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Deep Learning & Machine Learning

Machine Learning That Even My Mom Can Do (Advanced Theory)

First Steps in Learning AI: Optimal Curriculum for AI Beginners Created! A stage to quickly master Deep Learning by connecting Machine Learning and Deep Learning in short time, with advanced content!

21 learners are taking this course

  • yc
AI 활용법
머신러닝기초
딥러닝기초
확률과-통계
Machine Learning(ML)
Deep Learning(DL)
AI
Probability and Statistics

What you will learn!

  • ⭐ Probabilistic approach to classification/regression tasks

  • ⭐ Support Vector Machine(SVM) Operating Principle

  • ⭐ Logistic Regression: How it Works and Importance

  • ⭐ Information Content, Entropy, Cross-Entropy, KL Divergence Concepts

  • ⭐ Softmax Concept and Relationship with Logistic Regression

  • ⭐ Redefining Linear regression from a probabilistic perspective

  • ⭐ Maximum Likelihood Estimation (MLE): Concept and Need

  • ⭐ Derivation Process of Classification / Regression Loss Functions via Maximum Likelihood Estimation (MLE)

  • ⭐ Understanding the ROC-AUC curve evaluation method through Logistic Regression

  • ⭐ PCA & LDA: Simple Understanding & Operation Without Linear Algebra Knowledge

📢 This lecture is for non-majors.

Artificial intelligence, solved very easily!

I have excluded statistical and mathematical concepts as much as possible!

Theory lectures, don't be afraid!

Machine Learning That Even Our Mom Can Do (Basic Theory)

Artificial Intelligence (AI)

Machine Learning

Scikit-Learn

Course Introduction

  • Theory is the stepping stone for various code applications.

  • As a non-major, I won the grand prize and excellence award in contests, the first prize in competitions, and the grand prize and excellence award for projects in just 5 months .

  • You need to know the principles to be able to apply them to various situations and data.

  • When learning about artificial intelligence for the first time, various terms are thrown around, and the learning order felt unfamiliar while learning according to the curriculum at the institution . We thought a lot about it and modified and arranged the order so that even beginners can follow along with as little inconvenience as possible .

  • Rather than simply explaining mathematical and statistical concepts, when related references are made to models or indicators, the necessity of the corresponding formula or concept is mentioned, making it much easier to understand and convince, making learning smoother.

Lecture outline

  • We use only the minimum mathematical and statistical concepts necessary for understanding, and even then, we have organized them all into examples for easy understanding.

  • By using various visual aids and animations, we have minimized unnecessary lines of text in the material to make it less boring even though it is a theoretical lecture.


  • Those who do not know about machine learning will be able to learn systematically and broadly without feeling burdened, and those who know about machine learning will be able to establish the concept accurately once again.

  • This is a basic course that covers almost all parts of machine learning that can be intuitively understood, and concepts such as SVM, ROC-AUC, and dimensionality reduction are covered in the advanced theory of machine learning .

  • Since all lectures focus on future deep learning lectures, we recommend this course to those who want to build a solid foundation from machine learning .

Lecture Features

🎯 This course consists of only theory lectures without any code practice.

🎯 PPT learning materials provided

🎯 Theory note test provided for review

Step-by-step learning content

This course is the last machine learning curriculum among the three revised (5->3) curricula.

Lecture Preview

Easy to understand mathematical content with visual aids Step-by-step approach to reach desired content

Softmax is derived through examples rather than explaining mathematical concepts first.

Intuitive materials and explanations that give you a quick overview of how LDA works.

Evaluation indicators that can be calculated and understood directly through data examples

Solve your curiosity about what mathematicians assume in an easy-to-understand way

Organize the contents learned into a single flow

Recommended for
these people

Who is this course right for?

  • 😎 Someone who wants to learn various machine learning models?

  • 😎 Knows ML, but thinks it's separate from DL?

  • 😎 Interested in ML from a probabilistic view?

  • 😎 People who want to deeply understand machine learning but are intimidated by math?

  • 🎶 Mom-Friendly Machine Learning (Basic Theory) Student

  • 🎶 Machine Learning Even My Mom Can Do (Basic Hands-on) Student

Need to know before starting?

  • 📌 Machine Learning Basics

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Curriculum

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16 lectures ∙ (3hr 10min)

Course Materials:

Lecture resources
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