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hackerrank.sql
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# HACKERRANK SQL CHALLENGES
/* * * * * * * * * * * * * * * * * * * * * * * * * * * *
A. Basic Select
* * * * * * * * * * * * * * * * * * * * * * * * * * * */
# 1. Revising the Select Query I (Easy)
SELECT *
FROM CITY
WHERE COUNTRYCODE = "USA" AND POPULATION > 100000;
# 2. Revising the Select Query I (Easy)
SELECT NAME
FROM CITY
WHERE COUNTRYCODE = "USA" AND POPULATION > 120000;
# 3. Select All (Easy)
SELECT *
FROM CITY;
# 4. Select By ID (Easy)
SELECT *
FROM CITY
WHERE ID = 1661;
# 5. Japanese Cities Attributes (Easy)
SELECT *
FROM CITY
WHERE COUNTRYCODE = 'JPN';
# 6. Japanese Cities Names (Easy)
SELECT NAME
FROM CITY
WHERE COUNTRYCODE = 'JPN';
# 7. Weather Observation Station 1 (Easy)
SELECT CITY, STATE
FROM STATION;
# 8. Weather Observation Station 3 (Easy)
SELECT DISTINCT CITY
FROM STATION
WHERE MOD(ID,2) = 0;
# 9. Weather Observation Station 4 (Easy)
SELECT COUNT(CITY) - COUNT(DISTINCT(CITY))
FROM STATION;
# 10. Weather Observation Station 5 (Easy)
SELECT CITY, LENGTH(CITY)
FROM STATION
ORDER BY LENGTH(CITY) ASC, CITY LIMIT 1;
SELECT CITY, LENGTH(CITY)
FROM STATION
ORDER BY LENGTH(CITY) DESC, CITY LIMIT 1;
# 11. Weather Observation Station 6 (Easy)
SELECT DISTINCT CITY
FROM STATION
WHERE SUBSTR(CITY,1,1) IN ('A','E','I','O','U');
# 12. Weather Observation Station 7 (Easy)
SELECT DISTINCT CITY
FROM STATION
WHERE SUBSTR(CITY,LENGTH(CITY),LENGTH(CITY)) IN ('A','E','I','O','U');
# 13. Weather Observation Station 8 (Easy)
SELECT DISTINCT CITY
FROM STATION
WHERE (SUBSTRING(CITY,LEN(CITY), LEN(CITY)) IN ('A','E','I','O','U'))
AND (SUBSTRING(CITY,1,1) IN ('A','E','I','O','U'));
# 14. Weather Observation Station 9 (Easy)
SELECT DISTINCT CITY
FROM STATION
WHERE SUBSTRING(CITY,1,1) NOT IN ('A','E','I','O','U');
# 15. Weather Observation Station 10 (Easy)
SELECT DISTINCT CITY
FROM STATION
WHERE SUBSTRING(CITY,LEN(CITY), LEN(CITY)) NOT IN ('A','E','I','O','U');
# 16. Weather Observation Station 11 (Easy)
SELECT DISTINCT CITY FROM STATION
WHERE (SUBSTRING(CITY,LEN(CITY), LEN(CITY)) NOT IN ('A','E','I','O','U'))
OR (SUBSTRING(CITY,1,1) NOT IN ('A','E','I','O','U'));
# 17. Weather Observation Station 12 (Easy)
SELECT DISTINCT CITY FROM STATION
WHERE (SUBSTRING(CITY,LEN(CITY), LEN(CITY)) NOT IN ('A','E','I','O','U'))
AND (SUBSTRING(CITY,1,1) NOT IN ('A','E','I','O','U'));
# 18. Higher Than 75 Marks (Easy)
SELECT Name FROM STUDENTS
WHERE Marks > 75
ORDER BY SUBSTRING(Name,LEN(Name)-2,LEN(Name)) ASC, ID ASC;
# 19. Employee Names (Easy)
SELECT name FROM Employee ORDER BY name ASC;
# 20. Employee Salaries (Easy)
SELECT name FROM Employee
WHERE salary > 2000 AND months < 10
ORDER BY employee_id ASC;
/* * * * * * * * * * * * * * * * * * * * * * * * * * * *
B. Advanced Select
* * * * * * * * * * * * * * * * * * * * * * * * * * * */
# 1. Type of Triangle (Easy)
SELECT CASE
WHEN A + B > C AND A + C > B AND B + C > A THEN
CASE WHEN A = B AND B = C THEN 'Equilateral'
WHEN A = B OR B = C OR A = C THEN 'Isosceles'
ELSE 'Scalene' END
ELSE 'Not A Triangle' END
FROM TRIANGLES;
# 2. The PADS (Medium)
SELECT CONCAT(Name, '(', SUBSTRING(Occupation, 1, 1), ')')
FROM OCCUPATIONS
ORDER BY Name ASC;
SELECT CONCAT('There are a total of ', COUNT(Occupation), ' ', LOWER(Occupation), 's.')
