question_id int64 0 16.1k | db_id stringclasses 259
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16,060 | pilot_1 | bird:test.json:1156 | Count the number of entries for each plane name. | SELECT count(*) , plane_name FROM pilotskills GROUP BY plane_name | [
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16,061 | book_publishing_company | bird:train.json:189 | Name the publisher which has the most titles published in 1991. | SELECT T2.pub_name FROM titles AS T1 INNER JOIN publishers AS T2 ON T1.pub_id = T2.pub_id WHERE STRFTIME('%Y', T1.pubdate) = '1991' GROUP BY T1.pub_id, T2.pub_name ORDER BY COUNT(T1.title_id) DESC LIMIT 1 | [
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16,062 | european_football_1 | bird:train.json:2747 | How many teams playing in divisions in Greece have ever scored 4 or more goals? | SELECT COUNT(DISTINCT CASE WHEN T1.FTHG >= 4 THEN HomeTeam ELSE NULL end) + COUNT(DISTINCT CASE WHEN T1.FTAG >= 4 THEN AwayTeam ELSE NULL end) FROM matchs AS T1 INNER JOIN divisions AS T2 ON T1.Div = T2.division WHERE T2.country = 'Greece' | [
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16,063 | cre_Students_Information_Systems | bird:test.json:469 | How are all the achievements described? List the achievement detail and the type description. | SELECT T1.achievement_details , T2.achievement_type_description FROM Achievements AS T1 JOIN Ref_Achievement_Type AS T2 ON T1.achievement_type_code = T2.achievement_type_code | [
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16,064 | aan_1 | bird:test.json:980 | What are the titles and paper ids for papers written by Mckeown? | SELECT T1.title , T1.paper_id FROM Paper AS T1 JOIN Author_list AS T2 ON T1.paper_id = T2.paper_id JOIN Author AS T3 ON T3.author_id = T2.author_id WHERE T3.name LIKE "%Mckeown%" | [
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16,065 | chicago_crime | bird:train.json:8666 | What is the total number of crimes that happened in Bridgeport with beat less than 1000? | SELECT SUM(CASE WHEN T2.beat < 1000 THEN 1 ELSE 0 END) FROM Community_Area AS T1 INNER JOIN Crime AS T2 ON T2.community_area_no = T1.community_area_no WHERE T1.community_area_name = 'Bridgeport' | [
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16,066 | retail_world | bird:train.json:6396 | Which supplier supplies the most amount of products? | SELECT T2.CompanyName FROM Products AS T1 INNER JOIN Suppliers AS T2 ON T1.SupplierID = T2.SupplierID GROUP BY T2.SupplierID, T2.CompanyName ORDER BY COUNT(T1.ProductName) DESC LIMIT 1 | [
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16,067 | movie_2 | bird:test.json:1807 | Find the title of the movie that is played in the Odeon theater. | SELECT T1.title FROM movies AS T1 JOIN movietheaters AS T2 ON T1.code = T2.movie WHERE T2.name = 'Odeon' | [
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16,068 | train_station | spider:train_spider.json:6606 | Show all locations that have train stations with at least 15 platforms and train stations with more than 25 total passengers. | SELECT DISTINCT LOCATION FROM station WHERE number_of_platforms >= 15 AND total_passengers > 25 | [
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16,069 | retail_world | bird:train.json:6420 | How many owners are located in Mexico? | SELECT COUNT(ContactTitle) FROM Customers WHERE Country = 'Mexico' AND ContactTitle = 'Owner' | [
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16,071 | beer_factory | bird:train.json:5311 | What credit card is the most used in the purchase of non-alcoholic beer? | SELECT T2.CreditCardType FROM rootbeer AS T1 INNER JOIN `transaction` AS T2 ON T1.RootBeerID = T2.RootBeerID INNER JOIN rootbeerbrand AS T3 ON T1.BrandID = T3.BrandID WHERE T3.Alcoholic = 'FALSE' GROUP BY T2.CreditCardType ORDER BY COUNT(T2.CreditCardType) DESC LIMIT 1 | [
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16,072 | superstore | bird:train.json:2433 | What is the profit from selling the "O'Sullivan Living Dimensions 2-Shelf Bookcases"? | SELECT DISTINCT T1.Profit FROM central_superstore AS T1 INNER JOIN product AS T2 ON T1.`Product ID` = T2.`Product ID` WHERE T2.`Product Name` = 'O''Sullivan Living Dimensions 2-Shelf Bookcases' | [
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16,073 | movie | bird:train.json:769 | Among the actors starred in Die Hard 2, list their net worth and birth date of actors with a height between 60 to 65. | SELECT T3.NetWorth, T3.`Date of Birth` FROM movie AS T1 INNER JOIN characters AS T2 ON T1.MovieID = T2.MovieID INNER JOIN actor AS T3 ON T3.ActorID = T2.ActorID WHERE T1.Title = 'Die Hard 2' AND T3.`Height (Inches)` BETWEEN 60 AND 65 | [
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16,074 | restaurant | bird:train.json:1685 | List all counties where there is no Bakers Square Restaurant & Pie Shop. | SELECT DISTINCT T2.county FROM generalinfo AS T1 INNER JOIN geographic AS T2 ON T1.city = T2.city WHERE T1.label != 'bakers square restaurant & pie shop' | [
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16,075 | mondial_geo | bird:train.json:8322 | List all islands that are greater than the island on which Warwickshire is located. | SELECT DISTINCT Name FROM island WHERE Area > ( SELECT DISTINCT T3.Area FROM city AS T1 INNER JOIN locatedOn AS T2 ON T1.Name = T2.City INNER JOIN island AS T3 ON T3.Name = T2.Island WHERE T1.Province = 'Warwickshire' ) | [
