Machine Learning with Python & Statistics
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Machine Learning with Python & Statistics
This course is part of AI Machine Learning with R & Python Projects Specialization
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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.
Skills you'll gain
- Statistical Methods
- Data Science
- Statistical Inference
- Data Mining
- Machine Learning Algorithms
- Machine Learning
- Statistical Hypothesis Testing
- Statistical Analysis
- Data Analysis
- Supervised Learning
- Probability & Statistics
- Statistical Machine Learning
- Applied Machine Learning
- Sampling (Statistics)
- Statistics
- Probability Distribution
- Probability
- Linear Algebra
Tools you'll learn
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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 videos•Total 58 minutes
- Introduction to Machine Learning with Python•4 minutes
- Machine Learning Introduction•5 minutes
- Analytics in Machine Learning•10 minutes
- Big Data Machine Learning•8 minutes
- Emerging Trends Machine Learning•9 minutes
- Data Mining•8 minutes
- Data Mining Continues•7 minutes
- Supervised and Unsupervised•8 minutes
3 assignments•Total 50 minutes
- Graded-Foundations of Machine Learning•30 minutes
- Introduction & Big Picture•10 minutes
- Data Mining Essentials•10 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 videos•Total 67 minutes
- Sampling Method in Machine Learning•8 minutes
- Technical Terminology•11 minutes
- Error of Observation and Non Observation•7 minutes
- Systematic Sampling•8 minutes
- Cluster Sampling•11 minutes
- Statistics Data Types•5 minutes
- Qualitative Data and Visualization•8 minutes
- Machine Learning•8 minutes
3 assignments•Total 50 minutes
- Graded-Sampling & Data in Statistics•30 minutes
- Sampling Techniques•10 minutes
- Working with Data Types•10 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 videos•Total 150 minutes
- Relative Frequency Probability•9 minutes
- Joint Probability•10 minutes
- Conditional Probability•9 minutes
- Concept of Independence•7 minutes
- Total Probability•10 minutes
- Random Variable•9 minutes
- Probability Distribution•11 minutes
- Cumulative Probability Distribution•10 minutes
- Bernoulli Distribution•9 minutes
- Gaussian Distribution•8 minutes
- Geometric Distribution•8 minutes
- Continuous and Normal Distribution•10 minutes
- Mathematical Expression and Computation•9 minutes
- Transpose of Matrix•9 minutes
- Properties of Matrix•12 minutes
- Determinants•10 minutes
4 assignments•Total 60 minutes
- Graded-Probability & Distributions•30 minutes
- Probability Fundamentals•10 minutes
- Random Variables & Distributions•10 minutes
- Linear Algebra for ML•10 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 videos•Total 206 minutes
- Error Types•9 minutes
- Critical Value Approach•9 minutes
- Right and Left Sided Critical Approach•10 minutes
- P-Value Approach•11 minutes
- P-Value Approach Continues•9 minutes
- Hypothesis Testing•11 minutes
- Left Tail Test•6 minutes
- Two Tail Test•10 minutes
- Confidence Interval•9 minutes
- Example of Confidence Interval•11 minutes
- Normal and Non Normal Distribution•10 minutes
- Normality Test•10 minutes
- Normality Test Continues•10 minutes
- Determining the Transformation•6 minutes
- T-Test•11 minutes
- T-Test Continue•8 minutes
- More on T-Test•9 minutes
- Test of Independence•11 minutes
- Example of Test of Independence•10 minutes
- Goodness of Fit Test•7 minutes
- Example of Goodness of Fit Test•7 minutes
- Co-Variance•5 minutes
- Co-Variance Continues•8 minutes
4 assignments•Total 60 minutes
- Graded-Statistical Testing & Inference•30 minutes
- Hypothesis Testing Approaches•10 minutes
- Advanced Tests & Confidence•10 minutes
- Inferential Statistics in Practice•10 minutes
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