1. Basic database operations
1. If you want to allow writing Chinese in the database, you can use the following command when creating the database
CREATE database zcl charset utf8;
2. View the students table structure
desc students;
3. View the statements that create the students table structure
show create table students;
4. Delete database
drop database zcl;
5 . Create a new field
alter table students add column nal char(64);
PS: I really hate the above "simple explanation + code" s blog. In fact, I wrote a lot of examples in the mysql terminal at that time, but because the computer was running a video-watching software at the time, I couldn't Ctrl+C/V. I’m too lazy now haha~~
2. Connect python to the database
python3 no longer supports mysqldb. Its replacement module is PyMySQL. The examples in this article are in the python3.4 environment.
1. Install pymysql module
##pip3 install pymysql
2. Connect to the database and insert the data instance
##import pymysql #生成实例,连接数据库zcl conn = pymysql.connect(host='127.0.0.1', user='root', passwd='root', db='zcl') #生成游标,当前实例所处状态 cur = conn.cursor() #插入数据 reCount = cur.execute('insert into students(name, sex, age, tel, nal) values(%s, %s, %s, %s, %s)',('Jack','man',25,1351234,"CN")) reCount = cur.execute('insert into students(name, sex, age, tel, nal) values(%s, %s, %s, %s, %s)',('Mary','female',18,1341234,"USA")) conn.commit() #实例提交命令 cur.close() conn.close() print(reCount)
View the results:
mysql> select* from students; +----+------+-----+-----+-------------+------+ | id | name | sex | age | tel | nal | +----+------+-----+-----+-------------+------+ | 1 | zcl | man | 22 | 15622341234 | NULL | | 2 | alex | man | 30 | 15622341235 | NULL | +----+------+-----+-----+-------------+------+ rows in set
3. Get data
import pymysql conn = pymysql.connect(host='127.0.0.1', user='root', passwd='root', db='zcl') cur = conn.cursor() reCount = cur.execute('select* from students') res = cur.fetchone() #获取一条数据 res2 = cur.fetchmany(3) #获取3条数据 res3 = cur.fetchall() #获取所有(元组格式) print(res) print(res2) print(res3) conn.commit() cur.close() conn.close()
Output:
(1, 'zcl', 'man', 22, '15622341234', None) ((2, 'alex', 'man', 30, '15622341235', None), (5, 'Jack', 'man', 25, '1351234', 'CN'), (6, 'Mary', 'female', 18, '1341234', 'USA')) ()3. Transaction rollback
Transaction rollback is executed before data is written to the database, so the transaction rollback conn.rollback() must be before the instance submits the command conn.commit(). As long as the data is not submitted, it can be rolled back, but the ID will be auto-incremented after the rollback. Please see the following example:Insert 3 pieces of data (note transaction rollback):
import pymysql #连接数据库zcl conn=pymysql.connect(host='127.0.0.1', user='root', passwd='root', db='zcl') #生成游标,当前实例所处状态 cur=conn.cursor() #插入数据 reCount=cur.execute('insert into students(name, sex, age, tel, nal) values(%s, %s, %s, %s, %s)', ('Jack', 'man', 25, 1351234, "CN")) reCount=cur.execute('insert into students(name, sex, age, tel, nal) values(%s,%s,%s,%s,%s)', ('Jack2', 'man', 25, 1351234, "CN")) reCount=cur.execute('insert into students(name, sex, age, tel, nal) values(%s, %s, %s, %s, %s)', ('Mary', 'female', 18, 1341234, "USA")) conn.rollback() #事务回滚 conn.commit() #实例提交命令 cur.close() conn.close() print(reCount)
Not executed Before the command and after executing the command (including rollback operation) (note the ID number): The results of not executing the above code and executing the above code are the same!! Because the transaction has been rolled back, the students table will not add data!
mysql> select* from students; +----+------+--------+-----+-------------+------+ | id | name | sex | age | tel | nal | +----+------+--------+-----+-------------+------+ | 1 | zcl | man | 22 | 15622341234 | NULL | | 2 | alex | man | 30 | 15622341235 | NULL | | 5 | Jack | man | 25 | 1351234 | CN | | 6 | Mary | female | 18 | 1341234 | USA | +----+------+--------+-----+-------------+------+ rows in set
After executing the command (excluding rollback operation): Just comment the 11th line of code above.
mysql> select* from students; +----+-------+--------+-----+-------------+------+ | id | name | sex | age | tel | nal | +----+-------+--------+-----+-------------+------+ | 1 | zcl | man | 22 | 15622341234 | NULL | | 2 | alex | man | 30 | 15622341235 | NULL | | 5 | Jack | man | 25 | 1351234 | CN | | 6 | Mary | female | 18 | 1341234 | USA | | 10 | Jack | man | 25 | 1351234 | CN | | 11 | Jack2 | man | 25 | 1351234 | CN | | 12 | Mary | female | 18 | 1341234 | USA | +----+-------+--------+-----+-------------+------+ rows in set
Summary: Although the transaction is rolled back, the ID is still incremented and will not be canceled due to rollback, but this Does not affect the consistency of the data (I don’t know the underlying principle~)
4. Insert data in batchesimport pymysql #连接数据库zcl conn = pymysql.connect(host='127.0.0.1', user='root', passwd='root', db='zcl') #生成游标,当前实例所处状态 cur = conn.cursor() li = [ ("cjy","man",18,1562234,"USA"), ("cjy2","man",18,1562235,"USA"), ("cjy3","man",18,1562235,"USA"), ("cjy4","man",18,1562235,"USA"), ("cjy5","man",18,1562235,"USA"), ] #插入数据 reCount = cur.executemany('insert into students(name,sex,age,tel,nal) values(%s,%s,%s,%s,%s)', li) #conn.rollback() #事务回滚 conn.commit() #实例提交命令 cur.close() conn.close() print(reCount)
Output under pycharm: 5
mysql terminal display:
mysql> select* from students; #插入数据前 +----+-------+--------+-----+-------------+------+ | id | name | sex | age | tel | nal | +----+-------+--------+-----+-------------+------+ | 1 | zcl | man | 22 | 15622341234 | NULL | | 2 | alex | man | 30 | 15622341235 | NULL | | 5 | Jack | man | 25 | 1351234 | CN | | 6 | Mary | female | 18 | 1341234 | USA | | 10 | Jack | man | 25 | 1351234 | CN | | 11 | Jack2 | man | 25 | 1351234 | CN | | 12 | Mary | female | 18 | 1341234 | USA | +----+-------+--------+-----+-------------+------+ rows in set mysql> mysql> select* from students; #插入数据后 +----+-------+--------+-----+-------------+------+ | id | name | sex | age | tel | nal | +----+-------+--------+-----+-------------+------+ | 1 | zcl | man | 22 | 15622341234 | NULL | | 2 | alex | man | 30 | 15622341235 | NULL | | 5 | Jack | man | 25 | 1351234 | CN | | 6 | Mary | female | 18 | 1341234 | USA | | 10 | Jack | man | 25 | 1351234 | CN | | 11 | Jack2 | man | 25 | 1351234 | CN | | 12 | Mary | female | 18 | 1341234 | USA | | 13 | cjy | man | 18 | 1562234 | USA | | 14 | cjy2 | man | 18 | 1562235 | USA | | 15 | cjy3 | man | 18 | 1562235 | USA | | 16 | cjy4 | man | 18 | 1562235 | USA | | 17 | cjy5 | man | 18 | 1562235 | USA | +----+-------+--------+-----+-------------+------+ rows in set
For more articles related to operating mysql database through python, please pay attention to the PHP Chinese website!

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