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.
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.

?Preparation
-
Install
pika
:pip install pika
Start the RabbitMQ service (make sure it is installed and run):
# 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 toFalse
, you need to callch.basic_ack(delivery_tag=method.delivery_tag)
manually.
? Test steps
- Run the consumer script first and keep it running.
- Run the producer script and send the message.
- 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:
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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