国产av日韩一区二区三区精品,成人性爱视频在线观看,国产,欧美,日韩,一区,www.成色av久久成人,2222eeee成人天堂

Table of Contents
Go's garbage collection: automatic and efficient
Python's reference count: instant but error-prone
Selection suggestions in actual development
Summarize the key points
Home Backend Development Golang Understanding Memory Management Differences: Golang's GC vs Python's Reference Counting

Understanding Memory Management Differences: Golang's GC vs Python's Reference Counting

Jul 03, 2025 am 02:31 AM
python golang

The core difference between Go and Python in memory management is the different garbage collection mechanisms. Go uses concurrent mark clearance (Mark and Sweep) GC, which automatically runs and executes concurrently with program logic, effectively deals with circular references. It is suitable for high concurrency scenarios, but cannot accurately control the recycling time; while Python mainly relies on reference counting, and object references are immediately released when zeroed. The advantage is that they are instant recycling and simple implementation, but there is a circular reference problem, so they need to use the gc module to assist in cleanup. In actual development, Go is more suitable for high-performance server programs, while Python is suitable for script classes or applications with low performance requirements.

Understanding Memory Management Differences: Golang\'s GC vs Python\'s Reference Counting

The core of the difference between Go and Python in memory management is that their garbage collection mechanisms are different. Go uses a Mark and Sweep garbage collector, while Python mainly relies on reference counting and is supplemented by a loop detection mechanism. Understanding these differences will help us write more efficient and stable programs.

Understanding Memory Management Differences: Golang's GC vs Python's Reference Counting

Go's garbage collection: automatic and efficient

Go uses a Concurrent Mark and Sweep GC. Its characteristics are:

Understanding Memory Management Differences: Golang's GC vs Python's Reference Counting
  • Automatic run : Developers do not need to manually release memory.
  • Concurrent execution : GC and program logic run concurrently to reduce pause time.
  • Based on root object scanning : Starting from global variables and variables on the stack, find all reachable objects, and the remaining unreachable objects will be recycled.

The advantage of this method is that it can effectively deal with circular reference problems and is also suitable for large-scale concurrency scenarios. But the downside is that there may be a short "Stop the World" phase (although Go's GC is now very well optimized), and in some extreme cases it may not be as good as reference counting to free memory in time.

In actual use, you hardly have to worry about memory release issues, but it also means you cannot control exactly when memory is recycled.

Understanding Memory Management Differences: Golang's GC vs Python's Reference Counting

Python's reference count: instant but error-prone

Python uses the reference counting mechanism to manage memory by default. Each object has a reference counter. When this counter becomes 0, the memory occupied by the object will be immediately released.

The advantages are obvious:

  • Instant release : Once it is no longer used, the memory is recycled immediately.
  • Simple implementation : clear logic, easy to understand and debug.

But there are also obvious shortcomings:

  • Unable to handle circular references : For example, two objects refer to each other, and even if they are no longer referenced from the outside, the reference count will not be zeroed.
  • High performance overhead : Frequent increase and decrease reference counts will affect performance, especially in multi-threaded environments.

To solve this problem, Python also introduced the gc module to perform circular garbage detection, but it is not enabled by default and will cause additional delays.


Selection suggestions in actual development

If you are writing high-performance server programs, especially in scenarios where a large number of concurrency is required, Go's GC performs better, and it has taken into account the needs of modern servers from the beginning. Python is more suitable for script-like tasks or applications with less extreme performance requirements.

For example:

  • Are you writing a highly concurrent network service? Go is the better choice.
  • Are you doing data processing scripts or small tools? Python may be more convenient.

In addition, try to avoid creating complex object graph structures in Python, especially those involving circular references; in Go, you should pay attention to reasonably control the object life cycle and avoid unnecessary memory usage.


Summarize the key points

  • Go's GC is a concurrent mark-clearing algorithm, suitable for high-concurrency and low-latency scenarios.
  • Python's reference counting mechanism is simple and direct, but it is easy to cause circular reference problems.
  • Both mechanisms have their own advantages and disadvantages, and there is no absolute good or bad, depending on the specific application scenario.
  • If you choose between the two, in addition to the language ecosystem, you should also consider the performance impact of memory management.

Basically that's it.

The above is the detailed content of Understanding Memory Management Differences: Golang's GC vs Python's Reference Counting. For more information, please follow other related articles on the PHP Chinese website!

Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn

Hot AI Tools

Undress AI Tool

Undress AI Tool

Undress images for free

Undresser.AI Undress

Undresser.AI Undress

AI-powered app for creating realistic nude photos

AI Clothes Remover

AI Clothes Remover

Online AI tool for removing clothes from photos.

