Skip to content

A repository demonstrating the use of the Pandas software library to analyse and present data for a mock independent gaming company

Notifications You must be signed in to change notification settings

presitkaur/pandas-challenge

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

20 Commits
 
 
 
 
 
 
 
 

Repository files navigation

Pandas Challenge

Useful links for this repository

Instructions

Congratulations! After a lot of hard work in the data munging mines, you've landed a job as Lead Analyst for an independent gaming company. You've been assigned the task of analyzing the data for their most recent fantasy game Heroes of Pymoli.

Like many others in its genre, the game is free-to-play, but players are encouraged to purchase optional items that enhance their playing experience. As a first task, the company would like you to generate a report that breaks down the game's purchasing data into meaningful insights. Your final report should include each of the following:

Player Count

* Total Number of Players

Purchasing Analysis (Total)

* Number of Unique Items
* Average Purchase Price
* Total Number of Purchases
* Total Revenue

Gender Demographics

* Percentage and Count of Male Players
* Percentage and Count of Female Players
* Percentage and Count of Other / Non-Disclosed

Purchasing Analysis (Gender)

The below each broken by gender

* Purchase Count
* Average Purchase Price
* Total Purchase Value
* Average Purchase Total per Person by Gender

Age Demographics

The below each broken into bins of 4 years (i.e. <10, 10-14, 15-19, etc.)

* Purchase Count
* Average Purchase Price
* Total Purchase Value
* Average Purchase Total per Person by Age Group

Top Spenders

Identify the the top 5 spenders in the game by total purchase value, then list (in a table):

* SN
* Purchase Count
* Average Purchase Price
* Total Purchase Value

Most Popular Items

Identify the 5 most popular items by purchase count, then list (in a table):

* Item ID
* Item Name
* Purchase Count
* Item Price
* Total Purchase Value

Most Profitable Items

Identify the 5 most profitable items by total purchase value, then list (in a table):

* Item ID
* Item Name
* Purchase Count
* Item Price
* Total Purchase Value

About

A repository demonstrating the use of the Pandas software library to analyse and present data for a mock independent gaming company

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published