Skip to content

Create visualizations using Tableau to analyze New York bike sharing data.

Notifications You must be signed in to change notification settings

ybhuva/Bikesharing_new

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

5 Commits
 
 
 
 

Repository files navigation

Project Overview

This project is an analysis of New York Citi Bike data, using data visualization tools to explore the viability of a bike-sharing business in Des Moines.

Resources

Software: Python 3.7.7, Anaconda Navigator 1.9.12, Conda 4.8.4, Jupyter Notebook 6.0.3, Tableau Public 2020.3.2

Results

Deployed Tableau Analysis

link to dashboard

New York Citi Bike data visualizations for August 2019

1

  • There were over 2.3 million rides for the month of August 2019.
  • 81% of the users were subscribers. 65% of the users were confirmed males and 25% were confirmed females.
  • There is a wide range of the age of the users. Younger users tend to use the service for longer rides.
  • Top ride starting locations are in the most touristic and busy areas, as we see here in Manhattan.

August Peak Hours

2

  • Highest activity hours are from 5:00 PM to 7:00 PM and require the most resources mobilized.
  • The activity from 2:00 AM to 5:00 AM is low so this would be the window for bike maintenance.

Checkout times for users

3

  • Bikes are mostly checked out for 4 to 6 hours.

Checkout times by Gender

4

  • Male users take approximately 3 times more rides than the female users.

Trips by weekday and gender

5

6

  • Most weekday rides are around 7:00 AM to 9 AM and 5:00 PM to 7:00 PM.
  • Weekend rides are highest from 10:00 AM to 7:00 PM.
  • Those rides are mostly taken by male users.

Summary

The data shows high activity of the bike sharing service in New York during the month of August 2019. The far majority of the rides were in the very busy Manhattan Island, taken by male users during morning and evening rush hours. This implies that Citi Bike services are used as an alternative to public transportation by commuting workers. Additional analysis would be beneficial by :

  • comparing data for different months to determine trends across the year,
  • including weather data to find the correlation between the weather and the rides.

About

Create visualizations using Tableau to analyze New York bike sharing data.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published