FROM OCCUPATIONS
GROUP BY Occupation
ORDER BY COUNT(Occupation), Occupation ASC;
# 3. Occupations (Medium)
SELECT MAX(Doctor), MAX(Professor), MAX(Singer), MAX(Actor)
FROM (SELECT CASE WHEN Occupation = 'Doctor' THEN name END AS Doctor
, CASE WHEN Occupation = 'Professor' THEN name END AS Professor
, CASE WHEN Occupation = 'Singer' THEN name END AS Singer
, CASE WHEN Occupation = 'Actor' THEN name END AS Actor
, RANK() OVER (PARTITION BY Occupation ORDER BY Name) AS list
FROM Occupations) x
GROUP BY list;
# 4. Binary Tree Nodes (Medium)
SELECT N, CASE
WHEN P IS NULL THEN 'Root'
WHEN N IN (SELECT P FROM BST) THEN 'Inner'
ELSE 'Leaf'
END
FROM BST
ORDER by N;
# 5. New Companies (Medium)
WITH e AS (
SELECT company_code,
COUNT(DISTINCT(lead_manager_code)) AS LM,
COUNT(DISTINCT(senior_manager_code)) AS SM,
COUNT(DISTINCT(manager_code)) AS MM,
COUNT(DISTINCT(employee_code)) AS EM
FROM Employee GROUP BY company_code)
SELECT c.company_code, c.founder, e.LM, e.SM, e.MM, e.EM
FROM Company c
LEFT JOIN e
ON c.company_code = e.company_code
ORDER BY c.company_code ASC;
/* * * * * * * * * * * * * * * * * * * * * * * * * * * *
C. Aggregation
* * * * * * * * * * * * * * * * * * * * * * * * * * * */
# 1. Revising Aggregations - The Count Function (Easy)
SELECT COUNT(*)
FROM CITY
WHERE POPULATION > 100000;
# 2. Revising Aggregations - The Sum Function (Easy)
SELECT SUM(POPULATION)
FROM CITY
GROUP BY DISTRICT
HAVING DISTRICT = 'California';
# 3. Revising Aggregations - Averages (Easy)
SELECT AVG(POPULATION)
FROM CITY
WHERE DISTRICT = 'California';
# 4. Average Population (Easy)
SELECT ROUND(AVG(POPULATION),0)
FROM CITY;
# 5. Japan Population (Easy)
SELECT SUM(POPULATION)
FROM CITY
WHERE COUNTRYCODE = 'JPN';
# 6. Population Density Difference (Easy)
SELECT MAX(POPULATION) - MIN(POPULATION)
FROM CITY;
# 7. The Blunder (Easy)
SELECT CEILING(AVG(Salary - CAST(REPLACE(Salary,'0','') as decimal)))
FROM EMPLOYEES;
# 8. Top Earners (Easy)
SELECT (months * salary), COUNT(*)
FROM employee
WHERE (months * salary) IN (SELECT MAX(months * salary) AS 'maxearnings'
FROM employee)
GROUP BY (months * salary);
# 9. Weather Observation Station 2 (Easy)
SELECT ROUND(SUM(LAT_N), 2), ROUND(SUM(LONG_W), 2)
FROM STATION;
# 10. Weather Observation Station 13 (Easy)
SELECT TRUNCATE(SUM(LAT_N), 4)
FROM STATION
WHERE LAT_N BETWEEN 38.7880 AND 137.2345;
# 11. Weather Observation Station 14 (Easy)
SELECT ROUND(MAX(LAT_N), 4)
FROM STATION
WHERE LAT_N < 137.2345;
# 12. Weather Observation Station 15 (Easy)
SELECT ROUND(LONG_W, 4)
FROM STATION
WHERE LAT_N = (SELECT MAX(LAT_N) FROM STATION WHERE LAT_N < 137.2345);
# 13. Weather Observation Station 16 (Easy)
SELECT ROUND(MIN(LAT_N), 4)
FROM STATION WHERE LAT_N > 38.7780;
# 14. Weather Observation Station 17 (Easy)
SELECT ROUND(LONG_W, 4)
FROM STATION
WHERE LAT_N = (SELECT MIN(LAT_N)
FROM STATION
WHERE LAT_N > 38.7780);
# 15. Weather Observation Station 18 (Medium)
SELECT ROUND(MAX(LAT_N) - MIN(LAT_N) + MAX(LONG_W) - MIN(LONG_W), 4)
FROM STATION;
# 16. Weather Observation Station 19 (Medium)
SELECT ROUND(SQRT(POW(MAX(LAT_N) - MIN(LAT_N), 2) + POW(MAX(LONG_W) - MIN(LONG_W), 2)), 4)
FROM STATION;
# 17. Weather Observation Station 20 (Medium)
/* * * * * * * * * * * * * * * * * * * * * * * * * * * *
D. Basic Join
* * * * * * * * * * * * * * * * * * * * * * * * * * * */
# 1. Asian Population (Easy)
SELECT SUM(a.POPULATION)
FROM CITY a
LEFT JOIN COUNTRY b ON a.COUNTRYCODE = b.CODE
WHERE b.CONTINENT = 'ASIA';
# 2. African Cities (Easy)
SELECT a.NAME
FROM CITY a
