Mathematics-Basics to Advanced for Data Science And GenAI
Mathematics-Basics to Advanced for Data Science And GenAI, available at $54.99, has an average rating of 4.67, with 96 lectures, based on 194 reviews, and has 3680 subscribers.
You will learn about Master Calculus: Understand derivatives and integrals, and apply them in optimizing machine learning algorithms and data analysis tasks. Learn Linear Algebra: Grasp vectors, matrices, and eigenvalues, essential for building and understanding advanced data science models. Understand Probability: Dive into probability theory, crucial for making informed predictions and working with uncertainty in data. Apply Statistics: Gain practical skills in statistical analysis, helping you make data-driven decisions and interpret results effectively. This course is ideal for individuals who are Aspiring Data Scientists: Individuals looking to build a strong mathematical foundation essential for mastering data science and machine learning. or Data Science Beginners: Those who are new to data science and want to understand the core mathematical concepts that drive data science algorithms. or Professionals Transitioning into Data Science: Engineers, analysts, or professionals from other fields seeking to acquire the mathematical skills necessary for a career shift into data science. or Students and Academics: Students pursuing studies in data science, computer science, or related fields who need a comprehensive understanding of mathematics for data science applications. or Lifelong Learners: Anyone with a passion for learning and a desire to understand how mathematics powers the world of data science, even without prior experience in the field. or This course is tailored to equip learners with the essential mathematical tools needed to excel in data science, regardless of their current level of expertise. It is particularly useful for Aspiring Data Scientists: Individuals looking to build a strong mathematical foundation essential for mastering data science and machine learning. or Data Science Beginners: Those who are new to data science and want to understand the core mathematical concepts that drive data science algorithms. or Professionals Transitioning into Data Science: Engineers, analysts, or professionals from other fields seeking to acquire the mathematical skills necessary for a career shift into data science. or Students and Academics: Students pursuing studies in data science, computer science, or related fields who need a comprehensive understanding of mathematics for data science applications. or Lifelong Learners: Anyone with a passion for learning and a desire to understand how mathematics powers the world of data science, even without prior experience in the field. or This course is tailored to equip learners with the essential mathematical tools needed to excel in data science, regardless of their current level of expertise.
Enroll now: Mathematics-Basics to Advanced for Data Science And GenAI
Summary
Title: Mathematics-Basics to Advanced for Data Science And GenAI
Price: $54.99
Average Rating: 4.67
Number of Lectures: 96
Number of Published Lectures: 96
Number of Curriculum Items: 96
Number of Published Curriculum Objects: 96
Original Price: $19.99
Quality Status: approved
Status: Live
What You Will Learn
- Master Calculus: Understand derivatives and integrals, and apply them in optimizing machine learning algorithms and data analysis tasks.
- Learn Linear Algebra: Grasp vectors, matrices, and eigenvalues, essential for building and understanding advanced data science models.
- Understand Probability: Dive into probability theory, crucial for making informed predictions and working with uncertainty in data.
- Apply Statistics: Gain practical skills in statistical analysis, helping you make data-driven decisions and interpret results effectively.
Who Should Attend
- Aspiring Data Scientists: Individuals looking to build a strong mathematical foundation essential for mastering data science and machine learning.
- Data Science Beginners: Those who are new to data science and want to understand the core mathematical concepts that drive data science algorithms.
- Professionals Transitioning into Data Science: Engineers, analysts, or professionals from other fields seeking to acquire the mathematical skills necessary for a career shift into data science.
- Students and Academics: Students pursuing studies in data science, computer science, or related fields who need a comprehensive understanding of mathematics for data science applications.
- Lifelong Learners: Anyone with a passion for learning and a desire to understand how mathematics powers the world of data science, even without prior experience in the field.
- This course is tailored to equip learners with the essential mathematical tools needed to excel in data science, regardless of their current level of expertise.
Target Audiences
- Aspiring Data Scientists: Individuals looking to build a strong mathematical foundation essential for mastering data science and machine learning.
- Data Science Beginners: Those who are new to data science and want to understand the core mathematical concepts that drive data science algorithms.
- Professionals Transitioning into Data Science: Engineers, analysts, or professionals from other fields seeking to acquire the mathematical skills necessary for a career shift into data science.
