Skip to content

Using SQL to manipulate and clean the data, analyzing to discover trends and patterns, dig insights in an understandable format.

Notifications You must be signed in to change notification settings

deva-246/DataAnalysis-on-Realtime-Swiggydata-using-SQL

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

15 Commits
 
 

Repository files navigation

DataAnalysis-on-Realtime-Swiggydata-using-SQL

Using SQL to manipulate and clean the data, analyzing to discover trends and patterns, dig insights in an understandable format.

Datasets

The fields present in Items dataset are,

 1. id 2. Order_id 3. Name 4. Is_veg/not 

The fields present in Orders dataset are,

 1. id 2. order_id 3. order_Total 4. restaurent name 5. order_time 6. rain_mode 7. on_time 

Business Queries and solutions

  1. Count of unique number of orders that are placed ?

    image

    95 unique orders are placed according to this dataset.

  2. At what modes of rain were orders placed?

    image

    There are 3 modes namely -Heavy,moderate,drizzle with 0,2 and 5 as it's respective identifiers from the dataset.

  3. What are the uniqiue restaurent names from the overall orders that have been placed?

image

There are 49 unique restaurents name present in the order history in the given dataset.

  1. Which Restaurent holds most of the orders ?

    image

    image

    image

    image

    The Bowl company is the restaurent which holds the highest number of orders according to the swiggy customers present in the dataset. from the above results we can also categorize the restaurents as most favourite , favourite and least favourite by which required recommendations can be activated by the company to attract its customer to place an order.

About

Using SQL to manipulate and clean the data, analyzing to discover trends and patterns, dig insights in an understandable format.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published