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  • MySQL学习笔记:3道面试题小测

    一、每个部门工资第二高员工

    MySQL8.0测试运行。

    1.题目

    有一张公司员工信息表 employee,有4个字段:

    employee_id varchar -- 员工ID
    employee_name varchar -- 员工姓名
    employee_salary int -- 员工薪酬
    department varchar -- 部门ID
    

    另外一张部门信息表 department,有2个字段:

    department_id varchar -- 部门ID
    department_name varchar -- 部门名称
    

    请查询每个部门工资第二高员工,输出员工ID、员工姓名、员工薪酬、员工部门名称4个字段。

    2.建表

    -- 建表
    DROP TABLE IF EXISTS employee;
    CREATE TABLE employee(
    employee_id VARCHAR(8),
    employee_name VARCHAR(8),
    employee_salary INT,
    department VARCHAR(8)
    )
    ENGINE = INNODB
    DEFAULT CHARSET = utf8mb4;
    -- 插入数据
    INSERT INTO employee
    (employee_id, employee_name, employee_salary, department)
    VALUE ('a001','Bob',7000,'b1')
         ,('a002','Jack',9000,'b1')
         ,('a003','Alice',8000,'b2')
         ,('a004','Ben',5000,'b2')
         ,('a005','Candy',4000,'b2')
         ,('a006','Allen',5000,'b2')
         ,('a007','Linda',10000,'b3');
         
    -- 建表
    DROP TABLE IF EXISTS department;
    CREATE TABLE department(
    department_id VARCHAR(8),
    department_name VARCHAR(8)
    )
    ENGINE = INNODB
    DEFAULT CHARSET = utf8mb4;
    -- 插入数据
    INSERT INTO
    department (department_id,department_name) 
    VALUE ('b1','Sales')
         ,('b2','IT')
         ,('b3','Product');
    

    3.答案

    使用窗口函数 rank() over(partition by xxx order by xxx) 进行分组排序。

    窗口函数、子查询、多表连接

    -- 答案
    SELECT a.employee_id,
           a.employee_name,
           a.employee_salary,
           b.department_name
    FROM
    (
    	SELECT *,
    	       rank() over (PARTITION BY department ORDER BY employee_salary DESC) AS rn
    	FROM employee
    ) a
    LEFT JOIN department b
    ON a.department = b.department_id
    WHERE a.rn = 2;
    '''
    employee_id	employee_name	employee_salary	department_name
    a001	Bob	7000	Sales
    a004	Ben	5000	IT
    a006	Allen	5000	IT
    '''
    

    当然,也可以先进行关联后,再分组排序。

    二、网站登录时间间隔统计

    1.题目

    有一张网站登录情况表 login_info,记录用户登录信息,有2个字段:

    user_id varchar -- 用户ID
    login_time date -- 用户登录日期  2021-1-15
    

    计算每个用户登录日期间隔小于5天的次数,输出用户ID、次数2个字段。

    2.建表

    -- 建表
    DROP TABLE IF EXISTS login_info;
    CREATE TABLE login_info(
    user_id VARCHAR(8),
    login_time DATE
    )
    ENGINE = INNODB
    DEFAULT CHARSET = utf8mb4;
    -- 插入数据
    INSERT INTO
    login_info (user_id,login_time) 
    VALUE ('a001','2021-01-01')
    ,('b001','2021-01-01')
    ,('a001','2021-01-03')
    ,('a001','2021-01-06')
    ,('a001','2021-01-07')
    ,('b001','2021-01-07')
    ,('a001','2021-01-08')
    ,('a001','2021-01-09')
    ,('b001','2021-01-09')
    ,('b001','2021-01-10')
    ,('b001','2021-01-15')
    ,('a001','2021-01-16')
    ,('a001','2021-01-18')
    ,('a001','2021-01-19')
    ,('b001','2021-01-20')
    ,('a001','2021-01-23');
    

    3.答案

    利用偏移函数 lead() 处理时间间隔。

    窗口函数、子查询、分组聚合、时间函数

    -- 答案
    SELECT a.user_id,
           COUNT(1) AS cnt
    FROM
    (
        SELECT user_id,
               login_time,
               lead(login_time) over (PARTITION BY user_id ORDER BY login_time) AS next_login_time
        FROM login_info
    ) a
    WHERE TIMESTAMPDIFF(DAY, login_time, next_login_time) < 5
    GROUP BY user_id;
    '''
    user_id	cnt
    a001	8
    b001	2
    '''
    

