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84 lines
4.3 KiB
Python

#!/usr/bin/env python3
import requests
import pandas as pd
import numpy as np
import os
import csv
MIN_MOVIES = 42 # Only keep relations for actors that have made more than this many movies
#-----------------DOWNLOAD .GZ FILES FROM IMDB DATABASE-----------------#
def download_url(url):
print("Downloading:", url)
file_name_start_pos = url.rfind("/") + 1
file_name = url[file_name_start_pos:]
if os.path.isfile(file_name):
print("Already downloaded: skipping")
return
r = requests.get(url, stream=True)
r.raise_for_status()
with open(file_name, 'wb') as f:
for chunk in r.iter_content(chunk_size=4096):
f.write(chunk)
return url
urls = ["https://datasets.imdbws.com/name.basics.tsv.gz",
"https://datasets.imdbws.com/title.principals.tsv.gz",
"https://datasets.imdbws.com/title.basics.tsv.gz"]
for url in urls:
download_url(url)
os.makedirs("data", exist_ok=True) # Generate (recursively) folders, ignores the comand if they already exists
#------------------------------FILTERING------------------------------#
print("Filtering actors...")
df_attori = pd.read_csv(
'name.basics.tsv.gz', sep='\t', compression='gzip',
usecols=['nconst', 'primaryName', 'primaryProfession'], # Considering only this columns
dtype={'primaryName': 'U', 'primaryProfession': 'U'}, # Both are unsigned integers
converters={'nconst': lambda x: int(x.lstrip("nm0"))}) # All actors starts with nm0, we are just cleaning the output
df_attori.query('primaryProfession.str.contains("actor") or primaryProfession.str.contains("actress")', inplace=True)
# A lot of actors/actresses do more than one job (director etc..), with this comand I take all the names that have the string "actor" or "actress" in their profession. In this way both someone who is classified as "actor" or as "actor, director" are taken into consideration
print("Filtering films...")
df_film = pd.read_csv(
'title.basics.tsv.gz', sep='\t', compression='gzip',
usecols=['tconst', 'primaryTitle', 'isAdult', 'titleType'], # Considering only this columns
dtype={'primaryTitle': 'U', 'titleType': 'U'}, # Both are unsigned integers
converters={'tconst': lambda x: int(x.lstrip("t0")), 'isAdult': lambda x: x != "0"}) # # All movies starts with t0, we are just cleaning the output. Then remove all adult movies
df_film.query('not isAdult and titleType in ["movie", "tvSeries", "tvMovie", "tvMiniSeries"]',
inplace=True) # There are a lot of junk categories considered in IMDb, we are considering all the non Adult movies in this whitelist
filtered_tconsts = df_film["tconst"].to_list()
print("Filtering relations...")
df_relazioni = pd.read_csv(
'title.principals.tsv.gz', sep='\t', compression='gzip',
usecols=['tconst', 'nconst','category'], # Considering only this columns
dtype={'category': 'U'}, # Unsigned integer
converters={'nconst': lambda x: int(x.lstrip("nm0")), 'tconst': lambda x: int(x.lstrip("t0"))}) # Cleaning
df_relazioni.query('(category == "actor" or category == "actress") and tconst in @filtered_tconsts', inplace=True)
# Returns an array of unique actor ids (nconsts) and an array of how many times they appear (counts) => the number of movies they appear in
nconsts, counts = np.unique(df_relazioni["nconst"].to_numpy(), return_counts=True)
filtered_nconsts = nconsts[counts>=MIN_MOVIES]
df_relazioni.query("nconst in @filtered_nconsts", inplace=True)
# Now select only films and actors that have at lest a relation
print("Re-filtering actors...")
nconsts_with_relations = df_relazioni["nconst"].unique()
df_attori.query("nconst in @nconsts_with_relations", inplace=True)
print("Re-filtering films...")
tconsts_with_relations = df_relazioni["tconst"].unique()
df_film.query("tconst in @tconsts_with_relations", inplace=True)
# Write the filtered files
df_attori.to_csv('data/Attori.txt', sep='\t', quoting=csv.QUOTE_NONE, escapechar='\\', columns=['nconst', 'primaryName'], header=False, index=False)
df_film.to_csv('data/FilmFiltrati.txt', sep='\t', quoting=csv.QUOTE_NONE, escapechar='\\', columns=['tconst', 'primaryTitle'], header=False, index=False)
df_relazioni.to_csv('data/Relazioni.txt', sep='\t', quoting=csv.QUOTE_NONE, escapechar='\\', columns=['tconst', 'nconst'], header=False, index=False)
# Takes about 1 min 30 s with MIN_MOVIES = 42 ----> kenobi with k=100 took 3m 48s
# Takes about 3 min with MIN_MOVIES = 20 ----> kenobi with k=100 took 19m 34s