Clothoff.io

Clothoff.io

AI clothes remover

Video Face Swap

Video Face Swap

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

Hot Tools

Notepad++7.3.1

Notepad++7.3.1

Easy-to-use and free code editor

SublimeText3 Chinese version

SublimeText3 Chinese version

Chinese version, very easy to use

Zend Studio 13.0.1

Zend Studio 13.0.1

Powerful PHP integrated development environment

Dreamweaver CS6

Dreamweaver CS6

Visual web development tools

SublimeText3 Mac version

SublimeText3 Mac version

God-level code editing software (SublimeText3)

How to handle API authentication in Python How to handle API authentication in Python Jul 13, 2025 am 02:22 AM

The key to dealing with API authentication is to understand and use the authentication method correctly. 1. APIKey is the simplest authentication method, usually placed in the request header or URL parameters; 2. BasicAuth uses username and password for Base64 encoding transmission, which is suitable for internal systems; 3. OAuth2 needs to obtain the token first through client_id and client_secret, and then bring the BearerToken in the request header; 4. In order to deal with the token expiration, the token management class can be encapsulated and automatically refreshed the token; in short, selecting the appropriate method according to the document and safely storing the key information is the key.

How to test an API with Python How to test an API with Python Jul 12, 2025 am 02:47 AM

To test the API, you need to use Python's Requests library. The steps are to install the library, send requests, verify responses, set timeouts and retry. First, install the library through pipinstallrequests; then use requests.get() or requests.post() and other methods to send GET or POST requests; then check response.status_code and response.json() to ensure that the return result is in compliance with expectations; finally, add timeout parameters to set the timeout time, and combine the retrying library to achieve automatic retry to enhance stability.

Python variable scope in functions Python variable scope in functions Jul 12, 2025 am 02:49 AM

In Python, variables defined inside a function are local variables and are only valid within the function; externally defined are global variables that can be read anywhere. 1. Local variables are destroyed as the function is executed; 2. The function can access global variables but cannot be modified directly, so the global keyword is required; 3. If you want to modify outer function variables in nested functions, you need to use the nonlocal keyword; 4. Variables with the same name do not affect each other in different scopes; 5. Global must be declared when modifying global variables, otherwise UnboundLocalError error will be raised. Understanding these rules helps avoid bugs and write more reliable functions.

Python FastAPI tutorial Python FastAPI tutorial Jul 12, 2025 am 02:42 AM

To create modern and efficient APIs using Python, FastAPI is recommended; it is based on standard Python type prompts and can automatically generate documents, with excellent performance. After installing FastAPI and ASGI server uvicorn, you can write interface code. By defining routes, writing processing functions, and returning data, APIs can be quickly built. FastAPI supports a variety of HTTP methods and provides automatically generated SwaggerUI and ReDoc documentation systems. URL parameters can be captured through path definition, while query parameters can be implemented by setting default values ??for function parameters. The rational use of Pydantic models can help improve development efficiency and accuracy.

Python for loop with timeout Python for loop with timeout Jul 12, 2025 am 02:17 AM

Add timeout control to Python's for loop. 1. You can record the start time with the time module, and judge whether it is timed out in each iteration and use break to jump out of the loop; 2. For polling class tasks, you can use the while loop to match time judgment, and add sleep to avoid CPU fullness; 3. Advanced methods can consider threading or signal to achieve more precise control, but the complexity is high, and it is not recommended for beginners to choose; summary key points: manual time judgment is the basic solution, while is more suitable for time-limited waiting class tasks, sleep is indispensable, and advanced methods are suitable for specific scenarios.

How to parse large JSON files in Python? How to parse large JSON files in Python? Jul 13, 2025 am 01:46 AM

How to efficiently handle large JSON files in Python? 1. Use the ijson library to stream and avoid memory overflow through item-by-item parsing; 2. If it is in JSONLines format, you can read it line by line and process it with json.loads(); 3. Or split the large file into small pieces and then process it separately. These methods effectively solve the memory limitation problem and are suitable for different scenarios.

Python for loop over a tuple Python for loop over a tuple Jul 13, 2025 am 02:55 AM

In Python, the method of traversing tuples with for loops includes directly iterating over elements, getting indexes and elements at the same time, and processing nested tuples. 1. Use the for loop directly to access each element in sequence without managing the index; 2. Use enumerate() to get the index and value at the same time. The default index is 0, and the start parameter can also be specified; 3. Nested tuples can be unpacked in the loop, but it is necessary to ensure that the subtuple structure is consistent, otherwise an unpacking error will be raised; in addition, the tuple is immutable and the content cannot be modified in the loop. Unwanted values can be ignored by \_. It is recommended to check whether the tuple is empty before traversing to avoid errors.

What are python default arguments and their potential issues? What are python default arguments and their potential issues? Jul 12, 2025 am 02:39 AM

Python default parameters are evaluated and fixed values ??when the function is defined, which can cause unexpected problems. Using variable objects such as lists as default parameters will retain modifications, and it is recommended to use None instead; the default parameter scope is the environment variable when defined, and subsequent variable changes will not affect their value; avoid relying on default parameters to save state, and class encapsulation state should be used to ensure function consistency.

See all articles