Coursera – Data Wrangling with Python Specialization

Coursera – Data Wrangling with Python Specialization
English | Tutorial | Size: 833 MB


Launch your career in Data Science. By mastering the skills and techniques covered in these courses, students will be better equipped to handle the challenges of real-world data analysis.

Coursera – Data Wrangling with Python Specialization

Coursera – Data Wrangling with Python Specialization
English | Tutorial | Size: 880 MB


Description: Launch your career in Data Science. By mastering the skills and techniques covered in these courses, students will be better equipped to handle the challenges of real-world data analysis

Coursera – Data Wrangling with Python Specialization

Coursera – Data Wrangling with Python Specialization
English | Tutorial | Size: 880.20 MB


Launch your career in Data Science. By mastering the skills and techniques covered in these courses, students will be better equipped to handle the challenges of real-world data analysis.

LinkedIn Learning – Data Wrangling in Excel with Power Query

LinkedIn Learning – Data Wrangling in Excel with Power Query
English | Tutorial | Size: 246.68 MB


Most Excel users still wrangle their data with hard-to-read formulas, copying and pasting, and a myriad of steps they’ve perfected over the years to get the data just right.

PluralSight – Data Wrangling With Python-REBAR

PluralSight – Data Wrangling With Python-REBAR
English | Size: 136.68 MB
Category: Tutorial


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, 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.