


Python C Program Subprocess Hangs at "for line in iter"
Using subprocess to run a C program in Python can be tricky when it comes to reading the output from the C program. In this case, the Python script freezes at "for line in iter(process.stdout.readline, '')".
Understanding the Issue: Buffering
The issue here is buffering. By default, C programs use block buffering for their stdout when writing to a pipe (as is the case when running the program from Python). This means that data is not flushed until the buffer is full or the program terminates.
Fixing the Issue
There are several ways to address this issue:
1. Modify the C Program:
Add setvbuf(stdout, (char *) NULL, _IOLBF, 0); at the beginning of the C program to force line buffering. This will flush the buffer after each newline.
2. Use stdbuf Tool:
Redirect the C program's stdout through the stdbuf tool to control the buffering behavior. For example:
import subprocess process = subprocess.Popen(["stdbuf", "-oL", "./main"], stdout=subprocess.PIPE, bufsize=1) for line in iter(process.stdout.readline, ''): print(line)
3. Use Pseudo-TTY:
Use a pseudo-TTY to simulate an interactive terminal environment for the C program. This will force the program to use line buffering.
import pexpect child = pexpect.spawn("./main") for line in child: print(line)
4. Read from Both Ends:
Use the select function in Python to read from both the C program's stdout and the Python script's stdin simultaneously. This will unblock the Python script even if the C program is not producing any output.
The above is the detailed content of Why Does My Python Subprocess Hang When Reading Output from a C Program?. For more information, please follow other related articles on the PHP Chinese website!

Arraysaregenerallymorememory-efficientthanlistsforstoringnumericaldataduetotheirfixed-sizenatureanddirectmemoryaccess.1)Arraysstoreelementsinacontiguousblock,reducingoverheadfrompointersormetadata.2)Lists,oftenimplementedasdynamicarraysorlinkedstruct

ToconvertaPythonlisttoanarray,usethearraymodule:1)Importthearraymodule,2)Createalist,3)Usearray(typecode,list)toconvertit,specifyingthetypecodelike'i'forintegers.Thisconversionoptimizesmemoryusageforhomogeneousdata,enhancingperformanceinnumericalcomp

Python lists can store different types of data. The example list contains integers, strings, floating point numbers, booleans, nested lists, and dictionaries. List flexibility is valuable in data processing and prototyping, but it needs to be used with caution to ensure the readability and maintainability of the code.

Pythondoesnothavebuilt-inarrays;usethearraymoduleformemory-efficienthomogeneousdatastorage,whilelistsareversatileformixeddatatypes.Arraysareefficientforlargedatasetsofthesametype,whereaslistsofferflexibilityandareeasiertouseformixedorsmallerdatasets.

ThemostcommonlyusedmoduleforcreatingarraysinPythonisnumpy.1)Numpyprovidesefficienttoolsforarrayoperations,idealfornumericaldata.2)Arrayscanbecreatedusingnp.array()for1Dand2Dstructures.3)Numpyexcelsinelement-wiseoperationsandcomplexcalculationslikemea

ToappendelementstoaPythonlist,usetheappend()methodforsingleelements,extend()formultipleelements,andinsert()forspecificpositions.1)Useappend()foraddingoneelementattheend.2)Useextend()toaddmultipleelementsefficiently.3)Useinsert()toaddanelementataspeci

TocreateaPythonlist,usesquarebrackets[]andseparateitemswithcommas.1)Listsaredynamicandcanholdmixeddatatypes.2)Useappend(),remove(),andslicingformanipulation.3)Listcomprehensionsareefficientforcreatinglists.4)Becautiouswithlistreferences;usecopy()orsl

In the fields of finance, scientific research, medical care and AI, it is crucial to efficiently store and process numerical data. 1) In finance, using memory mapped files and NumPy libraries can significantly improve data processing speed. 2) In the field of scientific research, HDF5 files are optimized for data storage and retrieval. 3) In medical care, database optimization technologies such as indexing and partitioning improve data query performance. 4) In AI, data sharding and distributed training accelerate model training. System performance and scalability can be significantly improved by choosing the right tools and technologies and weighing trade-offs between storage and processing speeds.


Hot AI Tools

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

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

Undress AI Tool
Undress images for free

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

EditPlus Chinese cracked version
Small size, syntax highlighting, does not support code prompt function

Safe Exam Browser
Safe Exam Browser is a secure browser environment for taking online exams securely. This software turns any computer into a secure workstation. It controls access to any utility and prevents students from using unauthorized resources.

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

SublimeText3 Linux new version
SublimeText3 Linux latest version

VSCode Windows 64-bit Download
A free and powerful IDE editor launched by Microsoft
