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HomeBackend DevelopmentPython TutorialBuild real-time mobile apps with Python and React Native

Build real-time mobile apps with Python and React Native

Jun 17, 2023 am 08:43 AM
pythonreact nativereal time mobile app

With the popularity of mobile devices, more and more companies are beginning to pay attention to mobile application development. It's easy to build high-performance, real-time mobile applications using React Native and Python. In this article, we will explore how to use these two technologies to build real-time mobile applications.

React Native is a JavaScript-based open source framework that can be used to build mobile applications. React Native has excellent performance and ease of use, which makes it the preferred framework for building mobile applications. Cross-platform applications can be easily developed using React Native and can run on iOS and Android.

Python is a popular high-level programming language that is widely used in web development, data analysis, scientific computing and other fields. Python is easy to learn, has high code readability, and is object-oriented, making it one of the preferred languages ​​in the field of data science. At the same time, Python also has powerful network programming and concurrent programming capabilities, which is very suitable for building real-time applications.

In this article, we will build a real-time mobile chat application using React Native and Python. The application will use WebSocket technology to establish a real-time communication connection and Python as the server-side program to send chat data to the client in JSON format. React Native will receive and display chat messages and enable users to send chat messages.

Now, let’s build our real-time mobile chat application step by step.

Step one: Set up the server

We first need to set up the server program. In this example, we use Python to write the server-side program and will use the WebSocket protocol for communication. We can use Python's WebSocket library websocket to simplify the development process.

We can install the websocket library through the following steps:

pip install websocket

Next, we will write the WebSocket server program. The following is the code of the server program:

import websocket
import json

def on_message(ws, message):
    # 接收消息
    message_obj = json.loads(message)
    # 处理消息
    # ...
    # 发送消息
    ws.send(json.dumps({"type": "chat", "message": "Hello"}))

def on_error(ws, error):
    print("Error:", error)

def on_close(ws):
    print("WebSocket closed")

def on_open(ws):
    print("WebSocket opened")

if __name__ == "__main__":
    ws = websocket.WebSocketApp("ws://localhost:8080",
                              on_message=on_message,
                              on_error=on_error,
                              on_close=on_close)
    ws.on_open = on_open
    ws.run_forever()

In this sample code, once the websocket connection is established, the on_open method is called. In the on_open method, we can initialize some work, such as initializing the database connection, loading the configuration file, etc. When WebSocket receives a message, it calls the on_message method. In the on_message method, we convert the JSON formatted text into a Python object through the json.loads() method. We can then process the message and send it back to the client using the ws.send() method.

Step 2: Set up the React Native client application

Next, we need to set up the React Native client application. In this example, we will write our application using React Native. We can use React Native’s built-in WebSocket module to connect to the server.

We can create a React Native application with the following command:

npx react-native init MyChatApp

Next, we will write the React Native client application. Here is the code for our React Native client application:

import React, { useState, useEffect } from 'react';
import { View, Text, TextInput, StyleSheet } from 'react-native';
import WebSocket from 'websocket';

const SERVER_URL = 'ws://localhost:8080';

const ChatApp = () => {
  const [message, setMessage] = useState('');
  const [chatMessage, setChatMessage] = useState('');

  useEffect(() => {
    const ws = new WebSocket.client(SERVER_URL);

    ws.onopen = () => {
      console.log('Connected to server');
    };

    ws.onmessage = (message) => {
      const message_obj = JSON.parse(message.data);
      if (message_obj.type === 'chat') {
        setChatMessage(message_obj.message);
      }
    };

    ws.onclose = () => {
      console.log('Disconnected from server');
    };

    return () => {
      ws.close();
    };
  }, []);

  const sendMessage = () => {
    const ws = new WebSocket.client(SERVER_URL);

    ws.onopen = () => {
      console.log('Connected to server');
      ws.send(JSON.stringify({ type: 'chat', message }));
    };

    ws.onclose = () => {
      console.log('Disconnected from server');
    };

    setMessage('');
  };

  return (
    <View style={styles.container}>
      <Text style={styles.welcome}>Welcome to My Chat App</Text>
      <TextInput
        style={styles.input}
        placeholder="Enter message"
        value={message}
        onChangeText={setMessage}
        onSubmitEditing={sendMessage}
      />
      <Text style={styles.chatMessage}>{chatMessage}</Text>
    </View>
  );
};

const styles = StyleSheet.create({
  container: {
    flex: 1,
    alignItems: 'center',
    justifyContent: 'center',
  },
  welcome: {
    fontSize: 20,
    textAlign: 'center',
    margin: 10,
  },
  input: {
    height: 40,
    width: 300,
    borderColor: 'gray',
    borderWidth: 1,
    borderRadius: 5,
    padding: 10,
    marginBottom: 10,
  },
  chatMessage: {
    textAlign: 'center',
  },
});

export default ChatApp;

In this example code, we have defined two states in the component. The message state is used to store messages entered by the user, and the chatMessage state is used to store chat messages from the server. In the useEffect hook, we create a WebSocket client object and use it to connect to the server. When WebSocket receives a message, it will trigger the onmessage hook and we use the JSON.parse() method to convert the message data into a JavaScript object. If the type attribute in the message object is "chat", we will set the message data in the chatMessage state. The sendMessage method will use a new WebSocket client object to send messages to the server. When a message is sent, the WebSocket client will trigger the onopen hook and we use the JSON.stringify() method to convert the message data into JSON format.

Step Three: Test Our Application

We have written the server-side and client-side applications, now it is time to test our application. We need to start the server program and client application in two different windows.

Execute the following command in the window of the server-side program:

python server.py

This will start a WebSocket server program and start listening for connection requests on port 8080.

Execute the following command in another window to launch the React Native application:

npx react-native run-android

Now, we have successfully launched our client application. We can use emulator or real device to test our application and send some chat messages. When we send a chat message, our application will display the new message from the server in the chat interface.

Conclusion

React Native and Python are a powerful combination for building real-time mobile applications. High-performance, real-time mobile applications can be easily built using these two technologies. In this article, we explain how to use these two technologies to build a real-time mobile chat application. We established a real-time communication connection through the WebSocket protocol and used Python as the server-side program to send chat messages to the client. React Native client application receives and displays chat messages and enables users to send chat messages.

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