강의

멘토링

커뮤니티

AI Technology

/

Deep Learning & Machine Learning

Hands-On Machine Learning 2

This course covers the content of the Amazon bestseller <Hands-On Machine Learning, 2nd Edition>. You will learn various machine learning algorithms and evaluation methods using Scikit-Learn, a representative machine learning library. Additionally, you will build a foundation in both theory and practice, ranging from artificial neural networks to reinforcement learning, using the most famous deep learning libraries, TensorFlow and Keras. This course is not yet complete. One to two lectures will be added every week.

(4.7) 54 reviews

6,588 learners

Level Basic

Course period Unlimited

  • haesunpark
Tensorflow
Tensorflow
Machine Learning(ML)
Machine Learning(ML)
Deep Learning(DL)
Deep Learning(DL)
Keras
Keras
Reinforcement Learning(RL)
Reinforcement Learning(RL)
Tensorflow
Tensorflow
Machine Learning(ML)
Machine Learning(ML)
Deep Learning(DL)
Deep Learning(DL)
Keras
Keras
Reinforcement Learning(RL)
Reinforcement Learning(RL)
Thumbnail

Reviews from Early Learners

Reviews from Early Learners

4.7

5.0

Seongpil Yim

35% enrolled

Professor Park Hae-seon's lectures are really helpful. Thank you so much for teaching hands-on machine learning like a textbook. I will see you often in the future.

5.0

Da Kang

26% enrolled

I started learning from a book translated by Professor Park Hae-seon and I am learning well. Thank you.

5.0

김영태

35% enrolled

Thank you for the detailed lecture even though it is free.

What you will gain after the course

  • Hands-on Machine Learning and Deep Learning using Scikit-Learn, TensorFlow, and Keras

  • Linear Regression, Ridge Regression, Lasso Regression, Logistic Regression

  • Support Vector Machines, Decision Trees, Ensemble Algorithms

  • Unsupervised learning models such as PCA, Kernel PCA, KMeans, DBSCAN, and Gaussian Mixture

  • Artificial Neural Networks, CNN, RNN, Attention Mechanism, Transformer Algorithm

  • TF Data, Distributed Processing, GAN, Autoencoder, Reinforcement Learning Algorithms

Experience the Amazon bestseller, <Hands-On Machine Learning, 2nd Edition>, through video!

Lecture Structure📚

PART 1 - Machine Learning

  • CHAPTER 1 Machine Learning at a Glance
  • CHAPTER 2 Machine Learning Project from End to End
  • CHAPTER 3 Classification
  • CHAPTER 4 Training Models
  • CHAPTER 5 Support Vector Machines
  • CHAPTER 6 Decision Trees
  • CHAPTER 7 Ensemble Learning and Random Forests
  • CHAPTER 8 Dimensionality Reduction
  • CHAPTER 9 Unsupervised Learning

PART 2 - Neural Networks and Machine Learning

  • CHAPTER 10 Introduction to Artificial Neural Networks with Keras
  • CHAPTER 11 Training Deep Neural Networks
  • CHAPTER 12 Custom Models and Training with TensorFlow
  • CHAPTER 13 Loading and Preprocessing Data with TensorFlow
  • CHAPTER 14 Computer Vision Using Convolutional Neural Networks
  • CHAPTER 15 Processing Sequences Using RNNs and CNNs
  • CHAPTER 16 Natural Language Processing with RNNs and Attention
  • CHAPTER 17 Representation Learning and Generative Learning Using Autoencoders and GANs
  • CHAPTER 18 Reinforcement Learning
  • CHAPTER 19 Training and Deploying TensorFlow Models at Scale

Recommended for
these people

Who is this course right for?

  • I recommend this to those who want to learn machine learning and deep learning theory and practice using Hands-On Machine Learning, 2nd Edition.

  • Those who want to learn the Keras API and TensorFlow in detail

Need to know before starting?

