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Table of Contents
?Preparation
? 1. Producer - Send message
? 2. Consumer - Receive Messages
? Explain the key points
? Test steps
?? Tips
Home Backend Development Python Tutorial python pika rabbitmq example

python pika rabbitmq example

Jul 30, 2025 am 04:29 AM

First make sure that the pika library is installed and the RabbitMQ service is started. 1. The producer connects the local RabbitMQ through pika.BlockingConnection, declares a queue named 'hello', and uses basic_publish to send the message "Hello, RabbitMQ from Python!" to the default switch and closes the connection; 2. Consumers also establish a connection and declare a queue, define the callback function to process messages, listen to the queue through basic_consume and call start_consuming to continuously receive it. auto_ack=True means automatic confirmation message; during testing, the consumer will run first and then run the producer, and the consumer will print the received message. If the message needs to be persisted, the queue durable=True and message delivery_mode=2 should be set. When processing time-consuming tasks, it is recommended to close auto_ack and manually call basic_ack to confirm. The complete process includes connection management, queue declaration, message sending and receiving mechanisms, which is the core of RabbitMQ basic application.

python pika rabbitmq example

Below is a simple example of connecting RabbitMQ using Python's pika library, which includes two parts : producer (send messages) and consumer (receive messages) . Suitable for beginners to get started quickly.

python pika rabbitmq example

?Preparation

  1. Install pika :

     pip install pika
  2. Start the RabbitMQ service (make sure it is installed and run):

    python pika rabbitmq example
     # For example, use Docker
    docker run -d --name rabbitmq -p 5672:5672 -p 15672:15672 rabbitmq:3-management

    Management interface: http://localhost:15672 (default account password: guest / guest )


? 1. Producer - Send message

 import pika

# Create a connection to the RabbitMQ server connection = pika.BlockingConnection(pika.ConnectionParameters('localhost'))
channel = connection.channel()

# Declare a queue named 'hello' (it will be automatically created if it does not exist)
channel.queue_declare(queue='hello')

# Send message to queue message = "Hello, RabbitMQ from Python!"
channel.basic_publish(exchange='',
                      routing_key='hello',
                      body=message)

print(f" [x] Sent: {message}")

# Close connection.close()

? 2. Consumer - Receive Messages

 import pika

# Connect to RabbitMQ
connection = pika.BlockingConnection(pika.ConnectionParameters('localhost'))
channel = connection.channel()

# Make sure the queue has channel.queue_declare(queue='hello')

# Define the callback function to process the received message def callback(ch, method, properties, body):
    print(f" [x] Received: {body.decode()}")

# Tell RabbitMQ that this program will receive the message channel.basic_consume(queue='hello',
                      on_message_callback=callback,
                      auto_ack=True)

print(' [*] Waiting for messages. To exit press CTRL C')
channel.start_consuming()

? Explain the key points

  • queue_declare : Ensure that the queue exists and that multiple declarations will not be created repeatedly.
  • basic_publish : Send a message, exchange is empty to indicate the default switch is used.
  • basic_consume : Start listening to the queue.
  • on_message_callback : The function called after receiving the message.
  • auto_ack=True : Automatically confirm that the message has been processed. When setting to False , you need to call ch.basic_ack(delivery_tag=method.delivery_tag) manually.

? Test steps

  1. Run the consumer script first and keep it running.
  2. Run the producer script and send the message.
  3. Check whether the consumer terminal prints out the received message.

?? Tips

  • If you want to persist messages (not lost after restarting), you need to set:

    python pika rabbitmq example
     channel.queue_declare(queue='task_queue', durable=True)
    channel.basic_publish(exchange='',
                          routing_key='task_queue',
                          body=message,
                          properties=pika.BasicProperties(delivery_mode=2)) # Persistence message
  • After the consumer closes the automatic confirmation, manually confirm:

     def callback(ch, method, properties, body):
        print(f" [x] Received: {body.decode()}")
        # Simulate the task import time
        time.sleep(1)
        ch.basic_ack(delivery_tag=method.delivery_tag) # Manual confirmation

  • Basically that's it. Not complicated, but it is easy to ignore details such as connection closing, queue declaration, and confirmation mechanism.

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