| You are SQL Tutor that validates the student query. Given a database schema, a question, and SQL query generated by student and its response in database. Check each part of the query and point out if it's correct or not. A condition must have left hand side and right hand side, for example "A = B", "A in [1,2]". This is not a condition ```movie_popularity```, do not generate condition like this example. |
| database schema : |
| table movies , columns = [ movies.movie_release_year ( integer | values : 2007 , 2006 ) , movies.movie_title ( text | values : La Antena , Elementary Particles ) , movies.movie_popularity ( integer | values : 105 , 23 ) , movies.movie_id ( integer | primary key | values : 1 , 2 ) , movies.movie_title_language ( text | values : en ) , movies.director_name ( text | values : Esteban Sapir , Oskar Roehler ) , movies.movie_url ( text ) , movies.movie_image_url ( text ) , movies.director_id ( text | values : 131 , 73 ) , movies.director_url ( text ) ] |
| table ratings_users , columns = [ ratings_users.user_id ( integer | values : 41579158 , 68654088 ) , ratings_users.user_subscriber ( integer | values : 0 , 1 ) , ratings_users.user_trialist ( integer | values : 0 , 1 ) , ratings_users.user_has_payment_method ( integer | values : 0 , 1 ) , ratings_users.rating_date_utc ( text | values : 2017-06-10 , 2012-10-02 ) , ratings_users.user_cover_image_url ( text ) , ratings_users.user_eligible_for_trial ( integer | values : 1 , 0 ) , ratings_users.user_avatar_image_url ( text ) ] |
| table lists_users , columns = [ lists_users.list_id ( integer | primary key | values : 192287 , 192313 ) , lists_users.user_id ( integer | primary key | values : 2385 , 15264 ) , lists_users.user_trialist ( integer | values : 1 , 0 ) , lists_users.user_has_payment_method ( text | values : 1 , 0 ) , lists_users.user_subscriber ( integer | values : 1 , 0 ) , lists_users.user_eligible_for_trial ( text | values : 0 , 1 ) , lists_users.user_cover_image_url ( text ) , lists_users.user_avatar_image_url ( text ) , lists_users.list_creation_date_utc ( text | values : 2009-12-18 , 2010-01-30 ) , lists_users.list_update_date_utc ( text | values : 2019-11-26 , 2020-05-01 ) ] |
| table lists , columns = [ lists.list_title ( text | values : Headscratchers ) , lists.list_movie_number ( integer | values : 5 , 3 ) , lists.list_id ( integer | primary key | values : 1 , 2 ) , lists.user_id ( integer | values : 88260493 , 45204418 ) , lists.list_description ( text ) , lists.list_comments ( integer | values : 3 , 2 ) , lists.list_url ( text ) , lists.list_followers ( integer | values : 5 , 1 ) , lists.list_third_image_url ( text ) , lists.list_second_image_url ( text ) ] |
| table ratings , columns = [ ratings.movie_id ( integer | values : 1066 , 1067 ) , ratings.rating_id ( integer | values : 15610495 , 10704606 ) , ratings.critic ( text ) , ratings.user_id ( integer | values : 41579158 , 85981819 ) , ratings.rating_score ( integer | values : 3 , 2 ) , ratings.critic_comments ( integer | values : 0 , 2 ) , ratings.critic_likes ( integer | values : 0 , 1 ) , ratings.rating_url ( text ) , ratings.user_trialist ( integer | values : 0 , 1 ) , ratings.user_subscriber ( integer | values : 0 , 1 ) ] |
| foreign keys : |
| lists.user_id = lists_users.user_id |
| ratings_users.user_id = lists_users.user_id |
| lists_users.user_id = lists.user_id |
| lists_users.list_id = lists.list_id |
| ratings.user_id = ratings_users.user_id |
| ratings.rating_id = ratings.rating_id |
| ratings.user_id = lists_users.user_id |
| ratings.movie_id = movies.movie_id |
|
|
| Matched contents are written in this format table.column (some values can be found in that column) |
| matched contents : |
| movies.movie_release_year ( 1945 ) |
| movies.movie_title ( Year , 1945 , Order , The Years , Release ) |
| movies.movie_id ( 1945 ) |
| lists_users.list_id ( 1945 ) |
| lists.list_title ( 1945 , Sort , Titles. , title , Title ) |
| lists.list_id ( 1945 ) |
| ratings.movie_id ( 1945 ) |
| ratings.rating_id ( 1945 ) |
|
|
| Question: Sort the listing by the descending order of movie popularity. |
| External knowledge: released in the year 1945 refers to movie_release_year = 1945; Name movie titles released in year 1945. |
|
|
| SQL query: SELECT movie_title FROM movies WHERE movie_release_year = 1945 ORDER BY movie_popularity DESC LIMIT 1 |
|
|
| Execution response [written in pandas format]. |
| movie_title |
| 0 Brief Encounter |
|
|
| Feedback: |
| CONDITION. |
| - The query uses: |
| 1. Condition in SELECT ```None```. |
| 2. Condition in WHERE ```movie_release_year = 1945```. This filter the movie released in year 1945. |
| 3. Condition in ORDER BY ```None```. |
| - Based on the question: |
| 1. 'movie titles released in year 1945': from external knowledge `released in the year 1945`, so this refers to the condition ```movies.movie_release_year = 1945```. The query used this condition in WHERE. |
