包大仁 发表于 2023-7-5 15:16:40

Python史上最全种类数据库操作方法,你能想到的数据库类型都在里面!甚至还

本文将详细探讨如何在Python中连接全种类数据库以及实现相应的CRUD(创建,读取,更新,删除)操作。我们将逐一解析连接MySQL,SQL Server,Oracle,PostgreSQL,MongoDB,SQLite,DB2,Redis,Cassandra,Microsoft Access,ElasticSearch,Neo4j,InfluxDB,Snowflake,Amazon DynamoDB,Microsoft Azure CosMos DB数据库的方法,并演示相应的CRUD操作。
MySQL

连接数据库

Python可以使用mysql-connector-python库连接MySQL数据库:
import mysql.connector

conn = mysql.connector.connect(user='username', password='password', host='127.0.0.1', database='my_database')
print("Opened MySQL database successfully")
conn.close()CRUD操作

接下来,我们将展示在MySQL中如何进行基本的CRUD操作。
创建(Create)

conn = mysql.connector.connect(user='username', password='password', host='127.0.0.1', database='my_database')

cursor = conn.cursor()
cursor.execute("CREATE TABLE Employees (ID INT PRIMARY KEY NOT NULL, NAME TEXT NOT NULL, AGE INT, ADDRESS CHAR(50), SALARY REAL)")
print("Table created successfully")

conn.close()读取(Retrieve)

conn = mysql.connector.connect(user='username', password='password', host='127.0.0.1', database='my_database')

cursor = conn.cursor()
cursor.execute("SELECT id, name, address, salary from Employees")
rows = cursor.fetchall()
for row in rows:
    print("ID = ", row)
    print("NAME = ", row)
    print("ADDRESS = ", row)
    print("SALARY = ", row)

conn.close()更新(Update)

conn = mysql.connector.connect(user='username', password='password', host='127.0.0.1', database='my_database')

cursor = conn.cursor()
cursor.execute("UPDATE Employees set SALARY = 25000.00 where ID = 1")
conn.commit()

print("Total number of rows updated :", cursor.rowcount)

conn.close()删除(Delete)

conn = mysql.connector.connect(user='username', password='password', host='127.0.0.1', database='my_database')

cursor = conn.cursor()
cursor.execute("DELETE from Employees where ID = 1")
conn.commit()

print("Total number of rows deleted :", cursor.rowcount)

conn.close()SQL Server

连接数据库

Python可以使用pyodbc库连接SQL Server数据库:
import pyodbc

conn = pyodbc.connect('DRIVER={SQL Server};SERVER=localhost;DATABASE=my_database;UID=username;PWD=password')
print("Opened SQL Server database successfully")
conn.close()CRUD操作

接下来,我们将展示在SQL Server中如何进行基本的CRUD操作。
创建(Create)

conn = pyodbc.connect('DRIVER={SQL Server};SERVER=localhost;DATABASE=my_database;UID=username;PWD=password')

cursor = conn.cursor()
cursor.execute("CREATE TABLE Employees (ID INT PRIMARY KEY NOT NULL, NAME VARCHAR(20) NOT NULL, AGE INT, ADDRESS CHAR(50), SALARY REAL)")
conn.commit()
print("Table created successfully")

conn.close()读取(Retrieve)

conn = pyodbc.connect('DRIVER={SQL Server};SERVER=localhost;DATABASE=my_database;UID=username;PWD=password')

cursor = conn.cursor()
cursor.execute("SELECT id, name, address, salary from Employees")
rows = cursor.fetchall()
for row in rows:
    print("ID = ", row)
    print("NAME = ", row)
    print("ADDRESS = ", row)
    print("SALARY = ", row)

conn.close()更新(Update)

conn = pyodbc.connect('DRIVER={SQL Server};SERVER=localhost;DATABASE=my_database;UID=username;PWD=password')

cursor = conn.cursor()
cursor.execute("UPDATE Employees set SALARY = 25000.00 where ID = 1")
conn.commit()

print("Total number of rows updated :", cursor.rowcount)

conn.close()删除(Delete)

