


How to use Python scripts for system management on Linux platforms
Oct 05, 2023 pm 03:37 PMHow to use Python scripts for system management on the Linux platform
Abstract: Linux is a powerful open source operating system, and Python is a powerful programming language. This article will introduce how to use Python scripts for system management on the Linux platform, including file management, process management, system monitoring, etc., and provide specific code examples.
- File management
1.1 Copying and moving files
Under Linux, you can use the shutil module’s copy
function to To copy files, the sample code is as follows:
import shutil src_file = '/path/to/source/file' dst_file = '/path/to/destination/file' shutil.copy(src_file, dst_file) # 復(fù)制文件 shutil.move(src_file, dst_file) # 移動(dòng)文件
1.2 File deletion
Use the remove
function of the os module to delete files. The sample code is as follows:
import os file_path = '/path/to/file' os.remove(file_path) # 刪除文件
- Process Management
2.1 Execute system commands
You can use the os.system
function to execute system commands. The sample code is as follows:
import os command = 'ls -l' os.system(command) # 執(zhí)行系統(tǒng)命令
2.2 Kill the process
Use the kill
function of the os module to kill the specified process. The sample code is as follows:
import os pid = 1234 os.kill(pid, signal.SIGKILL) # 殺死進(jìn)程
- System monitoring
3.1 CPU information
You can use the psutil module to obtain CPU information. The sample code is as follows:
import psutil cpu_percent = psutil.cpu_percent() # 獲取CPU使用率 print('CPU使用率:%s%%' % cpu_percent)
3.2 Memory information
Use the psutil module The virtual_memory
function can obtain memory information. The sample code is as follows:
import psutil memory = psutil.virtual_memory() print('總內(nèi)存:%s' % memory.total) print('可用內(nèi)存:%s' % memory.available)
Conclusion: Python is a powerful programming language. Using Python scripts on the Linux platform can easily carry out system operations. manage. This article introduces the usage of three aspects: file management, process management and system monitoring, and provides specific code examples. I hope readers can understand how to use Python for system management under Linux through this article, and be able to expand and apply it according to actual needs.
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