Note If at any point in your project this library stops working, returning errors for standalone functions or the
Movie
class, first try updating it withpip install -U rottentomatoes-python
, and if it's still not working, submit an issue on this repo. 99% of the time it'll "stop working" because the Rotten Tomatoes site schema has changed, meaning some changes to web scraping and extraction under the hood are necessary to make everything work again. Tests run on this repo automatically once a day, so breaking changes to the Rotten Tomatoes site should be caught by myself or a maintainer pretty quickly.
This package allows you to easily fetch Rotten Tomatoes scores and other movie data such as genres, without the use of the official Rotten Tomatoes API. The package scrapes their website for the data. I built this because unfortunately, to get access to their API, you have to submit a special request which takes an inordinate amount of time to process, or doesn't go through at all.
The package now, by default, scrapes the Rotten Tomatoes search page to find the true url of the first valid movie response (is a movie and has a tomatometer). This means queries that previously didn't work because their urls had a unique identifier or a year-released prefix, now work. The limitation of this new mechanism is that you only get the top response, and when searching for specific movies (sequels, by year, etc.) Rotten Tomatoes seems to return the same results as the original query. So, it's difficult to use specific queries to try and get the desired result movie as the top response. See #4 for more info on this.
There is now an API deployed to make querying multiple movies and getting several responses easier. The endpoint is https://rotten-tomatoes-api.ue.r.appspot.com and it's open and free to use. Visit /docs
or /redoc
in the browser to view the endpoints. Both endpoints live right now are browser accessible meaning you don't need an HTTP client to use the API.
- https://rotten-tomatoes-api.ue.r.appspot.com/movie/bad_boys for JSON response of the top result
- https://rotten-tomatoes-api.ue.r.appspot.com/search/bad_boys for a JSON response of all valid results
You can either call the standalone functions tomatometer
, audience_score
, genres
, etc., or use the Movie
class to only pass the name and have each attribute be fetched automatically. If you use the Movie
class, you can print all attributes by printing the object itself, or by accessing each attribute individually.
The weighted score is calculated using the formula
Basic usage examples:
import rottentomatoes as rt
print(rt.tomatometer("happy gilmore"))
# Output: 61
# Type: int
print(rt.audience_score('top gun maverick'))
# Output: 99
# Type: int
print(rt.rating('everything everywhere all at once'))
# Output: R
# Type: str
print(rt.genres('top gun'))
# Output: ['Action', 'Adventure']
# Type: list[str]
print(rt.weighted_score('happy gilmore'))
# Output: 69
# Type: int
print(rt.year_released('happy gilmore'))
# Output: 1996
# Type: str
print(rt.actors('top gun maverick', max_actors=5))
# Output: ['Tom Cruise', 'Miles Teller', 'Jennifer Connelly', 'Jon Hamm', 'Glen Powell']
# Type: list[str]
# --- Using the Movie class ---
movie = rt.Movie('top gun')
print(movie)
# Output
# Top Gun, PG, 1h 49m.
# Released in 1986.
# Tomatometer: 58
# Weighted score: 66
# Audience Score: 83
# Genres - ['Action', 'Adventure']
# Prominent actors: Tom Cruise, Kelly McGillis, Anthony Edwards, Val Kilmer, Tom Skerritt.
# Type: str
print(movie.weighted_score)
# Output: 66
# Type: int
print(movie.url)
# Output: 'https://www.rottentomatoes.com/m/top_gun_maverick'
# Type: str
If you're using this package within a larger program, it's useful to know what exceptions are raised (and when) so they can be caught and handled.
