How to Send Email Attachments Using Python's smtplib?
Sending Attachments with Python's smtplib
Sending emails with Python's smtplib is a breeze, but including attachments can seem a bit cryptic for beginners. Here's a straightforward explanation to help you master this task.
Code Snippet:
Let's start with a simple code snippet:
import smtplib from os.path import basename from email.mime.application import MIMEApplication from email.mime.multipart import MIMEMultipart from email.mime.text import MIMEText from email.utils import COMMASPACE, formatdate def send_mail(send_from, send_to, subject, text, files=None, server="127.0.0.1"): assert isinstance(send_to, list) msg = MIMEMultipart() msg['From'] = send_from msg['To'] = COMMASPACE.join(send_to) msg['Date'] = formatdate(localtime=True) msg['Subject'] = subject msg.attach(MIMEText(text)) for f in files or []: with open(f, "rb") as fil: part = MIMEApplication( fil.read(), Name=basename(f) ) # After the file is closed part['Content-Disposition'] = 'attachment; filename="%s"' % basename(f) msg.attach(part) smtp = smtplib.SMTP(server) smtp.sendmail(send_from, send_to, msg.as_string()) smtp.close()
Explanation:
- MIMEMultipart: MIME messages support multiple MIME parts and form the outermost layer.
- MIMEText: The email's body is created as MIMEText containing the text.
- MIMEApplication: The file to be attached is treated as MIMEApplication and its name is extracted using basename(f).
- Content-Disposition: This field configures the attachment's handling by email clients, specifying it as an attachment with its name.
- SMTP: An SMTP object is set up to connect to a mail server ("127.0.0.1" by default).
- sendmail: The email is sent using the sendmail method with the sender, recipients, and message.
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