


Detailed introduction to the sys module in Python (code example)
This article brings you a detailed introduction (code example) about the sys module in Python. It has certain reference value. Friends in need can refer to it. I hope it will be helpful to you.
sys.argv
Command line parameter List, the first element is the path of the program itself
sys.modules.keys()
Return all Imported module list
sys.exc_info()
Get the exception class currently being processed, exc_type, exc_value, exc_traceback currently processed exception details
sys.exit( n)
Exit the program. When exiting normally, exit(0)
sys.hexversion
Get the version value of the Python interpreter, in hexadecimal format such as: 0x020403F0
sys.version
Get the version information of the Python interpreter
sys.maxint
The maximum Int value
sys.maxunicode
The largest Unicode value
sys.modules
Returns the module field imported by the system, the key is the module name, and the value is the module
sys.path
Returns the search path of the module, using the value of the PYTHONPATH environment variable during initialization
sys.platform
Returns the operating system platform name, which is useful when writing cross-platform applications.
Standard stream
sys.stdout Standard outputsys.stdin Standard inputsys.stderr Error output
sys.exc_clear()
Used to clear the current or recent error information that occurred in the current thread
sys.exec_prefix
Return to a platform-independent python file Installed location
sys.byteorder
Indicator of local byte rules, the value is 'big' for big-endian platforms, and 'little' for little-endian platforms
sys.copyright
Record python copyright-related things
sys.api_version
The C API version of the interpreter
sys.version_info
Python version information, for example: (2, 7, 6, 'final', 0), 'final' means final, and 'candidate' means candidate, indicating version level and whether there is a subsequent release
sys.displayhook(value)
If value is not empty, this function will output it to sys.stdout and save it into builtin.. Refer to In python's interactive interpreter, '' represents the result you entered last time, and hook means hook. Hook the last result over.
sys.getdefaultencoding()
Return the default character encoding format you are currently using
sys.getfilesystemencoding()
Return the name of the encoding that converts Unicode file names into system file names
sys .setdefaultencoding(name)
is used to set the current default character encoding. If name does not match any available encoding, a LookupError will be thrown. This function will only be used by the sitecustomize of the site module. Once the site is changed, a LookupError will be thrown. If the module is used, it will be removed from the sys module
sys.builtin_module_names
List of modules imported by the Python interpreter
sys.executable
Python interpretation Program path
sys.getwindowsversion()
Get the Windows version, valid in Windows systems
sys.stdin.readline()
From standard input Reading a line will read the newline character at the end
sys.stdout.write()
Write content to the standard output, for example: sys.stdout.write("hello world"), Screen output hello world
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