Table of Contents
(1 ), use the mathematical function rand() to generate three random integers within 10.
(2). Use sin(), con(), tan(), cot() functions to calculate trigonometric function values, and convert the calculation results into integer values.
(3), create a table, and use string and date functions to operate on field values.
(4), use case for conditions Judge, if m_birth is less than 2000, it will display "old"; if m_birth is greater than 2000, it will display "young".
Home Database Mysql Tutorial MySQL Exercise 3: Use of MySQL functions

MySQL Exercise 3: Use of MySQL functions

Mar 10, 2021 am 09:28 AM

MySQL Exercise 3: Use of MySQL functions

Case: Use various functions to manipulate data and master the functions and usage of various functions.
(1) Use the mathematical function rand() to generate 3 random integers within 10.
(2) Use sin(), con(), tan(), cot() functions to calculate trigonometric function values, and convert the calculation results into integer values.
(3) Create a table and use string and date functions to operate on field values.
(4) Use case for conditional judgment. If m_birth is less than 2000, it will display "old"; if m_birth is greater than 2000, it will display "young".


(Free learning recommendation: mysql video tutorial)

(1 ), use the mathematical function rand() to generate three random integers within 10.
mysql> select round( rand() * 10 ),round( rand() * 10 ), round( rand() * 10 );+----------------------+----------------------+----------------------+| round( rand() * 10 ) | round( rand() * 10 ) | round( rand() * 10 ) |+----------------------+----------------------+----------------------+|                    9 |                    8 |                    1 |+----------------------+----------------------+----------------------+1 row in set (0.00 sec)
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(2). Use sin(), con(), tan(), cot() functions to calculate trigonometric function values, and convert the calculation results into integer values.
mysql> select pi(),
    -> sin(pi()/2),
    -> cos(pi()),
    -> round(tan(pi()/4)),
    -> floor(cot(pi()/4));+----------+-------------+-----------+--------------------+--------------------+| pi()     | sin(pi()/2) | cos(pi()) | round(tan(pi()/4)) | floor(cot(pi()/4)) |+----------+-------------+-----------+--------------------+--------------------+| 3.141593 |           1 |        -1 |                  1 |                  1 |+----------+-------------+-----------+--------------------+--------------------+1 row in set (0.00 sec)
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(3), create a table, and use string and date functions to operate on field values.

① Create table member, which contains 5 fields, namely the m_id field of auto_increment constraint, the m_FN field of varchar type, the m_LN field of varchar type, the datetime type m_birth field and the m_info field of varchar type.

mysql> create table member    -> (
    -> m_id int auto_increment primary key,
    -> m_FN varchar(100),
    -> m_LN varchar(100),
    -> m_birth datetime,
    -> m_info varchar(255) null
    -> );Query OK, 0 rows affected (0.21 sec)
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②Insert a record, the m_id value is default, the m_FN value is "Halen", the m_LN value is "Park", the m_birth value is 1970-06-29, and the m-info value is "GoodMan".

mysql> insert into member values
    -> ( null,'Halen','Park','1970-06-29','GoodMan');Query OK, 1 row affected (0.01 sec)mysql> select * from member;+------+-------+------+---------------------+---------+| m_id | m_FN  | m_LN | m_birth             | m_info  |+------+-------+------+---------------------+---------+|    1 | Halen | Park | 1970-06-29 00:00:00 | GoodMan |+------+-------+------+---------------------+---------+1 row in set (0.00 sec)
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③Return the length of m_FN, return the full name of the person in the first record, and convert the m_info field value into lowercase letters. Output the value of m_info in reverse.

mysql> select length(m_FN),concat(m_FN,m_LN),
    -> lower(m_info),reverse(m_info) from member;+--------------+-------------------+---------------+-----------------+| length(m_FN) | concat(m_FN,m_LN) | lower(m_info) | reverse(m_info) |+--------------+-------------------+---------------+-----------------+|            5 | HalenPark         | goodman       | naMdooG         |+--------------+-------------------+---------------+-----------------+1 row in set (0.00 sec)
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④ Calculate the age of the person in the first record, calculate the position of the value in the m_birth field in that year, and output the time value in the format of "Saturday 4th October 1997".

mysql> select year(curdate())-year(m_birth) as age,dayofyear(m_birth) as days,
    -> date_format(m_birth,'%W %D %M %Y') as birthDate from member;+------+------+-----------------------+| age  | days | birthDate             |+------+------+-----------------------+|   49 |  180 | Monday 29th June 1970 |+------+------+-----------------------+1 row in set (0.00 sec)
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⑤Insert a new record, the m_FN value is "Samuel", the m_LN value is "Greem", the m_birth value is the current system time, and m_info is empty. Use last_insert_id to view the last inserted id value.

mysql> insert into member values( null,'Samuel','Green',now(),null);Query OK, 1 row affected (0.04 sec)mysql> select * from member;+------+--------+-------+---------------------+---------+| m_id | m_FN   | m_LN  | m_birth             | m_info  |+------+--------+-------+---------------------+---------+|    1 | Halen  | Park  | 1970-06-29 00:00:00 | GoodMan ||    2 | Samuel | Green | 2019-08-20 12:43:23 | NULL    |+------+--------+-------+---------------------+---------+3 rows in set (0.00 sec)
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You can see that there are two records in the table. Next, use the last_insert_id() function to view the last inserted id value. The SQL statement is as follows:

mysql> select last_insert_id();+------------------+| last_insert_id() |+------------------+|                3 |+------------------+1 row in set (0.00 sec)
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(4), use case for conditions Judge, if m_birth is less than 2000, it will display "old"; if m_birth is greater than 2000, it will display "young".
mysql> select m_birth,case when year(m_birth)<2000 then &#39;old&#39;
    -> when year(m_birth)>2000 then 'young'
    -> else 'not born' end as status from member;+---------------------+--------+| m_birth             | status |+---------------------+--------+| 1970-06-29 00:00:00 | old    || 2019-08-20 12:43:23 | young  |+---------------------+--------+3 rows in set (0.00 sec)
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