conn = pyodbc.connect('DRIVER={SQL Server};SERVER=localhost;DATABASE=my_database;UID=username;PWD=password')

cursor = conn.cursor()
cursor.execute("DELETE from Employees where ID = 1")
conn.commit()

print("Total number of rows deleted :", cursor.rowcount)

conn.close()Oracle

连接数据库

Python可以使用cx_Oracle库连接Oracle数据库:
import cx_Oracle

dsn_tns = cx_Oracle.makedsn('localhost', '1521', service_name='my_database')
conn = cx_Oracle.connect(user='username', password='password', dsn=dsn_tns)
print("Opened Oracle database successfully")
conn.close()CRUD操作

接下来,我们将展示在Oracle中如何进行基本的CRUD操作。
创建(Create)

dsn_tns = cx_Oracle.makedsn('localhost', '1521', service_name='my_database')
conn = cx_Oracle.connect(user='username', password='password', dsn=dsn_tns)

cursor = conn.cursor()
cursor.execute("CREATE TABLE Employees (ID NUMBER(10) NOT NULL PRIMARY KEY, NAME VARCHAR2(20) NOT NULL, AGE NUMBER(3), ADDRESS CHAR(50), SALARY NUMBER(10, 2))")
conn.commit()
print("Table created successfully")

conn.close()读取(Retrieve)

dsn_tns = cx_Oracle.makedsn('localhost', '1521', service_name='my_database')
conn = cx_Oracle.connect(user='username', password='password', dsn=dsn_tns)

cursor = conn.cursor()
cursor.execute("SELECT id, name, address, salary from Employees")
rows = cursor.fetchall()
for row in rows:
    print("ID = ", row)
    print("NAME = ", row)
    print("ADDRESS = ", row)
    print("SALARY = ", row)

conn.close()更新(Update)

dsn_tns = cx_Oracle.makedsn('localhost', '1521', service_name='my_database')
conn = cx_Oracle.connect(user='username', password='password', dsn=dsn_tns)

cursor = conn.cursor()
cursor.execute("UPDATE Employees set SALARY = 25000.00 where ID = 1")
conn.commit()

print("Total number of rows updated :", cursor.rowcount)

conn.close()删除(Delete)

dsn_tns = cx_Oracle.makedsn('localhost', '1521', service_name='my_database')
conn = cx_Oracle.connect(user='username', password='password', dsn=dsn_tns)

cursor = conn.cursor()
cursor.execute("DELETE from Employees where ID = 1")
conn.commit()

print("Total number of rows deleted :", cursor.rowcount)

conn.close()PostgreSQL

连接数据库

Python可以使用psycopg2库连接PostgreSQL数据库:
import psycopg2

conn = psycopg2.connect(database="my_database", user="username", password="password", host="127.0.0.1", port="5432")
print("Opened PostgreSQL database successfully")
conn.close()CRUD操作

接下来,我们将展示在PostgreSQL中如何进行基本的CRUD操作。
创建(Create)

conn = psycopg2.connect(database="my_database", user="username", password="password", host="127.0.0.1", port="5432")

cursor = conn.cursor()
cursor.execute('''CREATE TABLE Employees
      (ID INT PRIMARY KEY   NOT NULL,
      NAME         TEXT    NOT NULL,
      AGE            INT   NOT NULL,
      ADDRESS      CHAR(50),
      SALARY         REAL);''')
conn.commit()
print("Table created successfully")

conn.close()读取(Retrieve)

conn = psycopg2.connect(database="my_database", user="username", password="password", host="127.0.0.1", port="5432")

cursor = conn.cursor()
cursor.execute("SELECT id, name, address, salary from Employees")
rows = cursor.fetchall()
for row in rows:
    print("ID = ", row)
    print("NAME = ", row)
    print("ADDRESS = ", row)
    print("SALARY = ", row)

conn.close()更新(Update)

conn = psycopg2.connect(database="my_database", user="username", password="password", host="127.0.0.1", port="5432")

cursor = conn.cursor()
cursor.execute("UPDATE Employees set SALARY = 25000.00 where ID = 1")
conn.commit()

