Dataset Viewer
Auto-converted to Parquet Duplicate
id
stringlengths
8
8
db_id
stringlengths
2
28
SQL
stringclasses
24 values
question
stringlengths
56
837
difficulty
float64
tables
stringlengths
45
658
prompt
stringlengths
615
1.69k
local002
E_commerce
null
Can you calculate the 5-day symmetric moving average of predicted toy sales for December 5 to 8, 2018, using daily sales data from January 1, 2017, to August 29, 2018, with a simple linear regression model? Finally provide the sum of those four 5-day moving averages?
null
['product_category_name_translation' 'sellers' 'customers' 'geolocation' 'order_items' 'order_payments' 'order_reviews' 'orders' 'products' 'leads_qualified' 'leads_closed']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: E_commerce 2. **Tables**: product_category_name_translation, sellers, customers, geolocation, order_items, order_payments, order_reviews, orders, products, leads_qualified, leads_closed 3. **User Question**: Can you calculate the 5-day symmetric moving average of predicted toy sales for December 5 to 8, 2018, using daily sales data from January 1, 2017, to August 29, 2018, with a simple linear regression model? Finally provide the sum of those four 5-day moving averages? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local003
E_commerce
WITH RecencyScore AS ( SELECT customer_unique_id, MAX(order_purchase_timestamp) AS last_purchase, NTILE(5) OVER (ORDER BY MAX(order_purchase_timestamp) DESC) AS recency FROM orders JOIN customers USING (customer_id) WHERE order_status = 'delivered' GROUP BY customer_unique_id ), FrequencyScore AS ( SELECT customer_unique_id, COUNT(order_id) AS total_orders, NTILE(5) OVER (ORDER BY COUNT(order_id) DESC) AS frequency FROM orders JOIN customers USING (customer_id) WHERE order_status = 'delivered' GROUP BY customer_unique_id ), MonetaryScore AS ( SELECT customer_unique_id, SUM(price) AS total_spent, NTILE(5) OVER (ORDER BY SUM(price) DESC) AS monetary FROM orders JOIN order_items USING (order_id) JOIN customers USING (customer_id) WHERE order_status = 'delivered' GROUP BY customer_unique_id ), -- 2. Assign each customer to a group RFM AS ( SELECT last_purchase, total_orders, total_spent, CASE WHEN recency = 1 AND frequency + monetary IN (1, 2, 3, 4) THEN "Champions" WHEN recency IN (4, 5) AND frequency + monetary IN (1, 2) THEN "Can't Lose Them" WHEN recency IN (4, 5) AND frequency + monetary IN (3, 4, 5, 6) THEN "Hibernating" WHEN recency IN (4, 5) AND frequency + monetary IN (7, 8, 9, 10) THEN "Lost" WHEN recency IN (2, 3) AND frequency + monetary IN (1, 2, 3, 4) THEN "Loyal Customers" WHEN recency = 3 AND frequency + monetary IN (5, 6) THEN "Needs Attention" WHEN recency = 1 AND frequency + monetary IN (7, 8) THEN "Recent Users" WHEN recency = 1 AND frequency + monetary IN (5, 6) OR recency = 2 AND frequency + monetary IN (5, 6, 7, 8) THEN "Potentital Loyalists" WHEN recency = 1 AND frequency + monetary IN (9, 10) THEN "Price Sensitive" WHEN recency = 2 AND frequency + monetary IN (9, 10) THEN "Promising" WHEN recency = 3 AND frequency + monetary IN (7, 8, 9, 10) THEN "About to Sleep" END AS RFM_Bucket FROM RecencyScore JOIN FrequencyScore USING (customer_unique_id) JOIN MonetaryScore USING (customer_unique_id) ) SELECT RFM_Bucket, AVG(total_spent / total_orders) AS avg_sales_per_customer FROM RFM GROUP BY RFM_Bucket
According to the RFM definition document, calculate the average sales per order for each customer within distinct RFM segments, considering only 'delivered' orders. Use the customer unique identifier. Clearly define how to calculate Recency based on the latest purchase timestamp and specify the criteria for classifying RFM segments. The average sales should be computed as the total spend divided by the total number of orders. Please analyze and report the differences in average sales across the RFM segments
null
['product_category_name_translation' 'sellers' 'customers' 'geolocation' 'order_items' 'order_payments' 'order_reviews' 'orders' 'products' 'leads_qualified' 'leads_closed']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: E_commerce 2. **Tables**: product_category_name_translation, sellers, customers, geolocation, order_items, order_payments, order_reviews, orders, products, leads_qualified, leads_closed 3. **User Question**: According to the RFM definition document, calculate the average sales per order for each customer within distinct RFM segments, considering only 'delivered' orders. Use the customer unique identifier. Clearly define how to calculate Recency based on the latest purchase timestamp and specify the criteria for classifying RFM segments. The average sales should be computed as the total spend divided by the total number of orders. Please analyze and report the differences in average sales across the RFM segments ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local004
E_commerce
WITH CustomerData AS ( SELECT customer_unique_id, COUNT(DISTINCT orders.order_id) AS order_count, SUM(payment_value) AS total_payment, JULIANDAY(MIN(order_purchase_timestamp)) AS first_order_day, JULIANDAY(MAX(order_purchase_timestamp)) AS last_order_day FROM customers JOIN orders USING (customer_id) JOIN order_payments USING (order_id) GROUP BY customer_unique_id ) SELECT customer_unique_id, order_count AS PF, ROUND(total_payment / order_count, 2) AS AOV, CASE WHEN (last_order_day - first_order_day) < 7 THEN 1 ELSE (last_order_day - first_order_day) / 7 END AS ACL FROM CustomerData ORDER BY AOV DESC LIMIT 3
Could you tell me the number of orders, average payment per order and customer lifespan in weeks of the 3 custumers with the highest average payment per order, where the lifespan is calculated by subtracting the earliest purchase date from the latest purchase date in days, dividing by seven, and if the result is less than seven days, setting it to 1.0?
null
['product_category_name_translation' 'sellers' 'customers' 'geolocation' 'order_items' 'order_payments' 'order_reviews' 'orders' 'products' 'leads_qualified' 'leads_closed']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: E_commerce 2. **Tables**: product_category_name_translation, sellers, customers, geolocation, order_items, order_payments, order_reviews, orders, products, leads_qualified, leads_closed 3. **User Question**: Could you tell me the number of orders, average payment per order and customer lifespan in weeks of the 3 custumers with the highest average payment per order, where the lifespan is calculated by subtracting the earliest purchase date from the latest purchase date in days, dividing by seven, and if the result is less than seven days, setting it to 1.0? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local007
Baseball
null
Could you help me calculate the average single career span value in years for all baseball players? Please precise the result as a float number. First, calculate the difference in years, months, and days between the debut and final game dates. For each player, the career span is computed as the sum of the absolute number of years, plus the absolute number of months divided by 12, plus the absolute number of days divided by 365. Round each part to two decimal places before summing. Finally, average the career spans and round the result to a float number.
null
['all_star' 'appearances' 'manager_award' 'player_award' 'manager_award_vote' 'player_award_vote' 'batting' 'batting_postseason' 'player_college' 'fielding' 'fielding_outfield' 'fielding_postseason' 'hall_of_fame' 'home_game' 'manager' 'manager_half' 'player' 'park' 'pitching' 'pitching_postseason' 'salary' 'college' 'postseason' 'team' 'team_franchise' 'team_half']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Baseball 2. **Tables**: all_star, appearances, manager_award, player_award, manager_award_vote, player_award_vote, batting, batting_postseason, player_college, fielding, fielding_outfield, fielding_postseason, hall_of_fame, home_game, manager, manager_half, player, park, pitching, pitching_postseason, salary, college, postseason, team, team_franchise, team_half 3. **User Question**: Could you help me calculate the average single career span value in years for all baseball players? Please precise the result as a float number. First, calculate the difference in years, months, and days between the debut and final game dates. For each player, the career span is computed as the sum of the absolute number of years, plus the absolute number of months divided by 12, plus the absolute number of days divided by 365. Round each part to two decimal places before summing. Finally, average the career spans and round the result to a float number. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local008
Baseball
WITH player_stats AS ( SELECT b.player_id, p.name_given AS player_name, SUM(b.g) AS games_played, SUM(b.r) AS runs, SUM(b.h) AS hits, SUM(b.hr) AS home_runs FROM player p JOIN batting b ON p.player_id = b.player_id GROUP BY b.player_id, p.name_given ) SELECT 'Games Played' AS Category, player_name AS Player_Name, games_played AS Batting_Table_Topper FROM player_stats WHERE games_played = (SELECT MAX(games_played) FROM player_stats) UNION ALL SELECT 'Runs' AS Category, player_name AS Player_Name, runs AS Batting_Table_Topper FROM player_stats WHERE runs = (SELECT MAX(runs) FROM player_stats) UNION ALL SELECT 'Hits' AS Category, player_name AS Player_Name, hits AS Batting_Table_Topper FROM player_stats WHERE hits = (SELECT MAX(hits) FROM player_stats) UNION ALL SELECT 'Home Runs' AS Category, player_name AS Player_Name, home_runs AS Batting_Table_Topper FROM player_stats WHERE home_runs = (SELECT MAX(home_runs) FROM player_stats);
I would like to know the given names of baseball players who have achieved the highest value of games played, runs, hits, and home runs, with their corresponding score values.
null
['all_star' 'appearances' 'manager_award' 'player_award' 'manager_award_vote' 'player_award_vote' 'batting' 'batting_postseason' 'player_college' 'fielding' 'fielding_outfield' 'fielding_postseason' 'hall_of_fame' 'home_game' 'manager' 'manager_half' 'player' 'park' 'pitching' 'pitching_postseason' 'salary' 'college' 'postseason' 'team' 'team_franchise' 'team_half']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Baseball 2. **Tables**: all_star, appearances, manager_award, player_award, manager_award_vote, player_award_vote, batting, batting_postseason, player_college, fielding, fielding_outfield, fielding_postseason, hall_of_fame, home_game, manager, manager_half, player, park, pitching, pitching_postseason, salary, college, postseason, team, team_franchise, team_half 3. **User Question**: I would like to know the given names of baseball players who have achieved the highest value of games played, runs, hits, and home runs, with their corresponding score values. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local009
Airlines
null
What is the distance of the longest route where Abakan is either the departure or destination city (in kilometers)?
null
['aircrafts_data' 'airports_data' 'boarding_passes' 'bookings' 'flights' 'seats' 'ticket_flights' 'tickets' 'city_map']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Airlines 2. **Tables**: aircrafts_data, airports_data, boarding_passes, bookings, flights, seats, ticket_flights, tickets, city_map 3. **User Question**: What is the distance of the longest route where Abakan is either the departure or destination city (in kilometers)? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local010
Airlines
null
Distribute all the unique city pairs into the distance ranges 0, 1000, 2000, 3000, 4000, 5000, and 6000+, based on their average distance of all routes between them. Then how many pairs are there in the distance range with the fewest unique city paires?
null
['aircrafts_data' 'airports_data' 'boarding_passes' 'bookings' 'flights' 'seats' 'ticket_flights' 'tickets' 'city_map']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Airlines 2. **Tables**: aircrafts_data, airports_data, boarding_passes, bookings, flights, seats, ticket_flights, tickets, city_map 3. **User Question**: Distribute all the unique city pairs into the distance ranges 0, 1000, 2000, 3000, 4000, 5000, and 6000+, based on their average distance of all routes between them. Then how many pairs are there in the distance range with the fewest unique city paires? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local015
California_Traffic_Collision
null
Please calculate the fatality rate for motorcycle collisions, separated by helmet usage. Specifically, calculate two percentages: 1) the percentage of motorcyclist fatalities in collisions where parties (drivers or passengers) were wearing helmets, and 2) the percentage of motorcyclist fatalities in collisions where parties were not wearing helmets. For each group, compute this by dividing the total number of motorcyclist fatalities by the total number of collisions involving that group. Use the parties table to determine helmet usage (from party_safety_equipment fields).
null
['victims' 'collisions' 'case_ids' 'parties']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: California_Traffic_Collision 2. **Tables**: victims, collisions, case_ids, parties 3. **User Question**: Please calculate the fatality rate for motorcycle collisions, separated by helmet usage. Specifically, calculate two percentages: 1) the percentage of motorcyclist fatalities in collisions where parties (drivers or passengers) were wearing helmets, and 2) the percentage of motorcyclist fatalities in collisions where parties were not wearing helmets. For each group, compute this by dividing the total number of motorcyclist fatalities by the total number of collisions involving that group. Use the parties table to determine helmet usage (from party_safety_equipment fields). ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local017
California_Traffic_Collision
WITH AnnualTotals AS ( SELECT STRFTIME('%Y', collision_date) AS Year, COUNT(case_id) AS AnnualTotal FROM collisions GROUP BY Year ), CategoryTotals AS ( SELECT STRFTIME('%Y', collision_date) AS Year, pcf_violation_category AS Category, COUNT(case_id) AS Subtotal FROM collisions GROUP BY Year, Category ), CategoryPercentages AS ( SELECT ct.Year, ct.Category, ROUND((ct.Subtotal * 100.0) / at.AnnualTotal, 1) AS PercentageOfAnnualRoadIncidents FROM CategoryTotals ct JOIN AnnualTotals at ON ct.Year = at.Year ), RankedCategories AS ( SELECT Year, Category, PercentageOfAnnualRoadIncidents, ROW_NUMBER() OVER (PARTITION BY Year ORDER BY PercentageOfAnnualRoadIncidents DESC) AS Rank FROM CategoryPercentages ), TopTwoCategories AS ( SELECT Year, GROUP_CONCAT(Category, ', ') AS TopCategories FROM RankedCategories WHERE Rank <= 2 GROUP BY Year ), UniqueYear AS ( SELECT Year FROM TopTwoCategories GROUP BY TopCategories HAVING COUNT(Year) = 1 ), results AS ( SELECT rc.Year, rc.Category, rc.PercentageOfAnnualRoadIncidents FROM UniqueYear u JOIN RankedCategories rc ON u.Year = rc.Year WHERE rc.Rank <= 2 ) SELECT distinct Year FROM results
In which year were the two most common causes of traffic accidents different from those in other years?
null
['victims' 'collisions' 'case_ids' 'parties']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: California_Traffic_Collision 2. **Tables**: victims, collisions, case_ids, parties 3. **User Question**: In which year were the two most common causes of traffic accidents different from those in other years? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local018
California_Traffic_Collision
null
For the primary collision factor violation category that was the most common cause of traffic accidents in 2021, how many percentage points did its share of annual road incidents in 2021 decrease compared to its share in 2011?
null
['victims' 'collisions' 'case_ids' 'parties']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: California_Traffic_Collision 2. **Tables**: victims, collisions, case_ids, parties 3. **User Question**: For the primary collision factor violation category that was the most common cause of traffic accidents in 2021, how many percentage points did its share of annual road incidents in 2021 decrease compared to its share in 2011? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local019
WWE
WITH MatchDetails AS ( SELECT b.name AS titles, m.duration AS match_duration, w1.name || ' vs ' || w2.name AS matches, m.win_type AS win_type, l.name AS location, e.name AS event, ROW_NUMBER() OVER (PARTITION BY b.name ORDER BY m.duration ASC) AS rank FROM Belts b INNER JOIN Matches m ON m.title_id = b.id INNER JOIN Wrestlers w1 ON w1.id = m.winner_id INNER JOIN Wrestlers w2 ON w2.id = m.loser_id INNER JOIN Cards c ON c.id = m.card_id INNER JOIN Locations l ON l.id = c.location_id INNER JOIN Events e ON e.id = c.event_id INNER JOIN Promotions p ON p.id = c.promotion_id WHERE p.name = 'NXT' AND m.duration <> '' AND b.name <> '' AND b.name NOT IN ( SELECT name FROM Belts WHERE name LIKE '%title change%' ) ), Rank1 AS ( SELECT titles, match_duration, matches, win_type, location, event FROM MatchDetails WHERE rank = 1 ) SELECT SUBSTR(matches, 1, INSTR(matches, ' vs ') - 1) AS wrestler1, SUBSTR(matches, INSTR(matches, ' vs ') + 4) AS wrestler2 FROM Rank1 ORDER BY match_duration LIMIT 1
For the NXT title that had the shortest match (excluding titles with "title change"), what were the names of the two wrestlers involved?
