• 🌙 Community Spirit

    Ramadan Mubarak! To honor this month, Crax has paused NSFW categories. Wishing you peace and growth!

IT & Software Data Wrangling with Python 3 (1 Viewer)

Currently reading:
 IT & Software Data Wrangling with Python 3 (1 Viewer)

Covers web development, programming, AI, cloud computing, DevOps, and cybersecurity.
Recently searched:

baladia

Member
Amateur
LV
5
Joined
Feb 22, 2024
Threads
1,667
Likes
171
Awards
10
Credits
1,697©
Cash
0$

58de25bbd7b6047cc58dfab1caf836e8.jpeg

Duration: 1h 20m | Video: .MP4, 1280x720 30 fps | Audio: AAC, 48 kHz, 2ch | Size: 304 MB
Genre: eLearning | Language: English
In this course, Data Wrangling with Python 3, you'll learn about various functions and procedures that will help you get your data in order, providing a clean and well-constructed dataset for further data analysis and machine learning.
Machine Learning and Data analytics in general follows the garbage-in/garbage-out principle. If you want to learn from or predict based on your data, you need to make sure that data is well constructed and cleaned. This course, Data Wrangling with Python 3, is aimed at helping you do exactly that. First, you'll see how to merge data from different sources using the methods concat, append, and merge. Next, you'll discover how to combine data into groups. The primary function used here is groupby. In the next two sections, you'll explore how to transform and normalize data. You'll learn why these processes are necessary, and then proceed to see how they work in practice. Finally, you'll examine important processes such as One Hot Encoding, which enables further processing during data analysis. When you're finished with this course, you'll have thorough knowledge of data wrangling which will help you immensely during your data analysis and machine learning projects.
Link:
 

Create an account or login to comment

You must be a member in order to leave a comment

Create account

Create an account on our community. It's easy!

Log in

Already have an account? Log in here.

Tips
Recently searched:

Similar threads

Users who are viewing this thread

Top Bottom