Movielogr

movie poster

Average Rating: 7.5/10

View on: IMDb | TMDb

The Squid and the Whale (2005)

Directed by Noah Baumbach

Most recently watched by sleestakk

Overview

Based on the true childhood experiences of Noah Baumbach and his brother, The Squid and the Whale tells the touching story of two young boys dealing with their parents’ divorce in Brooklyn in the 1980s.

Rated R | Length 81 minutes

Actors

Laura Linney | Ken Leung | Jeff Daniels | Anna Paquin | William Baldwin | Jesse Eisenberg | Peggy Gormley | Peter Newman | Owen Kline | Britta Phillips | Dean Wareham | Alexandra Daddario | Michael Countryman | Maryann Plunkett | Jo Yang | Michael Santiago | Elizabeth Meriwether | Halley Feiffer | Adam Rose | Jonathan Baumbach | David Benger | James Hamilton | Alan Wilkis | Eli Gelb | Henry Glovinsky | Bobby Shue | Molly Barton | Bo Berkman | Matthew Kaplan | Simon Kaplan | Matthew Kirsch | Daniella Markowicz | Ben Schrank | Amy Srebnick | Josh Srebnick | Emma Straub | Wayne Lawson | Juan Torriente | Patricia Towers | Greta Kline | Melissa Meyer | Benjamin Smolen | Nico Baumbach | Hector Otero | Andrew Kaempfer

  BENCHMARKS  
Loading Time: Base Classes  0.0016
Controller Execution Time ( Overview / Movie Detail )  0.0306
Total Execution Time  0.0322
  GET DATA  
No GET data exists
  MEMORY USAGE  
515,320 bytes
  POST DATA  
No POST data exists
  URI STRING  
overview/movie_detail/5494
  CLASS/METHOD  
overview/movie_detail
  DATABASE:  movielogr_dev (Overview:$db)   QUERIES: 10 (0.0065 seconds)  (Hide)
0.0004  
SELECT 1
FROM `ml_sessions`
WHERE `id` = '1c5b51a22c6ee46906e07eda76488e79ddc5972e'
AND `ip_address` = '216.73.216.6' ?>
0.0003  
SELECT GET_LOCK('1e9b3d7d54bf7d3fd91f779f765d01ad', 300) AS ci_session_lock ?>
0.0003  
SELECT `data`
FROM `ml_sessions`
WHERE `id` = '1c5b51a22c6ee46906e07eda76488e79ddc5972e'
AND `ip_address` = '216.73.216.6' ?>
0.0004  
SELECT `MT`.`title_id`, `MT`.`tmdb_id`
FROM `ml_movie_titles` `MT`
WHERE `MT`.`title_id` = 5494
 LIMIT 1 ?>
0.0003  
SET SESSION group_concat_max_len = 12288 ?>
0.0024  
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` = 5494
GROUP BY `title_id` ?>
0.0014  
SET SESSION group_concat_max_len = 1024 ?>
0.0004  
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` = 5494
ORDER BY `date_viewed` DESC
 LIMIT 10 ?>
0.0003  
SELECT AVG(NULLIF(rating_id, 2)) AS `avg_rating`
FROM `ml_movies`
WHERE `title_id` = 5494 ?>
0.0003  
SELECT `star_rating`
FROM `ml_movie_ratings_ten_star`
WHERE `rating_id` = 17 ?>
  HTTP HEADERS  (Show)
  SESSION DATA  (Show)
  CONFIG VARIABLES  (Show)