null
['Promotions' 'sqlite_sequence' 'Tables' 'Cards' 'Locations' 'Events' 'Matches' 'Belts' 'Wrestlers' 'Match_Types']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: WWE 2. **Tables**: Promotions, sqlite_sequence, Tables, Cards, Locations, Events, Matches, Belts, Wrestlers, Match_Types 3. **User Question**: For the NXT title that had the shortest match (excluding titles with "title change"), what were the names of the two wrestlers involved? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local026
IPL
null
Please help me identify the top 3 bowlers who, in the overs where the maximum runs were conceded in each match, gave up the highest number of runs in a single over across all matches. For each of these bowlers, provide the match in which they conceded these maximum runs. Only consider overs that had the most runs conceded within their respective matches, and among these, determine which bowlers conceded the most runs in a single over overall.
null
['player' 'team' 'match' 'player_match' 'ball_by_ball' 'batsman_scored' 'wicket_taken' 'extra_runs' 'delivery']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: IPL 2. **Tables**: player, team, match, player_match, ball_by_ball, batsman_scored, wicket_taken, extra_runs, delivery 3. **User Question**: Please help me identify the top 3 bowlers who, in the overs where the maximum runs were conceded in each match, gave up the highest number of runs in a single over across all matches. For each of these bowlers, provide the match in which they conceded these maximum runs. Only consider overs that had the most runs conceded within their respective matches, and among these, determine which bowlers conceded the most runs in a single over overall. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local020
IPL
null
Which bowler has the lowest bowling average per wicket taken?
null
['player' 'team' 'match' 'player_match' 'ball_by_ball' 'batsman_scored' 'wicket_taken' 'extra_runs' 'delivery']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: IPL 2. **Tables**: player, team, match, player_match, ball_by_ball, batsman_scored, wicket_taken, extra_runs, delivery 3. **User Question**: Which bowler has the lowest bowling average per wicket taken? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local021
IPL
null
Could you calculate the average of the total runs scored by all strikers who have scored more than 50 runs in any single match?
null
['player' 'team' 'match' 'player_match' 'ball_by_ball' 'batsman_scored' 'wicket_taken' 'extra_runs' 'delivery']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: IPL 2. **Tables**: player, team, match, player_match, ball_by_ball, batsman_scored, wicket_taken, extra_runs, delivery 3. **User Question**: Could you calculate the average of the total runs scored by all strikers who have scored more than 50 runs in any single match? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local022
IPL
-- Step 1: Calculate players' total runs in each match WITH player_runs AS ( SELECT bbb.striker AS player_id, bbb.match_id, SUM(bsc.runs_scored) AS total_runs FROM ball_by_ball AS bbb JOIN batsman_scored AS bsc ON bbb.match_id = bsc.match_id AND bbb.over_id = bsc.over_id AND bbb.ball_id = bsc.ball_id AND bbb.innings_no = bsc.innings_no GROUP BY bbb.striker, bbb.match_id HAVING SUM(bsc.runs_scored) >= 100 ), -- Step 2: Identify losing teams for each match losing_teams AS ( SELECT match_id, CASE WHEN match_winner = team_1 THEN team_2 ELSE team_1 END AS loser FROM match ), -- Step 3: Combine the above results to get players who scored 100 or more runs in losing teams players_in_losing_teams AS ( SELECT pr.player_id, pr.match_id FROM player_runs AS pr JOIN losing_teams AS lt ON pr.match_id = lt.match_id JOIN player_match AS pm ON pr.player_id = pm.player_id AND pr.match_id = pm.match_id AND lt.loser = pm.team_id ) -- Step 4: Select distinct player names from the player table SELECT DISTINCT p.player_name FROM player AS p JOIN players_in_losing_teams AS plt ON p.player_id = plt.player_id ORDER BY p.player_name;
Retrieve the names of players who scored no less than 100 runs in a match while playing for the team that lost that match.
null
['player' 'team' 'match' 'player_match' 'ball_by_ball' 'batsman_scored' 'wicket_taken' 'extra_runs' 'delivery']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: IPL 2. **Tables**: player, team, match, player_match, ball_by_ball, batsman_scored, wicket_taken, extra_runs, delivery 3. **User Question**: Retrieve the names of players who scored no less than 100 runs in a match while playing for the team that lost that match. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local023
IPL
WITH runs_scored AS ( SELECT bb.striker AS player_id, bb.match_id, bs.runs_scored AS runs FROM ball_by_ball AS bb JOIN batsman_scored AS bs ON bb.match_id = bs.match_id AND bb.over_id = bs.over_id AND bb.ball_id = bs.ball_id AND bb.innings_no = bs.innings_no WHERE bb.match_id IN (SELECT match_id FROM match WHERE season_id = 5) ), total_runs AS ( SELECT player_id, match_id, SUM(runs) AS total_runs FROM runs_scored GROUP BY player_id, match_id ), batting_averages AS ( SELECT player_id, SUM(total_runs) AS runs, COUNT(match_id) AS num_matches, ROUND(SUM(total_runs) / CAST(COUNT(match_id) AS FLOAT), 3) AS batting_avg FROM total_runs GROUP BY player_id ORDER BY batting_avg DESC LIMIT 5 ) SELECT p.player_name, b.batting_avg FROM player AS p JOIN batting_averages AS b ON p.player_id = b.player_id ORDER BY b.batting_avg DESC;
Please help me find the names of top 5 players with the highest average runs per match in season 5, along with their batting averages.
null
['player' 'team' 'match' 'player_match' 'ball_by_ball' 'batsman_scored' 'wicket_taken' 'extra_runs' 'delivery']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: IPL 2. **Tables**: player, team, match, player_match, ball_by_ball, batsman_scored, wicket_taken, extra_runs, delivery 3. **User Question**: Please help me find the names of top 5 players with the highest average runs per match in season 5, along with their batting averages. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local024
IPL
null
Can you help me find the top 5 countries whose players have the highest average of their individual average runs per match across all seasons? Specifically, for each player, calculate their average runs per match over all matches they played, then compute the average of these player averages for each country, and include these country batting averages in the result.
null
['player' 'team' 'match' 'player_match' 'ball_by_ball' 'batsman_scored' 'wicket_taken' 'extra_runs' 'delivery']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: IPL 2. **Tables**: player, team, match, player_match, ball_by_ball, batsman_scored, wicket_taken, extra_runs, delivery 3. **User Question**: Can you help me find the top 5 countries whose players have the highest average of their individual average runs per match across all seasons? Specifically, for each player, calculate their average runs per match over all matches they played, then compute the average of these player averages for each country, and include these country batting averages in the result. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local025
IPL
null
For each match, considering every innings, please combine runs from both batsman scored and extra runs for each over, then identify the single over with the highest total runs, retrieve the bowler for that over from the ball by ball table, and calculate the average of these highest over totals across all matches, ensuring that all runs and bowler details are accurately reflected.
null
['player' 'team' 'match' 'player_match' 'ball_by_ball' 'batsman_scored' 'wicket_taken' 'extra_runs' 'delivery']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: IPL 2. **Tables**: player, team, match, player_match, ball_by_ball, batsman_scored, wicket_taken, extra_runs, delivery 3. **User Question**: For each match, considering every innings, please combine runs from both batsman scored and extra runs for each over, then identify the single over with the highest total runs, retrieve the bowler for that over from the ball by ball table, and calculate the average of these highest over totals across all matches, ensuring that all runs and bowler details are accurately reflected. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local028
Brazilian_E_Commerce
null
Could you generate a report that shows the number of delivered orders for each month in the years 2016, 2017, and 2018? Each column represents a year, and each row represents a month
null
['olist_customers' 'olist_sellers' 'olist_order_reviews' 'olist_order_items' 'olist_products' 'olist_geolocation' 'product_category_name_translation' 'olist_orders' 'olist_order_payments' 'olist_products_dataset']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Brazilian_E_Commerce 2. **Tables**: olist_customers, olist_sellers, olist_order_reviews, olist_order_items, olist_products, olist_geolocation, product_category_name_translation, olist_orders, olist_order_payments, olist_products_dataset 3. **User Question**: Could you generate a report that shows the number of delivered orders for each month in the years 2016, 2017, and 2018? Each column represents a year, and each row represents a month ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local031
Brazilian_E_Commerce
null
What is the highest monthly delivered orders volume in the year with the lowest annual delivered orders volume among 2016, 2017, and 2018?
null
['olist_customers' 'olist_sellers' 'olist_order_reviews' 'olist_order_items' 'olist_products' 'olist_geolocation' 'product_category_name_translation' 'olist_orders' 'olist_order_payments' 'olist_products_dataset']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Brazilian_E_Commerce 2. **Tables**: olist_customers, olist_sellers, olist_order_reviews, olist_order_items, olist_products, olist_geolocation, product_category_name_translation, olist_orders, olist_order_payments, olist_products_dataset 3. **User Question**: What is the highest monthly delivered orders volume in the year with the lowest annual delivered orders volume among 2016, 2017, and 2018? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local029
Brazilian_E_Commerce
WITH customer_orders AS ( SELECT c.customer_unique_id, COUNT(o.order_id) AS Total_Orders_By_Customers, AVG(p.payment_value) AS Average_Payment_By_Customer, c.customer_city, c.customer_state FROM olist_customers c JOIN olist_orders o ON c.customer_id = o.customer_id JOIN olist_order_payments p ON o.order_id = p.order_id WHERE o.order_status = 'delivered' GROUP BY c.customer_unique_id, c.customer_city, c.customer_state ) SELECT Average_Payment_By_Customer, customer_city, customer_state FROM customer_orders ORDER BY Total_Orders_By_Customers DESC LIMIT 3;
Please identify the top three customers, based on their customer_unique_id, who have the highest number of delivered orders, and provide the average payment value, city, and state for each of these customers.
null
['olist_customers' 'olist_sellers' 'olist_order_reviews' 'olist_order_items' 'olist_products' 'olist_geolocation' 'product_category_name_translation' 'olist_orders' 'olist_order_payments' 'olist_products_dataset']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Brazilian_E_Commerce 2. **Tables**: olist_customers, olist_sellers, olist_order_reviews, olist_order_items, olist_products, olist_geolocation, product_category_name_translation, olist_orders, olist_order_payments, olist_products_dataset 3. **User Question**: Please identify the top three customers, based on their customer_unique_id, who have the highest number of delivered orders, and provide the average payment value, city, and state for each of these customers. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local030
Brazilian_E_Commerce
null
Among all cities with delivered orders, find the five cities whose summed payments are the lowest, then calculate the average of their total payments and the average of their total delivered order counts.
null
['olist_customers' 'olist_sellers' 'olist_order_reviews' 'olist_order_items' 'olist_products' 'olist_geolocation' 'product_category_name_translation' 'olist_orders' 'olist_order_payments' 'olist_products_dataset']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Brazilian_E_Commerce 2. **Tables**: olist_customers, olist_sellers, olist_order_reviews, olist_order_items, olist_products, olist_geolocation, product_category_name_translation, olist_orders, olist_order_payments, olist_products_dataset 3. **User Question**: Among all cities with delivered orders, find the five cities whose summed payments are the lowest, then calculate the average of their total payments and the average of their total delivered order counts. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local032
Brazilian_E_Commerce
null
Could you help me find the sellers who excel in the following categories, considering only delivered orders: the seller with the highest number of distinct customer unique IDs, the seller with the highest profit (calculated as price minus freight value), the seller with the highest number of distinct orders, and the seller with the most 5-star ratings? For each category, please provide the seller ID and the corresponding value, labeling each row with a description of the achievement.
null
['olist_customers' 'olist_sellers' 'olist_order_reviews' 'olist_order_items' 'olist_products' 'olist_geolocation' 'product_category_name_translation' 'olist_orders' 'olist_order_payments' 'olist_products_dataset']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Brazilian_E_Commerce 2. **Tables**: olist_customers, olist_sellers, olist_order_reviews, olist_order_items, olist_products, olist_geolocation, product_category_name_translation, olist_orders, olist_order_payments, olist_products_dataset 3. **User Question**: Could you help me find the sellers who excel in the following categories, considering only delivered orders: the seller with the highest number of distinct customer unique IDs, the seller with the highest profit (calculated as price minus freight value), the seller with the highest number of distinct orders, and the seller with the most 5-star ratings? For each category, please provide the seller ID and the corresponding value, labeling each row with a description of the achievement. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local034
Brazilian_E_Commerce
null
Could you help me calculate the average of the total number of payments made using the most preferred payment method for each product category, where the most preferred payment method in a category is the one with the highest number of payments?
null
['olist_customers' 'olist_sellers' 'olist_order_reviews' 'olist_order_items' 'olist_products' 'olist_geolocation' 'product_category_name_translation' 'olist_orders' 'olist_order_payments' 'olist_products_dataset']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Brazilian_E_Commerce 2. **Tables**: olist_customers, olist_sellers, olist_order_reviews, olist_order_items, olist_products, olist_geolocation, product_category_name_translation, olist_orders, olist_order_payments, olist_products_dataset 3. **User Question**: Could you help me calculate the average of the total number of payments made using the most preferred payment method for each product category, where the most preferred payment method in a category is the one with the highest number of payments? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local037
Brazilian_E_Commerce
null
Identify the top three product categories whose most commonly used payment type has the highest number of payments across all categories, and specify the number of payments made in each category using that payment type.
null
['olist_customers' 'olist_sellers' 'olist_order_reviews' 'olist_order_items' 'olist_products' 'olist_geolocation' 'product_category_name_translation' 'olist_orders' 'olist_order_payments' 'olist_products_dataset']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Brazilian_E_Commerce 2. **Tables**: olist_customers, olist_sellers, olist_order_reviews, olist_order_items, olist_products, olist_geolocation, product_category_name_translation, olist_orders, olist_order_payments, olist_products_dataset 3. **User Question**: Identify the top three product categories whose most commonly used payment type has the highest number of payments across all categories, and specify the number of payments made in each category using that payment type. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local035
Brazilian_E_Commerce
null
In the “olist_geolocation” table, please identify which two consecutive cities, when sorted by geolocation_state, geolocation_city, geolocation_zip_code_prefix, geolocation_lat, and geolocation_lng, have the greatest distance between them based on the difference in distance computed between each city and its immediate predecessor in that ordering.
null
['olist_customers' 'olist_sellers' 'olist_order_reviews' 'olist_order_items' 'olist_products' 'olist_geolocation' 'product_category_name_translation' 'olist_orders' 'olist_order_payments' 'olist_products_dataset']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Brazilian_E_Commerce 2. **Tables**: olist_customers, olist_sellers, olist_order_reviews, olist_order_items, olist_products, olist_geolocation, product_category_name_translation, olist_orders, olist_order_payments, olist_products_dataset 3. **User Question**: In the “olist_geolocation” table, please identify which two consecutive cities, when sorted by geolocation_state, geolocation_city, geolocation_zip_code_prefix, geolocation_lat, and geolocation_lng, have the greatest distance between them based on the difference in distance computed between each city and its immediate predecessor in that ordering. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local038
Pagila
SELECT actor.first_name || ' ' || actor.last_name AS full_name FROM actor INNER JOIN film_actor ON actor.actor_id = film_actor.actor_id INNER JOIN film ON film_actor.film_id = film.film_id INNER JOIN film_category ON film.film_id = film_category.film_id INNER JOIN category ON film_category.category_id = category.category_id -- Join with the language table INNER JOIN language ON film.language_id = language.language_id WHERE category.name = 'Children' AND film.release_year BETWEEN 2000 AND 2010 AND film.rating IN ('G', 'PG') AND language.name = 'English' AND film.length <= 120 GROUP BY actor.actor_id, actor.first_name, actor.last_name ORDER BY COUNT(film.film_id) DESC LIMIT 1;
Could you help me determine which actor starred most frequently in English-language children's category films that were rated either G or PG, had a running time of 120 minutes or less, and were released between 2000 and 2010? Please provide the actor's full name.
null
['actor' 'country' 'city' 'address' 'language' 'category' 'customer' 'film' 'film_actor' 'film_category' 'film_text' 'inventory' 'staff' 'store' 'payment' 'rental']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Pagila 2. **Tables**: actor, country, city, address, language, category, customer, film, film_actor, film_category, film_text, inventory, staff, store, payment, rental 3. **User Question**: Could you help me determine which actor starred most frequently in English-language children's category films that were rated either G or PG, had a running time of 120 minutes or less, and were released between 2000 and 2010? Please provide the actor's full name. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local039
Pagila
SELECT category.name FROM category INNER JOIN film_category USING (category_id) INNER JOIN film USING (film_id) INNER JOIN inventory USING (film_id) INNER JOIN rental USING (inventory_id) INNER JOIN customer USING (customer_id) INNER JOIN address USING (address_id) INNER JOIN city USING (city_id) WHERE LOWER(city.city) LIKE 'a%' OR city.city LIKE '%-%' GROUP BY category.name ORDER BY SUM(CAST((julianday(rental.return_date) - julianday(rental.rental_date)) * 24 AS INTEGER)) DESC LIMIT 1;
Please help me find the film category with the highest total rental hours in cities where the city's name either starts with "A" or contains a hyphen.
