Friends TV Show Analysis




 Friends is an American situation comedy about six 20-30s-year old friends living in the New York City borough of Manhattan. It was created by David Crane and Marta Kauffman, which premiered on NBC on September 22, 1994.

Some information about Friends

Format: Sitcom

Episode Count: 236

No. Of Seasons: 10

Run time: 20–22 minutes (per episode, edited) Up to 30 minutes (per episode, uncut)

Network(s): NBC (original network)

First Aired: September 22, 1994

Last Aired: May 6, 2004

Characters:

Jennifer Aniston as Rachel Green

Courtney Cox as Monica Geller

Lisa Kudrow as Phoebe Buffay

Matt Le Blanc as Joey Tribbiani

Matthew Perry as Chandler Bing

David Schwimmer as Ross Geller

Friends received positive reviews throughout its run, and became one of the most popular sitcoms of its time. The series won many awards and was nominated for 63 Primetime Emmy Awards. The series was also very successful in the ratings, consistently ranking in the top ten in the final primetime ratings.

Tool used:- Jupyter Notebook

On this Script, we will be doing EDA on FRIENDS.



Now Lets begin with the Data Visualizations .

From above table and plot, we can observe that Season 3 and Season 6 has the maximum episodes i.e 25. Also, Season 10 has the minimum episodes i.e 18.



 From above plot, longest season 6 is with 582 mins and shortest season 10 is with 421 mins.




From above visualization, it is quite evident that 1st season has the lowest average star rating while the last season has the most average star ratings.




From above table and plot, it is quite evident that season finale and "The One Where Everybody Finds Out" have the highest Stars



Gary Halvorson and Kevin Bright has directed the maximum no of episodes, 54 each.



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If you are interested in the code script and the data both are available on my Github repository. I hope you liked it.

Github profile :- https://github.com/Saurabh657

THANKS FOR READING.
 










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