How can I convert a string of bytes into an int in python?

Say like this: 'y\xcc\xa6\xbb'

I came up with a clever/stupid way of doing it:

sum(ord(c) << (i * 8) for i, c in enumerate('y\xcc\xa6\xbb'[::-1]))

I know there has to be something builtin or in the standard library that does this more simply...

This is different from converting a string of hex digits for which you can use int(xxx, 16), but instead I want to convert a string of actual byte values.


I kind of like James' answer a little better because it doesn't require importing another module, but Greg's method is faster:

>>> from timeit import Timer
>>> Timer('struct.unpack("<L", "y\xcc\xa6\xbb")[0]', 'import struct').timeit()
>>> Timer("int('y\xcc\xa6\xbb'.encode('hex'), 16)").timeit()

My hacky method:

>>> Timer("sum(ord(c) << (i * 8) for i, c in enumerate('y\xcc\xa6\xbb'[::-1]))").timeit()


Someone asked in comments what's the problem with importing another module. Well, importing a module isn't necessarily cheap, take a look:

>>> Timer("""import struct\nstruct.unpack(">L", "y\xcc\xa6\xbb")[0]""").timeit()

Including the cost of importing the module negates almost all of the advantage that this method has. I believe that this will only include the expense of importing it once for the entire benchmark run; look what happens when I force it to reload every time:

>>> Timer("""reload(struct)\nstruct.unpack(">L", "y\xcc\xa6\xbb")[0]""", 'import struct').timeit()

Needless to say, if you're doing a lot of executions of this method per one import than this becomes proportionally less of an issue. It's also probably i/o cost rather than cpu so it may depend on the capacity and load characteristics of the particular machine.

  • and importing something from the standard lib is bad, why?
    – user3850
    Jan 15, 2009 at 1:56
  • andyway, duplicate: stackoverflow.com/questions/5415/…
    – user3850
    Jan 15, 2009 at 1:56
  • 29
    your "further update" is weird... why would you import the module so often?
    – user3850
    Jan 19, 2009 at 8:20
  • 6
    I know this is old question. But if you want to keep your comparison upto date for other people: Mechanical snail's answer (int.from_bytes) out-performed struct.unpack on my computer. Next to being more readable imo.
    – magu_
    Jan 20, 2016 at 17:42

13 Answers 13


In Python 3.2 and later, use

>>> int.from_bytes(b'y\xcc\xa6\xbb', byteorder='big')


>>> int.from_bytes(b'y\xcc\xa6\xbb', byteorder='little')

according to the endianness of your byte-string.

This also works for bytestring-integers of arbitrary length, and for two's-complement signed integers by specifying signed=True. See the docs for from_bytes.

  • @eri how much slower? I used to use struct but converted to int.from_bytes when I went to py3. I am calling this method every ms as I am receiving serial data so any speedup is welcome. I have been looking at this
    – Naib
    Dec 25, 2016 at 13:32
  • @Naib, for os.urandom(4) bytes **1.4 µs**(struct) vs **2.3 µs**(int.from_bytes) on my cpu. python 3.5.2
    – eri
    Dec 26, 2016 at 12:32
  • 5
    @eri I resurrected a timeit script i used to evaluate a couple of CRC methods. Four runs 1) struct 2) int.from_bytes 3) as #1 but cython compiled, 4) as #2 but cython compiled. 330ns for struct, 1.14us for int (cython gave maybe 20ns speedup in both...) looks like I am switching back :) this isn't premature optimisation, I have been hitting some nasty bottlenecks, especially with a million samples to post-process and have been knocking parts off.
    – Naib
    Dec 27, 2016 at 0:08

You can also use the struct module to do this:

>>> struct.unpack("<L", "y\xcc\xa6\xbb")[0]
  • 4
    Warning: "L" is actually 8 bytes (not 4) in 64 bit Python builds, so this might fail there. Jan 15, 2009 at 11:47
  • 12
    Rafał: Not really, since Greg was using <, according to the docs L is standard size (4) "when the format string starts with one of '<', '>', '!' or '='." docs.python.org/library/struct.html#format-characters Dec 24, 2011 at 0:50
  • 62
    This answer doesn't work for arbitrary-length binary strings.
    – amcnabb
    Feb 4, 2013 at 19:49
  • 4
    Types have specific sizes, it'll never work for arbitrary-length binary strings. You could set up a for loop to handle that if you know the type of each item. Jan 9, 2014 at 18:12
  • 3
    "L" is actually uint32 (4 bytes). If as in my case you need 8 bytes, use "Q"-->uint64. Also note that "l"-->int32 and q-->int64
    – ntg
    May 31, 2017 at 6:26

As Greg said, you can use struct if you are dealing with binary values, but if you just have a "hex number" but in byte format you might want to just convert it like:

s = 'y\xcc\xa6\xbb'
num = int(s.encode('hex'), 16)

...this is the same as:

num = struct.unpack(">L", s)[0]

...except it'll work for any number of bytes.