    注意:laglead 的区别,一个向前移,一个向后移。

    三、用户购买渠道分析

    1.题目

    有一张用户购买信息表 purchase_channel,记录了用户的购物信息,有4个字段:

    user_id varchar -- 用户ID
    channel varchar -- 渠道
    purchase_date date -- 购买日期
    purchase_amount int -- 购买金额
    

    请查询每天仅适用手机端、仅使用网页端的用户和同时使用两种渠道的不同用户人数,和总购物金额。

    并且即使某天某渠道没有用户的购买信息,也需要展示。

    输出:日期、购买渠道、总购买金额、不同用户人数4个字段。

    2.建表

    -- 建表
    DROP TABLE IF EXISTS purchase_channel;
    CREATE TABLE purchase_channel(
    user_id VARCHAR(8),
    channel VARCHAR(8),
    purchase_date DATE,
    purchase_amount INT
    )
    ENGINE = INNODB
    DEFAULT CHARSET = utf8mb4;
    -- 插入数据
    INSERT INTO
    purchase_channel (user_id,channel,purchase_date,purchase_amount) 
    VALUE ('a001','app','2021-03-14',200)
         ,('a001','web','2021-03-14',100)
         ,('a002','app','2021-03-14',400)
         ,('a001','web','2021-03-15',3000)
         ,('a002','app','2021-03-15',900)
         ,('a003','app','2021-03-15',1000);
    

    3.答案

    根据用户ID和日期进行分组,统计用户在各个渠道的购买个数来判断采用方式(web、app、both)。

    分别统计单个渠道,多个渠道数据,进行 union all 合并。

    union all、分组聚合、数据去重、笛卡尔积

    -- 答案
    SELECT purchase_date,
           channel,
           SUM(sum_amount) AS sum_amount,
           SUM(user_cnt) AS total_users
    FROM
    (
    	SELECT purchase_date,
    	       MIN(channel) AS channel,
    	       COUNT(DISTINCT user_id) AS user_cnt,
    	       SUM(purchase_amount) AS sum_amount
    	FROM purchase_channel
    	GROUP BY purchase_date, user_id    
    	HAVING COUNT(DISTINCT channel) = 1
    	UNION ALL
    	SELECT purchase_date,
    	       'both' AS channel,       
    	       COUNT(DISTINCT user_id) AS user_cnt,
    	       SUM(purchase_amount) AS sum_amount
    	FROM purchase_channel
    	GROUP BY purchase_date, user_id
    	HAVING COUNT(DISTINCT channel) > 1
    ) aa
    GROUP BY purchase_date, channel;
    

    此种结果只是将存在的日期、渠道列出来,未包括所有的,还待优化。

    所有日期与渠道的笛卡尔积,再进行 left join 关联操作即可。

    -- 最终答案
    SELECT t1.purchase_date,
           t1.channel,
           t2.sum_amount,
           t2.total_users
    FROM
    (
    	SELECT DISTINCT a.purchase_date,
    			b.channel
    	FROM purchase_channel a,
    	(
    		SELECT 'app' AS channel
    		UNION ALL
    		SELECT 'web' AS channel
    		UNION ALL
    		SELECT 'both' AS channel
    	) b
    ) t1
    LEFT JOIN
    (
    	SELECT purchase_date,
    	       channel,
    	       SUM(sum_amount) AS sum_amount,
    	       SUM(user_cnt) AS total_users
    	FROM
    	(
    		SELECT purchase_date,
    		       MIN(channel) AS channel,
    		       COUNT(DISTINCT user_id) AS user_cnt,
    		       SUM(purchase_amount) AS sum_amount
    		FROM purchase_channel
    		GROUP BY purchase_date, user_id    
    		HAVING COUNT(DISTINCT channel) = 1
    		UNION ALL
    		SELECT purchase_date,
    		       'both' AS channel,       
    		       COUNT(DISTINCT user_id) AS user_cnt,
    		       SUM(purchase_amount) AS sum_amount
    		FROM purchase_channel
    		GROUP BY purchase_date, user_id
    		HAVING COUNT(DISTINCT channel) > 1
    	) aa
    	GROUP BY purchase_date, channel
    ) t2
    ON t1.purchase_date = t2.purchase_date
    AND t1.channel = t2.channel
    ORDER BY purchase_date, channel;
    /*
    purchase_date	channel	sum_amount	total_users
    2021-03-14	app	400	1
    2021-03-14	both	300	1
    2021-03-14	web	\N	\N
    2021-03-15	app	1900	2
    2021-03-15	both	\N	\N
    2021-03-15	web	3000	1
    */
    

    参考链接:数据分析笔试题06

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  • 原文地址:https://www.cnblogs.com/hider/p/15807388.html
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