• Python 操作 PostgreSQL 数据库


    PostgreSQL可以使用psycopg2模块与Python集成。

    sycopg2是用于Python编程语言的PostgreSQL数据库适配器。 

    psycopg2是非常小,快速,稳定的。 您不需要单独安装此模块,因为默认情况下它会随着Python 2.5.x版本一起发布。

    pip3 install python-psycopg2
    pip3 install psycopg2-binary

    连接到数据库

    以下Python代码显示了如何连接到现有的数据库。 如果数据库不存在,那么它将自动创建,最后将返回一个数据库对象。

     
    #!/usr/bin/python
    
    import psycopg2
    
    conn = psycopg2.connect(database="testdb", user="postgres", password="pass123", host="127.0.0.1", port="5432")
    
    print("Opened database successfully")

    在这里指定使用testdb作为数据库名称,如果数据库已成功打开连接,则会提供以下消息:

    Open database successfully

    创建表

    以下Python程序将用于在先前创建的数据库(testdb)中创建一个表:

    #!/usr/bin/python
    
    import psycopg2
    
    conn = psycopg2.connect(database="testdb", user="postgres", password="pass123", host="127.0.0.1", port="5432")
    print("Opened database successfully")
    
    cur = conn.cursor()
    cur.execute('''CREATE TABLE COMPANY
           (ID INT PRIMARY KEY     NOT NULL,
           NAME           TEXT    NOT NULL,
           AGE            INT     NOT NULL,
           ADDRESS        CHAR(50),
           SALARY         REAL);''')
    print("Table created successfully") 

    conn.commit() conn.close()

    当执行上述程序时,它将在数据库testdb中创建COMPANY表,并显示以下消息:

    Opened database successfully
    Table created successfully
    
     

    插入操作

    以下Python程序显示了如何在上述示例中创建的COMPANY表中创建记录:

     
    #!/usr/bin/python
    
    import psycopg2
    
    conn = psycopg2.connect(database="testdb", user="postgres", password="pass123", host="127.0.0.1", port="5432")
    print("Opened database successfully")
    
    cur = conn.cursor()
    
    cur.execute("INSERT INTO COMPANY (ID,NAME,AGE,ADDRESS,SALARY) 
          VALUES (1, 'Paul', 32, 'California', 20000.00 )");
    
    cur.execute("INSERT INTO COMPANY (ID,NAME,AGE,ADDRESS,SALARY) 
          VALUES (2, 'Allen', 25, 'Texas', 15000.00 )");
    
    cur.execute("INSERT INTO COMPANY (ID,NAME,AGE,ADDRESS,SALARY) 
          VALUES (3, 'Teddy', 23, 'Norway', 20000.00 )");
    
    cur.execute("INSERT INTO COMPANY (ID,NAME,AGE,ADDRESS,SALARY) 
          VALUES (4, 'Mark', 25, 'Rich-Mond ', 65000.00 )");
    
    conn.commit()
    print("Records created successfully");
    conn.close()

    当执行上述程序时,它将在COMPANY表中创建/插入给定的记录,并显示以下两行:

    Opened database successfully
    Records created successfully
     

    SELECT操作

    以下 Python 程序显示了如何从上述示例中创建的 COMPANY 表中获取和显示记录:

    #!/usr/bin/python
    
    import psycopg2
    
    conn = psycopg2.connect(database="testdb", user="postgres", password="pass123", host="127.0.0.1", port="5432")
    print("Opened database successfully")
    
    cur = conn.cursor()
    
    cur.execute("SELECT id, name, address, salary  from COMPANY")
    rows = cur.fetchall()
    for row in rows:
       print("ID = ", row[0])
       print("NAME = ", row[1])
       print("ADDRESS = ", row[2])
       print("SALARY = ", row[3], "
    ")
    
    print("Operation done successfully");
    conn.close()

    执行上述程序时,会产生以下结果:

    Opened database successfully
    ID =  1
    NAME =  Paul
    ADDRESS =  California
    SALARY =  20000.0
    
    ID =  2
    NAME =  Allen
    ADDRESS =  Texas
    SALARY =  15000.0
    
    ID =  3
    NAME =  Teddy
    ADDRESS =  Norway
    SALARY =  20000.0
    
    ID =  4
    NAME =  Mark
    ADDRESS =  Rich-Mond
    SALARY =  65000.0
    
    Operation done successfully
     

    更新操作

    以下 Python 代码显示了如何使用UPDATE语句来更新任何记录,然后从COMPANY表中获取并显示更新的记录:

    #!/usr/bin/python
    
    import psycopg2
    
    conn = psycopg2.connect(database="testdb", user="postgres", password="pass123", host="127.0.0.1", port="5432")
    print("Opened database successfully")
    
    cur = conn.cursor()
    
    cur.execute("UPDATE COMPANY set SALARY = 25000.00 where ID=1")
    conn.commit
    print("Total number of rows updated :", cur.rowcount)
    
    cur.execute("SELECT id, name, address, salary  from COMPANY")
    rows = cur.fetchall()
    for row in rows:
       print("ID = ", row[0])
       print("NAME = ", row[1])
       print("ADDRESS = ", row[2])
       print("SALARY = ", row[3], "
    ")
    
    print("Operation done successfully");
    conn.close()
    Python

    执行上述程序时,会产生以下结果:

    Opened database successfully
    Total number of rows updated : 1
    ID =  1
    NAME =  Paul
    ADDRESS =  California
    SALARY =  25000.0
    
    ID =  2
    NAME =  Allen
    ADDRESS =  Texas
    SALARY =  15000.0
    
    ID =  3
    NAME =  Teddy
    ADDRESS =  Norway
    SALARY =  20000.0
    
    ID =  4
    NAME =  Mark
    ADDRESS =  Rich-Mond
    SALARY =  65000.0
    
    Operation done successfully
    
     

    删除操作

    以下 Python 代码显示了如何使用 DELETE 语句来删除记录,然后从 COMPANY 表中获取并显示剩余的记录:

    #!/usr/bin/python
    
    import psycopg2
    
    conn = psycopg2.connect(database="testdb", user="postgres", password="pass123", host="127.0.0.1", port="5432")
    print("Opened database successfully")
    
    cur = conn.cursor()
    
    cur.execute("DELETE from COMPANY where ID=2;")
    conn.commit
    print("Total number of rows deleted :", cur.rowcount)
    
    cur.execute("SELECT id, name, address, salary  from COMPANY")
    rows = cur.fetchall()
    for row in rows:
       print("ID = ", row[0])
       print("NAME = ", row[1])
       print("ADDRESS = ", row[2])
       print("SALARY = ", row[3], "
    ")
    
    print("Operation done successfully");
    conn.close()

    执行上述程序时,会产生以下结果:

    Opened database successfully
    Total number of rows deleted : 1
    ID =  1
    NAME =  Paul
    ADDRESS =  California
    SALARY =  20000.0
    
    ID =  3
    NAME =  Teddy
    ADDRESS =  Norway
    SALARY =  20000.0
    
    ID =  4
    NAME =  Mark
    ADDRESS =  Rich-Mond
    SALARY =  65000.0
    
    Operation done successfully

    https://www.yiibai.com/postgresql/postgresql_python.html
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  • 原文地址:https://www.cnblogs.com/caodneg7/p/13397828.html
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