null
['actor' 'country' 'city' 'address' 'language' 'category' 'customer' 'film' 'film_actor' 'film_category' 'film_text' 'inventory' 'staff' 'store' 'payment' 'rental']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Pagila 2. **Tables**: actor, country, city, address, language, category, customer, film, film_actor, film_category, film_text, inventory, staff, store, payment, rental 3. **User Question**: Please help me find the film category with the highest total rental hours in cities where the city's name either starts with "A" or contains a hyphen. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local040
modern_data
null
In the combined dataset that unifies the trees data with the income data by ZIP code, filling missing ZIP values where necessary, which three boroughs, restricted to records with median and mean income both greater than zero and a valid borough name, contain the highest number of trees, and what is the average mean income for each of these three boroughs?
null
['pizza_names' 'companies_funding' 'pizza_customer_orders' 'pizza_toppings' 'trees' 'pizza_recipes' 'statistics' 'income_trees' 'pizza_clean_runner_orders' 'pizza_runner_orders' 'word_list' 'companies_dates' 'pizza_get_extras' 'pizza_get_exclusions' 'pizza_clean_customer_orders' 'companies_industries' 'pizza_runners']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: modern_data 2. **Tables**: pizza_names, companies_funding, pizza_customer_orders, pizza_toppings, trees, pizza_recipes, statistics, income_trees, pizza_clean_runner_orders, pizza_runner_orders, word_list, companies_dates, pizza_get_extras, pizza_get_exclusions, pizza_clean_customer_orders, companies_industries, pizza_runners 3. **User Question**: In the combined dataset that unifies the trees data with the income data by ZIP code, filling missing ZIP values where necessary, which three boroughs, restricted to records with median and mean income both greater than zero and a valid borough name, contain the highest number of trees, and what is the average mean income for each of these three boroughs? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local041
modern_data
null
What percentage of trees in the Bronx have a health status of Good?
null
['pizza_names' 'companies_funding' 'pizza_customer_orders' 'pizza_toppings' 'trees' 'pizza_recipes' 'statistics' 'income_trees' 'pizza_clean_runner_orders' 'pizza_runner_orders' 'word_list' 'companies_dates' 'pizza_get_extras' 'pizza_get_exclusions' 'pizza_clean_customer_orders' 'companies_industries' 'pizza_runners']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: modern_data 2. **Tables**: pizza_names, companies_funding, pizza_customer_orders, pizza_toppings, trees, pizza_recipes, statistics, income_trees, pizza_clean_runner_orders, pizza_runner_orders, word_list, companies_dates, pizza_get_extras, pizza_get_exclusions, pizza_clean_customer_orders, companies_industries, pizza_runners 3. **User Question**: What percentage of trees in the Bronx have a health status of Good? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local049
modern_data
null
Can you help me calculate the average number of new unicorn companies per year in the top industry from 2019 to 2021?
null
['pizza_names' 'companies_funding' 'pizza_customer_orders' 'pizza_toppings' 'trees' 'pizza_recipes' 'statistics' 'income_trees' 'pizza_clean_runner_orders' 'pizza_runner_orders' 'word_list' 'companies_dates' 'pizza_get_extras' 'pizza_get_exclusions' 'pizza_clean_customer_orders' 'companies_industries' 'pizza_runners']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: modern_data 2. **Tables**: pizza_names, companies_funding, pizza_customer_orders, pizza_toppings, trees, pizza_recipes, statistics, income_trees, pizza_clean_runner_orders, pizza_runner_orders, word_list, companies_dates, pizza_get_extras, pizza_get_exclusions, pizza_clean_customer_orders, companies_industries, pizza_runners 3. **User Question**: Can you help me calculate the average number of new unicorn companies per year in the top industry from 2019 to 2021? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local054
chinook
null
Could you tell me the first names of customers who spent less than $1 on albums by the best-selling artist, along with the amounts they spent?
null
['albums' 'sqlite_sequence' 'artists' 'customers' 'employees' 'genres' 'invoices' 'invoice_items' 'media_types' 'playlists' 'playlist_track' 'tracks' 'sqlite_stat1']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: chinook 2. **Tables**: albums, sqlite_sequence, artists, customers, employees, genres, invoices, invoice_items, media_types, playlists, playlist_track, tracks, sqlite_stat1 3. **User Question**: Could you tell me the first names of customers who spent less than $1 on albums by the best-selling artist, along with the amounts they spent? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local055
chinook
null
Identify the artist with the highest overall sales of albums (tie broken by alphabetical order) and the artist with the lowest overall sales of albums (tie broken by alphabetical order), then calculate the amount each customer spent specifically on those two artists’ albums. Next, compute the average spending for the customers who purchased from the top-selling artist and the average spending for the customers who purchased from the lowest-selling artist, and finally return the absolute difference between these two averages.
null
['albums' 'sqlite_sequence' 'artists' 'customers' 'employees' 'genres' 'invoices' 'invoice_items' 'media_types' 'playlists' 'playlist_track' 'tracks' 'sqlite_stat1']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: chinook 2. **Tables**: albums, sqlite_sequence, artists, customers, employees, genres, invoices, invoice_items, media_types, playlists, playlist_track, tracks, sqlite_stat1 3. **User Question**: Identify the artist with the highest overall sales of albums (tie broken by alphabetical order) and the artist with the lowest overall sales of albums (tie broken by alphabetical order), then calculate the amount each customer spent specifically on those two artists’ albums. Next, compute the average spending for the customers who purchased from the top-selling artist and the average spending for the customers who purchased from the lowest-selling artist, and finally return the absolute difference between these two averages. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local198
chinook
null
Using the sales data, what is the median value of total sales made in countries where the number of customers is greater than 4?
null
['albums' 'sqlite_sequence' 'artists' 'customers' 'employees' 'genres' 'invoices' 'invoice_items' 'media_types' 'playlists' 'playlist_track' 'tracks' 'sqlite_stat1']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: chinook 2. **Tables**: albums, sqlite_sequence, artists, customers, employees, genres, invoices, invoice_items, media_types, playlists, playlist_track, tracks, sqlite_stat1 3. **User Question**: Using the sales data, what is the median value of total sales made in countries where the number of customers is greater than 4? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local056
sqlite-sakila
null
Which customer has the highest average monthly change in payment amounts? Provide the customer's full name.
null
['actor' 'country' 'city' 'address' 'language' 'category' 'customer' 'film' 'film_actor' 'film_category' 'film_text' 'inventory' 'staff' 'store' 'payment' 'rental' 'monthly_payment_totals' 'MonthlyTotals' 'total_revenue_by_film']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: sqlite-sakila 2. **Tables**: actor, country, city, address, language, category, customer, film, film_actor, film_category, film_text, inventory, staff, store, payment, rental, monthly_payment_totals, MonthlyTotals, total_revenue_by_film 3. **User Question**: Which customer has the highest average monthly change in payment amounts? Provide the customer's full name. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local058
education_business
WITH UniqueProducts2020 AS ( SELECT dp.segment, COUNT(DISTINCT fsm.product_code) AS unique_products_2020 FROM hardware_fact_sales_monthly fsm JOIN hardware_dim_product dp ON fsm.product_code = dp.product_code WHERE fsm.fiscal_year = 2020 GROUP BY dp.segment ), UniqueProducts2021 AS ( SELECT dp.segment, COUNT(DISTINCT fsm.product_code) AS unique_products_2021 FROM hardware_fact_sales_monthly fsm JOIN hardware_dim_product dp ON fsm.product_code = dp.product_code WHERE fsm.fiscal_year = 2021 GROUP BY dp.segment ) SELECT spc.segment, spc.unique_products_2020 AS product_count_2020 FROM UniqueProducts2020 spc JOIN UniqueProducts2021 fup ON spc.segment = fup.segment ORDER BY ((fup.unique_products_2021 - spc.unique_products_2020) * 100.0) / (spc.unique_products_2020) DESC;
Can you provide a list of hardware product segments along with their unique product counts for 2020 in the output, ordered by the highest percentage increase in unique fact sales products from 2020 to 2021?
null
['hardware_dim_customer' 'hardware_fact_pre_invoice_deductions' 'web_sales_reps' 'hardware_dim_product' 'web_orders' 'StaffHours' 'university_enrollment' 'university_faculty' 'university_student' 'university_offering' 'web_accounts' 'web_events' 'SalaryDataset' 'web_region' 'hardware_fact_gross_price' 'hardware_fact_manufacturing_cost' 'university_course' 'hardware_fact_sales_monthly' 'NAMES']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: education_business 2. **Tables**: hardware_dim_customer, hardware_fact_pre_invoice_deductions, web_sales_reps, hardware_dim_product, web_orders, StaffHours, university_enrollment, university_faculty, university_student, university_offering, web_accounts, web_events, SalaryDataset, web_region, hardware_fact_gross_price, hardware_fact_manufacturing_cost, university_course, hardware_fact_sales_monthly, NAMES 3. **User Question**: Can you provide a list of hardware product segments along with their unique product counts for 2020 in the output, ordered by the highest percentage increase in unique fact sales products from 2020 to 2021? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local059
education_business
null
For the calendar year 2021, what is the overall average quantity sold of the top three best-selling hardware products (by total quantity sold) in each division?
null
['hardware_dim_customer' 'hardware_fact_pre_invoice_deductions' 'web_sales_reps' 'hardware_dim_product' 'web_orders' 'StaffHours' 'university_enrollment' 'university_faculty' 'university_student' 'university_offering' 'web_accounts' 'web_events' 'SalaryDataset' 'web_region' 'hardware_fact_gross_price' 'hardware_fact_manufacturing_cost' 'university_course' 'hardware_fact_sales_monthly' 'NAMES']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: education_business 2. **Tables**: hardware_dim_customer, hardware_fact_pre_invoice_deductions, web_sales_reps, hardware_dim_product, web_orders, StaffHours, university_enrollment, university_faculty, university_student, university_offering, web_accounts, web_events, SalaryDataset, web_region, hardware_fact_gross_price, hardware_fact_manufacturing_cost, university_course, hardware_fact_sales_monthly, NAMES 3. **User Question**: For the calendar year 2021, what is the overall average quantity sold of the top three best-selling hardware products (by total quantity sold) in each division? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local060
complex_oracle
null
In the United States, for Q4 2019 and Q4 2020, first select only those cities where total sales (with no promotions) rose by at least 20% from Q4 2019 to Q4 2020. Among these cities, rank products by their overall sales (still excluding promotions) in those quarters and take the top 20%. Then compute each top product’s share of total sales in Q4 2019 and Q4 2020 and calculate the difference in share from Q4 2019 to Q4 2020, returning the results in descending order of that share change.
null
['countries' 'customers' 'promotions' 'products' 'times' 'channels' 'sales' 'costs' 'supplementary_demographics' 'currency']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: complex_oracle 2. **Tables**: countries, customers, promotions, products, times, channels, sales, costs, supplementary_demographics, currency 3. **User Question**: In the United States, for Q4 2019 and Q4 2020, first select only those cities where total sales (with no promotions) rose by at least 20% from Q4 2019 to Q4 2020. Among these cities, rank products by their overall sales (still excluding promotions) in those quarters and take the top 20%. Then compute each top product’s share of total sales in Q4 2019 and Q4 2020 and calculate the difference in share from Q4 2019 to Q4 2020, returning the results in descending order of that share change. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local063
complex_oracle
null
Among all products sold in the United States with promo_id=999, considering only those cities whose sales increased by at least 20% from Q4 2019 (calendar_quarter_id=1772) to Q4 2020 (calendar_quarter_id=1776), which product that ranks in the top 20% of total sales has the smallest percentage-point change in its share of total sales between these two quarters?
null
['countries' 'customers' 'promotions' 'products' 'times' 'channels' 'sales' 'costs' 'supplementary_demographics' 'currency']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: complex_oracle 2. **Tables**: countries, customers, promotions, products, times, channels, sales, costs, supplementary_demographics, currency 3. **User Question**: Among all products sold in the United States with promo_id=999, considering only those cities whose sales increased by at least 20% from Q4 2019 (calendar_quarter_id=1772) to Q4 2020 (calendar_quarter_id=1776), which product that ranks in the top 20% of total sales has the smallest percentage-point change in its share of total sales between these two quarters? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local061
complex_oracle
null
What is the average projected monthly sales in USD for France in 2021, considering only product sales with promotions where promo_total_id = 1 and channels where channel_total_id = 1, by taking each product’s monthly sales from 2019 and 2020, calculating the growth rate from 2019 to 2020 for that same product and month, applying this growth rate to project 2021 monthly sales, converting all projected 2021 amounts to USD with the 2021 exchange rates, and finally averaging and listing them by month?
null
['countries' 'customers' 'promotions' 'products' 'times' 'channels' 'sales' 'costs' 'supplementary_demographics' 'currency']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: complex_oracle 2. **Tables**: countries, customers, promotions, products, times, channels, sales, costs, supplementary_demographics, currency 3. **User Question**: What is the average projected monthly sales in USD for France in 2021, considering only product sales with promotions where promo_total_id = 1 and channels where channel_total_id = 1, by taking each product’s monthly sales from 2019 and 2020, calculating the growth rate from 2019 to 2020 for that same product and month, applying this growth rate to project 2021 monthly sales, converting all projected 2021 amounts to USD with the 2021 exchange rates, and finally averaging and listing them by month? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local050
complex_oracle
null
What is the median of the average monthly projected sales in USD for France in 2021, calculated by using the monthly sales data from 2019 and 2020 (filtered by promo_total_id=1 and channel_total_id=1), applying the growth rate from 2019 to 2020 to project 2021, converting to USD based on the currency table, and then determining the monthly averages before finding their median?
null
['countries' 'customers' 'promotions' 'products' 'times' 'channels' 'sales' 'costs' 'supplementary_demographics' 'currency']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: complex_oracle 2. **Tables**: countries, customers, promotions, products, times, channels, sales, costs, supplementary_demographics, currency 3. **User Question**: What is the median of the average monthly projected sales in USD for France in 2021, calculated by using the monthly sales data from 2019 and 2020 (filtered by promo_total_id=1 and channel_total_id=1), applying the growth rate from 2019 to 2020 to project 2021, converting to USD based on the currency table, and then determining the monthly averages before finding their median? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local062
complex_oracle
null
Please group all Italian customers into ten buckets for December 2021 by summing their profits from all products purchased (where profit is calculated as quantity_sold multiplied by the difference between unit_price and unit_cost), then divide the overall range of total monthly profits into ten equal intervals. For each bucket, provide the number of customers, and identify the minimum and maximum total profits within that bucket.
null
['countries' 'customers' 'promotions' 'products' 'times' 'channels' 'sales' 'costs' 'supplementary_demographics' 'currency']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: complex_oracle 2. **Tables**: countries, customers, promotions, products, times, channels, sales, costs, supplementary_demographics, currency 3. **User Question**: Please group all Italian customers into ten buckets for December 2021 by summing their profits from all products purchased (where profit is calculated as quantity_sold multiplied by the difference between unit_price and unit_cost), then divide the overall range of total monthly profits into ten equal intervals. For each bucket, provide the number of customers, and identify the minimum and maximum total profits within that bucket. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local067
complex_oracle
null
Can you provide the highest and lowest profits for Italian customers segmented into ten evenly divided tiers based on their December 2021 sales profits?
null
['countries' 'customers' 'promotions' 'products' 'times' 'channels' 'sales' 'costs' 'supplementary_demographics' 'currency']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: complex_oracle 2. **Tables**: countries, customers, promotions, products, times, channels, sales, costs, supplementary_demographics, currency 3. **User Question**: Can you provide the highest and lowest profits for Italian customers segmented into ten evenly divided tiers based on their December 2021 sales profits? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local070
city_legislation
null
Please examine our database records for Chinese cities (country_code_2 = 'cn') during July 2021 and identify both the shortest and longest streaks of consecutive date entries. For each date in these streaks, return exactly one record per date along with the corresponding city name. In your output, please ensure the first letter of each city name is capitalized and the rest are lowercase. Display the dates and city names for both the shortest and longest consecutive date streaks, ordered by date.
