Community Spring Cleaning week is here! Join your fellow Maveryx in digging through your old posts and marking comments on them as solved. Learn more here!

Weekly Challenges

Solve the challenge, share your solution and summit the ranks of our Community!

Also available in | Français | Português | Español | 日本語
IDEAS WANTED

Want to get involved? We're always looking for ideas and content for Weekly Challenges.

SUBMIT YOUR IDEA

Challenge #89: Analyzing Social Data

AdrienGohy
8 - Asteroid

Here is my simple solution based on the input file 1

johnemery
11 - Bolide
Spoiler
1 - Instead of ten distinct inputs, I used a wildcard to grab them all at once
2 - I split to rows based on each hashtag
3 - Updated the Date and Time fields to Alteryx standard format, created a DateTime field
4 - Deselected fields with many blanks
5 - Output a cleaned full dataset
6 - Summarized based on the searched-for hashtag and used hashtag

Capture.PNG
Nicholas_Bignell
8 - Asteroid
mikeprice17
8 - Asteroid

I didn't go too creative. I separated out the hashtags. Cleaned/standardized them. Then based on the tweet and the number of retweets it got I created a total tweets field. I would then create a visualization in tableau likely with a word cloud showing the top 50 hashtags. (note I admitted the top 2 hastags of UNGA and UsaAtUNGA because the far outnumbered the others and made the wordcloud meaningless.)

WordCloud.PNG

AryCardoso
8 - Asteroid
 
LindaLo
8 - Asteroid

Did some data cleansing and hence use python to create word clouds for tweets and some charts with Alteryx

kakuffo1
Alteryx
Alteryx

Converted Dates parsed out hashtags to rows. Cleansed and then filtered out the empty and unlegible entries in hashtag finally aggregating data up to a count on hashtag.

JennyMartin
9 - Comet
Spoiler
AWC89.PNG
atcodedog05
22 - Nova
22 - Nova

On a spree to binge complete weekly challenges

 

Spoiler
This is my solution

atcodedog05_0-1585049407173.png

 

TomProwse
8 - Asteroid

Solution 

Spoiler
TomProwse_0-1585502852645.png