Movielogr

movie poster

View on: IMDb | TMDb

Bend It Like Beckham (2002)

Directed by Gurinder Chadha

Overview

Jess Bhamra, the daughter of a strict Indian couple in London, is not permitted to play organized soccer, even though she is 18. When Jess is playing for fun one day, her impressive skills are seen by Jules Paxton, who then convinces Jess to play for her semi-pro team. Jess uses elaborate excuses to hide her matches from her family while also dealing with her romantic feelings for her coach, Joe.

Rated PG-13 | Length 112 minutes

Actors

Keira Knightley | Frank Harper | Jonathan Rhys Meyers | Anupam Kher | Shaheen Khan | Juliet Stevenson | Ameet Chana | Shobu Kapoor | Preeya Kalidas | Archie Panjabi | Ace Bhatti | Parminder Nagra | Sarita Khajuria | Pooja Shah | Shaznay Lewis

  BENCHMARKS  
Loading Time: Base Classes  0.0019
Controller Execution Time ( Overview / Movie Detail )  0.0349
Total Execution Time  0.0369
  GET DATA  
No GET data exists
  MEMORY USAGE  
513,984 bytes
  POST DATA  
No POST data exists
  URI STRING  
overview/movie_detail/6668
  CLASS/METHOD  
overview/movie_detail
  DATABASE:  movielogr_dev (Overview:$db)   QUERIES: 10 (0.0056 seconds)  (Hide)
0.0004  
SELECT 1
FROM `ml_sessions`
WHERE `id` = 'de0cdc9f043db56df9473b66fa0bf59d6037421a'
AND `ip_address` = '216.73.216.6' ?>
0.0002  
SELECT GET_LOCK('073a456976d2605460d3abdd1a9c40fa', 300) AS ci_session_lock ?>
0.0003  
SELECT `data`
FROM `ml_sessions`
WHERE `id` = 'de0cdc9f043db56df9473b66fa0bf59d6037421a'
AND `ip_address` = '216.73.216.6' ?>
0.0003  
SELECT `MT`.`title_id`, `MT`.`tmdb_id`
FROM `ml_movie_titles` `MT`
WHERE `MT`.`title_id` = 6668
 LIMIT 1 ?>
0.0003  
SET SESSION group_concat_max_len = 12288 ?>
0.0034  
SELECT `MT`.`title_id`, `title`, `prefix`, `year`, `imdb_link`, `imdb_id`, `MT`.`tmdb_id`, `overview`, `certification`, `runtime`, MAX(MP.filename) AS filename, GROUP_CONCAT(DISTINCT(DR.director_name) ORDER BY DR.tmdb_director_id ASC SEPARATOR "|") AS directors, GROUP_CONCAT(DISTINCT(DR.tmdb_director_id) ORDER BY DR.tmdb_director_id ASC SEPARATOR "|") AS director_ids, GROUP_CONCAT(DISTINCT(ACT.actor_name) ORDER BY ACT.tmdb_actor_id ASC SEPARATOR "|") AS actors, GROUP_CONCAT(DISTINCT(ACT.tmdb_actor_id) ORDER BY ACT.tmdb_actor_id ASC SEPARATOR "|") AS actor_ids
FROM `ml_movie_titles` `MT`
LEFT JOIN `ml_movie_posters` `MP` ON `MT`.`title_id` = `MP`.`title_id`
LEFT JOIN `ml_junction_movies_directors` `JMD` ON `MT`.`title_id` = `JMD`.`title_id`
LEFT JOIN `ml_directors_new` `DR` ON `JMD`.`tmdb_director_id` = `DR`.`tmdb_director_id`
LEFT JOIN `ml_junction_movies_actors` `JMA` ON `MT`.`title_id` = `JMA`.`title_id`
LEFT JOIN `ml_actors_new` `ACT` ON `JMA`.`tmdb_actor_id` = `ACT`.`tmdb_actor_id`
WHERE `MT`.`title_id` = 6668
GROUP BY `title_id` ?>
0.0001  
SET SESSION group_concat_max_len = 1024 ?>
0.0003  
SELECT `username`, `date_viewed`, `MV`.`movie_id`
FROM `ml_users` `MU`
JOIN `ml_movies` `MV` ON `MV`.`user_id` = `MU`.`user_id`
JOIN `ml_movie_titles` `MT` ON `MT`.`title_id` = `MV`.`title_id`
WHERE `MT`.`title_id` = 6668
ORDER BY `date_viewed` DESC
 LIMIT 10 ?>
0.0002  
SELECT AVG(NULLIF(rating_id, 2)) AS `avg_rating`
FROM `ml_movies`
WHERE `title_id` = 6668 ?>
0.0002  
SELECT `star_rating`
FROM `ml_movie_ratings_ten_star`
WHERE `rating_id` = 0 ?>
  HTTP HEADERS  (Show)
  SESSION DATA  (Show)
  CONFIG VARIABLES  (Show)