This article demonstrates using Python's requests library to make HTTP requests. It covers GET, POST, PUT, DELETE, and other methods, explaining how to handle status codes and send data (including JSON and files). Error handling using response.rai
How to Use Requests to Make HTTP Requests in Python?
The requests
library in Python simplifies making HTTP requests. It provides a clean, intuitive API that abstracts away much of the complexity involved in handling HTTP connections, headers, and responses. To use it, you first need to install it. You can do this using pip:
pip install requests
Once installed, you can start making requests. The most common function is requests.get()
, used for retrieving data from a URL. Here's a basic example:
import requests response = requests.get("https://www.example.com") # Check the status code print(response.status_code) # Access the content print(response.text)
This code fetches the HTML content of example.com
. The response
object contains various attributes, including status_code
(HTTP status code like 200 OK) and text
(the response body). Other useful attributes include headers
(response headers), json()
(for parsing JSON responses), and content
(raw response bytes). Error handling is crucial; we'll cover that in a later section. For other HTTP methods (like POST, PUT, DELETE), you use corresponding functions like requests.post()
, requests.put()
, and requests.delete()
.
What are the common HTTP methods supported by the Requests library in Python?
The requests
library supports all the common HTTP methods, including:
- GET: Retrieves data from a specified resource. This is the most frequently used method.
- POST: Submits data to be processed to the specified resource. Often used to create new resources.
- PUT: Replaces all current representations of the target resource with the uploaded content.
- PATCH: Applies partial modifications to a resource.
- DELETE: Deletes the specified resource.
- HEAD: Similar to GET, but only retrieves the headers, not the body.
- OPTIONS: Describes the communication options for the target resource.
Each method is represented by a corresponding function in the requests
library (e.g., requests.get()
, requests.post()
, etc.). The specific usage might vary depending on the method and the API you're interacting with, but the basic structure remains similar. For instance, requests.post()
requires specifying the data to be sent in the request body.
How can I handle different HTTP status codes using the Requests library?
HTTP status codes indicate the outcome of an HTTP request. The requests
library makes it easy to check and handle these codes. The response.status_code
attribute provides the status code (e.g., 200 for success, 404 for Not Found, 500 for Internal Server Error). You should always check the status code to ensure the request was successful. Here's an example:
import requests try: response = requests.get("https://www.example.com") response.raise_for_status() # Raises an exception for bad status codes (4xx or 5xx) print("Request successful!") print(response.text) except requests.exceptions.RequestException as e: print(f"An error occurred: {e}")
response.raise_for_status()
is a convenient method that automatically raises an exception if the status code indicates an error (4xx or 5xx client/server errors). This simplifies error handling. You can also manually check the status code and handle different cases using if
statements:
if response.status_code == 200: print("Success!") elif response.status_code == 404: print("Not Found") elif response.status_code == 500: print("Server Error") else: print(f"Unknown status code: {response.status_code}")
How do I send POST requests with data using the Requests library in Python?
Sending POST requests with data involves using the requests.post()
function and specifying the data to be sent in the request body. The data can be in various formats, such as dictionaries, lists, or files.
Here's how to send a POST request with data as a dictionary:
import requests data = {'key1': 'value1', 'key2': 'value2'} response = requests.post("https://httpbin.org/post", data=data) # httpbin.org is a useful testing site print(response.status_code) print(response.json()) # httpbin.org returns the POST data as JSON
This example sends a POST request to httpbin.org/post
with the provided dictionary as the request body. httpbin.org
is a useful service for testing HTTP requests. For sending JSON data, use the json
parameter:
import requests import json data = {'key1': 'value1', 'key2': 'value2'} response = requests.post("https://httpbin.org/post", json=data) print(response.status_code) print(response.json())
Remember to handle potential errors using try...except
blocks and response.raise_for_status()
as shown in the previous section. For sending files, use the files
parameter with a dictionary mapping filenames to file objects. The requests
library offers great flexibility in handling different data types for POST requests.
The above is the detailed content of How to Use Requests to Make HTTP Requests in Python?. For more information, please follow other related articles on the PHP Chinese website!

