


Python connects to Alibaba Cloud interface to implement email sending function
Jul 05, 2023 pm 04:33 PMPython connects to the Alibaba Cloud interface to implement the email sending function
Alibaba Cloud provides a series of service interfaces, including email sending services. By connecting to the Alibaba Cloud interface through a Python script, we can quickly send emails. This article will show you how to use Python scripts to connect to the Alibaba Cloud interface and implement the email sending function.
First, we need to apply for the email sending service on Alibaba Cloud and obtain the corresponding interface information. In the Alibaba Cloud Management Console, select the email push service, and then create a new email push service. After the creation is completed, we can obtain the AccessKey ID and Access Key Secret of the email push service. We need to note here that the Access Key Secret is asymmetrically encrypted and will only be displayed once, so it needs to be kept properly.
Next, we need to install Alibaba Cloud’s Python SDK. Open a terminal window and run the following command:
pip install aliyun-python-sdk-core
pip install aliyun-python-sdk-dm
After the installation is complete, we can Start writing Python code. The following is a sample code that implements the function of using Python to connect to the Alibaba Cloud interface to send emails.
from aliyunsdkcore.client import AcsClient from aliyunsdkdm.request.v20151123 import SingleSendMailRequest # 阿里云的AccessKey信息 access_key_id = "your_access_key_id" access_key_secret = "your_access_key_secret" # 郵件發(fā)送的發(fā)件人 account_name = "your_account_name" # 郵件發(fā)送的收件人 to_address = "your_to_address" # 郵件主題 subject = "郵件主題" # 郵件正文 body = "郵件正文" # 創(chuàng)建郵件發(fā)送請求實(shí)例 request = SingleSendMailRequest.SingleSendMailRequest() # 設(shè)置發(fā)件人和收件人 request.set_AccountName(account_name) request.set_ToAddress(to_address) # 設(shè)置郵件主題和正文 request.set_Subject(subject) request.set_HtmlBody(body) # 創(chuàng)建AcsClient實(shí)例并發(fā)起請求 client = AcsClient(access_key_id, access_key_secret, 'cn-hangzhou') response = client.do_action_with_exception(request) # 解析返回結(jié)果 print(str(response, encoding='utf-8'))
In the code, we first imported Alibaba Cloud's Python SDK package and created an AcsClient instance. Then, we set the relevant information for sending the email, including sender, recipient, subject and body. Finally, we created a SingleSendMailRequest instance and initiated an email sending request through AcsClient.
The above is an example of a simple email sending function, which you can modify and expand according to actual needs. In actual use, you need to replace "your_access_key_id", "your_access_key_secret", "your_account_name" and "your_to_address" in the sample code with the corresponding information you applied for on Alibaba Cloud.
By connecting to the Alibaba Cloud interface through Python, we can easily implement the email sending function. Whether it is for business notifications, marketing promotions or other application scenarios, this function can help you quickly complete the task of sending emails.
Hope this article is helpful to you! Let us make full use of the powerful functions of Python and Alibaba Cloud to realize more valuable applications.
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