Dive into the electrifying world of eSports, where elite competitors from around the globe have converged for an intense showdown. As the excitement unfolds in this epic tournament, our mission is to dissect the provided data and unveil the comprehensive insights that encapsulate the essence of this thrilling gaming spectacle. Let the analysis commence!
The top eSports competitors from across the globe have gathered to battle it out. Can you analyse the following data to find out all about the tournament?
Here are the tables you will be using:
CREATE TABLE teams (
team_id INT PRIMARY KEY,
team_name VARCHAR(50) NOT NULL,
country VARCHAR(50),
captain_id INT
);
--------------------
INSERT INTO teams (team_id, team_name, country, captain_id)
VALUES (1, 'Cloud9', 'USA', 1),
(2, 'Fnatic', 'Sweden', 2),
(3, 'SK Telecom T1', 'South Korea', 3),
(4, 'Team Liquid', 'USA', 4),
(5, 'G2 Esports', 'Spain', 5);
--------------------
CREATE TABLE players (
player_id INT PRIMARY KEY,
player_name VARCHAR(50) NOT NULL,
team_id INT,
role VARCHAR(50),
salary INT,
FOREIGN KEY (team_id) REFERENCES teams(team_id)
);
--------------------
INSERT INTO players (player_id, player_name, team_id, role, salary)
VALUES (1, 'Shroud', 1, 'Rifler', 100000),
(2, 'JW', 2, 'AWP', 90000),
(3, 'Faker', 3, 'Mid laner', 120000),
(4, 'Stewie2k', 4, 'Rifler', 95000),
(5, 'Perkz', 5, 'Mid laner', 110000),
(6, 'Castle09', 1, 'AWP', 120000),
(7, 'Pike', 2, 'Mid Laner', 70000),
(8, 'Daron', 3, 'Rifler', 125000),
(9, 'Felix', 4, 'Mid Laner', 95000),
(10, 'Stadz', 5, 'Rifler', 98000),
(11, 'KL34', 1, 'Mid Laner', 83000),
(12, 'ForceZ', 2, 'Rifler', 130000),
(13, 'Joker', 3, 'AWP', 128000),
(14, 'Hari', 4, 'AWP', 90000),
(15, 'Wringer', 5, 'Mid laner', 105000);
--------------------
CREATE TABLE matches (
match_id INT PRIMARY KEY,
team1_id INT,
team2_id INT,
match_date DATE,
winner_id INT,
score_team1 INT,
score_team2 INT,
FOREIGN KEY (team1_id) REFERENCES teams(team_id),
FOREIGN KEY (team2_id) REFERENCES teams(team_id),
FOREIGN KEY (winner_id) REFERENCES teams(team_id)
);
--------------------
INSERT INTO matches (match_id, team1_id, team2_id, match_date, winner_id, score_team1, score_team2)
VALUES (1, 1, 2, '2022-01-01', 1, 16, 14),
(2, 3, 5, '2022-02-01', 3, 14, 9),
(3, 4, 1, '2022-03-01', 1, 17, 13),
(4, 2, 5, '2022-04-01', 5, 13, 12),
(5, 3, 4, '2022-05-01', 3, 16, 10),
(6, 1, 3, '2022-02-01', 3, 13, 17),
(7, 2, 4, '2022-03-01', 2, 12, 9),
(8, 5, 1, '2022-04-01', 1, 11, 15),
(9, 2, 3, '2022-05-01', 3, 9, 10),
(10, 4, 5, '2022-01-01', 4, 13, 10);
Click here to follow along and answer the questions:
SELECT p.player_name, p.salary
FROM players AS p
WHERE p.salary > 100000;
SELECT p.player_id, t.team_name
FROM teams AS t
JOIN players AS p ON t.team_id = p.team_id
WHERE p.player_id = 3;
SELECT t.team_id, t.team_name, COUNT(p.player_name) AS total_players
FROM teams AS t
JOIN players AS p ON t.team_id = p.team_id
GROUP BY t.team_id;
SELECT t.team_id, t.team_name, p.player_name AS captain_name
FROM teams AS t
JOIN players AS p ON t.team_id = p.team_id
WHERE p.team_id = 2
ORDER BY p.salary DESC
LIMIT 1;
SELECT player_name, role
FROM players
WHERE team_id = 1;
SELECT t.team_name, COUNT(m.winner_id) AS matches_won
FROM teams AS t
JOIN matches AS m ON t.team_id = m.winner_id
GROUP BY m.winner_id;
SELECT t.country, ROUND(AVG(p.salary)) AS players_avg_salary
FROM players AS p
JOIN teams AS t ON p.team_id = t.team_id
WHERE t.country = 'USA';
SELECT t.team_name, COUNT(m.winner_id) AS matches_won
FROM teams AS t
JOIN matches AS m ON t.team_id = m.winner_id
GROUP BY m.winner_id
ORDER BY matches_won DESC
LIMIT 1;
SELECT
t.team_id,
t.team_name,
COUNT(p.player_name) AS total_players,
SUM(p.salary) AS sum_salary
FROM players AS p
JOIN teams AS t ON p.team_id = t.team_id
WHERE p.salary > 100000
GROUP BY t.team_id;
SELECT match_date, score_team1, score_team2
FROM matches
WHERE match_id = 3;
As the curtain falls on this epic tournament, the SQL queries provided a window into the dynamics of the competition, answering crucial questions such as the names of players with salaries exceeding $100,000, team details for specific players, overall team statistics, and the outcomes of pivotal matches. This voyage of data analysis has not only illuminated the intricacies of the tournament but has also set the stage for informed decisions and a deeper understanding of the eSports landscape. Let the analysis stand as a testament to the power of data in uncovering the narratives within the realm of competitive gaming.
Adopted form Steel Data.