LEFT JOIN COUNTRY b ON a.COUNTRYCODE = b.CODE
WHERE b.CONTINENT = 'AFRICA';
# 3. Average Population of Each Continent (Easy)
SELECT a.CONTINENT, FLOOR(AVG(b.POPULATION))
FROM COUNTRY a
INNER JOIN CITY b
ON b.COUNTRYCODE = a.CODE
GROUP BY a.CONTINENT;
# 4. The Report (Medium)
with s as (
SELECT ID,
CASE WHEN Marks < 70 THEN 'NULL' ELSE Name END AS Student,
Marks FROM Students
) SELECT s.Student, g.Grade, s.Marks FROM s
LEFT JOIN Grades g
ON s.Marks BETWEEN g.Min_Mark AND g.Max_Mark
ORDER BY g.Grade DESC, s.Student ASC, s.Marks ASC;
# 5. Top Competitors (Medium)
WITH s AS (
SELECT h.name as hacker, a.submission_id, a.hacker_id as id, a.challenge_id, a.score,
c.difficulty_level, d.score as maxscore
FROM Submissions a
LEFT JOIN Challenges c ON a.challenge_id = c.challenge_id
LEFT JOIN Difficulty d ON c.difficulty_level = d.difficulty_level
RIGHT JOIN Hackers h ON h.hacker_id = a.hacker_id)
SELECT id, hacker FROM s
WHERE score = maxscore
GROUP BY id, hacker
HAVING count(id) > 1
ORDER BY count(id) DESC, id ASC;
# 6. Ollivanders Inventory (Medium)
## REVIEW THIS
SELECT wands.id, min_prices.age, wands.coins_needed, wands.power
FROM wands
inner join (SELECT wands.code, wands.power, min(wands_property.age) as age, min(wands.coins_needed) AS min_price
FROM wands
inner join wands_property
ON wands.code = wands_property.code
WHERE wands_property.is_evil = 0
GROUP BY wands.code, wands.power) min_prices
ON wands.code = min_prices.code
AND wands.power = min_prices.power
AND wands.coins_needed = min_prices.min_price
ORDER BY wands.power DESC, min_prices.age DESC;
# 7. Challenges (Medium)
WITH t AS (SELECT TOP 50 PERCENT *
FROM STATION ORDER BY LAT_N ASC)
SELECT TOP 1 CAST(ROUND(LAT_N, 4) AS decimal(10,4))
FROM t ORDER BY LAT_N DESC
# 8. Contest Leaderboard (Medium)
with b as (
SELECT c.hacker_id, c.challenge_id, max(c.score) as maxscore
FROM (SELECT * FROM Submissions WHERE score > 0) as c
GROUP BY hacker_id, challenge_id)
SELECT a.hacker_id, a.name, sum(b.maxscore) as score
FROM Hackers a
LEFT JOIN b ON a.hacker_id = b.hacker_id
GROUP BY a.hacker_id, a.name
HAVING sum(b.maxscore) IS NOT NULL
ORDER BY sum(b.maxscore) DESC, a.hacker_id ASC;
/* * * * * * * * * * * * * * * * * * * * * * * * * * * *
E. Advanced Join
* * * * * * * * * * * * * * * * * * * * * * * * * * * */
# 1. Projects (Medium)
# 2. Placements (Medium)
# 3. Symmetric Pairs (Medium)
# 4. Interviews (Hard)
# 5. 15 Days of Learning SQL (Hard)
/* * * * * * * * * * * * * * * * * * * * * * * * * * * *
F. Alternative Queries
* * * * * * * * * * * * * * * * * * * * * * * * * * * */
# 1. Draw The Triangle 1
DECLARE @i INT = 20
WHILE (@i > 0)
BEGIN
PRINT REPLICATE('* ', @i)
SET @i = @i - 1
END
# 2.Draw The Triangle 2
DECLARE @i INT = 0
WHILE (@i < 21)
BEGIN
PRINT REPLICATE('* ', @i)
SET @i = @i + 1
END
# 3. Print Prime Numbers (Medium)
DECLARE @string VARCHAR(1000)
DECLARE @primes TABLE
(
num int NOT NULL
);
WITH temp AS
(
SELECT 2 AS Value
UNION ALL
SELECT t.Value+1 AS VAlue
FROM temp t
WHERE t.Value < 1001
)
INSERT INTO @primes (num) (SELECT *
FROM temp t
WHERE NOT EXISTS
( SELECT 1 FROM temp t2
WHERE t.Value % t2.Value = 0
AND t.Value != t2. Value
))
OPTION (MAXRECURSION 0)
SELECT @string=COALESCE(@string + '&', '') + CONVERT(varchar(10), num)
FROM @primes
PRINT @string;
/*
Challenges # 52
*/
select a.hacker_id, a.name, b.challenges_created from Hackers as a inner join (select hacker_id, count(distinct challenge_id) as challenges_created from Challenges group by hacker_id) as b on a.hacker_id = b.hacker_id order by challenges_created desc, hacker_id desc;