print("Total number of rows updated :", cursor.rowcount)

conn.close()删除(Delete)

conn = psycopg2.connect(database="my_database", user="username", password="password", host="127.0.0.1", port="5432")

cursor = conn.cursor()
cursor.execute("DELETE from Employees where ID = 1")
conn.commit()

print("Total number of rows deleted :", cursor.rowcount)

conn.close()MongoDB

连接数据库

Python可以使用pymongo库连接MongoDB数据库:
from pymongo import MongoClient

client = MongoClient("mongodb://localhost:27017/")
db = client["my_database"]
print("Opened MongoDB database successfully")
client.close()CRUD操作

接下来,我们将展示在MongoDB中如何进行基本的CRUD操作。
创建(Create)

在MongoDB中,文档的创建操作通常包含在插入操作中:
client = MongoClient("mongodb://localhost:27017/")
db = client["my_database"]

employees = db["Employees"]
employee = {"id": "1", "name": "John", "age": "30", "address": "New York", "salary": "1000.00"}

employees.insert_one(employee)
print("Document inserted successfully")

client.close()读取(Retrieve)

client = MongoClient("mongodb://localhost:27017/")
db = client["my_database"]

employees = db["Employees"]
cursor = employees.find()
for document in cursor:
    print(document)

client.close()更新(Update)

client = MongoClient("mongodb://localhost:27017/")
db = client["my_database"]

employees = db["Employees"]
query = { "id": "1" }
new_values = { "$set": { "salary": "25000.00" } }

employees.update_one(query, new_values)

print("Document updated successfully")

client.close()删除(Delete)

client = MongoClient("mongodb://localhost:27017/")
db = client["my_database"]

employees = db["Employees"]
query = { "id": "1" }

employees.delete_one(query)

print("Document deleted successfully")

client.close()SQLite

连接数据库

Python使用sqlite3库连接SQLite数据库:
import sqlite3

conn = sqlite3.connect('my_database.db')
print("Opened SQLite database successfully")
conn.close()CRUD操作

接下来,我们将展示在SQLite中如何进行基本的CRUD操作。
创建(Create)

conn = sqlite3.connect('my_database.db')

cursor = conn.cursor()
cursor.execute('''CREATE TABLE Employees
      (ID INT PRIMARY KEY   NOT NULL,
      NAME         TEXT    NOT NULL,
      AGE            INT   NOT NULL,
      ADDRESS      CHAR(50),
      SALARY         REAL);''')
conn.commit()
print("Table created successfully")

conn.close()读取(Retrieve)

conn = sqlite3.connect('my_database.db')

cursor = conn.cursor()
cursor.execute("SELECT id, name, address, salary from Employees")
rows = cursor.fetchall()
for row in rows:
    print("ID = ", row)
    print("NAME = ", row)
    print("ADDRESS = ", row)
    print("SALARY = ", row)

conn.close()更新(Update)

conn = sqlite3.connect('my_database.db')

cursor = conn.cursor()
cursor.execute("UPDATE Employees set SALARY = 25000.00 where ID = 1")
conn.commit()

print("Total number of rows updated :", cursor.rowcount)

conn.close()删除(Delete)

conn = sqlite3.connect('my_database.db')

cursor = conn.cursor()
cursor.execute("DELETE from Employees where ID = 1")
conn.commit()

print("Total number of rows deleted :", cursor.rowcount)

conn.close()DB2

连接数据库

Python可以使用ibm_db库连接DB2数据库:
import ibm_db

dsn = (
    "DRIVER={{IBM DB2 ODBC DRIVER}};"
    "DATABASE=my_database;"
    "HOSTNAME=127.0.0.1;"
    "PORT=50000;"
    "PROTOCOL=TCPIP;"
    "UID=username;"
    "PWD=password;"
)
conn = ibm_db.connect(dsn, "", "")
print("Opened DB2 database successfully")
ibm_db.close(conn)CRUD操作

