For Makeovermonday week 24, it was about Tourism density index i.e. how many tourists come to country compare to population.

Here is the original viz by Intrepid Travel:

Data is available on data.world week 24:

Here is what I did:

  • Got the idea of ratio from Eva’s Blog and tried to show number of tourists per 100 local people
  • Used rows and columns method using groups in dataset (inspired by Andy’s output)
  • Make it easier to see for each country given in dataset

Click on the viz to use the interactive version.

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This week’s #workoutwednesday by Rody Zakovich was about playing with dates. challenge was about comparing current period with previous period of same range of days.

Requirements:

  • User can select a Start and End date for the Current Period
  • The “Previous Period” contains the same number of days as the Current Period, and ends the Day before the Start Date
  • Both the “Current” and “Previous” Periods must be on the same Date Axis (No dual Axis!)
  • The Current Period must be distinguishable from the previous period
  • Must show the Current Period Range, as well as, the Prior Period Range

This week data uses the superstore dataset

Here is my solution with the requirements given:

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This week in #makeovermonday, it was tough and sensitive topic on Gender pay gap in UK.

Data was shared by Gov.uk

Here is the original report and how it looks:

Graphic displaying the mean bonus pay gap for HMRC

 

Data is available on data.world week 23.

Here is what I did:

  • First attempt I tried to create few calculations and pivot the data within Tableau to create bar charts which did not yield any productive output
  • I tried working with scatter plots and various other form of visualisation but was missing something
  • Final attempt was to create a gantt chart to show difference in male to female ratio in different pay scale quartile.

Below is the screenshot of Tableau file (click on Image for interactive version):

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This week’s #workoutwednesday was about a problem that can only be solved using table calculations. Idea was to find which city contributes the most sales to each states.

Requirements

  • Use only table calculations
  • The bar length is the total sales of each state
  • City must be included in the view.
  • Display only one mark per state.
  • Label each bar by the city with the highest sales, sales for that city, and the total sales for that state.
  • No level of detail calculations allowed.

This week uses the superstore dataset.  You can get it here at data.world

Below is my attempt to design solution with the above requirements:

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This week in #makeovermonday, we are looking at real estate’s price data to see World’s most expensive prime property.

Data was shared by The world Economic Forum (weforum)

Here is the original report and how it looks:

 

Data is available on data.world week 22.

Here is what I did:

  • Use of simple chart to show the how big a place can be acquired in $1 million USD. I thought to display data in rather simple way then to complicate things.

Below is the Tableau file:

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