  • Python, NumPy

Hello
This is

22,788

Learners

395

Reviews

131

Answers

4.9

Rating

10

Courses

I majored in mechanical engineering, but since graduation, I have been consistently reading and writing code. I am a Google AI/Cloud GDE and a Microsoft AI MVP. I run the TensorFlow blog (tensorflow.blog) and am interestingly exploring the boundaries between software and science by writing and translating books on machine learning and deep learning.

 

ml-dl-book-roadmap.png.webp

 

He has authored "Deep Learning from Scratch" (Hanbit Media, 2025), "Machine Learning + Deep Learning Alone (Revised Edition)" (Hanbit Media, 2025), "Data Analysis with Python Alone" (Hanbit Media, 2023), "The Art of Conversing with ChatGPT" (Hanbit Media, 2023), and "Do it! Introduction to Deep Learning" (Easys Publishing, 2019).

 

He has translated dozens of books into Korean, including "Large Language Models: Fast Track to the Core!" (Insight, 2025), "Machine Learning: Fast Track to the Core!" (Insight, 2025), "Learning LLMs by Building from Scratch" (Gilbut, 2025), "Hands-On LLMs" (Hanbit Media, 2025), "Machine Learning Q & AI" (Gilbut, 2025), "Mathematics for Developers" (Hanbit Media, 2024), "Machine Learning Pocket Reference with Python" (Hanbit Media, 2024), "Machine Learning with PyTorch and Scikit-Learn" (Gilbut, 2023), "What Is ChatGPT Doing ... and Why Does It Work?" (Hanbit Media, 2023), "Hands-On Machine Learning, 3rd Edition" (Hanbit Media, 2023), "Generative Deep Learning, 2nd Edition" (Hanbit Media, 2023), "Python for the Coding Brain" (Hanbit Media, 2023), "Natural Language Processing with Transformers" (Hanbit Media, 2022), "Deep Learning with Python, 2nd Edition" (Gilbut, 2022), "AI and Machine Learning for Coders" (Hanbit Media, 2022), "Hands-On Gradient Boosting with XGBoost and Scikit-Learn" (Hanbit Media, 2022), "Deep Learning with TensorFlow.js" (Gilbut, 2022), and "Introduction to Machine Learning with Python, 2nd Revised Edition" (Hanbit Media, 2022).

Curriculum

All

23 lectures ∙ (14hr 36min)

Published: 
Last updated: 

Reviews

All

54 reviews

4.7

54 reviews

  • lsp901104님의 프로필 이미지
    lsp901104

    Reviews 2

    Average Rating 5.0

    5

    35% enrolled

    Professor Park Hae-seon's lectures are really helpful. Thank you so much for teaching hands-on machine learning like a textbook. I will see you often in the future.

    • tlsdnr46952888님의 프로필 이미지
      tlsdnr46952888

      Reviews 15

      Average Rating 4.9

      5

      26% enrolled

      I started learning from a book translated by Professor Park Hae-seon and I am learning well. Thank you.

      • haesunpark
        Instructor

        I'm glad it helped. Thanks for leaving a comment! :)

    • rokmckyt2518님의 프로필 이미지
      rokmckyt2518

      Reviews 2

      Average Rating 5.0

      5

      35% enrolled

      Thank you for the detailed lecture even though it is free.

      • haesunpark
        Instructor

        Thank you for leaving a great review! :)

    • hyongsu44님의 프로필 이미지
      hyongsu44

      Reviews 868

      Average Rating 5.0

      5

      100% enrolled

      Thank you for the machine learning lecture. I think I learned it easily with the explanation of a familiar book.

      • haesunpark
        Instructor

        Thank you for the great review!

    • krlim12024814님의 프로필 이미지
      krlim12024814

      Reviews 1

      Average Rating 5.0

      5

      35% enrolled

      I really understand...

    Free

    haesunpark's other courses

    Check out other courses by the instructor!

    Similar courses

    Explore other courses in the same field!