Movielogr

movie poster

Average Rating: 6/10

View on: IMDb | TMDb

Yogi Bear (2010)

Directed by Eric Brevig

Most recently watched by noahphex, jenerator

Overview

A documentary filmmaker travels to Jellystone Park to shoot a project and soon crosses paths with Yogi Bear, his sidekick Boo-Boo, and Ranger Smith.

Rated PG | Length 80 minutes

Actors

Dan Aykroyd | Anna Faris | Justin Timberlake | Greg Johnson | T.J. Miller | Patricia Aldersley | Tom Cavanagh | David Stott | Andrew Daly | Nate Corddry | Michael Morris | Tim McLachlan | William Wallace | Barry Duffield | Josh Robert Thompson | Hayden Vernon | Suzana Srpek | Anna Dawson

  BENCHMARKS  
Loading Time: Base Classes  0.0013
Controller Execution Time ( Overview / Movie Detail )  0.1133
Total Execution Time  0.1146
  GET DATA  
No GET data exists
  MEMORY USAGE  
513,280 bytes
  POST DATA  
No POST data exists
  URI STRING  
overview/movie_detail/3406
  CLASS/METHOD  
overview/movie_detail
  DATABASE:  movielogr_dev (Overview:$db)   QUERIES: 9 (0.0185 seconds)  (Hide)
0.0009  
SELECT GET_LOCK('a7c9476e5ccf92143738e61d6dd2b81b', 300) AS ci_session_lock ?>
0.0026  
SELECT `data`
FROM `ml_sessions`
WHERE `id` = 'b7a289ea2bae5d9fb9fd04718f12a56cedad4669'
AND `ip_address` = '216.73.216.6' ?>
0.0025  
SELECT `MT`.`title_id`, `MT`.`tmdb_id`
FROM `ml_movie_titles` `MT`
WHERE `MT`.`title_id` = 3406
 LIMIT 1 ?>
0.0040  
SET SESSION group_concat_max_len = 12288 ?>
0.0031  
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` = 3406
GROUP BY `title_id` ?>
0.0001  
SET SESSION group_concat_max_len = 1024 ?>
0.0008  
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` = 3406
ORDER BY `date_viewed` DESC
 LIMIT 10 ?>
0.0012  
SELECT AVG(NULLIF(rating_id, 2)) AS `avg_rating`
FROM `ml_movies`
WHERE `title_id` = 3406 ?>
0.0032  
SELECT `star_rating`
FROM `ml_movie_ratings_ten_star`
WHERE `rating_id` = 14 ?>
  HTTP HEADERS  (Show)
  SESSION DATA  (Show)
  CONFIG VARIABLES  (Show)