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Getting Started with Python Data Analysis Using Public Data

There was a rumor that Ediya Coffee always opens its stores near Starbucks. How much of a difference is there really between the store locations of Ediya and Starbucks? Will the real estate price fluctuation trends from 2013 to 2019 be reflected in apartment pre-sale prices as well? What kind of parks are in my neighborhood? How can we best utilize the data available on the Public Data Portal? The goal is to become familiar with Python and various data analysis libraries by working with different types of data through public data.

(4.9) 340 reviews

6,361 learners

Level Basic

Course period Unlimited

Python
Python
Pandas
Pandas
Numpy
Numpy
Python
Python
Pandas
Pandas
Numpy
Numpy

Reviews from Early Learners

Reviews from Early Learners

4.9

5.0

마낙또

20% enrolled

I am a student who is taking on a new challenge at a fairly young age. I used to do similar data analysis at my previous company, but if there were such convenient and good tools, I would have been able to increase productivity at my company. Through the instructor's lecture, I was able to learn that data analysis can be done easily, broadly, and deeply through Python notebooks. I am so grateful that it gave me a new perspective on approaching data. The lecture is so easy to understand and informative that I would like to recommend it to others.

5.0

hsw400

36% enrolled

I am studying in the US. It is more informative than the lectures by famous professors at school.

5.0

Jang Daehyuk

24% enrolled

I think this is the best lecture in terms of data analysis (loading, preprocessing, EDA, visualization). While studying Python data analysis methods and coding examples, I think, "What can I do with this?" I think this lecture provides answers and clues to that. Also, many of the methods used in parts are very useful. In addition, it was very good that it was renewed by supplementing recent data and explanations. Conclusion: If you want pandas, seaborn, matplotlib + @, just listen. If you are a beginner, you will never regret it.

What you will gain after the course

  • Data Analysis and Visualization using Python

  • Practice using public data

  • Data preprocessing and statistical analysis

  • Map visualization and text data processing

 



After collecting precious feedback while running the course for a year,
in 2020, <Getting Started with Python Data Analysis using Public Data> has been completely revamped!

✍🏻 Both the code and videos have been completely rewritten.

• Content has been added to cover a much wider variety of graphs than before (heatmaps, histograms, distribution plots, scatter plots, regression plots, etc.) and to easily draw subplots.

📝 We provide both the practice code and the result code.

• Please use the practice file (01-apt-price-input.ipynb), which provides a simple guide so you can follow along with the code while watching the video, and the file with the results displayed (01-apt-price-output.ipynb).

 

 


Related Roadmap

Python Real-World Data Analysis for Liberal Arts Majors 
A data science roadmap applicable to actual work!
  Included in this course 

Recommended for
these people

Who is this course right for?

  • A beginner who wants to learn Python

  • People interested in data analysis

  • Researchers who want to utilize public data

  • Students who want to practice by working with real-world data

Need to know before starting?

  • Python Basic Syntax

Hello
This is todaycode

19,781

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Reviews

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Answers

4.9

Rating

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Curriculum

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84 lectures ∙ (14hr 10min)

Course Materials:

Lecture resources
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Reviews

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340 reviews

4.9

340 reviews

  • wonseok님의 프로필 이미지
    wonseok

    Reviews 15

    Average Rating 4.7

    5

    100% enrolled

    Hello? This is Sebastian Junior 3rd. I have been looking for various lectures, but when it comes to learning Python preprocessing and visualization, Professor Park Jo-eun's lecture seems to be the best. I sincerely thank you for making such a great lecture! My personal wish is that you make lectures by grouping Kaggle practice by topic so that it can be applied in practice..! ㅎㅎㅎ Thank you again!

    • daehynk3548님의 프로필 이미지
      daehynk3548

      Reviews 8

      Average Rating 5.0

      5

      24% enrolled

      I think this is the best lecture in terms of data analysis (loading, preprocessing, EDA, visualization). While studying Python data analysis methods and coding examples, I think, "What can I do with this?" I think this lecture provides answers and clues to that. Also, many of the methods used in parts are very useful. In addition, it was very good that it was renewed by supplementing recent data and explanations. Conclusion: If you want pandas, seaborn, matplotlib + @, just listen. If you are a beginner, you will never regret it.

      • todaycode
        Instructor

        Thank you for your thoughtful review! Thanks to you, it has been a great help in updating all the courses up to Chapter 5. In particular, Chapter 5 has added content on analyzing and visualizing text data, such as extracting frequency from existing structured data, and implementing information masking for personal information protection using regular expressions using email, phone number, and car registration number. We will continue to update the content through feedback in the future :)

    • chadeng842490님의 프로필 이미지
      chadeng842490

      Reviews 6

      Average Rating 5.0

      5

      98% enrolled

      Hello This lecture is a really good lecture that gave me a rough idea of Python. This lecture may not cover 100%, but it taught me the basics so that I could search and find things through this lecture. Thank you so much. It's the best.

      • mudcook1083님의 프로필 이미지
        mudcook1083

        Reviews 1

        Average Rating 5.0

        5

        20% enrolled

        I am a student who is taking on a new challenge at a fairly young age. I used to do similar data analysis at my previous company, but if there were such convenient and good tools, I would have been able to increase productivity at my company. Through the instructor's lecture, I was able to learn that data analysis can be done easily, broadly, and deeply through Python notebooks. I am so grateful that it gave me a new perspective on approaching data. The lecture is so easy to understand and informative that I would like to recommend it to others.

        • hsw4000847님의 프로필 이미지
          hsw4000847

          Reviews 5

          Average Rating 5.0

          5

          36% enrolled

          I am studying in the US. It is more informative than the lectures by famous professors at school.

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