null
['aliens_details' 'skills_dim' 'legislators_terms' 'cities_currencies' 'legislators' 'skills_job_dim' 'job_postings_fact' 'alien_data' 'cities_countries' 'legislation_date_dim' 'cities' 'aliens_location' 'aliens' 'cities_languages' 'job_company' 'city_legislation']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: city_legislation 2. **Tables**: aliens_details, skills_dim, legislators_terms, cities_currencies, legislators, skills_job_dim, job_postings_fact, alien_data, cities_countries, legislation_date_dim, cities, aliens_location, aliens, cities_languages, job_company, city_legislation 3. **User Question**: Please examine our database records for Chinese cities (country_code_2 = 'cn') during July 2021 and identify both the shortest and longest streaks of consecutive date entries. For each date in these streaks, return exactly one record per date along with the corresponding city name. In your output, please ensure the first letter of each city name is capitalized and the rest are lowercase. Display the dates and city names for both the shortest and longest consecutive date streaks, ordered by date. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local071
city_legislation
null
Could you review our records in June 2022 and identify which countries have the longest streak of consecutive inserted city dates? Please list the 2-letter length country codes of these countries.
null
['aliens_details' 'skills_dim' 'legislators_terms' 'cities_currencies' 'legislators' 'skills_job_dim' 'job_postings_fact' 'alien_data' 'cities_countries' 'legislation_date_dim' 'cities' 'aliens_location' 'aliens' 'cities_languages' 'job_company' 'city_legislation']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: city_legislation 2. **Tables**: aliens_details, skills_dim, legislators_terms, cities_currencies, legislators, skills_job_dim, job_postings_fact, alien_data, cities_countries, legislation_date_dim, cities, aliens_location, aliens, cities_languages, job_company, city_legislation 3. **User Question**: Could you review our records in June 2022 and identify which countries have the longest streak of consecutive inserted city dates? Please list the 2-letter length country codes of these countries. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local072
city_legislation
null
Identify the country with data inserted on nine different days in January 2022. Then, find the longest consecutive period with data insertions for this country during January 2022, and calculate the proportion of entries that are from its capital city within this longest consecutive insertion period.
null
['aliens_details' 'skills_dim' 'legislators_terms' 'cities_currencies' 'legislators' 'skills_job_dim' 'job_postings_fact' 'alien_data' 'cities_countries' 'legislation_date_dim' 'cities' 'aliens_location' 'aliens' 'cities_languages' 'job_company' 'city_legislation']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: city_legislation 2. **Tables**: aliens_details, skills_dim, legislators_terms, cities_currencies, legislators, skills_job_dim, job_postings_fact, alien_data, cities_countries, legislation_date_dim, cities, aliens_location, aliens, cities_languages, job_company, city_legislation 3. **User Question**: Identify the country with data inserted on nine different days in January 2022. Then, find the longest consecutive period with data insertions for this country during January 2022, and calculate the proportion of entries that are from its capital city within this longest consecutive insertion period. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local068
city_legislation
null
Calculate the number of new cities inserted in April, May, and June for each year from 2021 to 2023. For each month, compute the cumulative running total of cities added for that specific month across the years up to and including the given year (i.e., sum the counts of that month over the years). Additionally, calculate the year-over-year growth percentages for both the monthly total and the running total for each month, comparing each year to the previous year. Present the results only for 2022 and 2023, listing the year, the month, the total number of cities added in that month, the cumulative running total for that month, and the year-over-year growth percentages for both the monthly total and the running total. Use the data from 2021 solely as a baseline for calculating growth rates, and exclude it from the final output.
null
['aliens_details' 'skills_dim' 'legislators_terms' 'cities_currencies' 'legislators' 'skills_job_dim' 'job_postings_fact' 'alien_data' 'cities_countries' 'legislation_date_dim' 'cities' 'aliens_location' 'aliens' 'cities_languages' 'job_company' 'city_legislation']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: city_legislation 2. **Tables**: aliens_details, skills_dim, legislators_terms, cities_currencies, legislators, skills_job_dim, job_postings_fact, alien_data, cities_countries, legislation_date_dim, cities, aliens_location, aliens, cities_languages, job_company, city_legislation 3. **User Question**: Calculate the number of new cities inserted in April, May, and June for each year from 2021 to 2023. For each month, compute the cumulative running total of cities added for that specific month across the years up to and including the given year (i.e., sum the counts of that month over the years). Additionally, calculate the year-over-year growth percentages for both the monthly total and the running total for each month, comparing each year to the previous year. Present the results only for 2022 and 2023, listing the year, the month, the total number of cities added in that month, the cumulative running total for that month, and the year-over-year growth percentages for both the monthly total and the running total. Use the data from 2021 solely as a baseline for calculating growth rates, and exclude it from the final output. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local073
modern_data
null
For each pizza order, provide a single result row with the row ID, order ID, customer ID, pizza name, and final set of ingredients. The final ingredients are determined by starting with the standard toppings from the pizza’s recipe, removing any excluded toppings, and adding any extra toppings. Present the ingredients in a string starting with the pizza name followed by ': ', with ingredients listed in alphabetical order. Ingredients appearing multiple times (e.g., from standard and extra toppings) should be prefixed with '2x' and listed first, followed by single-occurrence ingredients, both in alphabetical order. Group by row ID, order ID, pizza name, and order time to ensure each order appears once. Sort results by row ID in ascending order. Assign pizza_id 1 to 'Meatlovers' pizzas and pizza_id 2 to all others.
null
['pizza_names' 'companies_funding' 'pizza_customer_orders' 'pizza_toppings' 'trees' 'pizza_recipes' 'statistics' 'income_trees' 'pizza_clean_runner_orders' 'pizza_runner_orders' 'word_list' 'companies_dates' 'pizza_get_extras' 'pizza_get_exclusions' 'pizza_clean_customer_orders' 'companies_industries' 'pizza_runners']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: modern_data 2. **Tables**: pizza_names, companies_funding, pizza_customer_orders, pizza_toppings, trees, pizza_recipes, statistics, income_trees, pizza_clean_runner_orders, pizza_runner_orders, word_list, companies_dates, pizza_get_extras, pizza_get_exclusions, pizza_clean_customer_orders, companies_industries, pizza_runners 3. **User Question**: For each pizza order, provide a single result row with the row ID, order ID, customer ID, pizza name, and final set of ingredients. The final ingredients are determined by starting with the standard toppings from the pizza’s recipe, removing any excluded toppings, and adding any extra toppings. Present the ingredients in a string starting with the pizza name followed by ': ', with ingredients listed in alphabetical order. Ingredients appearing multiple times (e.g., from standard and extra toppings) should be prefixed with '2x' and listed first, followed by single-occurrence ingredients, both in alphabetical order. Group by row ID, order ID, pizza name, and order time to ensure each order appears once. Sort results by row ID in ascending order. Assign pizza_id 1 to 'Meatlovers' pizzas and pizza_id 2 to all others. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local066
modern_data
WITH cte_cleaned_customer_orders AS ( SELECT *, ROW_NUMBER() OVER () AS original_row_number FROM pizza_clean_customer_orders ), split_regular_toppings AS ( SELECT pizza_id, TRIM(SUBSTR(toppings, 1, INSTR(toppings || ',', ',') - 1)) AS topping_id, SUBSTR(toppings || ',', INSTR(toppings || ',', ',') + 1) AS remaining_toppings FROM pizza_recipes UNION ALL SELECT pizza_id, TRIM(SUBSTR(remaining_toppings, 1, INSTR(remaining_toppings, ',') - 1)) AS topping_id, SUBSTR(remaining_toppings, INSTR(remaining_toppings, ',') + 1) AS remaining_toppings FROM split_regular_toppings WHERE remaining_toppings <> '' ), cte_base_toppings AS ( SELECT t1.order_id, t1.customer_id, t1.pizza_id, t1.order_time, t1.original_row_number, t2.topping_id FROM cte_cleaned_customer_orders AS t1 LEFT JOIN split_regular_toppings AS t2 ON t1.pizza_id = t2.pizza_id ), split_exclusions AS ( SELECT order_id, customer_id, pizza_id, order_time, original_row_number, TRIM(SUBSTR(exclusions, 1, INSTR(exclusions || ',', ',') - 1)) AS topping_id, SUBSTR(exclusions || ',', INSTR(exclusions || ',', ',') + 1) AS remaining_exclusions FROM cte_cleaned_customer_orders WHERE exclusions IS NOT NULL UNION ALL SELECT order_id, customer_id, pizza_id, order_time, original_row_number, TRIM(SUBSTR(remaining_exclusions, 1, INSTR(remaining_exclusions, ',') - 1)) AS topping_id, SUBSTR(remaining_exclusions, INSTR(remaining_exclusions, ',') + 1) AS remaining_exclusions FROM split_exclusions WHERE remaining_exclusions <> '' ), split_extras AS ( SELECT order_id, customer_id, pizza_id, order_time, original_row_number, TRIM(SUBSTR(extras, 1, INSTR(extras || ',', ',') - 1)) AS topping_id, SUBSTR(extras || ',', INSTR(extras || ',', ',') + 1) AS remaining_extras FROM cte_cleaned_customer_orders WHERE extras IS NOT NULL UNION ALL SELECT order_id, customer_id, pizza_id, order_time, original_row_number, TRIM(SUBSTR(remaining_extras, 1, INSTR(remaining_extras, ',') - 1)) AS topping_id, SUBSTR(remaining_extras, INSTR(remaining_extras, ',') + 1) AS remaining_extras FROM split_extras WHERE remaining_extras <> '' ), cte_combined_orders AS ( SELECT order_id, customer_id, pizza_id, order_time, original_row_number, topping_id FROM cte_base_toppings WHERE topping_id NOT IN (SELECT topping_id FROM split_exclusions WHERE split_exclusions.order_id = cte_base_toppings.order_id) UNION ALL SELECT order_id, customer_id, pizza_id, order_time, original_row_number, topping_id FROM split_extras ) SELECT t2.topping_name, COUNT(*) AS topping_count FROM cte_combined_orders AS t1 JOIN pizza_toppings AS t2 ON t1.topping_id = t2.topping_id GROUP BY t2.topping_name ORDER BY topping_count DESC;
Based on our customer pizza order information, summarize the total quantity of each ingredient used in the pizzas we delivered. Output the name and quantity for each ingredient.
null
['pizza_names' 'companies_funding' 'pizza_customer_orders' 'pizza_toppings' 'trees' 'pizza_recipes' 'statistics' 'income_trees' 'pizza_clean_runner_orders' 'pizza_runner_orders' 'word_list' 'companies_dates' 'pizza_get_extras' 'pizza_get_exclusions' 'pizza_clean_customer_orders' 'companies_industries' 'pizza_runners']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: modern_data 2. **Tables**: pizza_names, companies_funding, pizza_customer_orders, pizza_toppings, trees, pizza_recipes, statistics, income_trees, pizza_clean_runner_orders, pizza_runner_orders, word_list, companies_dates, pizza_get_extras, pizza_get_exclusions, pizza_clean_customer_orders, companies_industries, pizza_runners 3. **User Question**: Based on our customer pizza order information, summarize the total quantity of each ingredient used in the pizzas we delivered. Output the name and quantity for each ingredient. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local065
modern_data
WITH get_extras_count AS ( WITH RECURSIVE split_extras AS ( SELECT order_id, TRIM(SUBSTR(extras, 1, INSTR(extras || ',', ',') - 1)) AS each_extra, SUBSTR(extras || ',', INSTR(extras || ',', ',') + 1) AS remaining_extras FROM pizza_clean_customer_orders UNION ALL SELECT order_id, TRIM(SUBSTR(remaining_extras, 1, INSTR(remaining_extras, ',') - 1)) AS each_extra, SUBSTR(remaining_extras, INSTR(remaining_extras, ',') + 1) FROM split_extras WHERE remaining_extras <> '' ) SELECT order_id, COUNT(each_extra) AS total_extras FROM split_extras GROUP BY order_id ), calculate_totals AS ( SELECT t1.order_id, t1.pizza_id, SUM( CASE WHEN pizza_id = 1 THEN 12 WHEN pizza_id = 2 THEN 10 END ) AS total_price, t3.total_extras FROM pizza_clean_customer_orders AS t1 JOIN pizza_clean_runner_orders AS t2 ON t2.order_id = t1.order_id LEFT JOIN get_extras_count AS t3 ON t3.order_id = t1.order_id WHERE t2.cancellation IS NULL GROUP BY t1.order_id, t1.pizza_id, t3.total_extras ) SELECT SUM(total_price) + SUM(total_extras) AS total_income FROM calculate_totals;
Calculate the total income from Meat Lovers pizzas priced at $12 and Vegetarian pizzas at $10. Include any extra toppings charged at $1 each. Ensure that canceled orders are filtered out. How much money has Pizza Runner earned in total?
null
['pizza_names' 'companies_funding' 'pizza_customer_orders' 'pizza_toppings' 'trees' 'pizza_recipes' 'statistics' 'income_trees' 'pizza_clean_runner_orders' 'pizza_runner_orders' 'word_list' 'companies_dates' 'pizza_get_extras' 'pizza_get_exclusions' 'pizza_clean_customer_orders' 'companies_industries' 'pizza_runners']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: modern_data 2. **Tables**: pizza_names, companies_funding, pizza_customer_orders, pizza_toppings, trees, pizza_recipes, statistics, income_trees, pizza_clean_runner_orders, pizza_runner_orders, word_list, companies_dates, pizza_get_extras, pizza_get_exclusions, pizza_clean_customer_orders, companies_industries, pizza_runners 3. **User Question**: Calculate the total income from Meat Lovers pizzas priced at $12 and Vegetarian pizzas at $10. Include any extra toppings charged at $1 each. Ensure that canceled orders are filtered out. How much money has Pizza Runner earned in total? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local074
bank_sales_trading
null
Please generate a summary of the closing balances at the end of each month for each customer transactions, show the monthly changes and monthly cumulative bank account balances. Ensure that even if a customer has no account activity in a given month, the balance for that month is still included in the output.
null
['weekly_sales' 'shopping_cart_users' 'bitcoin_members' 'interest_metrics' 'customer_regions' 'customer_transactions' 'bitcoin_transactions' 'customer_nodes' 'cleaned_weekly_sales' 'veg_txn_df' 'shopping_cart_events' 'shopping_cart_page_hierarchy' 'bitcoin_prices' 'interest_map' 'veg_loss_rate_df' 'shopping_cart_campaign_identifier' 'veg_cat' 'veg_whsle_df' 'shopping_cart_event_identifier' 'daily_transactions' 'MonthlyMaxBalances' 'monthly_balances' 'attributes' 'sqlite_sequence' 'monthly_net' 'veg_wholesale_data' 'closing_balances']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: bank_sales_trading 2. **Tables**: weekly_sales, shopping_cart_users, bitcoin_members, interest_metrics, customer_regions, customer_transactions, bitcoin_transactions, customer_nodes, cleaned_weekly_sales, veg_txn_df, shopping_cart_events, shopping_cart_page_hierarchy, bitcoin_prices, interest_map, veg_loss_rate_df, shopping_cart_campaign_identifier, veg_cat, veg_whsle_df, shopping_cart_event_identifier, daily_transactions, MonthlyMaxBalances, monthly_balances, attributes, sqlite_sequence, monthly_net, veg_wholesale_data, closing_balances 3. **User Question**: Please generate a summary of the closing balances at the end of each month for each customer transactions, show the monthly changes and monthly cumulative bank account balances. Ensure that even if a customer has no account activity in a given month, the balance for that month is still included in the output. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local064
bank_sales_trading
null
For each customer and each month of 2020, first calculate the month-end balance by adding all deposit amounts and subtracting all withdrawal amounts that occurred during that specific month. Then determine which month in 2020 has the highest count of customers with a positive month-end balance and which month has the lowest count. For each of these two months, compute the average month-end balance across all customers and provide the difference between these two averages
null
['weekly_sales' 'shopping_cart_users' 'bitcoin_members' 'interest_metrics' 'customer_regions' 'customer_transactions' 'bitcoin_transactions' 'customer_nodes' 'cleaned_weekly_sales' 'veg_txn_df' 'shopping_cart_events' 'shopping_cart_page_hierarchy' 'bitcoin_prices' 'interest_map' 'veg_loss_rate_df' 'shopping_cart_campaign_identifier' 'veg_cat' 'veg_whsle_df' 'shopping_cart_event_identifier' 'daily_transactions' 'MonthlyMaxBalances' 'monthly_balances' 'attributes' 'sqlite_sequence' 'monthly_net' 'veg_wholesale_data' 'closing_balances']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: bank_sales_trading 2. **Tables**: weekly_sales, shopping_cart_users, bitcoin_members, interest_metrics, customer_regions, customer_transactions, bitcoin_transactions, customer_nodes, cleaned_weekly_sales, veg_txn_df, shopping_cart_events, shopping_cart_page_hierarchy, bitcoin_prices, interest_map, veg_loss_rate_df, shopping_cart_campaign_identifier, veg_cat, veg_whsle_df, shopping_cart_event_identifier, daily_transactions, MonthlyMaxBalances, monthly_balances, attributes, sqlite_sequence, monthly_net, veg_wholesale_data, closing_balances 3. **User Question**: For each customer and each month of 2020, first calculate the month-end balance by adding all deposit amounts and subtracting all withdrawal amounts that occurred during that specific month. Then determine which month in 2020 has the highest count of customers with a positive month-end balance and which month has the lowest count. For each of these two months, compute the average month-end balance across all customers and provide the difference between these two averages ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local297
bank_sales_trading
null
For each customer, group all deposits and withdrawals by the first day of each month to obtain a monthly net amount, then calculate each month’s closing balance by cumulatively summing these monthly nets. Next, determine the most recent month’s growth rate by comparing its closing balance to the prior month’s balance, treating deposits as positive and withdrawals as negative, and if the previous month’s balance is zero, the growth rate should be the current month’s balance multiplied by 100. Finally, compute the percentage of customers whose most recent month shows a growth rate of more than 5%.