  • 3
    what exactly is the difference between "binary values" and a "'hex number' but in byte format"???????
    – user3850
    Jan 15, 2009 at 1:52
  • See "help struct". Eg. "001122334455".decode('hex') cannot be converted to a number using struct. Jan 15, 2009 at 3:24
  • 3
    By the way, this answer assumes that the integer is encoded in big-endian byte order. For little-endian order, do: int(''.join(reversed(s)).encode('hex'), 16)
    – amcnabb
    Feb 4, 2013 at 19:54
  • 1
    good but this is going to be slow! Guess that doesn't really matter if you're coding in Python. Nov 3, 2015 at 5:48

I use the following function to convert data between int, hex and bytes.

def bytes2int(str):
 return int(str.encode('hex'), 16)

def bytes2hex(str):
 return '0x'+str.encode('hex')

def int2bytes(i):
 h = int2hex(i)
 return hex2bytes(h)

def int2hex(i):
 return hex(i)

def hex2int(h):
 if len(h) > 1 and h[0:2] == '0x':
  h = h[2:]

 if len(h) % 2:
  h = "0" + h

 return int(h, 16)

def hex2bytes(h):
 if len(h) > 1 and h[0:2] == '0x':
  h = h[2:]

 if len(h) % 2:
  h = "0" + h

 return h.decode('hex')

Source: http://opentechnotes.blogspot.com.au/2014/04/convert-values-to-from-integer-hex.html

import array
integerValue = array.array("I", 'y\xcc\xa6\xbb')[0]

Warning: the above is strongly platform-specific. Both the "I" specifier and the endianness of the string->int conversion are dependent on your particular Python implementation. But if you want to convert many integers/strings at once, then the array module does it quickly.


In Python 2.x, you could use the format specifiers <B for unsigned bytes, and <b for signed bytes with struct.unpack/struct.pack.


Let x = '\xff\x10\x11'

data_ints = struct.unpack('<' + 'B'*len(x), x) # [255, 16, 17]


data_bytes = struct.pack('<' + 'B'*len(data_ints), *data_ints) # '\xff\x10\x11'

That * is required!

See https://docs.python.org/2/library/struct.html#format-characters for a list of the format specifiers.

>>> reduce(lambda s, x: s*256 + x, bytearray("y\xcc\xa6\xbb"))

Test 1: inverse:

>>> hex(2043455163)

Test 2: Number of bytes > 8:

>>> reduce(lambda s, x: s*256 + x, bytearray("AAAAAAAAAAAAAAA"))

Test 3: Increment by one:

>>> reduce(lambda s, x: s*256 + x, bytearray("AAAAAAAAAAAAAAB"))

Test 4: Append one byte, say 'A':

>>> reduce(lambda s, x: s*256 + x, bytearray("AAAAAAAAAAAAAABA"))

Test 5: Divide by 256:

>>> reduce(lambda s, x: s*256 + x, bytearray("AAAAAAAAAAAAAABA"))/256

Result equals the result of Test 4, as expected.


I was struggling to find a solution for arbitrary length byte sequences that would work under Python 2.x. Finally I wrote this one, it's a bit hacky because it performs a string conversion, but it works.

Function for Python 2.x, arbitrary length

def signedbytes(data):
    """Convert a bytearray into an integer, considering the first bit as
    sign. The data must be big-endian."""
    negative = data[0] & 0x80 > 0

    if negative:
        inverted = bytearray(~d % 256 for d in data)
        return -signedbytes(inverted) - 1

    encoded = str(data).encode('hex')
    return int(encoded, 16)

This function has two requirements:

  • The input data needs to be a bytearray. You may call the function like this:

    s = 'y\xcc\xa6\xbb'
    n = signedbytes(s)
  • The data needs to be big-endian. In case you have a little-endian value, you should reverse it first:

    n = signedbytes(s[::-1])

Of course, this should be used only if arbitrary length is needed. Otherwise, stick with more standard ways (e.g. struct).


int.from_bytes is the best solution if you are at version >=3.2. The "struct.unpack" solution requires a string so it will not apply to arrays of bytes. Here is another solution:

def bytes2int( tb, order='big'):
    if order == 'big': seq=[0,1,2,3]
    elif order == 'little': seq=[3,2,1,0]
    i = 0
    for j in seq: i = (i<<8)+tb[j]
    return i

hex( bytes2int( [0x87, 0x65, 0x43, 0x21])) returns '0x87654321'.

It handles big and little endianness and is easily modifiable for 8 bytes


As mentioned above using unpack function of struct is a good way. If you want to implement your own function there is an another solution:

def bytes_to_int(bytes):
    result = 0
    for b in bytes:
        result = result * 256 + int(b)
return result
  • This doesn't work for negative number that was converted to bytes.
    – Maria
    Oct 8, 2019 at 5:10

In python 3 you can easily convert a byte string into a list of integers (0..255) by

>>> list(b'y\xcc\xa6\xbb')
[121, 204, 166, 187]

A decently speedy method utilizing array.array I've been using for some time:

predefined variables:

offset = 0
size = 4
big = True # endian
arr = array('B')
arr.fromstring("\x00\x00\xff\x00") # 5 bytes (encoding issues) [0, 0, 195, 191, 0]

to int: (read)

val = 0
for v in arr[offset:offset+size][::pow(-1,not big)]: val = (val<<8)|v

from int: (write)

val = 16384
arr[offset:offset+size] = \
    array('B',((val>>(i<<3))&255 for i in range(size)))[::pow(-1,not big)]

It's possible these could be faster though.

For some numbers, here's a performance test (Anaconda 2.3.0) showing stable averages on read in comparison to reduce():

========================= byte array to int.py =========================
5000 iterations; threshold of min + 5000ns:
    val = 0 \nfor v in arr: val = (val<<8)|v |     5373.848ns |   850009.965ns |     ~8649.64ns |  62.128%
                  val = reduce( shift, arr ) |     6489.921ns |  5094212.014ns |   ~12040.269ns |  53.902%

This is a raw performance test, so the endian pow-flip is left out.
The shift function shown applies the same shift-oring operation as the for loop, and arr is just array.array('B',[0,0,255,0]) as it has the fastest iterative performance next to dict.

I should probably also note efficiency is measured by accuracy to the average time.


For newer versions of Python a simple way is:

int(b'hello world'.hex(), 16)

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