接下来,我们将展示在DB2中如何进行基本的CRUD操作。
创建(Create)

conn = ibm_db.connect(dsn, "", "")

sql = '''CREATE TABLE Employees
      (ID INT PRIMARY KEY   NOT NULL,
      NAME         VARCHAR(20)    NOT NULL,
      AGE            INT   NOT NULL,
      ADDRESS      CHAR(50),
      SALARY         DECIMAL(9, 2));'''
stmt = ibm_db.exec_immediate(conn, sql)
print("Table created successfully")

ibm_db.close(conn)读取(Retrieve)

conn = ibm_db.connect(dsn, "", "")

sql = "SELECT id, name, address, salary from Employees"
stmt = ibm_db.exec_immediate(conn, sql)
while ibm_db.fetch_row(stmt):
    print("ID = ", ibm_db.result(stmt, "ID"))
    print("NAME = ", ibm_db.result(stmt, "NAME"))
    print("ADDRESS = ", ibm_db.result(stmt, "ADDRESS"))
    print("SALARY = ", ibm_db.result(stmt, "SALARY"))

ibm_db.close(conn)更新(Update)

conn = ibm_db.connect(dsn, "", "")

sql = "UPDATE Employees set SALARY = 25000.00 where ID = 1"
stmt = ibm_db.exec_immediate(conn, sql)
ibm_db.commit(conn)

print("Total number of rows updated :", ibm_db.num_rows(stmt))

ibm_db.close(conn)删除(Delete)

conn = ibm_db.connect(dsn, "", "")

sql = "DELETE from Employees where ID = 1"
stmt = ibm_db.exec_immediate(conn, sql)
ibm_db.commit(conn)

print("Total number of rows deleted :", ibm_db.num_rows(stmt))

ibm_db.close(conn)Microsoft Access

连接数据库

Python可以使用pyodbc库连接Microsoft Access数据库:
import pyodbc

conn_str = (
    r'DRIVER={Microsoft Access Driver (*.mdb, *.accdb)};'
    r'DBQ=path_to_your_access_file.accdb;'
)
conn = pyodbc.connect(conn_str)
print("Opened Access database successfully")
conn.close()CRUD操作

接下来,我们将展示在Access中如何进行基本的CRUD操作。
创建(Create)

conn = pyodbc.connect(conn_str)

cursor = conn.cursor()
cursor.execute('''CREATE TABLE Employees
      (ID INT PRIMARY KEY   NOT NULL,
      NAME         TEXT    NOT NULL,
      AGE            INT   NOT NULL,
      ADDRESS      CHAR(50),
      SALARY         DECIMAL(9, 2));''')
conn.commit()
print("Table created successfully")

conn.close()读取(Retrieve)

conn = pyodbc.connect(conn_str)

cursor = conn.cursor()
cursor.execute("SELECT id, name, address, salary from Employees")
rows = cursor.fetchall()
for row in rows:
    print("ID = ", row)
    print("NAME = ", row)
    print("ADDRESS = ", row)
    print("SALARY = ", row)

conn.close()更新(Update)

conn = pyodbc.connect(conn_str)

cursor = conn.cursor()
cursor.execute("UPDATE Employees set SALARY = 25000.00 where ID = 1")
conn.commit()

print("Total number of rows updated :", cursor.rowcount)

conn.close()删除(Delete)

conn = pyodbc.connect(conn_str)

cursor = conn.cursor()
cursor.execute("DELETE from Employees where ID = 1")
conn.commit()

print("Total number of rows deleted :", cursor.rowcount)

conn.close()Cassandra

连接数据库

Python可以使用cassandra-driver库连接Cassandra数据库:
from cassandra.cluster import Cluster

cluster = Cluster(['127.0.0.1'])
session = cluster.connect('my_keyspace')
print("Opened Cassandra database successfully")
cluster.shutdown()CRUD操作