null
['weekly_sales' 'shopping_cart_users' 'bitcoin_members' 'interest_metrics' 'customer_regions' 'customer_transactions' 'bitcoin_transactions' 'customer_nodes' 'cleaned_weekly_sales' 'veg_txn_df' 'shopping_cart_events' 'shopping_cart_page_hierarchy' 'bitcoin_prices' 'interest_map' 'veg_loss_rate_df' 'shopping_cart_campaign_identifier' 'veg_cat' 'veg_whsle_df' 'shopping_cart_event_identifier' 'daily_transactions' 'MonthlyMaxBalances' 'monthly_balances' 'attributes' 'sqlite_sequence' 'monthly_net' 'veg_wholesale_data' 'closing_balances']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: bank_sales_trading 2. **Tables**: weekly_sales, shopping_cart_users, bitcoin_members, interest_metrics, customer_regions, customer_transactions, bitcoin_transactions, customer_nodes, cleaned_weekly_sales, veg_txn_df, shopping_cart_events, shopping_cart_page_hierarchy, bitcoin_prices, interest_map, veg_loss_rate_df, shopping_cart_campaign_identifier, veg_cat, veg_whsle_df, shopping_cart_event_identifier, daily_transactions, MonthlyMaxBalances, monthly_balances, attributes, sqlite_sequence, monthly_net, veg_wholesale_data, closing_balances 3. **User Question**: For each customer, group all deposits and withdrawals by the first day of each month to obtain a monthly net amount, then calculate each month’s closing balance by cumulatively summing these monthly nets. Next, determine the most recent month’s growth rate by comparing its closing balance to the prior month’s balance, treating deposits as positive and withdrawals as negative, and if the previous month’s balance is zero, the growth rate should be the current month’s balance multiplied by 100. Finally, compute the percentage of customers whose most recent month shows a growth rate of more than 5%. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local298
bank_sales_trading
null
For each month, calculate the total balance from all users for the previous month (measured as of the 1st of each month), replacing any negative balances with zero. Ensure that data from the first month is used only as a baseline for calculating previous total balance, and exclude it from the final output. Sort the results in ascending order by month.
null
['weekly_sales' 'shopping_cart_users' 'bitcoin_members' 'interest_metrics' 'customer_regions' 'customer_transactions' 'bitcoin_transactions' 'customer_nodes' 'cleaned_weekly_sales' 'veg_txn_df' 'shopping_cart_events' 'shopping_cart_page_hierarchy' 'bitcoin_prices' 'interest_map' 'veg_loss_rate_df' 'shopping_cart_campaign_identifier' 'veg_cat' 'veg_whsle_df' 'shopping_cart_event_identifier' 'daily_transactions' 'MonthlyMaxBalances' 'monthly_balances' 'attributes' 'sqlite_sequence' 'monthly_net' 'veg_wholesale_data' 'closing_balances']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: bank_sales_trading 2. **Tables**: weekly_sales, shopping_cart_users, bitcoin_members, interest_metrics, customer_regions, customer_transactions, bitcoin_transactions, customer_nodes, cleaned_weekly_sales, veg_txn_df, shopping_cart_events, shopping_cart_page_hierarchy, bitcoin_prices, interest_map, veg_loss_rate_df, shopping_cart_campaign_identifier, veg_cat, veg_whsle_df, shopping_cart_event_identifier, daily_transactions, MonthlyMaxBalances, monthly_balances, attributes, sqlite_sequence, monthly_net, veg_wholesale_data, closing_balances 3. **User Question**: For each month, calculate the total balance from all users for the previous month (measured as of the 1st of each month), replacing any negative balances with zero. Ensure that data from the first month is used only as a baseline for calculating previous total balance, and exclude it from the final output. Sort the results in ascending order by month. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local299
bank_sales_trading
null
For a bank database with customer transactions, calculate each customer's daily running balance (where deposits add to the balance and other transaction types subtract). For each customer and each day, compute the 30-day rolling average balance (only after having 30 days of data, and treating negative averages as zero). Then group these daily averages by month and find each customer's maximum 30-day average balance within each month. Sum these maximum values across all customers for each month. Consider the first month of each customer's transaction history as the baseline period and exclude it from the final results, presenting monthly totals of these summed maximum 30-day average balances.
null
['weekly_sales' 'shopping_cart_users' 'bitcoin_members' 'interest_metrics' 'customer_regions' 'customer_transactions' 'bitcoin_transactions' 'customer_nodes' 'cleaned_weekly_sales' 'veg_txn_df' 'shopping_cart_events' 'shopping_cart_page_hierarchy' 'bitcoin_prices' 'interest_map' 'veg_loss_rate_df' 'shopping_cart_campaign_identifier' 'veg_cat' 'veg_whsle_df' 'shopping_cart_event_identifier' 'daily_transactions' 'MonthlyMaxBalances' 'monthly_balances' 'attributes' 'sqlite_sequence' 'monthly_net' 'veg_wholesale_data' 'closing_balances']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: bank_sales_trading 2. **Tables**: weekly_sales, shopping_cart_users, bitcoin_members, interest_metrics, customer_regions, customer_transactions, bitcoin_transactions, customer_nodes, cleaned_weekly_sales, veg_txn_df, shopping_cart_events, shopping_cart_page_hierarchy, bitcoin_prices, interest_map, veg_loss_rate_df, shopping_cart_campaign_identifier, veg_cat, veg_whsle_df, shopping_cart_event_identifier, daily_transactions, MonthlyMaxBalances, monthly_balances, attributes, sqlite_sequence, monthly_net, veg_wholesale_data, closing_balances 3. **User Question**: For a bank database with customer transactions, calculate each customer's daily running balance (where deposits add to the balance and other transaction types subtract). For each customer and each day, compute the 30-day rolling average balance (only after having 30 days of data, and treating negative averages as zero). Then group these daily averages by month and find each customer's maximum 30-day average balance within each month. Sum these maximum values across all customers for each month. Consider the first month of each customer's transaction history as the baseline period and exclude it from the final results, presenting monthly totals of these summed maximum 30-day average balances. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local300
bank_sales_trading
null
For each customer, calculate their daily balances for every day between their earliest and latest transaction dates, including days without transactions by carrying forward the previous day's balance. Treat any negative daily balances as zero. Then, for each month, determine the highest daily balance each customer had during that month. Finally, for each month, sum these maximum daily balances across all customers to obtain a monthly total.
null
['weekly_sales' 'shopping_cart_users' 'bitcoin_members' 'interest_metrics' 'customer_regions' 'customer_transactions' 'bitcoin_transactions' 'customer_nodes' 'cleaned_weekly_sales' 'veg_txn_df' 'shopping_cart_events' 'shopping_cart_page_hierarchy' 'bitcoin_prices' 'interest_map' 'veg_loss_rate_df' 'shopping_cart_campaign_identifier' 'veg_cat' 'veg_whsle_df' 'shopping_cart_event_identifier' 'daily_transactions' 'MonthlyMaxBalances' 'monthly_balances' 'attributes' 'sqlite_sequence' 'monthly_net' 'veg_wholesale_data' 'closing_balances']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: bank_sales_trading 2. **Tables**: weekly_sales, shopping_cart_users, bitcoin_members, interest_metrics, customer_regions, customer_transactions, bitcoin_transactions, customer_nodes, cleaned_weekly_sales, veg_txn_df, shopping_cart_events, shopping_cart_page_hierarchy, bitcoin_prices, interest_map, veg_loss_rate_df, shopping_cart_campaign_identifier, veg_cat, veg_whsle_df, shopping_cart_event_identifier, daily_transactions, MonthlyMaxBalances, monthly_balances, attributes, sqlite_sequence, monthly_net, veg_wholesale_data, closing_balances 3. **User Question**: For each customer, calculate their daily balances for every day between their earliest and latest transaction dates, including days without transactions by carrying forward the previous day's balance. Treat any negative daily balances as zero. Then, for each month, determine the highest daily balance each customer had during that month. Finally, for each month, sum these maximum daily balances across all customers to obtain a monthly total. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local075
bank_sales_trading
WITH product_viewed AS ( SELECT t1.page_id, SUM(CASE WHEN event_type = 1 THEN 1 ELSE 0 END) AS n_page_views, SUM(CASE WHEN event_type = 2 THEN 1 ELSE 0 END) AS n_added_to_cart FROM shopping_cart_page_hierarchy AS t1 JOIN shopping_cart_events AS t2 ON t1.page_id = t2.page_id WHERE t1.product_id IS NOT NULL GROUP BY t1.page_id ), product_purchased AS ( SELECT t2.page_id, SUM(CASE WHEN event_type = 2 THEN 1 ELSE 0 END) AS purchased_from_cart FROM shopping_cart_page_hierarchy AS t1 JOIN shopping_cart_events AS t2 ON t1.page_id = t2.page_id WHERE t1.product_id IS NOT NULL AND EXISTS ( SELECT visit_id FROM shopping_cart_events WHERE event_type = 3 AND t2.visit_id = visit_id ) AND t1.page_id NOT IN (1, 2, 12, 13) GROUP BY t2.page_id ), product_abandoned AS ( SELECT t2.page_id, SUM(CASE WHEN event_type = 2 THEN 1 ELSE 0 END) AS abandoned_in_cart FROM shopping_cart_page_hierarchy AS t1 JOIN shopping_cart_events AS t2 ON t1.page_id = t2.page_id WHERE t1.product_id IS NOT NULL AND NOT EXISTS ( SELECT visit_id FROM shopping_cart_events WHERE event_type = 3 AND t2.visit_id = visit_id ) AND t1.page_id NOT IN (1, 2, 12, 13) GROUP BY t2.page_id ) SELECT t1.page_id, t1.page_name, t2.n_page_views AS 'number of product being viewed', t2.n_added_to_cart AS 'number added to the cart', t4.abandoned_in_cart AS 'without being purchased in cart', t3.purchased_from_cart AS 'count of actual purchases' FROM shopping_cart_page_hierarchy AS t1 JOIN product_viewed AS t2 ON t2.page_id = t1.page_id JOIN product_purchased AS t3 ON t3.page_id = t1.page_id JOIN product_abandoned AS t4 ON t4.page_id = t1.page_id;
Can you provide a breakdown of how many times each product was viewed, how many times they were added to the shopping cart, and how many times they were left in the cart without being purchased? Also, give me the count of actual purchases for each product. Ensure that products with a page id in (1, 2, 12, 13) are filtered out.
null
['weekly_sales' 'shopping_cart_users' 'bitcoin_members' 'interest_metrics' 'customer_regions' 'customer_transactions' 'bitcoin_transactions' 'customer_nodes' 'cleaned_weekly_sales' 'veg_txn_df' 'shopping_cart_events' 'shopping_cart_page_hierarchy' 'bitcoin_prices' 'interest_map' 'veg_loss_rate_df' 'shopping_cart_campaign_identifier' 'veg_cat' 'veg_whsle_df' 'shopping_cart_event_identifier' 'daily_transactions' 'MonthlyMaxBalances' 'monthly_balances' 'attributes' 'sqlite_sequence' 'monthly_net' 'veg_wholesale_data' 'closing_balances']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: bank_sales_trading 2. **Tables**: weekly_sales, shopping_cart_users, bitcoin_members, interest_metrics, customer_regions, customer_transactions, bitcoin_transactions, customer_nodes, cleaned_weekly_sales, veg_txn_df, shopping_cart_events, shopping_cart_page_hierarchy, bitcoin_prices, interest_map, veg_loss_rate_df, shopping_cart_campaign_identifier, veg_cat, veg_whsle_df, shopping_cart_event_identifier, daily_transactions, MonthlyMaxBalances, monthly_balances, attributes, sqlite_sequence, monthly_net, veg_wholesale_data, closing_balances 3. **User Question**: Can you provide a breakdown of how many times each product was viewed, how many times they were added to the shopping cart, and how many times they were left in the cart without being purchased? Also, give me the count of actual purchases for each product. Ensure that products with a page id in (1, 2, 12, 13) are filtered out. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local077
bank_sales_trading
null
Please analyze our interest data from September 2018 to August 2019. For each month, calculate the average composition for each interest by dividing the composition by the index value. Identify the interest with the highest average composition value each month and report its average composition as the max index composition for that month. Compute the three-month rolling average of these monthly max index compositions. Ensure the output includes the date, the interest name, the max index composition for that month, the rolling average, and the names and max index compositions of the top interests from one month ago and two months ago.
null
['weekly_sales' 'shopping_cart_users' 'bitcoin_members' 'interest_metrics' 'customer_regions' 'customer_transactions' 'bitcoin_transactions' 'customer_nodes' 'cleaned_weekly_sales' 'veg_txn_df' 'shopping_cart_events' 'shopping_cart_page_hierarchy' 'bitcoin_prices' 'interest_map' 'veg_loss_rate_df' 'shopping_cart_campaign_identifier' 'veg_cat' 'veg_whsle_df' 'shopping_cart_event_identifier' 'daily_transactions' 'MonthlyMaxBalances' 'monthly_balances' 'attributes' 'sqlite_sequence' 'monthly_net' 'veg_wholesale_data' 'closing_balances']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: bank_sales_trading 2. **Tables**: weekly_sales, shopping_cart_users, bitcoin_members, interest_metrics, customer_regions, customer_transactions, bitcoin_transactions, customer_nodes, cleaned_weekly_sales, veg_txn_df, shopping_cart_events, shopping_cart_page_hierarchy, bitcoin_prices, interest_map, veg_loss_rate_df, shopping_cart_campaign_identifier, veg_cat, veg_whsle_df, shopping_cart_event_identifier, daily_transactions, MonthlyMaxBalances, monthly_balances, attributes, sqlite_sequence, monthly_net, veg_wholesale_data, closing_balances 3. **User Question**: Please analyze our interest data from September 2018 to August 2019. For each month, calculate the average composition for each interest by dividing the composition by the index value. Identify the interest with the highest average composition value each month and report its average composition as the max index composition for that month. Compute the three-month rolling average of these monthly max index compositions. Ensure the output includes the date, the interest name, the max index composition for that month, the rolling average, and the names and max index compositions of the top interests from one month ago and two months ago. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local078
bank_sales_trading
WITH get_interest_rank AS ( SELECT t1.month_year, t2.interest_name, t1.composition, RANK() OVER ( PARTITION BY t2.interest_name ORDER BY t1.composition DESC ) AS interest_rank FROM interest_metrics AS t1 JOIN interest_map AS t2 ON t1.interest_id = t2.id WHERE t1.month_year IS NOT NULL ), get_top_10 AS ( SELECT month_year, interest_name, composition FROM get_interest_rank WHERE interest_rank = 1 ORDER BY composition DESC LIMIT 10 ), get_bottom_10 AS ( SELECT month_year, interest_name, composition FROM get_interest_rank WHERE interest_rank = 1 ORDER BY composition ASC LIMIT 10 ) SELECT * FROM get_top_10 UNION SELECT * FROM get_bottom_10 ORDER BY composition DESC;
Identify the top 10 and bottom 10 interest categories based on their highest composition values across all months. For each category, display the time(MM-YYYY), interest name, and the composition value
null
['weekly_sales' 'shopping_cart_users' 'bitcoin_members' 'interest_metrics' 'customer_regions' 'customer_transactions' 'bitcoin_transactions' 'customer_nodes' 'cleaned_weekly_sales' 'veg_txn_df' 'shopping_cart_events' 'shopping_cart_page_hierarchy' 'bitcoin_prices' 'interest_map' 'veg_loss_rate_df' 'shopping_cart_campaign_identifier' 'veg_cat' 'veg_whsle_df' 'shopping_cart_event_identifier' 'daily_transactions' 'MonthlyMaxBalances' 'monthly_balances' 'attributes' 'sqlite_sequence' 'monthly_net' 'veg_wholesale_data' 'closing_balances']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: bank_sales_trading 2. **Tables**: weekly_sales, shopping_cart_users, bitcoin_members, interest_metrics, customer_regions, customer_transactions, bitcoin_transactions, customer_nodes, cleaned_weekly_sales, veg_txn_df, shopping_cart_events, shopping_cart_page_hierarchy, bitcoin_prices, interest_map, veg_loss_rate_df, shopping_cart_campaign_identifier, veg_cat, veg_whsle_df, shopping_cart_event_identifier, daily_transactions, MonthlyMaxBalances, monthly_balances, attributes, sqlite_sequence, monthly_net, veg_wholesale_data, closing_balances 3. **User Question**: Identify the top 10 and bottom 10 interest categories based on their highest composition values across all months. For each category, display the time(MM-YYYY), interest name, and the composition value ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local081
northwind
null
Considering only the customers who placed orders in 1998, calculate the total amount each customer spent by summing the unit price multiplied by the quantity of all products in their orders, excluding any discounts. Assign each customer to a spending group based on the customer group thresholds, and determine how many customers are in each spending group and what percentage of the total number of customers who placed orders in 1998 each group represents.