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16,076 | device | spider:train_spider.json:5061 | Return the names and locations of shops, ordered by name in alphabetical order. | SELECT Shop_Name , LOCATION FROM shop ORDER BY Shop_Name ASC | [
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16,077 | flight_1 | spider:train_spider.json:401 | What is the average distance and average price for flights from Los Angeles. | SELECT avg(distance) , avg(price) FROM Flight WHERE origin = "Los Angeles" | [
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16,078 | hr_1 | spider:train_spider.json:3461 | Find employee with ID and name of the country presently where (s)he is working. | SELECT T1.employee_id , T4.country_name FROM employees AS T1 JOIN departments AS T2 ON T1.department_id = T2.department_id JOIN locations AS T3 ON T2.location_id = T3.location_id JOIN countries AS T4 ON T3.country_id = T4.country_id | [
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"id": 0,
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"value": "employee_id"
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{
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"type": "table",
"value": "departments"
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{
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"type": "co... | [
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16,079 | student_loan | bird:train.json:4426 | State the number of students do not have payment due. | SELECT COUNT(name) FROM no_payment_due WHERE bool = 'neg' | [
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"type": "column",
"value": "name"
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16,080 | cre_Theme_park | spider:train_spider.json:5888 | Tell me the price ranges for all the hotels. | SELECT price_range FROM HOTELS | [
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"id": 1,
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"value": "hotels"
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16,081 | coinmarketcap | bird:train.json:6265 | Which crytocurrency was not opened on 2013/5/3? | SELECT T1.name FROM coins AS T1 INNER JOIN historical AS T2 ON T1.id = T2.coin_id WHERE T2.date = '2013-05-03' AND T2.open IS NULL | [
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"value": "2013-05-03"
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"id": 4,
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"value": "coin_id"
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{
"id": 1,
"type": "table",
"value": "coins"
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16,082 | product_catalog | spider:train_spider.json:322 | Give me the average and minimum price (in Euro) of the products. | SELECT avg(price_in_euros) , min(price_in_euros) FROM catalog_contents | [
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16,083 | university_basketball | spider:train_spider.json:1002 | What are the total enrollments of universities of each affiliation type? | SELECT sum(enrollment) , affiliation FROM university GROUP BY affiliation | [
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"value": "university"
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"id": 2,
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"value": "enrollment"
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16,084 | sales | bird:train.json:5390 | Calculate the total quantity of products purchased by customer called Adrian. | SELECT SUM(T2.Quantity) FROM Customers AS T1 INNER JOIN Sales AS T2 ON T1.CustomerID = T2.CustomerID WHERE T1.FirstName = 'Adam' | [
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"value": "quantity"
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"id": 1,
"type": "table",
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16,085 | cs_semester | bird:train.json:860 | Please list the full names of all the students who are research assistants with the highest research capability. | SELECT T1.f_name, T1.l_name FROM student AS T1 INNER JOIN RA AS T2 ON T1.student_id = T2.student_id WHERE T2.capability = 5 | [
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"value": "student"
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"id": 0,
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"va... | [
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16,086 | aircraft | spider:train_spider.json:4833 | Show the names of aircrafts that are associated with both an airport named "London Heathrow" and an airport named "London Gatwick" | SELECT T1.Aircraft FROM aircraft AS T1 JOIN airport_aircraft AS T2 ON T1.Aircraft_ID = T2.Aircraft_ID JOIN airport AS T3 ON T2.Airport_ID = T3.Airport_ID WHERE T3.Airport_Name = "London Heathrow" INTERSECT SELECT T1.Aircraft FROM aircraft AS T1 JOIN airport_aircraft AS T2 ON T1.Aircraft_ID = T2.Aircraft_ID JOIN airport AS T3 ON T2.Airport_ID = T3.Airport_ID WHERE T3.Airport_Name = "London Gatwick" | [
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"value": "London Gatwick"
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{
"id": 2,
"type": "column",
"value": "airport_name"
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{
"id": 8,
"... | [
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