Golang and Python: Understanding the Differences
Apr 18, 2025 am 12:21 AMThe main differences between Golang and Python are concurrency models, type systems, performance and execution speed. 1. Golang uses the CSP model, which is suitable for highly concurrent tasks; Python relies on multi-threading and GIL, which is suitable for I/O-intensive tasks. 2. Golang is a static type, and Python is a dynamic type. 3. Golang compiled languages ??are fast execution speed, and Python interpreted languages ??are fast development speed.
introduction
When you stand at the gate of the programming world, choosing a programming language is like choosing a key. Golang and Python, both keys have their own charm and uses. Today, we want to explore the differences between the two in depth to help you better understand their respective advantages and applicable scenarios. Through this article, you will not only be able to grasp the basic differences between Golang and Python, but also draw some practical experience and thoughts from it.
Review of basic knowledge
Golang, developed by Google, is a statically typed, compiled language that emphasizes concurrent programming and efficient execution. Python is a dynamic type and interpreted language created by Guido van Rossum, and is famous for its concise syntax and rich library ecology.
In Golang, you will find strong typed systems and garbage collection mechanisms, while Python is known for its "readability is good code" philosophy, supporting multiple programming paradigms.
Core concept or function analysis
Golang's concurrency model and Python's multi-threading
Golang's concurrency model is based on CSP (Communicating Sequential Processes), and realizes efficient concurrent programming through goroutine and channel. This makes Golang perform well when dealing with high concurrency tasks.
package main import ( "fmt" "time" ) func says(s string) { for i := 0; i < 5; i { time.Sleep(100 * time.Millisecond) fmt.Println(s) } } func main() { go says("world") say("hello") }
Python relies on multithreading and global interpreter locks (GILs) and performs well when dealing with I/O-intensive tasks, but for CPU-intensive tasks, GIL may become a bottleneck.
import threading import time def says(s): for i in range(5): time.sleep(0.1) print(s) if __name__ == "__main__": t1 = threading.Thread(target=say, args=("world",)) t2 = threading.Thread(target=say, args=("hello",)) t1.start() t2.start() t1.join() t2.join()
Type system and memory management
Golang's static type system can catch many errors at compile time, which is a huge advantage for large projects. At the same time, although Golang's garbage collection mechanism has some pauses, its overall performance is good.
Python's dynamic type system provides great flexibility, but can also lead to runtime errors. Python's garbage collection mechanism is based on reference counting and periodic garbage collection, which, while simple, can cause performance issues in large projects.
Performance and execution speed
As a compiled language, Golang is usually better than Python in execution speed. Golang's binary files can be run directly without an interpreter, which is also more advantageous in deployment and operation and maintenance.
Although Python is not as fast as Golang in terms of execution speed, it has significant advantages in terms of development speed and code readability. Python's interpreted features make it more flexible during development and debugging.
Example of usage
Golang's HTTP server
Golang has built-in HTTP support, and writing a simple HTTP server is very intuitive.
package main import ( "fmt" "net/http" ) func handler(w http.ResponseWriter, r *http.Request) { fmt.Fprintf(w, "Hi there, I love %s!", r.URL.Path[1:]) } func main() { http.HandleFunc("/", handler) http.ListenAndServe(":8080", nil) }
Python's Web Framework
Python's Flask framework can easily build web applications, and the code is concise and clear.
from flask import Flask app = Flask(__name__) @app.route('/') def hello_world(): return 'Hello, World!' if __name__ == '__main__': app.run(debug=True)
Common Errors and Debugging Tips
Common errors in Golang include goroutine leaks and channel blocking. Using tools such as go vet
and go test
can help you discover and fix these problems.
Common errors in Python include indentation issues and type errors. Using debugging functions such as PDB and IDE can greatly improve debugging efficiency.
Performance optimization and best practices
Golang's performance optimization
Golang's performance optimization can start from reducing memory allocation, using sync.Pool to multiplex objects, and optimizing the use of goroutines.
package main import ( "sync" ) var pool = sync.Pool{ New: func() interface{} { return new(int) }, } func main() { v := pool.Get().(*int) *v = 42 pool.Put(v) }
Performance optimization of Python
Python performance optimization can consider using tools such as Cython and Numba for code acceleration, or using multi-process instead of multi-threading to avoid the impact of GIL.
from multiprocessing import Pool def f(x): return x*x if __name__ == '__main__': with Pool(5) as p: print(p.map(f, [1, 2, 3])))
Best Practices
Whether it is Golang or Python, it is crucial to keep the code readable and maintainable. Using clear naming, reasonable annotations, and following community coding norms can greatly improve the efficiency of teamwork.
In actual projects, I once encountered a Golang project, and the system crashed under high concurrency due to the lack of reasonable use of goroutine. By optimizing the use of goroutine and introducing channel for communication, we have successfully solved this problem, and the stability of the system has been greatly improved.
Similarly, in a Python project, I found that the performance of CPU-intensive tasks has been significantly improved after using multi-process instead of multi-threading. This made me deeply understand how important it is to choose the right concurrency model to have an impact on project performance.
In short, Golang and Python have their own advantages, and which language to choose depends on your project needs and personal preferences. I hope this article can provide you with some valuable insights and practical experience to help you go further on the road of programming.
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