null
['categories' 'customercustomerdemo' 'customerdemographics' 'customers' 'employees' 'employeeterritories' 'order_details' 'orders' 'products' 'region' 'shippers' 'suppliers' 'territories' 'usstates' 'customergroupthreshold']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: northwind 2. **Tables**: categories, customercustomerdemo, customerdemographics, customers, employees, employeeterritories, order_details, orders, products, region, shippers, suppliers, territories, usstates, customergroupthreshold 3. **User Question**: Considering only the customers who placed orders in 1998, calculate the total amount each customer spent by summing the unit price multiplied by the quantity of all products in their orders, excluding any discounts. Assign each customer to a spending group based on the customer group thresholds, and determine how many customers are in each spending group and what percentage of the total number of customers who placed orders in 1998 each group represents. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local085
northwind
null
Among employees who have more than 50 total orders, which three have the highest percentage of late orders, where an order is considered late if the shipped date is on or after its required date? Please list each employee's ID, the number of late orders, and the corresponding late-order percentage.
null
['categories' 'customercustomerdemo' 'customerdemographics' 'customers' 'employees' 'employeeterritories' 'order_details' 'orders' 'products' 'region' 'shippers' 'suppliers' 'territories' 'usstates' 'customergroupthreshold']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: northwind 2. **Tables**: categories, customercustomerdemo, customerdemographics, customers, employees, employeeterritories, order_details, orders, products, region, shippers, suppliers, territories, usstates, customergroupthreshold 3. **User Question**: Among employees who have more than 50 total orders, which three have the highest percentage of late orders, where an order is considered late if the shipped date is on or after its required date? Please list each employee's ID, the number of late orders, and the corresponding late-order percentage. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local096
Db-IMDB
null
For each year, calculate the percentage of films that had exclusively female actors (meaning no male actors and no actors with unknown/unspecified gender). Consider actors with gender marked as 'Male' or 'None' as non-female. For the results, display the year, the total number of movies in that year, and the percentage of movies with exclusively female actors. Extract the year from the Movie.year field by taking the last 4 characters and converting to a number.
null
['Movie' 'Genre' 'Language' 'Country' 'Location' 'M_Location' 'M_Country' 'M_Language' 'M_Genre' 'Person' 'M_Producer' 'M_Director' 'M_Cast']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Db-IMDB 2. **Tables**: Movie, Genre, Language, Country, Location, M_Location, M_Country, M_Language, M_Genre, Person, M_Producer, M_Director, M_Cast 3. **User Question**: For each year, calculate the percentage of films that had exclusively female actors (meaning no male actors and no actors with unknown/unspecified gender). Consider actors with gender marked as 'Male' or 'None' as non-female. For the results, display the year, the total number of movies in that year, and the percentage of movies with exclusively female actors. Extract the year from the Movie.year field by taking the last 4 characters and converting to a number. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local097
Db-IMDB
null
Could you analyze our data and identify which ten-year period starting from any movie release year present in the data had the largest number of films, considering consecutive ten-year periods beginning at each unique year? Only output the start year and the total count for that specific period.
null
['Movie' 'Genre' 'Language' 'Country' 'Location' 'M_Location' 'M_Country' 'M_Language' 'M_Genre' 'Person' 'M_Producer' 'M_Director' 'M_Cast']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Db-IMDB 2. **Tables**: Movie, Genre, Language, Country, Location, M_Location, M_Country, M_Language, M_Genre, Person, M_Producer, M_Director, M_Cast 3. **User Question**: Could you analyze our data and identify which ten-year period starting from any movie release year present in the data had the largest number of films, considering consecutive ten-year periods beginning at each unique year? Only output the start year and the total count for that specific period. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local098
Db-IMDB
null
From the first year each actor appeared in a film to the last, how many actors in the database never had a gap longer than three consecutive years without at least one new movie appearance, meaning there is no four-year span anywhere in their active career without at least a single film credit?
null
['Movie' 'Genre' 'Language' 'Country' 'Location' 'M_Location' 'M_Country' 'M_Language' 'M_Genre' 'Person' 'M_Producer' 'M_Director' 'M_Cast']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Db-IMDB 2. **Tables**: Movie, Genre, Language, Country, Location, M_Location, M_Country, M_Language, M_Genre, Person, M_Producer, M_Director, M_Cast 3. **User Question**: From the first year each actor appeared in a film to the last, how many actors in the database never had a gap longer than three consecutive years without at least one new movie appearance, meaning there is no four-year span anywhere in their active career without at least a single film credit? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local099
Db-IMDB
WITH YASH_CHOPRAS_PID AS ( SELECT TRIM(P.PID) AS PID FROM Person P WHERE TRIM(P.Name) = 'Yash Chopra' ), NUM_OF_MOV_BY_ACTOR_DIRECTOR AS ( SELECT TRIM(MC.PID) AS ACTOR_PID, TRIM(MD.PID) AS DIRECTOR_PID, COUNT(DISTINCT TRIM(MD.MID)) AS NUM_OF_MOV FROM M_Cast MC JOIN M_Director MD ON TRIM(MC.MID) = TRIM(MD.MID) GROUP BY ACTOR_PID, DIRECTOR_PID ), NUM_OF_MOVIES_BY_YC AS ( SELECT NM.ACTOR_PID, NM.DIRECTOR_PID, NM.NUM_OF_MOV AS NUM_OF_MOV_BY_YC FROM NUM_OF_MOV_BY_ACTOR_DIRECTOR NM JOIN YASH_CHOPRAS_PID YCP ON NM.DIRECTOR_PID = YCP.PID ), MAX_MOV_BY_OTHER_DIRECTORS AS ( SELECT ACTOR_PID, MAX(NUM_OF_MOV) AS MAX_NUM_OF_MOV FROM NUM_OF_MOV_BY_ACTOR_DIRECTOR NM JOIN YASH_CHOPRAS_PID YCP ON NM.DIRECTOR_PID <> YCP.PID GROUP BY ACTOR_PID ), ACTORS_MOV_COMPARISION AS ( SELECT NMY.ACTOR_PID, CASE WHEN NMY.NUM_OF_MOV_BY_YC > IFNULL(NMO.MAX_NUM_OF_MOV, 0) THEN 'Y' ELSE 'N' END AS MORE_MOV_BY_YC FROM NUM_OF_MOVIES_BY_YC NMY LEFT OUTER JOIN MAX_MOV_BY_OTHER_DIRECTORS NMO ON NMY.ACTOR_PID = NMO.ACTOR_PID ) SELECT COUNT(DISTINCT TRIM(P.PID)) AS "Number of actor" FROM Person P WHERE TRIM(P.PID) IN ( SELECT DISTINCT ACTOR_PID FROM ACTORS_MOV_COMPARISION WHERE MORE_MOV_BY_YC = 'Y' );
I need you to look into the actor collaborations and tell me how many actors have made more films with Yash Chopra than with any other director. This will help us understand his influence on the industry better.
null
['Movie' 'Genre' 'Language' 'Country' 'Location' 'M_Location' 'M_Country' 'M_Language' 'M_Genre' 'Person' 'M_Producer' 'M_Director' 'M_Cast']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Db-IMDB 2. **Tables**: Movie, Genre, Language, Country, Location, M_Location, M_Country, M_Language, M_Genre, Person, M_Producer, M_Director, M_Cast 3. **User Question**: I need you to look into the actor collaborations and tell me how many actors have made more films with Yash Chopra than with any other director. This will help us understand his influence on the industry better. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local100
Db-IMDB
null
Find out how many actors have a 'Shahrukh number' of 2? This means they acted in a film with someone who acted with Shahrukh Khan, but not directly with him.
null
['Movie' 'Genre' 'Language' 'Country' 'Location' 'M_Location' 'M_Country' 'M_Language' 'M_Genre' 'Person' 'M_Producer' 'M_Director' 'M_Cast']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: Db-IMDB 2. **Tables**: Movie, Genre, Language, Country, Location, M_Location, M_Country, M_Language, M_Genre, Person, M_Producer, M_Director, M_Cast 3. **User Question**: Find out how many actors have a 'Shahrukh number' of 2? This means they acted in a film with someone who acted with Shahrukh Khan, but not directly with him. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local114
education_business
null
Provide a detailed web sales report for each region, including the number of orders, total sales amount, and the name and sales amount of all sales representatives who achieved the highest total sales amount in that region (include all representatives in case of a tie).
null
['hardware_dim_customer' 'hardware_fact_pre_invoice_deductions' 'web_sales_reps' 'hardware_dim_product' 'web_orders' 'StaffHours' 'university_enrollment' 'university_faculty' 'university_student' 'university_offering' 'web_accounts' 'web_events' 'SalaryDataset' 'web_region' 'hardware_fact_gross_price' 'hardware_fact_manufacturing_cost' 'university_course' 'hardware_fact_sales_monthly' 'NAMES']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: education_business 2. **Tables**: hardware_dim_customer, hardware_fact_pre_invoice_deductions, web_sales_reps, hardware_dim_product, web_orders, StaffHours, university_enrollment, university_faculty, university_student, university_offering, web_accounts, web_events, SalaryDataset, web_region, hardware_fact_gross_price, hardware_fact_manufacturing_cost, university_course, hardware_fact_sales_monthly, NAMES 3. **User Question**: Provide a detailed web sales report for each region, including the number of orders, total sales amount, and the name and sales amount of all sales representatives who achieved the highest total sales amount in that region (include all representatives in case of a tie). ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local128
BowlingLeague
null
List the bowlers (including their ID, first name, and last name), match number, game number, handicap score, tournament date, and location for only those bowlers who have won games with a handicap score of 190 or less at all three venues: Thunderbird Lanes, Totem Lanes, and Bolero Lanes. Only include the specific game records where they won with a handicap score of 190 or less at these three locations.
null
['Bowler_Scores' 'Bowler_Scores_Archive' 'Bowlers' 'sqlite_sequence' 'Match_Games' 'Match_Games_Archive' 'Teams' 'Tournaments' 'Tournaments_Archive' 'Tourney_Matches' 'Tourney_Matches_Archive' 'WAZips']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: BowlingLeague 2. **Tables**: Bowler_Scores, Bowler_Scores_Archive, Bowlers, sqlite_sequence, Match_Games, Match_Games_Archive, Teams, Tournaments, Tournaments_Archive, Tourney_Matches, Tourney_Matches_Archive, WAZips 3. **User Question**: List the bowlers (including their ID, first name, and last name), match number, game number, handicap score, tournament date, and location for only those bowlers who have won games with a handicap score of 190 or less at all three venues: Thunderbird Lanes, Totem Lanes, and Bolero Lanes. Only include the specific game records where they won with a handicap score of 190 or less at these three locations. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local130
school_scheduling
null
Could you provide a list of last names for all students who have completed English courses (where completion is defined as having a ClassStatus of 2), along with their quintile ranks based on their individual grades in those courses? The quintile should be determined by calculating how many students have grades greater than or equal to each student's grade, then dividing this ranking by the total number of students who completed English courses. The quintiles should be labeled as "First" (top 20%), "Second" (top 21-40%), "Third" (top 41-60%), "Fourth" (top 61-80%), and "Fifth" (bottom 20%). Please sort the results from highest performing quintile to lowest (First to Fifth).
null
['Buildings' 'Categories' 'Class_Rooms' 'sqlite_sequence' 'Classes' 'Departments' 'Faculty' 'Faculty_Categories' 'Faculty_Classes' 'Faculty_Subjects' 'Majors' 'Staff' 'Student_Class_Status' 'Student_Schedules' 'Students' 'Subjects']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: school_scheduling 2. **Tables**: Buildings, Categories, Class_Rooms, sqlite_sequence, Classes, Departments, Faculty, Faculty_Categories, Faculty_Classes, Faculty_Subjects, Majors, Staff, Student_Class_Status, Student_Schedules, Students, Subjects 3. **User Question**: Could you provide a list of last names for all students who have completed English courses (where completion is defined as having a ClassStatus of 2), along with their quintile ranks based on their individual grades in those courses? The quintile should be determined by calculating how many students have grades greater than or equal to each student's grade, then dividing this ranking by the total number of students who completed English courses. The quintiles should be labeled as "First" (top 20%), "Second" (top 21-40%), "Third" (top 41-60%), "Fourth" (top 61-80%), and "Fifth" (bottom 20%). Please sort the results from highest performing quintile to lowest (First to Fifth). ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local131
EntertainmentAgency
SELECT Musical_Styles.StyleName, COUNT(RankedPreferences.FirstStyle) AS FirstPreference, COUNT(RankedPreferences.SecondStyle) AS SecondPreference, COUNT(RankedPreferences.ThirdStyle) AS ThirdPreference FROM Musical_Styles, (SELECT (CASE WHEN Musical_Preferences.PreferenceSeq = 1 THEN Musical_Preferences.StyleID ELSE Null END) As FirstStyle, (CASE WHEN Musical_Preferences.PreferenceSeq = 2 THEN Musical_Preferences.StyleID ELSE Null END) As SecondStyle, (CASE WHEN Musical_Preferences.PreferenceSeq = 3 THEN Musical_Preferences.StyleID ELSE Null END) AS ThirdStyle FROM Musical_Preferences) AS RankedPreferences WHERE Musical_Styles.StyleID = RankedPreferences.FirstStyle OR Musical_Styles.StyleID = RankedPreferences.SecondStyle OR Musical_Styles.StyleID = RankedPreferences.ThirdStyle GROUP BY StyleID, StyleName HAVING COUNT(FirstStyle) > 0 OR COUNT(SecondStyle) > 0 OR COUNT(ThirdStyle) > 0 ORDER BY FirstPreference DESC, SecondPreference DESC, ThirdPreference DESC, StyleID;
Could you list each musical style with the number of times it appears as a 1st, 2nd, or 3rd preference in a single row per style?
null
['Agents' 'Customers' 'Engagements' 'Entertainer_Members' 'Entertainer_Styles' 'Entertainers' 'Members' 'Musical_Preferences' 'Musical_Styles' 'ztblDays' 'ztblMonths' 'ztblSkipLabels' 'ztblWeeks']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: EntertainmentAgency 2. **Tables**: Agents, Customers, Engagements, Entertainer_Members, Entertainer_Styles, Entertainers, Members, Musical_Preferences, Musical_Styles, ztblDays, ztblMonths, ztblSkipLabels, ztblWeeks 3. **User Question**: Could you list each musical style with the number of times it appears as a 1st, 2nd, or 3rd preference in a single row per style? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local133
EntertainmentAgency
null
Given a database of musical styles and user preferences, where Musical_Preferences contains user rankings of musical styles (PreferenceSeq=1 for first choice, PreferenceSeq=2 for second choice, PreferenceSeq=3 for third choice): Calculate a weighted score for each musical style by assigning 3 points for each time it was ranked as first choice, 2 points for each second choice, and 1 point for each third choice ranking. Calculate the total weighted score for each musical style that has been ranked by at least one user. Then, compute the absolute difference between each style's total weighted score and the average total weighted score across all such styles.
