강의

멘토링

커뮤니티

BEST
AI Technology

/

Deep Learning & Machine Learning

Kaggle Machine Learning for Beginners Learn from Industry Professionals - ML Engineer Practical Tips

Learn the basics of machine learning step by step through various Kaggle examples, and learn vivid project experiences and practical tips from hard-to-access field machine learning engineers all at once.

(4.6) 22 reviews

317 learners

Level Basic

Course period Unlimited

  • AISchool
  • Daniel Park
Kaggle
Kaggle
Machine Learning(ML)
Machine Learning(ML)
EDA
EDA
Kaggle
Kaggle
Machine Learning(ML)
Machine Learning(ML)
EDA
EDA

Reviews from Early Learners

Reviews from Early Learners

4.6

5.0

도전적인 기린

100% enrolled

It was a great help in learning the basics of handling various machine learning algorithms.

5.0

조종호

18% enrolled

Thank you for the great lecture. It was great to learn about the basics of header files!

5.0

tjsduq8836

100% enrolled

It seems to be excellent for understanding the overall flow of machine learning. I've gotten a feel for it, so I'm going to buy the book and study it in earnest. I think it'll make studying easier. Thank you.

What you will gain after the course

  • Concept of machine learning

  • How to improve machine learning model performance

  • How to use Google Colab

  • Machine learning libraries - scikit-learn, xgboost

  • Machine Learning/Data Analysis Library - Numpy, Pandas

  • Data visualization library - matplotlib, seaborn

  • How to proceed with a machine learning practical project

Learn the basics of machine learning with various Kaggle examples.
Practical tips from working engineers, all in one place! 😀

📌 Brief introduction to the curriculum

0. What is Machine Learning (ML)?

  • Let's get a firm grasp of the concepts of machine learning.

1. A simple practice environment that does not require complex installation.

  • Introducing Google Colab

2. Introduction to scikit-learn & My First Machine Learning Model

  • Let's predict weight based on height.

3. Introduction to Kaggle and Kaggle Competition

4. Linear Regression Algorithm (Ridge, Lasso, ElasticNet) & How Much is My House Worth?

  • Let's predict Boston real estate prices.

5. Random Forest, a popular and powerful predictor

  • Let's predict whether it will rain tomorrow using a machine learning model.

6. XGBoost, the algorithm favored by Kaggle winners

  • Let's predict the occurrence of a stroke using XGBoost.

7. Practical Stories from a Machine Learning Engineer

  • Experience the daily life of a machine learning engineer.

8. Practical DS/ML Tips from Professionals

Kaggle Machine Learning for Beginners: Practical Tips for ML Engineers

  • Through Kaggle projects, you will acquire knowledge related to machine learning (machine learning libraries - Numpy, Pandas, Matplotlib, Seaborn, Scikit-Learn, xgboost, etc.) and learn how to apply machine learning in practice.
  • This course is designed to help you learn the fundamentals of machine learning step-by-step through various Kaggle examples, and even provide practical tips for machine learning projects from a machine learning engineer at a major IT company.

Recommended for
these people

Who is this course right for?

  • For those who are new to machine learning

  • Anyone who wants to learn data analysis techniques

  • Anyone who wants to get a job as a machine learning engineer

  • Anyone curious about the work process after getting a job as a machine learning engineer

  • Anyone who wants to get practical tips from machine learning engineers working at large IT companies

Need to know before starting?

  • Basic Python experience

Hello
This is

9,518

Learners

726

Reviews

354

Answers

4.6

Rating

31

Courses

Curriculum

All

60 lectures ∙ (7hr 19min)

Published: 
Last updated: 

Reviews

All

22 reviews

4.6

22 reviews

  • 도전적인 기린님의 프로필 이미지
    도전적인 기린

    Reviews 1

    Average Rating 5.0

    5

    100% enrolled

    It was a great help in learning the basics of handling various machine learning algorithms.

    • aischool
      Instructor

      Hello. Thank you for taking the time to take the class~!. Thank you for the detailed course review~. I will try my best to create a more satisfactory course. Have a nice day!

  • charliejo님의 프로필 이미지
    charliejo

    Reviews 2

    Average Rating 5.0

    5

    18% enrolled

    Thank you for the great lecture. It was great to learn about the basics of header files!

    • aischool
      Instructor

      Hello. Thank you for taking the time to take the class~!. Thank you for the detailed course review~. I will try my best to create a more satisfactory course. Have a nice day!

  • gmail님의 프로필 이미지
    gmail

    Reviews 6

    Average Rating 4.0

    4

    100% enrolled

    I heard it well.

    • aischool
      Instructor

      Hello. Thank you for taking the time to take the class~!. Thank you for the detailed course review~. I will try my best to create a more satisfactory course. Have a nice day!

  • sunyeop2님의 프로필 이미지
    sunyeop2

    Reviews 2

    Average Rating 5.0

    5

    100% enrolled

    It seems to be excellent for understanding the overall flow of machine learning. I've gotten a feel for it, so I'm going to buy the book and study it in earnest. I think it'll make studying easier. Thank you.

    • aischool
      Instructor

      Hello. Thank you for taking the time to take the class~!. Thank you for the detailed course review~. I will try my best to create a more satisfactory course. Have a nice day!

  • valuestudioquant0065님의 프로필 이미지
    valuestudioquant0065

    Reviews 1

    Average Rating 5.0

    5

    30% enrolled

    I was able to build a good foundation. I'm satisfied.

    • aischool
      Instructor

      Hello. Thank you for taking the time to take the class~!. Thank you for the detailed course review~. I will try my best to create a more satisfactory course. Have a nice day!

$46.20

AISchool's other courses

Check out other courses by the instructor!

Similar courses

Explore other courses in the same field!