接下来,我们将展示在Cassandra中如何进行基本的CRUD操作。
创建(Create)

cluster = Cluster(['127.0.0.1'])
session = cluster.connect('my_keyspace')

session.execute("""
    CREATE TABLE Employees (
      id int PRIMARY KEY,
      name text,
      age int,
      address text,
      salary decimal
    )
""")
print("Table created successfully")

cluster.shutdown()读取(Retrieve)

cluster = Cluster(['127.0.0.1'])
session = cluster.connect('my_keyspace')

rows = session.execute('SELECT id, name, address, salary FROM Employees')
for row in rows:
    print("ID = ", row.id)
    print("NAME = ", row.name)
    print("ADDRESS = ", row.address)
    print("SALARY = ", row.salary)

cluster.shutdown()更新(Update)

cluster = Cluster(['127.0.0.1'])
session = cluster.connect('my_keyspace')

session.execute("UPDATE Employees SET salary = 25000.00 WHERE id = 1")
print("Row updated successfully")

cluster.shutdown()删除(Delete)

cluster = Cluster(['127.0.0.1'])
session = cluster.connect('my_keyspace')

session.execute("DELETE FROM Employees WHERE id = 1")
print("Row deleted successfully")

cluster.shutdown()Redis

连接数据库

Python可以使用redis-py库连接Redis数据库:
import redis

r = redis.Redis(host='localhost', port=6379, db=0)
print("Opened Redis database successfully")CRUD操作

接下来,我们将展示在Redis中如何进行基本的CRUD操作。
创建(Create)

r = redis.Redis(host='localhost', port=6379, db=0)

r.set('employee:1:name', 'John')
r.set('employee:1:age', '30')
r.set('employee:1:address', 'New York')
r.set('employee:1:salary', '1000.00')

print("Keys created successfully")读取(Retrieve)

r = redis.Redis(host='localhost', port=6379, db=0)

print("NAME = ", r.get('employee:1:name').decode('utf-8'))
print("AGE = ", r.get('employee:1:age').decode('utf-8'))
print("ADDRESS = ", r.get('employee:1:address').decode('utf-8'))
print("SALARY = ", r.get('employee:1:salary').decode('utf-8'))更新(Update)

r = redis.Redis(host='localhost', port=6379, db=0)

r.set('employee:1:salary', '25000.00')

print("Key updated successfully")删除(Delete)

r = redis.Redis(host='localhost', port=6379, db=0)

r.delete('employee:1:name', 'employee:1:age', 'employee:1:address', 'employee:1:salary')

print("Keys deleted successfully")ElasticSearch

连接数据库

Python可以使用elasticsearch库连接ElasticSearch数据库:
from elasticsearch import Elasticsearch

es = Elasticsearch([{'host': 'localhost', 'port': 9200}])
print("Opened ElasticSearch database successfully")CRUD操作

接下来,我们将展示在ElasticSearch中如何进行基本的CRUD操作。
创建(Create)

es = Elasticsearch([{'host': 'localhost', 'port': 9200}])

employee = {
    'name': 'John',
    'age': 30,
    'address': 'New York',
    'salary': 1000.00
}
res = es.index(index='employees', doc_type='employee', id=1, body=employee)

print("Document created successfully")读取(Retrieve)

es = Elasticsearch([{'host': 'localhost', 'port': 9200}])

res = es.get(index='employees', doc_type='employee', id=1)
print("Document details:")
for field, details in res['_source'].items():
    print(f"{field.upper()} = ", details)更新(Update)

es = Elasticsearch([{'host': 'localhost', 'port': 9200}])

res = es.update(index='employees', doc_type='employee', id=1, body={
    'doc': {
      'salary': 25000.00
    }
})

print("Document updated successfully")删除(Delete)

es = Elasticsearch([{'host': 'localhost', 'port': 9200}])

res = es.delete(index='employees', doc_type='employee', id=1)

print("Document deleted successfully")Neo4j

连接数据库

Python可以使用neo4j库连接Neo4j数据库:
from neo4j import GraphDatabase

driver = GraphDatabase.driver("bolt://localhost:7687", auth=("neo4j", "password"))
print("Opened Neo4j database successfully")
driver.close()CRUD操作

