Python chr() Function
Returns the Unicode character
Usage
The chr()
function returns the character that represents the specified number (unicode code point). The valid range for the number is from 0 to 1,114,111 (0x10FFFF).
ValueError
will be raised if you specify number outside that range.
You can convert it back to unicode using the ord() function.
Syntax
chr(number)
Parameter | Condition | Description |
number | Required | An integer representing a valid Unicode code point |
Examples
# Print the character that represents unicode '65'
x = chr(65)
print(x)
# Prints A
You can pass any unsigned integer (within 0 to 1,114,111) to the function.
x = chr(97)
print(x)
# Prints a
x = chr(8364)
print(x)
# Prints €
You can also specify number in hexadecimal, octal, and binary formats.
# hex
x = chr(0x24)
print(x)
# Prints $
# octal
x = chr(0o44)
print(x)
# Prints $
# binary
x = chr(0b100100)
print(x)
# Prints $
ValueError
will be raised if you specify number outside the range.
x = chr(0xFFFFFFF)
print(x)
# Triggers ValueError: chr() arg not in range(0x110000)
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