- Students and Academics: Students pursuing studies in data science, computer science, or related fields who need a comprehensive understanding of mathematics for data science applications.
- Lifelong Learners: Anyone with a passion for learning and a desire to understand how mathematics powers the world of data science, even without prior experience in the field.
- This course is tailored to equip learners with the essential mathematical tools needed to excel in data science, regardless of their current level of expertise.
Are you eager to dive into the world of data science but feel overwhelmed by the mathematical concepts involved? Welcome to the “Complete Maths to Learn Data Science” course, your comprehensive guide to mastering the essential mathematical foundations needed to excel in data science and machine learning.
This course is designed to bridge the gap between your current math skills and the level required to understand and implement data science algorithms effectively. Whether you are a beginner or an experienced professional looking to strengthen your mathematical understanding, this course will equip you with the tools you need to succeed.
What You Will Learn:
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Calculus for Data Science:
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Understand the fundamentals of calculus, including derivatives, integrals, and limits.
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Learn how these concepts are applied in optimizing machine learning algorithms, such as gradient descent, and in understanding complex data transformations.
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Linear Algebra Essentials:
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Gain a deep understanding of vectors, matrices, eigenvalues, and eigenvectors.
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Discover how these linear algebra concepts are crucial for data manipulation, dimensionality reduction (like PCA), and building advanced machine learning models.
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Probability Theory and Its Applications:
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Dive into the world of probability, including concepts like random variables, distributions, and Bayes’ Theorem.
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Explore how probability forms the backbone of predictive modeling, classification algorithms, and risk assessment in data science.
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Statistics for Data Analysis:
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Master key statistical techniques such as hypothesis testing, regression analysis, and statistical inference.
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Learn to make data-driven decisions by understanding and applying statistical methods to real-world datasets.
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Why This Course?
This course stands out by focusing on the clarity and practical application of mathematical concepts in data science. Each topic is broken down into simple, easy-to-understand modules that build on one another. You will not only learn the theory but also see exactly how these mathematical tools are used in real data science scenarios.
Throughout the course, you’ll engage with interactive quizzes, assignments, and hands-on projects designed to reinforce your understanding. By applying what you learn in real-world projects, you’ll gain practical experience and build a portfolio that showcases your newly acquired skills.
Who Is This Course For?
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Aspiring Data Scientists: Individuals looking to build a strong mathematical foundation essential for mastering data science and machine learning.
-
Data Science Beginners: Those new to the field who want to understand the core mathematical concepts that drive data science algorithms.
-
Professionals Transitioning into Data Science: Engineers, analysts, or professionals from other fields seeking to acquire the mathematical skills necessary for a career shift into data science.
-
Students and Academics: Students pursuing studies in data science, computer science, or related fields who need a comprehensive understanding of mathematics for data science applications.
-
Lifelong Learners: Anyone with a passion for learning and a desire to understand how mathematics powers the world of data science, even without prior experience in the field.
Enroll Today!
Join thousands of learners who have transformed their careers by mastering the mathematics behind data science. Whether you’re aiming to start a new career, enhance your skills, or simply satisfy your curiosity, this course will provide the solid mathematical foundation you need to succeed. Enroll now and take the first step towards becoming a confident and skilled data scientist!
Course Curriculum
Chapter 1: Welcome To This Course
Lecture 1: What We are Going To Learn
Chapter 2: Introduction To Linear Algebra
Lecture 1: Introduction
Lecture 2: Scalars And Vectors
Lecture 3: Addition Of Vectors
Lecture 4: Multiplication Of Vectors
Lecture 5: Vector Databases- Examples Of Cosines similarity
Lecture 6: Vectors Multiplication-Element Wise Multiplication
Lecture 7: Vectors Multiplication-Scaler Multiplication
Lecture 8: Introduction To Matrices And Application
Lecture 9: Matrices Operation
Chapter 3: Introduction To Functions And Transformation
Lecture 1: Introduction To Function And Linear Transformation
Lecture 2: Vector Transformations
Lecture 3: Linear Transformation
Lecture 4: Why Linear Transformation?