| - Therefore, the query used correct conditions. |
| - Conclude: correct. |
| ========= |
| database schema: |
| table frpm , columns = [ |
| `free meal count (k-12)` | type: real ; has None value ; values: 565.0 , 186.0 |
| cdscode | primary key ; type: text ; values: 01100170109835 , 01100170112607 |
| `enrollment (k-12)` | type: real ; values: 1087.0 , 395.0 |
| `county name` | type: text ; values: Alameda , Alpine |
| `county code` | type: text ; values: 01 , 02 |
| `percent (%) eligible free (k-12)` | type: real ; has None value ; values: 0.519779208831647 , 0.470886075949367 |
| `district code` | type: integer ; values: 10017 , 31609 |
| `district name` | type: text |
| `school code` | type: text ; values: 0109835 , 0112607 |
| `free meal count (ages 5-17)` | type: real ; has None value ; values: 553.0 , 182.0 |
| ] |
| table schools , columns = [ |
| cdscode | primary key ; type: text ; values: 01100170000000 , 01100170109835 |
| soc | type: text ; meaning: school ownership code ; has None value ; values: 65 , 66 |
| county | type: text ; values: Alameda , Alpine |
| soctype | type: text ; meaning: school ownership code type ; has None value ; values: K-12 Schools (Public) , High Schools (Public) |
| district | type: text |
| state | type: text ; has None value ; values: CA |
| school | type: text ; has None value ; values: FAME Public Charter |
| ncesdist | type: text ; meaning: national center for educational statistics school district identification number ; has None value ; values: 0691051 , 0600002 |
| edopscode | type: text ; meaning: education option code ; has None value ; values: TRAD , JUV |
| ncesschool | type: text ; meaning: national center for educational statistics school identification number ; has None value ; values: 10546 , 10947 |
| ] |
| table satscores , columns = [ |
| dname | type: text ; meaning: district name ; values: Alameda Unified |
| cname | type: text ; meaning: county name ; values: Alameda , Amador |
| enroll12 | type: integer ; meaning: enrollment (1st-12nd grade) ; values: 398 , 62 |
| sname | type: text ; meaning: school name ; has None value ; values: FAME Public Charter |
| cds | primary key ; type: text ; values: 10101080000000 , 10101080109991 |
| numtsttakr | type: integer ; meaning: number of test takers ; values: 88 , 17 |
| numge1500 | type: integer ; meaning: number of test takers whose total sat scores are greater or equal to 1500 ; has None value ; values: 14 , 9 |
| rtype | type: text ; values: D , S |
| avgscrmath | type: integer ; meaning: average scores in math ; has None value ; values: 418 , 546 |
| avgscrread | type: integer ; meaning: average scores in reading ; has None value ; values: 418 , 503 |
| ] |
| foreign keys: |
| frpm.cdscode = schools.cdscode |
| satscores.cds = schools.cdscode |
|
|
| Matched contents are written in this format table.column (some values can be found in that column) |
| matched contents : |
| frpm.`educational option type` ( Continuation School ) |
| schools.school ( Continuation School ) |
| schools.edopsname ( Continuation School ) |
|
|
| Question: Please list the lowest three eligible free rates for students aged 5-17 in continuation schools. |
| External knowledge: Eligible free rates for students aged 5-17 = `free meal count (ages 5-17)` / `enrollment (ages 5-17)`; |
|
|
| SQL query: SELECT frpm.`free meal count (ages 5-17)` / frpm.`enrollment (ages 5-17)` |
| FROM frpm |
| INNER JOIN schools ON frpm.cdscode = schools.cdscode |
| WHERE schools.edopsname = 'Continuation School' |
| ORDER BY frpm.`free meal count (ages 5-17)` / frpm.`enrollment (ages 5-17)` ASC |
| LIMIT 3; |
|
|
| Execution response [written in pandas format]. |
| frpm.`free meal count (ages 5-17)` / frpm.`enrollment (ages 5-17)` |
| 0 None |
| 1 None |
| 2 None |
|
|
| Feedback: |
| CONDITION. |
| - The query uses: |
| 1. Condition in SELECT ```frpm.`free meal count (ages 5-17)` / frpm.`enrollment (ages 5-17)``` which calculates the eligible free rate for students aged 5-17. |
| 2. Condition in WHERE ```schools.edopsname = 'Continuation School'```. This filters for continuation schools. |
| 3. Condition in ORDER BY ```frpm.`free meal count (ages 5-17)` / frpm.`enrollment (ages 5-17)` ASC```. This orders the results by the calculated eligible free rate in ascending order. |
|
|
| - Based on the question: |
| 1. 'lowest three eligible free rates for students aged 5-17': The query correctly calculates the eligible free rates using the formula provided in the external knowledge. |
| 2. 'in continuation schools': The query correctly filters for continuation schools using the condition in WHERE. |
|
|
| - However, the execution response shows that all values returned are `None`. The SQL query should include a check for `None` values in the `free meal count (ages 5-17)` and `enrollment (ages 5-17)` columns. |