接下来,我们将展示在Neo4j中如何进行基本的CRUD操作。
创建(Create)

driver = GraphDatabase.driver("bolt://localhost:7687", auth=("neo4j", "password"))

with driver.session() as session:
    session.run("CREATE (:Employee {id: 1, name: 'John', age: 30, address: 'New York', salary: 1000.00})")

print("Node created successfully")

driver.close()读取(Retrieve)

driver = GraphDatabase.driver("bolt://localhost:7687", auth=("neo4j", "password"))

with driver.session() as session:
    result = session.run("MATCH (n:Employee) WHERE n.id = 1 RETURN n")
    for record in result:
      print("ID = ", record["n"]["id"])
      print("NAME = ", record["n"]["name"])
      print("ADDRESS = ", record["n"]["address"])
      print("SALARY = ", record["n"]["salary"])

driver.close()更新(Update)

driver = GraphDatabase.driver("bolt://localhost:7687", auth=("neo4j", "password"))

with driver.session() as session:
    session.run("MATCH (n:Employee) WHERE n.id = 1 SET n.salary = 25000.00")

print("Node updated successfully")

driver.close()删除(Delete)

driver = GraphDatabase.driver("bolt://localhost:7687", auth=("neo4j", "password"))

with driver.session() as session:
    session.run("MATCH (n:Employee) WHERE n.id = 1 DETACH DELETE n")

print("Node deleted successfully")

driver.close()InfluxDB

连接数据库

Python可以使用InfluxDB-Python库连接InfluxDB数据库:
from influxdb import InfluxDBClient

client = InfluxDBClient(host='localhost', port=8086)
print("Opened InfluxDB database successfully")
client.close()CRUD操作

接下来,我们将展示在InfluxDB中如何进行基本的CRUD操作。
创建(Create)

client = InfluxDBClient(host='localhost', port=8086)

json_body = [
    {
      "measurement": "employees",
      "tags": {
            "id": "1"
      },
      "fields": {
            "name": "John",
            "age": 30,
            "address": "New York",
            "salary": 1000.00
      }
    }
]

client.write_points(json_body)

print("Point created successfully")

client.close()读取(Retrieve)

client = InfluxDBClient(host='localhost', port=8086)

result = client.query('SELECT "name", "age", "address", "salary" FROM "employees"')

for point in result.get_points():
    print("ID = ", point['id'])
    print("NAME = ", point['name'])
    print("AGE = ", point['age'])
    print("ADDRESS = ", point['address'])
    print("SALARY = ", point['salary'])

client.close()更新(Update)

InfluxDB的数据模型和其他数据库不同,它没有更新操作。但是你可以通过写入一个相同的数据点(即具有相同的时间戳和标签)并改变字段值,实现类似更新操作的效果。
删除(Delete)

同样,InfluxDB也没有提供删除单个数据点的操作。然而,你可以删除整个系列(即表)或者删除某个时间段的数据。
client = InfluxDBClient(host='localhost', port=8086)

# 删除整个系列
client.query('DROP SERIES FROM "employees"')

# 删除某个时间段的数据
# client.query('DELETE FROM "employees" WHERE time < now() - 1d')

print("Series deleted successfully")

client.close()Snowflake

连接数据库

Python可以使用snowflake-connector-python库连接Snowflake数据库:
from snowflake.connector import connect

con = connect(
    user='username',
    password='password',
    account='account_url',
    warehouse='warehouse',
    database='database',
    schema='schema'
)
print("Opened Snowflake database successfully")
con.close()CRUD操作

接下来,我们将展示在Snowflake中如何进行基本的CRUD操作。
创建(Create)

con = connect(
    user='username',
    password='password',
    account='account_url',
    warehouse='warehouse',
    database='database',
    schema='schema'
)

cur = con.cursor()
cur.execute("""
CREATE TABLE EMPLOYEES (
    ID INT,
    NAME STRING,
    AGE INT,
    ADDRESS STRING,
    SALARY FLOAT
)
""")

cur.execute("""
INSERT INTO EMPLOYEES (ID, NAME, AGE, ADDRESS, SALARY) VALUES
(1, 'John', 30, 'New York', 1000.00)
""")

print("Table created and row inserted successfully")

con.close()读取(Retrieve)

con = connect(
    user='username',
    password='password',
    account='account_url',
    warehouse='warehouse',
    database='database',
    schema='schema'
)