When any call is made to scrape the Rotten Tomatoes website (Tomatometer, Audience Score, Genres, etc.), if a proper movie page wasn't returned (can be due to a typo in name entry, duplicate movie names, etc.), a LookupError
is raised, printing the attempted query url.
v0.3.0
makes the Movie
class 19x more efficient. Data attained from scraping Rotten Tomatoes is temporarily cached and used to parse various other attributes. To test the performance difference, I used two separate virtual environments, old
and venv
. rottentomatoes-python==0.2.5
was installed on old
, and rottentomatoes-python==0.3.0
was installed on venv
. I then ran the same script, shown below, using each environment (Python 3.10.4).
import rottentomatoes as rt
from time import perf_counter
def test() -> None:
start = perf_counter()
movie = rt.Movie('top gun maverick')
print('\n', movie, sep='')
print(f"That took {perf_counter() - start} seconds.")
if __name__ == "__main__":
test()
The results:
⯠deactivate && source old/bin/activate && python test.py
Top Gun Maverick, PG-13, 2h 11m.
Released in 2022.
Tomatometer: 97
Weighted score: 97
Audience Score: 99
Genres - ['Action', 'Adventure']
That took 6.506246249999094 seconds.
⯠deactivate && source venv/bin/activate && python test.py
Top Gun Maverick, PG-13, 2h 11m.
Released in 2022.
Tomatometer: 97
Weighted score: 97
Audience Score: 99
Genres - ['Action', 'Adventure']
Prominent actors: Tom Cruise, Miles Teller, Jennifer Connelly, Jon Hamm, Glen Powell.
That took 0.3400420409961953 seconds.
The API is deployed at https://rotten-tomatoes-api.ue.r.appspot.com/. It has two endpoints currently, /movie/{movie_name}
and /search/{movie_name}
. The first will pull one movie, the top result. The second will pull a list of all valid movie results.
The first, with movie_name="bad boys"
:
{
"name": "Bad Boys for Life",
"tomatometer": 76,
"audience_score": 96,
"weighted_score": 82,
"genres": [
"Action",
"Comedy"
],
"rating": "R",
"duration": "2h 4m",
"year": "2020",
"actors": [
"Will Smith",
"Martin Lawrence",
"Vanessa Hudgens",
"Jacob Scipio",
"Alexander Ludwig"
],
"directors": [
"Adil El Arbi",
"Bilall Fallah"
]
}
The second, with movie_name="bad boys"
:
{
"movies": [
{
"name": "Bad Boys for Life",
"tomatometer": 76,
"audience_score": 96,
"weighted_score": 82,
"genres": [
"Action",
"Comedy"
],
"rating": "R",
"duration": "2h 4m",
"year": "2020",
"actors": [
"Will Smith",
"Martin Lawrence",
"Vanessa Hudgens",
"Jacob Scipio",
"Alexander Ludwig"
],
"directors": [
"Adil El Arbi",
"Bilall Fallah"
]
},
{
"name": "Bad Boys II",
"tomatometer": 23,
"audience_score": 78,
"weighted_score": 41,
"genres": [
"Action",
"Comedy"
],
"rating": "R",
"duration": "2h 26m",
"year": "2003",
"actors": [
"Martin Lawrence",
"Will Smith",
"Jordi MollĂ ",
"Gabrielle Union",
"Peter Stormare"
],
"directors": [
"Michael Bay"
]
},
{
"name": "Bad Boys",
"tomatometer": 43,
"audience_score": 78,
"weighted_score": 54,
"genres": [
"Action",
"Comedy"
],
"rating": "R",
"duration": "1h 58m",
"year": "1995",
"actors": [
"Martin Lawrence",
"Will Smith",
"TĂ©a Leoni",
"Tchéky Karyo",
"Theresa Randle"
],
"directors": [
"Michael Bay"
]
},
{
"name": "Bad Boys",
"tomatometer": 90,
"audience_score": 82,
"weighted_score": 87,
"genres": [
"Drama"
],
"rating": "R",
"duration": "2h 3m",
"year": "1983",
"actors": [
"Sean Penn",
"Reni Santoni",
"Esai Morales",
"Jim Moody",
"Ally Sheedy"
],
"directors": [
"Rick Rosenthal 2"
]
}
]
}