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1. str.format(): Use “{}” placeholder to format the string (the index number form in the placeholder and Key-value pairs can be mixed).
>>> string = 'python{}, django{}, tornado{}'.format(2.7, 'web', 'tornado') # 有多少个{}占位符就有多少个值与其对应,按照顺序“填”进字符串中 >>> string 'python2.7, djangoweb, tornadotornado' >>> string = 'python{}, django{}, tornado{}'.format(2.7, 'web') Traceback (most recent call last): File "<pyshell#6>", line 1, in <module> string = 'python{}, django{}, tornado{}'.format(2.7, 'web') IndexError: tuple index out of range >>> string = 'python{0}, django{2}, tornado{1}'.format(2.7, 'web', 'tornado') # 也可以指定“填”进去的值(从0开始,后面的值不一定都要用上,但是要保证指定的位置是有值的) >>> string 'python2.7, djangotornado, tornadoweb' >>> string = 'python{py}, django{dja}, tornado{tor}'.format(tor='tornado', dja='web', py=2.7) # 可以使用键值对的形式赋值 >>> string 'python2.7, djangoweb, tornadotornado' >>>
2. Use "%" for string formatting.
Format symbol table
%c | Convert to a single character |
#%r | Convert to a string expressed using repr() |
%s | Convert to a string expressed using str() |
%d or %i | Convert to a signed decimal integer |
%u | Convert to unsigned decimal integer |
%o | Convert to unsigned octal integer |
%x | Convert to unsigned hexadecimal integer, hexadecimal letters are represented in lowercase |
%X | is converted to an unsigned hexadecimal integer, hexadecimal letters are expressed in uppercase letters |
%e | is converted to scientific notation Floating point number, the e in which is represented by lowercase |
%E | is converted into a floating point number expressed in scientific notation, where the E is represented by uppercase |
%f or #F | is converted to a floating point number |
%g | is automatically determined by Python and converted to % based on the size of the number e or %f |
is automatically judged and converted to %E or %F | |
Output "%" |
Define width or decimal point precision | |
Left-aligned | |
Output the positive value symbol "+" for positive numbers | |
When the size of the number is less than the requirement of m.n , use spaces to pad | |
# to display 0 before the octal number, and to display 0x or 0X before the hexadecimal number | |
When the size of the number is less than the requirement of m.n, fill it with 0 | |
m is the minimum total width displayed , n is the number of digits after the decimal point (if available) |
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