null
['Agents' 'Customers' 'Engagements' 'Entertainer_Members' 'Entertainer_Styles' 'Entertainers' 'Members' 'Musical_Preferences' 'Musical_Styles' 'ztblDays' 'ztblMonths' 'ztblSkipLabels' 'ztblWeeks']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: EntertainmentAgency 2. **Tables**: Agents, Customers, Engagements, Entertainer_Members, Entertainer_Styles, Entertainers, Members, Musical_Preferences, Musical_Styles, ztblDays, ztblMonths, ztblSkipLabels, ztblWeeks 3. **User Question**: Given a database of musical styles and user preferences, where Musical_Preferences contains user rankings of musical styles (PreferenceSeq=1 for first choice, PreferenceSeq=2 for second choice, PreferenceSeq=3 for third choice): Calculate a weighted score for each musical style by assigning 3 points for each time it was ranked as first choice, 2 points for each second choice, and 1 point for each third choice ranking. Calculate the total weighted score for each musical style that has been ranked by at least one user. Then, compute the absolute difference between each style's total weighted score and the average total weighted score across all such styles. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local132
EntertainmentAgency
null
Show all pairs of entertainers and customers who each have up to three style strengths or preferences, where the first and second style preferences of the customers match the first and second style strengths of the entertainers (or in reverse order). Only return the entertainer’s stage name and the customer’s last name
null
['Agents' 'Customers' 'Engagements' 'Entertainer_Members' 'Entertainer_Styles' 'Entertainers' 'Members' 'Musical_Preferences' 'Musical_Styles' 'ztblDays' 'ztblMonths' 'ztblSkipLabels' 'ztblWeeks']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: EntertainmentAgency 2. **Tables**: Agents, Customers, Engagements, Entertainer_Members, Entertainer_Styles, Entertainers, Members, Musical_Preferences, Musical_Styles, ztblDays, ztblMonths, ztblSkipLabels, ztblWeeks 3. **User Question**: Show all pairs of entertainers and customers who each have up to three style strengths or preferences, where the first and second style preferences of the customers match the first and second style strengths of the entertainers (or in reverse order). Only return the entertainer’s stage name and the customer’s last name ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local141
AdventureWorks
null
How did each salesperson's annual total sales compare to their annual sales quota? Provide the difference between their total sales and the quota for each year, organized by salesperson and year.
null
['salesperson' 'product' 'productmodelproductdescriptionculture' 'productdescription' 'productreview' 'productcategory' 'productsubcategory' 'salesorderdetail' 'salesorderheader' 'salesterritory' 'countryregioncurrency' 'currencyrate' 'SalesPersonQuotaHistory']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: AdventureWorks 2. **Tables**: salesperson, product, productmodelproductdescriptionculture, productdescription, productreview, productcategory, productsubcategory, salesorderdetail, salesorderheader, salesterritory, countryregioncurrency, currencyrate, SalesPersonQuotaHistory 3. **User Question**: How did each salesperson's annual total sales compare to their annual sales quota? Provide the difference between their total sales and the quota for each year, organized by salesperson and year. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local152
imdb_movies
null
Can you provide the top 9 directors by movie count, including their ID, name, number of movies, average inter-movie duration (rounded to the nearest integer), average rating (rounded to 2 decimals), total votes, minimum and maximum ratings, and total movie duration? Sort the output first by movie count in descending order and then by total movie duration in descending order.
null
['ERD' 'movies' 'genre' 'director_mapping' 'role_mapping' 'names' 'ratings']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: imdb_movies 2. **Tables**: ERD, movies, genre, director_mapping, role_mapping, names, ratings 3. **User Question**: Can you provide the top 9 directors by movie count, including their ID, name, number of movies, average inter-movie duration (rounded to the nearest integer), average rating (rounded to 2 decimals), total votes, minimum and maximum ratings, and total movie duration? Sort the output first by movie count in descending order and then by total movie duration in descending order. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local230
imdb_movies
null
Determine the top three genres with the most movies rated above 8, and then identify the top four directors who have directed the most films rated above 8 within those genres. List these directors and their respective movie counts.
null
['ERD' 'movies' 'genre' 'director_mapping' 'role_mapping' 'names' 'ratings']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: imdb_movies 2. **Tables**: ERD, movies, genre, director_mapping, role_mapping, names, ratings 3. **User Question**: Determine the top three genres with the most movies rated above 8, and then identify the top four directors who have directed the most films rated above 8 within those genres. List these directors and their respective movie counts. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local156
bank_sales_trading
null
Analyze the annual average purchase price per Bitcoin by region, computed as the total dollar amount spent divided by the total quantity purchased each year, excluding the first year's data for each region. Then, for each year, rank the regions based on these average purchase prices, and calculate the annual percentage change in cost for each region compared to the previous year.
null
['weekly_sales' 'shopping_cart_users' 'bitcoin_members' 'interest_metrics' 'customer_regions' 'customer_transactions' 'bitcoin_transactions' 'customer_nodes' 'cleaned_weekly_sales' 'veg_txn_df' 'shopping_cart_events' 'shopping_cart_page_hierarchy' 'bitcoin_prices' 'interest_map' 'veg_loss_rate_df' 'shopping_cart_campaign_identifier' 'veg_cat' 'veg_whsle_df' 'shopping_cart_event_identifier' 'daily_transactions' 'MonthlyMaxBalances' 'monthly_balances' 'attributes' 'sqlite_sequence' 'monthly_net' 'veg_wholesale_data' 'closing_balances']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: bank_sales_trading 2. **Tables**: weekly_sales, shopping_cart_users, bitcoin_members, interest_metrics, customer_regions, customer_transactions, bitcoin_transactions, customer_nodes, cleaned_weekly_sales, veg_txn_df, shopping_cart_events, shopping_cart_page_hierarchy, bitcoin_prices, interest_map, veg_loss_rate_df, shopping_cart_campaign_identifier, veg_cat, veg_whsle_df, shopping_cart_event_identifier, daily_transactions, MonthlyMaxBalances, monthly_balances, attributes, sqlite_sequence, monthly_net, veg_wholesale_data, closing_balances 3. **User Question**: Analyze the annual average purchase price per Bitcoin by region, computed as the total dollar amount spent divided by the total quantity purchased each year, excluding the first year's data for each region. Then, for each year, rank the regions based on these average purchase prices, and calculate the annual percentage change in cost for each region compared to the previous year. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local157
bank_sales_trading
null
Using the "bitcoin_prices" table, please calculate the daily percentage change in trading volume for each ticker from August 1 to August 10, 2021, ensuring that any volume ending in "K" or "M" is accurately converted to thousands or millions, any "-" volume is treated as zero, only non-zero volumes are used to determine the previous day's volume, and the results are ordered by ticker and date.
null
['weekly_sales' 'shopping_cart_users' 'bitcoin_members' 'interest_metrics' 'customer_regions' 'customer_transactions' 'bitcoin_transactions' 'customer_nodes' 'cleaned_weekly_sales' 'veg_txn_df' 'shopping_cart_events' 'shopping_cart_page_hierarchy' 'bitcoin_prices' 'interest_map' 'veg_loss_rate_df' 'shopping_cart_campaign_identifier' 'veg_cat' 'veg_whsle_df' 'shopping_cart_event_identifier' 'daily_transactions' 'MonthlyMaxBalances' 'monthly_balances' 'attributes' 'sqlite_sequence' 'monthly_net' 'veg_wholesale_data' 'closing_balances']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: bank_sales_trading 2. **Tables**: weekly_sales, shopping_cart_users, bitcoin_members, interest_metrics, customer_regions, customer_transactions, bitcoin_transactions, customer_nodes, cleaned_weekly_sales, veg_txn_df, shopping_cart_events, shopping_cart_page_hierarchy, bitcoin_prices, interest_map, veg_loss_rate_df, shopping_cart_campaign_identifier, veg_cat, veg_whsle_df, shopping_cart_event_identifier, daily_transactions, MonthlyMaxBalances, monthly_balances, attributes, sqlite_sequence, monthly_net, veg_wholesale_data, closing_balances 3. **User Question**: Using the "bitcoin_prices" table, please calculate the daily percentage change in trading volume for each ticker from August 1 to August 10, 2021, ensuring that any volume ending in "K" or "M" is accurately converted to thousands or millions, any "-" volume is treated as zero, only non-zero volumes are used to determine the previous day's volume, and the results are ordered by ticker and date. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local163
education_business
WITH AvgSalaries AS ( SELECT facrank AS FacRank, AVG(facsalary) AS AvSalary FROM university_faculty GROUP BY facrank ), SalaryDifferences AS ( SELECT university_faculty.facrank AS FacRank, university_faculty.facfirstname AS FacFirstName, university_faculty.faclastname AS FacLastName, university_faculty.facsalary AS Salary, ABS(university_faculty.facsalary - AvgSalaries.AvSalary) AS Diff FROM university_faculty JOIN AvgSalaries ON university_faculty.facrank = AvgSalaries.FacRank ), MinDifferences AS ( SELECT FacRank, MIN(Diff) AS MinDiff FROM SalaryDifferences GROUP BY FacRank ) SELECT s.FacRank, s.FacFirstName, s.FacLastName, s.Salary FROM SalaryDifferences s JOIN MinDifferences m ON s.FacRank = m.FacRank AND s.Diff = m.MinDiff;
Which university faculty members' salaries are closest to the average salary for their respective ranks? Please provide the ranks, first names, last names, and salaries.university
null
['hardware_dim_customer' 'hardware_fact_pre_invoice_deductions' 'web_sales_reps' 'hardware_dim_product' 'web_orders' 'StaffHours' 'university_enrollment' 'university_faculty' 'university_student' 'university_offering' 'web_accounts' 'web_events' 'SalaryDataset' 'web_region' 'hardware_fact_gross_price' 'hardware_fact_manufacturing_cost' 'university_course' 'hardware_fact_sales_monthly' 'NAMES']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: education_business 2. **Tables**: hardware_dim_customer, hardware_fact_pre_invoice_deductions, web_sales_reps, hardware_dim_product, web_orders, StaffHours, university_enrollment, university_faculty, university_student, university_offering, web_accounts, web_events, SalaryDataset, web_region, hardware_fact_gross_price, hardware_fact_manufacturing_cost, university_course, hardware_fact_sales_monthly, NAMES 3. **User Question**: Which university faculty members' salaries are closest to the average salary for their respective ranks? Please provide the ranks, first names, last names, and salaries.university ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local168
city_legislation
null
Among job postings that specifically have the Data Analyst, require a non-null annual average salary, and are remote, what is the overall average salary when considering only the top three most frequently demanded skills for these positions?
null
['aliens_details' 'skills_dim' 'legislators_terms' 'cities_currencies' 'legislators' 'skills_job_dim' 'job_postings_fact' 'alien_data' 'cities_countries' 'legislation_date_dim' 'cities' 'aliens_location' 'aliens' 'cities_languages' 'job_company' 'city_legislation']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: city_legislation 2. **Tables**: aliens_details, skills_dim, legislators_terms, cities_currencies, legislators, skills_job_dim, job_postings_fact, alien_data, cities_countries, legislation_date_dim, cities, aliens_location, aliens, cities_languages, job_company, city_legislation 3. **User Question**: Among job postings that specifically have the Data Analyst, require a non-null annual average salary, and are remote, what is the overall average salary when considering only the top three most frequently demanded skills for these positions? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local169
city_legislation
null
What is the annual retention rate of legislators who began their first term between January 1, 1917 and December 31, 1999, measured as the proportion of this cohort still in office on December 31st for each of the first 20 years following their initial term start? The results should show all 20 periods in sequence regardless of whether any legislators were retained in a particular year.
null
['aliens_details' 'skills_dim' 'legislators_terms' 'cities_currencies' 'legislators' 'skills_job_dim' 'job_postings_fact' 'alien_data' 'cities_countries' 'legislation_date_dim' 'cities' 'aliens_location' 'aliens' 'cities_languages' 'job_company' 'city_legislation']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: city_legislation 2. **Tables**: aliens_details, skills_dim, legislators_terms, cities_currencies, legislators, skills_job_dim, job_postings_fact, alien_data, cities_countries, legislation_date_dim, cities, aliens_location, aliens, cities_languages, job_company, city_legislation 3. **User Question**: What is the annual retention rate of legislators who began their first term between January 1, 1917 and December 31, 1999, measured as the proportion of this cohort still in office on December 31st for each of the first 20 years following their initial term start? The results should show all 20 periods in sequence regardless of whether any legislators were retained in a particular year. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local171
city_legislation
null
For male legislators from Louisiana, how many distinct legislators were actively serving on December 31 of each year from more than 30 years since their first term up to less than 50 years, grouping the results by the exact number of years elapsed since their first term?
null
['aliens_details' 'skills_dim' 'legislators_terms' 'cities_currencies' 'legislators' 'skills_job_dim' 'job_postings_fact' 'alien_data' 'cities_countries' 'legislation_date_dim' 'cities' 'aliens_location' 'aliens' 'cities_languages' 'job_company' 'city_legislation']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: city_legislation 2. **Tables**: aliens_details, skills_dim, legislators_terms, cities_currencies, legislators, skills_job_dim, job_postings_fact, alien_data, cities_countries, legislation_date_dim, cities, aliens_location, aliens, cities_languages, job_company, city_legislation 3. **User Question**: For male legislators from Louisiana, how many distinct legislators were actively serving on December 31 of each year from more than 30 years since their first term up to less than 50 years, grouping the results by the exact number of years elapsed since their first term? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local167
city_legislation
null
Based on the state each female legislator first represented, which state has the highest number of female legislators whose terms included December 31st at any point, and what is that count? Please provide the state's abbreviation.
null
['aliens_details' 'skills_dim' 'legislators_terms' 'cities_currencies' 'legislators' 'skills_job_dim' 'job_postings_fact' 'alien_data' 'cities_countries' 'legislation_date_dim' 'cities' 'aliens_location' 'aliens' 'cities_languages' 'job_company' 'city_legislation']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: city_legislation 2. **Tables**: aliens_details, skills_dim, legislators_terms, cities_currencies, legislators, skills_job_dim, job_postings_fact, alien_data, cities_countries, legislation_date_dim, cities, aliens_location, aliens, cities_languages, job_company, city_legislation 3. **User Question**: Based on the state each female legislator first represented, which state has the highest number of female legislators whose terms included December 31st at any point, and what is that count? Please provide the state's abbreviation. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local170
city_legislation
null
Identify the state abbreviations where, for both male and female legislators, the retention rate remains greater than zero at specific intervals of 0, 2, 4, 6, 8, and 10 years after their first term start date. A legislator is considered retained if they are serving on December 31 of the respective year. Only include states where both gender cohorts maintain non-zero retention rates at all six of these time points during the first decade of service.
null
['aliens_details' 'skills_dim' 'legislators_terms' 'cities_currencies' 'legislators' 'skills_job_dim' 'job_postings_fact' 'alien_data' 'cities_countries' 'legislation_date_dim' 'cities' 'aliens_location' 'aliens' 'cities_languages' 'job_company' 'city_legislation']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: city_legislation 2. **Tables**: aliens_details, skills_dim, legislators_terms, cities_currencies, legislators, skills_job_dim, job_postings_fact, alien_data, cities_countries, legislation_date_dim, cities, aliens_location, aliens, cities_languages, job_company, city_legislation 3. **User Question**: Identify the state abbreviations where, for both male and female legislators, the retention rate remains greater than zero at specific intervals of 0, 2, 4, 6, 8, and 10 years after their first term start date. A legislator is considered retained if they are serving on December 31 of the respective year. Only include states where both gender cohorts maintain non-zero retention rates at all six of these time points during the first decade of service. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local193
sqlite-sakila
null
Could you find out the average percentage of the total lifetime sales (LTV) that occur in the first 7 and 30 days after a customer's initial purchase? Also, include the average total lifetime sales (LTV). Please exclude customers with zero lifetime sales. The 7- and 30-day periods should be based on the exact number of hours-minutes-seconds, not calendar days.
null
['actor' 'country' 'city' 'address' 'language' 'category' 'customer' 'film' 'film_actor' 'film_category' 'film_text' 'inventory' 'staff' 'store' 'payment' 'rental' 'monthly_payment_totals' 'MonthlyTotals' 'total_revenue_by_film']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: sqlite-sakila 2. **Tables**: actor, country, city, address, language, category, customer, film, film_actor, film_category, film_text, inventory, staff, store, payment, rental, monthly_payment_totals, MonthlyTotals, total_revenue_by_film 3. **User Question**: Could you find out the average percentage of the total lifetime sales (LTV) that occur in the first 7 and 30 days after a customer's initial purchase? Also, include the average total lifetime sales (LTV). Please exclude customers with zero lifetime sales. The 7- and 30-day periods should be based on the exact number of hours-minutes-seconds, not calendar days. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local194
sqlite-sakila
null
Please provide a list of the top three revenue-generating films for each actor, along with the average revenue per actor in those films, calculated by dividing the total film revenue equally among the actors for each film.