Lecture 5: Linear Transformation Visualization
Lecture 6: Vector Length And Vector Unit
Lecture 7: Introduction To Projection
Chapter 4: Inverse Functions Or Transformation
Lecture 1: Inversion Functions
Lecture 2: Applications of Function And Inverse Function
Lecture 3: How to find Inverse Of A Matrix
Chapter 5: Eigen Vectors And Eigen Values
Lecture 1: All You need to know about Eigen Values And Eigen Vectors
Chapter 6: Equation Of a Line,Plane,Hyperplane
Lecture 1: Equation OF a Line,Plane And Hyperplane
Chapter 7: Introduction To Statistics
Lecture 1: Introduction To Statistics
Lecture 2: Types Of Statistics
Lecture 3: Population And Sample Data
Lecture 4: Types Of Sampling
Lecture 5: Types Of Data
Lecture 6: Scales OF Measurement Of Data
Chapter 8: Descriptive Statistics
Lecture 1: Measure Of Central Tendency
Lecture 2: Measure Of Dispersion
Lecture 3: Why Sample Variance is Divided By N-1
Lecture 4: Random Variables
Lecture 5: Percentile And Quartiles
Lecture 6: 5 Number Summary
Lecture 7: Histogram And Skewness
Lecture 8: Correlation And Covariance
Chapter 9: Introduction To Probability
Lecture 1: Addition Rule In Probability
Lecture 2: Multiplication Rule In Probability
Chapter 10: Probability Distribution function And Types Of Distribution
Lecture 1: PDF,PMF,CDF
Lecture 2: Types Of Probability Distribution
Lecture 3: Bernoulli Distribution
Lecture 4: Binomial Distribution
Lecture 5: Poisson Distribution
Lecture 6: Normal Gaussian Distribution
Lecture 7: Standard Normal Distribution and Z score
Lecture 8: Uniform Distribution
Lecture 9: Log Normal Distribution
Lecture 10: Power Law Distribution
Lecture 11: Pareto Distribution
Lecture 12: Central Limit Theorem
Lecture 13: Estimates
Chapter 11: Inferential Stats and Hypothesis Testing
Lecture 1: Hypothesis Testing And Its Mechanism
Lecture 2: P value and Hypothesis Testing
Lecture 3: Z test And Hypothesis Testing
Lecture 4: Student T Distribution
Lecture 5: T stats With t Test Hypothesis Testing
Lecture 6: Z test vs T test
Lecture 7: Type 1 and Type 2 Error
Lecture 8: Baye's Theorem
Lecture 9: Confidence Interval And Margin OF Error
Chapter 12: Chi Square Test With Solved Exmaples
Lecture 1: What is Chi Square Test
Lecture 2: Chi Square Goodness OF Fit
Chapter 13: Annova Test With Solved Examples
Lecture 1: What is Annova
Lecture 2: Assumptions Of Annova
Lecture 3: Types OF Annova
Lecture 4: Partioning OF Variance In Anova
Chapter 14: Differential Calculus
Lecture 1: What are Slopes and How To Calculate
Lecture 2: Introduction To Derivatives
Lecture 3: Mathematical Notation Of Derivatives With Limits
Lecture 4: Finding a Derivative At a Point with Examples
Chapter 15: Power Rules And Derivative Rules
Lecture 1: Power Rules In Derivative
Lecture 2: Derivative Rules- Constant,Sum,Difference And Scaler Multiplication
Lecture 3: Equation Of Tangent Of Polynomials
Lecture 4: Derivatives Of Trignometric,Logarithmic and Exponential Functions
Chapter 16: Product Rules In Derivative
Lecture 1: Product Rules In Derivative with Exmaples
Chapter 17: Chain Rule Of Derivatives
Lecture 1: Chain Rule Of Derivatives
Lecture 2: Composition Of 3 or many functions
Lecture 3: Application Of Chain Rule Of Derivative
Chapter 18: Application Of Linear algebra,Stats And Differential Calculus In Data Science
Lecture 1: Main Aim Of This Section
Lecture 2: Learning First ML Algorithm- Simple Linear Regression
Lecture 3: Understanding Linear Regression Equations
Lecture 4: Cost Functions In Regression
Instructors
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Krish Naik
Chief AI Engineer -
KRISHAI Technologies Private Limited
Artificial intelligence and machine learning engineer
Rating Distribution
- 1 stars: 0 votes
- 2 stars: 4 votes
- 3 stars: 8 votes
- 4 stars: 53 votes
- 5 stars: 129 votes
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