• 🌙 Community Spirit

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

Data analysis and visualization using Python (1 Viewer)

Currently reading:
 Data analysis and visualization using Python (1 Viewer)

Recently searched:

mayoufi

Member
Amateur
LV
5
Joined
Oct 22, 2023
Threads
3,471
Likes
389
Awards
12
Credits
1,958©
Cash
0$
Th POFKHBk24AUtAoBB3pzLNF68SigY9P51


MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 92 Lectures ( 10h 39m ) | Size: 5.5 GB
The student will gain knowledge of Python libraries pandas and matplotlib and data analysis and vizualization
What you'll learn
Basics in pandas library
File reading and writing
Data visualization using matplotlib
Data wrangling
Data agreggation
Time series

Requirements
The student should have basic understanding of Python programming language

Description
The course title is “Data analysis and visualization using Python” and it is using the pandas library.It is divided into 7 chapters.Chapter 1 talk about creation of pandas objects such as: Series, DataFrame, Index. This chapter includes basic arithmetic with pandas object. Also it describes other operations with pandas object such as: reindexing, deleting data from axis, filtering, indexing and sorting.Chapter 2 describes statistical methods applied in pandas objects and manipulation with data inside pandas object. It describes pandas operations such as: unique values, value counting, manipulation with missing data, filtering and filling missing data.Chapter 3 talks about reading and writing data from text file format and Microsoft Excel. Partial reading of large text files is also described with an example.Chapter 4 describes data visualization using matplotlib library. It has example about the following graphs: line, scatter, bar and pie. Setting title, legend and labels in the graph is also describes with some practical examples. Drawing from pandas object is also described.Chapter 5 talks about data wrangling. Merging Series object and DataFrame object is described with practical examples. Combining pandas objects and merging them is part of this chapter.Chapter 6 talks about various forms of data aggregation and grouping. Creating and using pivot tables is also described.Chapter 7 talks about time Series creation and manipulation. Classes DatetimeIndex and Period are included in the description of the chapter. Indexing and selection is described with practical examples.

Who this course is for
Aspiring data analyst
Data analyst
Students that want to have knowledge about pandas library
 

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