null
['actor' 'country' 'city' 'address' 'language' 'category' 'customer' 'film' 'film_actor' 'film_category' 'film_text' 'inventory' 'staff' 'store' 'payment' 'rental' 'monthly_payment_totals' 'MonthlyTotals' 'total_revenue_by_film']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: sqlite-sakila 2. **Tables**: actor, country, city, address, language, category, customer, film, film_actor, film_category, film_text, inventory, staff, store, payment, rental, monthly_payment_totals, MonthlyTotals, total_revenue_by_film 3. **User Question**: Please provide a list of the top three revenue-generating films for each actor, along with the average revenue per actor in those films, calculated by dividing the total film revenue equally among the actors for each film. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local195
sqlite-sakila
null
Please find out how widespread the appeal of our top five actors is. What percentage of our customers have rented films featuring these actors?
null
['actor' 'country' 'city' 'address' 'language' 'category' 'customer' 'film' 'film_actor' 'film_category' 'film_text' 'inventory' 'staff' 'store' 'payment' 'rental' 'monthly_payment_totals' 'MonthlyTotals' 'total_revenue_by_film']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: sqlite-sakila 2. **Tables**: actor, country, city, address, language, category, customer, film, film_actor, film_category, film_text, inventory, staff, store, payment, rental, monthly_payment_totals, MonthlyTotals, total_revenue_by_film 3. **User Question**: Please find out how widespread the appeal of our top five actors is. What percentage of our customers have rented films featuring these actors? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local196
sqlite-sakila
null
For each rating category of the first movie rented by customers—where the first movie is identified based on the earliest payment date per customer—please provide the average total amount spent per customer and the average number of subsequent rentals (calculated as the total number of rentals minus one) for customers whose first rented movie falls into that rating category.
null
['actor' 'country' 'city' 'address' 'language' 'category' 'customer' 'film' 'film_actor' 'film_category' 'film_text' 'inventory' 'staff' 'store' 'payment' 'rental' 'monthly_payment_totals' 'MonthlyTotals' 'total_revenue_by_film']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: sqlite-sakila 2. **Tables**: actor, country, city, address, language, category, customer, film, film_actor, film_category, film_text, inventory, staff, store, payment, rental, monthly_payment_totals, MonthlyTotals, total_revenue_by_film 3. **User Question**: For each rating category of the first movie rented by customers—where the first movie is identified based on the earliest payment date per customer—please provide the average total amount spent per customer and the average number of subsequent rentals (calculated as the total number of rentals minus one) for customers whose first rented movie falls into that rating category. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local197
sqlite-sakila
WITH result_table AS ( SELECT strftime('%m', pm.payment_date) AS pay_mon, customer_id, COUNT(pm.amount) AS pay_countpermon, SUM(pm.amount) AS pay_amount FROM payment AS pm GROUP BY pay_mon, customer_id ), top10_customer AS ( SELECT customer_id, SUM(tb.pay_amount) AS total_payments FROM result_table AS tb GROUP BY customer_id ORDER BY SUM(tb.pay_amount) DESC LIMIT 10 ), difference_per_mon AS ( SELECT pay_mon AS month_number, pay_mon AS month, tb.pay_countpermon, tb.pay_amount, ABS(tb.pay_amount - LAG(tb.pay_amount) OVER (PARTITION BY tb.customer_id)) AS diff FROM result_table tb JOIN top10_customer top ON top.customer_id = tb.customer_id ) SELECT month, ROUND(max_diff, 2) AS max_diff FROM ( SELECT month, diff, month_number, MAX(diff) OVER (PARTITION BY month) AS max_diff FROM difference_per_mon ) AS max_per_mon WHERE diff = max_diff ORDER BY max_diff DESC LIMIT 1;
Among our top 10 paying customers, can you identify the largest change in payment amounts from one month to the immediately following month? Specifically, please determine for which customer and during which month this maximum month-over-month difference occurred, and provide the difference rounded to two decimal places.
null
['actor' 'country' 'city' 'address' 'language' 'category' 'customer' 'film' 'film_actor' 'film_category' 'film_text' 'inventory' 'staff' 'store' 'payment' 'rental' 'monthly_payment_totals' 'MonthlyTotals' 'total_revenue_by_film']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: sqlite-sakila 2. **Tables**: actor, country, city, address, language, category, customer, film, film_actor, film_category, film_text, inventory, staff, store, payment, rental, monthly_payment_totals, MonthlyTotals, total_revenue_by_film 3. **User Question**: Among our top 10 paying customers, can you identify the largest change in payment amounts from one month to the immediately following month? Specifically, please determine for which customer and during which month this maximum month-over-month difference occurred, and provide the difference rounded to two decimal places. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local199
sqlite-sakila
WITH result_table AS ( SELECT strftime('%Y', RE.RENTAL_DATE) AS YEAR, strftime('%m', RE.RENTAL_DATE) AS RENTAL_MONTH, ST.STORE_ID, COUNT(RE.RENTAL_ID) AS count FROM RENTAL RE JOIN STAFF ST ON RE.STAFF_ID = ST.STAFF_ID GROUP BY YEAR, RENTAL_MONTH, ST.STORE_ID ), monthly_sales AS ( SELECT YEAR, RENTAL_MONTH, STORE_ID, SUM(count) AS total_rentals FROM result_table GROUP BY YEAR, RENTAL_MONTH, STORE_ID ), store_max_sales AS ( SELECT STORE_ID, YEAR, RENTAL_MONTH, total_rentals, MAX(total_rentals) OVER (PARTITION BY STORE_ID) AS max_rentals FROM monthly_sales ) SELECT STORE_ID, YEAR, RENTAL_MONTH, total_rentals FROM store_max_sales WHERE total_rentals = max_rentals ORDER BY STORE_ID;
Can you identify the year and month with the highest rental orders created by the store's staff for each store? Please list the store ID, the year, the month, and the total rentals for those dates.
null
['actor' 'country' 'city' 'address' 'language' 'category' 'customer' 'film' 'film_actor' 'film_category' 'film_text' 'inventory' 'staff' 'store' 'payment' 'rental' 'monthly_payment_totals' 'MonthlyTotals' 'total_revenue_by_film']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: sqlite-sakila 2. **Tables**: actor, country, city, address, language, category, customer, film, film_actor, film_category, film_text, inventory, staff, store, payment, rental, monthly_payment_totals, MonthlyTotals, total_revenue_by_film 3. **User Question**: Can you identify the year and month with the highest rental orders created by the store's staff for each store? Please list the store ID, the year, the month, and the total rentals for those dates. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local201
modern_data
null
Identify the first 10 words, sorted alphabetically, that are 4 to 5 characters long, start with 'r', and have at least one anagram of the same length, considering case-sensitive letters. Provide the count of such anagrams for each word.
null
['pizza_names' 'companies_funding' 'pizza_customer_orders' 'pizza_toppings' 'trees' 'pizza_recipes' 'statistics' 'income_trees' 'pizza_clean_runner_orders' 'pizza_runner_orders' 'word_list' 'companies_dates' 'pizza_get_extras' 'pizza_get_exclusions' 'pizza_clean_customer_orders' 'companies_industries' 'pizza_runners']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: modern_data 2. **Tables**: pizza_names, companies_funding, pizza_customer_orders, pizza_toppings, trees, pizza_recipes, statistics, income_trees, pizza_clean_runner_orders, pizza_runner_orders, word_list, companies_dates, pizza_get_extras, pizza_get_exclusions, pizza_clean_customer_orders, companies_industries, pizza_runners 3. **User Question**: Identify the first 10 words, sorted alphabetically, that are 4 to 5 characters long, start with 'r', and have at least one anagram of the same length, considering case-sensitive letters. Provide the count of such anagrams for each word. ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local202
city_legislation
null
For alien data, how many of the top 10 states by alien population have a higher percentage of friendly aliens than hostile aliens, with an average alien age exceeding 200?
null
['aliens_details' 'skills_dim' 'legislators_terms' 'cities_currencies' 'legislators' 'skills_job_dim' 'job_postings_fact' 'alien_data' 'cities_countries' 'legislation_date_dim' 'cities' 'aliens_location' 'aliens' 'cities_languages' 'job_company' 'city_legislation']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: city_legislation 2. **Tables**: aliens_details, skills_dim, legislators_terms, cities_currencies, legislators, skills_job_dim, job_postings_fact, alien_data, cities_countries, legislation_date_dim, cities, aliens_location, aliens, cities_languages, job_company, city_legislation 3. **User Question**: For alien data, how many of the top 10 states by alien population have a higher percentage of friendly aliens than hostile aliens, with an average alien age exceeding 200? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local209
delivery_center
null
In the dataset of orders joined with store information, which store has the highest total number of orders, and among that store’s orders, what is the ratio of orders that appear in the deliveries table with a 'DELIVERED' status to the total orders for that store?
null
['channels' 'drivers' 'deliveries' 'hubs' 'payments' 'stores' 'orders']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: delivery_center 2. **Tables**: channels, drivers, deliveries, hubs, payments, stores, orders 3. **User Question**: In the dataset of orders joined with store information, which store has the highest total number of orders, and among that store’s orders, what is the ratio of orders that appear in the deliveries table with a 'DELIVERED' status to the total orders for that store? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local210
delivery_center
WITH february_orders AS ( SELECT h.hub_name AS hub_name, COUNT(*) AS orders_february FROM orders o LEFT JOIN stores s ON o.store_id = s.store_id LEFT JOIN hubs h ON s.hub_id = h.hub_id WHERE o.order_created_month = 2 AND o.order_status = 'FINISHED' GROUP BY h.hub_name ), march_orders AS ( SELECT h.hub_name AS hub_name, COUNT(*) AS orders_march FROM orders o LEFT JOIN stores s ON o.store_id = s.store_id LEFT JOIN hubs h ON s.hub_id = h.hub_id WHERE o.order_created_month = 3 AND o.order_status = 'FINISHED' GROUP BY h.hub_name ) SELECT fo.hub_name FROM february_orders fo LEFT JOIN march_orders mo ON fo.hub_name = mo.hub_name WHERE fo.orders_february > 0 AND mo.orders_march > 0 AND (CAST((mo.orders_march - fo.orders_february) AS REAL) / CAST(fo.orders_february AS REAL)) > 0.2 -- Filter for hubs with more than a 20% increase
Can you identify the hubs that saw more than a 20% increase in finished orders from February to March?
null
['channels' 'drivers' 'deliveries' 'hubs' 'payments' 'stores' 'orders']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: delivery_center 2. **Tables**: channels, drivers, deliveries, hubs, payments, stores, orders 3. **User Question**: Can you identify the hubs that saw more than a 20% increase in finished orders from February to March? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local212
delivery_center
null
Can you find 5 delivery drivers with the highest average number of daily deliveries?
null
['channels' 'drivers' 'deliveries' 'hubs' 'payments' 'stores' 'orders']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: delivery_center 2. **Tables**: channels, drivers, deliveries, hubs, payments, stores, orders 3. **User Question**: Can you find 5 delivery drivers with the highest average number of daily deliveries? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local218
EU_soccer
null
Can you calculate the median from the highest season goals of each team?
null
['sqlite_sequence' 'Player_Attributes' 'Player' 'Match' 'League' 'Country' 'Team' 'Team_Attributes']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: EU_soccer 2. **Tables**: sqlite_sequence, Player_Attributes, Player, Match, League, Country, Team, Team_Attributes 3. **User Question**: Can you calculate the median from the highest season goals of each team? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
local219
EU_soccer
WITH match_view AS( SELECT M.id, L.name AS league, M.season, M.match_api_id, T.team_long_name AS home_team, TM.team_long_name AS away_team, M.home_team_goal, M.away_team_goal, P1.player_name AS home_gk, P2.player_name AS home_center_back_1, P3.player_name AS home_center_back_2, P4.player_name AS home_right_back, P5.player_name AS home_left_back, P6.player_name AS home_midfield_1, P7.player_name AS home_midfield_2, P8.player_name AS home_midfield_3, P9.player_name AS home_midfield_4, P10.player_name AS home_second_forward, P11.player_name AS home_center_forward, P12.player_name AS away_gk, P13.player_name AS away_center_back_1, P14.player_name AS away_center_back_2, P15.player_name AS away_right_back, P16.player_name AS away_left_back, P17.player_name AS away_midfield_1, P18.player_name AS away_midfield_2, P19.player_name AS away_midfield_3, P20.player_name AS away_midfield_4, P21.player_name AS away_second_forward, P22.player_name AS away_center_forward, M.goal, M.card FROM match M LEFT JOIN league L ON M.league_id = L.id LEFT JOIN team T ON M.home_team_api_id = T.team_api_id LEFT JOIN team TM ON M.away_team_api_id = TM.team_api_id LEFT JOIN player P1 ON M.home_player_1 = P1.player_api_id LEFT JOIN player P2 ON M.home_player_2 = P2.player_api_id LEFT JOIN player P3 ON M.home_player_3 = P3.player_api_id LEFT JOIN player P4 ON M.home_player_4 = P4.player_api_id LEFT JOIN player P5 ON M.home_player_5 = P5.player_api_id LEFT JOIN player P6 ON M.home_player_6 = P6.player_api_id LEFT JOIN player P7 ON M.home_player_7 = P7.player_api_id LEFT JOIN player P8 ON M.home_player_8 = P8.player_api_id LEFT JOIN player P9 ON M.home_player_9 = P9.player_api_id LEFT JOIN player P10 ON M.home_player_10 = P10.player_api_id LEFT JOIN player P11 ON M.home_player_11 = P11.player_api_id LEFT JOIN player P12 ON M.away_player_1 = P12.player_api_id LEFT JOIN player P13 ON M.away_player_2 = P13.player_api_id LEFT JOIN player P14 ON M.away_player_3 = P14.player_api_id LEFT JOIN player P15 ON M.away_player_4 = P15.player_api_id LEFT JOIN player P16 ON M.away_player_5 = P16.player_api_id LEFT JOIN player P17 ON M.away_player_6 = P17.player_api_id LEFT JOIN player P18 ON M.away_player_7 = P18.player_api_id LEFT JOIN player P19 ON M.away_player_8 = P19.player_api_id LEFT JOIN player P20 ON M.away_player_9 = P20.player_api_id LEFT JOIN player P21 ON M.away_player_10 = P21.player_api_id LEFT JOIN player P22 ON M.away_player_11 = P22.player_api_id ), match_score AS ( SELECT -- Displaying teams and their goals as home_team id, home_team AS team, CASE WHEN home_team_goal > away_team_goal THEN 1 ELSE 0 END AS Winning_match FROM match_view UNION ALL SELECT -- Displaying teams and their goals as away_team id, away_team AS team, CASE WHEN away_team_goal > home_team_goal THEN 1 ELSE 0 END AS Winning_match FROM match_view ), winning_matches AS ( SELECT -- Displaying total match wins for each team MV.league, M.team, COUNT(CASE WHEN M.Winning_match = 1 THEN 1 END) AS wins, ROW_NUMBER() OVER(PARTITION BY MV.league ORDER BY COUNT(CASE WHEN M.Winning_match = 1 THEN 1 END) ASC) AS rn FROM match_score M JOIN match_view MV ON M.id = MV.id GROUP BY MV.league, team ORDER BY league, wins ASC ) SELECT league, team FROM winning_matches WHERE rn = 1 -- Getting the team with the least number of wins in each league ORDER BY league;
In each league, considering all seasons, which single team has the fewest total match wins based on comparing home and away goals, including teams with zero wins, ensuring that if multiple teams tie for the fewest wins, only one team is returned for each league?
null
['sqlite_sequence' 'Player_Attributes' 'Player' 'Match' 'League' 'Country' 'Team' 'Team_Attributes']
Solve the given problem according to instructions given above: ## Your SYSTEM Inputs 1. **Database**: EU_soccer 2. **Tables**: sqlite_sequence, Player_Attributes, Player, Match, League, Country, Team, Team_Attributes 3. **User Question**: In each league, considering all seasons, which single team has the fewest total match wins based on comparing home and away goals, including teams with zero wins, ensuring that if multiple teams tie for the fewest wins, only one team is returned for each league? ## OUTPUT FORMAT You should always return a json in the following format: ```json { "previous_step_summary": "...", "reasoning": "...", "task": "...", "sql": "```sql...```" } ``` ## START THE WORKFLOW NOW BY PROPOSING A PLAN AND TAKING FIRST STEP TO SOLVE GIVEN SQLITE PROBLEM (in json format as mentioned above)
End of preview. Expand in Data Studio
README.md exists but content is empty.
Downloads last month
10