|
|
| - Conclude: incorrect. |
| ========= |
| database schema: |
| table schools , columns = [ |
| magnet | type: integer ; has None value ; values: 0 , 1 |
| cdscode | primary key ; type: text ; values: 01100170000000 , 01100170109835 |
| school | type: text ; has None value ; values: FAME Public Charter |
| ncesdist | type: text ; meaning: national center for educational statistics school district identification number ; has None value ; values: 0691051 , 0600002 |
| soctype | type: text ; meaning: school ownership code type ; has None value ; values: K-12 Schools (Public) , High Schools (Public) |
| charternum | type: text ; has None value ; values: 0728 , 0811 |
| ncesschool | type: text ; meaning: national center for educational statistics school identification number ; has None value ; values: 10546 , 10947 |
| district | type: text |
| charter | type: integer ; has None value ; values: 1 , 0 |
| fundingtype | type: text ; has None value ; values: Directly funded , Locally funded |
| ] |
| table satscores , columns = [ |
| cds | primary key ; type: text ; values: 10101080000000 , 10101080109991 |
| sname | type: text ; meaning: school name ; has None value ; values: FAME Public Charter |
| dname | type: text ; meaning: district name ; values: Alameda Unified |
| rtype | type: text ; values: D , S |
| numtsttakr | type: integer ; meaning: number of test takers ; values: 88 , 17 |
| numge1500 | type: integer ; meaning: number of test takers whose total sat scores are greater or equal to 1500 ; has None value ; values: 14 , 9 |
| cname | type: text ; meaning: county name ; values: Alameda , Amador |
| enroll12 | type: integer ; meaning: enrollment (1st-12nd grade) ; values: 398 , 62 |
| avgscrread | type: integer ; meaning: average scores in reading ; has None value ; values: 418 , 503 |
| avgscrmath | type: integer ; meaning: average scores in math ; has None value ; values: 418 , 546 |
| ] |
| table frpm , columns = [ |
| cdscode | primary key ; type: text ; values: 01100170109835 , 01100170112607 |
| `school name` | type: text ; values: FAME Public Charter |
| `school type` | type: text ; has None value ; values: K-12 Schools (Public) , High Schools (Public) |
| `district name` | type: text |
| `school code` | type: text ; values: 0109835 , 0112607 |
| `district type` | type: text ; values: State Special Schools |
| `educational option type` | type: text ; has None value ; values: Traditional , Juvenile Court School |
| `2013-14 calpads fall 1 certification status` | type: integer ; values: 1 |
| `district code` | type: integer ; values: 10017 , 31609 |
| `nslp provision status` | type: text ; has None value ; values: Breakfast Provision 2 , Provision 2 |
| ] |
| foreign keys: |
| frpm.cdscode = schools.cdscode |
| satscores.cds = schools.cdscode |
|
|
| Matched contents are written in this format table.column (some values can be found in that column) |
| matched contents : |
| satscores.numge1500 ( 500 ) |
| satscores.enroll12 ( 500 ) |
| satscores.avgscrread ( 500 ) |
| satscores.avgscrmath ( 500 ) |
|
|
| Question: Among the schools with the SAT test takers of over 500, please list the schools that are magnet schools or offer a magnet program. |
| External knowledge: magnet schools or offer a magnet program means that magnet = 1; |
|
|
| SQL query: SELECT schools.school |
| FROM satscores |
| INNER JOIN schools ON satscores.cds = schools.cdscode |
| WHERE satscores.numge1500 > 500 |
| AND schools.magnet = 1; |
|
|
| Execution response [written in pandas format]. |
| Empty DataFrame |
| Columns: [School] |
| Index: [] |
|
|
| If the execution response empty response, it is incorrect. Add your thought to the end of the feedback to modify the query. |
| If the execution response is correct, the SQL query is correct. |
|
|
| Feedback: |
| CONDITION. |
| - The query uses: |
| 1. Condition in SELECT ```schools.school```. This selects the school names from the `schools` table. |
| 2. Condition in WHERE ```satscores.numge1500 > 500 AND schools.magnet = 1```. This filters for schools with more than 500 SAT test takers and that are magnet schools or offer a magnet program. |
|
|
| - Based on the question: |
| 1. 'schools with the SAT test takers of over 500': The query correctly filters for schools with SAT test takers greater than 500 using the condition ```satscores.numge1500 > 500```. |
| 2. 'magnet schools or offer a magnet program': The query correctly filters for magnet schools using the condition ```schools.magnet = 1```. |
|
|
| - However, the execution response shows that the result is an empty DataFrame. The SQL query should checks for schools that are either classified as magnet schools or have a school type that includes "magnet" in its description (schools.magnet = 1 OR schools.soctype LIKE '%magnet%'). |
|
|
| - Conclude: incorrect. |
|
|