Pandas for Data Analysis

Pandas for Data Analysis

Free Courses : Pandas for Data Analysis

This course is an introductory course to help learners to understand some methods used in  Exploratory Data Analysis-EDA using Pandas. This course is intended for absolute beginners and the course assumes that learners are comfortable coding in Jupyter notebook and have already installed the necessary IDE's for programming in Python.

In this century of big data, it is considered a plus if an individual knows how to manipulate data and clean, and come out with a story about the data and how you can get business insights from such data to improve business.

Pandas is a library popular for data manipulation and data analysis including numerical-tabular data.

You'll learn to use some basic methods to exploring a COVID19 dataset downloaded from the World Health Organization's website.

You will learn to use methods to describe your data, methods to insert new columns into your dataset, methods to identify dulplicated values, methods to drop columns in the dataset, you will learn to do some mathematical computations on columns values such as sum or multiplying values of different columns to create or insert a new column and find null values.


The methods learned in this beginner course can serve as a foundation for which you'll use for any other data analysis projects

It should be noted that the data visualization aspect of the course will be added to the course once they are being edited.


Related Posts:
  1. Tutorial MongoDB bahasa indonesia
  2. Cara Upload File ke Bucket s3
  3. Belajar android untuk pemula
  4. Membuat Fitur Komentar dan Vote Vuejs
  5. Bikin Aplikasi flutter pertama - random word

You can support us by donate with buy us a coffee. We appreciate your donation to our work for share free udemy courses.

Get courses alert everyday on our Telegram Channel. Join Now

Insidelearn Telegram Channel

Share this courses to your friends, community.

10,000+ People trust Insidelearn! Get courses alert on Telegram or Discord.