0.0 (0)
IT and Software Personal Development

Statistics & Probability for Data Science & Machine Learning

Overview: Welcome to "Statistics & Probability for Data Science & Machine Learning!" This course provides a comprehensive introduction to statistics ...

Img

88 Lesson

Img

11hr 27min

Img

5 students enrolled

Overview:

Welcome to "Statistics & Probability for Data Science & Machine Learning!" This course provides a comprehensive introduction to statistics and probability concepts essential for data science and machine learning. Understanding statistics and probability is crucial for analyzing data, making predictions, and building machine learning models. In this course, you'll learn key statistical techniques, probability distributions, and their applications in data analysis, inference, and predictive modeling using real-world datasets.
  • Interactive video lectures by industry experts
  • Instant e-certificate
  • Fully online, interactive course with Professional voice-over
  • Developed by qualified first aid professionals
  • Self paced learning and laptop, tablet, smartphone friendly
  • 24/7 Learning Assistance
  • Discounts on bulk purchases

Main Course Features:

  • Thorough coverage of fundamental statistical concepts, including descriptive and inferential statistics
  • Exploration of probability theory, including probability distributions and random variables
  • Hands-on tutorials and coding exercises using Python for statistical analysis and modeling
  • Practical examples and case studies from various domains, including finance, healthcare, and marketing
  • Guidance on data preprocessing, feature engineering, and model evaluation techniques
  • Access to datasets and resources for practicing statistical analysis and machine learning
  • Supportive online community for collaboration and assistance throughout the course
  • Regular assessments and quizzes to track progress and reinforce learning

Who Should Take This Course:

  • Aspiring data scientists and machine learning engineers seeking a strong foundation in statistics and probability
  • Students pursuing degrees in data science, computer science, or related fields
  • Professionals in analytics, business intelligence, and data-driven decision-making roles
  • Anyone interested in learning statistical concepts and their applications in data science and machine learning

Learning Outcomes:

  • Understand fundamental statistical concepts and probability theory for data analysis and inference
  • Gain proficiency in using Python libraries such as NumPy, Pandas, and Matplotlib for statistical analysis and visualization
  • Apply statistical techniques for hypothesis testing, regression analysis, and predictive modeling
  • Interpret and analyze data distributions, correlations, and relationships
  • Build and evaluate machine learning models using statistical principles
  • Develop critical thinking and problem-solving skills through hands-on coding exercises
  • Create insightful data visualizations to communicate findings effectively
  • Apply statistical and probabilistic concepts to real-world datasets and machine learning projects.

Certification

Once you’ve successfully completed your course, you will immediately be sent a digital certificate. All of our courses are fully accredited, providing you with up-to-date skills and knowledge and helping you to become more competent and effective in your chosen field. Our certifications have no expiry dates, although we do recommend that you renew them every 12 months.

Assessment

At the end of the Course, there will be an online assessment, which you will need to pass to complete the course. Answers are marked instantly and automatically, allowing you to know straight away whether you have passed. If you haven’t, there’s no limit on the number of times you can take the final exam. All this is included in the one-time fee you paid for the course itself.
Course Content
88 Lectures 11hr 27min
  • ImgWelcome!

  • ImgWhat will you learn in this course?

  • ImgHow can you get the most out of it?

  • ImgIntro

  • ImgMean

  • ImgMedian

  • ImgMode

  • ImgMean or Median?

  • ImgSkewness

  • ImgPractice: Skewness

  • ImgSolution: Skewness

  • ImgRange & IQR

  • ImgSample vs. Population

  • ImgVariance & Standard deviation

  • ImgImpact of Scaling & Shifting

  • ImgStatistical moments

  • ImgWhat is a distribution?

  • ImgNormal distribution

  • ImgZ-Scores

  • ImgPractice: Normal distribution

  • ImgSolution: Normal distribution

  • ImgIntro

  • ImgProbability Basics

  • ImgCalculating simple Probabilities

  • ImgPractice: Simple Probabilities

  • ImgQuick solution: Simple Probabilities

  • ImgDetailed solution: Simple Probabilities

  • ImgRule of addition

  • ImgPractice: Rule of addition

  • ImgQuick solution: Rule of addition

  • ImgDetailed solution: Rule of addition

  • ImgRule of multiplication

  • ImgPractice: Rule of multiplication

  • ImgSolution: Rule of multiplication

  • ImgBayes Theorem

  • ImgBayes Theorem – Practical example

  • ImgExpected value

  • ImgPractice: Expected value

  • ImgSolution: Expected value

  • ImgLaw of Large Numbers

  • ImgCentral Limit Theorem – Theory

  • ImgCentral Limit Theorem – Intuition

  • ImgCentral Limit Theorem – Challenge

  • ImgCentral Limit Theorem – Exercise

  • ImgCentral Limit Theorem – Solution

  • ImgBinomial distribution

  • ImgPoisson distribution

  • ImgReal life problems

  • ImgIntro

  • ImgWhat is a hypothesis?

  • ImgSignificance level and p-value

  • ImgType I and Type II errors

  • ImgConfidence intervals and margin of error

  • ImgExcursion: Calculating sample size & power

  • ImgPerforming the hypothesis test

  • ImgPractice: Hypothesis test

  • ImgSolution: Hypothesis test

  • ImgT-test and t-distribution

  • ImgProportion testing

  • ImgImportant p-z pairs

  • ImgIntro

  • ImgLinear Regression

  • ImgCorrelation coefficient

  • ImgPractice: Correlation

  • ImgSolution: Correlation

  • ImgPractice: Linear Regression

  • ImgSolution: Linear Regression

  • ImgResidual, MSE & MAE

  • ImgPractice: MSE & MAE

  • ImgSolution: MSE & MAE

  • ImgCoefficient of determination

  • ImgRoot Mean Square Error

  • ImgPractice: RMSE

  • ImgSolution: RMSE

  • ImgMultiple Linear Regression

  • ImgOverfitting

  • ImgPolynomial Regression

  • ImgLogistic Regression

  • ImgDecision Trees

  • ImgRegression Trees

  • ImgRandom Forests

  • ImgDealing with missing data

  • ImgANOVA – Basics & Assumptions

  • ImgOne-way ANOVA

  • ImgF-Distribution

  • ImgTwo-way ANOVA – Sum of Squares

  • ImgTwo-way ANOVA – F-ratio & conclusions