Hot AI Tools

Undress AI Tool
Undress images for free

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Clothoff.io
AI clothes remover

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics

Python's unittest and pytest are two widely used testing frameworks that simplify the writing, organizing and running of automated tests. 1. Both support automatic discovery of test cases and provide a clear test structure: unittest defines tests by inheriting the TestCase class and starting with test\_; pytest is more concise, just need a function starting with test\_. 2. They all have built-in assertion support: unittest provides assertEqual, assertTrue and other methods, while pytest uses an enhanced assert statement to automatically display the failure details. 3. All have mechanisms for handling test preparation and cleaning: un

Python's default parameters are only initialized once when defined. If mutable objects (such as lists or dictionaries) are used as default parameters, unexpected behavior may be caused. For example, when using an empty list as the default parameter, multiple calls to the function will reuse the same list instead of generating a new list each time. Problems caused by this behavior include: 1. Unexpected sharing of data between function calls; 2. The results of subsequent calls are affected by previous calls, increasing the difficulty of debugging; 3. It causes logical errors and is difficult to detect; 4. It is easy to confuse both novice and experienced developers. To avoid problems, the best practice is to set the default value to None and create a new object inside the function, such as using my_list=None instead of my_list=[] and initially in the function

Python's list, dictionary and collection derivation improves code readability and writing efficiency through concise syntax. They are suitable for simplifying iteration and conversion operations, such as replacing multi-line loops with single-line code to implement element transformation or filtering. 1. List comprehensions such as [x2forxinrange(10)] can directly generate square sequences; 2. Dictionary comprehensions such as {x:x2forxinrange(5)} clearly express key-value mapping; 3. Conditional filtering such as [xforxinnumbersifx%2==0] makes the filtering logic more intuitive; 4. Complex conditions can also be embedded, such as combining multi-condition filtering or ternary expressions; but excessive nesting or side-effect operations should be avoided to avoid reducing maintainability. The rational use of derivation can reduce

Python works well with other languages ??and systems in microservice architecture, the key is how each service runs independently and communicates effectively. 1. Using standard APIs and communication protocols (such as HTTP, REST, gRPC), Python builds APIs through frameworks such as Flask and FastAPI, and uses requests or httpx to call other language services; 2. Using message brokers (such as Kafka, RabbitMQ, Redis) to realize asynchronous communication, Python services can publish messages for other language consumers to process, improving system decoupling, scalability and fault tolerance; 3. Expand or embed other language runtimes (such as Jython) through C/C to achieve implementation

PythonisidealfordataanalysisduetoNumPyandPandas.1)NumPyexcelsatnumericalcomputationswithfast,multi-dimensionalarraysandvectorizedoperationslikenp.sqrt().2)PandashandlesstructureddatawithSeriesandDataFrames,supportingtaskslikeloading,cleaning,filterin

To implement a custom iterator, you need to define the __iter__ and __next__ methods in the class. ① The __iter__ method returns the iterator object itself, usually self, to be compatible with iterative environments such as for loops; ② The __next__ method controls the value of each iteration, returns the next element in the sequence, and when there are no more items, StopIteration exception should be thrown; ③ The status must be tracked correctly and the termination conditions must be set to avoid infinite loops; ④ Complex logic such as file line filtering, and pay attention to resource cleaning and memory management; ⑤ For simple logic, you can consider using the generator function yield instead, but you need to choose a suitable method based on the specific scenario.

Dynamic programming (DP) optimizes the solution process by breaking down complex problems into simpler subproblems and storing their results to avoid repeated calculations. There are two main methods: 1. Top-down (memorization): recursively decompose the problem and use cache to store intermediate results; 2. Bottom-up (table): Iteratively build solutions from the basic situation. Suitable for scenarios where maximum/minimum values, optimal solutions or overlapping subproblems are required, such as Fibonacci sequences, backpacking problems, etc. In Python, it can be implemented through decorators or arrays, and attention should be paid to identifying recursive relationships, defining the benchmark situation, and optimizing the complexity of space.

Future trends in Python include performance optimization, stronger type prompts, the rise of alternative runtimes, and the continued growth of the AI/ML field. First, CPython continues to optimize, improving performance through faster startup time, function call optimization and proposed integer operations; second, type prompts are deeply integrated into languages ??and toolchains to enhance code security and development experience; third, alternative runtimes such as PyScript and Nuitka provide new functions and performance advantages; finally, the fields of AI and data science continue to expand, and emerging libraries promote more efficient development and integration. These trends indicate that Python is constantly adapting to technological changes and maintaining its leading position.
