minutes
  • Data Mining8 minutes
  • Data Mining Continues7 minutes
  • Supervised and Unsupervised8 minutes
3 assignmentsTotal 50 minutes
  • Graded-Foundations of Machine Learning30 minutes
  • Introduction & Big Picture10 minutes
  • Data Mining Essentials10 minutes

This module introduces learners to the essential concepts of sampling methods and statistical data types in Machine Learning. It explores systematic, cluster, and stratified sampling techniques, while also distinguishing between qualitative, quantitative, discrete, continuous, nominal, and ordinal data. By mastering these foundations, learners will understand how data collection and classification impact the accuracy, reliability, and effectiveness of machine learning models.

What's included

8 videos3 assignments

8 videosTotal 67 minutes
  • Sampling Method in Machine Learning8 minutes
  • Technical Terminology11 minutes
  • Error of Observation and Non Observation7 minutes
  • Systematic Sampling8 minutes
  • Cluster Sampling11 minutes
  • Statistics Data Types5 minutes
  • Qualitative Data and Visualization8 minutes
  • Machine Learning8 minutes
3 assignmentsTotal 50 minutes
  • Graded-Sampling & Data in Statistics30 minutes
  • Sampling Techniques10 minutes
  • Working with Data Types10 minutes

This module provides a comprehensive foundation in probability theory, random variables, and linear algebra concepts essential for machine learning. Learners will explore probability fundamentals such as conditional probability, independence, and the law of total probability, then advance into discrete and continuous distributions including Bernoulli, geometric, and normal distributions. The module also introduces linear algebra essentials—matrices, transposes, and determinants—equipping learners with mathematical tools required to build and analyze machine learning models effectively.

What's included

16 videos4 assignments

16 videosTotal 150 minutes
  • Relative Frequency Probability9 minutes
  • Joint Probability10 minutes
  • Conditional Probability9 minutes
  • Concept of Independence7 minutes
  • Total Probability10 minutes
  • Random Variable9 minutes
  • Probability Distribution11 minutes
  • Cumulative Probability Distribution10 minutes
  • Bernoulli Distribution9 minutes
  • Gaussian Distribution8 minutes
  • Geometric Distribution8 minutes
  • Continuous and Normal Distribution10 minutes
  • Mathematical Expression and Computation9 minutes
  • Transpose of Matrix9 minutes
  • Properties of Matrix12 minutes
  • Determinants10 minutes
4 assignmentsTotal 60 minutes
  • Graded-Probability & Distributions30 minutes
  • Probability Fundamentals10 minutes
  • Random Variables & Distributions10 minutes
  • Linear Algebra for ML10 minutes

This module equips learners with the statistical foundations required to test hypotheses, interpret confidence intervals, and apply advanced inferential techniques in machine learning. Learners will explore error types, critical value and p-value approaches, tail tests, and confidence intervals. The module then advances into applied inferential statistics with t-tests, Chi-square tests, and goodness of fit measures, as well as the interpretation of covariance. By the end, learners will be able to conduct robust statistical testing and evaluate data relationships with accuracy.

What's included

23 videos4 assignments

23 videosTotal 206 minutes
  • Error Types9 minutes
  • Critical Value Approach9 minutes
  • Right and Left Sided Critical Approach10 minutes
  • P-Value Approach11 minutes
  • P-Value Approach Continues9 minutes
  • Hypothesis Testing11 minutes
  • Left Tail Test6 minutes
  • Two Tail Test10 minutes
  • Confidence Interval9 minutes
  • Example of Confidence Interval11 minutes
  • Normal and Non Normal Distribution10 minutes
  • Normality Test10 minutes
  • Normality Test Continues10 minutes
  • Determining the Transformation6 minutes
  • T-Test11 minutes
  • T-Test Continue8 minutes
  • More on T-Test9 minutes
  • Test of Independence11 minutes
  • Example of Test of Independence10 minutes
  • Goodness of Fit Test7 minutes
  • Example of Goodness of Fit Test7 minutes
  • Co-Variance5 minutes
  • Co-Variance Continues8 minutes
4 assignmentsTotal 60 minutes
  • Graded-Statistical Testing & Inference30 minutes
  • Hypothesis Testing Approaches10 minutes
  • Advanced Tests & Confidence10 minutes
  • Inferential Statistics in Practice10 minutes

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Instructor

EDUCBA
1,591 Courses326,930 learners

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