The results below are likely only meaningful to subject matter experts because the source dataset employs abbreviations, jargon and/or otherwise non-obvious labels. You may get in touch to help improve the source data, or you may browse Analyst-2 to find more accessible datasets.

đŸ« Web Development Courses from Udemy

1000 collected samples, technical information (yamqwe/web-development-courses-from-udemye)   []

About this dataset

>

Background

Udemy is a massive online open course (MOOC) web application. Within Udemy, a student can learn nearly anything. You may wonder, why would anyone take one of these courses? If you use Google’s Trends app, you can enter in different search terms and compare the world-wide volume of searches for that search term.

For example, I put in the terms, who, what, when, where, why and how. In addition, I furthered the comparison and added the terms, how to, what are, who is, why are, when do.

According to the trends on Google, obviously the worlds wants to know how to do things and this is exactly what Udemy does. It teaches people how to do things.

Methodology

I scraped the Udemy website and pulled many published courses for the topics of Graphic Design, Business Finance, Web Development and Musical Instruments.

Source

For the full study, see The Concept Center

This dataset was created by Chase Willden and contains around 1000 samples along with Price, Num Reviews, technical information and other features such as: - Published Time - Id - and more.

How to use this dataset

> - Analyze Num Subscribers in relation to Unnamed: 11 - Study the influence of Is Paid on Is Paid - More datasets

Acknowledgements

If you use this dataset in your research, please credit Chase Willden

Start A New Notebook!

Data summary

  • File 'WebDevelopment.csv'

    • Table ‘WebDevelopment’ consists of 1198 data rows along 16 dimensions: ‘id’, ‘title’, ‘url’, ‘isPaid’, ‘price’, ‘numSubscribers’, ‘numReviews’, ‘numPublishedLectures’, ‘instructionalLevel’, ‘contentInfo’ and six other dimensions

Size: 64.4 KBSource: KaggleLast updated: 2022-02-13 15:50

Analyst-2 explores entire data repositories and data lakes, autonomously analyzing each dataset using the Inspirient Automated Analytics Engine.

If you would like Analyst-2 to surface insights in your company's data repository or data lake, please get in touch!

Creative Commons License

These analysis results by Inspirient GmbH are licensed under a Creative Commons Attribution 4.0 International License in conjunction with the licence of the source dataset.