cur = con.cursor()
cur.execute("SELECT * FROM EMPLOYEES WHERE ID = 1")

rows = cur.fetchall()

for row in rows:
    print("ID = ", row)
    print("NAME = ", row)
    print("AGE = ", row)
    print("ADDRESS = ", row)
    print("SALARY = ", row)

con.close()更新(Update)

con = connect(
    user='username',
    password='password',
    account='account_url',
    warehouse='warehouse',
    database='database',
    schema='schema'
)

cur = con.cursor()
cur.execute("UPDATE EMPLOYEES SET SALARY = 25000.00 WHERE ID = 1")

print("Row updated successfully")

con.close()删除(Delete)

con = connect(
    user='username',
    password='password',
    account='account_url',
    warehouse='warehouse',
    database='database',
    schema='schema'
)

cur = con.cursor()
cur.execute("DELETE FROM EMPLOYEES WHERE ID = 1")

print("Row deleted successfully")

con.close()Amazon DynamoDB

连接数据库

Python可以使用boto3库连接Amazon DynamoDB:
import boto3

dynamodb = boto3.resource('dynamodb', region_name='us-west-2',
                        aws_access_key_id='Your AWS Access Key',
                        aws_secret_access_key='Your AWS Secret Key')

print("Opened DynamoDB successfully")CRUD操作

接下来,我们将展示在DynamoDB中如何进行基本的CRUD操作。
创建(Create)

table = dynamodb.create_table(
    TableName='Employees',
    KeySchema=[
      {
            'AttributeName': 'id',
            'KeyType': 'HASH'
      },
    ],
    AttributeDefinitions=[
      {
            'AttributeName': 'id',
            'AttributeType': 'N'
      },
    ],
    ProvisionedThroughput={
      'ReadCapacityUnits': 5,
      'WriteCapacityUnits': 5
    }
)

table.put_item(
   Item={
      'id': 1,
      'name': 'John',
      'age': 30,
      'address': 'New York',
      'salary': 1000.00
    }
)

print("Table created and item inserted successfully")读取(Retrieve)

table = dynamodb.Table('Employees')

response = table.get_item(
   Key={
      'id': 1,
    }
)

item = response['Item']
print(item)更新(Update)

table = dynamodb.Table('Employees')

table.update_item(
    Key={
      'id': 1,
    },
    UpdateExpression='SET salary = :val1',
    ExpressionAttributeValues={
      ':val1': 25000.00
    }
)

print("Item updated successfully")删除(Delete)

table = dynamodb.Table('Employees')

table.delete_item(
    Key={
      'id': 1,
    }
)

print("Item deleted successfully")Microsoft Azure CosMos DB

连接数据库

Python可以使用azure-cosmos库连接Microsoft Azure CosMos DB:
from azure.cosmos import CosmosClient, PartitionKey, exceptions

url = 'Cosmos DB Account URL'
key = 'Cosmos DB Account Key'
client = CosmosClient(url, credential=key)

database_name = 'testDB'
database = client.get_database_client(database_name)

container_name = 'Employees'
container = database.get_container_client(container_name)

print("Opened CosMos DB successfully")CRUD操作

接下来,我们将展示在CosMos DB中如何进行基本的CRUD操作。
创建(Create)

database = client.create_database_if_not_exists(id=database_name)

container = database.create_container_if_not_exists(
    id=container_name,
    partition_key=PartitionKey(path="/id"),
    offer_throughput=400
)

container.upsert_item({
    'id': '1',
    'name': 'John',
    'age': 30,
    'address': 'New York',
    'salary': 1000.00
})

print("Container created and item upserted successfully")读取(Retrieve)

for item in container.read_all_items():
    print(item)更新(Update)

for item in container.read_all_items():
    if item['id'] == '1':
      item['salary'] = 25000.00
      container.upsert_item(item)
      
print("Item updated successfully")删除(Delete)

for item in container.read_all_items():
    if item['id'] == '1':
      container.delete_item(item, partition_key='1')
      
print("Item deleted successfully")如有帮助,请多关注
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来源:https://www.cnblogs.com/xfuture/p/17528203.html
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